| Page 1289 | Kisaco Research
 

Prasun Raha

Head of HW Platform Architecture
Rivian

Prasun Raha

Head of HW Platform Architecture
Rivian

Prasun Raha

Head of HW Platform Architecture
Rivian
Automatic licence plate recognition (ALPR) – the XMOS solution
 

Pradeep Gupta

Senior Director- AI Industries, Solutions and Architecture
NVIDIA

Pradeep Gupta

Senior Director- AI Industries, Solutions and Architecture
NVIDIA

Pradeep Gupta

Senior Director- AI Industries, Solutions and Architecture
NVIDIA
 

Raynor Ren

Principal Engineer AL/ML
Amazon

Raynor Ren

Principal Engineer AL/ML
Amazon

Raynor Ren

Principal Engineer AL/ML
Amazon
 

Jin Mi

Head of Downstream Process Development
Spark Therapeutics

Jin Mi

Head of Downstream Process Development
Spark Therapeutics

Jin Mi

Head of Downstream Process Development
Spark Therapeutics

Getting one or two AI models into production is very different to running an entire enterprise or product on AI, and as AI is scaled, problems can (and often do) scale too.

  • Standardizing how you build and operationalize models
  • Focusing teams where they’re strongest
  • Introducing MLOps and establishing best practices and tools to facilitate rapid, safe, and efficient development and operationalization of AI

Author:

Raynor Ren

Principal Engineer AL/ML
Amazon

Raynor Ren

Principal Engineer AL/ML
Amazon

Author:

Pradeep Gupta

Senior Director- AI Industries, Solutions and Architecture
NVIDIA

Pradeep Gupta

Senior Director- AI Industries, Solutions and Architecture
NVIDIA

Failure to adequately explain model development, working and outcome inherently invites both regulatory and customer scrutiny, especially when things go wrong.

  • The extent to which customers need to know how and why a particular outcome has been reached
  • Do you need to understand black box models and if so, why?
  • Where is explainability a luxury and where is it absolute necessity
  • Lessons learned from failures and how explainability could have helped

Author:

Agus Sudjianto

Executive Vice President, Head of Model Risk
Wells Fargo

Agus Sudjianto is an executive vice president, head of Model Risk and a member of the Management Committee at Wells Fargo, where he is responsible for enterprise model risk management. Prior to his current position, Agus was the modeling and analytics director and chief model risk officer at Lloyds Banking Group in the United Kingdom. Before joining Lloyds, he was an executive and head of Quantitative Risk at Bank of America. Prior to his career in banking, he was a product design manager in the Powertrain Division of Ford Motor Company. Agus holds several U.S. patents in both finance and engineering. He has published numerous technical papers and is a co-author of Design and Modeling for Computer Experiments. His technical expertise and interests include quantitative risk, particularly credit risk modeling, machine learning and computational statistics. He holds masters and doctorate degrees in engineering and management from Wayne State University and the Massachusetts Institute of Technology.

Agus Sudjianto

Executive Vice President, Head of Model Risk
Wells Fargo

Agus Sudjianto is an executive vice president, head of Model Risk and a member of the Management Committee at Wells Fargo, where he is responsible for enterprise model risk management. Prior to his current position, Agus was the modeling and analytics director and chief model risk officer at Lloyds Banking Group in the United Kingdom. Before joining Lloyds, he was an executive and head of Quantitative Risk at Bank of America. Prior to his career in banking, he was a product design manager in the Powertrain Division of Ford Motor Company. Agus holds several U.S. patents in both finance and engineering. He has published numerous technical papers and is a co-author of Design and Modeling for Computer Experiments. His technical expertise and interests include quantitative risk, particularly credit risk modeling, machine learning and computational statistics. He holds masters and doctorate degrees in engineering and management from Wayne State University and the Massachusetts Institute of Technology.