Case Study - Making the Most out of a Doomed Project
Offered By: MLCon | Machine Learning Conference via YouTube
Course Description
Overview
Explore a 27-minute conference talk from MLCon that delves into the challenges of managing doomed machine learning projects. Learn how to navigate miscommunications, dataset issues, and unrealistic expectations when faced with seemingly insurmountable obstacles. Gain insights from Vladimir Rybakov's experience as he shares a case study on making the most out of a troubled project, discussing what truly matters when goals appear unattainable. Discover strategies for handling weaknesses in ML projects, managing expectations, and deciding whether to participate in challenging endeavors. Follow the speaker's journey through data recovery, modified metrics, and unexpected successes, ultimately learning how to turn potential failures into valuable learning experiences and maintain a positive reputation in the field.
Syllabus
Introduction
Weaknesses in ML projects
Wrong expectations
Should you participate
My experience
A good reputation
Challenges
Why we took this project
The modified metric
The final goal
The plan
The data
Tables
Data Loss
Contacting EF
Distribution Issues
Data Recovery
Results
Why
Success
If something is wrong
The best field
Plan
Final Report
Conclusions
Taught by
MLCon | Machine Learning Conference
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