We strive to create an environment conducive to many different types of research across many different time scales and levels of risk.
Our researchers drive advancements in computer science through both fundamental and applied research.
We regularly open-source projects with the broader research community and apply our developments to Google products.
Publishing our work allows us to share ideas and work collaboratively to advance the field of computer science.
We make products, tools, and datasets available to everyone with the goal of building a more collaborative ecosystem.
Supporting the next generation of researchers through a wide range of programming.
Participating in the academic research community through meaningful engagement with university faculty.
Connecting with the broader research community through events is essential for creating progress in every aspect of our work.
Google is at the forefront of innovation in Machine Intelligence, with active research exploring virtually all aspects of machine learning, including deep learning and more classical algorithms. Exploring theory as well as application, much of our work on language, speech, translation, visual processing, ranking and prediction relies on Machine Intelligence. In all of those tasks and many others, we gather large volumes of direct or indirect evidence of relationships of interest, applying learning algorithms to understand and generalize.
Machine Intelligence at Google raises deep scientific and engineering challenges, allowing us to contribute to the broader academic research community through technical talks and publications in major conferences and journals. Contrary to much of current theory and practice, the statistics of the data we observe shifts rapidly, the features of interest change as well, and the volume of data often requires enormous computation capacity. When learning systems are placed at the core of interactive services in a fast changing and sometimes adversarial environment, combinations of techniques including deep learning and statistical models need to be combined with ideas from control and game theory.
Africa team
Algorithms & optimization
Athena
Applied science
Climate and sustainability
Cloud AI Research
Graph mining
Health
Impact-Driven Research, Innovation and Moonshots
Language
Learning theory
Market algorithms
Operations research
Security, privacy and abuse
System performance
We're always looking for more talented, passionate people.