22 stable releases
Uses new Rust 2024
| 1.21.0 | Dec 4, 2025 |
|---|---|
| 1.20.0 | Oct 13, 2025 |
| 1.19.0 | Jul 18, 2025 |
| 1.14.0 | Jun 30, 2025 |
| 1.3.0 | Mar 27, 2025 |
#155 in Machine learning
1MB
26K
SLoC
hai ≡ Hacker AI
A CLI (hai) with a REPL for hackers using LLMs.

Documentation
Documentation is available at braincore.github.io/hai-cli
Or, you can dive in and rely on hai -h (CLI), /help (REPL), and
/task hai/help (LLM helper within REPL).
Highlights
- ⚡️ Starts in 30ms (on my machine).
- 📦 Single, standalone binary—no installation or dependencies required.
- 🪶 Lightweight (< 9MB compressed) for your machine, SBCs, and servers.
- 🗯 Run many instances for simultaneous conversations.
- 🤖 Supports AIs from OpenAI, Anthropic, DeepSeek, Google, xAI, and llama.cpp/Ollama (local) all in a single conversation.
- 🕶 Go incognito
hai -i. - ⚙ Give AI the power to run programs on your computer.
- 🍝 Share AI prompt-pasta publicly using the task repository.
- 📂 Load images, code, or text into the conversation.
- 🔗 Load URLs with automatic article extraction and markdown conversion.
- 🎨 Highlights syntax for markdown and code snippets.
- 🖼 Render output to browser.
- 💾 Auto-saves last conversation for easy resumption.
- ☁ Store and share data on the cloud for easy access by AIs.
- 📧 Get emails from AI—send notifications or share data.
- 🛠 Open source: Apache License 2.0
- 💻 Supports Linux and macOS. Windows needs testing (help!).
Installation
Installer [Linux, macOS]
curl -LsSf https://hai.superego.ai/hai-installer.sh | sh
Alt: Download binary [Linux, macOS, Windows]
Go to releases and download the version for your machine.
Alt: Build from source [Linux, macOS, Windows]
cargo install hai-cli
Demo
Markdown & code syntax highlighting

Load image

Load URL

Using the shell !sh tool

Using the Python !py tool

Using the Python-uv !pyuv tool
Like !py but delegates to the LLM the responsibility of defining and
installing Python library dependencies.

Using the HTML !html tool
Using the !hai tool

Using the function tool (Python) !fn-py

Using a task
Example uses ken/code-review task.

Example uses ken/weather task.

NOTE: Human input and code generation is cached so the next invocation of task doesn't require the LLM at all.
Using assets
Assets are a key-value object store in the cloud that you and the LLM can read or write to. Assets can be shared publicly, monitored for changes, and support revisions.

The LLM can use assets without loading them into the conversation:

Multi AI

Send email
