Package costandusagereportservice provides the API client, operations, and parameter types for AWS Cost and Usage Report Service. You can use the Amazon Web Services Cost and Usage Report API to programmatically create, query, and delete Amazon Web Services Cost and Usage Report definitions. Amazon Web Services Cost and Usage Report track the monthly Amazon Web Services costs and usage associated with your Amazon Web Services account. The report contains line items for each unique combination of Amazon Web Services product, usage type, and operation that your Amazon Web Services account uses. You can configure the Amazon Web Services Cost and Usage Report to show only the data that you want, using the Amazon Web Services Cost and Usage Report API. The Amazon Web Services Cost and Usage Report API provides the following endpoint:
Package globalaccelerator provides the API client, operations, and parameter types for AWS Global Accelerator. This is the Global Accelerator API Reference. This guide is for developers who need detailed information about Global Accelerator API actions, data types, and errors. For more information about Global Accelerator features, see the Global Accelerator Developer Guide. Global Accelerator is a service in which you create accelerators to improve the performance of your applications for local and global users. Depending on the type of accelerator you choose, you can gain additional benefits. By using a standard accelerator, you can improve availability of your internet applications that are used by a global audience. With a standard accelerator, Global Accelerator directs traffic to optimal endpoints over the Amazon Web Services global network. For other scenarios, you might choose a custom routing accelerator. With a custom routing accelerator, you can use application logic to directly map one or more users to a specific endpoint among many endpoints. Global Accelerator is a global service that supports endpoints in multiple Amazon Web Services Regions but you must specify the US West (Oregon) Region to create, update, or otherwise work with accelerators. That is, for example, specify --region us-west-2 on Amazon Web Services CLI commands. By default, Global Accelerator provides you with static IP addresses that you associate with your accelerator. The static IP addresses are anycast from the Amazon Web Services edge network. For IPv4, Global Accelerator provides two static IPv4 addresses. For dual-stack, Global Accelerator provides a total of four addresses: two static IPv4 addresses and two static IPv6 addresses. With a standard accelerator for IPv4, instead of using the addresses that Global Accelerator provides, you can configure these entry points to be IPv4 addresses from your own IP address ranges that you bring to Global Accelerator (BYOIP). For a standard accelerator, they distribute incoming application traffic across multiple endpoint resources in multiple Amazon Web Services Regions , which increases the availability of your applications. Endpoints for standard accelerators can be Network Load Balancers, Application Load Balancers, Amazon EC2 instances, or Elastic IP addresses that are located in one Amazon Web Services Region or multiple Amazon Web Services Regions. For custom routing accelerators, you map traffic that arrives to the static IP addresses to specific Amazon EC2 servers in endpoints that are virtual private cloud (VPC) subnets. The static IP addresses remain assigned to your accelerator for as long as it exists, even if you disable the accelerator and it no longer accepts or routes traffic. However, when you delete an accelerator, you lose the static IP addresses that are assigned to it, so you can no longer route traffic by using them. You can use IAM policies like tag-based permissions with Global Accelerator to limit the users who have permissions to delete an accelerator. For more information, see Tag-based policies. For standard accelerators, Global Accelerator uses the Amazon Web Services global network to route traffic to the optimal regional endpoint based on health, client location, and policies that you configure. The service reacts instantly to changes in health or configuration to ensure that internet traffic from clients is always directed to healthy endpoints. For more information about understanding and using Global Accelerator, see the Global Accelerator Developer Guide.
Package health provides the API client, operations, and parameter types for AWS Health APIs and Notifications. The Health API provides access to the Health information that appears in the Health Dashboard. You can use the API operations to get information about events that might affect your Amazon Web Services and resources. You must have a Business, Enterprise On-Ramp, or Enterprise Support plan from Amazon Web Services Support to use the Health API. If you call the Health API from an Amazon Web Services account that doesn't have a Business, Enterprise On-Ramp, or Enterprise Support plan, you receive a SubscriptionRequiredException error. For API access, you need an access key ID and a secret access key. Use temporary credentials instead of long-term access keys when possible. Temporary credentials include an access key ID, a secret access key, and a security token that indicates when the credentials expire. For more information, see Best practices for managing Amazon Web Services access keysin the Amazon Web Services General Reference. You can use the Health endpoint health.us-east-1.amazonaws.com (HTTPS) to call the Health API operations. Health supports a multi-Region application architecture and has two regional endpoints in an active-passive configuration. You can use the high availability endpoint example to determine which Amazon Web Services Region is active, so that you can get the latest information from the API. For more information, see Accessing the Health APIin the Health User Guide. For authentication of requests, Health uses the Signature Version 4 Signing Process. If your Amazon Web Services account is part of Organizations, you can use the Health organizational view feature. This feature provides a centralized view of Health events across all accounts in your organization. You can aggregate Health events in real time to identify accounts in your organization that are affected by an operational event or get notified of security vulnerabilities. Use the organizational view API operations to enable this feature and return event information. For more information, see Aggregating Health eventsin the Health User Guide. When you use the Health API operations to return Health events, see the following recommendations: Use the eventScopeCodeparameter to specify whether to return Health events that are public or account-specific. Use pagination to view all events from the response. For example, if you call the DescribeEventsForOrganization operation to get all events in your organization, you might receive several page results. Specify the nextToken in the next request to return more results.
Package licensemanager provides the API client, operations, and parameter types for AWS License Manager. License Manager makes it easier to manage licenses from software vendors across multiple Amazon Web Services accounts and on-premises servers.
Package appmesh provides the API client, operations, and parameter types for AWS App Mesh. App Mesh is a service mesh based on the Envoy proxy that makes it easy to monitor and control microservices. App Mesh standardizes how your microservices communicate, giving you end-to-end visibility and helping to ensure high availability for your applications. App Mesh gives you consistent visibility and network traffic controls for every microservice in an application. You can use App Mesh with Amazon Web Services Fargate, Amazon ECS, Amazon EKS, Kubernetes on Amazon Web Services, and Amazon EC2. App Mesh supports microservice applications that use service discovery naming for their components. For more information about service discovery on Amazon ECS, see Service Discoveryin the Amazon Elastic Container Service Developer Guide. Kubernetes kube-dns and coredns are supported. For more information, see DNS for Services and Pods in the Kubernetes documentation.
Package networkfirewall provides the API client, operations, and parameter types for AWS Network Firewall. This is the API Reference for Network Firewall. This guide is for developers who need detailed information about the Network Firewall API actions, data types, and errors. To access Network Firewall using the REST API endpoint: Network Firewall is a stateful, managed, network firewall and intrusion detection and prevention service for Amazon Virtual Private Cloud (Amazon VPC). With Network Firewall, you can filter traffic at the perimeter of your VPC. This includes filtering traffic going to and coming from an internet gateway, NAT gateway, or over VPN or Direct Connect. Network Firewall uses rules that are compatible with Suricata, a free, open source network analysis and threat detection engine. You can use Network Firewall to monitor and protect your VPC traffic in a number of ways. The following are just a few examples: Allow domains or IP addresses for known Amazon Web Services service endpoints, such as Amazon S3, and block all other forms of traffic. Use custom lists of known bad domains to limit the types of domain names that your applications can access. Perform deep packet inspection on traffic entering or leaving your VPC. Use stateful protocol detection to filter protocols like HTTPS, regardless of the port used. To enable Network Firewall for your VPCs, you perform steps in both Amazon VPC and in Network Firewall. For information about using Amazon VPC, see Amazon VPC User Guide. To start using Network Firewall, do the following: (Optional) If you don't already have a VPC that you want to protect, create it in Amazon VPC. In Amazon VPC, in each Availability Zone where you want to have a firewall endpoint, create a subnet for the sole use of Network Firewall. In Network Firewall, create stateless and stateful rule groups, to define the components of the network traffic filtering behavior that you want your firewall to have. In Network Firewall, create a firewall policy that uses your rule groups and specifies additional default traffic filtering behavior. In Network Firewall, create a firewall and specify your new firewall policy and VPC subnets. Network Firewall creates a firewall endpoint in each subnet that you specify, with the behavior that's defined in the firewall policy. In Amazon VPC, use ingress routing enhancements to route traffic through the new firewall endpoints.
Package gofpdf implements a PDF document generator with high level support for text, drawing and images. - UTF-8 support - Choice of measurement unit, page format and margins - Page header and footer management - Automatic page breaks, line breaks, and text justification - Inclusion of JPEG, PNG, GIF, TIFF and basic path-only SVG images - Colors, gradients and alpha channel transparency - Outline bookmarks - Internal and external links - TrueType, Type1 and encoding support - Page compression - Lines, Bézier curves, arcs, and ellipses - Rotation, scaling, skewing, translation, and mirroring - Clipping - Document protection - Layers - Templates - Barcodes - Charting facility - Import PDFs as templates gofpdf has no dependencies other than the Go standard library. All tests pass on Linux, Mac and Windows platforms. gofpdf supports UTF-8 TrueType fonts and “right-to-left” languages. Note that Chinese, Japanese, and Korean characters may not be included in many general purpose fonts. For these languages, a specialized font (for example, NotoSansSC for simplified Chinese) can be used. Also, support is provided to automatically translate UTF-8 runes to code page encodings for languages that have fewer than 256 glyphs. This repository will not be maintained, at least for some unknown duration. But it is hoped that gofpdf has a bright future in the open source world. Due to Go’s promise of compatibility, gofpdf should continue to function without modification for a longer time than would be the case with many other languages. Forks should be based on the last viable commit. Tools such as active-forks can be used to select a fork that looks promising for your needs. If a particular fork looks like it has taken the lead in attracting followers, this README will be updated to point people in that direction. The efforts of all contributors to this project have been deeply appreciated. Best wishes to all of you. If you currently use the $GOPATH scheme, install the package with the following command. To test the installation, run The following Go code generates a simple PDF file. See the functions in the fpdf_test.go file (shown as examples in this documentation) for more advanced PDF examples. If an error occurs in an Fpdf method, an internal error field is set. After this occurs, Fpdf method calls typically return without performing any operations and the error state is retained. This error management scheme facilitates PDF generation since individual method calls do not need to be examined for failure; it is generally sufficient to wait until after Output() is called. For the same reason, if an error occurs in the calling application during PDF generation, it may be desirable for the application to transfer the error to the Fpdf instance by calling the SetError() method or the SetErrorf() method. At any time during the life cycle of the Fpdf instance, the error state can be determined with a call to Ok() or Err(). The error itself can be retrieved with a call to Error(). This package is a relatively straightforward translation from the original FPDF library written in PHP (despite the caveat in the introduction to Effective Go). The API names have been retained even though the Go idiom would suggest otherwise (for example, pdf.GetX() is used rather than simply pdf.X()). The similarity of the two libraries makes the original FPDF website a good source of information. It includes a forum and FAQ. However, some internal changes have been made. Page content is built up using buffers (of type bytes.Buffer) rather than repeated string concatenation. Errors are handled as explained above rather than panicking. Output is generated through an interface of type io.Writer or io.WriteCloser. A number of the original PHP methods behave differently based on the type of the arguments that are passed to them; in these cases additional methods have been exported to provide similar functionality. Font definition files are produced in JSON rather than PHP. A side effect of running go test ./... is the production of a number of example PDFs. These can be found in the gofpdf/pdf directory after the tests complete. Please note that these examples run in the context of a test. In order run an example as a standalone application, you’ll need to examine fpdf_test.go for some helper routines, for example exampleFilename() and summary(). Example PDFs can be compared with reference copies in order to verify that they have been generated as expected. This comparison will be performed if a PDF with the same name as the example PDF is placed in the gofpdf/pdf/reference directory and if the third argument to ComparePDFFiles() in internal/example/example.go is true. (By default it is false.) The routine that summarizes an example will look for this file and, if found, will call ComparePDFFiles() to check the example PDF for equality with its reference PDF. If differences exist between the two files they will be printed to standard output and the test will fail. If the reference file is missing, the comparison is considered to succeed. In order to successfully compare two PDFs, the placement of internal resources must be consistent and the internal creation timestamps must be the same. To do this, the methods SetCatalogSort() and SetCreationDate() need to be called for both files. This is done automatically for all examples. Nothing special is required to use the standard PDF fonts (courier, helvetica, times, zapfdingbats) in your documents other than calling SetFont(). You should use AddUTF8Font() or AddUTF8FontFromBytes() to add a TrueType UTF-8 encoded font. Use RTL() and LTR() methods switch between “right-to-left” and “left-to-right” mode. In order to use a different non-UTF-8 TrueType or Type1 font, you will need to generate a font definition file and, if the font will be embedded into PDFs, a compressed version of the font file. This is done by calling the MakeFont function or using the included makefont command line utility. To create the utility, cd into the makefont subdirectory and run “go build”. This will produce a standalone executable named makefont. Select the appropriate encoding file from the font subdirectory and run the command as in the following example. In your PDF generation code, call AddFont() to load the font and, as with the standard fonts, SetFont() to begin using it. Most examples, including the package example, demonstrate this method. Good sources of free, open-source fonts include Google Fonts and DejaVu Fonts. The draw2d package is a two dimensional vector graphics library that can generate output in different forms. It uses gofpdf for its document production mode. gofpdf is a global community effort and you are invited to make it even better. If you have implemented a new feature or corrected a problem, please consider contributing your change to the project. A contribution that does not directly pertain to the core functionality of gofpdf should be placed in its own directory directly beneath the contrib directory. Here are guidelines for making submissions. Your change should - be compatible with the MIT License - be properly documented - be formatted with go fmt - include an example in fpdf_test.go if appropriate - conform to the standards of golint and go vet, that is, golint . and go vet . should not generate any warnings - not diminish test coverage Pull requests are the preferred means of accepting your changes. gofpdf is released under the MIT License. It is copyrighted by Kurt Jung and the contributors acknowledged below. This package’s code and documentation are closely derived from the FPDF library created by Olivier Plathey, and a number of font and image resources are copied directly from it. Bruno Michel has provided valuable assistance with the code. Drawing support is adapted from the FPDF geometric figures script by David Hernández Sanz. Transparency support is adapted from the FPDF transparency script by Martin Hall-May. Support for gradients and clipping is adapted from FPDF scripts by Andreas Würmser. Support for outline bookmarks is adapted from Olivier Plathey by Manuel Cornes. Layer support is adapted from Olivier Plathey. Support for transformations is adapted from the FPDF transformation script by Moritz Wagner and Andreas Würmser. PDF protection is adapted from the work of Klemen Vodopivec for the FPDF product. Lawrence Kesteloot provided code to allow an image’s extent to be determined prior to placement. Support for vertical alignment within a cell was provided by Stefan Schroeder. Ivan Daniluk generalized the font and image loading code to use the Reader interface while maintaining backward compatibility. Anthony Starks provided code for the Polygon function. Robert Lillack provided the Beziergon function and corrected some naming issues with the internal curve function. Claudio Felber provided implementations for dashed line drawing and generalized font loading. Stani Michiels provided support for multi-segment path drawing with smooth line joins, line join styles, enhanced fill modes, and has helped greatly with package presentation and tests. Templating is adapted by Marcus Downing from the FPDF_Tpl library created by Jan Slabon and Setasign. Jelmer Snoeck contributed packages that generate a variety of barcodes and help with registering images on the web. Jelmer Snoek and Guillermo Pascual augmented the basic HTML functionality with aligned text. Kent Quirk implemented backwards-compatible support for reading DPI from images that support it, and for setting DPI manually and then having it properly taken into account when calculating image size. Paulo Coutinho provided support for static embedded fonts. Dan Meyers added support for embedded JavaScript. David Fish added a generic alias-replacement function to enable, among other things, table of contents functionality. Andy Bakun identified and corrected a problem in which the internal catalogs were not sorted stably. Paul Montag added encoding and decoding functionality for templates, including images that are embedded in templates; this allows templates to be stored independently of gofpdf. Paul also added support for page boxes used in printing PDF documents. Wojciech Matusiak added supported for word spacing. Artem Korotkiy added support of UTF-8 fonts. Dave Barnes added support for imported objects and templates. Brigham Thompson added support for rounded rectangles. Joe Westcott added underline functionality and optimized image storage. Benoit KUGLER contributed support for rectangles with corners of unequal radius, modification times, and for file attachments and annotations. - Remove all legacy code page font support; use UTF-8 exclusively - Improve test coverage as reported by the coverage tool. Example demonstrates the generation of a simple PDF document. Note that since only core fonts are used (in this case Arial, a synonym for Helvetica), an empty string can be specified for the font directory in the call to New(). Note also that the example.Filename() and example.Summary() functions belong to a separate, internal package and are not part of the gofpdf library. If an error occurs at some point during the construction of the document, subsequent method calls exit immediately and the error is finally retrieved with the output call where it can be handled by the application.
Package gamelift provides the API client, operations, and parameter types for Amazon GameLift. Amazon GameLift provides solutions for hosting session-based multiplayer game servers in the cloud, including tools for deploying, operating, and scaling game servers. Built on Amazon Web Services global computing infrastructure, GameLift helps you deliver high-performance, high-reliability, low-cost game servers while dynamically scaling your resource usage to meet player demand. Get more information on these Amazon GameLift solutions in the Amazon GameLift Developer Guide. Amazon GameLift managed hosting -- Amazon GameLift offers a fully managed service to set up and maintain computing machines for hosting, manage game session and player session life cycle, and handle security, storage, and performance tracking. You can use automatic scaling tools to balance player demand and hosting costs, configure your game session management to minimize player latency, and add FlexMatch for matchmaking. Managed hosting with Realtime Servers -- With Amazon GameLift Realtime Servers, you can quickly configure and set up ready-to-go game servers for your game. Realtime Servers provides a game server framework with core Amazon GameLift infrastructure already built in. Then use the full range of Amazon GameLift managed hosting features, including FlexMatch, for your game. Amazon GameLift FleetIQ -- Use Amazon GameLift FleetIQ as a standalone service while hosting your games using EC2 instances and Auto Scaling groups. Amazon GameLift FleetIQ provides optimizations for game hosting, including boosting the viability of low-cost Spot Instances gaming. For a complete solution, pair the Amazon GameLift FleetIQ and FlexMatch standalone services. Amazon GameLift FlexMatch -- Add matchmaking to your game hosting solution. FlexMatch is a customizable matchmaking service for multiplayer games. Use FlexMatch as integrated with Amazon GameLift managed hosting or incorporate FlexMatch as a standalone service into your own hosting solution. This reference guide describes the low-level service API for Amazon GameLift. With each topic in this guide, you can find links to language-specific SDK guides and the Amazon Web Services CLI reference. Useful links: Amazon GameLift API operations listed by tasks Amazon GameLift tools and resources
Package outposts provides the API client, operations, and parameter types for AWS Outposts. Amazon Web Services Outposts is a fully managed service that extends Amazon Web Services infrastructure, APIs, and tools to customer premises. By providing local access to Amazon Web Services managed infrastructure, Amazon Web Services Outposts enables customers to build and run applications on premises using the same programming interfaces as in Amazon Web Services Regions, while using local compute and storage resources for lower latency and local data processing needs.
Package oam provides the API client, operations, and parameter types for CloudWatch Observability Access Manager. Use Amazon CloudWatch Observability Access Manager to create and manage links between source accounts and monitoring accounts by using CloudWatch cross-account observability. With CloudWatch cross-account observability, you can monitor and troubleshoot applications that span multiple accounts within a Region. Seamlessly search, visualize, and analyze your metrics, logs, traces, and Application Insights applications in any of the linked accounts without account boundaries. Set up one or more Amazon Web Services accounts as monitoring accounts and link them with multiple source accounts. A monitoring account is a central Amazon Web Services account that can view and interact with observability data generated from source accounts. A source account is an individual Amazon Web Services account that generates observability data for the resources that reside in it. Source accounts share their observability data with the monitoring account. The shared observability data can include metrics in Amazon CloudWatch, logs in Amazon CloudWatch Logs, traces in X-Ray, and applications in Amazon CloudWatch Application Insights.
Package polly provides the API client, operations, and parameter types for Amazon Polly. Amazon Polly is a web service that makes it easy to synthesize speech from text. The Amazon Polly service provides API operations for synthesizing high-quality speech from plain text and Speech Synthesis Markup Language (SSML), along with managing pronunciations lexicons that enable you to get the best results for your application domain.
Package datasync provides the API client, operations, and parameter types for AWS DataSync. DataSync is an online data movement and discovery service that simplifies data migration and helps you quickly, easily, and securely transfer your file or object data to, from, and between Amazon Web Services storage services. This API interface reference includes documentation for using DataSync programmatically. For complete information, see the DataSync User Guide.
Package saltpack is an implementation of the saltpack message format. Saltpack is a light wrapper around Dan Berstein's famous NaCl library. It adds support for longer messages, streaming input and output of data, multiple recipients for encrypted messages, and a reasonable armoring format. We intend Saltpack as a replacement for the PGP messaging format, as it can be used in many of the same circumstances. However, it is designed to be: (1) simpler; (2) easier to implement; (3) judicious (perhaps judgmental) in its crypto usage; (4) fully modern (no CFB mode here); (5) high performance; (6) less bug- prone; (7) generally unwilling to output unauthenticated data; and (8) easier to compose with other software in any manner of languages or platforms. Saltpack makes no attempt to manage keys. We assume the wrapping application has a story for key management. Saltpack supports three modes of operation: encrypted messages, attached signatures, and detached signatures. Encrypted messages use NaCl's authenticated public-key encryption; we add repudiable authentication. An attached signature contains a message and a signature that authenticates it. A detached signature contains just the signature, and assumes an independent delievery mechanism for the file (this might come up when distributing an ISO and separate signature of the file). Saltpack has two encoding modes: binary and armored. In armored mode, saltpack outputs in Base62-encoding, suitable for publication into any manner of Web settings without fear of markup-caused mangling. This saltpack library implementation supports two API patterns: streaming and all-at-once. The former is useful for large files that can't fit into memory; the latter is more convenient. Both produce the same output. See https://saltpack.org
Package ivschat provides the API client, operations, and parameter types for Amazon Interactive Video Service Chat. The Amazon IVS Chat control-plane API enables you to create and manage Amazon IVS Chat resources. You also need to integrate with the Amazon IVS Chat Messaging API, to enable users to interact with chat rooms in real time. The API is an AWS regional service. For a list of supported regions and Amazon IVS Chat HTTPS service endpoints, see the Amazon IVS Chat information on the Amazon IVS pagein the AWS General Reference. This document describes HTTP operations. There is a separate messaging API for managing Chat resources; see the Amazon IVS Chat Messaging API Reference. Notes on terminology: You create service applications using the Amazon IVS Chat API. We refer to these as applications. You create front-end client applications (browser and Android/iOS apps) using the Amazon IVS Chat Messaging API. We refer to these as clients. The following resources are part of Amazon IVS Chat: LoggingConfiguration — A configuration that allows customers to store and record sent messages in a chat room. See the Logging Configuration endpoints for more information. Room — The central Amazon IVS Chat resource through which clients connect to and exchange chat messages. See the Room endpoints for more information. A tag is a metadata label that you assign to an AWS resource. A tag comprises a key and a value, both set by you. For example, you might set a tag as topic:nature to label a particular video category. See Best practices and strategies in Tagging Amazon Web Services Resources and Tag Editor for details, including restrictions that apply to tags and "Tag naming limits and requirements"; Amazon IVS Chat has no service-specific constraints beyond what is documented there. Tags can help you identify and organize your AWS resources. For example, you can use the same tag for different resources to indicate that they are related. You can also use tags to manage access (see Access Tags). The Amazon IVS Chat API has these tag-related operations: TagResource, UntagResource, and ListTagsForResource. The following resource supports tagging: Room. At most 50 tags can be applied to a resource. Your Amazon IVS Chat applications (service applications and clients) must be authenticated and authorized to access Amazon IVS Chat resources. Note the differences between these concepts: Authentication is about verifying identity. Requests to the Amazon IVS Chat API must be signed to verify your identity. Authorization is about granting permissions. Your IAM roles need to have permissions for Amazon IVS Chat API requests. Users (viewers) connect to a room using secure access tokens that you create using the CreateChatTokenoperation through the AWS SDK. You call CreateChatToken for every user’s chat session, passing identity and authorization information about the user. HTTP API requests must be signed with an AWS SigV4 signature using your AWS security credentials. The AWS Command Line Interface (CLI) and the AWS SDKs take care of signing the underlying API calls for you. However, if your application calls the Amazon IVS Chat HTTP API directly, it’s your responsibility to sign the requests. You generate a signature using valid AWS credentials for an IAM role that has permission to perform the requested action. For example, DeleteMessage requests must be made using an IAM role that has the ivschat:DeleteMessage permission. For more information: Authentication and generating signatures — See Authenticating Requests (Amazon Web Services Signature Version 4)in the Amazon Web Services General Reference. Managing Amazon IVS permissions — See Identity and Access Managementon the Security page of the Amazon IVS User Guide. Amazon Resource Names (ARNs) ARNs uniquely identify AWS resources. An ARN is required when you need to specify a resource unambiguously across all of AWS, such as in IAM policies and API calls. For more information, see Amazon Resource Namesin the AWS General Reference.
Package imagebuilder provides the API client, operations, and parameter types for EC2 Image Builder. EC2 Image Builder is a fully managed Amazon Web Services service that makes it easier to automate the creation, management, and deployment of customized, secure, and up-to-date "golden" server images that are pre-installed and pre-configured with software and settings to meet specific IT standards.
Package storagegateway provides the API client, operations, and parameter types for AWS Storage Gateway. Amazon FSx File Gateway is no longer available to new customers. Existing customers of FSx File Gateway can continue to use the service normally. For capabilities similar to FSx File Gateway, visit this blog post. Storage Gateway is the service that connects an on-premises software appliance with cloud-based storage to provide seamless and secure integration between an organization's on-premises IT environment and the Amazon Web Services storage infrastructure. The service enables you to securely upload data to the Amazon Web Services Cloud for cost effective backup and rapid disaster recovery. Use the following links to get started using the Storage Gateway Service API Reference: Storage Gateway required request headers Signing requests Error responses Operations in Storage Gateway Storage Gateway endpoints and quotas Storage Gateway resource IDs are in uppercase. When you use these resource IDs with the Amazon EC2 API, EC2 expects resource IDs in lowercase. You must change your resource ID to lowercase to use it with the EC2 API. For example, in Storage Gateway the ID for a volume might be vol-AA22BB012345DAF670 . When you use this ID with the EC2 API, you must change it to vol-aa22bb012345daf670 . Otherwise, the EC2 API might not behave as expected. IDs for Storage Gateway volumes and Amazon EBS snapshots created from gateway volumes are changing to a longer format. Starting in December 2016, all new volumes and snapshots will be created with a 17-character string. Starting in April 2016, you will be able to use these longer IDs so you can test your systems with the new format. For more information, see Longer EC2 and EBS resource IDs. For example, a volume Amazon Resource Name (ARN) with the longer volume ID format looks like the following: arn:aws:storagegateway:us-west-2:111122223333:gateway/sgw-12A3456B/volume/vol-1122AABBCCDDEEFFG . A snapshot ID with the longer ID format looks like the following: snap-78e226633445566ee . For more information, see Announcement: Heads-up – Longer Storage Gateway volume and snapshot IDs coming in 2016.
Package webbrowser provides a simple API for opening web pages on your default browser.
Package cbor provides a fuzz-tested CBOR encoder and decoder with full support for float16, Canonical CBOR, CTAP2 Canonical CBOR, and custom settings. https://github.com/fxamacker/cbor/releases Encoding options allow "preferred serialization" by encoding integers and floats to their smallest forms (like float16) when values fit. Go struct tags like `cbor:"name,omitempty"` and `json:"name,omitempty"` work as expected. If both struct tags are specified then `cbor` is used. Struct tags like "keyasint", "toarray", and "omitempty" make it easy to use very compact formats like COSE and CWT (CBOR Web Tokens) with structs. For example, the "toarray" struct tag encodes/decodes struct fields as array elements. And "keyasint" struct tag encodes/decodes struct fields to values of maps with specified int keys. fxamacker/cbor-fuzz provides coverage-guided fuzzing for this package. For latest API docs, see: https://github.com/fxamacker/cbor#api
Package dom provides GopherJS bindings for the JavaScript DOM APIs. This package is an in progress effort of providing idiomatic Go bindings for the DOM, wrapping the JavaScript DOM APIs. The API is neither complete nor frozen yet, but a great amount of the DOM is already useable. While the package tries to be idiomatic Go, it also tries to stick closely to the JavaScript APIs, so that one does not need to learn a new set of APIs if one is already familiar with it. One decision that hasn't been made yet is what parts exactly should be part of this package. It is, for example, possible that the canvas APIs will live in a separate package. On the other hand, types such as StorageEvent (the event that gets fired when the HTML5 storage area changes) will be part of this package, simply due to how the DOM is structured – even if the actual storage APIs might live in a separate package. This might require special care to avoid circular dependencies. The documentation for some of the identifiers is based on the MDN Web Docs by Mozilla Contributors (https://developer.mozilla.org/en-US/docs/Web/API), licensed under CC-BY-SA 2.5 (https://creativecommons.org/licenses/by-sa/2.5/). The usual entry point of using the dom package is by using the GetWindow() function which will return a Window, from which you can get things such as the current Document. The DOM has a big amount of different element and event types, but they all follow three interfaces. All functions that work on or return generic elements/events will return one of the three interfaces Element, HTMLElement or Event. In these interface values there will be concrete implementations, such as HTMLParagraphElement or FocusEvent. It's also not unusual that values of type Element also implement HTMLElement. In all cases, type assertions can be used. Example: Several functions in the JavaScript DOM return "live" collections of elements, that is collections that will be automatically updated when elements get removed or added to the DOM. Our bindings, however, return static slices of elements that, once created, will not automatically reflect updates to the DOM. This is primarily done so that slices can actually be used, as opposed to a form of iterator, but also because we think that magically changing data isn't Go's nature and that snapshots of state are a lot easier to reason about. This does not, however, mean that all objects are snapshots. Elements, events and generally objects that aren't slices or maps are simple wrappers around JavaScript objects, and as such attributes as well as method calls will always return the most current data. To reflect this behaviour, these bindings use pointers to make the semantics clear. Consider the following example: The above example will print `true`. Some objects in the JS API have two versions of attributes, one that returns a string and one that returns a DOMTokenList to ease manipulation of string-delimited lists. Some other objects only provide DOMTokenList, sometimes DOMSettableTokenList. To simplify these bindings, only the DOMTokenList variant will be made available, by the type TokenList. In cases where the string attribute was the only way to completely replace the value, our TokenList will provide Set([]string) and SetString(string) methods, which will be able to accomplish the same. Additionally, our TokenList will provide methods to convert it to strings and slices. This package has a relatively stable API. However, there will be backwards incompatible changes from time to time. This is because the package isn't complete yet, as well as because the DOM is a moving target, and APIs do change sometimes. While an attempt is made to reduce changing function signatures to a minimum, it can't always be guaranteed. Sometimes mistakes in the bindings are found that require changing arguments or return values. Interfaces defined in this package may also change on a semi-regular basis, as new methods are added to them. This happens because the bindings aren't complete and can never really be, as new features are added to the DOM.
Package amplify provides the API client, operations, and parameter types for AWS Amplify. Amplify enables developers to develop and deploy cloud-powered mobile and web apps. Amplify Hosting provides a continuous delivery and hosting service for web applications. For more information, see the Amplify Hosting User Guide. The Amplify Framework is a comprehensive set of SDKs, libraries, tools, and documentation for client app development. For more information, see the Amplify Framework.
Package gorouter is a simple and fast HTTP router for Go. It is easy to build RESTful APIs and your web framework. Here is the example: Here is the syntax:
Package ssmincidents provides the API client, operations, and parameter types for AWS Systems Manager Incident Manager. Systems Manager Incident Manager is an incident management console designed to help users mitigate and recover from incidents affecting their Amazon Web Services-hosted applications. An incident is any unplanned interruption or reduction in quality of services. Incident Manager increases incident resolution by notifying responders of impact, highlighting relevant troubleshooting data, and providing collaboration tools to get services back up and running. To achieve the primary goal of reducing the time-to-resolution of critical incidents, Incident Manager automates response plans and enables responder team escalation.
Package worklink provides the API client, operations, and parameter types for Amazon WorkLink. Amazon WorkLink is a cloud-based service that provides secure access to internal websites and web apps from iOS and Android phones. In a single step, your users, such as employees, can access internal websites as efficiently as they access any other public website. They enter a URL in their web browser, or choose a link to an internal website in an email. Amazon WorkLink authenticates the user's access and securely renders authorized internal web content in a secure rendering service in the AWS cloud. Amazon WorkLink doesn't download or store any internal web content on mobile devices.
Package kivik provides a generic interface to CouchDB or CouchDB-like databases. The kivik package must be used in conjunction with a database driver. The officially supported drivers are: The Filesystem and Memory drivers are also available, but in early stages of development, and so many features do not yet work: The kivik driver system is modeled after the standard library's `sql` and `sql/driver` packages, although the client API is completely different due to the different database models implemented by SQL and NoSQL databases such as CouchDB. couchDB stores JSON, so Kivik translates Go data structures to and from JSON as necessary. The conversion between Go data types and JSON, and vice versa, is handled automatically according to the rules and behavior described in the documentationf or the standard library's `encoding/json` package (https://golang.org/pkg/encoding/json). One would be well-advised to become familiar with using `json` struct field tags (https://golang.org/pkg/encoding/json/#Marshal) when working with JSON documents. Most Kivik methods take `context.Context` as their first argument. This allows the cancellation of blocking operations in the case that the result is no longer needed. A typical use case for a web application would be to cancel a Kivik request if the remote HTTP client ahs disconnected, rednering the results of the query irrelevant. To learn more about Go's contexts, read the `context` package documentation (https://golang.org/pkg/context/) and read the Go blog post "Go Concurrency Patterns: Context" (https://blog.golang.org/context) for example code. If in doubt, you can pass `context.TODO()` as the context variable. Example: Kivik returns errors that embed an HTTP status code. In most cases, this is the HTTP status code returned by the server. The embedded HTTP status code may be accessed easily using the StatusCode() method, or with a type assertion to `interface { StatusCode() int }`. Example: Any error that does not conform to this interface will be assumed to represent a http.StatusInternalServerError status code. For common usage, authentication should be as simple as including the authentication credentials in the connection DSN. For example: This will connect to `localhost` on port 5984, using the username `admin` and the password `abc123`. When connecting to CouchDB (as in the above example), this will use cookie auth (https://docs.couchdb.org/en/stable/api/server/authn.html?highlight=cookie%20auth#cookie-authentication). Depending on which driver you use, there may be other ways to authenticate, as well. At the moment, the CouchDB driver is the only official driver which offers additional authentication methods. Please refer to the CouchDB package documentation for details (https://pkg.go.dev/github.com/go-kivik/couchdb/v3). With a client handle in hand, you can create a database handle with the DB() method to interact with a specific database.
Package mwaa provides the API client, operations, and parameter types for AmazonMWAA. This section contains the Amazon Managed Workflows for Apache Airflow (MWAA) API reference documentation. For more information, see What is Amazon MWAA?. Endpoints CreateEnvironment DeleteEnvironment GetEnvironment ListEnvironments ListTagsForResource TagResource UntagResource UpdateEnvironment CreateCliToken CreateWebLoginToken InvokeRestApi For a list of supported regions, see Amazon MWAA endpoints and quotas in the Amazon Web Services General Reference.
Package ssmcontacts provides the API client, operations, and parameter types for AWS Systems Manager Incident Manager Contacts. Systems Manager Incident Manager is an incident management console designed to help users mitigate and recover from incidents affecting their Amazon Web Services-hosted applications. An incident is any unplanned interruption or reduction in quality of services. Incident Manager increases incident resolution by notifying responders of impact, highlighting relevant troubleshooting data, and providing collaboration tools to get services back up and running. To achieve the primary goal of reducing the time-to-resolution of critical incidents, Incident Manager automates response plans and enables responder team escalation.
Package gofpdf implements a PDF document generator with high level support for text, drawing and images. - UTF-8 support - Choice of measurement unit, page format and margins - Page header and footer management - Automatic page breaks, line breaks, and text justification - Inclusion of JPEG, PNG, GIF, TIFF and basic path-only SVG images - Colors, gradients and alpha channel transparency - Outline bookmarks - Internal and external links - TrueType, Type1 and encoding support - Page compression - Lines, Bézier curves, arcs, and ellipses - Rotation, scaling, skewing, translation, and mirroring - Clipping - Document protection - Layers - Templates - Barcodes - Charting facility - Import PDFs as templates gofpdf has no dependencies other than the Go standard library. All tests pass on Linux, Mac and Windows platforms. gofpdf supports UTF-8 TrueType fonts and “right-to-left” languages. Note that Chinese, Japanese, and Korean characters may not be included in many general purpose fonts. For these languages, a specialized font (for example, NotoSansSC for simplified Chinese) can be used. Also, support is provided to automatically translate UTF-8 runes to code page encodings for languages that have fewer than 256 glyphs. This repository will not be maintained, at least for some unknown duration. But it is hoped that gofpdf has a bright future in the open source world. Due to Go’s promise of compatibility, gofpdf should continue to function without modification for a longer time than would be the case with many other languages. Forks should be based on the last viable commit. Tools such as active-forks can be used to select a fork that looks promising for your needs. If a particular fork looks like it has taken the lead in attracting followers, this README will be updated to point people in that direction. The efforts of all contributors to this project have been deeply appreciated. Best wishes to all of you. To install the package on your system, run Later, to receive updates, run The following Go code generates a simple PDF file. See the functions in the fpdf_test.go file (shown as examples in this documentation) for more advanced PDF examples. If an error occurs in an Fpdf method, an internal error field is set. After this occurs, Fpdf method calls typically return without performing any operations and the error state is retained. This error management scheme facilitates PDF generation since individual method calls do not need to be examined for failure; it is generally sufficient to wait until after Output() is called. For the same reason, if an error occurs in the calling application during PDF generation, it may be desirable for the application to transfer the error to the Fpdf instance by calling the SetError() method or the SetErrorf() method. At any time during the life cycle of the Fpdf instance, the error state can be determined with a call to Ok() or Err(). The error itself can be retrieved with a call to Error(). This package is a relatively straightforward translation from the original FPDF library written in PHP (despite the caveat in the introduction to Effective Go). The API names have been retained even though the Go idiom would suggest otherwise (for example, pdf.GetX() is used rather than simply pdf.X()). The similarity of the two libraries makes the original FPDF website a good source of information. It includes a forum and FAQ. However, some internal changes have been made. Page content is built up using buffers (of type bytes.Buffer) rather than repeated string concatenation. Errors are handled as explained above rather than panicking. Output is generated through an interface of type io.Writer or io.WriteCloser. A number of the original PHP methods behave differently based on the type of the arguments that are passed to them; in these cases additional methods have been exported to provide similar functionality. Font definition files are produced in JSON rather than PHP. A side effect of running go test ./... is the production of a number of example PDFs. These can be found in the gofpdf/pdf directory after the tests complete. Please note that these examples run in the context of a test. In order run an example as a standalone application, you’ll need to examine fpdf_test.go for some helper routines, for example exampleFilename() and summary(). Example PDFs can be compared with reference copies in order to verify that they have been generated as expected. This comparison will be performed if a PDF with the same name as the example PDF is placed in the gofpdf/pdf/reference directory and if the third argument to ComparePDFFiles() in internal/example/example.go is true. (By default it is false.) The routine that summarizes an example will look for this file and, if found, will call ComparePDFFiles() to check the example PDF for equality with its reference PDF. If differences exist between the two files they will be printed to standard output and the test will fail. If the reference file is missing, the comparison is considered to succeed. In order to successfully compare two PDFs, the placement of internal resources must be consistent and the internal creation timestamps must be the same. To do this, the methods SetCatalogSort() and SetCreationDate() need to be called for both files. This is done automatically for all examples. Nothing special is required to use the standard PDF fonts (courier, helvetica, times, zapfdingbats) in your documents other than calling SetFont(). You should use AddUTF8Font() or AddUTF8FontFromBytes() to add a TrueType UTF-8 encoded font. Use RTL() and LTR() methods switch between “right-to-left” and “left-to-right” mode. In order to use a different non-UTF-8 TrueType or Type1 font, you will need to generate a font definition file and, if the font will be embedded into PDFs, a compressed version of the font file. This is done by calling the MakeFont function or using the included makefont command line utility. To create the utility, cd into the makefont subdirectory and run “go build”. This will produce a standalone executable named makefont. Select the appropriate encoding file from the font subdirectory and run the command as in the following example. In your PDF generation code, call AddFont() to load the font and, as with the standard fonts, SetFont() to begin using it. Most examples, including the package example, demonstrate this method. Good sources of free, open-source fonts include Google Fonts and DejaVu Fonts. The draw2d package is a two dimensional vector graphics library that can generate output in different forms. It uses gofpdf for its document production mode. gofpdf is a global community effort and you are invited to make it even better. If you have implemented a new feature or corrected a problem, please consider contributing your change to the project. A contribution that does not directly pertain to the core functionality of gofpdf should be placed in its own directory directly beneath the contrib directory. Here are guidelines for making submissions. Your change should - be compatible with the MIT License - be properly documented - be formatted with go fmt - include an example in fpdf_test.go if appropriate - conform to the standards of golint and go vet, that is, golint . and go vet . should not generate any warnings - not diminish test coverage Pull requests are the preferred means of accepting your changes. gofpdf is released under the MIT License. It is copyrighted by Kurt Jung and the contributors acknowledged below. This package’s code and documentation are closely derived from the FPDF library created by Olivier Plathey, and a number of font and image resources are copied directly from it. Bruno Michel has provided valuable assistance with the code. Drawing support is adapted from the FPDF geometric figures script by David Hernández Sanz. Transparency support is adapted from the FPDF transparency script by Martin Hall-May. Support for gradients and clipping is adapted from FPDF scripts by Andreas Würmser. Support for outline bookmarks is adapted from Olivier Plathey by Manuel Cornes. Layer support is adapted from Olivier Plathey. Support for transformations is adapted from the FPDF transformation script by Moritz Wagner and Andreas Würmser. PDF protection is adapted from the work of Klemen Vodopivec for the FPDF product. Lawrence Kesteloot provided code to allow an image’s extent to be determined prior to placement. Support for vertical alignment within a cell was provided by Stefan Schroeder. Ivan Daniluk generalized the font and image loading code to use the Reader interface while maintaining backward compatibility. Anthony Starks provided code for the Polygon function. Robert Lillack provided the Beziergon function and corrected some naming issues with the internal curve function. Claudio Felber provided implementations for dashed line drawing and generalized font loading. Stani Michiels provided support for multi-segment path drawing with smooth line joins, line join styles, enhanced fill modes, and has helped greatly with package presentation and tests. Templating is adapted by Marcus Downing from the FPDF_Tpl library created by Jan Slabon and Setasign. Jelmer Snoeck contributed packages that generate a variety of barcodes and help with registering images on the web. Jelmer Snoek and Guillermo Pascual augmented the basic HTML functionality with aligned text. Kent Quirk implemented backwards-compatible support for reading DPI from images that support it, and for setting DPI manually and then having it properly taken into account when calculating image size. Paulo Coutinho provided support for static embedded fonts. Dan Meyers added support for embedded JavaScript. David Fish added a generic alias-replacement function to enable, among other things, table of contents functionality. Andy Bakun identified and corrected a problem in which the internal catalogs were not sorted stably. Paul Montag added encoding and decoding functionality for templates, including images that are embedded in templates; this allows templates to be stored independently of gofpdf. Paul also added support for page boxes used in printing PDF documents. Wojciech Matusiak added supported for word spacing. Artem Korotkiy added support of UTF-8 fonts. Dave Barnes added support for imported objects and templates. Brigham Thompson added support for rounded rectangles. Joe Westcott added underline functionality and optimized image storage. Benoit KUGLER contributed support for rectangles with corners of unequal radius, modification times, and for file attachments and annotations. - Remove all legacy code page font support; use UTF-8 exclusively - Improve test coverage as reported by the coverage tool. Example demonstrates the generation of a simple PDF document. Note that since only core fonts are used (in this case Arial, a synonym for Helvetica), an empty string can be specified for the font directory in the call to New(). Note also that the example.Filename() and example.Summary() functions belong to a separate, internal package and are not part of the gofpdf library. If an error occurs at some point during the construction of the document, subsequent method calls exit immediately and the error is finally retrieved with the output call where it can be handled by the application.
Package lingua accurately detects the natural language of written text, be it long or short. Its task is simple: It tells you which language some text is written in. This is very useful as a preprocessing step for linguistic data in natural language processing applications such as text classification and spell checking. Other use cases, for instance, might include routing e-mails to the right geographically located customer service department, based on the e-mails' languages. Language detection is often done as part of large machine learning frameworks or natural language processing applications. In cases where you don't need the full-fledged functionality of those systems or don't want to learn the ropes of those, a small flexible library comes in handy. So far, the only other comprehensive open source library in the Go ecosystem for this task is Whatlanggo (https://github.com/abadojack/whatlanggo). Unfortunately, it has two major drawbacks: 1. Detection only works with quite lengthy text fragments. For very short text snippets such as Twitter messages, it does not provide adequate results. 2. The more languages take part in the decision process, the less accurate are the detection results. Lingua aims at eliminating these problems. It nearly does not need any configuration and yields pretty accurate results on both long and short text, even on single words and phrases. It draws on both rule-based and statistical methods but does not use any dictionaries of words. It does not need a connection to any external API or service either. Once the library has been downloaded, it can be used completely offline. Compared to other language detection libraries, Lingua's focus is on quality over quantity, that is, getting detection right for a small set of languages first before adding new ones. Currently, 75 languages are supported. They are listed as variants of type Language. Lingua is able to report accuracy statistics for some bundled test data available for each supported language. The test data for each language is split into three parts: 1. a list of single words with a minimum length of 5 characters 2. a list of word pairs with a minimum length of 10 characters 3. a list of complete grammatical sentences of various lengths Both the language models and the test data have been created from separate documents of the Wortschatz corpora (https://wortschatz.uni-leipzig.de) offered by Leipzig University, Germany. Data crawled from various news websites have been used for training, each corpus comprising one million sentences. For testing, corpora made of arbitrarily chosen websites have been used, each comprising ten thousand sentences. From each test corpus, a random unsorted subset of 1000 single words, 1000 word pairs and 1000 sentences has been extracted, respectively. Given the generated test data, I have compared the detection results of Lingua, and Whatlanggo running over the data of Lingua's supported 75 languages. Additionally, I have added Google's CLD3 (https://github.com/google/cld3/) to the comparison with the help of the gocld3 bindings (https://github.com/jmhodges/gocld3). Languages that are not supported by CLD3 or Whatlanggo are simply ignored during the detection process. Lingua clearly outperforms its contenders. Every language detector uses a probabilistic n-gram (https://en.wikipedia.org/wiki/N-gram) model trained on the character distribution in some training corpus. Most libraries only use n-grams of size 3 (trigrams) which is satisfactory for detecting the language of longer text fragments consisting of multiple sentences. For short phrases or single words, however, trigrams are not enough. The shorter the input text is, the less n-grams are available. The probabilities estimated from such few n-grams are not reliable. This is why Lingua makes use of n-grams of sizes 1 up to 5 which results in much more accurate prediction of the correct language. A second important difference is that Lingua does not only use such a statistical model, but also a rule-based engine. This engine first determines the alphabet of the input text and searches for characters which are unique in one or more languages. If exactly one language can be reliably chosen this way, the statistical model is not necessary anymore. In any case, the rule-based engine filters out languages that do not satisfy the conditions of the input text. Only then, in a second step, the probabilistic n-gram model is taken into consideration. This makes sense because loading less language models means less memory consumption and better runtime performance. In general, it is always a good idea to restrict the set of languages to be considered in the classification process using the respective api methods. If you know beforehand that certain languages are never to occur in an input text, do not let those take part in the classifcation process. The filtering mechanism of the rule-based engine is quite good, however, filtering based on your own knowledge of the input text is always preferable. There might be classification tasks where you know beforehand that your language data is definitely not written in Latin, for instance. The detection accuracy can become better in such cases if you exclude certain languages from the decision process or just explicitly include relevant languages. Knowing about the most likely language is nice but how reliable is the computed likelihood? And how less likely are the other examined languages in comparison to the most likely one? In the example below, a slice of ConfidenceValue is returned containing those languages which the calling instance of LanguageDetector has been built from. The entries are sorted by their confidence value in descending order. Each value is a probability between 0.0 and 1.0. The probabilities of all languages will sum to 1.0. If the language is unambiguously identified by the rule engine, the value 1.0 will always be returned for this language. The other languages will receive a value of 0.0. By default, Lingua uses lazy-loading to load only those language models on demand which are considered relevant by the rule-based filter engine. For web services, for instance, it is rather beneficial to preload all language models into memory to avoid unexpected latency while waiting for the service response. If you want to enable the eager-loading mode, you can do it as seen below. Multiple instances of LanguageDetector share the same language models in memory which are accessed asynchronously by the instances. By default, Lingua returns the most likely language for a given input text. However, there are certain words that are spelled the same in more than one language. The word `prologue`, for instance, is both a valid English and French word. Lingua would output either English or French which might be wrong in the given context. For cases like that, it is possible to specify a minimum relative distance that the logarithmized and summed up probabilities for each possible language have to satisfy. It can be stated as seen below. Be aware that the distance between the language probabilities is dependent on the length of the input text. The longer the input text, the larger the distance between the languages. So if you want to classify very short text phrases, do not set the minimum relative distance too high. Otherwise Unknown will be returned most of the time as in the example below. This is the return value for cases where language detection is not reliably possible.
Package codestarconnections provides the API client, operations, and parameter types for AWS CodeStar connections. This Amazon Web Services CodeStar Connections API Reference provides descriptions and usage examples of the operations and data types for the Amazon Web Services CodeStar Connections API. You can use the connections API to work with connections and installations. Connections are configurations that you use to connect Amazon Web Services resources to external code repositories. Each connection is a resource that can be given to services such as CodePipeline to connect to a third-party repository such as Bitbucket. For example, you can add the connection in CodePipeline so that it triggers your pipeline when a code change is made to your third-party code repository. Each connection is named and associated with a unique ARN that is used to reference the connection. When you create a connection, the console initiates a third-party connection handshake. Installations are the apps that are used to conduct this handshake. For example, the installation for the Bitbucket provider type is the Bitbucket app. When you create a connection, you can choose an existing installation or create one. When you want to create a connection to an installed provider type such as GitHub Enterprise Server, you create a host for your connections. You can work with connections by calling: CreateConnection DeleteConnection GetConnection ListConnections You can work with hosts by calling: CreateHost DeleteHost GetHost ListHosts You can work with tags in Amazon Web Services CodeStar Connections by calling the following: ListTagsForResource TagResource UntagResource For information about how to use Amazon Web Services CodeStar Connections, see the Developer Tools User Guide.
Package httpcache provides a http.RoundTripper implementation that works as a mostly RFC-compliant cache for http responses. It is only suitable for use as a 'private' cache (i.e. for a web-browser or an API-client and not for a shared proxy).
Package synthetics provides the API client, operations, and parameter types for Synthetics. You can use Amazon CloudWatch Synthetics to continually monitor your services. You can create and manage canaries, which are modular, lightweight scripts that monitor your endpoints and APIs from the outside-in. You can set up your canaries to run 24 hours a day, once per minute. The canaries help you check the availability and latency of your web services and troubleshoot anomalies by investigating load time data, screenshots of the UI, logs, and metrics. The canaries seamlessly integrate with CloudWatch ServiceLens to help you trace the causes of impacted nodes in your applications. For more information, see Using ServiceLens to Monitor the Health of Your Applicationsin the Amazon CloudWatch User Guide. Before you create and manage canaries, be aware of the security considerations. For more information, see Security Considerations for Synthetics Canaries.
Package codestarnotifications provides the API client, operations, and parameter types for AWS CodeStar Notifications. This AWS CodeStar Notifications API Reference provides descriptions and usage examples of the operations and data types for the AWS CodeStar Notifications API. You can use the AWS CodeStar Notifications API to work with the following objects: Notification rules, by calling the following: CreateNotificationRule DeleteNotificationRule DescribeNotificationRule ListNotificationRules UpdateNotificationRule Subscribe Unsubscribe Targets, by calling the following: DeleteTarget ListTargets Events, by calling the following: ListEventTypes Tags, by calling the following: ListTagsForResource TagResource UntagResource For information about how to use AWS CodeStar Notifications, see the Amazon Web Services Developer Tools Console User Guide.
Package account provides the API client, operations, and parameter types for AWS Account. Operations for Amazon Web Services Account Management
Package snowball provides the API client, operations, and parameter types for Amazon Import/Export Snowball. The Amazon Web Services Snow Family provides a petabyte-scale data transport solution that uses secure devices to transfer large amounts of data between your on-premises data centers and Amazon Simple Storage Service (Amazon S3). The Snow Family commands described here provide access to the same functionality that is available in the Amazon Web Services Snow Family Management Console, which enables you to create and manage jobs for a Snow Family device. To transfer data locally with a Snow Family device, you'll need to use the Snowball Edge client or the Amazon S3 API Interface for Snowball or OpsHub for Snow Family. For more information, see the User Guide.
Package sms provides the API client, operations, and parameter types for AWS Server Migration Service. We recommend Amazon Web Services Application Migration Service (Amazon Web Services MGN) as the primary migration service for lift-and-shift migrations. If Amazon Web Services MGN is unavailable in a specific Amazon Web Services Region, you can use the Server Migration Service APIs through March 2023. Server Migration Service (Server Migration Service) makes it easier and faster for you to migrate your on-premises workloads to Amazon Web Services. To learn more about Server Migration Service, see the following resources: Server Migration Service product page Server Migration Service User Guide Deprecated: AWS Server Migration Service is Deprecated.
Package quicksight provides the API client, operations, and parameter types for Amazon QuickSight. Amazon QuickSight is a fully managed, serverless business intelligence service for the Amazon Web Services Cloud that makes it easy to extend data and insights to every user in your organization. This API reference contains documentation for a programming interface that you can use to manage Amazon QuickSight.
Package securitylake provides the API client, operations, and parameter types for Amazon Security Lake. Amazon Security Lake is a fully managed security data lake service. You can use Security Lake to automatically centralize security data from cloud, on-premises, and custom sources into a data lake that's stored in your Amazon Web Services account. Amazon Web Services Organizations is an account management service that lets you consolidate multiple Amazon Web Services accounts into an organization that you create and centrally manage. With Organizations, you can create member accounts and invite existing accounts to join your organization. Security Lake helps you analyze security data for a more complete understanding of your security posture across the entire organization. It can also help you improve the protection of your workloads, applications, and data. The data lake is backed by Amazon Simple Storage Service (Amazon S3) buckets, and you retain ownership over your data. Amazon Security Lake integrates with CloudTrail, a service that provides a record of actions taken by a user, role, or an Amazon Web Services service. In Security Lake, CloudTrail captures API calls for Security Lake as events. The calls captured include calls from the Security Lake console and code calls to the Security Lake API operations. If you create a trail, you can enable continuous delivery of CloudTrail events to an Amazon S3 bucket, including events for Security Lake. If you don't configure a trail, you can still view the most recent events in the CloudTrail console in Event history. Using the information collected by CloudTrail you can determine the request that was made to Security Lake, the IP address from which the request was made, who made the request, when it was made, and additional details. To learn more about Security Lake information in CloudTrail, see the Amazon Security Lake User Guide. Security Lake automates the collection of security-related log and event data from integrated Amazon Web Services and third-party services. It also helps you manage the lifecycle of data with customizable retention and replication settings. Security Lake converts ingested data into Apache Parquet format and a standard open-source schema called the Open Cybersecurity Schema Framework (OCSF). Other Amazon Web Services and third-party services can subscribe to the data that's stored in Security Lake for incident response and security data analytics.
Package macie provides the API client, operations, and parameter types for Amazon Macie. Amazon Macie Classic Amazon Macie Classic has been discontinued and is no longer available. A new Amazon Macie is now available with significant design improvements and additional features, at a lower price and in most Amazon Web Services Regions. We encourage you to take advantage of the new and improved features, and benefit from the reduced cost. To learn about features and pricing for the new Macie, see Amazon Macie (http://aws.amazon.com/macie/) . To learn how to use the new Macie, see the Amazon Macie User Guide (https://docs.aws.amazon.com/macie/latest/user/what-is-macie.html) .
Package fpdf implements a PDF document generator with high level support for text, drawing and images. - UTF-8 support - Choice of measurement unit, page format and margins - Page header and footer management - Automatic page breaks, line breaks, and text justification - Inclusion of JPEG, PNG, GIF, TIFF and basic path-only SVG images - Colors, gradients and alpha channel transparency - Outline bookmarks - Internal and external links - TrueType, Type1 and encoding support - Page compression - Lines, Bézier curves, arcs, and ellipses - Rotation, scaling, skewing, translation, and mirroring - Clipping - Document protection - Layers - Templates - Barcodes - Charting facility - Import PDFs as templates go-pdf/fpdf has no dependencies other than the Go standard library. All tests pass on Linux, Mac and Windows platforms. go-pdf/fpdf supports UTF-8 TrueType fonts and “right-to-left” languages. Note that Chinese, Japanese, and Korean characters may not be included in many general purpose fonts. For these languages, a specialized font (for example, NotoSansSC for simplified Chinese) can be used. Also, support is provided to automatically translate UTF-8 runes to code page encodings for languages that have fewer than 256 glyphs. To install the package on your system, run Later, to receive updates, run The following Go code generates a simple PDF file. See the functions in the fpdf_test.go file (shown as examples in this documentation) for more advanced PDF examples. If an error occurs in an Fpdf method, an internal error field is set. After this occurs, Fpdf method calls typically return without performing any operations and the error state is retained. This error management scheme facilitates PDF generation since individual method calls do not need to be examined for failure; it is generally sufficient to wait until after Output() is called. For the same reason, if an error occurs in the calling application during PDF generation, it may be desirable for the application to transfer the error to the Fpdf instance by calling the SetError() method or the SetErrorf() method. At any time during the life cycle of the Fpdf instance, the error state can be determined with a call to Ok() or Err(). The error itself can be retrieved with a call to Error(). This package is a relatively straightforward translation from the original FPDF library written in PHP (despite the caveat in the introduction to Effective Go). The API names have been retained even though the Go idiom would suggest otherwise (for example, pdf.GetX() is used rather than simply pdf.X()). The similarity of the two libraries makes the original FPDF website a good source of information. It includes a forum and FAQ. However, some internal changes have been made. Page content is built up using buffers (of type bytes.Buffer) rather than repeated string concatenation. Errors are handled as explained above rather than panicking. Output is generated through an interface of type io.Writer or io.WriteCloser. A number of the original PHP methods behave differently based on the type of the arguments that are passed to them; in these cases additional methods have been exported to provide similar functionality. Font definition files are produced in JSON rather than PHP. A side effect of running go test ./... is the production of a number of example PDFs. These can be found in the go-pdf/fpdf/pdf directory after the tests complete. Please note that these examples run in the context of a test. In order run an example as a standalone application, you’ll need to examine fpdf_test.go for some helper routines, for example exampleFilename() and summary(). Example PDFs can be compared with reference copies in order to verify that they have been generated as expected. This comparison will be performed if a PDF with the same name as the example PDF is placed in the go-pdf/fpdf/pdf/reference directory and if the third argument to ComparePDFFiles() in internal/example/example.go is true. (By default it is false.) The routine that summarizes an example will look for this file and, if found, will call ComparePDFFiles() to check the example PDF for equality with its reference PDF. If differences exist between the two files they will be printed to standard output and the test will fail. If the reference file is missing, the comparison is considered to succeed. In order to successfully compare two PDFs, the placement of internal resources must be consistent and the internal creation timestamps must be the same. To do this, the methods SetCatalogSort() and SetCreationDate() need to be called for both files. This is done automatically for all examples. Nothing special is required to use the standard PDF fonts (courier, helvetica, times, zapfdingbats) in your documents other than calling SetFont(). You should use AddUTF8Font() or AddUTF8FontFromBytes() to add a TrueType UTF-8 encoded font. Use RTL() and LTR() methods switch between “right-to-left” and “left-to-right” mode. In order to use a different non-UTF-8 TrueType or Type1 font, you will need to generate a font definition file and, if the font will be embedded into PDFs, a compressed version of the font file. This is done by calling the MakeFont function or using the included makefont command line utility. To create the utility, cd into the makefont subdirectory and run “go build”. This will produce a standalone executable named makefont. Select the appropriate encoding file from the font subdirectory and run the command as in the following example. In your PDF generation code, call AddFont() to load the font and, as with the standard fonts, SetFont() to begin using it. Most examples, including the package example, demonstrate this method. Good sources of free, open-source fonts include Google Fonts and DejaVu Fonts. The draw2d package is a two dimensional vector graphics library that can generate output in different forms. It uses gofpdf for its document production mode. gofpdf is a global community effort and you are invited to make it even better. If you have implemented a new feature or corrected a problem, please consider contributing your change to the project. A contribution that does not directly pertain to the core functionality of gofpdf should be placed in its own directory directly beneath the contrib directory. Here are guidelines for making submissions. Your change should - be compatible with the MIT License - be properly documented - be formatted with go fmt - include an example in fpdf_test.go if appropriate - conform to the standards of golint and go vet, that is, golint . and go vet . should not generate any warnings - not diminish test coverage Pull requests are the preferred means of accepting your changes. gofpdf is released under the MIT License. It is copyrighted by Kurt Jung and the contributors acknowledged below. This package’s code and documentation are closely derived from the FPDF library created by Olivier Plathey, and a number of font and image resources are copied directly from it. Bruno Michel has provided valuable assistance with the code. Drawing support is adapted from the FPDF geometric figures script by David Hernández Sanz. Transparency support is adapted from the FPDF transparency script by Martin Hall-May. Support for gradients and clipping is adapted from FPDF scripts by Andreas Würmser. Support for outline bookmarks is adapted from Olivier Plathey by Manuel Cornes. Layer support is adapted from Olivier Plathey. Support for transformations is adapted from the FPDF transformation script by Moritz Wagner and Andreas Würmser. PDF protection is adapted from the work of Klemen Vodopivec for the FPDF product. Lawrence Kesteloot provided code to allow an image’s extent to be determined prior to placement. Support for vertical alignment within a cell was provided by Stefan Schroeder. Ivan Daniluk generalized the font and image loading code to use the Reader interface while maintaining backward compatibility. Anthony Starks provided code for the Polygon function. Robert Lillack provided the Beziergon function and corrected some naming issues with the internal curve function. Claudio Felber provided implementations for dashed line drawing and generalized font loading. Stani Michiels provided support for multi-segment path drawing with smooth line joins, line join styles, enhanced fill modes, and has helped greatly with package presentation and tests. Templating is adapted by Marcus Downing from the FPDF_Tpl library created by Jan Slabon and Setasign. Jelmer Snoeck contributed packages that generate a variety of barcodes and help with registering images on the web. Jelmer Snoek and Guillermo Pascual augmented the basic HTML functionality with aligned text. Kent Quirk implemented backwards-compatible support for reading DPI from images that support it, and for setting DPI manually and then having it properly taken into account when calculating image size. Paulo Coutinho provided support for static embedded fonts. Dan Meyers added support for embedded JavaScript. David Fish added a generic alias-replacement function to enable, among other things, table of contents functionality. Andy Bakun identified and corrected a problem in which the internal catalogs were not sorted stably. Paul Montag added encoding and decoding functionality for templates, including images that are embedded in templates; this allows templates to be stored independently of gofpdf. Paul also added support for page boxes used in printing PDF documents. Wojciech Matusiak added supported for word spacing. Artem Korotkiy added support of UTF-8 fonts. Dave Barnes added support for imported objects and templates. Brigham Thompson added support for rounded rectangles. Joe Westcott added underline functionality and optimized image storage. Benoit KUGLER contributed support for rectangles with corners of unequal radius, modification times, and for file attachments and annotations. - Remove all legacy code page font support; use UTF-8 exclusively - Improve test coverage as reported by the coverage tool. Example demonstrates the generation of a simple PDF document. Note that since only core fonts are used (in this case Arial, a synonym for Helvetica), an empty string can be specified for the font directory in the call to New(). Note also that the example.Filename() and example.SummaryCompare() functions belong to a separate, internal package and are not part of the gofpdf library. If an error occurs at some point during the construction of the document, subsequent method calls exit immediately and the error is finally retrieved with the output call where it can be handled by the application.
Package uplink is the main entrypoint to interacting with Storj Labs' decentralized storage network. Sign up for an account on a Satellite today! https://storj.io/ The fundamental unit of access in the Storj Labs storage network is the Access Grant. An access grant is a serialized structure that is internally comprised of an API Key, a set of encryption key information, and information about which Storj Labs or Tardigrade network Satellite is responsible for the metadata. An access grant is always associated with exactly one Project on one Satellite. If you don't already have an access grant, you will need make an account on a Satellite, generate an API Key, and encapsulate that API Key with encryption information into an access grant. If you don't already have an account on a Satellite, first make one at https://storj.io/ and note the Satellite you choose (such as us1.storj.io, eu1.storj.io, etc). Then, make an API Key in the web interface. The first step to any project is to generate a restricted access grant with the minimal permissions that are needed. Access grants contains all encryption information and they should be restricted as much as possible. To make an access grant, you can create one using our Uplink CLI tool's 'share' subcommand (after setting up the Uplink CLI tool), or you can make one as follows: In the above example, 'serializedAccess' is a human-readable string that represents read-only access to just the "logs" bucket, and is only able to decrypt that one bucket thanks to hierarchical deterministic key derivation. Note: RequestAccessWithPassphrase is CPU-intensive, and your application's normal lifecycle should avoid it and use ParseAccess where possible instead. To revoke an access grant see the Project.RevokeAccess method. A common architecture for building applications is to have a single bucket for the entire application to store the objects of all users. In such architecture, it is of utmost importance to guarantee that users can access only their objects but not the objects of other users. This can be achieved by implementing an app-specific authentication service that generates an access grant for each user by restricting the main access grant of the application. This user-specific access grant is restricted to access the objects only within a specific key prefix defined for the user. When initialized, the authentication server creates the main application access grant with an empty passphrase as follows. The authentication service does not hold any encryption information about users, so the passphrase used to request the main application access grant does not matter. The encryption keys related to user objects will be overridden in a next step on the client-side. It is important that once set to a specific value, this passphrase never changes in the future. Therefore, the best practice is to use an empty passphrase. Whenever a user is authenticated, the authentication service generates the user-specific access grant as follows: The userID is something that uniquely identifies the users in the application and must never change. Along with the user access grant, the authentication service should return a user-specific salt. The salt must be always the same for this user. The salt size is 16-byte or 32-byte. Once the application receives the user-specific access grant and the user-specific salt from the authentication service, it has to override the encryption key in the access grant, so users can encrypt and decrypt their files with encryption keys derived from their passphrase. The user-specific access grant is now ready to use by the application. Once you have a valid access grant, you can open a Project with the access that access grant allows for. Projects allow you to manage buckets and objects within buckets. A bucket represents a collection of objects. You can upload, download, list, and delete objects of any size or shape. Objects within buckets are represented by keys, where keys can optionally be listed using the "/" delimiter. Note: Objects and object keys within buckets are end-to-end encrypted, but bucket names themselves are not encrypted, so the billing interface on the Satellite can show you bucket line items. Objects support a couple kilobytes of arbitrary key/value metadata, and arbitrary-size primary data streams with the ability to read at arbitrary offsets. If you want to access only a small subrange of the data you uploaded, you can use `uplink.DownloadOptions` to specify the download range. Listing objects returns an iterator that allows to walk through all the items:
Package iotdataplane provides the API client, operations, and parameter types for AWS IoT Data Plane. IoT data enables secure, bi-directional communication between Internet-connected things (such as sensors, actuators, embedded devices, or smart appliances) and the Amazon Web Services cloud. It implements a broker for applications and things to publish messages over HTTP (Publish) and retrieve, update, and delete shadows. A shadow is a persistent representation of your things and their state in the Amazon Web Services cloud. Find the endpoint address for actions in IoT data by running this CLI command: The service name used by Amazon Web ServicesSignature Version 4 to sign requests is: iotdevicegateway.
Package guardian . Go-Guardian is a golang library that provides a simple, clean, and idiomatic way to create powerful modern API and web authentication. Go-Guardian sole purpose is to authenticate requests, which it does through an extensible set of authentication methods known as strategies. Go-Guardian does not mount routes or assume any particular database schema, which maximizes flexibility and allows decisions to be made by the developer. The API is simple: you provide go-guardian a request to authenticate, and go-guardian invoke strategies to authenticate end-user request. Strategies provide callbacks for controlling what occurs when authentication `should` succeeds or fails. Why Go-Guardian? When building a modern application, you don't want to implement authentication module from scratch; you want to focus on building awesome software. go-guardian is here to help with that. Here are a few bullet point reasons you might like to try it out:
Package fetchbot provides a simple and flexible web crawler that follows the robots.txt policies and crawl delays. It is very much a rewrite of gocrawl (https://github.com/PuerkitoBio/gocrawl) with a simpler API, less features built-in, but at the same time more flexibility. As for Go itself, sometimes less is more! To install, simply run in a terminal: The package has a single external dependency, robotstxt (https://github.com/temoto/robotstxt). It also integrates code from the iq package (https://github.com/kylelemons/iq). The API documentation is available on godoc.org (http://godoc.org/github.com/PuerkitoBio/fetchbot). The following example (taken from /example/short/main.go) shows how to create and start a Fetcher, one way to send commands, and how to stop the fetcher once all commands have been handled. A more complex and complete example can be found in the repository, at /example/full/. Basically, a Fetcher is an instance of a web crawler, independent of other Fetchers. It receives Commands via the Queue, executes the requests, and calls a Handler to process the responses. A Command is an interface that tells the Fetcher which URL to fetch, and which HTTP method to use (i.e. "GET", "HEAD", ...). A call to Fetcher.Start() returns the Queue associated with this Fetcher. This is the thread-safe object that can be used to send commands, or to stop the crawler. Both the Command and the Handler are interfaces, and may be implemented in various ways. They are defined like so: A Context is a struct that holds the Command and the Queue, so that the Handler always knows which Command initiated this call, and has a handle to the Queue. A Handler is similar to the net/http Handler, and middleware-style combinations can be built on top of it. A HandlerFunc type is provided so that simple functions with the right signature can be used as Handlers (like net/http.HandlerFunc), and there is also a multiplexer Mux that can be used to dispatch calls to different Handlers based on some criteria. The Fetcher recognizes a number of interfaces that the Command may implement, for more advanced needs. * BasicAuthProvider: Implement this interface to specify the basic authentication credentials to set on the request. * CookiesProvider: If the Command implements this interface, the provided Cookies will be set on the request. * HeaderProvider: Implement this interface to specify the headers to set on the request. * ReaderProvider: Implement this interface to set the body of the request, via an io.Reader. * ValuesProvider: Implement this interface to set the body of the request, as form-encoded values. If the Content-Type is not specifically set via a HeaderProvider, it is set to "application/x-www-form-urlencoded". ReaderProvider and ValuesProvider should be mutually exclusive as they both set the body of the request. If both are implemented, the ReaderProvider interface is used. * Handler: Implement this interface if the Command's response should be handled by a specific callback function. By default, the response is handled by the Fetcher's Handler, but if the Command implements this, this handler function takes precedence and the Fetcher's Handler is ignored. Since the Command is an interface, it can be a custom struct that holds additional information, such as an ID for the URL (e.g. from a database), or a depth counter so that the crawling stops at a certain depth, etc. For basic commands that don't require additional information, the package provides the Cmd struct that implements the Command interface. This is the Command implementation used when using the various Queue.SendString\* methods. There is also a convenience HandlerCmd struct for the commands that should be handled by a specific callback function. It is a Command with a Handler interface implementation. The Fetcher has a number of fields that provide further customization: * HttpClient : By default, the Fetcher uses the net/http default Client to make requests. A different client can be set on the Fetcher.HttpClient field. * CrawlDelay : That value is used only if there is no delay specified by the robots.txt of a given host. * UserAgent : Sets the user agent string to use for the requests and to validate against the robots.txt entries. * WorkerIdleTTL : Sets the duration that a worker goroutine can wait without receiving new commands to fetch. If the idle time-to-live is reached, the worker goroutine is stopped and its resources are released. This can be especially useful for long-running crawlers. * AutoClose : If true, closes the queue automatically once the number of active hosts reach 0. * DisablePoliteness : If true, ignores the robots.txt policies of the hosts. What fetchbot doesn't do - especially compared to gocrawl - is that it doesn't keep track of already visited URLs, and it doesn't normalize the URLs. This is outside the scope of this package - all commands sent on the Queue will be fetched. Normalization can easily be done (e.g. using https://github.com/PuerkitoBio/purell) before sending the Command to the Fetcher. How to keep track of visited URLs depends on the use-case of the specific crawler, but for an example, see /example/full/main.go. The BSD 3-Clause license (http://opensource.org/licenses/BSD-3-Clause), the same as the Go language. The iq_slice.go file is under the CDDL-1.0 license (details in the source file).
<h1 align="center">IrisAdmin</h1> [![Build Status](https://app.travis-ci.com/snowlyg/iris-admin.svg?branch=master)](https://app.travis-ci.com/snowlyg/iris-admin) [![LICENSE](https://img.shields.io/github/license/snowlyg/iris-admin)](https://github.com/snowlyg/iris-admin/blob/master/LICENSE) [![go doc](https://godoc.org/github.com/snowlyg/iris-admin?status.svg)](https://godoc.org/github.com/snowlyg/iris-admin) [![go report](https://goreportcard.com/badge/github.com/snowlyg/iris-admin)](https://goreportcard.com/badge/github.com/snowlyg/iris-admin) [![Build Status](https://codecov.io/gh/snowlyg/iris-admin/branch/master/graph/badge.svg)](https://codecov.io/gh/snowlyg/iris-admin) [简体中文](./README.md) | English #### Project url [GITHUB](https://github.com/snowlyg/iris-admin) | [GITEE](https://gitee.com/snowlyg/iris-admin) **** > This project just for learning golang, welcome to give your suggestions! #### Documentation - [IRIS-ADMIN-DOC](https://doc.snowlyg.com) - [IRIS V12 document for chinese](https://github.com/snowlyg/iris/wiki) - [godoc](https://pkg.go.dev/github.com/snowlyg/iris-admin?utm_source=godoc) [![Gitter](https://badges.gitter.im/iris-go-tenancy/community.svg)](https://gitter.im/iris-go-tenancy/community?utm_source=badge&utm_medium=badge&utm_campaign=pr-badge) [![Join the chat at https://gitter.im/iris-go-tenancy/iris-admin](https://badges.gitter.im/iris-go-tenancy/iris-admin.svg)](https://gitter.im/iris-go-tenancy/iris-admin?utm_source=badge&utm_medium=badge&utm_campaign=pr-badge&utm_content=badge) #### BLOG - [REST API with iris-go web framework](https://blog.snowlyg.com/iris-go-api-1/) - [How to user iris-go with casbin](https://blog.snowlyg.com/iris-go-api-2/) --- #### Getting started - Get master package , Notice must use `master` version. ```sh ``` #### Program introduction ##### The project consists of multiple plugins, each with different functions - [viper_server] ```go package cache import ( ) var CONFIG Redis // getViperConfig get initialize config db: ` + db + ` addr: "` + CONFIG.Addr + `" password: "` + CONFIG.Password + `" pool-size: ` + poolSize), ``` - [zap_server] ```go ``` - [database] ```go ``` - [casbin] ```go ``` - [cache] ```go ``` - [operation] - [cron_server] ```go ``` - [web] - ```go // WebFunc web framework // - GetTestClient test client // - GetTestLogin test for login // - AddWebStatic add web static path // - AddUploadStatic add upload static path // - Run start ``` - [mongodb] #### Initialize database ##### Simple - Use gorm's `AutoMigrate()` function to auto migrate database. ```go package main import ( ) ``` ##### Custom migrate tools - Use `gormigrate` third party package. Tt's helpful for database migrate and program development. - Detail is see [iris-admin-cmd](https://github.com/snowlyg/iris-admin-example/blob/main/iris/cmd/main.go). --- - Add main.go file. ```go package main import ( ) ``` #### Run project - When you first run this cmd `go run main.go` , you can see some config files in the `config` directory, - and `rbac_model.conf` will be created in your project root directory. ```sh go run main.go ``` #### Module - You can use [iris-admin-rbac](https://github.com/snowlyg/iris-admin-rbac) package to add rbac function for your project quickly. - Your can use AddModule() to add other modules . ```go package main import ( ) ``` #### Default static file path - A static file access path has been built in by default - Static files will upload to `/static/upload` directory. - You can set this config key `static-path` to change the default directory. ```yaml system: ``` #### Use with front-end framework , e.g. vue - Default,you must build vue to the `dist` directory. - Naturally you can set this config key `web-path` to change the default directory. ```go package main import ( ) ``` #### Example - [iris](https://github.com/snowlyg/iris-admin-example/tree/main/iris) - [gin](https://github.com/snowlyg/iris-admin-example/tree/main/gin) #### RBAC - [iris-admin-rbac](https://github.com/snowlyg/iris-admin-rbac) #### Unit test and documentation - Before start unit tests, you need to set two system environment variables `mysqlPwd` and `mysqlAddr`,that will be used when running the test instance。 - helper/tests(https://github.com/snowlyg/helper/tree/main/tests) package the unit test used, it's simple package base on httpexpect/v2(https://github.com/gavv/httpexpect). - [example for unit test](https://github.com/snowlyg/iris-admin-rbac/tree/main/iris/perm/tests) - [example for unit test](https://github.com/snowlyg/iris-admin-rbac/tree/main/gin/authority/test) Before create a http api unit test , you need create a base test file named `main_test.go` , this file have some unit test step : ***Suggest use docker mysql, otherwise if the test fails, there will be a lot of test data left behind*** - 1.create database before test start and delete database when test finish. - 2.create tables and seed test data at once time. - 3.`PartyFunc` and `SeedFunc` use to custom someting for your test model. 内容如下所示: ***main_test.go*** ```go package test import ( ) var TestServer *web_gin.WebServer var TestClient *httptest.Client ``` ***index_test.go*** ```go package test import ( ) var ( ) ``` ## 🔋 JetBrains OS licenses <a href="https://www.jetbrains.com/?from=iris-admin" target="_blank"><img src="https://raw.githubusercontent.com/panjf2000/illustrations/master/jetbrains/jetbrains-variant-4.png" width="230" align="middle"/></a> ## ☕️ Buy me a coffee > Please be sure to leave your name, GitHub account or other social media accounts when you donate by the following means so that I can add it to the list of donors as a token of my appreciation. - [为爱发电](https://afdian.net/@snowlyg/plan) - [donating](https://paypal.me/snowlyg?country.x=C2&locale.x=zh_XC)
Package networkmanager provides the API client, operations, and parameter types for AWS Network Manager. Amazon Web Services enables you to centrally manage your Amazon Web Services Cloud WAN core network and your Transit Gateway network across Amazon Web Services accounts, Regions, and on-premises locations.
Package bindata converts any file into manageable Go source code. Useful for embedding binary data into a go program. The file data is optionally gzip compressed before being converted to a raw byte slice. The following paragraphs cover some of the customization options which can be specified in the Config struct, which must be passed into the Translate() call. When used with the `Debug` option, the generated code does not actually include the asset data. Instead, it generates function stubs which load the data from the original file on disk. The asset API remains identical between debug and release builds, so your code will not have to change. This is useful during development when you expect the assets to change often. The host application using these assets uses the same API in both cases and will not have to care where the actual data comes from. An example is a Go webserver with some embedded, static web content like HTML, JS and CSS files. While developing it, you do not want to rebuild the whole server and restart it every time you make a change to a bit of javascript. You just want to build and launch the server once. Then just press refresh in the browser to see those changes. Embedding the assets with the `debug` flag allows you to do just that. When you are finished developing and ready for deployment, just re-invoke `go-bindata` without the `-debug` flag. It will now embed the latest version of the assets. The `NoMemCopy` option will alter the way the output file is generated. It will employ a hack that allows us to read the file data directly from the compiled program's `.rodata` section. This ensures that when we call call our generated function, we omit unnecessary memcopies. The downside of this, is that it requires dependencies on the `reflect` and `unsafe` packages. These may be restricted on platforms like AppEngine and thus prevent you from using this mode. Another disadvantage is that the byte slice we create, is strictly read-only. For most use-cases this is not a problem, but if you ever try to alter the returned byte slice, a runtime panic is thrown. Use this mode only on target platforms where memory constraints are an issue. The default behaviour is to use the old code generation method. This prevents the two previously mentioned issues, but will employ at least one extra memcopy and thus increase memory requirements. For instance, consider the following two examples: This would be the default mode, using an extra memcopy but gives a safe implementation without dependencies on `reflect` and `unsafe`: Here is the same functionality, but uses the `.rodata` hack. The byte slice returned from this example can not be written to without generating a runtime error. The NoCompress option indicates that the supplied assets are *not* GZIP compressed before being turned into Go code. The data should still be accessed through a function call, so nothing changes in the API. This feature is useful if you do not care for compression, or the supplied resource is already compressed. Doing it again would not add any value and may even increase the size of the data. The default behaviour of the program is to use compression. The keys used in the `_bindata` map are the same as the input file name passed to `go-bindata`. This includes the path. In most cases, this is not desirable, as it puts potentially sensitive information in your code base. For this purpose, the tool supplies another command line flag `-prefix`. This accepts a [regular expression](https://github.com/google/re2/wiki/Syntax) string, which will be used to match a portion of the map keys and function names that should be stripped out. For example, running without the `-prefix` flag, we get: Running with the `-prefix` flag, we get: With the optional Tags field, you can specify any go build tags that must be fulfilled for the output file to be included in a build. This is useful when including binary data in multiple formats, where the desired format is specified at build time with the appropriate tags. The tags are appended to a `// +build` line in the beginning of the output file and must follow the build tags syntax specified by the go tool. When you want to embed big files or plenty of files, then the generated output is really big (maybe over 3Mo). Even if the generated file shouldn't be read, you probably need use analysis tool or an editor which can become slower with a such file. Generating big files can be avoided with `-split` command line option. In that case, the given output is a directory path, the tool will generate one source file per file to embed, and it will generate a common file nammed `common.go` which contains commons parts like API.
Package dom provides Go bindings for the JavaScript DOM APIs. This package is an in progress effort of providing idiomatic Go bindings for the DOM, wrapping the JavaScript DOM APIs. The API is neither complete nor frozen yet, but a great amount of the DOM is already usable. While the package tries to be idiomatic Go, it also tries to stick closely to the JavaScript APIs, so that one does not need to learn a new set of APIs if one is already familiar with it. One decision that hasn't been made yet is what parts exactly should be part of this package. It is, for example, possible that the canvas APIs will live in a separate package. On the other hand, types such as StorageEvent (the event that gets fired when the HTML5 storage area changes) will be part of this package, simply due to how the DOM is structured – even if the actual storage APIs might live in a separate package. This might require special care to avoid circular dependencies. The documentation for some of the identifiers is based on the MDN Web Docs by Mozilla Contributors (https://developer.mozilla.org/en-US/docs/Web/API), licensed under CC-BY-SA 2.5 (https://creativecommons.org/licenses/by-sa/2.5/). The usual entry point of using the dom package is by using the GetWindow() function which will return a Window, from which you can get things such as the current Document. The DOM has a big amount of different element and event types, but they all follow three interfaces. All functions that work on or return generic elements/events will return one of the three interfaces Element, HTMLElement or Event. In these interface values there will be concrete implementations, such as HTMLParagraphElement or FocusEvent. It's also not unusual that values of type Element also implement HTMLElement. In all cases, type assertions can be used. Example: Several functions in the JavaScript DOM return "live" collections of elements, that is collections that will be automatically updated when elements get removed or added to the DOM. Our bindings, however, return static slices of elements that, once created, will not automatically reflect updates to the DOM. This is primarily done so that slices can actually be used, as opposed to a form of iterator, but also because we think that magically changing data isn't Go's nature and that snapshots of state are a lot easier to reason about. This does not, however, mean that all objects are snapshots. Elements, events and generally objects that aren't slices or maps are simple wrappers around JavaScript objects, and as such attributes as well as method calls will always return the most current data. To reflect this behavior, these bindings use pointers to make the semantics clear. Consider the following example: The above example will print `true`. Some objects in the JS API have two versions of attributes, one that returns a string and one that returns a DOMTokenList to ease manipulation of string-delimited lists. Some other objects only provide DOMTokenList, sometimes DOMSettableTokenList. To simplify these bindings, only the DOMTokenList variant will be made available, by the type TokenList. In cases where the string attribute was the only way to completely replace the value, our TokenList will provide Set([]string) and SetString(string) methods, which will be able to accomplish the same. Additionally, our TokenList will provide methods to convert it to strings and slices. This package has a relatively stable API. However, there will be backwards incompatible changes from time to time. This is because the package isn't complete yet, as well as because the DOM is a moving target, and APIs do change sometimes. While an attempt is made to reduce changing function signatures to a minimum, it can't always be guaranteed. Sometimes mistakes in the bindings are found that require changing arguments or return values. Interfaces defined in this package may also change on a semi-regular basis, as new methods are added to them. This happens because the bindings aren't complete and can never really be, as new features are added to the DOM.
Package pinpointemail provides the API client, operations, and parameter types for Amazon Pinpoint Email Service. Welcome to the Amazon Pinpoint Email API Reference. This guide provides information about the Amazon Pinpoint Email API (version 1.0), including supported operations, data types, parameters, and schemas. Amazon Pinpointis an AWS service that you can use to engage with your customers across multiple messaging channels. You can use Amazon Pinpoint to send email, SMS text messages, voice messages, and push notifications. The Amazon Pinpoint Email API provides programmatic access to options that are unique to the email channel and supplement the options provided by the Amazon Pinpoint API. If you're new to Amazon Pinpoint, you might find it helpful to also review the Amazon Pinpoint Developer Guide . The Amazon Pinpoint Developer Guide provides tutorials, code samples, and procedures that demonstrate how to use Amazon Pinpoint features programmatically and how to integrate Amazon Pinpoint functionality into mobile apps and other types of applications. The guide also provides information about key topics such as Amazon Pinpoint integration with other AWS services and the limits that apply to using the service. The Amazon Pinpoint Email API is available in several AWS Regions and it provides an endpoint for each of these Regions. For a list of all the Regions and endpoints where the API is currently available, see AWS Service Endpointsin the Amazon Web Services General Reference. To learn more about AWS Regions, see Managing AWS Regionsin the Amazon Web Services General Reference. In each Region, AWS maintains multiple Availability Zones. These Availability Zones are physically isolated from each other, but are united by private, low-latency, high-throughput, and highly redundant network connections. These Availability Zones enable us to provide very high levels of availability and redundancy, while also minimizing latency. To learn more about the number of Availability Zones that are available in each Region, see AWS Global Infrastructure.
Package applicationdiscoveryservice provides the API client, operations, and parameter types for AWS Application Discovery Service. Amazon Web Services Application Discovery Service (Application Discovery Service) helps you plan application migration projects. It automatically identifies servers, virtual machines (VMs), and network dependencies in your on-premises data centers. For more information, see the Amazon Web Services Application Discovery Service FAQ. Application Discovery Service offers three ways of performing discovery and collecting data about your on-premises servers: Agentless discovery using Amazon Web Services Application Discovery Service Agentless Collector (Agentless Collector), which doesn't require you to install an agent on each host. Agentless Collector gathers server information regardless of the operating systems, which minimizes the time required for initial on-premises infrastructure assessment. Agentless Collector doesn't collect information about network dependencies, only agent-based discovery collects that information. Agent-based discovery using the Amazon Web Services Application Discovery Agent (Application Discovery Agent) collects a richer set of data than agentless discovery, which you install on one or more hosts in your data center. The agent captures infrastructure and application information, including an inventory of running processes, system performance information, resource utilization, and network dependencies. The information collected by agents is secured at rest and in transit to the Application Discovery Service database in the Amazon Web Services cloud. For more information, see Amazon Web Services Application Discovery Agent. Amazon Web Services Partner Network (APN) solutions integrate with Application Discovery Service, enabling you to import details of your on-premises environment directly into Amazon Web Services Migration Hub (Migration Hub) without using Agentless Collector or Application Discovery Agent. Third-party application discovery tools can query Amazon Web Services Application Discovery Service, and they can write to the Application Discovery Service database using the public API. In this way, you can import data into Migration Hub and view it, so that you can associate applications with servers and track migrations. This API reference provides descriptions, syntax, and usage examples for each of the actions and data types for Application Discovery Service. The topic for each action shows the API request parameters and the response. Alternatively, you can use one of the Amazon Web Services SDKs to access an API that is tailored to the programming language or platform that you're using. For more information, see Amazon Web Services SDKs. Remember that you must set your Migration Hub home Region before you call any of these APIs. You must make API calls for write actions (create, notify, associate, disassociate, import, or put) while in your home Region, or a HomeRegionNotSetException error is returned. API calls for read actions (list, describe, stop, and delete) are permitted outside of your home Region. Although it is unlikely, the Migration Hub home Region could change. If you call APIs outside the home Region, an InvalidInputException is returned. You must call GetHomeRegion to obtain the latest Migration Hub home Region. This guide is intended for use with the Amazon Web Services Application Discovery Service User Guide. All data is handled according to the Amazon Web Services Privacy Policy. You can operate Application Discovery Service offline to inspect collected data before it is shared with the service.
Package amp provides the API client, operations, and parameter types for Amazon Prometheus Service. Amazon Managed Service for Prometheus is a serverless, Prometheus-compatible monitoring service for container metrics that makes it easier to securely monitor container environments at scale. With Amazon Managed Service for Prometheus, you can use the same open-source Prometheus data model and query language that you use today to monitor the performance of your containerized workloads, and also enjoy improved scalability, availability, and security without having to manage the underlying infrastructure. For more information about Amazon Managed Service for Prometheus, see the Amazon Managed Service for Prometheus User Guide. Amazon Managed Service for Prometheus includes two APIs. Use the Amazon Web Services API described in this guide to manage Amazon Managed Service for Prometheus resources, such as workspaces, rule groups, and alert managers. Use the Prometheus-compatible APIto work within your Prometheus workspace.