Amazon SageMaker: Build an Object Detection Model Using Images Labeled with Ground Truth

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Amazon SageMaker: Build an Object Detection Model Using Images Labeled with Ground Truth provided by AWS Skill Builder is a comprehensive online course, which lasts for 1-2 hours worth of material. Upon completion of the course, you can receive an e-certificate from AWS Skill Builder. The course is taught in Englishand is Free Certificate. Visit the course page at AWS Skill Builder for detailed price information.

Overview
  • In this course we’ll join Dr. Denis Batalov, worldwide AI/ML Tech Leader, as he shows you how to implement a machine learning pipeline using Amazon SageMaker and Amazon SageMaker Ground Truth. First you will create a labeled dataset, then you’ll create a training job to train your object detection model, and finally you will use Amazon SageMaker to create and update your model.


    Intended Audience

    This course is intended for:

    • Developers and data scientists who want to create machine learning pipelines with Amazon SageMaker using the Sagemaker SDK and python.
    • Developers and data scientists who want to use Amazon SageMaker Ground Truth to create their own labeled datasets.


    Course Objectives

    In this course, you will learn how to:

    • Train a machine learning model using images labeled by Amazon SageMaker Ground Truth
    • Use Amazon SageMaker Ground Truth to identify the exact location of bees on individual images in a dataset
    • Train the object detection model using Amazon SageMaker in-built algorithms
    • Use an automated hyperparameter tuning job to find an optimal set of hyperparameters


    Prerequisites

    We recommend that attendees of this course have the following prerequisites:

    • A basic understanding Amazon SageMaker (https://aws.amazon.com/sagemaker/)
    • A basic understanding of the python programming language with various libraries like Pandas, NumPy, SageMaker, and Boto3


    Delivery Method

    This course is delivered through:

    • Digital training


    Duration

    • 70 minutes


    Course Outline

    This course covers the following concepts:

    • Downloading data
    • Running a labeling job
    • Training a model
    • Deploying a model
    • Hyperparameters/automated model tuning
    • Examining hyperparameter optimization results
    • Replacing a machine learning production model