| .. | ||
| docs | ||
| src | ||
| test | ||
| CHANGELOG.md | ||
| package.json | ||
| README.md | ||
| tsconfig.build.json | ||
| vitest.config.ts | ||
pi
A radically simple and opinionated coding agent with multi-model support (including mid-session switching), a simple yet powerful CLI for headless coding tasks, and many creature comforts you might be used to from other coding agents.
Works on Linux, macOS, and Windows (barely tested, needs Git Bash running in the "modern" Windows Terminal).
Table of Contents
- Installation
- Quick Start
- API Keys
- OAuth Authentication (Optional)
- Custom Models and Providers
- Themes
- Slash Commands
- Editor Features
- Project Context Files
- Image Support
- Session Management
- CLI Options
- Tools
- Usage
- Security (YOLO by default)
- Sub-Agents
- To-Dos
- Planning
- Background Bash
- Planned Features
- License
- See Also
Installation
npm install -g @mariozechner/pi-coding-agent
Quick Start
# Set your API key (see API Keys section)
export ANTHROPIC_API_KEY=sk-ant-...
# Start the interactive CLI
pi
Once in the CLI, you can chat with the AI:
You: Create a simple Express server in src/server.ts
The agent will use its tools to read, write, and edit files as needed, and execute commands via Bash.
API Keys
The CLI supports multiple LLM providers. Set the appropriate environment variable for your chosen provider:
# Anthropic (Claude)
export ANTHROPIC_API_KEY=sk-ant-...
# Or use OAuth token (retrieved via: claude setup-token)
export ANTHROPIC_OAUTH_TOKEN=...
# OpenAI (GPT)
export OPENAI_API_KEY=sk-...
# Google (Gemini)
export GEMINI_API_KEY=...
# Groq
export GROQ_API_KEY=gsk_...
# Cerebras
export CEREBRAS_API_KEY=csk-...
# xAI (Grok)
export XAI_API_KEY=xai-...
# OpenRouter
export OPENROUTER_API_KEY=sk-or-...
# ZAI
export ZAI_API_KEY=...
If no API key is set, the CLI will prompt you to configure one on first run.
Note: The /model command only shows models for which API keys are configured in your environment. If you don't see a model you expect, check that you've set the corresponding environment variable.
OAuth Authentication (Optional)
If you have a Claude Pro/Max subscription, you can use OAuth instead of API keys:
pi
# In the interactive session:
/login
# Select "Anthropic (Claude Pro/Max)"
# Authorize in browser
# Paste authorization code
This gives you:
- Free access to Claude models (included in your subscription)
- No need to manage API keys
- Automatic token refresh
To logout:
/logout
Note: OAuth tokens are stored in ~/.pi/agent/oauth.json with restricted permissions (0600).
Custom Models and Providers
You can add custom models and providers (like Ollama, vLLM, LM Studio, or any custom API endpoint) via ~/.pi/agent/models.json. Supports OpenAI-compatible APIs (openai-completions, openai-responses), Anthropic Messages API (anthropic-messages), and Google Generative AI API (google-generative-ai). This file is loaded fresh every time you open the /model selector, allowing live updates without restarting.
Configuration File Structure
{
"providers": {
"ollama": {
"baseUrl": "http://localhost:11434/v1",
"apiKey": "OLLAMA_API_KEY",
"api": "openai-completions",
"models": [
{
"id": "llama-3.1-8b",
"name": "Llama 3.1 8B (Local)",
"reasoning": false,
"input": ["text"],
"cost": {"input": 0, "output": 0, "cacheRead": 0, "cacheWrite": 0},
"contextWindow": 128000,
"maxTokens": 32000
}
]
},
"vllm": {
"baseUrl": "http://your-server:8000/v1",
"apiKey": "VLLM_API_KEY",
"api": "openai-completions",
"models": [
{
"id": "custom-model",
"name": "Custom Fine-tuned Model",
"reasoning": false,
"input": ["text", "image"],
"cost": {"input": 0.5, "output": 1.0, "cacheRead": 0, "cacheWrite": 0},
"contextWindow": 32768,
"maxTokens": 8192
}
]
},
"mixed-api-provider": {
"baseUrl": "https://api.example.com/v1",
"apiKey": "CUSTOM_API_KEY",
"api": "openai-completions",
"models": [
{
"id": "legacy-model",
"name": "Legacy Model",
"reasoning": false,
"input": ["text"],
"cost": {"input": 1.0, "output": 2.0, "cacheRead": 0, "cacheWrite": 0},
"contextWindow": 8192,
"maxTokens": 4096
},
{
"id": "new-model",
"name": "New Model",
"api": "openai-responses",
"reasoning": true,
"input": ["text", "image"],
"cost": {"input": 0.5, "output": 1.0, "cacheRead": 0.1, "cacheWrite": 0.2},
"contextWindow": 128000,
"maxTokens": 32000
}
]
}
}
}
API Key Resolution
The apiKey field can be either an environment variable name or a literal API key:
- First,
pichecks if an environment variable with that name exists - If found, uses the environment variable's value
- Otherwise, treats it as a literal API key
Examples:
"apiKey": "OLLAMA_API_KEY"→ checks$OLLAMA_API_KEY, then treats as literal "OLLAMA_API_KEY""apiKey": "sk-1234..."→ checks$sk-1234...(unlikely to exist), then uses literal value
This allows both secure env var usage and literal keys for local servers.
API Override
- Provider-level
api: Sets the default API for all models in that provider - Model-level
api: Overrides the provider default for specific models - Supported APIs:
openai-completions,openai-responses,anthropic-messages,google-generative-ai
This is useful when a provider supports multiple API standards through the same base URL.
Custom Headers
You can add custom HTTP headers to bypass Cloudflare bot detection, add authentication tokens, or meet other proxy requirements:
{
"providers": {
"custom-proxy": {
"baseUrl": "https://proxy.example.com/v1",
"apiKey": "YOUR_API_KEY",
"api": "anthropic-messages",
"headers": {
"User-Agent": "Mozilla/5.0 (Macintosh; Intel Mac OS X 10_15_7) AppleWebKit/537.36",
"X-Custom-Auth": "bearer-token-here"
},
"models": [
{
"id": "claude-sonnet-4",
"name": "Claude Sonnet 4 (Proxied)",
"reasoning": true,
"input": ["text", "image"],
"cost": {"input": 3, "output": 15, "cacheRead": 0.3, "cacheWrite": 3.75},
"contextWindow": 200000,
"maxTokens": 8192,
"headers": {
"X-Model-Specific-Header": "value"
}
}
]
}
}
}
- Provider-level
headers: Applied to all requests for models in that provider - Model-level
headers: Additional headers for specific models (merged with provider headers) - Model headers override provider headers when keys conflict
Model Selection Priority
When starting pi, models are selected in this order:
- CLI args:
--providerand--modelflags - First from
--modelsscope: If--modelsis provided (skipped when using--continueor--resume) - Restored from session: If using
--continueor--resume - Saved default: From
~/.pi/agent/settings.json(set when you select a model with/model) - First available: First model with a valid API key
- None: Allowed in interactive mode (shows error on message submission)
Provider Defaults
When multiple providers are available, pi prefers sensible defaults before falling back to "first available":
| Provider | Default Model |
|---|---|
| anthropic | claude-sonnet-4-5 |
| openai | gpt-5.1-codex |
| gemini-2.5-pro | |
| openrouter | openai/gpt-5.1-codex |
| xai | grok-4-fast-non-reasoning |
| groq | openai/gpt-oss-120b |
| cerebras | zai-glm-4.6 |
| zai | glm-4.6 |
Live Reload & Errors
The models.json file is reloaded every time you open the /model selector. This means:
- Edit models.json during a session
- Or have the agent write/update it for you
- Use
/modelto see changes immediately - No restart needed!
If the file contains errors (JSON syntax, schema violations, missing fields), the selector shows the exact validation error and file path in red so you can fix it immediately.
Example: Adding Ollama Models
See the configuration structure above. Create ~/.pi/agent/models.json with your Ollama setup, then use /model to select your local models. The agent can also help you write this file if you point it to this README.
Themes
Pi supports customizable color themes for the TUI. Two built-in themes are available: dark (default) and light.
Selecting a Theme
Use the /theme command to interactively select a theme, or edit your settings file:
# Interactive selector
pi
/theme
# Or edit ~/.pi/agent/settings.json
{
"theme": "dark" # or "light"
}
On first run, Pi auto-detects your terminal background (dark/light) and selects an appropriate theme.
Custom Themes
Create custom themes in ~/.pi/agent/themes/*.json. Custom themes support live editing - when you select a custom theme, Pi watches the file and automatically reloads when you save changes.
Workflow for creating themes:
- Copy a built-in theme as a starting point:
mkdir -p ~/.pi/agent/themes # Copy dark theme cp $(npm root -g)/@mariozechner/pi-coding-agent/dist/theme/dark.json ~/.pi/agent/themes/my-theme.json # Or copy light theme cp $(npm root -g)/@mariozechner/pi-coding-agent/dist/theme/light.json ~/.pi/agent/themes/my-theme.json - Use
/themeto select "my-theme" - Edit
~/.pi/agent/themes/my-theme.json- changes apply immediately on save - Iterate until satisfied (no need to re-select the theme)
See Theme Documentation for:
- Complete list of 44 color tokens
- Theme format and examples
- Color value formats (hex, RGB, terminal default)
Example custom theme:
{
"$schema": "https://raw.githubusercontent.com/badlogic/pi-mono/main/packages/coding-agent/theme-schema.json",
"name": "my-theme",
"vars": {
"accent": "#00aaff",
"muted": "#6c6c6c"
},
"colors": {
"accent": "accent",
"muted": "muted",
...
}
}
VS Code Terminal Color Issue
Important: VS Code's integrated terminal has a known issue with rendering truecolor (24-bit RGB) values. By default, it applies a "minimum contrast ratio" adjustment that can make colors look washed out or identical.
To fix this, set the contrast ratio to 1 in VS Code settings:
- Open Settings (Cmd/Ctrl + ,)
- Search for:
terminal.integrated.minimumContrastRatio - Set to:
1
This ensures VS Code renders the exact RGB colors defined in your theme.
Slash Commands
The CLI supports several commands to control its behavior:
/model
Switch models mid-session. Opens an interactive selector where you can type to search (by provider or model name), use arrow keys to navigate, Enter to select, or Escape to cancel.
The selector only displays models for which API keys are configured in your environment (see API Keys section).
/thinking
Adjust thinking/reasoning level for supported models (Claude Sonnet 4, GPT-5, Gemini 2.5). Opens an interactive selector where you can use arrow keys to navigate, Enter to select, or Escape to cancel.
/queue
Select message queue mode. Opens an interactive selector where you can choose between:
- one-at-a-time (default): Process queued messages one by one. When you submit messages while the agent is processing, they're queued and sent individually after each agent response completes.
- all: Process all queued messages at once. All queued messages are injected into the context together before the next agent response.
The queue mode setting is saved and persists across sessions.
/export [filename]
Export the current session to a self-contained HTML file:
/export # Auto-generates filename
/export my-session.html # Custom filename
The HTML file includes the full conversation with syntax highlighting and is viewable in any browser.
/session
Show session information and statistics:
/session
Displays:
- Session file path and ID
- Message counts (user, assistant, total)
- Token usage (input, output, cache read/write, total)
- Total cost (if available)
/changelog
Display the full changelog with all version history (newest last):
/changelog
/branch
Create a new conversation branch from a previous message. Opens an interactive selector showing all your user messages in chronological order. Select a message to:
- Create a new session with all messages before the selected one
- Place the selected message in the editor for modification or resubmission
This allows you to explore alternative conversation paths without losing your current session.
/branch
/login
Login with OAuth to use subscription-based models (Claude Pro/Max):
/login
Opens an interactive selector to choose provider, then guides you through the OAuth flow in your browser.
/logout
Logout from OAuth providers:
/logout
Shows a list of logged-in providers to logout from.
/clear
Clear the conversation context and start a fresh session:
/clear
Aborts any in-flight agent work, clears all messages, and creates a new session file.
Editor Features
The interactive input editor includes several productivity features:
File Reference (@)
Type @ to fuzzy-search for files and folders in your project:
@editor→ finds files/folders with "editor" in the name@readme→ finds README files anywhere in the project@src→ finds folders likesrc/,resources/, etc.- Directories are prioritized and shown with trailing
/ - Autocomplete triggers immediately when you type
@ - Use Up/Down arrows to navigate, Tab/Enter to select
Respects .gitignore files and skips hidden files/directories.
Path Completion
Press Tab to autocomplete file and directory paths:
- Works with relative paths:
./src/+ Tab → complete files in src/ - Works with parent directories:
../../+ Tab → navigate up and complete - Works with home directory:
~/Des+ Tab →~/Desktop/ - Use Up/Down arrows to navigate completion suggestions
- Press Enter to select a completion
- Shows matching files and directories as you type
File Drag & Drop
Drag files from your OS file explorer (Finder on macOS, Explorer on Windows) directly onto the terminal. The file path will be automatically inserted into the editor. Works great with screenshots from macOS screenshot tool.
Multi-line Paste
Paste multiple lines of text (e.g., code snippets, logs) and they'll be automatically coalesced into a compact [paste #123 <N> lines] reference in the editor. The full content is still sent to the model.
Message Queuing
You can submit multiple messages while the agent is processing without waiting for responses. Messages are queued and processed based on your queue mode setting:
One-at-a-time mode (default):
- Each queued message is processed sequentially with its own response
- Example: Queue "task 1", "task 2", "task 3" → agent completes task 1 → processes task 2 → completes task 2 → processes task 3
- Recommended for most use cases
All mode:
- All queued messages are sent to the model at once in a single context
- Example: Queue "task 1", "task 2", "task 3" → agent receives all three together → responds considering all tasks
- Useful when tasks should be considered together
Visual feedback:
- Queued messages appear below the chat with "Queued: "
- Messages disappear from the queue as they're processed
Abort and restore:
- Press Escape while streaming to abort the current operation
- All queued messages (plus any text in the editor) are restored to the editor
- Allows you to modify or remove queued messages before resubmitting
Change queue mode with /queue command. Setting is saved in ~/.pi/agent/settings.json.
Keyboard Shortcuts
Navigation:
- Arrow keys: Move cursor (Up/Down navigate visual lines, Left/Right move by character)
- Option+Left / Ctrl+Left: Move word backwards
- Option+Right / Ctrl+Right: Move word forwards
- Ctrl+A / Home: Jump to start of line
- Ctrl+E / End: Jump to end of line
Editing:
- Enter: Send message
- Shift+Enter / Alt+Enter: Insert new line (multi-line input)
- Backspace: Delete character backwards
- Delete (or Fn+Backspace): Delete character forwards
- Ctrl+W / Option+Backspace: Delete word backwards (stops at whitespace or punctuation)
- Ctrl+U: Delete to start of line (at line start: merge with previous line)
- Ctrl+K: Delete to end of line (at line end: merge with next line)
Completion:
- Tab: Path completion / Apply autocomplete selection
- Escape: Cancel autocomplete (when autocomplete is active)
Other:
- Ctrl+C: Clear editor (first press) / Exit pi (second press)
- Shift+Tab: Cycle thinking level (for reasoning-capable models)
- Ctrl+P: Cycle models (use
--modelsto scope) - Ctrl+O: Toggle tool output expansion (collapsed ↔ full output)
Project Context Files
The agent automatically loads context from AGENTS.md or CLAUDE.md files at startup. These files are loaded in hierarchical order to support both global preferences and monorepo structures.
File Locations
Context files are loaded in this order:
-
Global context:
~/.pi/agent/AGENTS.mdorCLAUDE.md- Applies to all your coding sessions
- Great for personal coding preferences and workflows
-
Parent directories (top-most first down to current directory)
- Walks up from current directory to filesystem root
- Each directory can have its own
AGENTS.mdorCLAUDE.md - Perfect for monorepos with shared context at higher levels
-
Current directory: Your project's
AGENTS.mdorCLAUDE.md- Most specific context, loaded last
- Overwrites or extends parent/global context
File preference: In each directory, AGENTS.md is preferred over CLAUDE.md if both exist.
What to Include
Context files are useful for:
- Project-specific instructions and guidelines
- Common bash commands and workflows
- Architecture documentation
- Coding conventions and style guides
- Dependencies and setup information
- Testing instructions
- Repository etiquette (branch naming, merge vs. rebase, etc.)
Example
# Common Commands
- npm run build: Build the project
- npm test: Run tests
# Code Style
- Use TypeScript strict mode
- Prefer async/await over promises
# Workflow
- Always run tests before committing
- Update CHANGELOG.md for user-facing changes
All context files are automatically included in the system prompt at session start, along with the current date/time and working directory. This ensures the AI has complete project context from the very first message.
Image Support
Send images to vision-capable models by providing file paths:
You: What is in this screenshot? /path/to/image.png
Supported formats: .jpg, .jpeg, .png, .gif, .webp
The image will be automatically encoded and sent with your message. JPEG and PNG are supported across all vision models. Other formats may only be supported by some models.
Session Management
Sessions are automatically saved in ~/.pi/agent/sessions/ organized by working directory. Each session is stored as a JSONL file with a unique timestamp-based ID.
To continue the most recent session:
pi --continue
# or
pi -c
To browse and select from past sessions:
pi --resume
# or
pi -r
This opens an interactive session selector where you can:
- Type to search through session messages
- Use arrow keys to navigate the list
- Press Enter to resume a session
- Press Escape to cancel
Sessions include all conversation messages, tool calls and results, model switches, and thinking level changes.
To run without saving a session (ephemeral mode):
pi --no-session
To use a specific session file instead of auto-generating one:
pi --session /path/to/my-session.jsonl
CLI Options
pi [options] [@files...] [messages...]
File Arguments (@file)
You can include files directly in your initial message using the @ prefix:
# Include a text file in your prompt
pi @prompt.md "Answer the question"
# Include multiple files
pi @requirements.md @context.txt "Summarize these"
# Include images (vision-capable models only)
pi @screenshot.png "What's in this image?"
# Mix text and images
pi @prompt.md @diagram.png "Explain based on the diagram"
# Files without additional text
pi @task.md
How it works:
- All
@filearguments are combined into the first user message - Text files are wrapped in
<file name="path">content</file>tags - Images (
.jpg,.jpeg,.png,.gif,.webp) are attached as base64-encoded attachments - Paths support
~for home directory and relative/absolute paths - Empty files are skipped
- Non-existent files cause an immediate error
Examples:
# All files go into first message, regardless of position
pi @file1.md @file2.txt "prompt" @file3.md
# This sends:
# Message 1: file1 + file2 + file3 + "prompt"
# (Any additional plain text arguments become separate messages)
# Home directory expansion works
pi @~/Documents/notes.md "Summarize"
# Combine with other options
pi --print @requirements.md "List the main points"
Limitations:
- Not supported in
--mode rpc(will error) - Images require vision-capable models (e.g., Claude, GPT-4o, Gemini)
Options
--provider
Provider name. Available: anthropic, openai, google, xai, groq, cerebras, openrouter, zai, plus any custom providers defined in ~/.pi/agent/models.json.
--model Model ID. If not specified, uses: (1) saved default from settings, (2) first available model with valid API key, or (3) none (interactive mode only).
--api-key API key (overrides environment variables)
--system-prompt <text|file> Custom system prompt. Can be:
- Inline text:
--system-prompt "You are a helpful assistant" - File path:
--system-prompt ./my-prompt.txt
If the argument is a valid file path, the file contents will be used as the system prompt. Otherwise, the text is used directly. Project context files and datetime are automatically appended.
--mode
Output mode for non-interactive usage (implies --print). Options:
text(default): Output only the final assistant message textjson: Stream all agent events as JSON (one event per line). Events are emitted by@mariozechner/pi-agentand include message updates, tool executions, and completionsrpc: JSON mode plus stdin listener for headless operation. Send JSON commands on stdin:{"type":"prompt","message":"..."}or{"type":"abort"}. See test/rpc-example.ts for a complete example
--print, -p
Non-interactive mode: process the prompt(s) and exit. Without this flag, passing a prompt starts interactive mode with the prompt pre-submitted. Similar to Claude's -p flag and Codex's exec command.
--no-session Don't save session (ephemeral mode)
--session Use specific session file path instead of auto-generating one
--continue, -c Continue the most recent session
--resume, -r Select a session to resume (opens interactive selector)
--models
Comma-separated model patterns for quick cycling with Ctrl+P. Matching priority:
provider/modelIdexact match (e.g.,openrouter/openai/gpt-5.1-codex)- Exact model ID match (e.g.,
gpt-5.1-codex) - Partial match against model IDs and names (case-insensitive)
When multiple partial matches exist, prefers aliases over dated versions (e.g., claude-sonnet-4-5 over claude-sonnet-4-5-20250929). Without this flag, Ctrl+P cycles through all available models.
Each pattern can optionally include a thinking level suffix: pattern:level where level is one of off, minimal, low, medium, or high. When cycling models, the associated thinking level is automatically applied. The first model in the list is used as the initial model when starting a new session.
Examples:
--models openrouter/openai/gpt-5.1-codex- Exact provider/model match--models gpt-5.1-codex- Exact ID match (notopenai/gpt-5.1-codex-mini)--models sonnet:high,haiku:low- Sonnet with high thinking, Haiku with low thinking--models sonnet,haiku- Partial match for any model containing "sonnet" or "haiku"
--thinking
Set thinking level for reasoning-capable models. Valid values: off, minimal, low, medium, high. Takes highest priority over all other thinking level sources (saved settings, --models pattern levels, session restore).
Examples:
--thinking high- Start with high thinking level--thinking off- Disable thinking even if saved setting was different
--help, -h Show help message
Examples
# Start interactive mode
pi
# Interactive mode with initial prompt (stays running after completion)
pi "List all .ts files in src/"
# Include files in your prompt
pi @requirements.md @design.png "Implement this feature"
# Non-interactive mode (process prompt and exit)
pi -p "List all .ts files in src/"
# Non-interactive with files
pi -p @code.ts "Review this code for bugs"
# JSON mode - stream all agent events (non-interactive)
pi --mode json "List all .ts files in src/"
# RPC mode - headless operation (see test/rpc-example.ts)
pi --mode rpc --no-session
# Then send JSON on stdin:
# {"type":"prompt","message":"List all .ts files"}
# {"type":"abort"}
# Continue previous session
pi -c "What did we discuss?"
# Use different model
pi --provider openai --model gpt-4o "Help me refactor this code"
# Limit model cycling to specific models
pi --models claude-sonnet,claude-haiku,gpt-4o
# Now Ctrl+P cycles only through those models
# Model cycling with thinking levels
pi --models sonnet:high,haiku:low
# Starts with sonnet at high thinking, Ctrl+P switches to haiku at low thinking
# Start with specific thinking level
pi --thinking high "Solve this complex algorithm problem"
Tools
Built-in Tools
The agent has access to four core tools for working with your codebase:
read Read file contents. Supports text files and images (jpg, png, gif, webp). Images are sent as attachments. For text files, defaults to first 2000 lines. Use offset/limit parameters for large files. Lines longer than 2000 characters are truncated.
write Write content to a file. Creates the file if it doesn't exist, overwrites if it does. Automatically creates parent directories.
edit Edit a file by replacing exact text. The oldText must match exactly (including whitespace). Use this for precise, surgical edits. Returns an error if the text appears multiple times or isn't found.
bash
Execute a bash command in the current working directory. Returns stdout and stderr. Optionally accepts a timeout parameter (in seconds) - no default timeout.
MCP & Adding Your Own Tools
pi does and will not support MCP. Instead, it relies on the four built-in tools above and assumes the agent can invoke pre-existing CLI tools or write them on the fly as needed.
Here's the gist:
- Create a simple CLI tool (any language, any executable)
- Write a concise README.md describing what it does and how to use it
- Tell the agent to read that README
Minimal example:
~/agent-tools/screenshot/README.md:
# Screenshot Tool
Takes a screenshot of your main display.
## Usage
```bash
screenshot.sh
Returns the path to the saved PNG file.
`~/agent-tools/screenshot/screenshot.sh`:
```bash
#!/bin/bash
screencapture -x /tmp/screenshot-$(date +%s).png
ls -t /tmp/screenshot-*.png | head -1
In your session:
You: Read ~/agent-tools/screenshot/README.md and use that tool to take a screenshot
The agent will read the README, understand the tool, and invoke it via bash as needed. If you need a new tool, ask the agent to write it for you.
You can also reference tool READMEs in your AGENTS.md files to make them automatically available:
- Global:
~/.pi/agent/AGENTS.md- available in all sessions - Project-specific:
./AGENTS.md- available in this project
Real-world example:
The exa-search tools provide web search capabilities via the Exa API. Built by the agent itself in ~2 minutes. Far from perfect, but functional. Just tell your agent: "Read ~/agent-tools/exa-search/README.md and search for X".
For a detailed walkthrough with more examples, and the reasons for and benefits of this decision, see: https://mariozechner.at/posts/2025-11-02-what-if-you-dont-need-mcp/
Security (YOLO by default)
This agent runs in full YOLO mode and assumes you know what you're doing. It has unrestricted access to your filesystem and can execute any command without permission checks or safety rails.
What this means:
- No permission prompts for file operations or commands
- No pre-checking of bash commands for malicious content
- Full filesystem access - can read, write, or delete anything
- Can execute any command with your user privileges
Why:
- Permission systems add massive friction while being easily circumvented
- Pre-checking tools for "dangerous" patterns introduces latency, false positives, and is ineffective
Prompt injection risks:
- By default, pi has no web search or fetch tool
- However, it can use
curlor read files from disk - Both provide ample surface area for prompt injection attacks
- Malicious content in files or command outputs can influence behavior
Mitigations:
- Run pi inside a container if you're uncomfortable with full access
- Use a different tool if you need guardrails
- Don't use pi on systems with sensitive data you can't afford to lose
- Fork pi and add all of the above
This is how I want it to work and I'm not likely to change my stance on this.
Use at your own risk.
Sub-Agents
pi does not and will not support sub-agents as a built-in feature. If the agent needs to delegate work, it can:
- Spawn another instance of itself via the
piCLI command - Write a custom tool with a README.md that describes how to invoke pi for specific tasks
Why no built-in sub-agents:
Context transfer between agents is generally poor. Information gets lost, compressed, or misrepresented when passed through agent boundaries. Direct execution with full context is more effective than delegation with summarized context.
If you need parallel work on independent tasks, manually run multiple pi sessions in different terminal tabs. You're the orchestrator.
To-Dos
pi does not and will not support built-in to-dos. In my experience, to-do lists generally confuse models more than they help.
If you need task tracking, make it stateful by writing to a file:
# TODO.md
- [x] Implement user authentication
- [x] Add database migrations
- [ ] Write API documentation
- [ ] Add rate limiting
The agent can read and update this file as needed. Using checkboxes keeps track of what's done and what remains. Simple, visible, and under your control.
Planning
pi does not and will not have a built-in planning mode. Telling the agent to think through a problem together with you, without modifying files or executing commands, is generally sufficient.
If you need persistent planning across sessions, write it to a file:
# PLAN.md
## Goal
Refactor authentication system to support OAuth
## Approach
1. Research OAuth 2.0 flows
2. Design token storage schema
3. Implement authorization server endpoints
4. Update client-side login flow
5. Add tests
## Current Step
Working on step 3 - authorization endpoints
The agent can read, update, and reference the plan as it works. Unlike ephemeral planning modes that only exist within a session, file-based plans persist and can be versioned with your code.
Background Bash
pi does not and will not implement background bash execution. Instead, tell the agent to use tmux or something like tterminal-cp. Bonus points: you can watch the agent interact with a CLI like a debugger and even intervene if necessary.
Planned Features
Things that might happen eventually:
- Auto-compaction: Currently, watch the context percentage at the bottom. When it approaches 80%, either:
- Ask the agent to write a summary .md file you can load in a new session
- Switch to a model with bigger context (e.g., Gemini) using
/modeland either continue with that model, or let it summarize the session to a .md file to be loaded in a new session
- Better RPC mode docs: It works, you'll figure it out (see
test/rpc-example.ts)
License
MIT
See Also
- @mariozechner/pi-ai: Core LLM toolkit with multi-provider support
- @mariozechner/pi-agent: Agent framework with tool execution