This PR was opened by the [Changesets release](https://github.com/changesets/action) GitHub action. When you're ready to do a release, you can merge this and the packages will be published to npm automatically. If you're not ready to do a release yet, that's fine, whenever you add more changesets to main, this PR will be updated. # Releases ## @langchain/quickjs@0.4.0 ### Minor Changes - [#531](https://github.com/langchain-ai/deepagentsjs/pull/531) [`a76b7df`](https://github.com/langchain-ai/deepagentsjs/commit/a76b7df62310e7f2dd49bb1ea5f1b3ee6c8590b6) Thanks [@colifran](https://github.com/colifran)! - chore(quickjs): update `REPLMiddleware` to be named `CodeInterpreterMiddleware` ### Patch Changes - [#524](https://github.com/langchain-ai/deepagentsjs/pull/524) [`2cbd524`](https://github.com/langchain-ai/deepagentsjs/commit/2cbd5245a43fb1ba97fa532c1942a8903e090cfa) Thanks [@colifran](https://github.com/colifran)! - fix(quickjs): individual repl sessions use individual wasm module causing inefficient memory usage ## deepagents-acp@0.1.11 ### Patch Changes - Updated dependencies \[[`f164f99`](https://github.com/langchain-ai/deepagentsjs/commit/f164f992e06a157573612fb2640232f44d9daa18)]: - deepagents@1.10.1 ## deepagents@1.10.1 ### Patch Changes - [#479](https://github.com/langchain-ai/deepagentsjs/pull/479) [`f164f99`](https://github.com/langchain-ai/deepagentsjs/commit/f164f992e06a157573612fb2640232f44d9daa18) Thanks [@ramon-langchain](https://github.com/ramon-langchain)! - feat(deepagents): add snapshot/start/stop lifecycle to LangSmithSandbox ## @deepagents/evals@0.0.10 ### Patch Changes - Updated dependencies \[[`f164f99`](https://github.com/langchain-ai/deepagentsjs/commit/f164f992e06a157573612fb2640232f44d9daa18)]: - deepagents@1.10.1 --------- Co-authored-by: github-actions[bot] <41898282+github-actions[bot]@users.noreply.github.com> Co-authored-by: Colin Francis <colin.francis@langchain.dev>
The batteries-included agent harness.
Deep Agents is an agent harness. An opinionated, ready-to-run agent out of the box. Instead of wiring prompts, tools, and context management yourself, you get a working agent immediately and customize what you need.
What's included:
- Planning —
write_todosfor task breakdown and progress tracking - Filesystem —
read_file,write_file,edit_file,ls,glob,grepfor working memory - Sub-agents —
taskfor delegating work with isolated context windows - Smart defaults — built-in prompt and middleware that make these tools useful out of the box
- Context management — file-based workflows to keep long tasks manageable
Note
Looking for the Python package? See langchain-ai/deepagents.
Quickstart
npm install deepagents
# or
pnpm add deepagents
# or
yarn add deepagents
import { createDeepAgent } from "deepagents";
const agent = createDeepAgent();
const result = await agent.invoke({
messages: [
{
role: "user",
content: "Research LangGraph and write a summary in summary.md",
},
],
});
The agent can plan, read/write files, and manage longer tasks with sub-agents and filesystem tools.
Tip
For developing, debugging, and deploying AI agents and LLM applications, see LangSmith.
Customization
Add tools, swap models, and customize prompts as needed:
import { ChatOpenAI } from "@langchain/openai";
import { createDeepAgent } from "deepagents";
const agent = createDeepAgent({
model: new ChatOpenAI({ model: "gpt-5", temperature: 0 }),
tools: [myCustomTool],
systemPrompt: "You are a research assistant.",
});
See the JavaScript Deep Agents docs for full configuration options.
LangGraph Native
createDeepAgent returns a compiled LangGraph graph, so you can use streaming, Studio, checkpointers, and other LangGraph features.
Why Use It
- 100% open source — MIT licensed and extensible
- Provider agnostic — works with tool-calling chat models
- Built on LangGraph — production runtime with streaming and persistence
- Batteries included — planning, file access, sub-agents, and defaults out of the box
- Fast to start — install and run with sensible defaults
- Easy to customize — add tools/models/prompts when you need to
Documentation
- docs.langchain.com - Concepts and guides
- Examples - Working agents and patterns
- LangChain Forum - Community discussion and support
Security
Deep Agents follows a "trust the LLM" model. The agent can do anything its tools allow. Enforce boundaries at the tool/sandbox level, not by expecting the model to self-police. See the security policy for more information.