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Build An Aws Machine Learning Pipeline For Object Detection - AD-TEAM - 03-08-2025 ![]() Build An Aws Machine Learning Pipeline For Object Detection Published 3/2023 MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz Language: English | Size: 7.34 GB | Duration: 16h 18m Use AWS Step Functions + Sagemaker to Build a Scalable Production Ready Machine Learning Pipeline for Plastic Detection What you'll learn Learn how you can use Google's Open Images Dataset V7 to use any custom dataset you want Create Sagemaker Domains Upload and Stream data into you Sagemaker Environment Learn how to set up secure IAM roles on AWS Build a Production Ready Object detection Algorithm Use Pandas, Numpy for Feature and Data Engineering Understanding Object detection annotations Visualising Images and Bounding Boxes with Matplotlib Learn how Sagemaker's Elastic File System(EFS) works Use AWS' built in Object detection detection algorithm with Transfer Learning How to set up Transfer Learning with both VGG-16 and ResNet-50 in AWS Learn how to save images to RecordIO format Learn what RecordIO format is Learn what .lst files are and why we need them with Object Detection in AWS Learn how to do Data Augmentation for Object detection Gain insights into how we can manipulate our input data with data augmentation Learn AWS Pricing for SageMaker, Step Functions, Batch Transformation Jobs, Sagemaker EFS, and many more Learn how to choose the ideal compute(Memory, vCPUs, GPUS and kernels) for your Sagemaker tasks Learn how to install dependencies to a Sagemaker Notebook Setup Hyperparameter Tuning Jobs in AWS Set up Training Jobs in AWS Learn how to Evaluate Object detection models with mAP(mean average precision) score Set up Hyperparameter tuning jobs with Bayesian Search Learn how you can configure Batch Size, Epochs, optimisers(Adam, RMSProp), Momentum, Early stopping, Weight decay, overfitting prevention and many more in AWS Monitor a Training Job in Real time with Metrics Use Cloudwatch to look at various logs How to Test your model in a Sagemaker notebook Learn what Batch Transformation is Set up Batch Transformation Jobs How to use Lambda functions Saving outputs to S3 bucket Prepare Training and Test Datasets Data Engineering How to build Complex Production Ready Machine Learning Pipelines with AWS Step Functions Use any custom dataset to build an Object detection model Use AWS Cloudformation with AWS Step Functions to set up a Pipeline Learn how to use Prebuilt Pipelines to Configure to your own needs Learn how you can Create any Custom Pipelines with Step Functions(with GUI as well) Learn how to Integrate Lambda Functions with AWS Step Functions Learn how to Create and Handle Asynchronous Machine Learning Pipelines How to use Lambda to read and write from S3 AWS best practices Using AWS EventBridge to setup CRON jobs to tell you Pipeline when to Run Learn how to Create End-to-End Machine Learning Pipelines Learn how to Use Sagemaker Notebooks in Production and Schedule Jobs with them Learn Machine Learning Pipeline Design Create a MERN stack web app to interact with our Machine Learning Pipeline How to set up a production ready Mongodb database for our Web App Learn how to use React, Nextjs, Mongodb, ExpressJs to build a web application Create and Interact with JSON files Put Convolutional Neural Networks into Production Deep Learning Techniques How to clean up an AWS account after you are done Train Machine Learning models on AWS How to use AWS' GPUs to speed up Machine Learning Training jobs Learn what AWS Elastic Container Registry(ECS) is and how you can download Machine Learning Algorithms from it AWS Security Best practices Requirements Laptop with Internet Access AWS account Knowledge of Python and basic Machine Learning Spend 20-50 dollars on AWS if you want to follow along with me. Note that you can still follow along without having to pay any money Description Welcome to the ultimate course on creating a scalable, secure, complex machine learning pipeline with Sagemaker, Step Functions, and Lambda functions. In this course, we will cover all the necessary steps to create a robust and reliable machine learning pipeline, from data preprocessing to hyperparameter tuning for object detection.We will start by introducing you to the basics of AWS Sagemaker, a fully-managed service that provides developers and data scientists with the ability to build, train, and deploy machine learning models quickly and easily. You will learn how to use Sagemaker to preprocess and prepare your data for machine learning, as well as how to build and train your own machine learning models using Sagemaker's built-in algorithms.Next, we will dive into AWS Step Functions, which allow you to coordinate and manage the different steps of your machine learning pipeline. You will learn how to create a scalable, secure, and robust machine learning pipeline using Step Functions, and how to use Lambda functions to trigger your pipeline's different steps.In addition, we will cover deep learning related topics, including how to use neural networks for object detection, and how to use hyperparameter tuning to optimize your machine learning models for different use cases.Finally, we will walk you through the creation of a web application that will interact with your machine learning pipeline. You will learn how to use React, Next.js, Express, and MongoDB to build a web app that will allow users to submit data to your pipeline, view the results, and track the progress of their jobs.By the end of this course, you will have a deep understanding of how to create a scalable, secure, complex machine learning pipeline using Sagemaker, Step Functions, and Lambda functions. You will also have the skills to build a web app that can interact with your pipeline, opening up new possibilities for how you can use your machine learning models to solve real-world problems. Overview Section 1: What we are Building Lecture 1 Let's look at our End Project Section 2: Getting Started with AWS and Getting our Dataset Lecture 2 Source Code for the Course Lecture 3 Setting up IAM User Lecture 4 Clarification about AWS S3 Lecture 5 Getting Data for our Project Lecture 6 Getting dataset Part 1 Lecture 7 Getting dataset Part 2 Lecture 8 Getting dataset Part 3 Lecture 9 Getting dataset Part 4 Section 3: Setting up AWS SageMaker Lecture 10 Create SageMaker Domain Lecture 11 Create SageMaker Studio Notebook Lecture 12 Learning how to Stop and Start SageMaker Notebooks Lecture 13 Restarting our SageMaker Studio Notebook Kernel Lecture 14 Upload and Extract Data in SageMaker Lecture 15 Deleting Unused Files Section 4: Exploratory Data Analysis Lecture 16 Loading and Understanding our Data Lecture 17 Counting total Images and getting Image ids Lecture 18 Getting Classname Identifier Lecture 19 Looking at Random Samples from our Dataframe Lecture 20 Understanding Annotations Lecture 21 Visualize Random Images Part 1 Lecture 22 Visualise Random Images Part 2 Lecture 23 Matplotlib difference between plt.show() and plt.imshow() Lecture 24 Visualising Multiples Images at Once Lecture 25 Correcting our Function Lecture 26 Visualising Bounding Boxes Part 1 Lecture 27 Visualising Bounding Boxes Part 2 (Theory Lesson) Lecture 28 Visualising Random Images with Bounding Boxes Part 1 Lecture 29 Wrong Print Statement Lecture 30 Visualising Random Images with Bounding Boxes Part 2 Lecture 31 Read this Lesson if you have issues with Data Visualization Section 5: Cleaning and Splitting our Data Lecture 32 Clean our Train and Validation Dataframes Lecture 33 Split Dataframe into Test and Train Lecture 34 Get Images IDs Lecture 35 Splitting IDs Theory Lesson Lecture 36 Explanation Regarding Next video Lecture 37 Moving Images to Appropriate Folders Lecture 38 Count how many Train and Test Images we have Lecture 39 Verifying that our Images have been moved Properly Part 1 Lecture 40 Verifying that our Images have been moved Properly Part 2 Section 6: Date Engineering Lecture 41 Using Mxnet Lecture 42 Additional Info regarding RecordIO format Lecture 43 Using Mxnet RecordIO Lecture 44 Correction Regarding Label width Lecture 45 Preparing Dataframes to RecordIO format Part 1 Lecture 46 Preparing Dataframes to RecordIO format Part 2 Lecture 47 Moving Images To Correct Directory Lecture 48 Explanation Regarding the Previous Video Lecture 49 Verifying that all Images have been Moved Properly Lecture 50 Read Before Proceeding to the next Lecture Lecture 51 Creating Production .lst files (Optional) Section 7: Data Augmentation Lecture 52 Data Augmentation Theory Lecture 53 Augmenting a Random Image Lecture 54 Moving Images to new Folder structure Lecture 55 Visualising Random Augmented Images Part 1 Lecture 56 Visualising Random Augmented Images Part 2 Lecture 57 Read this Lesson if you have issues visualising your images Lecture 58 Creating Data Augmentation Function Part 1 Lecture 59 Creating Data Augmentation Function Part 2 Lecture 60 Checking Image Counts Before running the Function Lecture 61 Correctional Video regarding our Function Lecture 62 Augmenting Test Dataset and Creating test .lst Files Lecture 63 Augmenting Train Dataset and Creating .lst File Part 1 Lecture 64 Augmenting Train Dataset and Creating .lst File Part 2 Lecture 65 Verifying that Data Augmentation has Worked Section 8: Setting up and Creating our Training Job Lecture 66 Increasing Service Quotas Lecture 67 Installing dependencies and Packages Lecture 68 Creating our RecordIO Files Lecture 69 Uploading our RecordIO data to our S3 bucket Lecture 70 Downloading Object Detection Algorithm from AWS ECR Lecture 71 Setting up our Estimator Object Lecture 72 Setting up Hyperparameters Lecture 73 Additional Information for Hyperparameter Tuning in AWS Lecture 74 Setting up Hyperparameter Ranges Lecture 75 Setting up Hyperparameter Tuner Lecture 76 Additional Information about mAP( mean average precision) Lecture 77 Starting the Training Job Part 1 Lecture 78 Starting the Training Job Part 2 Lecture 79 More on mAP Scores Lecture 80 Monitoring the Training Job Lecture 81 Looking at our Finished Hyperparameter Tuning Job Section 9: Analysing Training Job Results Lecture 82 Deploying our Model in a Notebook Lecture 83 Creating Visualization Function for Inferences Lecture 84 Testing our Endpoint Part 1 Lecture 85 Testing out Endpoint Part 2 Lecture 86 Testing our Endpoint from Random Images from the Internet Section 10: Setting up Batch Transformation Lecture 87 Setting up Batch Transformation Job locally first Lecture 88 Starting our Batch Transformation Job Lecture 89 Analysing our Batch Transformation Job Lecture 90 Visualising Batch Transformation Results Lecture 91 Look at this lesson if you have trouble with the Visualisations Section 11: Setting Up Our Machine Learning Pipeline Lecture 92 Read this Before Watching the Next Lesson Lecture 93 Setting up AWS Step Function Lecture 94 Verify that CloudFormation has worked Lecture 95 Configure Batch Transform Lambda Part 1 Lecture 96 Configure Batch Transform Lambda Part 2 Lecture 97 Create Check Batch Transform Job Lambda Lecture 98 Fixing typos and Syntax Erros Lecture 99 JSON output Format Lecture 100 Creating Cleaning Batch output Lambda Function Part 1 Lecture 101 Creating Cleaning Batch output Lambda Function Part 2 Lecture 102 Configuring our Step Function Part 1 Lecture 103 Configuring our Step Function Part 2 Lecture 104 Configuring our Step Function Part 3 Lecture 105 Upload Test Data to S3 Lecture 106 Testing our Step Function Lecture 107 Fixing Errors Lecture 108 Testing our Step Function with the Corrections Lecture 109 Verifying that our Step Function Ran Successfully Lecture 110 Donwloading our JSON file from S3 Lecture 111 Using Event Bridge to set up Cron Job for our Machine Learning Pipeline Lecture 112 Verify that the Cron Job works Lecture 113 Verifying that our Pipeline Ran Successfully Lecture 114 Setting up Production Notebook Lecture 115 Extending Our Machine Learning Pipeline Lecture 116 Coding our Process Job Notebook Part 1 Lecture 117 Coding our Process Job Notebook Part 2 Lecture 118 Coding our Process Job Notebook Part 3 Lecture 119 Coding our Process Job Notebook Part 4 Lecture 120 Verifying that the Images have been Saved Properly Lecture 121 Productionizing our Notebook Part 1 Lecture 122 Productionizing our Notebook Part 2 Lecture 123 Verify that the Entire Machine Learning Pipeline works Lecture 124 Deleted Unused items from Sagemaker EFS Section 12: Creating our Web Application Lecture 125 Clone the Web Application from Github Lecture 126 Setup MongoDB Lecture 127 Connect to MongoDB and get AWS Credentials Lecture 128 Configuring Env file Lecture 129 Install Node modules Lecture 130 MERN app Walkthrough Part 1 Lecture 131 MERN app Walkthrough Part 2 Lecture 132 MERN app Walkthrough Part 3 Lecture 133 Output Images Explanation Lecture 134 MERN app Walkthrough Part 4 Lecture 135 MERN app Walkthrough Part 5 Section 13: Outro Lecture 136 Clean Up Resources Lecture 137 Congratulations For developers who want to take their machine learning skills to the next lever by being able to not only build machine learning models, but also incorporate them in a complex, secure production ready machine learning pipeline ![]() TurboBit RapidGator AlfaFile FileFactory |