*Big Learning: Algorithms, Systems, and Tools for Learning at Scale
*
NIPS 2011 Workshop (http://www.biglearn.org)

DEADLINE EXTENDED TO *OCTOBER 7th* !!!

Submissions are solicited for a two day workshop December 16-17 in Sierra
Nevada, Spain.

This workshop will address tools, algorithms, systems, hardware, and
real-world problem domains related to large-scale machine learning (“Big
Learning”). The Big Learning setting has attracted intense interest with
active research spanning diverse fields including machine learning,
databases, parallel and distributed systems, parallel architectures, and
programming languages and abstractions. This workshop will bring together
experts across these diverse communities to discuss recent progress, share
tools and software, identify pressing new challenges, and to exchange new
ideas. Topics of interest include (but are not limited to):

*Hardware Accelerated Learning:* Practicality and performance of specialized
high-performance hardware (e.g. GPUs, FPGAs, ASIC) for machine learning
applications.

*Applications of Big Learning:* Practical application case studies; insights
on end-users, typical data workflow patterns, common data characteristics
(stream or batch); trade-offs between labeling strategies (e.g., curated or
crowd-sourced); challenges of real-world system building.

*Tools, Software, & Systems:* Languages and libraries for large-scale
parallel or distributed learning. Preference will be given to approaches and
systems that leverage cloud computing (e.g. Hadoop, DryadLINQ, EC2, Azure),
scalable storage (e.g. RDBMs, NoSQL, graph databases), and/or specialized
hardware (e.g. GPU, Multicore, FPGA, ASIC).

*Models & Algorithms:* Applicability of different learning techniques in
different situations (e.g., simple statistics vs. large structured models);
parallel acceleration of computationally intensive learning and inference;
evaluation methodology; trade-offs between performance and engineering
complexity; principled methods for dealing with large number of features;

We suggest keeping the paper under 4 pages (not including references) in the
NIPS latex style. For projects that require more room for descriptions, we
encourage the authors to include details of the work as appendix and/or
other supplementary materials. Relevant work previously presented in
non-machine-learning conferences is strongly encouraged. Exciting work that
was recently presented is allowed, provided that the extended abstract
mentions this explicitly.

Submission Deadline: *October 7th, 2011*.
Please refer to the website for detailed submission instructions:
http://biglearn.org/index.php/AuthorInfo

-- 
Big Learning: Algorithms, Systems, and Tools for Learning at Scale
http://biglearn.org/
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