Call for Papers
SoGood 2020 – 5th Workshop on Data Science for Social Good Affiliated with ECML-PKDD 2020, 14-18 September 2020,https://ecmlpkdd2020.net/
Workshop site:https://sites.google.com/view/ecmlpkddsogood2020/
This is the fifth edition of the workshop; the previous workshops were held jointly with ECML-PKDD 2016, 2017, 2018 and 2019
The possibilities of Data Science for contributing to social, common, or public good are often not sufficiently perceived by the public at large. Data Science applications are already helping in serving people at the bottom of the economic pyramid, aiding people with special needs, helping international cooperation, and dealing with environmental problems, disasters, and climate change. In regular conferences and journals, papers on these topics are often scattered among sessions with names that hide their common nature (such as “Social networks”, “Predictive models” or the catch-all term “Applications”). Additionally, such forums tend to have a strong bias for papers that are novel in the strictly technical sense (new algorithms, new kinds of data analysis, new technologies) rather than novel in terms of social impact of the application.
This workshop aims to attract papers presenting applications of Data Science for Social Good (which may, or may not require new methods), or applications that take into account social aspects of Data Science methods and techniques. There are numerous application domains, a non-exclusive list includes:
* Government transparency and IT against corruption * Public safety and disaster relief * Public policies in epidemic growth and related issues * Access to food, water and utilities * Efficiency and sustainability * Data journalism * Economic, social and personal development * Transportation * Energy * Smart city services * Education * Social services, unemployment and homelessness * Healthcare * Ethical issues, fairness and accountability * Trustability and interpretability * Topics aligned with the UN development goals: www.un.org/sustainabledevelopment/sustainable-development-goals/
The major selection criteria will be the novelty of the application and its social impact.
We are also interested in applications that have built a successful business model and are able to sustain themselves economically. Most Social Good applications have been carried out by non-profit and charity organisations, conveying the idea that Social Good is a luxury that only societies with a surplus can afford. We would like to hear from successful projects, which may not be strictly “non-profit” but have Social Good as their main focus.
There will be an award for the best paper.
Paper submission: Authors should submit a PDF version in Springer LNCS style using the workshop EasyChair site:https://easychair.org/my/conference?conf=sogood2020. The maximum length of papers is 16 pages, consistent with the ECML PKDD conference submissions.
Submitting a paper to the workshop means that if the paper is accepted, at least one author will attend the workshop and present the paper. Papers not presented at the workshop will not be included in the proceedings.
In light of COVID-19, we will follow ECML PKDD’s policy for attendance and presentation (face-to-face, virtual or hybrid). ECML PKDD is considering contingency plans and will announce its final decision before the early registration deadline (second half of July).
Paper publication: The proceedings of the workshop will be published either by Springer as a Lecture Notes volume or by CEUR in their workshop proceedings series (ceur-ws.org/). Selected workshop papers will be invited for extension and submission to a special journal issue.
Workshop format: * Full-day workshop * 1-2 keynote talks, speakers to be announced * Oral presentation of accepted papers * Panel discussion with the audience
Important Dates: * Workshop paper submission deadline: June 11, 2020 * Workshop paper acceptance notification: July 2, 2020 * Workshop paper camera-ready deadline: July 16, 2020 * Workshop: September 14 or 18, 2020 (TBC)
Program Committee members (more to be added): * Carlos Ferreira, ISEP, Portugal * Marta Arias, UPC BarcelonaTech, Spain * Albert Bifet, Telecom ParisTech, France * José del Campo-Ávila, University of Malaga, Spain * Hau Chan, University of Nebraska-Lincoln * Itziar de Lecuona, University of Barcelona, Spain * Yann-Ael Le Borgne, University Libre Bruxelles * José del Campo, University of Málaga, Spain * Jeremiah Deng, University of Otago, New Zealand * Cèsar Ferri, Technical University of Valencia, Spain * Geoffrey Holmes, University of Waikato, New Zealand * Konstantin Kutzkov, Amalfi Analytics, Spain * Josep-Lluís Larriba-Pey, UPC BarcelonaTech, Spain * Rafael Morales-Bueno, University of Málaga, Spain * Nuno Moniz, INESC TEC, Porto, Portugal * Ana Nogueira, INESC TEC, Porto, Portugal * Alexandra Olteanu, Microsoft Research, USA * Panagiotis Papapetrou, Stockholm University, Sweden * Maria Pedroto, INESC TEC, Porto, Portugal * Sonia Teixeira, INESC TEC, Porto, Portugal * Emma Tonkin, University of Bristol, UK * Alicia Troncoso, University Pablo de Olavide, Spain * Evgueni Smirnov, University of Maastricht, The Netherlands * Kristina Yordanova, University of Rostock, Germany * Martí Zamora, UPC BarcelonaTech, Spain
Organizers: * Ricard Gavaldà (UPC BarcelonaTech, Spain),gavalda@cs.upc.edu <mailto:gavalda@cs.upc.edu> * Irena Koprinska (University of Sydney, Australia),irena.koprinska@sydney.edu.au <mailto:irena.koprinska@sydney.edu.au> * João Gama (University of Porto, Portugal),jgama@fep.up.pt <mailto:jgama@fep.up.pt> * Rita Ribeiro (University of Porto, Portugal),rpribeiro@fc.up.pt <mailto:rpribeiro@fc.up.pt>
Carlos Ferreira
ISEP | Instituto Superior de Engenharia do Porto Rua Dr. António Bernardino de Almeida, 431 4249-015 Porto – PORTUGAL tel. +351 228 340 500 | fax +351 228 321 159 mail@isep.ipp.pt | www.isep.ipp.pt
Category: [rede.APPIA]
A [rede.APPIA] é a lista de distribuição de correio electrónico da APPIA, com o objectivo de divulgar notícias de interesse para a comunidade científica da Inteligência Artificial, disponível através do endereço rede [at] appia [ponto] pt.
[rede.APPIA] White Paper Artificial Intelligence
Caros APPIAnos,
Está a decorrer uma consulta pública sobre um “White Paper on Artificial Intelligence – a European Approach” aberta a todos os agentes relacionados com IA. Deixo aqui o link caso pretendam contribuir com sugestões e divulgar por outros potenciais interessados.
ec.europa.eu/info/law/better-regulation/have-your-say/initiatives/12270-White-Paper-on-Artificial-Intelligence-a-European-Approach/public-consultation
Alípio Jorge
[rede.APPIA] CFP – Machine Learning in Smart Mobility (MLSM @ IDEAL 2020)
Please distribute widely to potentially interested people.
[rede.APPIA] Fwd: [Infos] [Iai-societies] Announcement to Solicit nominations for 2020 AIJ paper awards
[rede.APPIA] [held online] CFP: Big Data & Deep Learning in HPC (IEEE Xplore) @Porto, Portugal
Workshop on BIG DATA & DEEP LEARNING in HIGH PERFORMANCE COMPUTING (BDL2020) (sbac2020.dcc.fc.up.pt/bdl2020/)
in conjunction with the IEEE 32nd International Symposium on Computer Architecture and High Performance Computing (SBAC-PAD 2020) (sbac2020.dcc.fc.up.pt/)
September 9, 2020, Porto, Portugal
—————————————————————————- ** NEW ** BDL2020 will be held online (synchronous and/or asynchronous) —————————————————————————-
We are monitoring the Coronavirus disease (COVID-19) outbreak and following the recommendations/guidelines from the World Health Organization (WHO) and the European Centre for Disease Prevention and Control (ECDC).
The safety of all conference participants is our main priority. In this perspective, regardless of the outbreak outcomes in September, we will make BDL2020 an online (synchronous and/or asynchronous) event and we will maintain the regular publication activities, i.e., accepted papers will be eligible for publication at the IEEE Xplore.
The Workshop fee is now 200 euros.
———————————— WORKSHOP ON BIG DATA & DEEP LEARNING IN HIGH PERFORMANCE COMPUTING ————————————
The number of very large data repositories (big data) is increasing in a rapid pace. Analysis of such repositories using the “traditional” sequential implementations of ML and emerging techniques, like deep learning, that model high-level abstractions in data by using multiple processing layers, requires expensive computational resources and long running times. Parallel or distributed computing are possible approaches that can make analysis of very large repositories and exploration of high-level representations feasible. Taking advantage of a parallel or a distributed execution of a ML/statistical system may: i) increase its speed; ii) learn hidden representations; iii) search a larger space and reach a better solution or; iv) increase the range of applications where it can be used (because it can process more data, for example). Parallel and distributed computing is therefore of high importance to extract knowledge from massive amounts of data and learn hidden representations.
The workshop will be concerned with the exchange of experience among academics, researchers and the industry whose work in big data and deep learning require high performance computing to achieve goals. Participants will present recently developed algorithms/systems, on going work and applications taking advantage of such parallel or distributed environments.
———————————— LIST OF TOPICS ————————————
All novel data-intensive computing techniques, data storage and integration schemes, and algorithms for cutting-edge high performance computing architectures which targets Big Data and Deep Learning are of interest to the workshop. Examples of topics include but not limited to: – parallel algorithms for data-intensive applications; – scalable data and text mining and information retrieval; – using Hadoop, MapReduce, Spark, Storm, Streaming to analyze Big Data; – energy-efficient data-intensive computing; – deep-learning with massive-scale datasets; – querying and visualization of large network datasets; – processing large-scale datasets on clusters of multicore and manycore processors, and accelerators; – heterogeneous computing for Big Data architectures; – Big Data in the Cloud; – processing and analyzing high-resolution images using high-performance computing; – using hybrid infrastructures for Big Data analysis. – New algorithms for parallel/distributed execution of ML systems; – applications of big data and deep learning to real-life problems.
———————————— KEY DATES ————————————
Deadline for paper submission: May 25, 2020
Author notification: July 1, 2020
Camera-ready version of papers: July 25, 2020
———————————— SUBMISSION ————————————
We invite authors to submit original work to BDL. All papers will be peer reviewed and accepted papers will be published in IEEE Xplore.
Submissions must be in English, limited to 8 pages in the IEEE conference format (see www.ieee.org/conferences/publishing/templates.html)
All submissions should be made electronically through the EasyChair system: easychair.org/conferences/?conf=bdl2020
———————————— REGISTRATION ————————————
A full registration to the workshop and presentation are needed in order to have your paper included in the workshop proceedings.
The Workshop fee is 200 euros.
Registration system available in sbac2020.dcc.fc.up.pt/bdl2020/registration.html
———————————— VENUE ————————————
Department of Computer Science, Faculty of Sciences, University of Porto
Rua do Campo Alegre 1021/1055 4169-007 Porto, Portugal
The city of Porto is famous for its Port wine and beautiful scenery, architecture and cultural events.
Portugal has again been awarded the best European Tourist Destination by the World Travel Awards, the Oscars equivalent in the field of tourism.
———————————— ORGANIZATION ————————————
Carlos Ferreira (LIAAD – INESC TEC LA and Polytechnic Institute of Porto) João Gama (LIAAD – INESC TEC LA and University of Porto) Albert Bifet (Telecom ParisTech) Miguel Areias (CRACS – INESC TEC LA and University of Porto) Rui Camacho (LIAAD -INESC TEC LA and University of Porto)
Carlos Ferreira
ISEP | Instituto Superior de Engenharia do Porto Rua Dr. António Bernardino de Almeida, 431 4249-015 Porto – PORTUGAL tel. +351 228 340 500 | fax +351 228 321 159 mail@isep.ipp.pt | www.isep.ipp.pt
[rede.APPIA] ICADL 2020: the 22nd International Conference on Asia-Pacific Digital Libraries. Online. Free for anyone to attend
[rede.APPIA] Open postdoctoral position at HUMAINT team in the field of Trustworthy Machine Learning | JRC Science Hub Communities
Open postdoctoral position at HUMAINT team in the field of Trustworthy Machine Learning
Application deadline: April 15th – EXTENDED TO MAY 17th
We are looking for a highly motivated and outstanding postdoctoral researcher with a strong background in Machine Learning. The researcher will contribute to our work on Fairness and Transparency of Machine Learning and to the development of practical methodologies for trustworthy Machine Learning systems. The outcomes of this research will contribute to the work of AI Watch to build scientific evidence for the definition of a possible regulatory framework for AI. The candidate will have to be able to work independently in the framework of the HUMAINT team and contribute to the research activities of the team and the Digital Economy Unit to support AI-related European policies.
Qualifications:
We are looking for a researcher with a strong scientific academic background, a robust professional record in research and experience in Machine Learning with:
- PhD (doctoral Diploma) or a university degree and a minimum of five years of experience in any area of Machine Learning;
- Research experience on fairness and transparency of Machine Learning is an asset, including the development of practical methodologies and tools. Topics: explainability, testing/evaluation, traceability, reproducibility, fairness, bias mitigation, human oversight;
- Research track record demonstrated by scientific publications and practical developing expertise;
- Very good writing and communication skills for scientific, policy, and the general public;
- Very good (C1) knowledge of English;
- Experience in working within interdisciplinary teams, following reproducibility practices and contributing to community is an advantage.
Conditions
36 months initial contract with possible renewals up to a maximum of 6 years.
Working place in Seville, Spain
About HUMAINT
The project HUMAINT aims to understand the impact of machine intelligence on human behaviour, with a focus on cognitive and socio-emotional capabilities and decision-making.
Artificial Intelligence at the European Commission
Artificial intelligence (AI) has become an area of strategic importance and a key driver of economic development. That is why the Commission set out an AI strategy – COM(2018)237 -and agreed a Coordinated Plan with the Member States to align strategies – COM(2018)795. That Plan generated the set up of AI Watch, the Commission Knowledge Service to monitor the Development, Uptake and Impact of AI.
The Commission also established a High-Level Expert Group that published Guidelines on trustworthy AI in April 2019 and in the “White Paper On Artificial Intelligence – A European approach to excellence and trust” COM(2020)65 the Commission acknowledges that as with any new technology, the use of AI brings both opportunities and risks. Citizens fear being left powerless in defending their rights and safety when facing the information asymmetries of algorithmic decision-making, and companies are concerned by legal uncertainty.
How to apply
- Express your interest by applying to the JRC permanent call for researchers or the CAST permanent.
- Only then you can apply to this position
More information https://recruitment.jrc.ec.europa.eu/?site=SVQ
Code: 2020-SVQ-B6-FGIV-014111 – SEVILLE
FG IV- Scientific Project Officer in the field of Trustworthy Machine LearningDeadline: EXTENDED TO 17/05/2020 23:59 Brussels time