Machine Learning Guide

MLA 016 AWS SageMaker MLOps 2

Nov 5, 2021
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Chapters
Transcript
Episode notes
1
Introduction
00:00 • 4min
2
The Benefits of Developing a Machine Learning Model on a Sage Maker Studio
03:53 • 3min
3
How to Write and Train a Data Science Model Using Sage Maker
06:47 • 3min
4
How to Jump Start a Machine Learning Project
09:28 • 2min
5
Sage Maker Deployment and Scalability
11:56 • 2min
6
Using Batch Transform to Scale Your Machine Learning Models
14:15 • 3min
7
Machine Learning Inference in Python Scripts
17:12 • 2min
8
Sage Maker Pipe Lines - Getting Started With Unit Tests
18:56 • 3min
9
Using a W S for Machine Learning Model Post Ain
21:26 • 3min
10
Using a W S Tooling for Machine Learning and Cloud Machine Learning
24:00 • 3min
11
Onyx O N X, Model Optimization Framework
27:16 • 2min
12
Machine Learning on a W S Lamda
29:07 • 2min
13
Cloud Native Services - What Are They?
31:32 • 2min
14
Using Amazon Comprehend to Train Machine Learning Models in the Cloud
33:57 • 3min
15
Using Machine Learning to Generate Personalized Messages
36:51 • 2min
16
Cloud Native Services for Nothe
39:11 • 2min
17
How to Deploy a Sage Maker Model to the Cloud?
41:31 • 2min
18
Elastic Search for Similarity Matching of Documents Into Vector Space
43:58 • 3min
19
Using U K P Lab Sentence Transformers, I'm Using a Sage Maker Pipe Line to Transform Journal Entry Into a Feature
46:36 • 3min
20
How to Track Sleep Quality Using XG Boost?
49:55 • 2min
21
Predictive Modeling in Python - I'm Using a Neural Network to Predict Cognitive Behavior Therapy
51:38 • 2min
22
Scalable Sage Maker Batch Transform Job
54:00 • 3min
23
Sage Maker and a W S Cloud Native Service
56:33 • 3min