Designing Machine Learning Systems
by Chip Huyen
Many tutorials show you how to develop ML systems from ideation to deployed models. But with constant changes in tooling, those systems can quickly become outdated. Without an intentional design to hold the components together, these systems will become a technical liability, prone to errors and be quick to fall apart.…
35 AI-mapped connections to other books on Hikara
Books that ECHO Designing Machine Learning Systems
Reads that harmonize with similar ideas, themes, or philosophies.
Machine Learning Algorithms in Depth
Vadim Smolyakov
Engineering MLOps
Emmanuel Raj
Build a Career in Data Science
Emily Robinson, Jacqueline Nolis
Practical Statistics for Data Scientists
Peter Bruce, Andrew Bruce, Peter Gedeck
Applied Machine Learning
Jason Hodson
Scaling Machine Learning with Spark
Adi Polak
Machine Learning for Tabular Data
Mark Ryan, Luca Massaron
Python for Data Analysis
Wes McKinney
Books that BRIDGE from Designing Machine Learning Systems
Cross-domain reads that transfer ideas into new fields.
Practical MLOps
Noah Gift, Alfredo Deza
The Data Warehouse Toolkit
Ralph Kimball, Margy Ross
Practical SQL, 2nd Edition
Anthony DeBarros
Think Like a Data Scientist
Brian Godsey
Python Crash Course, 3rd Edition
Eric Matthes
Deep Learning from Scratch
Seth Weidman
Learn Docker in a Month of Lunches, Second Edition
Elton Stoneman
R for Data Science
Hadley Wickham, Mine Çetinkaya-Rundel, Garrett Grolemund
Hands-On Machine Learning with Scikit-Learn and PyTorch
Aurélien Géron
Fundamentals of Data Engineering
Joe Reis, Matt Housley
Find Connections in Your Own Library
Import your Goodreads CSV in seconds. Hikara's AI will map ECHOES, CHALLENGES, and BRIDGES across your reading history.