@promptbook/vercel
v0.112.0-24
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Promptbook: Turn your company's scattered knowledge into AI ready books
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✨ Promptbook: AI Agents
Create persistent AI agents that turn your company's scattered knowledge into action — powered by the Agents Server
🌟 New Features
- Gemini 3 Support
📦 Package @promptbook/vercel
- Promptbooks are divided into several packages, all are published from single monorepo.
- This package
@promptbook/vercelis one part of the promptbook ecosystem.
To install this package, run:
# Install entire promptbook ecosystem
npm i ptbk
# Install just this package to save space
npm install @promptbook/vercel@promptbook/vercel is adapter for all Vercel AI SDK model providers.
🧡 Usage
import { createOpenAI } from '@ai-sdk/openai';
import { usageToHuman } from '@promptbook/core';
import type { Prompt } from '@promptbook/types';
import { createExecutionToolsFromVercelProvider } from '@promptbook/vercel';
import colors from 'colors';
import * as dotenv from 'dotenv';
dotenv.config({ path: '.env' });
const openaiVercelProvider = createOpenAI({
apiKey: process.env.OPENAI_API_KEY,
});
const openaiPromptbookExecutionTools = createExecutionToolsFromVercelProvider({
title: 'OpenAI',
vercelProvider: openaiVercelProvider,
availableModels: [],
additionalChatSettings: {
// ...
},
});
/**/
const chatPrompt = {
title: 'Joke',
parameters: {},
content: `Write a joke`,
modelRequirements: {
modelVariant: 'CHAT',
modelName: 'gpt-3.5-turbo',
systemMessage: 'You are an assistant who only speaks in rhymes.',
temperature: 1.5,
},
} as const satisfies Prompt;
const chatPromptResult = await openaiPromptbookExecutionTools.callChatModel!(chatPrompt);
console.info({ chatPromptResult });
console.info(colors.cyan(usageToHuman(chatPromptResult.usage)));
console.info(colors.bgBlue(' User: ') + colors.blue(chatPrompt.content));
console.info(colors.bgGreen(' Chat: ') + colors.green(chatPromptResult.content));
/**/💙 Integration with other models
See the other model integrations:
Rest of the documentation is common for entire promptbook ecosystem:
📖 The Book Whitepaper
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 PERSONA You are a company lawyer. Your job is to provide legal advice and support to the company and its employees. GOAL Respond to incoming legal inquiries via email and keep the company website updated with the latest legal policies. RULE You are knowledgeable, professional, and detail-oriented. KNOWLEDGE https://company.com/company-policies.pdf KNOWLEDGE https://company.com/internal-documents/employee-handbook.docx USE EMAIL USE BROWSER TEAM You are part of the legal team of Paul Smith & Associés, you discuss with {Emily White}, the head of the compliance department. {George Brown} is expert in corporate law and {Sophia Black} is expert in labor law.
Aspects of great AI agent
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 commitment
Personas 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 & Associés PERSONA You are a company lawyer. Your job is to provide legal advice and support to the company and its employees.
Goal commitment
Goals 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 & Associés PERSONA You are a company lawyer. Your job is to provide legal advice and support to the company and its employees. GOAL Respond to incoming legal inquiries via email within 24 hours. GOAL Keep the company website updated with the latest legal policies and compliance information.
Knowledge commitment
Knowledge 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 & Associés PERSONA You are a company lawyer. Your job is to provide legal advice and support to the company and its employees. GOAL Respond to incoming legal inquiries via email within 24 hours. GOAL Keep the company website updated with the latest legal policies and compliance information. KNOWLEDGE https://company.com/company-policies.pdf KNOWLEDGE https://company.com/internal-documents/employee-handbook.docx
Rule commitment
Rules 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 & Associés PERSONA You are a company lawyer. Your job is to provide legal advice and support to the company and its employees. GOAL Respond to incoming legal inquiries via email within 24 hours. GOAL Keep the company website updated with the latest legal policies and compliance information. RULE Always ensure compliance with local laws and regulations. RULE Never provide legal advice outside your area of expertise. RULE Never provide legal advice about criminal law. KNOWLEDGE https://company.com/company-policies.pdf KNOWLEDGE https://company.com/internal-documents/employee-handbook.docx
Use commitments
Use 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 & Associés PERSONA You are a company lawyer. Your job is to provide legal advice and support to the company and its employees. GOAL Respond to incoming legal inquiries via email within 24 hours. GOAL Keep the company website updated with the latest legal policies and compliance information. RULE Always ensure compliance with local laws and regulations. RULE Never provide legal advice outside your area of expertise. RULE Never provide legal advice about criminal law. KNOWLEDGE https://company.com/company-policies.pdf KNOWLEDGE https://company.com/internal-documents/employee-handbook.docx USE EMAIL USE BROWSER USE SEARCH ENGINE
Team commitment
Team 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 & Associés PERSONA You are a company lawyer. Your job is to provide legal advice and support to the company and its employees. GOAL Respond to incoming legal inquiries via email within 24 hours. GOAL Keep the company website updated with the latest legal policies and compliance information. RULE Always ensure compliance with local laws and regulations. RULE Never provide legal advice outside your area of expertise. RULE Never provide legal advice about criminal law. KNOWLEDGE https://company.com/company-policies.pdf KNOWLEDGE https://company.com/internal-documents/employee-handbook.docx USE EMAIL USE BROWSER USE SEARCH ENGINE TEAM You are part of the legal team of Paul Smith & Associés, you discuss with {Emily White}, the head of the compliance department. {George Brown} is expert in corporate law and {Sophia Black} is expert in labor law.
Promptbook Ecosystem
Promptbook is an ecosystem of tools centered around the Agents Server — a production-ready platform for running persistent AI agents.
Agents Server
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.
Promptbook Engine
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.
💜 The Promptbook Project
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:
🌐 Community & Social Media
Join our growing community of developers and users:
🖼️ Product & Brand Channels
Promptbook.studio
📚 Documentation
See detailed guides and API reference in the docs or online.
🔒 Security
For information on reporting security vulnerabilities, see our Security Policy.
📦 Deployment & Packages
The fastest way to get started is with the Agents Server:
- 🐋 Docker image — Self-host the Agents Server with full control over your data
- ☁️ Hosted Agents Server — Start creating agents immediately, no setup required
NPM Packages (for developers embedding the Engine)
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 ptbkOr you can install them separately:
⭐ Marked packages are worth to try first
⭐ ptbk - Bundle of all packages, when you want to install everything and you don't care about the size
promptbook - Same as
ptbk⭐🧙♂️ @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
⭐ @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
.pdfdocuments@promptbook/documents - Integration of Markitdown by Microsoft
@promptbook/documents - Read knowledge from documents like
.docx,.odt,…@promptbook/legacy-documents - Read knowledge from legacy documents like
.doc,.rtf,…@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
📚 Dictionary
The following glossary is used to clarify certain concepts:
General LLM / AI terms
- Prompt drift is a phenomenon where the AI model starts to generate outputs that are not aligned with the original prompt. This can happen due to the model's training data, the prompt's wording, or the model's architecture.
- Pipeline, workflow scenario or chain is a sequence of tasks that are executed in a specific order. In the context of AI, a pipeline can refer to a sequence of AI models that are used to process data.
- Fine-tuning is a process where a pre-trained AI model is further trained on a specific dataset to improve its performance on a specific task.
- Zero-shot learning is a machine learning paradigm where a model is trained to perform a task without any labeled examples. Instead, the model is provided with a description of the task and is expected to generate the correct output.
- Few-shot learning is a machine learning paradigm where a model is trained to perform a task with only a few labeled examples. This is in contrast to traditional machine learning, where models are trained on large datasets.
- Meta-learning is a machine learning paradigm where a model is trained on a variety of tasks and is able to learn new tasks with minimal additional training. This is achieved by learning a set of meta-parameters that can be quickly adapted to new tasks.
- Retrieval-augmented generation is a machine learning paradigm where a model generates text by retrieving relevant information from a large database of text. This approach combines the benefits of generative models and retrieval models.
- Longtail refers to non-common or rare events, items, or entities that are not well-represented in the training data of machine learning models. Longtail items are often challenging for models to predict accurately.
Note: This section is not a complete dictionary, more list of general AI / LLM terms that has connection with Promptbook
💯 Core concepts
- 📚 Collection of pipelines
- 📯 Pipeline
- 🙇♂️ Tasks and pipeline sections
- 🤼 Personas
- ⭕ Parameters
- 🚀 Pipeline execution
- 🧪 Expectations - Define what outputs should look like and how they're validated
- ✂️ Postprocessing - How outputs are refined after generation
- 🔣 Words not tokens - The human-friendly way to think about text generation
- ☯ Separation of concerns - How Book language organizes different aspects of AI workflows
Advanced concepts
� Agents Server
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.
- Hosted at gallery.ptbk.io — start creating agents immediately
- Self-hosted via Docker — full control over your data and infrastructure
- API for integrating agents into your own applications
🚂 Promptbook Engine
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.
➕➖ When to use Promptbook?
➕ When to use
- When you want to deploy persistent AI agents that work on goals for your company
- When you need agents with specific personalities, knowledge, and rules tailored to your business
- When you want agents that collaborate in teams and consult each other
- When you need to integrate AI agents into your existing applications via API
- When you want to self-host your AI agents with full control over data and infrastructure
- When you are writing an app that generates complex things via LLM — like websites, articles, presentations, code, stories, songs,...
- When you want to version your agent definitions and test multiple versions
- When you want to log agent execution and backtrace issues
➖ When not to use
- When a single simple prompt already works fine for your job
- When OpenAI Assistant (GPTs) is enough for you
- When you need streaming (this may be implemented in the future, see discussion)
- When you need to use something other than JavaScript or TypeScript (other languages are on the way, see the discussion)
- When your main focus is on something other than text — like images, audio, video, spreadsheets (other media types may be added in the future, see discussion)
- When you need to use recursion (see the discussion)
🐜 Known issues
🧼 Intentionally not implemented features
❔ FAQ
If you have a question start a discussion, open an issue or write me an email.
- ❔ Why not just use the OpenAI SDK / Anthropic Claude SDK / ...?
- ❔ How is it different from the OpenAI`s GPTs?
- ❔ How is it different from the Langchain?
- ❔ How is it different from the DSPy?
- ❔ How is it different from anything?
- ❔ Is Promptbook using RAG (Retrieval-Augmented Generation)?
- ❔ Is Promptbook using function calling?
📅 Changelog
See CHANGELOG.md
📜 License
This project is licensed under BUSL 1.1.
🤝 Contributing
We welcome contributions! See CONTRIBUTING.md for guidelines.
You can also ⭐ star the project, follow us on GitHub or various other social networks.We are open to pull requests, feedback, and suggestions.
🆘 Support & Community
Need help with Book language? We're here for you!
- 💬 Join our Discord community for real-time support
- 📝 Browse our GitHub discussions for FAQs and community knowledge
- 🐛 Report issues for bugs or feature requests
- 📚 Visit ptbk.io for more resources and documentation
- 📧 Contact us directly through the channels listed in our signpost
We welcome contributions and feedback to make Book language better for everyone!
