دانلود کتاب Data Augmentation with Python: Enhance accuracy in Deep Learning with practical Data Augmentation for image, text, audio
by Duc Haba
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عنوان فارسی: تقویت داده ها با پایتون: افزایش دقت در یادگیری عمیق با افزایش عملی داده برای تصویر، متن، صدا |
دانلود کتاب
جزییات کتاب
Key Features
Practical Data augmentation techniques for images, texts, audio, and tabular data using real-world datasets
Beautiful, customized charts and infographics in full color for image, text, audio, and tabular data
Fully functional object-oriented code using open-source libraries on the Python Notebook for each chapter
Book Description
Data is paramount in an AI project, especially for Deep Learning and Generative AI. The forecasting accuracy relies on robust input datasets. The traditional method of acquiring additional data is difficult, expensive, and impractical. The only option to extend the dataset economically is data augmentation.
You will learn 20+ Geometric, Photometric, and Random erasing augmentation methods using seven real-world datasets for image classification and segmentation. In addition, we will review eight image augmentation open-source libraries, write OOP wrapper functions on the Python Notebooks, view color image augmentation effects, analyze the safe level and biases, and extend the chapter with Fun facts and Fun challenges.
You will discover 22+ character and word techniques for text augmentation using two real-world datasets and excerpts from four classic books. The advanced text augmentation chapter uses Machine Learning to extend the text dataset, such as Transformer, Word2vec, BERT, GPT-2, and others.
Similarly, the audio and tabular data chapters have real-world data, open-source libraries, amazing custom plots, Python Notebook, Fun facts, and Fun challenges.
By the end of the book, you will be proficient in image, text, audio, and tabular data augmentation techniques.
What you will learn
Write OOP Python code for image, text, audio, and tabular data
Access over 150,000 real-world datasets from the Kaggle websites
Analyze biases and safe parameters for each augmentation method
Visualize data using standard and exotics plots in color
Explore 32 advanced open-source augmentation libraries
Discover Machine Learning models, such as BERT and Transformer
Meet Pluto, an imaginary digital coding companion
Extend your learning with Fun facts and Fun challenges
Who This Book Is For
The book is for AI, Data scientists, and students interested in the AI discipline. You don’t need advanced AI or Deep Learning skills, but Python programming and familiarity with Jupyter Notebooks are required.