[hpc-announce] Call for Papers: Workshop on IoT, Edge, and Mobile for Embedded Machine Learning (ITEM)/ECML-PKDD 2022
Holger Fröning
holger.froening at ziti.uni-heidelberg.de
Wed Jun 22 10:13:07 CDT 2022
Submission deadline extended to July 8! - https://www.item-workshop.org <https://www.item-workshop.org/>
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CALL FOR PAPERS
3rd International Workshop on
IoT, Edge, and Mobile for Embedded Machine Learning
(ITEM 2022)
https://www.item-workshop.org <https://www.item-workshop.org/>
In conjunction with
European Conference on Machine Learning
and
Principles and Practice of Knowledge Discovery in Databases
(ECML-PKDD 2022)
September 19-23, 2022, Grenoble, France
https://2022.ecmlpkdd.org <https://2022.ecmlpkdd.org/>
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ABOUT THE WORKSHOP
Local and embedded machine learning (ML) is a key component for real-time data
analytics in upcoming computing environments like the Internet of Things (IoT),
edge computing and mobile ubiquitous systems. The goal of the ITEM workshop is
to bring together experts, researchers and practitioners from all relevant
communities, including ML, hardware design and embedded systems, IoT, edge, and
ubiquitous / mobile computing. Topics of interest include compression
techniques for existing ML models, new ML models that are especially suitable
for embedded hardware, tractable models beyond neural networks, federated
learning approaches, as well as automatic code generation, frameworks and tool
support. The workshop is planned as a combination of invited talks, paper
submissions, as well as open-table discussions.
There is an increasing need for real-time intelligent data analytics, driven by
a world of Big Data, and the society’s need for pervasive intelligent devices,
such as wearables for health and recreational purposes, smart city
infrastructure, e-commerce, Industry 4.0, and autonomous robots. Most
applications share facts like large data volumes, real-time requirements,
limited resources including processor, memory, network and possibly battery
life. Data might be large but possibly incomplete and uncertain. Notably, often
powerful cloud services can be unavailable, or not an option due to latency or
privacy constraints. For these tasks, Machine Learning (ML) is among the most
promising approaches to address learning and reasoning under uncertainty.
Examples include image and speech processing, such as image recognition,
segmentation, object localization, multi-channel speech enhancement, speech
recognition, signal processing such as radar signal denoising, with
applications as broad as robotics, medicine, autonomous navigation, recommender
systems, etc.
To address uncertainty, limited data, and to improve in general the robustness
of ML, new methods are required, with examples including Bayesian approaches,
sum-product networks, transformer networks, graph-based neural networks, and many
more. One can observe that, compared with deep convolutional neural networks,
computations can be fundamentally different, compute requirements can
substantially increase, and underlying properties like structure in computation
are often lost. As a result, we observe a strong need for new ML methods to
address the requirements of emerging workloads deployed in the real-world, such
as uncertainty, robustness, and limited data. In order to not hinder the
deployment of such methods on various computing devices, and to address the gap
in between application and compute hardware, we furthermore need a variety of
tools. As such, this workshop proposal gears to gather new ideas and concepts
on
- ML methods for real-world deployment,
- methods for compression and related complexity reduction tools,
- dedicated hardware for emerging ML tasks,
- and associated tooling like compilers and mappers.
TOPICS OF INTEREST
Topics of particular interest include, but are not limited to:
- Compression of neural networks for inference deployment, including methods for
quantization (including binarization), pruning, knowledge distillation, structural
efficiency and neural architecture search
- Hardware support for novel ML architectures beyond CNNs, e.g., transformer models
- Tractable models beyond neural networks
- Learning on edge devices, including federated and continuous learning
- Trading among prediction quality (accuracy), efficiency of representation (model
parameters, data types for arithmetic operations and memory footprint in general),
and computational efficiency (complexity of computations)
- Automatic code generation from high-level descriptions, including linear algebra
and stencil codes, targeting existing and future instruction set extensions
- Tool driven, optimizations up from ML model level down to instruction level,
automatically adapted to the current hardware requirements
- Understanding the difficulties and opportunities using common ML frameworks with
marginally supported devices
- Exploring new ML models designed to use on designated device hardware
- Future emerging processors and technologies for use in resource-constrained
environments, e.g. RISC V, embedded FPGAs, or analogue technologies
- Applications and experiences from deployed use cases requiring embedded ML
- New and emerging applications that require ML on resource-constrained hardware
- Energy efficiency of ML models created with distinct optimization techniques
- Security/privacy of embedded ML
- New benchmarks suited to edge and embedded devices
IMPORTANT DATES
Submission deadline: (was: June 23, 2022) July 8, 2022
Acceptance notification: (was: Jul 13, 2022) Aug 1, 2022
Camera-ready paper: (was: Aug 15, 2022) Aug 26, 2022
Workshop papers available online: Sept 5, 2022
Workshop date: Sept 19, 2022
PAPER SUBMISSION GUIDELINES
Papers must be written in English and formatted according to the Springer LNCS
guidelines. Author instructions, style files and the copyright form can be
downloaded here:
http://www.springer.com/gp/computer-science/lncs/conference-proceedings-guidelines <http://www.springer.com/gp/computer-science/lncs/conference-proceedings-guidelines>
Submissions may not exceed 12 pages in PDF format for full papers, respectively
6 pages for short papers, including figures and references. Submitted papers
must be original work that has not appeared in and is not under consideration
for another conference or journal. Work in progress is welcome, but first
results should be made available as a proof of concept. Submissions only
consisting of a proposal will be rejected.
We are negotiating with ECML-PKDD co-organizers on joint proceedings or will try
to organize individual proceedings. More details to follow. In case of
questions, please contact the workshop organizers. In any case, accepted papers
will be posted on the workshop's website. If the authors of an accepted paper
do not want to join the workshop's proceedings, these accepted papers do not
preclude publishing at future conferences and/or journals.
ORGANIZATION
CO-CHAIRS
- Holger Fröning, Heidelberg University, Germany
(holger.froening at ziti.uni-heidelberg.de <mailto:holger.froening at ziti.uni-heidelberg.de>)
- Franz Pernkopf, Graz University of Technology, Austria
(pernkopf at tugraz.at <mailto:pernkopf at tugraz.at>)
- Michaela Blott, AMD Research, Dublin, Ireland
(michaela.blott at amd.com <mailto:michaela.blott at amd.com>)
- Gregor Schiele, University of Duisburg-Essen
(gregor.schiele at uni-due.de <mailto:gregor.schiele at uni-due.de>)
TPC Chair
- Kazem Shekofteh, Heidelberg University, Germany
(kazem.shekofteh at ziti.uni-heidelberg.de <mailto:kazem.shekofteh at ziti.uni-heidelberg.de>)
TECHNICAL PROGRAM COMMITTEE
TBA
ADDITIONAL INFORMATION
https://www.item-workshop.org <https://www.item-workshop.org/>
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