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ado is a unified platform for executing computational experiments at scale and analysing their results. It can be easily extended with new experiments or new analysis tools. It allows distributed teams of researchers and engineers to collaborate on projects, execute experiments, and share data.

Project description

Introduction

This is the repository for the accelerated discovery orchestrator (ado).

ado is a unified platform for executing computational experiments at scale and analysing their results. It can be extended with new experiments or new analysis tools. It allows distributed teams of researchers and engineers to collaborate on projects, execute experiments, and share data.

You can run the experiments and analysis tools already available in ado in a distributed, shared, environment with your team. You can also use ado to get features like data-tracking, data-sharing, tool integration and a CLI, for your analysis method or experiment for free.

🧑‍💻 Using ado assumes familiarity with command line tools.

🛠️ Developing ado requires knowledge of python.

Key Features

Foundation Model Experimentation

We have developed ado plugins providing advanced experiments for testing foundation-models:

Requirements

A basic installation of ado only requires a recent Python version (3.10+). This will allow you to run many of our examples and explore ado features.

Additional Requirements

Some advanced features have additional requirements:

  • Distributed Projects (Optional): To support projects with multiple users you will need a remote, accessible, MySQL database. See here for more
  • Multi-Node Execution (Optional): To support multi-node or scaling execution you may need a multi-node RayCluster. See here for more details

In addition ado plugins may have additional requirements for executing realistic experiments. For example,

  • Fine-Tuning Benchmarking: Requires a RayCluster with GPUs
  • vLLM Performance Benchmarking: Requires an OpenShift cluster with GPUs

Install

To install you can execute the following (we recommend you set up a virtual environment)

git clone https://github.com/IBM/ado.git
cd ado
pip install .

Alternate instructions to install ado can be found here: https://ibm.github.io/ado/getting-started/install/

Development

Instructions for developing ado are available in DEVELOPING.

Testing

To run unit-tests read tests/README.md.

Example

This video shows listing actuators and getting the details of an experiment.

Check demo for more videos.

Watch the video

Technical Report

For more details on the Discovery Spaces concept underlying ado, please refer to this technical report.

Acknowledgement

This project is partially funded by the European Union through the Smart Networks and Services Joint Undertaking (SNS JU) under grant agreement No. 101192750 (Project 6G-DALI).

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