Главная
Study mode:
on
1
[] Catherine's preferred coffee
2
[] Takeaways
3
[] Meeting magic: Embracing serenity
4
[] The Software Engineering for Data Scientists book
5
[] Exploring ideas rapidly
6
[] Bridging Data Science gaps
7
[] Data poisoning concerns
8
[] Transitioning from a data scientist to a machine learning engineer
9
[] Rapid Prototyping vs Thorough Development
10
[] Data scientists take ownership
11
[] Data scientists' role balance
12
[] Understanding system design process
13
[] Data scientists and Kubernetes
14
[41:33 - ] LatticeFlow AI Ad
15
[] The Future of Data Science
16
[] Data scientists analyzing models
17
[] Tools gaps in prompt tracking
18
[] Learnings from writing the book
Description:
Save Big on Coursera Plus. 7,000+ courses at $160 off. Limited Time Only! Grab it Explore the importance of software engineering principles for data scientists in this 53-minute podcast episode featuring Catherine Nelson, a freelance Data Scientist and author. Delve into topics such as writing modular and readable code, standardizing coding practices in exploratory projects, and bridging the gap between data science and software engineering. Learn about Catherine's experience deploying NLP models to production, evaluating ML systems, and her insights from writing "Software Engineering for Data Scientists." Discover the challenges of transitioning from data scientist to machine learning engineer, the balance of rapid prototyping and thorough development, and the future of data science. Gain valuable insights on data poisoning concerns, system design processes, and the role of data scientists in analyzing models and tracking prompts in AI development.

Why Data Scientists Should Learn Software Engineering Principles

MLOps.community
Add to list
0:00 / 0:00