The State of Machine Learning Operations in 2019
Offered By: EuroPython Conference via YouTube
Course Description
Overview
Explore the key challenges and trends in productizing machine learning systems in this comprehensive talk from EuroPython 2019. Delve into crucial concepts such as reproducibility, explainability, and orchestration in machine learning operations. Gain insights into open-source tools and frameworks available for addressing these issues, as identified in the Awesome Machine Learning Operations list. Learn about model versioning, data lineage, and practical requirements for ensuring reproducibility. Understand the importance of explainability in machine learning, including high-profile incidents involving unintended biases in tech companies. Discover fundamental challenges in large-scale model serving and explore key tools for tackling orchestration issues. This informative presentation provides a thorough overview of the state of Machine Learning Operations as of 2019, offering valuable knowledge for data scientists and machine learning practitioners.
Syllabus
Alejandro Saucedo - The state of Machine Learning Operations in 2019
Taught by
EuroPython Conference
Related Courses
Data for Machine LearningAlberta Machine Intelligence Institute via Coursera Microsoft Future Ready: Ethics and Laws in Data and Analytics
Cloudswyft via FutureLearn AI Strategy and Governance
University of Pennsylvania via Coursera Preparar datos para la exploración
Google via Coursera Daten für die Erkundung Vorbereiten
Google via Coursera