Automated Machine Learning With Autogluon Library In Python
Published 4/2023
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
Language: English | Size: 1.97 GB | Duration: 4h 51m
Published 4/2023
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
Language: English | Size: 1.97 GB | Duration: 4h 51m
Discover how to easily automate entire machine learning pipelines with the extremely powerful Autogluon library from AWS
What you'll learn
Understand the basics of the Autogluon Python library and its capabilities for automating machine learning tasks.
Learn how to install and set up the Autogluon Python library in your local environment.
Develop skills in data preparation and cleaning processes that are critical for successful machine learning outcomes using Autogluon.
Discover best practices for selecting and configuring machine learning models to achieve optimal results with minimal effort.
Explore how to use Autogluon to create high-accuracy models for image classification tasks, including object detection, segmentation, and classification.
Understand how to use Autogluon to perform natural language processing (NLP) tasks such as sentiment analysis.
Learn how to train and deploy time series models using Autogluon to make accurate predictions for future events or trends.
Gain hands-on experience in using Autogluon to analyze tabular data and build predictive models for business applications and financial forecasting.
Requirements
Some Python experience required.
Previous machine learning experience helpful, but no required.
Description
Welcome to our online course on Autogluon! Are you tired of spending countless hours performing repetitive and time-consuming tasks when it comes to machine learning? Do you want to automate your machine learning tasks and achieve strong predictive performance in your applications with minimal effort? Look no further than Autogluon. Our comprehensive online course is designed to provide you with the skills and knowledge necessary to use the Autogluon Python library for automating machine learning tasks. With just a few lines of code, you can train and deploy high-accuracy machine learning and deep learning models on image, text, time series, and tabular data. Throughout the course, you will learn how to install and set up the Autogluon Python library in your local or cloud-based environment. You will also develop skills in data preparation and cleaning processes that are critical for successful machine learning outcomes using Autogluon. Additionally, we will cover best practices for selecting and configuring machine learning models to achieve optimal results with minimal effort. Our course will also take a deep dive into using Autogluon to create high-accuracy models for image classification tasks, including object detection, segmentation, and classification. You will also learn how to use Autogluon to perform natural language processing (NLP) tasks such as sentiment analysis, language translation, and named entity recognition. But that's not all! We will also cover how to train and deploy time series models using Autogluon to make accurate predictions for future events or trends. You'll gain hands-on experience in using Autogluon to analyze tabular data and build predictive models for business applications and financial forecasting. By the end of this course, you will have developed skills in model interpretation and evaluation techniques to assess the accuracy and reliability of machine learning models created using Autogluon. You'll be able to apply the knowledge gained from this course to real-world scenarios, such as developing predictive models for customer churn, fraud detection, or personalized recommendations. Our course is designed for data scientists, machine learning engineers, and software developers who are looking to automate their machine learning tasks and achieve strong predictive performance in their applications. Prior experience with Python programming and machine learning concepts is recommended but not required. Enroll today in our comprehensive online course and learn how to use Autogluon to automate your machine learning tasks and achieve strong predictive performance in your applications with minimal effort.
Overview
Section 1: Course Overview and Introduction
Lecture 1 Course Downloads and Files
Lecture 2 Course Welcome
Lecture 3 Course Curriculum Overview
Lecture 4 AutoGluon Overview
Section 2: Tabular Data - Classification and Regression
Lecture 5 Introduction to Tabular Data Section
Lecture 6 OPTIONAL: Supervised Learning Overview
Lecture 7 AutoGluon Classification Part One: Data and Split
Lecture 8 AutoGluon Classification Part Two: Training the Model
Lecture 9 OPTIONAL: Train Test Splits and Cross-Validation
Lecture 10 AutoGluon Classification Part Three: Validation
Lecture 11 AutoGluon Classification Part Four: Interpretability
Lecture 12 OPTIONAL: Classification Metrics
Lecture 13 AutoGluon Regression: Data, Split, Training, and Validation
Lecture 14 OPTIONAL: Regression Metrics
Lecture 15 AutoGluon Fit Parameters: Inference Constraints and Manual Hyperparameters
Lecture 16 Advanced AutoGluon: Presets and Deployment
Lecture 17 Advanced AutoGluon: Custom Feature Engineering Pipeline
Section 3: Multi-Modal Datasets
Lecture 18 Introduction to Multi-Modal Data Problems
Lecture 19 Optional: Download Trained Book Rating Prediction Model Here
Lecture 20 Natural Language - MultiClass Problem - Part One
Lecture 21 Natural Language - MultiClass Problem - Part Two
Lecture 22 Optional: Download Trained Sentiment Analysis Model
Lecture 23 MultiModalPredictor on Binary Class with Natural Language Text
Section 4: Time Series Forecasting
Lecture 24 Introduction to Time Series
Lecture 25 Overview of Time Series in AutoGluon
Lecture 26 Single Variate Time Series Forecasting in AutoGluon - Part One
Lecture 27 Single Variate Time Series Forecasting in AutoGluon - Part Two
Lecture 28 Single Variate Time Series Forecasting in AutoGluon - Part Three
Lecture 29 Known Covariate Time Series Forecasting in AutoGluon - Part One
Lecture 30 Known Covariate Time Series Forecasting in AutoGluon - Part Two
Lecture 31 Past Covariate Time Series Forecasting
Data scientists, machine learning engineers, and software developers who are looking to automate their machine learning tasks