Title: Distributed Machine Learning Patterns, Author: Yuan Tang
Title: Learn Generative AI with PyTorch, Author: Mark Liu
Title: Ensemble Methods for Machine Learning, Author: Gautam Kunapuli
Title: Graph Algorithms for Data Science: With examples in Neo4j, Author: Tomaz Bratanic
Title: Multi-Agent Reinforcement Learning: Foundations and Modern Approaches, Author: Stefano V. Albrecht
Title: Graph Neural Networks in Action, Author: Keita Broadwater
Title: Fun Q: A Functional Introduction to Machine Learning in Q, Author: Nick Psaris
Title: Predictive Analytics with Microsoft Azure Machine Learning 2nd Edition, Author: Valentine Fontama
Title: Learning TensorFlow.js, Author: Gant Laborde
Title: Causal Inference for Data Science, Author: Aleix Ruiz de Villa Robert
Title: Computational Intelligence for Sustainable Transportation and Mobility: Volume 1, Author: Deepak Gupta
Title: Fundamentals of Machine Learning for Predictive Data Analytics, second edition: Algorithms, Worked Examples, and Case Studies, Author: John D. Kelleher
Title: Learning Theory from First Principles, Author: Francis Bach
Title: Machine Learning Projects for .NET Developers, Author: Mathias Brandewinder
Title: Machine Learning in Production: From Models to Products, Author: Christian Kastner
Title: Math and Architectures of Deep Learning, Author: Krishnendu Chaudhury
Title: TensorFlow in Action, Author: Thushan Ganegedara
Title: Modern Data Analytics in Excel: Using Power Query, Power Pivot, and More for Enhanced Data Analytics, Author: George Mount
Title: Outlier Detection in Python, Author: Brett Kennedy
Title: Tree-Based Machine Learning Methods in SAS Viya, Author: Sharad Saxena

Pagination Links