Practical Machine Learning

Explore data. Build ETL workflows. Train models. Deploy models. Learn to have an impact using machine learning.

Ratings: 5.00 / 5.00




Description

This course is designed for learners from all backgrounds, primarily focusing on beginners.

The course covers many of the cornerstones of practical machine learning, including:

  • Industry Use Cases and Employer Expectations: Explore a variety of industry applications for machine learning and understand what companies are looking for in ML roles.

  • Exploring Real-World Data: Gain hands-on experience with data sourced from a real-world scenario, learning to navigate and interpret complex datasets.

  • Building Data Workflows: Understand the architecture of data pipelines, including typical tools and techniques used in the industry.

  • Model Development and Evaluation: Learn how to construct machine learning models and critically assess their performance and effectiveness. Iterate upon models with feature engineering and hyperparameter tuning.

  • Model Deployment and Monitoring: Master the skills necessary to deploy models into a production environment and continuously monitor their performance.

Value to Learners:

  • Applicability of Skills: The skills taught are directly transferable to real-world scenarios, equipping learners with the tools needed for a career in machine learning.

  • Comprehensive Understanding: From data handling to model deployment, this course offers a holistic view of what it takes to be a machine learning engineer.

  • Hands-On Experience: With a focus on practical exercises and real-world examples, learners will gain firsthand experience that goes beyond theoretical knowledge.

What You Will Learn!

  • Define the roles and responsibilities of a machine learning engineer
  • Work with datasets using pandas and identify key insights
  • Leverage data pipeline tools to create data workflows
  • Train models using libraries like scikit learn, xgboost, and PyTorch
  • Learn about MLOps and deploy models using backend technology like Triton Inference Server

Who Should Attend!

  • Software engineers who are interested in machine learning
  • Python developers who want to dabble in machine learning