Главная
Study mode:
on
1
Intro
2
Model ende begins once trained
3
Consolidating Practical AI Ethics
4
Consolidating Accountability Struct.
5
AI Open Source Libraries as Policy
6
Architectural Blueprint Convergence
7
Converging Into Cannonical Stack(s)
8
Maturing Monitoring Areas in ML
9
Evolving to Observability By Design
10
From Model-Centric to Data-Centric
11
Robust DataOps/DataMesh Evolution
12
End to End Metadata Interoperability
13
Demand for Secure End to End MLOps
14
Mindset From Projects to Products
15
Map Tech Outputs to Biz Outcomes
16
Cross Func. Capabilities By Design
17
Exploring Organisational Ratios
18
Iterative Organisational Growth
Description:
Explore the current state of production MLOps in the cloud native ecosystem through this comprehensive conference talk. Gain insights into the challenges faced in production machine learning and learn about key areas to focus on for reliable and scalable ML pipelines. Dive into essential principles, patterns, and frameworks powering various phases of the MLOps lifecycle, including model training, deployment, and monitoring. Discover best practices abstracted from real-world production use-cases of machine learning operations at scale. Learn how to leverage tools for deploying, explaining, securing, monitoring, and scaling production ML systems. Explore topics such as practical AI ethics, accountability structures, open-source libraries as policy, architectural blueprint convergence, evolving monitoring areas, data-centric approaches, robust DataOps/DataMesh evolution, end-to-end metadata interoperability, secure MLOps, and the shift from project-based to product-oriented mindsets. Understand the importance of mapping technical outputs to business outcomes and developing cross-functional capabilities by design. Gain valuable insights into organizational ratios and iterative growth strategies for successful MLOps implementation. Read more

The State of Production MLOps in the Cloud Native Ecosystem

CNCF [Cloud Native Computing Foundation]
Add to list
0:00 / 0:00