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Shannon Wilson

Vice President Population Health & Health Equity
Priority Health

Shannon Wilson

Vice President Population Health & Health Equity
Priority Health

Shannon Wilson

Vice President Population Health & Health Equity
Priority Health
 

Anthony Johnson

Chief Health Equity Officer
Aetna

Anthony Johnson

Chief Health Equity Officer
Aetna

Anthony Johnson

Chief Health Equity Officer
Aetna
 

Timshel Tarbet

Director Innovation Health Equity Accelerator
Providence Health Plan

Timshel Tarbet

Director Innovation Health Equity Accelerator
Providence Health Plan

Timshel Tarbet

Director Innovation Health Equity Accelerator
Providence Health Plan
 

Melvin Toh, CIPM

Senior Manager, Technology & Transformation
Deloitte Singapore

Melvin is a Senior Manager in Deloitte Singapore’s Technology & Transformation practice. As part of the Data & Privacy team, Melvin has spent the past 5 years leading and delivering services to various clients at local, regional, and global scales in data-related domains, particularly data privacy and protection, and serves as a subject matter expert to the other teams in the firm’s practice in Southeast Asia.

Melvin Toh, CIPM

Senior Manager, Technology & Transformation
Deloitte Singapore

Melvin Toh, CIPM

Senior Manager, Technology & Transformation
Deloitte Singapore

Melvin is a Senior Manager in Deloitte Singapore’s Technology & Transformation practice. As part of the Data & Privacy team, Melvin has spent the past 5 years leading and delivering services to various clients at local, regional, and global scales in data-related domains, particularly data privacy and protection, and serves as a subject matter expert to the other teams in the firm’s practice in Southeast Asia.

Within this evolving field, Melvin is constantly looking out for opportunities and new developments to assist clients in their data privacy and protection journeys, such as in the areas of Privacy Enhancing Technologies and Privacy in Artificial Intelligence.

He looks forward to connecting with fellow like-minded individuals who share his passion for these domains and hopes to inspire meaningful discussions and collaborations.

 

Tejas Chopra

Senior Engineer of Software
Netflix

Tejas Chopra is a Sr. Engineer at Netflix working on Machine Learning Platform for Netflix Studios and a Founder at GoEB1 which is the world’s first and only thought leadership platform for immigrants.Tejas is a recipient of the prestigious EB1A (Einstein) visa in US.

Tejas Chopra

Senior Engineer of Software
Netflix

Tejas Chopra

Senior Engineer of Software
Netflix

Tejas Chopra is a Sr. Engineer at Netflix working on Machine Learning Platform for Netflix Studios and a Founder at GoEB1 which is the world’s first and only thought leadership platform for immigrants.Tejas is a recipient of the prestigious EB1A (Einstein) visa in US. Tejas is a Tech 40 under 40 Award winner, a TEDx speaker, a Senior IEEE Member, an ACM member, and has spoken at conferences and panels on Cloud Computing, Blockchain, Software Development and Engineering Leadership.Tejas has been awarded the ‘International Achievers Award, 2023’ by the Indian Achievers’ Forum. He is an Adjunct Professor for Software Development at University of Advancing Technology, Arizona, an Angel investor and a Startup Advisor to startups like Nillion. He is also a member of the Advisory Board for Flash Memory Summit.Tejas’ experience has been in companies like Box, Apple, Samsung, Cadence, and Datrium. Tejas holds a Masters Degree in ECE from Carnegie Mellon University, Pittsburgh.

Author:

Jim Handy

General Director
Objective Analysis

Jim Handy of Objective Analysis has over 35 years in the electronics industry including 20 years as a leading semiconductor and SSD industry analyst. Early in his career he held marketing and design positions at leading semiconductor suppliers including Intel, National Semiconductor, and Infineon. A frequent presenter at trade shows, Mr. Handy is highly respected for his technical depth, accurate forecasts, widespread industry presence and volume of publication. He has written hundreds of market reports, articles for trade journals, and white papers, and is frequently interviewed and quoted in the electronics trade press and other media.

Jim Handy

General Director
Objective Analysis

Jim Handy of Objective Analysis has over 35 years in the electronics industry including 20 years as a leading semiconductor and SSD industry analyst. Early in his career he held marketing and design positions at leading semiconductor suppliers including Intel, National Semiconductor, and Infineon. A frequent presenter at trade shows, Mr. Handy is highly respected for his technical depth, accurate forecasts, widespread industry presence and volume of publication. He has written hundreds of market reports, articles for trade journals, and white papers, and is frequently interviewed and quoted in the electronics trade press and other media.

Author:

Sony Varghese

Senior Director
Applied Materials

Dr. Sony Varghese is Senior Director of strategic marketing for memory in the Semiconductor Products Group at Applied Materials. In this role, he is involved in identifying challenges to scaling and future key inflections in the memory industry. Prior to Applied Materials, he worked on developing various memory technologies within the R&D organization at Micron Technologies. Dr. Varghese has over 25 U.S. patents issued or pending in the area of semiconductor processing and integration. He holds a Ph.D. in Mechanical and Materials Engineering from The Oklahoma State University, USA.

Sony Varghese

Senior Director
Applied Materials

Dr. Sony Varghese is Senior Director of strategic marketing for memory in the Semiconductor Products Group at Applied Materials. In this role, he is involved in identifying challenges to scaling and future key inflections in the memory industry. Prior to Applied Materials, he worked on developing various memory technologies within the R&D organization at Micron Technologies. Dr. Varghese has over 25 U.S. patents issued or pending in the area of semiconductor processing and integration. He holds a Ph.D. in Mechanical and Materials Engineering from The Oklahoma State University, USA.

Author:

Brett Dodds

Senior Director, Azure Memory Devices
Microsoft

Brett Dodds

Senior Director, Azure Memory Devices
Microsoft

Disaggregated memory is a promising approach that addresses the limitations of traditional memory architectures by enabling memory to be decoupled from compute nodes and shared across a data center. Cloud platforms have deployed such systems to improve overall system memory utilization, but performance can vary across workloads. High-performance computing (HPC) is crucial in scientific and engineering applications, where HPC machines also face the issue of underutilized memory. As a result, improving system memory utilization while understanding workload performance is essential for HPC operators. Therefore, learning the potential of a disaggregated memory system before deployment is a critical step. This paper proposes a methodology for exploring the design space of a disaggregated memory system. It incorporates key metrics that affect performance on disaggregated memory systems: memory capacity, local and remote memory access ratio, injection bandwidth, and bisection bandwidth, providing an intuitive approach to guide machine configurations based on technology trends and workload characteristics. We apply our methodology to analyze thirteen diverse workloads, including AI training, data analysis, genomics, protein, fusion, atomic nuclei, and traditional HPC bookends. Our methodology demonstrates the ability to comprehend the potential and pitfalls of a disaggregated memory system and provides motivation for machine configurations. Our results show that eleven of our thirteen applications can leverage injection bandwidth disaggregated memory without affecting performance, while one pays a rack bisection bandwidth penalty and two pay the system-wide bisection bandwidth penalty. In addition, we also show that intra-rack memory disaggregation would meet the application's memory requirement and provide enough remote memory bandwidth.

Author:

Nan Ding

Research Scientist
Berkeley Research Lab

Nan Ding is a Research Scientist in the Performance and Algorithms group of the Computer Science Department at Lawrence Berkeley National Laboratory. Her research interests include high-performance computing, performance modeling and performance optimization. Nan received her Ph.D. in computer science from Tsinghua University, Beijing, China in 2018.

Nan Ding

Research Scientist
Berkeley Research Lab

Nan Ding is a Research Scientist in the Performance and Algorithms group of the Computer Science Department at Lawrence Berkeley National Laboratory. Her research interests include high-performance computing, performance modeling and performance optimization. Nan received her Ph.D. in computer science from Tsinghua University, Beijing, China in 2018.

Moderator

Author:

Simone Bertolazzi

Principal Analyst, Memory
Yole Group

Simone Bertolazzi, PhD is a Senior Technology & Market analyst, Memory, at Yole Intelligence, part of Yole Group, working with the Semiconductor, Memory & Computing division. As member of the Yole’s memory team, he contributes on a day-to-day basis to the analysis of memory markets and technologies, their related materials, device architectures and fabrication processes. Simone obtained a PhD in physics in 2015 from École Polytechnique Fédérale de Lausanne (Switzerland) and a double M. A. Sc. degree from Polytechnique de Montréal (Canada) and Politecnico di Milano (Italy), graduating cum laude.

Simone Bertolazzi

Principal Analyst, Memory
Yole Group

Simone Bertolazzi, PhD is a Senior Technology & Market analyst, Memory, at Yole Intelligence, part of Yole Group, working with the Semiconductor, Memory & Computing division. As member of the Yole’s memory team, he contributes on a day-to-day basis to the analysis of memory markets and technologies, their related materials, device architectures and fabrication processes. Simone obtained a PhD in physics in 2015 from École Polytechnique Fédérale de Lausanne (Switzerland) and a double M. A. Sc. degree from Polytechnique de Montréal (Canada) and Politecnico di Milano (Italy), graduating cum laude.

Speakers

Author:

Ramin Farjadrad

Co-Founder & CEO
Eliyan

Ramin Farjadrad is the inventor of over 130 granted and pending patents in communications and networking. He has a successful track record of creating differentiating connectivity technologies adopted by the industry as International standards (Two Ethernet standards at IEEE, one chiplet connectivity at OCP.) Ramin co-founded Velio Communications, which led to a Rambus/LSI Logic acquisition, and Aquantia, which IPO’d and was acquired by Marvell Technologies. Ramin’s Ph.D. EE is from Stanford.

Ramin Farjadrad

Co-Founder & CEO
Eliyan

Ramin Farjadrad is the inventor of over 130 granted and pending patents in communications and networking. He has a successful track record of creating differentiating connectivity technologies adopted by the industry as International standards (Two Ethernet standards at IEEE, one chiplet connectivity at OCP.) Ramin co-founded Velio Communications, which led to a Rambus/LSI Logic acquisition, and Aquantia, which IPO’d and was acquired by Marvell Technologies. Ramin’s Ph.D. EE is from Stanford.

Author:

Mike Ignatowski

Sr. Fellow
AMD

Michael Ignatowski is a Sr. Fellow, leading AMD’s Research and Advanced Development division in advanced memory technology and architecture for future systems. Prior to joining AMD in 2010, he worked at IBM for 27 years in the mainframe product division and the T.J. Watson Research division in Yorktown.  Michael holds over 25 patents, has participated on panel sessions at major conferences, and has given multiple invited talks and keynote presentations.

Mike Ignatowski

Sr. Fellow
AMD

Michael Ignatowski is a Sr. Fellow, leading AMD’s Research and Advanced Development division in advanced memory technology and architecture for future systems. Prior to joining AMD in 2010, he worked at IBM for 27 years in the mainframe product division and the T.J. Watson Research division in Yorktown.  Michael holds over 25 patents, has participated on panel sessions at major conferences, and has given multiple invited talks and keynote presentations.

The presentation delves into the evolution, current state, and prospective developments within data-driven machine learning. In an era where data has ascended to the status of a pivotal resource, this presentation emphasizes its indispensable role in shaping the landscape of machine learning and how these changes have significantly influenced systems infrastructure.

Delving into the past, it meticulously examines the historical origins of data-driven modeling, charting its progression from rudimentary concepts to the intricate algorithms that underpin modern machine learning. The presentation illuminates early techniques like perceptrons and decision trees and elucidates their enduring impact on the field.

In the present, this presentation expounds upon the transformative influence of big data and deep learning, illuminating real-world applications while highlighting the associated challenges and opportunities that have engendered profound alterations in systems infrastructure.

As we look towards the future, this presentation provides invaluable insights into emerging trends and technologies such as quantum computing and edge AI, poised to redefine the future of machine learning and further revolutionize systems infrastructure.

By amalgamating theoretical insights, empirical observations, and forward-looking perspectives, this presentation offers a comprehensive overview of the past achievements, current dynamics, and potential future scenarios in the realm of data-driven machine learning, shedding light on how these changes have reshaped systems infrastructure.

Author:

Rahul Gupta

AI Research Scientist
US Army Laboratory

Dr. Rahul Gupta has been working at the Army Research Lab for more than a decade. In his current position he is conducting research and development using Deep Learning Artificial Neural Network and Convolutional Neural Network. He joined ARL as a Distinguished Research Scholar and led several successful programs. He became a Fellow of the American Society of Mechanical Engineers in 2014. He is passionate about mentoring and team building with the goal of providing the Army the best possible technology to dominate today’s complex Multi-Domain Environment (MDE).

Rahul Gupta

AI Research Scientist
US Army Laboratory

Dr. Rahul Gupta has been working at the Army Research Lab for more than a decade. In his current position he is conducting research and development using Deep Learning Artificial Neural Network and Convolutional Neural Network. He joined ARL as a Distinguished Research Scholar and led several successful programs. He became a Fellow of the American Society of Mechanical Engineers in 2014. He is passionate about mentoring and team building with the goal of providing the Army the best possible technology to dominate today’s complex Multi-Domain Environment (MDE).