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Udemy – Build an AWS Machine Learning Pipeline for Object Detection
English | Tutorial | Size: 6 GB
Use AWS Step Functions + Sagemaker to Build a Scalable Production Ready Machine Learning Pipeline for Plastic Detection
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.
RAPIDGATOR:
rapidgator.net/file/b48bbb3d6798cc1d69304ffc628ed922/Udemy_-_Build_an_AWS_Machine_Learning_Pipeline_for_Object_Detection.part1.rar.html
rapidgator.net/file/1650060474f3e91ea426636092822ec8/Udemy_-_Build_an_AWS_Machine_Learning_Pipeline_for_Object_Detection.part2.rar.html
rapidgator.net/file/677bb9631213b6eeadc3474505671bc5/Udemy_-_Build_an_AWS_Machine_Learning_Pipeline_for_Object_Detection.part3.rar.html
rapidgator.net/file/b6bca8e75ee5336ae8f77e8bb61a811b/Udemy_-_Build_an_AWS_Machine_Learning_Pipeline_for_Object_Detection.part4.rar.html
rapidgator.net/file/29fcd6db001ee29c648481bd67344b12/Udemy_-_Build_an_AWS_Machine_Learning_Pipeline_for_Object_Detection.part5.rar.html
TURBOBIT:
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trbt.cc/vnyop5ji7s9r/Udemy_-_Build_an_AWS_Machine_Learning_Pipeline_for_Object_Detection.part5.rar.html