YoVDO

Amazon SageMaker Technical Deep Dive Series

Offered By: Amazon Web Services via YouTube

Tags

Amazon SageMaker Courses Machine Learning Courses Feature Engineering Courses Model Deployment Courses Model Training Courses Distributed Training Courses

Course Description

Overview

Dive deep into Amazon SageMaker's capabilities with this comprehensive technical series. Explore fully-managed notebook instances, built-in machine learning algorithms, and custom ML model integration. Learn to train models accurately, deploy to production at scale, and tune for highest accuracy using automatic model tuning. Master distributed training, utilize various deep learning frameworks, and analyze dataset correlations through feature engineering. Discover how to obtain scheduled predictions, build accurate training datasets cost-effectively, and organize ML training runs. Explore automated model building and tuning with Autopilot, deploy multiple models on single endpoints, and leverage the integrated development environment of SageMaker Studio. Gain insights into analyzing and debugging training runs for optimal performance.

Syllabus

Fully-Managed Notebook Instances with Amazon SageMaker - a Deep Dive.
Built-in Machine Learning Algorithms with Amazon SageMaker - a Deep Dive.
Bring Your Own Custom ML Models with Amazon SageMaker.
Train Your ML Models Accurately with Amazon SageMaker.
Deploy Your ML Models to Production at Scale with Amazon SageMaker.
Tune Your ML Models to the Highest Accuracy with Amazon SageMaker Automatic Model Tuning.
Scale up Training of Your ML Models with Distributed Training on Amazon SageMaker.
Use the Deep Learning Framework of Your Choice with Amazon SageMaker.
Learn to Analyze the Co-Relation in Your Datasets Using Feature Engineering with Amazon SageMaker.
Get Scheduled Predictions on Your ML Models with Amazon SageMaker Batch Transform.
Build Highly Accurate Training Datasets at Reduced Costs with Amazon SageMaker Ground Truth.
Organize, Track, and Evaluate ML Training Runs With Amazon SageMaker Experiments.
Automatically Build, Train, and Tune ML Models With Amazon SageMaker Autopilot.
Deploy Multiple ML Models on a Single Endpoint Using Multi-model Endpoints on Amazon SageMaker.
Amazon SageMaker Studio - A Fully Integrated Development Environment For Machine Learning.
Analyze, Detect, and Get Alerted on Problems With Training Runs Using Amazon SageMaker Debugger.


Taught by

Amazon web services

Tags

Related Courses

Custom and Distributed Training with TensorFlow
DeepLearning.AI via Coursera
Architecting Production-ready ML Models Using Google Cloud ML Engine
Pluralsight
Building End-to-end Machine Learning Workflows with Kubeflow
Pluralsight
Deploying PyTorch Models in Production: PyTorch Playbook
Pluralsight
Inside TensorFlow
TensorFlow via YouTube