Skip to content

Commit ead9b82

Browse files
Create Post
1 parent 131ea89 commit ead9b82

File tree

2 files changed

+28
-0
lines changed

2 files changed

+28
-0
lines changed
Lines changed: 28 additions & 0 deletions
Original file line numberDiff line numberDiff line change
@@ -0,0 +1,28 @@
1+
---
2+
title: "Monitoring Model Inference With Amazon SageMaker"
3+
date: 2024-11-19 08:00:00 - 0500
4+
categories: [AWS, Machine Learning]
5+
tags: [QA Learning Platform, AWS, Amazon SageMaker, Machine Learning, Amazon SageMaker Model Monitor, Amazon SageMaker Model Dashboard, Amazon SageMaker Endpoints, Amazon CloudWatch]
6+
image:
7+
path: /assets/img/headers/model-inference.webp
8+
lqip: data:image/webp;base64,UklGRi4BAABXRUJQVlA4ICIBAABQBwCdASooABgAPu1srlIppaQipWsxMB2JZAC/awz73+ga0zMveLq/X+8df6mzvni0vbZTS8Fr+crbaF5nN8ejMyIAAP75xrn5sqa6P2wBR+4b7MZvw8JP7H31awvzpnTyyaWAQIpDXnpz417yZSul30Zrx1jDk26ViKWwnVVU6qz0TUmkJjRRa+frlPrW8jQwz9ta4N+x3Uv7IdM6HyUHcmlKn+1POiiFZN8O/VOCSmb7lTCENYGiZQCtQ7tMDlTsbVSvW68Cu8LccJcBH86QTA/CINH5zotFvgkOEnPVqYH+mnPeTkuOc7KQTzqTnK/Kr/Br9oVxs7pb4juwjP6yoJGTsD5dfUKqUI14nlcPJMZl9JhdzU0lff4TuHJPL4AAAA==
9+
---
10+
11+
In this lesson, you will explore how to effectively track and maintain the performance of your deployed machine learning models. You will learn about tools and techniques to ensure your models continue to deliver accurate predictions in real-world scenarios.
12+
13+
## Learning Objectives
14+
- Identify core components of effective ML model monitoring
15+
- Recognize the four main categories of model drift in machine learning systems
16+
- Describe key features of Amazon SageMaker Model Monitor
17+
- Explain the capabilities of Amazon SageMaker Model Dashboard
18+
- Use Amazon CloudWatch to monitor SageMaker resources
19+
- Deploy and monitor models using Amazon SageMaker Endpoints
20+
21+
## Intended Audience
22+
This lesson is designed for machine learning engineers, data scientists, and DevOps professionals looking to effectively monitor and maintain machine learning models in production environments using Amazon SageMaker and related AWS services.
23+
24+
## Prerequisites
25+
To get the most out of this lesson, you should have some basic working knowledge of machine learning concepts, AWS cloud services, and Amazon SageMaker. Experience with deploying ML models is beneficia
26+
27+
## Get Started
28+
[Monitoring Model Inference With Amazon SageMaker](https://platform.qa.com/course/optimize-machine-learning-models-for-inference-with-sagemaker-neo-1/introduction-1730928863253-1/){:target="_blank"}
672 KB
Loading

0 commit comments

Comments
 (0)