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Helixent is a blue rabbit that writes code. It includes an Agent Loop, a Coding Agent, and a nice CLI.

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    Readme

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    Helixent

    npm Check Bun TypeScript Ink React

    Helixent is a blue rabbit that writes code. It includes an Agent Loop, a Coding Agent, and a nice CLI.

    Demo

    https://github.com/user-attachments/assets/4ad89f14-e338-43e4-82ce-91cb83d58be2

    Index


    Get Started

    Key Features

    • Model Foundation

      • A stable core Model abstraction plus provider-facing contracts, designed to keep model integrations clean and reusable.
      • Multiple models are supported.
    • Agent Loop (Middleware-Ready)

      • A reusable ReAct-style agent loop.
      • First-class middleware support for extending behavior (state, tool orchestration, skills, etc.).
      • Human-in-the-loop support for approval of tool calls.
      • See Middleware
    • Skills Support

      • The standard agent skill format is supported.
      • Skills are discovered and loaded from:
        • ~/.agents/skills
        • ~/.helixent/skills
        • ${current_project}/.agents/skills
        • ${current_project}/.helixent/skills
      • Duplicate skill names in different folders are allowed.
    • Long-term memory

      • Project root AGENTS.md support: if an AGENTS.md exists at the repository root, it is automatically picked up as project guidance.
    • Coding Agent

      • A coding-focused agent layer with practical tools (e.g. bash, read_file, write_file, str_replace, list_files, glob_search, grep_search, apply_patch, file_info, mkdir, move_path, etc.) for developer workflows.
      • Todo-list-based plan mode is supported.
    • CLI

      • A CLI (with TUI support) for running agents interactively and iterating quickly.

    Helixent is now available on npm, so you can install globally and run, or choose to run via npx without installing:

    Install and Run

    Option 1: Install and Run

    npm install -g helixent@latest
    cd path/to/your/project
    helixent
    helixent --help

    Option 2: Run without Installing

    cd path/to/your/project
    npx helixent@latest
    npx helixent --help

    Model Configuration

    Helixent stores your CLI configuration in:

    • ~/.helixent/config.yaml

    List Configured Models

    helixent config model list

    Add a New Model

    helixent config model add

    Remove a Model

    helixent config model remove <model_name>

    Or select from the list of configured models:

    helixent config model remove

    Set the Default Model

    helixent config model set-default <model_name>

    Or select from the list of configured models:

    helixent config model set-default

    How to Contribute

    Develop & Build from Source

    This section shows how to build Helixent from source and link the helixent CLI into your global PATH on macOS.

    1. Install Dependencies

    bun install

    All pushes and pull requests run bun run check in GitHub Actions. Local commits are also blocked by the pre-commit hook until the same check passes.

    2. Run in Development Mode

    bun run dev

    3. Build the Binary

    bun run build:bin

    After the build completes, you should have:

    • dist/bin/helixent

    4. Before Commit

    Make sure your changes pass all the linting, type checking, and tests by running:

    bun run check

    Or run tests only by running:

    bun run test

    This is also run automatically by the pre-commit hook. This also causes the committing process a little bit slower, but we think it's worth it. After all, in an AI-dominated GitHub universe, we should be able to handle the last mile of code quality.

    Architecture

    Helixent is organized into three layers, plus a community area for third-party integrations.

    src/
    ├── foundation/    # Layer 1 – Core primitives
    ├── agent/         # Layer 2 – Agent loop
    ├── coding/        # Layer 3 – Coding agent (domain-specific)
    └── community/     # Third-party integrations (e.g. OpenAI)

    Layer 1: Foundation

    Core primitives that everything else builds on:

    • Model — A unified abstraction over LLM providers. Define a model once, swap providers without changing agent code.
    • Message — A single transcript type that flows end-to-end through the system — the single source of truth for the conversation.
    • Tool — Tool definitions and execution plumbing (the "actions" an agent can invoke).

    Layer 2: Agent Loop

    A reusable ReAct-style agent loop:

    • Maintains state over a conversation transcript.
    • Orchestrates "think → act → observe" steps in a loop.
    • Invokes tool calls in parallel and feeds observations back into the next reasoning step.
    • Supports middleware for extending behavior (see below).

    This layer depends only on Foundation and remains generic — not tied to any specific domain.

    Layer 3: Coding Agent

    A domain-specific agent built on top of the generic agent loop, pre-configured with coding-oriented tools (read_file, write_file, str_replace, bash, list_files, glob_search, grep_search, apply_patch, file_info, mkdir, move_path, etc.) and the skills middleware.

    Community

    Optional, decoupled adapters that implement Foundation interfaces for specific providers:

    • community/openaiOpenAIModelProvider backed by the openai SDK, compatible with any OpenAI-compatible endpoint.

    How to Build a Coding Agent from Scratch

    Here is a complete example that creates a coding agent using an OpenAI-compatible provider:

    import { createCodingAgent } from "helixent/coding";
    import { OpenAIModelProvider } from "helixent/community/openai";
    import { Model } from "helixent/foundation";
    
    // 1. Set up a model provider (any OpenAI-compatible endpoint works)
    const provider = new OpenAIModelProvider({
      baseURL: "https://api.openai.com/v1",
      apiKey: process.env.OPENAI_API_KEY,
    });
    
    // 2. Create a model instance with your preferred options
    const model = new Model("gpt-4o", provider, {
      max_tokens: 16 * 1024,
      thinking: { type: "enabled" },
    });
    
    // 3. Create the agent — tools and skills are wired up automatically
    const agent = await createCodingAgent({ model });
    
    // 4. Stream the agent's response
    const stream = await agent.stream({
      role: "user",
      content: [{ type: "text", text: "Create a hello world web server in the current directory." }],
    });
    
    for await (const message of stream) {
      for (const content of message.content) {
        if (content.type === "thinking" && content.thinking) {
          console.info("💡", content.thinking);
        } else if (content.type === "text" && content.text) {
          console.info(content.text);
        } else if (content.type === "tool_use") {
          console.info("🔧", content.name, content.input.description ?? "");
        }
      }
    }

    Middleware

    Helixent provides a middleware system that lets you observe and mutate the agent's behavior at every stage of the loop. Middleware hooks are invoked sequentially in array order.

    Available Hooks

    Hook When it runs
    beforeAgentRun Once after the user message is appended, before the first step
    afterAgentRun Once when the agent is about to stop (no tool calls)
    beforeAgentStep At the start of each step, before the model is invoked
    afterAgentStep At the end of each step, after all tool calls complete
    beforeModel Before the model context is sent to the provider
    afterModel After the model response is received
    beforeToolUse Immediately before a tool is invoked
    afterToolUse Immediately after a tool invocation resolves

    Each hook receives the current context and can return a partial update to merge back in, or void to leave it unchanged.

    Why Bun?

    Agent loops are inherently asynchronous — the model thinks, tools execute, results stream back, often in parallel. JavaScript/TypeScript has native async/await baked into the language and runtime, making concurrent orchestration straightforward without the callback gymnastics or asyncio boilerplate you'd face in Python.

    Among JS runtimes, we chose Bun specifically because:

    • Same runtime as Claude Code — Bun powers Claude Code and a growing number of TypeScript-first tools. It's built for speed, and a compiled build is a single native executable.
    • Performance — HTTP, filesystem I/O, and cold starts are all noticeably faster than Node's, which adds up when an agent loop issues dozens of tool calls per run.
    • Standalone executablesbun build --compile outputs one self-contained binary. Shipping a CLI is as simple as handing users a single file—no separate runtime install.
    • Batteries included — Test runner, bundler, and TypeScript support ship with Bun, so there's no separate toolchain to wire up.

    Roadmap

    • Sub-agent — Spawn child agents from within a run to handle subtasks independently, each with their own context and tool set.
    • Agent Team — Multi-agent collaboration where agents can coordinate, delegate, and share results to tackle complex problems together.
    • Print Mode — A Claude Code-style rendering mode that streams the agent's thinking, tool calls, and outputs in a rich, human-friendly terminal UI.
    • Sessioning — A local, file-based session store for the agent's context and history.