000 04176cam a2200301 i 4500
003 SA-RiNAUS
005 20241124172956.0
008 070119s2024 ii g b 001 0 eng d
020 _a9789355517036
040 _aSA-RiNAUS
_bara
_cSA-RiNAUS
_erda
082 0 0 _a006.3
_221
_bP P L
100 1 _aPadman, Pratheerth
_eauthor.
_944091
245 0 0 _aLearn Data Science from Scratch :
_bMastering ML and NLP with Python in a step-by-step approach /
_cby Pratheerth Padman.
264 1 _aDelhi, India :
_b‎BPB Publications,
_c2024.
300 _a385 pages :
_billustrations ;
_c24 cm
500 _aمقررات دراسية لطلاب الجامعة 2024.
504 _aIncludes bibliographical references and index.
505 0 _a 1. Unraveling the Data Science Universe: An Introduction 2. Essential Python Libraries and Tools for Data Science 3. Statistics and Probability Essentials for Data Science 4. Data Mining Expedition: Web Scraping and Data Collection Techniques 5. Painting with Data: Exploration and Visualization 6. Data Alchemy: Cleaning and Preprocessing Raw Data 7. Machine Learning Magic: An Introduction to Predictive Modeling 8. Exploring Regression: Linear, Logistic, and Advanced Methods 9. Unveiling Patterns with k-Nearest Neighbors and Naïve Bayes 10. Exploring Tree-Based Models: Decision Trees to Gradient Boosting 11. Support Vector Machines: Simplifying Complexity 12. Dimensionality Reduction: From PCA to Advanced Methods 13. Unlocking Unsupervised Learning 14. The Essence of Neural Networks and Deep Learning 15. Word Play: Text Analytics and Natural Language Processing 16. Crafting Recommender Systems 17. Data Storage Mastery: Databases and Efficient Data Management 18. Data Science in Action: A Comprehensive End-to-end Project
520 0 _a ● Complete guide to master data science basics. ● Practical and hands-on examples in ML, deep learning, and NLP. ● Drive innovation and improve decision making through the power of data. Description Learn Data Science from Scratch equips you with the essential tools and techniques, from Python libraries to machine learning algorithms, to tackle real-world problems and make informed decisions. This book provides a thorough exploration of essential data science concepts, tools, and techniques. Starting with the fundamentals of data science, you will progress through data collection, web scraping, data exploration and visualization, and data cleaning and pre-processing. You will build the required foundation in statistics and probability before diving into machine learning algorithms, deep learning, natural language processing, recommender systems, and data storage systems. With hands-on examples and practical advice, each chapter offers valuable insights and key takeaways, empowering you to master the art of data-driven decision making. By the end of this book, you will be well-equipped with the essential skills and knowledge to navigate the exciting world of data science. You will be able to collect, analyze, and interpret data, build and evaluate machine learning models, and effectively communicate your findings, making you a valuable asset in any data-driven environment. What you will learn ● Master key data science tools like Python, NumPy, Pandas, and more. ● Build a strong foundation in statistics and probability for data analysis. ● Learn and apply machine learning, from regression to deep learning. ● Expertise in NLP and recommender systems for advanced analytics. ● End-to-end data project from data collection to model deployment, with planning and execution. Who this book is for This book is ideal for beginners with a basic understanding of programming, particularly in Python, and a foundational knowledge of mathematics. It is well-suited for aspiring data scientists and analysts.
650 4 _a Machine learning.
_944092
650 4 _aNeural networks (Computer science)
_930334
650 4 _aArtificial intelligence.
_92900
650 4 _aPython (Computer program language)
942 _2ddc
_cBK
999 _c34895
_d34894