Artificial Intelligence (AI) | EECS at UC Berkeley

Overview

Work in Artificial Intelligence in the EECS department at Berkeley involves foundational research in core areas of knowledge representation, reasoning, learning, planning, decision-making, vision, robotics, speech and language processing. There are also significant efforts aimed at applying algorithmic advances to applied problems in a range of areas, including bioinformatics, networking and systems, search and information retrieval. There are active collaborations with several groups on campus, including the campus-wide vision sciences group, the information retrieval group at the I-School and the campus-wide computational biology program. There are also connections to a range of research activities in the cognitive sciences, including aspects of psychology, linguistics, and philosophy. Work in this area also involves techniques and tools from statistics, neuroscience, control, optimization, and operations research.

Graphical models. Kernel methods. Nonparametric Bayesian methods. Reinforcement learning. Problem solving, decisions, and games.

First order probabilistic logics. Symbolic algebra.

Collaborative filtering. Information extraction. Image and video search. Intelligent information systems.

Parsing. Machine translation. Speech Recognition. Context Modeling. Dialog Systems.

Grouping and Figure-Ground. Object Recognition. Human Activity Recognition. Active Vision.

Motion Planning, Computational Geometry. Computer assisted surgical and medical analysis, planning, and monitoring. Unmanned Air Vehicles

View post:

Artificial Intelligence (AI) | EECS at UC Berkeley

Related Posts

Comments are closed.