Machine Learning Pocket Reference
Working with Structured Data in Python
by Matt Harrison
Should I read this?
appears in Machine Learning.
With detailed notes, tables, and examples, this handy reference will help you navigate the basics of structured machine learning. Author Matt Harrison delivers a valuable guide that you can use for additional support during training and as a convenient resource when you dive into your next machine learning project.Ideal for programmers, data scient...
Looking for Kindle, hardcover, paperback, or audiobook editions?
Check formats, pricing, and current availability directly.
Why recommended
appears in Machine Learning.
Recommendation Signals
Recommendation proof is sourced from public posts, interviews, reading lists, and cited references.
No verified recommendation proof available yet.
Appears In

Not sure if this is the right fit?
Consider Life 3.0 by Max Tegmark. Recommended by 18 sources.
“Life 3.0 reads like a long, wide-ranging conversation with a physicist who loves big if-then thought experiments. The useful part is its panoramic sweep across possible AI futures—from job automation to cosmic colonization—forcing you to consider timelines you might otherwise avoid. The limitation is that the speculative breadth often outruns the depth; chapters can feel meandering, and some readers will find the cosmic-scale scenarios too detached from practical concerns, making it hard to ground in real urgency.”
Similar books

Life 3.0
Max Tegmark
Deep Learning
Ian Goodfellow
Data Science for Business
Foster Provost
Generative Deep Learning
David Foster
Forecasting
Rob Hyndman, George Athanasopoulos
Artificial Intelligence, and Machine Learning for Business
Steven Finlay
Fundamentals of Machine Learning for Predictive Data Analytics
John D. Kelleher
HandsOn Machine Learning with ScikitLearn, Keras, and TensorFlow
Aurélien GéronHow recommendation signals are reviewed
Each recommendation is collected from a public source — interviews, articles, or curated lists — and linked to its original URL. Books with many verifiable recommendations from respected people rank higher.
Machine Learning Pocket Reference
View on Amazon →