Machine Learning at Scale: Efficient AI Solutions with Big Data

Machine Learning at Scale: Efficient AI Solutions with Big Data

ParAnand Vemula

Habituellement imprimé en 3-5 jours ouvrés
Machine Learning at Scale: Efficient AI Solutions with Big Data" explores the challenges and techniques of building and deploying machine learning systems capable of handling massive datasets and complex models. It begins by establishing the foundations of scalable ML, covering the evolution from Big Data to AI-first, modern data engineering practices like data lakes and feature stores, and efficient algorithms including distributed training and federated learning. The book then transitions to practical implementation, detailing how to scale data preparation and feature engineering, optimize large model training and evaluation using techniques like AutoML and model compression, and implement MLOps for streamlined deployment and monitoring. It addresses crucial aspects of operationalizing ML, including CI/CD pipelines, model serving strategies, and drift detection. Finally, the book delves into advanced and emerging topics: scaling deep learning architectures like transformers and LLMs, multimodal learning, and graph neural networks. It concludes with a discussion of responsible AI, covering bias mitigation, fairness, privacy, and the ethical implications of large-scale ML. The future of ML at scale is explored through the lens of emerging hardware, the convergence of cloud and edge computing, and the evolving role of ML in shaping society and industry.

Détails

Date de publication
Jan 13, 2025
Langue
English
Catégorie
Informatique & internet
Copyright
Tous droits réservés - Licence de copyright standard
Contributeurs
Par (auteur): Anand Vemula

Caractéristiques

Pages
74
Type de reliure
Livre à couverture souple Livre à couverture souple
Couleur de l’intérieur
Couleur
Dimensions
Lettre US (8,5 x 11 po / 216 x 279 mm)

Mots-clés

Notes & Avis