ANNOUNCEMENT:

>From Data to Knowledge: Machine-Learning with Real-time & Streaming
Applications
May 7-11 2012
On the Campus of the University of California, Berkeley

http://lyra.berkeley.edu/CDIConf/


 * * CONFIRMED INVITED SPEAKERS * *

Olfa Nasraoui (Louisville), Petros Drineas (RPI), Muthu Muthukrishnan
(Rutgers),
Alex Szalay (John Hopkins), David Bader (Georgia Tech),
Eamonn Keogh (UC Riverside), Joao Gama (Univ. of Porto, Portugal),
Michael Franklin (UC Berkeley), Ziv Bar-Joseph (Carnegie Mellon University)


 * * AIMS OF THE WORKSHOP * *

We are experiencing a revolution in the capacity to quickly collect
and transport large amounts of data. Not only has this revolution
changed the means by which we store and access this data, but has also
caused a fundamental transformation in the methods and algorithms that
we use to extract knowledge from data. In scientific fields as diverse
as climatology, medical science, astrophysics, particle physics,
computer vision, and computational finance, massive streaming data
sets have sparked innovation in methodologies for knowledge discovery
in data streams. Cutting-edge methodology for streaming data has come
from a number of diverse directions, from on-line learning, randomized
linear algebra and approximate methods, to distributed optimization
methodology for cloud computing, to multi-class classification
problems in the presence of noisy and spurious data.

This workshop will bring together researchers from applied
mathematics and several diverse scientific fields to discuss the
current state of the art and open research questions in streaming data
and real-time machine learning. The workshop will be domain driven,
with talks focusing on well-defined areas of application and
describing the techniques and algorithms necessary to address the
current and future challenges in the field.

Sessions will be accessible to a broad audience and will have a single
track format with additional rooms for breakout sessions and posters.
There will be no formal conference proceedings, but applicants are
encouraged to submit an abstract and present a talk and/or poster.


 * * IMPORTANT DATES * *

April 23: Late registration (additional fee).
May 7 - 11 : Workshop.


 * * SESSIONS * *

Stochastic Data Streams
    Muthu Muthukrishnan: (Dept. of Computer Science, Rutgers University)

Real-Time Machine Learning in Astrophysics
    Alex Szalay:      (Dept. of Physics and Astronomy, John Hopkins
University)

Real-Time Analytics with Streaming Databases
    Michael Franklin: (Computer Science Dept., UC Berkeley)

Classification of Sensor Network Data Streams
    Joao Gama:    (Lab. of A.I. & Decision Support, Economics at Univ. of
Porto)

Randomized and Approximation Algorithms
    Petros Drineas:   (Computer Science Dept., Rensselaer Polytechnic
Institute)

Time-Series Clustering and Classification
    Eamonn Keogh:     (Computer Science and Engineering Dept., UC Riverside)

Time Series in the Biological and Medical Sciences
    Ziv Bar-Joseph:   (Computer Science Dept., Carnegie Mellon University)

Streaming Graph/Network Data & Architectures
    David Bader:      (College of Computing, Georgia Tech)

Data Mining of Data Streams
    Olfa Nasraoui:    (Dept. of CS & Computer Engineering, Univ. of
Louisville)


 * * Local Organizing Committee * *

Joshua Bloom: (Dept. of Astronomy, UC Berkeley)
Damian Eads:  (Dept. of Eng, Univ. of Cambridge)
Berian James: (Dept. of Astr, UC Berkeley; Dark Cosmology Centre, U
Copenhagen)
Peter Nugent: (Comp. Cosmology, Lawrence Berkeley National Lab.)
John Rice:    (Dept. of Statistics, UC Berkeley)
Joseph Richards: (Dept. of Astronomy & Dept. of Statistics, UC Berkeley)
Dan Starr:    (Dept. of Astronomy, UC Berkeley)


 * * Scientific Organizing Committee * *

Leon Bottou:     (NEC Labs)
Emmanuel Candes: (Stanford)
Brad Efron:      (Stanford)
Alex Gray:       (Georgia Tech)
Michael Jordan:  (Berkeley)
John Langford:   (Yahoo)
Fernando Perez:  (Berkeley)
Ricardo Vilalta: (Houston)
Larry Wasserman: (CMU)

Reply via email to