Intelligent machines and intelligent software rely on algorithms that can reason about observed data to make predictions or decisions that are useful. Such systems rely on machine learning and artificial intelligence, combining computation, data, models, and algorithms. Our mission, in the Machine Intelligence theme at Microsoft Research Cambridge, is to expand the reach and efficiency of machine intelligence technology.

We research how to incorporate structured input data such as code and molecules effectively into deep learning models.  We invent new methods so models can accurately quantify their uncertainty when making predictions.  We build models that learn from small data that is corrupted or only partially observed.  We develop deep learning algorithms that apply to interactive settings in gaming and in decision making task, where model predictions have consequences on future inputs.

Improving the performance of machine learning methods demands an ever-increasing scale in computation while retaining flexibility to develop new models.  We research new AI compiler technology that will make it easier to express rich algorithms while effectively utilizing modern accelerators.

Projets

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Deep Program Understanding

This project aims to teach machines to understand complex algorithms, combining methods from the programming languages, software engineering and the machine learning communities.

Project Paidia - game intelligence round robot character

Deep Reinforcement Learning for Games

We aim to teach machines to understand complex algorithms, combining methods from the programming languages, software engineering and the machine learning communities.

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Enterprise Knowledge

The aim of the Enterprise Knowledge project is to automatically extract business knowledge into a single, consistent knowledge base, made up of the entities that really matter to each organisation.

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Infer.Net

Infer.NET is a .NET library for machine learning. It provides state-of-the-art algorithms for probabilistic inference from data. Infer.NET is open source software under the MIT license.

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Project Causica

In this project we investigate how to best utilize AI algorithms to aid decision making while simultaneously minimizing data requirements (and, therefore, cost).

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TrueMatch

The TrueMatch matchmaking system decides which people should play together in an online multiplayer game. The Coalition have announced (opens in new tab) that Gears 5 will use TrueMatch.

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TrueSkill

The TrueSkill ranking system is a skill-based ranking system designed to overcome the limitations of existing ranking systems, and to ensure that interesting matches can be reliably arranged within a league.

Personne

Portrait de Dave Bignell

Dave Bignell

SR RESEARCH SCIENTIST

Portrait de Sam Devlin

Sam Devlin

Principal Researcher

Portrait de Adam Foster

Adam Foster

Portrait de Raluca Georgescu

Raluca Georgescu

Senior Research Scientist

Portrait de Wenbo Gong

Wenbo Gong

Senior Researcher

Portrait de Tarun Gupta

Tarun Gupta

AI Researcher

Portrait de Katja Hofmann

Katja Hofmann

Senior Principal Researcher

Portrait de Sarah Lewis

Sarah Lewis

Senior Research Engineer

Portrait de Chao Ma

Chao Ma

Portrait de Krzysztof Maziarz

Krzysztof Maziarz

Senior Applied Researcher

Portrait de Tom Minka

Tom Minka

Senior Principal Researcher

Portrait de Pavel Myshkov

Pavel Myshkov

Senior Researcher

Portrait de Elena Pochernina

Elena Pochernina

Senior Research SDE

Portrait de Hannes Schulz

Hannes Schulz

Senior Researcher

Portrait de Marwin Segler

Marwin Segler

Principal Researcher

Portrait de Shanzheng Tan

Shanzheng Tan

Researcher / Technical Program Manager

Portrait de Jonathan Tims

Jonathan Tims

Ingénieur principal en développement logiciel

Portrait de Ryota Tomioka

Ryota Tomioka

Directeur principal de la recherche

Portrait de Sam Webster

Sam Webster

Ingénieur principal en développement logiciel

Portrait de Tian Xie

Tian Xie

Directeur principal de la recherche

Portrait de Yordan Zaykov

Yordan Zaykov

Principal Research Engineering Manager

Portrait de Rianne van den Berg

Rianne van den Berg

Directeur principal de la recherche