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Gensim for Natural Language Processing: Definitive Reference for Developers and Engineers

Idiomas
Inglês
Format
Categoria

Não-ficção

"Gensim for Natural Language Processing"

"Gensim for Natural Language Processing" is an authoritative and comprehensive guide that explores the Gensim library's pivotal role in the rapidly evolving field of Natural Language Processing (NLP). Beginning with an in-depth examination of Gensim’s origins, architecture, and integration within the wider Python scientific ecosystem, the book methodically contrasts Gensim with other leading NLP frameworks. Readers are introduced to state-of-the-art techniques for text preprocessing, corpus management, and the design of efficient, memory-conscious NLP pipelines suited for both research and production at scale.

A significant portion of the text delves into the foundational and advanced components of vector space models, topic modeling, and word as well as document embeddings. With exhaustive coverage of algorithms such as Bag-of-Words, TF-IDF, Latent Semantic Analysis, Latent Dirichlet Allocation, and the full suite of embeddings including Word2Vec, FastText, and Doc2Vec, practitioners gain both theoretical understanding and practical skills. Each concept is reinforced with detailed discussions on model evaluation, scaling strategies, interpretability, and robust hyperparameter optimization, ensuring reproducible and industrial-grade NLP workflows.

Moving beyond core text applications, the book addresses the challenges and opportunities presented by multimodal, domain-specific, and emerging NLP use cases. Readers will learn how to integrate Gensim with diverse data sources, leverage its strengths in constructing modular pipelines, and maintain production systems emphasizing observability, security, and ethical AI. Forward-looking chapters guide readers through custom model extensions, parallel computation, responsible NLP practices, and seamless integration with knowledge graphs and large language models, making this volume essential for practitioners and researchers seeking to leverage Gensim for innovative and responsible NLP solutions.

© 2025 HiTeX Press (Ebook): 6610000807789

Data de lançamento

Ebook: 22 de maio de 2025