The Bee framework makes it easy to build agentic worfklows with leading open-source and proprietary models. We’re working on bringing model-agnostic support to any LLM to help developers avoid model provider lock-in.
- 🤖 AI agents: Use our powerful Bee agent or build your own.
- 🛠️ Tools: Use our built-in tools or create your own in Javascript/Python.
- 👩💻 Code interpreter: Run code safely in a sandbox container.
- 💾 Memory: Multiple strategies to optimize token spend.
- ⏸️ Serialization Handle complex agentic workflows and easily pause/resume them without losing state.
- 🔍 Traceability: Get full visibility of your agent’s inner workings, log all running events, and use our MLflow integration (coming soon) to debug performance.
- 🎛️ Production-level control with caching and error handling.
- 🚧 (Coming soon) Model-agnostic support: Change model providers in 1 line of code without breaking your agent’s functionality.
- 🚧 (Coming soon) Chat UI: Serve your agent to users in a delightful GUI with built-in transparency, explainability, and user controls.
- ... more on our Roadmap
npm install bee-agent-framework
or
yarn add bee-agent-framework
import { BeeAgent } from "bee-agent-framework/agents/bee/agent";
import { OllamaChatLLM } from "bee-agent-framework/adapters/ollama/chat";
import { TokenMemory } from "bee-agent-framework/memory/tokenMemory";
import { DuckDuckGoSearchTool } from "bee-agent-framework/tools/search/duckDuckGoSearch";
import { OpenMeteoTool } from "bee-agent-framework/tools/weather/openMeteo";
const llm = new OllamaChatLLM(); // default is llama3.1 (8B), it is recommended to use 70B model
const agent = new BeeAgent({
llm, // for more explore 'bee-agent-framework/adapters'
memory: new TokenMemory({ llm }), // for more explore 'bee-agent-framework/memory'
tools: [new DuckDuckGoSearchTool(), new OpenMeteoTool()], // for more explore 'bee-agent-framework/tools'
});
const response = await agent
.run({ prompt: "What's the current weather in Las Vegas?" })
.observe((emitter) => {
emitter.on("update", async ({ data, update, meta }) => {
console.log(`Agent (${update.key}) 🤖 : `, update.value);
});
});
console.log(`Agent 🤖 : `, response.result.text);
To run this example, be sure that you have installed ollama with the llama3.1 model downloaded.
➡️ See a more advanced example.
➡️ All examples can be found in the examples directory.
➡️ To run an arbitrary example, use the following command yarn start -- examples/agents/bee.ts
(just pass the appropriate path to the desired example).
Note:
yarn
should be installed via Corepack (tutorial)
Note: To make any asset available to a local code interpreter place them the following directory: ./examples/tmp/local
Note: Docker distribution with support for compose is required, the following are supported:
- Clone the repository
git clone git@github.com:i-am-bee/bee-agent-framework
. - Install dependencies
yarn install
. - Create
.env
(from.env.template
) and fill in missing values (if any). - Start the code interpreter
yarn run infra:start-code-interpreter
. - Start the agent
yarn run start:bee
(it runs ./examples/agents/bee.ts file).
Name | Description |
---|---|
PythonTool |
Run arbitrary Python code in the remote environment. |
WikipediaTool |
Search for data on Wikipedia. |
DuckDuckGoTool |
Search for data on DuckDuckGo. |
LLMTool |
Uses an LLM to process input data. |
DynamicTool |
Construct to create dynamic tools. |
ArXivTool |
Retrieves research articles published on arXiv. |
WebCrawlerTool |
Retrieves content of an arbitrary website. |
CustomTool |
Runs your own Python function in the remote environment. |
OpenMeteoTool |
Retrieves current, previous, or upcoming weather for a given destination. |
➕ Request |
Name | Description |
---|---|
Ollama |
LLM + ChatLLM support (example) |
OpenAI |
LLM + ChatLLM support (example) |
LangChain |
Use any LLM that LangChain supports (example) |
WatsonX |
LLM + ChatLLM support (example) |
Groq |
ChatLLM support (example) |
BAM (Internal) |
LLM + ChatLLM support (example) |
➕ Request |
The source directory (src
) provides numerous modules that one can use.
Name | Description |
---|---|
agents | Base classes defining the common interface for agent. |
llms | Base classes defining the common interface for text inference (standard or chat). |
template | Prompt Templating system based on Mustache with various improvements_. |
memory | Various types of memories to use with agent. |
tools | Tools that an agent can use. |
cache | Preset of different caching approaches that can be used together with tools. |
errors | Base framework error classes used by each module. |
adapters | Concrete implementations of given modules for different environments. |
logger | Core component for logging all actions within the framework. |
serializer | Core component for the ability to serialize/deserialize modules into the serialized format. |
version | Constants representing the framework (e.g., latest version) |
internals | Modules used by other modules within the framework. |
To see more in-depth explanation see docs.
🚧 Coming soon 🚧
- MLFlow integration for trace observability
- JSON encoder/decoder for model-agnostic support
- Structured outputs
- Chat Client (GUI)
- Improvements to base Bee agent
- Guardrails
- Evaluation
- 🚧 TBD 🚧
The Bee Agent Framework is an open-source project and we ❤️ contributions.
If you'd like to contribute to Bee, please take a look at our contribution guidelines.
We are using GitHub Issues to manage our public bugs. We keep a close eye on this, so before filing a new issue, please check to make sure it hasn't already been logged.
This project and everyone participating in it are governed by the Code of Conduct. By participating, you are expected to uphold this code. Please read the full text so that you can read which actions may or may not be tolerated.
All content in these repositories including code has been provided by IBM under the associated open source software license and IBM is under no obligation to provide enhancements, updates, or support. IBM developers produced this code as an open source project (not as an IBM product), and IBM makes no assertions as to the level of quality nor security, and will not be maintaining this code going forward.
Special thanks to our contributors for helping us improve Bee Agent Framework.