Faculty Archives - Institute for Data Science /cuids/event-audience/faculty/ 杏吧原创 University Fri, 21 Mar 2025 18:10:30 +0000 en-US hourly 1 https://wordpress.org/?v=6.3.1 Data Day 11.0 /cuids/cu-events/data-day-11-0/?utm_source=rss&utm_medium=rss&utm_campaign=data-day-11-0 Fri, 21 Mar 2025 18:10:30 +0000 /cuids/?post_type=cu-events&p=7315

Data Day 11.0: Empowering Tomorrow: Quantum Computing Meets Data Science and Machine Learning

Data Day 11.0 will focus on Empowering Tomorrow: Quantum Computing Meets Data Science and Machine Learning. In keeping with this theme, the event program includes panel discussions on quantum computing, data science, machine learning, and new workforce skills trends.

Jointly hosted by the Faculty of Science and the听杏吧原创 University Institute for Data Science (CUIDS),听Data Day is an annual conference that celebrates the latest developments in data science and analytics research.

Data Day includes presentations by 杏吧原创 researchers and industry experts, a keynote address, panel discussion and networking opportunities, as well as a poster competition to showcase graduate student research in data science across all disciplines.

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Distinguished Speaker Series – Big OLAP Data Cube Compression Algorithms in Column-Oriented Cloud/Edge Data Infrastructures /cuids/cu-events/distinguished-speaker-series-big-olap-data-cube-compression-algorithms-in-column-oriented-cloud-edge-data-infrastructures/?utm_source=rss&utm_medium=rss&utm_campaign=distinguished-speaker-series-big-olap-data-cube-compression-algorithms-in-column-oriented-cloud-edge-data-infrastructures Mon, 30 Sep 2024 12:57:54 +0000 /cuids/?post_type=cu-events&p=7246 CUIDS Distinguished Speaker Series

Big OLAP Data Cube Compression Algorithms in Column-Oriented Cloud/Edge Data Infrastructures

Big data is gaining momentum in the research community, due to the several challenges posed by managing such kind of data. Big data are relevant not only in the academic context, but also in the industrial context, where they play the major role. Indeed, several kinds of application are now exploiting big data, such as: Web advertisement, social network intelligence, e-science applications, smart city applications, and so forth. Among big data, big multidimensional data are a special case of big data that fully expose the 鈥渇amous鈥 3V (volume, velocity, variety) and are of relevant interest at now. Within this research context, the seminar 鈥Big OLAP Data Cube Compression Algorithms in Column-Oriented Cloud/Edge Data Infrastructures鈥 focuses the attention on the issue of compressing so-called big OLAP data cubes over column-oriented cloud/edge data infrastructures. More specifically, the seminar proposes a specialized representation of massive OLAP data cubes over cloud/edge environments via column-oriented paradigms, which have been traditionally used in fortunate in-memory database query engines. Under this decomposition mechanism, each 鈥渃olumn鈥 is then compressed via a state-of-the-art synopsis data structure, called D-Syn, which already proofed its effectiveness and efficiency in multidimensional data compression, thanks to an innovative analytical interpretation of multidimensional data cubes. The seminar also discusses several alternatives according to which the deriving synopsis chunks can be effectively and efficiently distributed across Cloud and/or Edge nodes, and how to support approximate query answering over such big data structures.

Speaker

Speaker: Prof. Alfredo Cuzzocrea

  • iDEA Lab, Director
  • University of Calabria, Rende, Italy
  • Excellence Chair in Big Data Management and Analytics, University of Paris City, Paris, France
  • Honorary Professor of Computer Engineering Amity University, Noida, India
  • Research Associate, National Research Council (CNR), Rome, Italy

Alfredo Cuzzocrea is Professor in Computer Engineering at the University of Calabria, Rende, Italy. He is the Director of the Big Data Engineering and Analytics Lab of the University of Calabria. He also covers the role of Full Professor in Computer Engineering at the University of Paris City, Paris, France, as holding the Excellence Chair in Big Data Management and Analytics. His current research interests span the following scientific fields: big data, database systems, data mining, OLAP, data warehousing, and knowledge discovery. He is author or co-author of more than 800 papers in international conferences, international journals and international books. He is recognized in prestigious international research rankings, such as: (i) 1st World-Wide Scientist听 for Research Topic: 鈥淥nLine Analytical Processing (OLAP)鈥 by Microsoft Academic, Redmond, WA, USA; (ii) 5th World-Wide Highly-Ranked Scholar Lifetime for Research Topic: 鈥淏ig Data鈥 by ScholarGPS, Los Angeles, CA, USA; (iii) Top 2% World-Wide Scientist by METRICS, Stanford, CA, USA; (iv) Top Scientists in Computer Science and Electronics by Guide2Research, Clifton, NJ, USA; (v) Top Researchers in Computer Science by SciVal Elsevier, Amsterdam, Netherlands; (vi) Top Italian Scientists in Computer Sciences by Virtual Italian Academy, Manchester, UK.

Seminar Moderator:

Koon-Ho Alan Tsang – Assistant Professor at the School of Computer Science at 杏吧原创 University

Light refreshments will be provided.

Please RSVP below to help us prepare for the event.

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[RECORDED] Distinguished Speaker Series – Ethical AI: What does it mean, how can we do it, and why should we care? /cuids/cu-events/ethical-ai-what-does-it-mean-how-can-we-do-it-and-why-should-we-care/?utm_source=rss&utm_medium=rss&utm_campaign=ethical-ai-what-does-it-mean-how-can-we-do-it-and-why-should-we-care Tue, 21 Nov 2023 15:17:10 +0000 /cuids/?post_type=cu-events&p=6843 CUIDS Distinguished Speaker Series

Ethical AI: What does it mean, how can we do it, and why should we care?

– Computer Scientist in the Digital Technologies Research Centre at the National Research Council Canada – Adjunct Research Professor at the School of Computer Science – 杏吧原创 University

Every day brings exciting new advancements in Artificial Intelligence (AI), and yet questions remain about whether these technologies have the ability to make the right moral choices 鈥 and who gets to decide what the “right” choice is, anyway? In this talk, I will define eight key pillars of Ethical AI, as established by Harvard’s Berkman Klein Center for Internet & Society: privacy, accountability, safety, transparency, fairness, human control of technology, professional responsibility, and the promotion of human values.听听I will illustrate each theme with real-world examples of the harms that result when these pillars are overlooked听听鈥 and ways that we can avoid these harms to build a better, safer, and more equitable society with AI technology.

Dr. Kathleen Fraser is a computer scientist in the Digital Technologies Research Centre at the National Research Council Canada.听听Her research focuses on natural language processing (NLP), particularly examining the social biases that end up encoded in artificial intelligence systems. She also has a research interest in NLP for healthcare, specifically the automated analysis of speech and language in conditions such as dementia, aphasia, and post-COVID condition (鈥渓ong COVID鈥). Dr. Fraser received her PhD in computer science from the University of Toronto in 2016, and subsequently completed a post-doc at the University of Gothenburg, Sweden. She was named an MIT Rising Star in Electrical Engineering and Computer Science in 2015, and was awarded the Governor General’s Gold Academic Medal in 2017. She has been a research officer at the National Research Council since 2018, where she was awarded the Digital Technologies 鈥淩esearch Excellence鈥 Award in 2022. She also holds a position as an adjunct research professor at 杏吧原创 University in the School of Computer Science.

Seminar Moderator:

Koon-Ho Alan Tsang – Assistant Professor at the School of Computer Science at 杏吧原创 University

Light refreshments will be provided. Please RSVP below to help us prepare for the event.

Add to your Calendar

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[RECORDED] Distinguished Speaker Series – Victims of Circumstance: How Environment Manipulation Shapes Reinforcement-Learning Behaviours /cuids/cu-events/victims-of-circumstance-how-environment-manipulation-shapes-reinforcement-learning-behaviours/?utm_source=rss&utm_medium=rss&utm_campaign=victims-of-circumstance-how-environment-manipulation-shapes-reinforcement-learning-behaviours Wed, 01 Nov 2023 14:19:41 +0000 /cuids/?post_type=cu-events&p=6828 CUIDS Distinguished Speaker Series

Victims of Circumstance: How Environment Manipulation Shapes Reinforcement-Learning Behaviours

Zinovi Rabinovich, Assistant Professor, School of Computer Science – 杏吧原创 University

Machine learning algorithms have been subjected to a range of attacks, both to thwart and to subvert their learning. It is particularly easy to do with Reinforcement Learning algorithms that heavily depend on their perceptions being reliable, their attempted actions correctly executed, and the rewards they reap indicative of the progress towards their goal. Control any one of those aspects, and you can make an RL agent fail or, worse, learn a bad behaviour. But what if perceptions come with error correcting codes, actions are verifiable, and the reward is strictly intrinsic to the agent? Are our RL agents safe from manipulation, then? Turns out no. It is possible, by the process of environment poisoning (i.e., changing how the environment behaves in response to agent actions), to manipulate an RL agent into learning a target (bad) behaviour. In this talk, I will show how it can be done, discuss how flexible the approach is, and what the future expects of it.

Zinovi Rabinovich is an Assistant Professor in the School of Computer Science at 杏吧原创 University. He obtained his Ph.D. in Computer Science from the Hebrew University in Jerusalem, spent some years as an Algorithms Engineer at Mobileye Vision Technologies Ltd, and moved back into academia. His research focuses on how to leverage information asymmetry (in availability or in access) to manipulate decision processes. He’s looked into action advice provision, strategic information disclosure, election manipulation, and, more recently, poisoning Reinforcement Learning.

Seminar Moderator:

Koon-Ho Alan Tsang – Assistant Professor at the School of Computer Science at 杏吧原创 University

Light refreshments will be provided.

Please RSVP below to help us prepare for the event.

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[RECORDED] Distinguished Speaker Series – The Prospect of Generative AI /cuids/cu-events/the-prospect-of-generative-ai/?utm_source=rss&utm_medium=rss&utm_campaign=the-prospect-of-generative-ai Wed, 11 Oct 2023 21:02:07 +0000 /cuids/?post_type=cu-events&p=6795 Recorded – CUIDS Distinguished Speaker Series

The Prospect of Generative AI

Muhammad Abdul-Mageed, University of British Columbia (UBC)

In the evolving landscape of artificial intelligence, generative models are revolutionizing our interface with computational systems and reshaping societal paradigms. These transformative shifts emerge from the profound capacity of sophisticated algorithms to assimilate multimodal data, encompassing text, voice, and imagery. This talk sketches the core methodologies propelling this groundbreaking progress, drawing illustrative examples from speech and language processing and computer vision. It also traverses the outcomes of a host of transnational academic partnerships, highlighting impactful intersections of AI with archival sciences and cultural preservation, education, and health.

Muhammad Abdul-Mageed

Muhammad Abdul-Mageed is an Associate Professor and Canada Research Chair in natural language processing and machine learning at the University of British Columbia (UBC) and a Visiting Associate Professor at MBZUAI. His research focuses on large language models, cross-modal socio-pragmatics, and deep representation learning. This program is driven by a goal to innovate more equitable, efficient, and interactive machines for improved human health, safer social networking, and reduced information overload. Dr. Abdul-Mageed has published more than 120 articles in peer-reviewed venues, and his group has won several international competitions. He is a founding steering member of UBC’s and , Director of the , Co-Director of the , and Co-Lead of the . Dr. Abdul-Mageed’s research has been supported by Amazon, AMD, CFI, Google, NSERC, and SSHRC.

Seminar Moderator:

Tracey Lauriault

Associate Professor, Critical Media and Big Data
Cross Appointed to the MA in Digital Humanities
Faculty of the Institute for Data Science

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[RECORDED] Augmenting Human Intelligence: from deep learning to generative AI /cuids/cu-events/augmenting-human-intelligence-from-deep-learning-to-generative-ai/?utm_source=rss&utm_medium=rss&utm_campaign=augmenting-human-intelligence-from-deep-learning-to-generative-ai Wed, 15 Mar 2023 14:09:26 +0000 /cuids/?post_type=cu-events&p=6709 CUIDS Distinguished Speaker Series

Augmenting Human Intelligence: from deep learning to Generative AI

Emanuele Frontoni, University of Macerata, Italy.

In this speech, Emanuele Frontoni will discuss the latest developments in augmenting human intelligence through the use of deep learning and generative AI. The talk will explore how these technologies are transforming various industries and enabling humans to perform tasks that were previously impossible. Several projects implemented in the VRAI Lab will be presented as examples of this evolution. The speaker will delve into the applications of these technologies, such as image analysis, natural language processing, and predictive modeling. A special section will be dedicated to the ITrustAI researches on deep learning on middle-aged parchments. He will also address the ethical considerations surrounding the use of AI and the need for responsible development and deployment of these technologies.

Emanuele Frontoni is a Full Professor of Computer Science at the University of Macerata and the Co-Director of the VRAI Vision Robotics & Artificial Intelligence Lab.

His research interests include computer vision and artificial intelligence with applications in robotics, video analysis, human behavior analysis, extended reality, and digital humanities.

He is the author of over 230 international articles and collaborates with numerous national and international companies in technology transfer and innovation activities.

He has been Program Chair or General Chair of various international conferences and summer schools (e.g. IEEE / ASME MESA Mechatronic Embedded System & Applications 2016 and 2017, IEEE ECMR European Conference on Mobile Robotics 2017, BigDat 2020, DeepLearn 2021) and co-organizer of many international workshops (eg DeepRetail @ ICPR 2020, D2CH @ CVPR 2021, AI4DH @ ICIAP 2022).

He is also involved in several national and听international technology transfer projects in the fields of AI, Deep Learning, data interoperability, cloud-based technologies, and big multimedia data analysis, extended reality and digital humanities.

He is a member of the European Association for Artificial Intelligence, the European AI Alliance, and the International Association for Pattern Recognition. He served as expert for the EU Commission in the AI H2020 and Horizon Europe Calls and he is currently co-speaker of the European IPEI CIS (Important Project of Common European Interest – Cloud Infrastructure and Services) for the AI services of the next generation of European cloud 鈥 edge services.

Seminar Moderator:

Tracey Lauriault

Associate Professor, Critical Media and Big Data
Cross Appointed to the MA in Digital Humanities
Faculty of the Institute for Data Science

Video Recording

Audio Version

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[RECORDED] Explainable AI for Classification and Decision Systems /cuids/cu-events/explainable-ai-for-classification-and-decision-systems/?utm_source=rss&utm_medium=rss&utm_campaign=explainable-ai-for-classification-and-decision-systems Tue, 14 Feb 2023 20:48:59 +0000 /cuids/?post_type=cu-events&p=6686 CUIDS Distinguished Speaker Series

Light refreshments will be provided!听

Explainable AI for Classification and Decision Systems
Leopoldo Bertossi, Skema Business School, Canada, Montreal

Explainable AI (XAI) has become an effervescent area of research in AI and Machine Learning (ML). It is interesting per se, but also touches several aspects of what is nowadays called Ethical AI. In this presentation we will introduce some key concepts and ideas related to score-based explanation methods in ML-systems for classification and decision making. We will also emphasize: (a) the need for reasoning with explanations, (b) the connection with other more traditional explanation methods in AI; and (c) the fact that XAI is at the very core of AI, as opposed to being a kind of meta-analysis of AI methods.

Image of Leopoldo BertossiLeopoldo Bertossi is a Professor at the Skema Business School -a French private business school- and its R&D Lab for Business AI, Montreal, Canada (since July 2022).

Since 2019, he is a Professor Emeritus of the School of Computer Science, 杏吧原创 University (Ottawa, Canada), with Grad Supervision Status. Until August 2022 he was a Full Professor at the Faculty of Engineering and Sciences, “Universidad Adolfo Ibanez” (UAI, Santiago, Chile), where he was the Director of the PhD and MSc. Programs in Data Science. He is a Senior Fellow of the UAI. He is also a Senior Researcher at the “Millennium Institute for Foundational Research on Data” (IMFD, Chile).

His broad research interests are related to Data Science and Artificial Intelligence, with focus on explainable AI, causality, knowledge representation, data management, computational logic, ontologies, uncertainty management, and machine learning.

Seminar Moderator:

Dr. Alan Tsang Assistant Professor, School of Computer Science, 杏吧原创 University

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Ottawa Hockey Analytics 2022 Virtual /cuids/cu-events/ottawa-hockey-analytics-2022-virtual/?utm_source=rss&utm_medium=rss&utm_campaign=ottawa-hockey-analytics-2022-virtual Mon, 14 Mar 2022 15:52:44 +0000 /cuids/?post_type=cu-events&p=6432 The conference is focused on the collection and analysis of hockey data.

To register, go to听

Big Data Cup 2: This year we will have a data hackathon, the Big Data Cup (#BDC2022), powered by Stathletes.

OTTHAC will serve as the kickoff of the BDC.

Please follow @meghanchayka on Twitter for the latest details on the #BDC2022.

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IBM Research and Teaching Tools for 杏吧原创 Faculty & Students /cuids/cu-events/ibm-research-and-teaching-tools-for-carleton-faculty-students/?utm_source=rss&utm_medium=rss&utm_campaign=ibm-research-and-teaching-tools-for-carleton-faculty-students Wed, 26 May 2021 20:11:19 +0000 /cuids/?post_type=cu-events&p=5092 Recently 杏吧原创 signed an alliance agreement with IBM that gives our students and faculty access to a large swath of IBM research and teaching tools.

To take full advantage of this exciting opportunity, we are arranging a series of briefing presentations by IBM Education Lead, Dennis Buttera. The first such event is scheduled for Thursday, June 10th from 9:30 a.m. to 11:00 a.m. Eastern Time (US and Canada). This interactive presentation will detail what resources we will have available.

To receive the Zoom details for this event, please email: cuids@carleton.ca

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Research Computing Workshops /cuids/cu-events/research-computing-workshops/?utm_source=rss&utm_medium=rss&utm_campaign=research-computing-workshops Mon, 15 Oct 2018 18:06:07 +0000 /cuids/?post_type=cu-events&p=4089 The Research Computing Services (RCS) team is announcing three upcoming research computing workshops for any interested researcher (graduate student or faculty):

  • RCS Workshop I: Introduction to Linux on Monday, November 5th 2018, from 1:00-3:45pm
  • RCS Workshop II: Introduction to Remote Systems on Wednesday, November 7th 2018, from 1:00-3:45pm
  • RCS Workshop III: Introduction to Parallel Computing on Wednesday, November 14th 2018, from 9:00-11:45am

RCS is available on campus to assist with research computing by offering resources, expertise and knowledge. As part of that mandate, we are offering introductory workshops on several topics and will continue to expand our selection in the future. The sessions will be repeated as required so if you can鈥檛 attend the current sessions but are interested, send us an email and we鈥檒l notify you next time they are offered or check the RCS workshop schedule here: /rcs/workshops/

The workshops will be hands-on so laptops are required for the first two workshops.听 You will also require some software in order to follow the workshop so please take a look at the 鈥淲hat you鈥檒l need鈥 section in the workshop description. 听A laptop with MATLAB is recommended for the third workshop on Parallel Computing. Unless you are already comfortable with the Linux command line (navigation, file manipulation), we would recommend that you start with the RCS Workshop I before RCS Workshop II. The RCS Workshop III is independent of the first two workshops.

RSVP to its.rcs@carleton.cawith the workshop(s) you would like to attend. Seating is limited so please make sure to register ahead of time. If there are no seats left when you register, you will be given priority registration for the next time the workshop is offered. Coffee, beverages and pastries will be served (mini muffins, scones, etc.).

Please forward this invitation to anyone that might be interested and I hope to see you at the workshops!

RCS Workshop I: Introduction to Linux

When: November 5th 2018, from 1:00-3:45pm

Where: 5345 Herzberg

Who: This session is for users just starting to learn the Linux command line (little to no experience).

Prerequisites: none.

Notes and Material: 听

Topics:

  1. Introducing the Shell
  2. Navigating Files and Directories
  3. Working With Files and Directories
  4. Pipes and Filters
  5. Loops
  6. Shell Scripts
  7. Finding Things

What you鈥檒l need:

  • Laptop (Mac or Windows).
  • MobaXterm if on Windows () but not needed for Mac OSX users.

RCS Workshop II: Introduction to Remote Systems

When: Wednesday, November 7th 2018, from 1:00-3:45pm

Where: 5345 Herzberg

Who: This session is for users that already know the basics on their own system or lab server, but want to learn how to connect and use a server remotely (e.g. from home).

Prerequisites: Linux command line basics (navigation, file manipulation) as offered in RCS Workshop I.

Notes and Material: 听

Topics:

  1. Interacting with a server
  2. Monitoring Resources
  3. Running jobs in background
  4. Running a Program Remotely with a GUI
  5. Using Research Storage

What you鈥檒l need:

  • Laptop (Mac or Windows).
  • My杏吧原创One account or Eduroam to connect to Wireless.
  • Setup VPN access to campus (/its/help-centre/remote-access/).
  • MobaXterm if on Windows () but not needed for Mac OSX users.
  • For Max OSX users, you will need to install X11 as explained here:

Title: RCS Workshop III: Introduction to Remote Systems

When: Wednesday, November 14th 2018, from 9:00-11:45am

Where: 5345 Herzberg

Who: This session is听 for researchers who have a basic understanding of programming, and wish to understand and apply parallel computing to their code.

Prerequisites: None

Notes and Material:

Topics:

  1. Parallel vs Sequential Computing
  2. Limitations of Parallel Speedup
  3. Types of Parallel Workers
  4. Hardware bottlenecks and overhead
  5. Writing Parallel Code
  6. MATLAB: Parallel Programming
  7. MATLAB: Case Studies
  8. MATLAB: Vectorization
  9. MATLAB: Best Practices

What you鈥檒l need:

  • General programming knowledge for first part of the workshop
  • Knowledge of MATLAB basics for second part of the workshop
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