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Study mode:
on
1
Intro
2
Welcome
3
Offline vs Online
4
Vocabulary
5
MLflow
6
Spark
7
Online Scoring
8
MLflow Scoring Server
9
Deployment
10
Overview
11
Scoring Server
12
CSV Request
13
Sagemaker
14
Flask vs Spark
15
MLeap
16
MLflow Life Cycle
17
Databricks Model Serving
18
Model Serving Overview
19
Model Registry UI
20
Recent Resources
21
Plumbing Plugin
22
New Features
23
Torch Serving
24
Example
25
MLflow Saved Model Format
26
MLflow Saved Model Flavor
27
MLflow Saved Model Code
28
Launching Docker Container
29
Demo
30
Onix
31
Questions
Description:
Explore MLflow Model Serving in this 37-minute Data + AI Summit Europe 2020 Meetup presentation by Andre Mesarovic, Resident Solutions Architect at Databricks. Dive into the world of hosting machine learning models as REST endpoints with automatic updates, enabling data science teams to manage the entire lifecycle of real-time ML models from training to production. Learn about scoring models with MLflow, both online using the MLflow scoring server and offline with Apache Spark, as well as custom model deployment and scoring techniques. Gain insights into the MLflow life cycle, Databricks Model Serving, and recent features like Torch Serving. Discover the intricacies of MLflow Saved Model Format, Flavors, and Code, and witness a practical demonstration using Onix. This comprehensive talk covers essential vocabulary, deployment overviews, and various scoring methods, providing a solid foundation for understanding and implementing MLflow Model Serving in your data science projects.

MLflow Model Serving - From Training to Production

Databricks
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