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AWS Certified Machine Learning - Specialty (MLS-C01)-2023
video

AWS Certified Machine Learning - Specialty (MLS-C01)-2023

by Alfredo Deza, Noah Gift
December 2022
2h 45m
English
Pragmatic AI Labs

Overview

AWS Certified Machine Learning - Specialty (MLS-C01)-2023

Learn to pass the AWS Certified Machine Learning - Specialty (MLS-C01) exam

This video series prepares you to pass the AWS Certified Machine Learning - Specialty (MLS-C01) exam. The AWS Certified Machine Learning - Specialty (MLS-C01) exam is a pass or fail exam. The exam is scored against a minimum standard established by AWS professionals who follow certification industry best practices and guidelines.

Domain 1: Data Engineering

  • 1.0 course intro
  • 1.1 technology prerequisite
  • 1.2 sagemaker studio lab
  • 1.3 learn aws cloudshell
  • 1.4 cloud developer workspace advantage
  • 1.5 prototyping ai apis aws cloudshell bash
  • 1.6 cloud9 with codewhisperer
  • 1.7 domain one intro
  • 1.8 data storage
  • 1.9 determine storage medium
  • 1.10 using s3 demo
  • 1.11 job styles batch vs streaming
  • 1.12 data ingestion pipelines
  • 1.13 aws batch demo
  • 1.14 step function demo

Domain 2: Exploratory Data Analysis

  • 2.0 domain intro

Sanitize and prepare data for modeling

  • 2.1 cleanup data
  • 2.2 scaling data
  • 2.3 labeling data
  • 2.4 mechanical turk labeling

Perform feature engineering

  • 2.5 identify extract features
  • 2.6 feature engineering concepts

Analyze and visualize data for machine learning

  • 2.7 graphing data
  • 2.9 clustering

Conclusion

  • 2.10 conclusion

Domain 3: Modeling

  • 3.0 domain intro

Frame business problems as machine learning problems

  • 3.1 when to use ml
  • 3.2 supervised vs unsupervized
  • 3.3 selection right ml solution

Select the appropriate model(s) for a given machine learning problem

  • 3.4 select models
  • 3.5 sagemaker canvas demo

Train machine learning models

  • 3.6 train test split
  • 3.7 optimization
  • 3.8 compute choice

Perform hyperparameter optimization

  • 3.14 neural network architecture

Evaluate machine learning models

  • 3.18 overfitting vs underfitting
  • 3.19 selecting metrics
  • 3.22 compare models experiment tracking

Conclusion

  • 3.23 Conclusion

Domain 4: Machine Learning Implementation and Operations

  • 4.0 course intro

Build machine learning solutions for performance, availability, scalability, resiliency, and fault

  • 4.1 logging monitoring
  • 4.2 multiple regions
  • 4.3 reproducible workflow
  • 4.4 aws flavored devops

Recommend and implement the appropriate machine learning services and features for a given

  • 4.5 provisioning ec2
  • 4.5 compute choices
  • 4.6 provisioning ebs
  • 4.7 aws ai ml services

Apply basic AWS security practices to machine learning solutions.

  • 4.9 plp aws lambda
  • 4.10 integrated security

Deploy and operationalize machine learning solutions

  • 4.13 sagemaker workflow
  • 4.14 doing predictions with sagemaker canvas
  • 4.16 retrain models

Conclusion

  • 5.0 course conclusion

Topics Covered Include:

  • Domain 1: Data Engineering
  • Domain 2: Exploratory Data Analysis
  • Domain 3: Modeling
  • Domain 4: Machine Learning Implementation and Operations
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Publisher Resources

ISBN: 10282022VIDEOPAIMLOtherOtherOther