Azure Storage File Data Lake client library for JavaScript
Azure Data Lake Storage (ADLS) includes all the capabilities required to make it easy for developers, data scientists, and analysts to store data of any size, shape, and speed, and do all types of processing and analytics across platforms and languages. It removes the complexities of ingesting and storing all of your data while making it faster to get up and running with batch, streaming, and interactive analytics.
This project provides a client library in JavaScript that makes it easy to consume Microsoft Azure Storage Data Lake service.
Use the client libraries in this package to:
- Create/List/Delete File Systems
- Create/Read/List/Update/Delete Paths, Directories and Files
key links:
Getting started
Currently supported environments
See our support policy for more details.
Prerequisites
Install the package
The preferred way to install the Azure Storage Data Lake client library for JavaScript is to use the npm package manager. Type the following into a terminal window:
npm install @azure/storage-file-datalake
Authenticate the client
Azure Storage supports several ways to authenticate. In order to interact with the Azure Data Lake Storage service you'll need to create an instance of a Storage client - DataLakeServiceClient
, DataLakeFileSystemClient
, or DataLakePathClient
for example. See samples for creating the DataLakeServiceClient
to learn more about authentication.
Azure Active Directory
The Azure Data Lake Storage service supports the use of Azure Active Directory to authenticate requests to its APIs. The @azure/identity
package provides a variety of credential types that your application can use to do this. Please see the README for @azure/identity
for more details and samples to get you started.
Compatibility
This library is compatible with Node.js and browsers, and validated against LTS Node.js versions (>=8.16.0) and latest versions of Chrome, Firefox and Edge.
Web Workers
This library requires certain DOM objects to be globally available when used in the browser, which web workers do not make available by default. You will need to polyfill these to make this library work in web workers.
For more information please refer to our documentation for using Azure SDK for JS in Web Workers
This library depends on following DOM APIs which need external polyfills loaded when used in web workers:
Differences between Node.js and browsers
There are differences between Node.js and browsers runtime. When getting started with this library, pay attention to APIs or classes marked with "ONLY AVAILABLE IN NODE.JS RUNTIME" or "ONLY AVAILABLE IN BROWSERS".
- If a file holds compressed data in
gzip
or deflate
format and its content encoding is set accordingly, downloading behavior is different between Node.js and browsers. In Node.js storage clients will download the file in its compressed format, while in browsers the data will be downloaded in de-compressed format.
Features, interfaces, classes or functions only available in Node.js
- Shared Key Authorization based on account name and account key
StorageSharedKeyCredential
- Shared Access Signature(SAS) generation
generateAccountSASQueryParameters()
generateDataLakeSASQueryParameters()
- Parallel uploading and downloading. Note that
DataLakeFileClient.upload()
is available in both Node.js and browsers.
DataLakeFileClient.uploadFile()
DataLakeFileClient.uploadStream()
DataLakeFileClient.readToBuffer()
DataLakeFileClient.readToFile()
Features, interfaces, classes or functions only available in browsers
JavaScript Bundle
To use this client library in the browser, first you need to use a bundler. For details on how to do this, please refer to our bundling documentation.
CORS
You need to set up Cross-Origin Resource Sharing (CORS) rules for your storage account if you need to develop for browsers. Go to Azure portal and Azure Storage Explorer, find your storage account, create new CORS rules for blob/queue/file/table service(s).
For example, you can create following CORS settings for debugging. But please customize the settings carefully according to your requirements in production environment.
- Allowed origins: *
- Allowed verbs: DELETE,GET,HEAD,MERGE,POST,OPTIONS,PUT
- Allowed headers: *
- Exposed headers: *
- Maximum age (seconds): 86400
Notice: Data Lake currently shares CORS settings for blob service.
Key concepts
Azure Data Lake Storage Gen2 was designed to:
- Serve multiple petabytes of information while sustaining hundreds of gigabits of throughput
- Allow you to easily manage massive amounts of data
Key Features of DataLake Storage Gen2 include:
- Hadoop compatible access
- A super set of POSIX permissions
- Cost effective in terms of low-cost storage capacity and transactions
- Optimized driver for big data analytics
A fundamental part of Data Lake Storage Gen2 is the addition of a hierarchical namespace to Blob storage. The hierarchical namespace organizes objects/files into a hierarchy of directories for efficient data access.
In the past, cloud-based analytics had to compromise in areas of performance, management, and security. Data Lake Storage Gen2 addresses each of these aspects in the following ways:
- Performance is optimized because you do not need to copy or transform data as a prerequisite for analysis. The hierarchical namespace greatly improves the performance of directory management operations, which improves overall job performance.
- Management is easier because you can organize and manipulate files through directories and subdirectories.
- Security is enforceable because you can define POSIX permissions on directories or individual files.
- Cost effectiveness is made possible as Data Lake Storage Gen2 is built on top of the low-cost Azure Blob storage. The additional features further lower the total cost of ownership for running big data analytics on Azure.
Data Lake storage offers three types of resources:
- The storage account used via
DataLakeServiceClient
- A file system in the storage account used via
DataLakeFileSystemClient
- A path in a file system used via
DataLakeDirectoryClient
or DataLakeFileClient
Azure DataLake Gen2 | Blob |
---|
Filesystem | Container |
Path (File or Directory) | Blob |
Note: This client library only supports storage accounts with hierarchical namespace (HNS) enabled.
Examples
Import the package
To use the clients, import the package into your file:
const AzureStorageDataLake = require("@azure/storage-file-datalake");
Alternatively, selectively import only the types you need:
const {
DataLakeServiceClient,
StorageSharedKeyCredential
} = require("@azure/storage-file-datalake");
Create the data lake service client
The DataLakeServiceClient
requires an URL to the data lake service and an access credential. It also optionally accepts some settings in the options
parameter.
with DefaultAzureCredential
from @azure/identity
package
Recommended way to instantiate a DataLakeServiceClient
Notice. Azure Data Lake currently reuses blob related roles like "Storage Blob Data Owner" during following AAD OAuth authentication.
Setup : Reference - Authorize access to blobs (data lake) and queues with Azure Active Directory from a client application - https://docs.microsoft.com/azure/storage/common/storage-auth-aad-app
-
Register a new AAD application and give permissions to access Azure Storage on behalf of the signed-in user.
- Register a new application in the Azure Active Directory(in the azure-portal) - https://docs.microsoft.com/azure/active-directory/develop/quickstart-register-app
- In the
API permissions
section, select Add a permission
and choose Microsoft APIs
. - Pick
Azure Storage
and select the checkbox next to user_impersonation
and then click Add permissions
. This would allow the application to access Azure Storage on behalf of the signed-in user.
-
Grant access to Azure Data Lake data with RBAC in the Azure Portal
-
Environment setup for the sample
- From the overview page of your AAD Application, note down the
CLIENT ID
and TENANT ID
. In the "Certificates & Secrets" tab, create a secret and note that down. - Make sure you have AZURE_TENANT_ID, AZURE_CLIENT_ID, AZURE_CLIENT_SECRET as environment variables to successfully execute the sample(Can leverage process.env).
const { DefaultAzureCredential } = require("@azure/identity");
const { DataLakeServiceClient } = require("@azure/storage-file-datalake");
const account = "<account>";
const defaultAzureCredential = new DefaultAzureCredential();
const datalakeServiceClient = new DataLakeServiceClient(
`https://${account}.dfs.core.windows.net`,
defaultAzureCredential
);
See the Azure AD Auth sample for a complete example using this method.
[Note - Above steps are only for Node.js]
using connection string
Alternatively, you can instantiate a DataLakeServiceClient
using the fromConnectionString()
static method with the full connection string as the argument. (The connection string can be obtained from the azure portal.)
[ONLY AVAILABLE IN NODE.JS RUNTIME]
const { DataLakeServiceClient } = require("@azure/storage-file-datalake");
const connStr = "<connection string>";
const dataLakeServiceClient = DataLakeServiceClient.fromConnectionString(connStr);
with StorageSharedKeyCredential
Alternatively, you instantiate a DataLakeServiceClient
with a StorageSharedKeyCredential
by passing account-name and account-key as arguments. (The account-name and account-key can be obtained from the azure portal.)
[ONLY AVAILABLE IN NODE.JS RUNTIME]
const {
DataLakeServiceClient,
StorageSharedKeyCredential
} = require("@azure/storage-file-datalake");
const account = "<account>";
const accountKey = "<accountkey>";
const sharedKeyCredential = new StorageSharedKeyCredential(account, accountKey);
const datalakeServiceClient = new DataLakeServiceClient(
`https://${account}.dfs.core.windows.net`,
sharedKeyCredential
);
with SAS Token
Also, You can instantiate a DataLakeServiceClient
with a shared access signatures (SAS). You can get the SAS token from the Azure Portal or generate one using generateAccountSASQueryParameters()
.
const { DataLakeServiceClient } = require("@azure/storage-file-datalake");
const account = "<account name>";
const sas = "<service Shared Access Signature Token>";
const serviceClientWithSAS = new DataLakeServiceClient(
`https://${account}.dfs.core.windows.net${sas}`
);
Create a new file system
Use DataLakeServiceClient.getFileSystemClient()
to get a file system client instance then create a new file system resource.
const { DefaultAzureCredential } = require("@azure/identity");
const { DataLakeServiceClient } = require("@azure/storage-file-datalake");
const account = "<account>";
const defaultAzureCredential = new DefaultAzureCredential();
const datalakeServiceClient = new DataLakeServiceClient(
`https://${account}.dfs.core.windows.net`,
defaultAzureCredential
);
async function main() {
const fileSystemName = `newfilesystem${new Date().getTime()}`;
const fileSystemClient = datalakeServiceClient.getFileSystemClient(fileSystemName);
const createResponse = await fileSystemClient.create();
console.log(`Create file system ${fileSystemName} successfully`, createResponse.requestId);
}
main();
List the file systems
Use DataLakeServiceClient.listFileSystems()
function to iterate the file systems,
with the new for-await-of
syntax:
const { DefaultAzureCredential } = require("@azure/identity");
const { DataLakeServiceClient } = require("@azure/storage-file-datalake");
const account = "<account>";
const defaultAzureCredential = new DefaultAzureCredential();
const datalakeServiceClient = new DataLakeServiceClient(
`https://${account}.dfs.core.windows.net`,
defaultAzureCredential
);
async function main() {
let i = 1;
const fileSystems = datalakeServiceClient.listFileSystems();
for await (const fileSystem of fileSystems) {
console.log(`File system ${i++}: ${fileSystem.name}`);
}
}
main();
Alternatively without using for-await-of
:
const { DefaultAzureCredential } = require("@azure/identity");
const { DataLakeServiceClient } = require("@azure/storage-file-datalake");
const account = "<account>";
const defaultAzureCredential = new DefaultAzureCredential();
const datalakeServiceClient = new DataLakeServiceClient(
`https://${account}.dfs.core.windows.net`,
defaultAzureCredential
);
async function main() {
let i = 1;
const iter = datalakeServiceClient.listFileSystems();
let fileSystemItem = await iter.next();
while (!fileSystemItem.done) {
console.log(`File System ${i++}: ${fileSystemItem.value.name}`);
fileSystemItem = await iter.next();
}
}
main();
In addition, pagination is supported for listing too via byPage()
:
const { DefaultAzureCredential } = require("@azure/identity");
const { DataLakeServiceClient } = require("@azure/storage-file-datalake");
const account = "<account>";
const defaultAzureCredential = new DefaultAzureCredential();
const datalakeServiceClient = new DataLakeServiceClient(
`https://${account}.dfs.core.windows.net`,
defaultAzureCredential
);
async function main() {
let i = 1;
for await (const response of datalakeServiceClient
.listFileSystems()
.byPage({ maxPageSize: 20 })) {
if (response.fileSystemItems) {
for (const fileSystem of response.fileSystemItems) {
console.log(`File System ${i++}: ${fileSystem.name}`);
}
}
}
}
main();
Create and delete a directory
const { DefaultAzureCredential } = require("@azure/identity");
const { DataLakeServiceClient } = require("@azure/storage-file-datalake");
const account = "<account>";
const defaultAzureCredential = new DefaultAzureCredential();
const datalakeServiceClient = new DataLakeServiceClient(
`https://${account}.dfs.core.windows.net`,
defaultAzureCredential
);
const fileSystemName = "<file system name>";
async function main() {
const fileSystemClient = datalakeServiceClient.getFileSystemClient(fileSystemName);
const directoryClient = fileSystemClient.getDirectoryClient("directory");
await directoryClient.create();
await directoryClient.delete();
}
main();
Create a file
const { DefaultAzureCredential } = require("@azure/identity");
const { DataLakeServiceClient } = require("@azure/storage-file-datalake");
const account = "<account>";
const defaultAzureCredential = new DefaultAzureCredential();
const datalakeServiceClient = new DataLakeServiceClient(
`https://${account}.dfs.core.windows.net`,
defaultAzureCredential
);
const fileSystemName = "<file system name>";
async function main() {
const fileSystemClient = datalakeServiceClient.getFileSystemClient(fileSystemName);
const content = "Hello world!";
const fileName = "newfile" + new Date().getTime();
const fileClient = fileSystemClient.getFileClient(fileName);
await fileClient.create();
await fileClient.append(content, 0, content.length);
await fileClient.flush(content.length);
console.log(`Create and upload file ${fileName} successfully`);
}
main();
List paths inside a file system
Similar to listing file systems.
const { DefaultAzureCredential } = require("@azure/identity");
const { DataLakeServiceClient } = require("@azure/storage-file-datalake");
const account = "<account>";
const defaultAzureCredential = new DefaultAzureCredential();
const datalakeServiceClient = new DataLakeServiceClient(
`https://${account}.dfs.core.windows.net`,
defaultAzureCredential
);
const fileSystemName = "<file system name>";
async function main() {
const fileSystemClient = datalakeServiceClient.getFileSystemClient(fileSystemName);
let i = 1;
const paths = fileSystemClient.listPaths();
for await (const path of paths) {
console.log(`Path ${i++}: ${path.name}, is directory: ${path.isDirectory}`);
}
}
main();
Download a file and convert it to a string (Node.js)
const { DefaultAzureCredential } = require("@azure/identity");
const { DataLakeServiceClient } = require("@azure/storage-file-datalake");
const account = "<account>";
const defaultAzureCredential = new DefaultAzureCredential();
const datalakeServiceClient = new DataLakeServiceClient(
`https://${account}.dfs.core.windows.net`,
defaultAzureCredential
);
const fileSystemName = "<file system name>";
const fileName = "<file name>";
async function main() {
const fileSystemClient = datalakeServiceClient.getFileSystemClient(fileSystemName);
const fileClient = fileSystemClient.getFileClient(fileName);
const downloadResponse = await fileClient.read();
const downloaded = await streamToBuffer(downloadResponse.readableStreamBody);
console.log("Downloaded file content:", downloaded.toString());
async function streamToBuffer(readableStream) {
return new Promise((resolve, reject) => {
const chunks = [];
readableStream.on("data", (data) => {
chunks.push(data instanceof Buffer ? data : Buffer.from(data));
});
readableStream.on("end", () => {
resolve(Buffer.concat(chunks));
});
readableStream.on("error", reject);
});
}
}
main();
Download a file and convert it to a string (Browsers)
const { DataLakeServiceClient } = require("@azure/storage-file-datalake");
const account = "<account>";
const sas = "<sas token>";
const datalakeServiceClient = new DataLakeServiceClient(
`https://${account}.dfs.core.windows.net${sas}`
);
const fileSystemName = "<file system name>";
const fileName = "<file name>"
async function main() {
const fileSystemClient = datalakeServiceClient.getFileSystemClient(fileSystemName);
const fileClient = fileSystemClient.getFileClient(fileName);
const downloadResponse = await fileClient.read();
const downloaded = await blobToString(await downloadResponse.contentAsBlob);
console.log(
"Downloaded file content",
downloaded
);
async function blobToString(blob) {
const fileReader = new FileReader();
return new Promise((resolve, reject) => {
fileReader.onloadend = (ev) => {
resolve(ev.target.result);
};
fileReader.onerror = reject;
fileReader.readAsText(blob);
});
}
}
main();
Troubleshooting
Enabling logging may help uncover useful information about failures. In order to see a log of HTTP requests and responses, set the AZURE_LOG_LEVEL
environment variable to info
. Alternatively, logging can be enabled at runtime by calling setLogLevel
in the @azure/logger
:
const { setLogLevel } = require("@azure/logger");
setLogLevel("info");
Next steps
More code samples:
Contributing
If you'd like to contribute to this library, please read the contributing guide to learn more about how to build and test the code.