OpenAdapt

OpenAdapt: AI-First Process Automation with Large Multimodal Models (LMMs)

Build Status PyPI version Downloads License: MIT Python 3.10+ Discord

OpenAdapt is the open source software adapter between Large Multimodal Models (LMMs) and traditional desktop and web GUIs.

Record GUI demonstrations, train ML models, and evaluate agents - all from a unified CLI.

Join us on Discord Documentation OpenAdapt.ai

Architecture

OpenAdapt v1.0+ uses a modular meta-package architecture. The main openadapt package provides a unified CLI and depends on focused sub-packages via PyPI:

Package Description Repository
openadapt Meta-package with unified CLI This repo
openadapt-capture Event recording and storage openadapt-capture
openadapt-ml ML engine, training, inference openadapt-ml
openadapt-evals Benchmark evaluation openadapt-evals
openadapt-viewer HTML visualization openadapt-viewer
openadapt-grounding UI element localization openadapt-grounding
openadapt-retrieval Multimodal demo retrieval openadapt-retrieval
openadapt-privacy PII/PHI scrubbing openadapt-privacy
openadapt-wright Dev automation openadapt-wright
openadapt-herald Social media from git history openadapt-herald
openadapt-crier Telegram approval bot openadapt-crier
openadapt-consilium Multi-model consensus openadapt-consilium
openadapt-desktop Desktop GUI application openadapt-desktop
openadapt-tray System tray app openadapt-tray
openadapt-agent Production execution engine openadapt-agent
openadapt-telemetry Error tracking openadapt-telemetry

Installation

Install what you need:

pip install openadapt              # Minimal CLI only
pip install openadapt[capture]     # GUI capture/recording
pip install openadapt[ml]          # ML training and inference
pip install openadapt[evals]       # Benchmark evaluation
pip install openadapt[privacy]     # PII/PHI scrubbing
pip install openadapt[all]         # Everything

Requirements: Python 3.10+


Quick Start

1. Record a demonstration

openadapt capture start --name my-task
# Perform actions in your GUI, then press Ctrl+C to stop

2. Train a model

openadapt train start --capture my-task --model qwen3vl-2b

3. Evaluate

openadapt eval run --checkpoint training_output/model.pt --benchmark waa

4. View recordings

openadapt capture view my-task

Ecosystem

Core Platform Components

Package Description Repository
openadapt Meta-package with unified CLI This repo
openadapt-capture Event recording and storage openadapt-capture
openadapt-ml ML engine, training, inference openadapt-ml
openadapt-evals Benchmark evaluation openadapt-evals
openadapt-viewer HTML visualization openadapt-viewer
openadapt-grounding UI element localization openadapt-grounding
openadapt-retrieval Multimodal demo retrieval openadapt-retrieval
openadapt-privacy PII/PHI scrubbing openadapt-privacy

Applications and Tools

Package Description Repository
openadapt-desktop Desktop GUI application openadapt-desktop
openadapt-tray System tray app openadapt-tray
openadapt-agent Production execution engine openadapt-agent
openadapt-wright Dev automation openadapt-wright
openadapt-herald Social media from git history openadapt-herald
openadapt-crier Telegram approval bot openadapt-crier
openadapt-consilium Multi-model consensus openadapt-consilium
openadapt-telemetry Error tracking openadapt-telemetry

CLI Reference

openadapt capture start --name <name>    Start recording
openadapt capture stop                    Stop recording
openadapt capture list                    List captures
openadapt capture view <name>             Open capture viewer

openadapt train start --capture <name>    Train model on capture
openadapt train status                    Check training progress
openadapt train stop                      Stop training

openadapt eval run --checkpoint <path>    Evaluate trained model
openadapt eval run --agent api-claude     Evaluate API agent
openadapt eval mock --tasks 10            Run mock evaluation

openadapt serve --port 8080               Start dashboard server
openadapt version                         Show installed versions
openadapt doctor                          Check system requirements

How It Works

See the full Architecture Evolution for detailed documentation.

Three-Phase Pipeline

OpenAdapt follows a streamlined Demonstrate → Learn → Execute pipeline:

1. DEMONSTRATE (Observation Collection)

2. LEARN (Policy Acquisition)

3. EXECUTE (Agent Deployment)

Core Approach: Trajectory-Conditioned Disambiguation

Zero-shot VLMs fail on GUI tasks not due to lack of capability, but due to ambiguity in UI affordances. OpenAdapt resolves this by conditioning agents on human demonstrations — “show, don’t tell.”

  No Retrieval With Retrieval
No Fine-tuning 46.7% (zero-shot baseline) 100% first-action (n=45, shared entry point)
Fine-tuning Standard SFT (baseline) Demo-conditioned FT (planned)

The bottom-right cell is OpenAdapt’s unique value: training models to use demonstrations they haven’t seen before, combining retrieval with fine-tuning for maximum accuracy. Phase 2 (retrieval-only prompting) is validated; Phase 3 (demo-conditioned fine-tuning) is in progress.

Validated result: On a controlled macOS benchmark (45 System Settings tasks sharing a common navigation entry point), demo-conditioned prompting improved first-action accuracy from 46.7% to 100%. A length-matched control (+11.1 pp only) confirms the benefit is semantic, not token-length. See the research thesis for methodology and the publication roadmap for limitations.

Industry validation: OpenCUA (NeurIPS 2025 Spotlight, XLANG Lab) reused OpenAdapt’s macOS accessibility capture code in their AgentNetTool, but uses demos only for model training — not runtime conditioning. No open-source CUA framework currently does demo-conditioned inference, which remains OpenAdapt’s architectural differentiator.

Key Concepts


Terminology

Term Description
Observation What the agent perceives (screenshot, accessibility tree)
Action What the agent does (click, type, scroll, etc.)
Trajectory Sequence of observation-action pairs
Demonstration Human-provided example trajectory
Policy Decision-making component that maps observations to actions
Grounding Mapping intent to specific UI elements (coordinates)

Demos

Legacy Version (v0.46.0) Examples:

Note: These demos show the legacy monolithic version. For current v1.0+ modular architecture examples, see the documentation.


Permissions

macOS: Grant Accessibility, Screen Recording, and Input Monitoring permissions to your terminal. See permissions guide.

Windows: Run as Administrator if needed for input capture.


Legacy Version

The monolithic OpenAdapt codebase (v0.46.0) is preserved in the legacy/ directory.

To use the legacy version:

pip install openadapt==0.46.0

See docs/LEGACY_FREEZE.md for migration guide and details.


Contributing

  1. Join Discord
  2. Pick an issue from the relevant sub-package repository
  3. Submit a PR

For sub-package development:

git clone https://github.com/OpenAdaptAI/openadapt-ml  # or other sub-package
cd openadapt-ml
pip install -e ".[dev]"


Support


License

MIT License - see LICENSE for details.