Presented By O’Reilly and Intel AI
Put AI to work
Sep 4-5, 2018: Training
Sep 5-7, 2018: Tutorials & Conference
San Francisco, CA

Schedule: Health and Medicine sessions

1:30pm-5:00pm Wednesday, September 5, 2018
Xiaoyong Zhu (Microsoft), Wilson Lee (CLOUD AI) (Microsoft), Ivan Tarapov (Microsoft), Mazen Zawaideh (University of Washington Medical Center)
Xiaoyong Zhu, Gheorghe Iordanescu, Wilson Lee, and Ivan Tarapov walk you through building a deep learning model and intelligent applications on edge devices running iOS, Android, and Windows, using a working example that helps clinicians in areas with less access to radiologists identify possible lung diseases. Read more.
1:45pm-2:25pm Thursday, September 6, 2018
Implementing AI
Location: Yosemite BC
Avesh Singh (Cardiogram), Kevin Wu (Cardiogram)
Average rating: *****
(5.00, 1 rating)
Deep learning is often called a black box, so how do you diagnose and fix problems in a deep neural network (DNN)? Avesh Singh and Kevin Wu explain how they systematically debugged DeepHeart, a DNN that detects cardiovascular disease from heart rate data. You'll leave with an arsenal of tools for debugging DNNs, including Jacobian analysis, TensorBoard, and DNN unit tests. Read more.
2:35pm-3:15pm Thursday, September 6, 2018
AI Business Summit, AI in the Enterprise
Location: Continental 5
Shelley Zhuang (11.2 Capital)
Given the revolution in data and healthcare, Shelley Zhuang predicts how certain sectors may unfold and shares opportunities for innovation. Along the way, Shelley discusses innovations that advance precision medicine by bringing together interdisciplinary fields across biology, engineering, data science, and clinical care. Read more.
2:35pm-3:15pm Thursday, September 6, 2018
Interacting with AI, Models and Methods
Location: Yosemite BC
Daniel Golden (Arterys)
Average rating: *****
(5.00, 1 rating)
Modern radiological lung cancer screening is an entirely manual process, leading to high costs and inter-reader variability. Daniel Golden offers an overview of a deep learning-based system that automatically detects and segments lung nodules in lung CT exams and explains how it was tested for safety and efficacy. The system is FDA cleared and segments nodules as accurately as a clinician. Read more.
4:00pm-4:40pm Thursday, September 6, 2018
Implementing AI
Location: Yosemite BC
Ayin Vala (DeepMD | Foundation for Precision Medicine)
Average rating: *****
(5.00, 1 rating)
Complex diseases like Alzheimer’s cannot be cured by pharmaceutical or genetic sciences alone, and current treatments and therapies lead to mixed successes. Ayin Vala explains how to use the power of big data and AI to treat challenging diseases with personalized medicine, which takes into account individual variability in medicine intake, lifestyle, and genetic factors for each patient. Read more.
4:50pm-5:30pm Thursday, September 6, 2018
Implementing AI
Location: Continental 1-3
Armen Donigian (ZestFinance)
Average rating: ***..
(3.50, 2 ratings)
What does it mean to explain a machine learning model, and why is it important? Armen Donigian addresses those questions while discussing several modern explainability methods, including traditional feature contributions, LIME, and DeepLift. Each of these techniques offers a different perspective, and their clever application can reveal new insights and solve business requirements. Read more.
2:35pm-3:15pm Friday, September 7, 2018
Sharad Gupta (Blue Shield of California)
Average rating: *****
(5.00, 1 rating)
AI-powered chatbots are increasingly becoming viable solutions for customer service use cases. Technology leaders must consider adopting a multichannel chatbot strategy to avoid siloed chatbot solutions. Sharad Gupta shares a framework to ensure long-term strategic investment in chatbots. Read more.
2:35pm-3:15pm Friday, September 7, 2018
Average rating: *****
(5.00, 1 rating)
AI possesses an incredible potential to help address the challenges of our planet. Drawing on her experience as the head of AI foundations and codirector of Science for Social Good at IBM Research, Aleksandra Mojsilovic shares innovative examples of applying AI to humanitarian problems and discusses gaps that challenge us from making larger impact with our work. Read more.