Trusting Your Data Science Pipelines - A Quantitative Approach
Offered By: Strange Loop Conference via YouTube
Course Description
Overview
Explore a comprehensive approach to ensuring reliability in complex data science pipelines through this conference talk from Strange Loop. Delve into the challenges faced by companies developing systems that transform massive raw datasets into actionable signals using advanced machine learning techniques and distributed computing. Learn about the concept of Quantitative Reliability Engineering (QRE) and how it addresses the issue of technical myopia in specialized teams. Discover the scientific methodology employed by QRE to understand and enhance every step of a data analytics pipeline. Gain insights into the collaboration between QRE teams, data scientists, and engineers to verify end-to-end results and develop scalable algorithms. Join Elijah ben Izzy, the tech lead of Two Sigma's QRE team, as he shares their experiences, challenges, and how their approach applies to the broader computational industry in this 39-minute presentation.
Syllabus
"Trusting Your Data Science Pipelines: A Quantitative Approach" by Elijah ben Izzy
Taught by
Strange Loop Conference
Tags
Related Courses
Understanding China, 1700-2000: A Data Analytic Approach, Part 1The Hong Kong University of Science and Technology via Coursera The Analytics Edge
Massachusetts Institute of Technology via edX 大数据与信息传播 Big Data and Information Dissemination
Fudan University via Coursera The Future of Fashion
Marist College via Independent The Mobile Consumer
Marist College via Independent