Applied Machine Learning: A Practical Guide to Preparing Data, Selecting Algorithms, and Implementing Machine Learning Models in the Real World (Rheinwerk Computing) - Softcover

Jason Hodson

 
9781493227587: Applied Machine Learning: A Practical Guide to Preparing Data, Selecting Algorithms, and Implementing Machine Learning Models in the Real World (Rheinwerk Computing)

Synopsis

Put machine learning theory into practice with this hands-on guide! Learn about the real-world application of machine learning models by following three use cases, each with its own dataset. Get started with tools like GitHub and Anaconda, and then follow detailed instructions to prepare your data, pick your model, evaluate its results, and measure its impact over time. With sample code for download, this book has everything you need to implement machine learning models for your business!

  • Your practical introduction to applied machine learning
  • Select and implement machine learning models to solve business problems
  • Evaluate model results and monitor your models long term

Data Preparation
The first step is to understand your data. Learn about the different data sources, and then explore your data through visualization, descriptive statistics, and correlation analysis. Clean up your data by identifying errors, writing dummy code, and more.

Model Selection
Pick the machine learning model that suits your needs! Follow a model decision framework and master key algorithms: regression, decision trees, random forest, gradient boosting, clustering, and ensembling.

Evaluation and Iteration
Assess and improve the quality of your model! Apply a variety of validation metrics to your model and enhance interpretability to avoid black box code. Then iterate through feature engineering and adding or removing data.

Implementation and Monitoring
Your model is ready to go—now see it in action! Learn how to implement the model to make predictions, monitor its performance, and measure its impact for your business.

"synopsis" may belong to another edition of this title.

About the Author

Jason Hodson is currently working in a forecasting role that uses the full range of applied machine learning. He’s been working in data-centric roles for nearly a decade. In one of his roles, Jason wrote the end-to-end code for the company’s enterprise hiring manager and candidate experience process while also interfacing with the recruiting leaders to understand and leverage the survey. He’s helped build large data models and dashboards, while also helping nontechnical users to adopt and use them. Jason has been a technical mentor for a number of individuals in his various roles, where he’s helped them develop their analytics and programming skillset. The common thread across Jason’s career is his ability to be a translator for stakeholders, peers, and other junior team members. His learning journey also gives him a unique perspective, as he was self-taught in the analytics space before getting his master’s degree in business analytics. This has made his teaching more practical, allowing concepts to translate better (and faster) into the business world.

"About this title" may belong to another edition of this title.