Nanda Kambhatla has nearly 17 years of
research experience in the
areas
of Natural Language Processing (NLP), text mining, information
extraction, dialog systems, and machine
learning. He holds 6 U.S
patents
and has authored over 30 publications in books, journals, and
conferences in these areas. Nanda holds a
B.Tech in Computer Science
and
Engineering from the Institute of Technology, Benaras Hindu
University, India, and a Ph.D in Computer
Science and Engineering from
the
Oregon Graduate Institute of Science & Technology, Oregon, USA.
Currently, Nanda is the manager of the Data
Analytics Group at IBM's
India
Research Lab (IRL), Bangalore. The group is focused on research
on
machine translation, Natural Language Processing, text analysis and
machine
learning techniques for developing analytics solutions to help
IBM's
services divisions. Most recently, Nanda was the manager of the
Statistical Text Analytics Group at IBM's T.J.
Watson Research Center,
the
Watson co-chair of the Natural Language Processing PIC, and the
task PI
for the Language Exploitation
Environment (LEE) subtask for
the
DARPA GALE project. He has been leading the development of
information extraction tools/products and his
team has achieved top
tier
results in successive Automatic Content Extraction
(ACE)
evaluations conducted
by NIST
for extracting entities, events and relations from text from
multiple sources, in multiple languages and
genres.
Earlier
in his career, Nanda has worked on natural language web-based
and
spoken dialog systems at IBM. Before joining IBM, he has worked on
information retrieval and filtering algorithms
as a senior research
scientist
at WiseWire Corporation, Pittsburgh and on image compression
algorithms while working as a postdoctoral
fellow under Prof. Simon
Haykin
at McMaster University, Canada.
Nanda's
research interests are focused on NLP and technology solutions
for
creating, storing, searching, and processing large volumes of
unstructured data (text, audio, video,
etc.)
and specifically on applications of statistical learning
algorithms to these tasks.