log in  |  register  |  feedback?  |  help  |  web accessibility
Logo
MLbase: A Distributed Machine-learning System
Presented By: Hui Miao - University of Maryland College Park
Tuesday, February 12, 2013, 2:00-3:00 pm Calendar
  • You are subscribed to this talk through .
  • You are watching this talk through .
  • You are subscribed to this talk. (unsubscribe, watch)
  • You are watching this talk. (unwatch, subscribe)
  • You are not subscribed to this talk. (watch, subscribe)
Abstract

Authors: Tim Kraska, Ameet Talwalkar, John Duchi, Rean Griffith, Michael J. Franklin, Michael Jordan

Abstract:

 Machine learning (ML) and statistical techniques are key to transforming big data into actionable knowledge. In spite of the modern primacy of data, the complexity of existing ML algorithms is often overwhelming|many users do not understand the trade-o s and challenges of parameterizing and choosing between di erent learning techniques. Furthermore, existing scalable systems that support machine learning are typically not accessible to ML researchers without a strong background in distributed systems and low-level primitives. In this work, we present our vision for MLbase, a novel system harnessing the power of machine learning for both end-users and ML researchers. MLbase provides (1) a simple declarative way to specify ML tasks, (2) a novel optimizer to select and dynamically adapt the choice of learning algorithm, (3) a set of high-level operators to enable ML researchers to scalably implement a wide range of ML methods without deep systems knowledge, and (4) a new run-time optimized for the data-access patterns of these high-level operators.

 
 
Link: 

 

 

 

This talk is organized by Abdul Quamar