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1
Introduction
2
Machine Learning
3
Artificial Intelligence vs Machine Learning
4
Why DevOps
5
Innovation and Stability
6
DevOps Definition
7
Experimentation
8
Software Development
9
Planning
10
Source Control
11
Continuous Integration
12
Monitoring and Learning
13
Pipeline
14
Examples
15
Summary
Description:
Explore the intersection of DevOps and machine learning in this comprehensive conference talk. Learn how to effectively coordinate data science and software engineering teams using DevOps principles. Discover strategies for implementing a robust end-to-end delivery pipeline that incorporates data acquisition, model training, testing, and deployment. Gain insights into source control for models, repeatable data preparation, continuous retraining, code validation, model versioning, and production deployment. Understand the challenges of integrating unfamiliar data science workflows with traditional software engineering practices, and learn how to overcome them. Delve into topics such as artificial intelligence, innovation vs. stability, experimentation, continuous integration, and monitoring. By the end of this talk, you'll have a clear understanding of how to create a cohesive, automated pipeline that brings data scientists and software engineers together for more effective smart software development. Read more

DevOps for Machine Learning

NDC Conferences
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