Bridging the gap between AI and KPIs
Sinan Ozdemir
Director of Data Science
Directly
Many companies silo data science and machine learning teams who optimize AI metrics like precision, F1 and accuracy away from teams focused on optimizing KPIs such as revenue and churn. This gap can lead to models being put into production that have no obvious business goal. It is imperative that business leaders understand how to close this gap and have machine learning engineers working with non-engineering teams in order to build models that fit into the business' KPI goals.
Interested in Structuring?
Visit our Structuring community!
How should an ideal organization look like? What approaches can help you to make your organization more efficient? Let's try to find answers together in our Structuring topic. Here we discuss problems of org design/team structure, process (agile/kanban, etc), engineering metrics, knowledge management/documentation.
VIDEOS RELATED TO STRUCTURING
Shilpa Yadla, Head of Engineering at Microsoft
Arvind Pereira, CTO & Cofounder at Markov Corporation
Julia Grace, Senior Director at Slack
Johnny Austin, Head of Directions at Mapbox
Ushashi Chakraborty, Director of Engineering at Mode Analytics
Rebecca Miller-webster, Director of Software Engineering at GitHub
Francois Richard, VP Engineering at Yahooo! Inc.
Russ Smith, CTO at RainforestQA
Jesse Pedersen, CTO at Building Connected
Rob Witoff, Senior Director of Infrastructure at Coinbase
Adrian Macneil, Director of Engineering at Coinbase

Copyright © 2024 CTO Connection, All Rights Reserved