Learn advanced machine learning techniques and cloud deployment in this comprehensive course designed for data professionals. Through hands-on projects, you'll learn to build, evaluate, and deploy sophisticated machine learning models using AWS services, while leveraging AI tools to enhance your workflow.
This course is perfect for data analysts and scientists ready to advance their machine learning capabilities and gain practical experience with cloud computing. Starting with advanced ML concepts and progressing through AWS integration, you'll develop the technical expertise needed to implement enterprise-level data science solutions.
Upon completion, you'll be able to:
• Build and evaluate sophisticated machine learning models using advanced techniques
• Deploy scalable solutions using AWS SageMaker and related services
• Perform advanced feature engineering with AI assistance
• Implement time series analysis and unsupervised learning methods
• Create end-to-end machine learning pipelines in the cloud
Welcome to the innovative intersection of advanced machine learning techniques and cloud computing, where Amazon Web Services (AWS) transforms complex data science workflows into scalable, efficient solutions. In this foundational module, you'll master essential AWS services and learn how they integrate with machine learning processes. Working with real-world scenarios from InsightlySoft, you'll configure cloud environments, set up data storage solutions, and create analytical workflows using services like S3, Athena, and SageMaker AI. You'll develop practical skills in cloud-based data science that will immediately enhance your ability to build and deploy machine learning solutions at scale.
涵盖的内容
6个视频11篇阅读材料2个作业3个非评分实验室
显示有关单元内容的信息
6个视频•总计20分钟
Welcome to Advanced Data Science Techniques•2分钟
Day in the Life - An Interview With an Expert•5分钟
Machine Learning Process: From Start to Finish•3分钟
AWS Essentials for Data Science•3分钟
Setting Up S3, Glue and Athena for Data Analysis•3分钟
Navigating the SageMaker Interface•4分钟
11篇阅读材料•总计202分钟
Course Syllabus & Roadmap•30分钟
Course Resources: Datasets & Notebooks•10分钟
InsightlySoft Introduction•30分钟
Video Transcript Access•2分钟
Understanding the ML Process•30分钟
How Cloud Tools Help With ML•30分钟
Mapping AWS Services Across the Data Science Workflow•30分钟
AWS Components & Security Best Practices•10分钟
Leveraging AWS Athena, Glue, and S3 for Data Queries•10分钟
Setting Up SageMaker Unified Studio•10分钟
Overview of Related AWS Tools (EC2, RDS)•10分钟
2个作业•总计45分钟
Module 1 Graded Assessment•30分钟
Knowledge Check: AWS S3 and Athena Implementation•15分钟
3个非评分实验室•总计180分钟
Setting up Your AWS Free Account•60分钟
AWS S3 Setup Lab •60分钟
SageMaker AI Environment Setup & Basics•60分钟
Data Preparation and Supervised Learning
第 2 单元•小时 后完成
单元详情
In this comprehensive module on data preparation and supervised learning, you'll master essential techniques for cleaning and transforming data while building both regression and classification models. Working with real-world scenarios from InsightlySoft and SmartCity Solutions, you'll develop practical skills in predicting continuous outcomes and categorizing data, learning to evaluate model performance using industry-standard metrics. Through hands-on experience with Python libraries and machine learning algorithms, you'll gain the expertise to solve end-to-end business problems, from initial data preprocessing to final model deployment.
涵盖的内容
3个视频4篇阅读材料3个作业4个非评分实验室
显示有关单元内容的信息
3个视频•总计19分钟
Preparing Your Data for ML•6分钟
Regression Techniques in Python•7分钟
Building Classification Models•6分钟
4篇阅读材料•总计100分钟
Data Preparation Fundamentals for ML•30分钟
Connecting Technical Metrics to Business Impact•30分钟
Introduction to Classification Models•10分钟
Connecting Classification Metrics to Business Outcomes•30分钟
3个作业•总计60分钟
Module 2 Graded Assessment•30分钟
Knowledge Check: Regression Metrics•15分钟
Knowledge Check: Classification Metrics•15分钟
4个非评分实验室•总计240分钟
Data Preprocessing Lab•60分钟
Regression Modeling in Practice•60分钟
Classification Modeling in Practice•60分钟
Supervised Learning Challenge Lab•60分钟
Time Series Analysis and Unsupervised Learning
第 3 单元•小时 后完成
单元详情
In this module focused on time series analysis and unsupervised learning, you'll master techniques for forecasting trends and discovering hidden patterns in data. Working with real-world scenarios, you'll learn to implement ARIMA models and Prophet for time series predictions, while exploring clustering algorithms and dimensionality reduction methods for pattern recognition. Through hands-on practice with Python and AWS tools, you'll develop the skills to combine temporal forecasting with segmentation techniques, enabling data-driven decision making for business optimization. Upon completion, you'll be able to analyze time-indexed data, identify meaningful segments, and create integrated solutions that leverage both predictive and pattern-discovery approaches.
涵盖的内容
2个视频3篇阅读材料2个作业3个非评分实验室
显示有关单元内容的信息
2个视频•总计11分钟
Time Series Analysis in Python•7分钟
Clustering and PCA Techniques•4分钟
3篇阅读材料•总计90分钟
Time Series Concepts and ARIMA Modeling•30分钟
Advanced Machine Learning Models: Prophet and Others•30分钟
Evaluating Unsupervised Learning: Clustering and Dimensionality Reduction•30分钟
2个作业•总计45分钟
Module 3 Graded Assessment •30分钟
Knowledge Check: Time Series Techniques•15分钟
3个非评分实验室•总计180分钟
Time Series Forecasting Lab•60分钟
Unsupervised Learning Lab•60分钟
Unsupervised & Time Series Challenge Lab•60分钟
Model Enhancement and Optimization
第 4 单元•小时 后完成
单元详情
In this module, you'll learn to enhance model performance through AI-assisted feature engineering and systematic evaluation techniques. Working with real-world scenarios from InsightlySoft and SmartCity Solutions, you'll discover how to create effective features, use generative AI for automation, and optimize models through careful evaluation and tuning. Through hands-on practice with Python and AWS tools, you'll develop skills to improve model accuracy while maintaining efficiency within free tier limitations.
涵盖的内容
3个视频2篇阅读材料2个作业3个非评分实验室
显示有关单元内容的信息
3个视频•总计19分钟
Enhancing Your Features With AI•8分钟
Feature Selection•5分钟
Evaluating and Tuning Your Models•7分钟
2篇阅读材料•总计60分钟
AI‑Generated Feature Suggestions•30分钟
Overview of Evaluation Metrics and Tuning Concepts•30分钟
2个作业•总计60分钟
Module 4 Graded Assessment•30分钟
Knowledge Check: Model Evaluation Concepts•30分钟
3个非评分实验室•总计180分钟
Feature Engineering Lab•60分钟
Model Evaluation Lab•60分钟
Feature Engineering & Model Evaluation•60分钟
Model Deployment and Capstone Project
第 5 单元•小时 后完成
单元详情
In this comprehensive final module, you'll learn to deploy machine learning models using AWS SageMaker AI and apply all course techniques in an end-to-end capstone project. Working with PowerNova's smart energy data, you'll develop and deploy solutions that optimize residential energy consumption through AI-driven insights. Through hands-on practice with SageMaker AI deployment tools and real-world energy analytics scenarios, you'll create production-ready models that drive actionable insights for energy optimization. This module culminates in a capstone project that demonstrates your ability to solve complex business problems using advanced ML techniques and AWS cloud services.
涵盖的内容
2个视频4篇阅读材料1个作业2个非评分实验室
显示有关单元内容的信息
2个视频•总计8分钟
Basic Model Deployment in SageMaker AI•5分钟
Expert Interview on End‑to‑End Cloud ML Projects•3分钟
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What is an AWS-based machine learning workflow in this course?
In this course, it means moving a machine learning project through connected stages such as preparing data, building models, evaluating results, and deploying predictions with AWS support. The emphasis is on understanding how those stages fit together as one repeatable cloud workflow rather than as separate tasks.
When would you use an AWS-based machine learning workflow?
You would use it when a project needs more than a one-off model and instead needs a repeatable path from data preparation to later prediction use. In this course, that means organizing training, evaluation, and deployment in a consistent cloud-based process.
How does an AWS-based machine learning workflow fit into a broader workflow?
It sits in the build-and-test phase of data science work, linking data preparation and feature creation to model development, evaluation, and operational use. The course treats it as the structure that helps move from isolated analysis toward a connected end-to-end process.
How is an AWS-based machine learning workflow different from building a model in isolated steps?
A connected workflow is designed so storage, preparation, training, evaluation, and deployment support one another instead of being handled as disconnected activities. In this course, the difference matters because learners practice creating a repeatable process, not just finishing a single model run.
Do you need any prerequisites before learning an AWS-based machine learning workflow?
No deep AWS background is required, but it helps to be comfortable working with data and basic machine learning ideas. What matters more here is being able to follow data preparation, compare model behavior, and understand how project stages connect.
What tools, platforms, or methods are used in this course?
The course uses AWS as the main platform, especially cloud services for storing data, querying it, and developing models in the cloud. You also work with Python-based data science tools and use AI assistance for feature engineering and model selection.
What specific tasks will you practice or complete in this course?
You practice preparing data, building and evaluating models, exploring time-based and pattern-finding analyses, and refining features with AI assistance. You also organize cloud workflows for training and batch prediction so the work can move from analysis into a usable end-to-end process.