Title: Practical MLOps: Operationalizing Machine Learning Models, Author: Noah Gift
Title: Practical Weak Supervision: Doing More with Less Data, Author: Wee Hyong Tok
Title: Hands-On Machine Learning with Scikit-Learn, Keras, and TensorFlow: Concepts, Tools, and Techniques to Build Intelligent Systems, Author: Aur lien G ron
Title: Machine Learning Projects for .NET Developers / Edition 1, Author: Mathias Brandewinder
Title: Machine Learning for Financial Risk Management with Python: Algorithms for Modeling Risk, Author: Abdullah Karasan
Title: Introduction to Machine Learning and Bioinformatics / Edition 1, Author: Sushmita Mitra
Title: Foundations of Inductive Logic Programming / Edition 1, Author: Shan-Hwei Nienhuys-Cheng
Title: Probabilistic Approaches for Social Media Analysis, Author: Yin Li Wu Liu & Zidu Yin & Zidu Kun Yue
Title: The Mathematics Of Generalization / Edition 1, Author: David. H Wolpert
Title: Meta-Learning: Strategies, Implementations, and Evaluations for Algorithm Selection: Volume 91 Dissertation in Artificial Intelligence, Author: Christian Rudolf Kopf
Title: Machine Learning Algorithms in Depth, Author: Vadim Smolyakov
Title: Data Science on AWS: Implementing End-to-End, Continuous AI and Machine Learning Pipelines, Author: Chris Fregly
Title: Machine Learning and Data Science Blueprints for Finance: From Building Trading Strategies to Robo-Advisors Using Python, Author: Hariom Tatsat
Title: Analytical Skills for AI and Data Science: Building Skills for an AI-Driven Enterprise, Author: Daniel Vaughan
Title: Applied Machine Learning and AI for Engineers: Solve Business Problems That Can't Be Solved Algorithmically, Author: Jeff Prosise
Title: Blueprints for Text Analytics Using Python: Machine Learning-Based Solutions for Common Real World (NLP) Applications, Author: Jens Albrecht
Title: The Kaggle Book: Data analysis and machine learning for competitive data science, Author: Konrad Banachewicz
Title: AI at the Edge: Solving Real-World Problems with Embedded Machine Learning, Author: Daniel Situnayake
Title: Practicing Trustworthy Machine Learning: Consistent, Transparent, and Fair AI Pipelines, Author: Yada Pruksachatkun
Title: Data Governance: The Definitive Guide: People, Processes, and Tools to Operationalize Data Trustworthiness, Author: Evren Eryurek

Pagination Links