
Applied Text Analysis with Python: Enabling Language Aware Data Products with Machine Learning
by: Benjamin Bengfort – Tony Ojeda – Rebecca Bilbro
ISBN-10: 1491963042
ISBN-13: 9781491963043
Edition 版本: 1
Publication Date 出版日期: 2017-05-25
Pages: 250
Book Description
The programming landscape of natural language processing has changed dramatically in the past few years. Machine learning approaches now require mature tools like Python’s scikit-learn to apply models to text at scale. This practical guide shows programmers and data scientists who have an intermediate-level understanding of Python and a basic understanding of machine learning and natural language processing how to become more proficient in these two exciting areas of data science.
This book presents a concise,focused,and applied approach to text analysis with Python,and covers topics including text ingestion and wrangling,basic machine learning on text,classification for text analysis,entity resolution,and text visualization. Applied Text Analysis with Python will enable you to design and develop language-aware data products.
You’ll learn how and why machine learning algorithms make decisions about language to analyze text; how to ingest,wrangle,and preprocess language data; and how the three primary text analysis libraries in Python work in concert. Ultimately,this book will enable you to design and develop language-aware data products.
Contents
Chapter 1. Text Ingestion and Wrangling
Chapter 2. Machine Learning on Text
解决验证以访问链接!进行人机身份验证
Applied Text Analysis with Python: Enabling Language Aware Data Products with Machine Learning
未经允许不得转载:finelybook » Applied Text Analysis with Python: Enabling Language Aware Data Products with Machine Learning
相关推荐
- Cloud Native Geospatial Analytics with Apache Sedona: A Hands-On Guide for Working with Large-Scale Spatial Data
- Applied AI for Enterprise Java Development: Leveraging Generative AI, LLMs, and Machine Learning in the Java Enterprise
- Advanced Snowflake: Processing Data, Developing Applications, and Deploying ML Models at Scale
- AI Systems Performance Engineering: Optimizing Model Training and Inference Workloads with GPUs, CUDA, and PyTorch
finelybook
