Exosite Pivot IoT Seminar – Executive Forum on Business Transformation Through IoT

Room L1-02 (Library & Academic Building), Centennial College, Progress Campus, 941 Progress Ave, Toronto, ON M1K 5E9

Thursday October 20, 2016 at 6:30 p.m. Steve Wright, Solutions Architect at Exosite Inc. and Alumni of IEEE Society, will be presenting “Exosite Pivot IoT Seminar – Executive Forum on Business Transformation Through IoT”. Speaker: Steve Wright Solutions Architect, Exosite Inc. Day & Time: Thursday, October 20, 2016 6:30 p.m. – 8:30 p.m. Location: Room L1-02 (Library & Academic Building) Centennial College, Progress Campus 941 Progress Ave Toronto, ON M1K 5E9 Canada Room Map: https://p.widencdn.net/l4raeq Campus Map: https://www.google.com/maps/place/941+Progress+Ave,+Scarborough,+ON+M1G+3T8,+Canada/@43.7851523,-79.2292043,17z/data=!3m1!4b1!4m5!3m4!1s0x89d4d0f2145b3791:0x3da1359f5640d4 7f!8m2!3d43.7851523!4d-79.2270156 RSVP Required: https://events.vtools.ieee.org/m/41285 Abstract: The internet of things (IoT) is giving rise to previously undiscovered revenue opportunities that can transform existing business models through connected devices and innovative insights. Because of this potential, many companies are racing to get involved. But what exactly is IoT and what does it mean to the future of your organization? Join us for a forum that demystifies IoT by providing a realistic understanding of what it is, what it requires, and how organizations can use it to kick-start their business transformation. Biography: Steve Wright is a Solutions Architect at Exosite, where he helps clients close the gap between a successful engineering project and a profitable connected products business. Steve excels at working with companies to define the right tool set of hardware, software, and business strategy to succeed in their IoT deployments. He started his career as a software engineer in data acquisition systems before moving into project management and sales. Steve’s experience includes turbine engine testing, semiconductor manufacture, and custom software development. He has an MS in Software Engineering from University of St. Thomas in St. Paul, MN and is an Alumni of the IEEE Society.

Top 10 Ways to Design Safer Embedded Software

Room CB 114, Best Institute (University of Toronto) 112 College Street

Thursday January 26th, 2017 at 9:00 a.m. the IEEE Computer Society Toronto Chapter will be holding a Training Course: Top 10 Ways to Design Safer Embedded Software. We are sorry to inform you that this event has been cancelled. We will attempt to reschedule the event later this year. Abstract: Embedded systems are everywhere these days: from implantable medical devices to self-driving cars. The risks of human injury are also multiplying as more embedded systems connect to the Internet and become open to hacking as well as malfunction. There are design techniques that can be applied to develop safer and more reliable embedded systems. As we consult with companies in a range of industries, we are continually surprised that such techniques–including the 10 techniques you will be exposed to in this course–are not more widely known and practiced. Register today to join us at this important 1-day course where the focus is on minimizing the risk of injury or loss by firmware malfunction though a combination of lightweight, demonstrably-valuable design techniques. RSVP is required. Visit https://events.vtools.ieee.org/meeting_registration/register/42587 Agenda: 9:00am Coffee* 9:30am Morning Session 12:30pm Lunch* 1:30pm Afternoon Session 3:30pm End (approx.) * Morning coffee and lunch are included in the registration fee. Prerequisites: Attendees should be generally familiar with the terminology of embedded software or have first-hand experience doing embedded systems design. Fees: IEEE Members: CDN $135 + 13% HST Non-Members: CDN $160 + 13% HST Day & Time: Thursday, January 26th, 2017 9:00 a.m. – 4:00 p.m. Location: Room CB 114, Best Institute (University of Toronto) 112 College Street Toronto, ON M5G 1L6 Canada Campus Map: http://map.utoronto.ca/building/052 Public Parking (Toronto General Hospital Parking Garage): https://www.google.ca/maps/place/Toronto+General+Hospital+Parking+Garage/@43.6589808,-79.3865625,15z/data=!4m5!3m4!1s0x0:0xd777822577805e72!8m2!3d43.6589808!4d-79.3865625

Cyber Security for Utilities Seminar

Room 202, Galbraith Building, 35 St. George St. Toronto, Ontario

Wednesday March 22, 2017 at 6:00 p.m. the IEEE Toronto Computer Society/Industrial Relations will be presenting “Cyber Security for Utilities Seminar”. Day & Time: Wednesday, March 22nd, 2017 6:00 p.m. – 8:00 p.m. Speakers: Steel McCreery Schweitzer Engineering Laboratories (SEL) Doug Westlund, P. Eng. AESI Location: University of Toronto 35 St. George St. Toronto, Ontario Canada M5S 1A4 Building: Galbraith Building Room Number: 202 RSVP is required for this event. Please visit https://events.vtools.ieee.org/m/44162 for more details and to register. FEES: IEEE Members: Free Non-IEEE Students: Free Non-Member (Professional): $10 + HST Abstract: Cyber Security is one of the hottest technology topics ensuring the safety and reliability of the Electrical Grid against cyber-attacks from hackers. This seminar will be a great opportunity for students, new grads, and engineers to have a general overview on cyber security issues and challenges for utilities in North America. Industry Standards such as NERC CIP will be discussed, as will career opportunities on this field. Join us on our first seminar on Cyber Security with IEEE Toronto Section. We look forward to seeing you at the event! Biographies: Steel McCreery is an Integration Application Specialist II Communications, providing communications and automation applications engineering support to sales, consultants, utility and industrial customers in addition to SEL’s internal Engineering Services team. Doug Westlund, P. Eng., has 30 years’ experience in technology and cyber security in the utility and telecommunications markets. In his role at AESI he assists utility executive teams and their Boards with strategic planning and risk management. He has led more than 100 cyber security projects for generation, transmission and distribution utilities, developed risk management for the Ontario LDC insurer (MEARIE), and developed cyber security best practices and programs for the American Public Power Association and its 2,000 distribution utility members.

Big Data Based Recommendation Approaches for Healthcare

Room GB405, University of Toronto (Galbraith Building), 35 St George St., Toronto Ontario M5S 1A4

Thursday, May 31st at 6:00 p.m., Samee U. Khan, Associate Professor of Electrical and Computer Engineering at the North Dakota State University, will be presenting “Big Data Based Recommendation Approaches for Healthcare”. Day & Time: Thursday, May 31, 2018 6:00 p.m. ‐ 9:00 p.m. Speaker: Samee U. Khan Department of Electrical and Computer Engineering North Dakota State University Location: Room GB405, University of Toronto (Galbraith Building) 35 St George St., Toronto Ontario M5S 1A4 Contact: Dennis Cecic Organizer: IEEE Toronto Computer Society RVSP: https://events.vtools.ieee.org/m/162924 Fees: IEEE Members: Free Non-Member (Professional): $10 + 13% HST Abstract: Recommender systems have attained widespread acceptance and have attracted the increased attention by the masses for over a decade. Recommender systems alleviate the complexities of products and services selection tasks and are meant to overcome the issuesof information overload. Just like the recommender systems’ prospects in e-commerce and several other business domains,recommender systems have also been developed to offer recommendations about healthcare services and products. Considering the high volumes and dimensionality of healthcare data, utilization of efficient techniques to manage the big data is inevitable. In this talk, we describe the need and rationale for using the big data enabled techniques for healthcare data. As case studies, we will detail our work on developing recommendation systems for: (a) health insurance products recommendation, (b) health expert recommendation from social media, (c) identification of influential doctors from Twitter, and (d) disease risk assessment services. During the discussion on the cases studies, we will discuss the following issues that are particular to the recommender systems: (a) cold start, (b) long-tail problem, and (c) scalability. Biography: Samee U. Khan received a BS degree in 1999 from Ghulam Ishaq Khan Institute of Engineering Sciences and Technology, Topi, Pakistan, and a PhD in 2007 from the University of Texas, Arlington, TX, USA. Currently, he is Associate Professor of Electrical and Computer Engineering at the North Dakota State University, Fargo, ND, USA. Prof. Khan’s research interests include optimization, robustness, and security of systems. His work hasappeared in over 300 publications. He is on the editorial boards of leading journals, such as IEEE Access, IEEE Communications Surveys and Tutorials, and IEEE IT Pro. He is an ACM Distinguished Speaker, an IEEE Distinguished Lecturer, a Fellow of the Institution of Engineering and Technology (IET, formerly IEE), and a Fellow of the British Computer Society (BCS).

Connecting your IoT Device with LoRaWAN to The Things Network (TTN)

Room ENG101, George Vari Engineering and Computing Centre, 245 Church Street, Toronto, Ontario Canada M5B 1Z4

Saturday, December 1st 2018, Dennis Cecic, P. Eng., SMIEEE., Senior Technical Training Engineer with Microchip Technology Canada Inc., will be presenting “Connecting your IoT Device with LoRaWAN to The Things Network (TTN)”. Day & Time: Saturday December 1st, 2018 10:00 a.m. ‐ 2:00 p.m. Speaker: Dennis Cecic, P. Eng., SMIEEE. Senior Technical Training Engineer with Microchip Technology Canada Inc. Chair of the IEEE Toronto Computer Society Organizers: IEEE Toronto Computer Society Location: Room ENG101, Ryerson University (George Vari Engineering and Computing Centre) 245 Church Street Toronto, Ontario Canada M5B 1Z4 Contact: Dennis Cecic, P. Eng., SMIEEE. Register: https://events.vtools.ieee.org/m/179788 Abstract: The long range and low-power capability of LoRaWANTM combined with the flexibility and ease of use of The Thing Network’s open source data network makes this one of the easiest ways for an embedded engineer to create an end-to-end IoT solution. In this hands-on workshop, attendees will learn how to send sensor data from a low cost, low-power sensor all the way to a user application. The class will walk through connecting a LoRaWAN-enabled endpoint through a LoRaWAN gateway to The Things Network’s servers and finally to an end user application. Upon completion, attendees will be equipped to deploy each piece of this IoT solution. Notes: RSVP is required for this event. Please visit https://events.vtools.ieee.org/m/179788 for more details and to register. FEES: All $29.95 + 13% HST Lunch and refreshments will be provided. Attendees will be provided with a sensor board for use during the workshop. Attendees may purchase the sensor board separately: https://www.microchipdirect.com/product/search/all/THW1021 Attendees are expected to download courseware and install software onto their laptop computers before attending the event per instructions here (see README.txt): https://microchip.box.com/s/qiiqa285z8c9ee798xyzb8d2iqw15cwi Biography: Dennis is a Senior Technical Training Engineer with Microchip Technology Canada Inc., specializing in microcontrollers, embedded software and the internet of things (IoT). His industrial embedded design experience includes development of microwave, infrared and acoustic motion sensors for the commercial security system market, as well as specialty devices for assisted living. He has also developed and taught courses in 32-bit microcontrollers and DSP in the school of electronics at Seneca College. He holds a B. Eng. Degree in Electrical Engineering from Ryerson University. Dennis is also the current Chair of the IEEE Computer Society – Toronto Chapter.

R&D Essentials for Technology Companies

Bay Adelaide Centre (KPMG LLP) 333 Bay Street, Suite 4600 Toronto, ON M5H 4G3

Wednesday January 23rd, 2019 at 4:30 p.m. IEEE Toronto Computer Chapter is hosting a “R&D Essentials for Technology Companies” event. Day & Time: Wednesday January 23rd, 2019 4:30 p.m. ‐ 7:30 p.m. Organizers: Computer Chapter, IEEE Toronto Location: Bay Adelaide Centre (KPMGLLP) 333 Bay Street, Suite 4600 Toronto, ON M5H 4G3 Contact: Dennis Cecic, P. Eng., SMIEEE Chair, IEEE Computer Society (Toronto Chapter) Dennis Woo, P. Eng., SMIEEE, FEC Senior Manager, Tax Incentives Practice, KPMG LLP Register: RSVP is required for this event: https://www.eventbrite.ca/e/rd-essentials-for-technology-companies-tickets-53069892477 Abstract: Does your business create or improve technologies? Development of technology is costly and risky. You will want to know about the available bank services, government funding programs and how to protect your intellectual property. Join us for an afternoon conversation on the following topics: – Bank services designed to support technology companies. – Government programs (e.g. SR&ED and IRAP) to support businesses conducting R&D. – Intellectual property, trademarks and patents. Experienced professionals from KPMG LLP, Prima IP, Royal Bank, and InvestOntario will present and answer your questions on these topics. Space is limited. Light refreshments will be served.

Agile Methodology Framework Case Study

Eric Palin Hall (Room EPH 216), 87 Gerrard St E, Toronto, ON M5B 2M2, Canada

Thursday October 17th, 2019 at 6:30 p.m. Rafi Ahmed, Telecom IT Consultant, will be presenting “Agile Methodology Framework Case Study”. Day & Time: Thursday October 17th, 2019 6:30 p.m. ‐ 9:00 p.m. Speaker: Rafi Ahmed, M.B.A., M.Res., B.Sc. Telecom IT Consultant Organizers: IEEE Toronto Computer Chapter Location: Eric Palin Hall, Room EPH 216 Ryerson University 87 Gerrard St E, Toronto, ON M5B 2M2 RVSP: RSVP is required for this event. Please visit https://events.vtools.ieee.org/m/203806 for more details and to register Fees: IEEE Members: Free Non-Member (Professional): $10 + 13% HST Contact: Dennis Cecic, P. Eng., SMIEEE Chair, IEEE Computer Society (Toronto Chapter) Abstract: Are you looking to deliver your projects with high quality, higher customer satisfaction, increased project control, reduced risk and faster ROI and are unable to decide whether Agile or Waterfall methodologies are right for you? In this talk we will discuss how to align your initiatives with your organization’s strategy by defining a problem using the Diamond E framework, and how to execute an initiative by choosing the right methodology for execution (Agile, Waterfall or Hybrid). We will also discuss how organizations can achieve their objective of having complete visibility from defining strategic initiatives to execution of those strategic initiative; from top level in the organization all the way to bottom. The theory will be followed by an actual case study for one of the largest telecom operators in the Middle East and how it was able to launch a world class marketplace within a record time of 9 months. Biography: Rafi has 25+ years of IT experience in delivering small to very large-scale projects. He has held several executive roles in various organizations. Rafi has worked as Digital Transformation Lead, DevOps Lead, Cloud Architect, Business Architect & IT Transformation, Enterprise Architect, Solution Architect, Quality Assurance/ Business Analyst / Software designer with an exceptional record of delivering cost effective, high performance technology solutions to meet challenging business demands. He has extensive qualifications in all facets of information systems methodology from conceptual design through documentation, implementation, user training, quality review, and enhancement. He has worked extensively with Fortune 1000 companies.

Advances in Open Liberty and Java Performance

Bahen Building, Room BA 4287 University of Toronto – St. George Campus 40 St George St, Toronto, ON M5S 2E4

Thursday January 30th, 2020 at 6:30 p.m. Vijay Sundaresan, performance architect at IBM Toronto, will be presenting “Advances in Open Liberty and Java Performance”. Day & Time: Thursday January 30th, 2020 6:30 p.m. ‐ 9:00 p.m. Speaker: Vijay Sundaresan Performance Architect IBM Toronto Organizers: IEEE Toronto Systems Chapter Location: Bahen Building, Room BA 4287 University of Toronto – St. George Campus 40 St George St, Toronto, ON M5S 2E4 Contact: Younas Abbas, Vice Chair, IEEE Computer Society (Toronto Chapter) Abstract: Are you a Java developer or Open Liberty user who is interested in improving your application’s performance for the cloud environment? In this talk, we will share insights about running Java EE, MicroProfile, and SpringBoot applications to quantify how well your application will perform with Open Liberty and OpenJ9 in different scenarios. We will discuss the cutting-edge advancements in the Eclipse OpenJ9 Java Virtual Machine (JVM) which is a core component of OpenJDK with OpenJ9. We will also talk about features that are important for cross platform performance as well as platform specific exploitation of the latest hardware features on Intel and other platforms. Register: RSVP is required for this event. Please visit https://events.vtools.ieee.org/m/209751 for more details and to register. Fees: IEEE Members: Free Non-Member (Professional): $10 + 13% HST Biography: Vijay Sundaresan is a Performance Architect at the IBM Toronto Lab responsible for WAS/Java runtime performance. Vijay’s technical background and expertise are in the areas of performance analysis, compilation and virtual machine technology, Java SE and Java EE specifications, as well as hardware optimizations over the past two decades. Vijay was one of the original architects on both the Eclipse OpenJ9 JVM as well as on the Eclipse OMR open source projects. As a graduate student at McGill University Vijay also made contributions to the Soot bytecode analysis framework that is very popular for implementing tools and optimizations

Advanced Topics on Scalable Deployment of Machine Learning and Drone-Based Search and Rescue

Online via Zoom Toronto, Ontario Canada

On Thursday, July 23, 2020 at 1:00 p.m., Dalia Hanna and Mujahid Sultan will be presenting “Advanced Topics on Scalable Deployment of Machine Learning and Drone-Based Search and Rescue”. Day & Time: Thursday, July 23, 2020 1:00 p.m. – 4:00 p.m. Speakers: Dalia Hanna, Mujahid Sultan Organizers: IEEE Toronto WIE, IEEE IM/RA, Ryerson CS Graduate Student Council, IEEE Ryerson Computational Intelligence Chapter, Ryerson CSCU Location: Virtual – Zoom Contact: Ayda Naserialiabadi Title: Factors affecting the Automation of the Search and Rescue Operations: An Algorithm on Finding Missing Lost Persons Living with Dementia Abstract: Unmanned Aerial Vehicles (UAV) are now used in many applications. The focus in this presentation is on their use in public safety, specifically in search and rescue (SAR) operations involving lost persons living with dementia (LPLWD). When it comes to saving lives, there are many human factors associated with UAV operations that impact the performance of expert human SAR teams that could be improved through forms of automation. These include familiarity with the search location, tasks associated with piloting and search/flight management during SAR operations.  A LPLWD may not be interested in assisting in their own rescue as they may not know they are lost. As such, it has been observed that they tend to keep walking until they are faced with an obstacle that bars their further progress. The approach presented in this research work focuses on developing a people finding algorithm to identify higher probability locations where an LPLWD might be found, through informed, behavior-based analysis of the search location; then, developing an algorithm to fly a UAV to the vicinity of these higher probability locations.  The algorithm was tested and validated through field testing. The results from both the data collection process and the field tests indicated that there are efficiencies in using the drone, which enhances the probability of finding the lost person alive.  An informed cleaning process involving both manual and ‘R’-automated approaches to scrub and augment the data–adding any missing values in the dataset, helped in understanding the behaviour of the lost person and in determining what significant variables enhanced their survivability. Linear regression was utilized to acquire the correlation among the numeric values in the database. The analysis indicated that there was no significant correlation among the independent variables; however, the data indicated that the wanderer tended to be found closer to where they left or were last seen. Logistic regression was used to investigate the survivability using three classification models. Finally, a framework is presented considering all the factors form the field tests and data analysis. Title: How to build and deploy machine learning models in the scalable cloud  Abstract: Machine learning model development is a skill taught at schools and is a good skill to have but where most of the student’s lake is how to serve these models to the clients. How to scale. Make sure that the server does not die if it gets a million hits in a second. How to build security around it. Agenda: Interested students who want to build along with me, can bring their laptop with MobaXterm installed and we can do the following together. login to a cloud environment (I will provide the cloud login credentials during the presentation) create a virtual environment for development build a semantic search engineby pulling libraries from the net pick a visualization and presentation method from D3JS develop an application using MVC pattern like the flask wrap the application in a docker container install scalable web engine like NGINX host it to the cloud (azure) provide secure access with a username and password to anyone on the internet This presentation will expose the tools required to build scalable machine learning applications in the cloud. Registration: Please visit https://forms.gle/7ZoimYgVjjpC9mag8 to register. Biographies: Dalia Hanna Topic: Factors affecting the Automation of the Search and Rescue Operations: An Algorithm on Finding Missing Lost Persons Living with Dementia Dalia Hanna is a PhD Candidate in the Department of Computer Science, Ryerson University. She is a member of Ryerson’s Network-Centric Applied Research Lab, a multidisciplinary Computational Public Safety-focused research lab. She has a B.Sc. in Electronics and Communication Engineering and M.Sc. in Instructional Design and Technology with a specialization in Online Learning. Dalia is also a certified project management professional (PMP ® ) and a certified facilitator. Her research interest in utilizing technology tools for public safety, search and rescue, and emergency management operations. . Dalia authored several research papers and presented in national and international conferences. Mujahid Sultan Topic: Factors affecting the Automation of the Search and Rescue Operations: An Algorithm on Finding Missing Lost Persons Living with Dementia Mujahid Sultan is a senior computer scientist and enterprise architect with vast experience in machine learning, pattern recognition, deep learning, NLP, text synthesis, transcription, time-series forecasting and cloud-native developments (Python, microservices, APIs, Docker, Kubernetes). His current research focus: a) working to develop a robust clustering method with mathematical proofs b) improving learning from imbalanced data on graph-based deep learning backends (TensorFlow, Torch and CNTK), and c) building Machine Learning based dynamic SDN controllers. He has authored in high impact journals in fields of Machine Learning, Artificial Intelligence, Data Visualization, Genetics and Drug Discovery for Cancer, Requirements Engineering and Enterprise Architecture. His publications can be found at https://orcid.org/0000-0001-6721-4044 Areas of Expertise include: Regression, Clustering, Classification, Deep Learning, Convolutional and Recurrent Neural Networks (LSTMs), Natural Language Processing (NLP), Self-Organizing Maps (SOM), Topic Modeling and Parallel Processing. Expert in info visualization using matlab, matplotlib, D3js and plotly. Skills: Full-stack development: (Angular+Flask+Docker); Python: (Scikit-Learn, Keras, TensorFlow, NLTK, Spacy, NumPy, Matplotlib, SpaCy to name a few); MATLAB: (toolboxes: statistics, microeconomics, parallel processing, bioinformatics to name a few). Platform experience: Docker Containers and Kubernetes on AWS, Azure/Azure Stack and Google Cloud Platform. PaaS/IaaS: (AWS: (Elastic Beanstalk, Lambda, Poly, Sage-Maker), Azure ML, and Heroku).

Security of the Internet of Things (IoT): Are We Paranoid Enough?

On Thursday, November 26, 2020 at 6:00 p.m., Swarup Bhunia will present “Security of the Internet of Things (IoT): Are We Paranoid Enough?”. Day & Time: Thursday, November 26, 2020 6:00 p.m. – 9:00p.m. Speaker: Swarup Bhunia of U. of Florida NSF SFS Program Organizer: IEEE Toronto Computer Society Location: Virtual – Since this will be a virtual event we will relay the connectivity information later to individual registrants on their email addresses. Contact: Younas Abbas Abstract: The session will help IoT enthusiasts understand the challenges of security implementation at the hardware level for modern electronic hardware. Security has become a critical design challenge for modern electronic hardware. With the emergence of the Internet of Things (IoT) regime that promises exciting new applications from smart cities to connected autonomous vehicles, security has come to the forefront of the system-design process. Recent discoveries and reports on numerous security attacks on microchips and circuits violate the well-regarded concept of hardware trust anchors. It has prompted system designers to develop a wide array of design-for-security and test/validation solutions to achieve high-security assurance for electronic hardware, which supports the software stack. At the same time, emerging security issues and countermeasures have also led to interesting interplay between security, verification and interoperability. Verification of hardware for security and trust at different levels of abstraction is rapidly becoming an integral part of the system design flow. The global economic trend that promotes outsourcing of design and fabrication process to untrusted facilities coupled with the prevalent practice of system on chip design using untrusted third-party intellectual property blocks (IPs), has given rise to the critical need of trust verification of IPs, system-on-chip design, and fabricated chips. The talk will also cover a spectrum of security challenges for IoTs and describe emerging solutions in creating secure trustworthy hardware that can enable IoT security for the mass. Agenda: 6:00 PM: Virtual Registration and welcome remarks by session chair and vice chair 6:20 PM: Technical Session 8:20 PM: Q & A 8:50 PM: Closing Register: Please visit https://events.vtools.ieee.org/m/240161 to register. Biography: Swarup Bhunia received his B.E. (Hons.) from Jadavpur University, Kolkata, India, and the M.Tech. degree from the Indian Institute of Technology (IIT), Kharagpur. He received his Ph.D. from Purdue University, IN, USA, in 2005. Currently, Dr. Bhunia is a preeminence professor and Steven Yatauro Faculty Fellow in the department of Electrical and Computer Engineering at University of Florida, Gainesville, FL, USA. Earlier, Dr. Bhunia has served as the T. and A. Schroeder associate professor of Electrical Engineering and Computer Science at Case Western Reserve University, Cleveland, OH, USA. He has over twenty years of research and development experience with over 250 publications in peer-reviewed journals and premier conferences and ten edited or authored books (two upcoming) in the area of VLSI design, CAD and test techniques. His research interests include low power and robust design, hardware security and trust, adaptive nanocomputing and novel test methodologies. He has worked in the semiconductor industry on RTL synthesis, verification, and low power design for about three years. Dr. Bhunia received IEEE-CS TCVLSI Distinguished Research Award (2018), IBM Faculty Award (2013), National Science Foundation (NSF) career development award (2011), Semiconductor Research Corporation (SRC) technical excellence award (2005) as a team member, best paper award in ACM Transactions on Design Automation of Electronic Systems (TODAES 2017), best paper award in IEEE BioMedical Circuits and Systems Conference (BioCAS 2016), best paper award in International Conference on VLSI Design (VLSI Design 2012), best paper award in International Conference on Computer Design (ICCD 2004), best paper award in Latin American Test Workshop (LATW 2003), and best paper nomination in Asia and South Pacific Design Automation Conference (ASP-DAC 2006) and in Hardware Oriented Test and Security (HOST 2010), nomination for John S. Diekhoff Award, Case Western Reserve University (2010) and SRC Inventor Recognition Award (2009). Dr. Bhunia has been serving as founding editor-in-chief in Journal of Hardware and Systems Security (HaSS), an associate editor of IEEE Transactions on CAD (TCAD), IEEE Transactions on Multi-Scale Computing Systems (TMSCS), ACM Journal of Emerging Technologies (JETC), and Journal of Low Power Electronics (JOLPE). He has served as a guest editor of IEEE Design & Test of Computers (2010, 2013), IEEE Computer Magazine (2016), IEEE Transcation on CAD (2015), and IEEE Journal on Emerging and Selected Topics in Circuits and Systems (2014). He has served as co-program chair of IEEE IMS3TW 2011, IEEE NANOARCH 2013, IEEE VDAT 2014, and IEEE HOST 2015, and in the technical program committee of Design Automation Conference (2014-2015), Design Automation and Test in Europe (DATE 2006-2010), Hardware Oriented Trust and Security Symposium (HOST 2008-2010), IEEE/IFIP International Conference on VLSI (VLSI SOC 2008), Test Technology Educational Program (TTEP 2006-2008), International Symposium on Low Power Electronics and Design (ISLPED 2007-2008), IEEE/ACM Symposium on Nanoscale Architectures (NANOARCH 2007-2010), IEEE International Conference on VLSI (ISVLSI 2008-2010), International Conference of VLSI Design as a track chair (2010) and in the program committee of International Online Test Symposium (IOLTS 2005). Dr. Bhunia has given tutorials on low-power and robust design and test in premier conference including International Test Conferences (ITC 2009), VLSI Test Symposium (VTS 2010), and Design Automation and Test in Europe (DATE 2009). He is a distingusihed ACM speaker and a senior member of IEEE. Lab Website | New Text Book

Derivative Data Security using Artificial Intelligence

Recorded Material: Please click here to view the recorded technical talk. On Thursday, February 18, 2021 at 6:00 p.m., IEEE Computer Chapter is hosting the technical talk “Derivative Data Security using Artificial Intelligence”. Day & Time: Thursday, February 18, 2021 6:00 p.m. – 9:00 p.m. Speaker: Zia Babar Organizer: IEEE Toronto Computer Chapter Location: Since this will be a virtual event we will relay the connectivity information later to individual registrants on their email addresses. Contact: Younas Abbas Abstract: Data security the most dynamic and ever evolving trade becomes even significant while dealing with large volumes of unstructured data. To comply with regulation and standards like GDPR it is important to understand, equip and keep abreast of new tools and techniques in data security. Enterprises are increasingly storing large volumes of unstructured data. However, irrespective of the data format or type, unstructured data is difficult to secure and control its transfer. This is a major problem due to evolving compliance policies and the need to adhere to standards such as GDPR. Through derivative data security practices, enterprises can utilize machine learning and deep learning techniques to determine and trace clones and derivatives of unstructured data across the enterprise. In this talk, Zia Babar will provide a background on data security approaches, and provide a demonstration on machine learning and deep learning techniques can be used for providing derivative data security. Register: Please visit https://events.vtools.ieee.org/m/252704 to register. Biography: Zia Babar (https://www.linkedin.com/in/zbabar/) has 20 years of professional industry experience, He has deep expertise in the design, development and deployment of enterprise applications, data engineering platforms and distributed systems, with a particular focus on incorporating machine learning practices and cognitive services into software applications. Zia obtained his PhD from the University of Toronto where his research studies focused on the analysis and design of cognitive systems for enabling enterprise transformation. He is presently the Director of Research and Development at WinMagic. Previously, he worked in companies like Teradata where he developed Teradata’s first ML framework, NCR where he was responsible for designing and developing large-scale data processing systems, and Luminous Networks (acquired by Cisco) where he designed and built distributed systems. He is also presently engaged in a multi-year research engagement with IBM Research Labs and is a startup technical mentor at WeWork Labs. Further, he is the organizer of multiple technology meetup groups in both Toronto and Waterloo, and a frequent speaker at technical events and conferences.

Opportunities in Deep Learning: Commercialization and Career paths

Virtual: https://events.vtools.ieee.org/m/326443

Deep learning has become the new norm for a wide range of video analysis tasks, ranging from simple classification to synthesizing realistic new videos from text inputs. Keeping up with state-of-the-art DL algorithms has never been harder. Even the 'Transformer' has been given a new meaning. This presentation will uncover the mystery of deep learning in plain language and explain how those algorithms are deployed to products. More importantly, the audience will learn what it takes to become a deep learning engineer. The presentation will cover the following topics: - Recent advances in deep learning and self-supervised learning (video classification). - How are deep learning algorithms commercialized? - Career roadmap for aspirant candidates Speaker(s): Dr. Peng Dai, Virtual: https://events.vtools.ieee.org/m/326443