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@promptbook/types
Advanced tools
Promptbook: Create persistent AI agents that turn your company's scattered knowledge into action
Create persistent AI agents that turn your company's scattered knowledge into action - powered by the Agents Server
โ Warning: This is a pre-release version of the library. It is not yet ready for production use. Please look at latest stable release.
@promptbook/types@promptbook/types is one part of the promptbook ecosystem.To install this package, run:
# Install entire promptbook ecosystem
npm i ptbk
npm i -D @promptbook/types
Comprehensive TypeScript type definitions for all Promptbook entities, enabling type-safe development and excellent IDE support throughout the Promptbook ecosystem.
This package centralizes all TypeScript type definitions used throughout the Promptbook ecosystem. It enables developers to write type-safe code when working with promptbooks, pipelines, LLM providers, and other Promptbook components, providing excellent IntelliSense and compile-time error checking.
The package provides type definitions for:
import type { PipelineJson } from '@promptbook/types';
import { compilePipeline } from '@promptbook/core';
const promptbook: PipelineJson = compilePipeline(
spaceTrim(`
# โจ Example prompt
- OUTPUT PARAMETER {greeting}
## ๐ฌ Prompt
\`\`\`text
Hello
\`\`\`
-> {greeting}
`),
);
AgentBasicInformation - Basic agent information structure (type)AgentModelRequirements - Model requirements for agents (type)string_book - Book content string type (type)BookCommitment - Book commitment structure (type)CommitmentDefinition - Commitment definition interface (type)ParsedCommitment - Parsed commitment structure (type)AvatarChipProps - Avatar chip component props (type)AvatarChipFromSourceProps - Avatar chip from source props (type)AvatarProfileProps - Avatar profile component props (type)AvatarProfileFromSourceProps - Avatar profile from source props (type)BookEditorProps - Book editor component props (type)ChatProps - Chat component props (type)LlmChatProps - LLM chat component props (type)ChatMessage - Chat message structure (type)ChatParticipant - Chat participant information (type)PipelineCollection - Pipeline collection interface (type)PipelineJson - Complete pipeline JSON structure (type)PipelineString - Pipeline string format (type)PipelineInterface - Pipeline interface definition (type)TaskJson - Task JSON structure (type)PromptTaskJson - Prompt task structure (type)ScriptTaskJson - Script task structure (type)SimpleTaskJson - Simple task structure (type)DialogTaskJson - Dialog task structure (type)CommonTaskJson - Common task properties (type)Command - Base command interface (type)CommandParser - Command parser interface (type)PipelineBothCommandParser - Pipeline both command parser (type)PipelineHeadCommandParser - Pipeline head command parser (type)PipelineTaskCommandParser - Pipeline task command parser (type)CommandParserInput - Command parser input (type)CommandType - Command type enumeration (type)CommandUsagePlace - Command usage context (type)BookVersionCommand - Book version command (type)ExpectCommand - Expect command structure (type)ForeachCommand - Foreach command structure (type)ForeachJson - Foreach JSON structure (type)FormatCommand - Format command structure (type)FormfactorCommand - Formfactor command structure (type)JokerCommand - Joker command structure (type)KnowledgeCommand - Knowledge command structure (type)ModelCommand - Model command structure (type)ParameterCommand - Parameter command structure (type)PersonaCommand - Persona command structure (type)PostprocessCommand - Postprocess command structure (type)SectionCommand - Section command structure (type)UrlCommand - URL command structure (type)ActionCommand - Action command structure (type)InstrumentCommand - Instrument command structure (type)ExecutionTools - Execution tools interface (type)LlmExecutionTools - LLM execution tools interface (type)LlmExecutionToolsConstructor - LLM execution tools constructor (type)PipelineExecutor - Pipeline executor interface (type)PipelineExecutorResult - Execution result structure (type)ExecutionTask - Execution task structure (type)PreparationTask - Preparation task structure (type)task_status - Task status type (type)AbstractTask - Abstract task interface (type)Task - Task interface (type)ExecutionReportJson - Execution report structure (type)ExecutionPromptReportJson - Execution prompt report structure (type)ExecutionReportString - Execution report string (type)ExecutionReportStringOptions - Report formatting options (type)PromptResult - Prompt execution result (type)CompletionPromptResult - Completion prompt result (type)ChatPromptResult - Chat prompt result (type)EmbeddingPromptResult - Embedding prompt result (type)Usage - Usage tracking structure (type)UsageCounts - Usage counts structure (type)UncertainNumber - Uncertain number type (type)AvailableModel - Available model information (type)AbstractTaskResult - Abstract task result (type)EmbeddingVector - Embedding vector type (type)AnthropicClaudeExecutionToolsOptions - Anthropic Claude configuration (type)AnthropicClaudeExecutionToolsNonProxiedOptions - Anthropic Claude non-proxied options (type)AnthropicClaudeExecutionToolsProxiedOptions - Anthropic Claude proxied options (type)OpenAiExecutionToolsOptions - OpenAI configuration (type)OpenAiAssistantExecutionToolsOptions - OpenAI Assistant configuration (type)OpenAiCompatibleExecutionToolsOptions - OpenAI Compatible configuration (type)OpenAiCompatibleExecutionToolsNonProxiedOptions - OpenAI Compatible non-proxied options (type)OpenAiCompatibleExecutionToolsProxiedOptions - OpenAI Compatible proxied options (type)AzureOpenAiExecutionToolsOptions - Azure OpenAI configuration (type)GoogleExecutionToolsOptions - Google configuration (type)DeepseekExecutionToolsOptions - Deepseek configuration (type)OllamaExecutionToolsOptions - Ollama configuration (type)VercelExecutionToolsOptions - Vercel configuration (type)VercelProvider - Vercel provider type (type)ParameterJson - Parameter definition structure (type)InputParameterJson - Input parameter structure (type)IntermediateParameterJson - Intermediate parameter structure (type)OutputParameterJson - Output parameter structure (type)CommonParameterJson - Common parameter properties (type)Parameters - Parameter collection type (type)InputParameters - Input parameters type (type)Expectations - Expectation validation structure (type)ExpectationUnit - Expectation unit type (type)ExpectationAmount - Expectation amount type (type)PersonaJson - Persona definition structure (type)PersonaPreparedJson - Prepared persona structure (type)KnowledgeSourceJson - Knowledge source structure (type)KnowledgeSourcePreparedJson - Prepared knowledge source structure (type)KnowledgePiecePreparedJson - Prepared knowledge piece structure (type)string_prompt - Prompt string type (type)string_template - Template string type (type)string_text_prompt - Text prompt string type (type)string_chat_prompt - Chat prompt string type (type)string_system_message - System message string type (type)string_completion_prompt - Completion prompt string type (type)string_parameter_name - Parameter name type (type)string_parameter_value - Parameter value type (type)string_reserved_parameter_name - Reserved parameter name type (type)ReservedParameters - Reserved parameters type (type)string_model_name - Model name type (type)string_url - URL string type (type)string_filename - Filename string type (type)string_absolute_filename - Absolute filename type (type)string_relative_filename - Relative filename type (type)string_dirname - Directory name type (type)string_absolute_dirname - Absolute directory name type (type)string_relative_dirname - Relative directory name type (type)number_tokens - Token count type (type)number_usd - USD amount type (type)ModelVariant - Model variant enumeration (type)ScriptLanguage - Script language enumeration (type)TaskType - Task type enumeration (type)SectionType - Section type enumeration (type)ModelRequirements - Model requirements type (type)CompletionModelRequirements - Completion model requirements (type)ChatModelRequirements - Chat model requirements (type)EmbeddingModelRequirements - Embedding model requirements (type)RemoteServerOptions - Remote server configuration (type)AnonymousRemoteServerOptions - Anonymous remote server options (type)ApplicationRemoteServerOptions - Application remote server options (type)ApplicationRemoteServerClientOptions - Application remote server client options (type)RemoteClientOptions - Remote client configuration (type)Identification - User identification structure (type)ApplicationModeIdentification - Application mode identification (type)AnonymousModeIdentification - Anonymous mode identification (type)LoginRequest - Login request structure (type)LoginResponse - Login response structure (type)RemoteServer - Remote server interface (type)PromptbookStorage - Storage interface (type)FileCacheStorageOptions - File cache storage options (type)IndexedDbStorageOptions - IndexedDB storage options (type)Scraper - Scraper interface (type)ScraperConstructor - Scraper constructor type (type)ScraperSourceHandler - Scraper source handler (type)ScraperIntermediateSource - Scraper intermediate source (type)ScraperAndConverterMetadata - Scraper and converter metadata (type)Converter - Content converter interface (type)Prompt - Prompt interface (type)CompletionPrompt - Completion prompt interface (type)ChatPrompt - Chat prompt interface (type)EmbeddingPrompt - Embedding prompt interface (type)NonEmptyArray - Non-empty array type (type)NonEmptyReadonlyArray - Non-empty readonly array type (type)IntermediateFilesStrategy - Intermediate files strategy (type)string_promptbook_version - Promptbook version string type (type)๐ก This package provides TypeScript types for promptbook applications. For runtime functionality, see @promptbook/core or install all packages with
npm i ptbk
Rest of the documentation is common for entire promptbook ecosystem:
Promptbook lets you create persistent AI agents that work on real goals for your company. The Agents Server is the heart of the project - a place where your AI agents live, remember context, collaborate in teams, and get things done.
Nowadays, the biggest challenge for most business applications isn't the raw capabilities of AI models. Large language models such as GPT-5.2 and Claude-4.5 are incredibly capable.
The main challenge lies in managing the context, providing rules and knowledge, and narrowing the personality.
In Promptbook, you define your agents using simple Books - a human-readable language that is explicit, easy to understand and write, reliable, and highly portable. You then deploy them to the Agents Server, where they run persistently and work toward their goals.
|
Paul Smith |
We have created a language called Book, which allows you to write AI agents in their native language and create your own AI persona. Book provides a guide to define all the traits and commitments.
You can look at it as "prompting" (or writing a system message), but decorated by commitments.
Commitments are special syntax elements that define contracts between you and the AI agent. They are transformed by Promptbook Engine into low-level parameters like which model to use, its temperature, system message, RAG index, MCP servers, and many other parameters. For some commitments (for example RULE commitment) Promptbook Engine can even create adversary agents and extra checks to enforce the rules.
Persona commitmentPersonas define the character of your AI persona, its role, and how it should interact with users. It sets the tone and style of communication.
|
Paul Smith & Associรฉs |
Goal commitmentGoals define what the agent should actively work toward. Unlike a chatbot that only responds when asked, an agent with goals takes initiative and works on tasks persistently on the Agents Server.
|
Paul Smith & Associรฉs |
Knowledge commitmentKnowledge Commitment allows you to provide specific information, facts, or context that the AI should be aware of when responding.
This can include domain-specific knowledge, company policies, or any other relevant information.
Promptbook Engine will automatically enforce this knowledge during interactions. When the knowledge is short enough, it will be included in the prompt. When it is too long, it will be stored in vector databases and RAG retrieved when needed. But you don't need to care about it.
|
Paul Smith & Associรฉs |
Rule commitmentRules will enforce specific behaviors or constraints on the AI's responses. This can include ethical guidelines, communication styles, or any other rules you want the AI to follow.
Depending on rule strictness, Promptbook will either propagate it to the prompt or use other techniques, like adversary agent, to enforce it.
|
Paul Smith & Associรฉs |
Use commitmentsUse commitments grant the agent real capabilities - tools it can use to interact with the outside world. USE EMAIL lets the agent send emails, USE BROWSER lets it access and read web content, USE SEARCH ENGINE lets it search the web, and many more.
These are what turn a chatbot into a persistent agent that actually does work.
|
Paul Smith & Associรฉs |
Team commitmentTeam commitment allows you to define the team structure and advisory fellow members the AI can consult with. This allows the AI to simulate collaboration and consultation with other experts, enhancing the quality of its responses.
|
Paul Smith & Associรฉs |
Promptbook is an ecosystem of tools centered around the Agents Server - a production-ready platform for running persistent AI agents.
The Agents Server is the primary way to use Promptbook. It is a web application where your AI agents live and work. You can create agents, give them knowledge and rules using the Book language, organize them into teams, and let them work on goals persistently. The Agents Server provides a UI for managing agents, an API for integrating them into your applications, and can be self-hosted via Docker or deployed on Vercel.
The Promptbook Engine is the open-source core that powers everything. It parses the Book language, applies commitments, manages LLM provider integrations, and executes agents. The Agents Server is built on top of the Engine. If you need to embed agent capabilities directly into your own application, you can use the Engine as a standalone TypeScript/JavaScript library via NPM packages.
Promptbook project is an ecosystem centered around the Agents Server - a platform for creating, deploying, and running persistent AI agents. Following is a list of the most important pieces of the project:
| Project | About |
|---|---|
| โญ Agents Server | The primary way to use Promptbook. A production-ready platform where your AI agents live - create, manage, deploy, and interact with persistent agents that work on goals. Available as a hosted service or self-hosted via Docker. |
| Book language |
Human-friendly, high-level language that abstracts away low-level details of AI. It allows to focus on personality, behavior, knowledge, and rules of AI agents rather than on models, parameters, and prompt engineering.
There is also a plugin for VSCode to support .book file extension
|
| Promptbook Engine | The open-source core that powers the Agents Server. Can also be used as a standalone TypeScript/JavaScript library to embed agent capabilities into your own applications. Released as multiple NPM packages. |
Join our growing community of developers and users:
| Platform | Description |
|---|---|
| ๐ฌ Discord | Join our active developer community for discussions and support |
| ๐ฃ๏ธ GitHub Discussions | Technical discussions, feature requests, and community Q&A |
| ๐ LinkedIn | Professional updates and industry insights |
| ๐ฑ Facebook | General announcements and community engagement |
| ๐ ptbk.io | Official landing page with project information |
| ๐ธ Instagram @promptbook.studio | Visual updates, UI showcases, and design inspiration |
See detailed guides and API reference in the docs or online.
For information on reporting security vulnerabilities, see our Security Policy.
The fastest way to get started is with the Agents Server:
If you want to embed the Promptbook Engine directly into your application, the library is divided into several packages published from a single monorepo. You can install all of them at once:
npm i ptbk
Or you can install them separately:
โญ Marked packages are worth to try first
โญ ptbk - Bundle of all packages, when you want to install everything and you don't care about the size
promptbook - Same as ptbk
โญ๐งโโ๏ธ @promptbook/wizard - Wizard to just run the books in node without any struggle
@promptbook/core - Core of the library, it contains the main logic for promptbooks
@promptbook/node - Core of the library for Node.js environment
@promptbook/browser - Core of the library for browser environment
โญ @promptbook/utils - Utility functions used in the library but also useful for individual use in preprocessing and postprocessing LLM inputs and outputs
@promptbook/markdown-utils - Utility functions used for processing markdown
@promptbook/javascript - Execution tools for javascript inside promptbooks
@promptbook/openai - Execution tools for OpenAI API, wrapper around OpenAI SDK
@promptbook/anthropic-claude - Execution tools for Anthropic Claude API, wrapper around Anthropic Claude SDK
@promptbook/vercel - Adapter for Vercel functionalities
@promptbook/google - Integration with Google's Gemini API
@promptbook/deepseek - Integration with DeepSeek API
@promptbook/ollama - Integration with Ollama API
@promptbook/azure-openai - Execution tools for Azure OpenAI API
@promptbook/fake-llm - Mocked execution tools for testing the library and saving the tokens
@promptbook/remote-client - Remote client for remote execution of promptbooks
@promptbook/remote-server - Remote server for remote execution of promptbooks
@promptbook/pdf - Read knowledge from .pdf documents
@promptbook/documents - Integration of Markitdown by Microsoft
@promptbook/documents - Read knowledge from documents like .docx, .odt,โฆ
@promptbook/legacy-documents - Read knowledge from legacy documents like .doc, .rtf,โฆ
@promptbook/website-crawler - Crawl knowledge from the web
@promptbook/editable - Editable book as native javascript object with imperative object API
@promptbook/templates - Useful templates and examples of books which can be used as a starting point
@promptbook/types - Just typescript types used in the library
@promptbook/color - Color manipulation library
@promptbook/cli - Command line interface utilities for promptbooks
ptbk coder is Promptbook's workflow layer for AI-assisted software changes. Instead of opening one chat and manually copy-pasting tasks, you keep a queue of coding prompts in prompts/*.md, let a coding agent execute the next ready task, and then verify the result before archiving the prompt.
Promptbook Coder is not another standalone coding model. It is an orchestration layer over coding agents such as GitHub Copilot, OpenAI Codex, Claude Code, Opencode, Cline, and Gemini CLI. The difference is that Promptbook Coder adds a repeatable repository workflow on top of them:
[ ], [x], and [-]AGENTS.mdgit add, commit, and push after each successful promptIn short: tools like Claude Code, Codex, or GitHub Copilot are the engines; Promptbook Coder is the workflow that keeps coding work structured, reviewable, and repeatable across many prompts.
ptbk coder init prepares the project for the coder workflow, seeds project-owned generic templates in prompts/templates/, creates a starter AGENTS.md context file, adds helper npm run coder:* scripts, ensures .gitignore ignores /.promptbook, and configures VS Code prompt screenshots in prompts/screenshots/.ptbk coder generate-boilerplates creates prompt files in prompts/.@@@ sections with real coding tasks.ptbk coder run sends the next ready [ ] prompt to the selected coding agent.[x], records runner metadata, then stages, commits, and pushes the resulting changes.ptbk coder verify reviews completed prompts, archives finished files to prompts/done/, and appends a repair prompt when more work is needed.Prompts marked with [-] are not ready yet, prompts containing @@@ are treated as not fully written, and prompts with more ! markers have higher priority.
openai-codex, github-copilot, cline, claude-code, opencode, gemini--context AGENTS.md or inline extra instructions--thinking-level low|medium|high|xhigh for supported runners--no-wait for batch execution--ignore-git-changes--auto-push--priority to process only more important tasks first.error.logWhen working on Promptbook itself, the repository usually runs the CLI straight from source:
npx ts-node ./src/cli/test/ptbk.ts coder init
npx ts-node ./src/cli/test/ptbk.ts coder generate-boilerplates --template prompts/templates/common.md
npx ts-node ./src/cli/test/ptbk.ts coder generate-boilerplates --template prompts/templates/agents-server.md
npx ts-node ./src/cli/test/ptbk.ts coder run --harness github-copilot --model gpt-5.4 --thinking-level xhigh --context AGENTS.md
npx ts-node ./src/cli/test/ptbk.ts coder run --harness github-copilot --model gpt-5.4 --thinking-level xhigh --context AGENTS.md --auto-push
npx ts-node ./src/cli/test/ptbk.ts coder run --harness github-copilot --model gpt-5.4 --thinking-level xhigh --context AGENTS.md --ignore-git-changes --no-wait
npx ts-node ./src/cli/test/ptbk.ts coder find-refactor-candidates
npx ts-node ./src/cli/test/ptbk.ts coder find-refactor-candidates --level xhigh
npx ts-node ./src/cli/test/ptbk.ts coder verify
ptbk coder in an external projectIf you want to use the workflow in another repository, install the package and invoke the ptbk binary directly.
npm install ptbk
ptbk coder init
ptbk coder generate-boilerplates
ptbk coder generate-boilerplates --template prompts/templates/common.md
ptbk coder run --harness github-copilot --model gpt-5.4 --thinking-level xhigh --context AGENTS.md --test npm run test
ptbk coder run --harness github-copilot --model gpt-5.4 --thinking-level xhigh --context AGENTS.md --auto-push
ptbk coder run --harness github-copilot --model gpt-5.4 --thinking-level xhigh --context AGENTS.md --test npm run test --ignore-git-changes --no-wait
ptbk coder find-refactor-candidates
ptbk coder find-refactor-candidates --level xhigh
ptbk coder verify
ptbk coder init also bootstraps a starter AGENTS.md, adds package.json scripts for the four main coder commands, adds the shared /.promptbook temp ignore to .gitignore, and configures .vscode/settings.json so pasted images from prompts/*.md land in prompts/screenshots/.
| Command | What it does |
| ------------------------------------- | -------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------------- | --- | ------ | ---- | ----- | ------------------------------------------------------------------------ |
| ptbk coder init | Creates prompts/, prompts/done/, the project-generic template files materialized in prompts/templates/ (currently common.md), and a starter AGENTS.md; ensures .env contains CODING_AGENT_GIT_NAME, CODING_AGENT_GIT_EMAIL, and CODING_AGENT_GIT_SIGNING_KEY; adds helper coder scripts to package.json; ensures .gitignore contains /.promptbook; and configures .vscode/settings.json to save pasted prompt images into prompts/screenshots/. |
| ptbk coder generate-boilerplates | Creates new prompt markdown files with fresh emoji tags so you can quickly fill in coding tasks; --template accepts either a built-in alias or a markdown file path relative to the project root. |
| ptbk coder run | Picks the next ready prompt, appends optional context, runs it through the selected coding agent, can optionally verify each attempt with a shell test command and feed failing output back for retries, then marks success or failure, commits the result, and pushes only when --auto-push is enabled. |
| ptbk coder find-refactor-candidates | Scans the repository for oversized or overpacked files and writes prompt files for likely refactors; --level <xlow | low | medium | high | xhigh | extreme> ranges from a very benevolent scan to a very aggressive sweep. |
| ptbk coder verify | Walks through completed prompts, archives truly finished work, and adds follow-up repair prompts for unfinished results. |
ptbk coder run flags| Flag | Purpose |
|---|---|
--harness <name> | Selects the coding harness. |
--model <model> | Chooses the runner model; required for openai-codex and gemini, optional for github-copilot. |
--context <text-or-file> | Appends extra instructions inline or from a file like AGENTS.md. |
--test <command> | Runs a verification command after each prompt attempt and feeds failing output back for retries. |
--thinking-level <level> | Sets reasoning effort for supported runners. |
--no-wait | Skips interactive pauses between prompts for unattended execution. |
--ignore-git-changes | Disables the clean-working-tree guard. |
--priority <n> | Runs only prompts at or above the given priority. |
--dry-run | Prints which prompts are ready instead of executing them. |
--allow-credits | Lets OpenAI Codex spend credits when required. |
--auto-push | Pushes each successful coding-agent commit to the configured remote. |
--auto-migrate | Runs testing-server database migrations after each successful prompt. |
ptbk coder init.prompts/templates/*.md if needed, then create or write prompt files in prompts/.AGENTS.md with repository-specific instructions, then pass --context AGENTS.md.--no-wait for unattended batches.ptbk coder verify so resolved prompts are archived and broken ones get explicit repair follow-ups.The following glossary is used to clarify certain concepts:
Note: This section is not a complete dictionary, more list of general AI / LLM terms that has connection with Promptbook
| Data & Knowledge Management | Pipeline Control |
|---|---|
|
|
| Language & Output Control | Advanced Generation |
|
|
The Agents Server is the primary way to use Promptbook. It is a production-ready platform where you create, deploy, and manage persistent AI agents that work toward goals. Agents remember context across conversations, collaborate in teams, and follow the rules and knowledge you define in the Book language.
The Engine is the open-source core that powers the Agents Server. If you need to embed agent capabilities directly into your TypeScript/JavaScript application, you can use it as a standalone library.
If you have a question start a discussion, open an issue or write me an email.
See CHANGELOG.md
This project is licensed under BUSL 1.1.
We welcome contributions! See CONTRIBUTING.md for guidelines.
You can also โญ star the project, follow us on GitHub or various other social networks.We are open to pull requests, feedback, and suggestions.
Need help with Book language? We're here for you!
We welcome contributions and feedback to make Book language better for everyone!
FAQs
Promptbook: Create persistent AI agents that turn your company's scattered knowledge into action
The npm package @promptbook/types receives a total of 1,918 weekly downloads. As such, @promptbook/types popularity was classified as popular.
We found that @promptbook/types demonstrated a healthy version release cadence and project activity because the last version was released less than a year ago.ย It has 1 open source maintainer collaborating on the project.
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