Data science with jupyter (Record no. 10055)
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                            | 000 -LEADER | |
|---|---|
| fixed length control field | nam a22 4500 | 
| 005 - DATE AND TIME OF LATEST TRANSACTION | |
| control field | 20191114115237.0 | 
| 008 - FIXED-LENGTH DATA ELEMENTS--GENERAL INFORMATION | |
| fixed length control field | 191114b xxu||||| |||| 00| 0 eng d | 
| 020 ## - INTERNATIONAL STANDARD BOOK NUMBER | |
| International Standard Book Number | 9789388511377 | 
| 040 ## - CATALOGING SOURCE | |
| Transcribing agency | AIKTC-KRRC | 
| 041 ## - LANGUAGE CODE | |
| Language code of text/sound track or separate title | ENG | 
| 082 ## - DEWEY DECIMAL CLASSIFICATION NUMBER | |
| Edition number | DDC23 | 
| Classification number | 005.1 | 
| Item number | GUP | 
| 100 ## - MAIN ENTRY--PERSONAL NAME | |
| 9 (RLIN) | 10436 | 
| Personal name | Gupta, Prateek | 
| 245 ## - TITLE STATEMENT | |
| Title | Data science with jupyter | 
| Remainder of title | : Master data science skills with easy-to-follow python examples | 
| 250 ## - EDITION STATEMENT | |
| Edition statement | 1st | 
| 260 ## - PUBLICATION, DISTRIBUTION, ETC. | |
| Place of publication, distribution, etc. | New Delhi | 
| Name of publisher, distributor, etc. | BPB Publication | 
| Date of publication, distribution, etc. | 2019 | 
| 300 ## - PHYSICAL DESCRIPTION | |
| Extent | xii, 309p. | 
| Other physical details | | Binding - Paperback | | 
| Dimensions | 24*19 cm | 
| 520 ## - SUMMARY, ETC. | |
| Summary, etc. | Modern businesses are awash with data, making data-driven decision-making tasks increasingly complex. As a result, relevant technical expertise and analytical skills are required to do such tasks. This book aims to equip you with just enough knowledge of Python in conjunction with skills to use a powerful tool such as Jupyter Notebook in order to succeed in the role of a data scientist.<br/><br/> The book starts with a brief introduction to the world of data science and the opportunities you may come across along with an overview of the key topics covered in the book. You will learn how to setup Anaconda installation which comes with Jupyter and preinstalled Python packages. Before diving in to several supervised, unsupervised and other machine learning techniques, you’ll learn how to use basic data structures, functions, libraries and packages required to import, clean, visualize and process data. Several machine learning techniques such as regression, classification, clustering, time-series etc have been explained with the use of practical examples and by comparing the performance of various models. | 
| Expansion of summary note | <br/>By the end of the book, you will come across few case studies to put your knowledge to practice and solve real-life business problems such as building a movie recommendation engine, classifying spam messages, predicting the ability of a borrower to repay loan on time and time series forecasting of housing prices. Remember to practice additional examples provided in the code bundle of the book to master these techniques.<br/><br/> Audience<br/><br/>The book is intended for anyone looking for a career in data science, all spiring data scientists who want to learn the most powerful programming language in Machine Learning or working professionals who want to switch their career in Data Science. While no prior knowledge of Data Science or related technologies is assumed, it will be helpful to have some programming experience.<br/><br/> <br/><br/>Key Features<br/><br/> Acquire Python skills to do independent data science projects<br/> Learn the basics of linear algebra and statistical science in Python way.<br/> Understand how and when they're used in data science<br/> Build predictive models, tune their parameters and analyze performance in few steps.<br/> Cluster, transform, visualize, and extract insights from unlabeled datasets<br/> Learn how to use matplotlib and seaborn for data visualization<br/> Implement and save machine learning models for real-world business scenarios.<br/><br/> <br/><br/>Table of Contents<br/><br/>1 ) Data Science Fundamentals<br/><br/>2 ) Installing Software and Setting up<br/><br/>3 ) Lists and Dictionaries<br/><br/>4 ) Function and Packages<br/><br/>5 ) NumPy Foundation<br/><br/>6 ) Pandas and Data-frame<br/><br/>7 ) Interacting with Databases<br/><br/>8 ) Thinking Statistically in Data Science<br/><br/>9 ) How to import data in Python?<br/><br/>10 ) Cleaning of imported data<br/><br/>11 ) Data Visualisation<br/><br/>12 ) Data Pre-processing<br/><br/>13 ) Supervised Machine Learning<br/><br/>14 ) Unsupervised Machine Learning<br/><br/>15 ) Handling Time-Series Data<br/><br/>16 ) Time-Series Methods<br/><br/>17 ) Case Study | 
| 650 #0 - SUBJECT ADDED ENTRY--TOPICAL TERM | |
| 9 (RLIN) | 4622 | 
| Topical term or geographic name entry element | Computer Engineering | 
| 942 ## - ADDED ENTRY ELEMENTS (KOHA) | |
| Source of classification or shelving scheme | Dewey Decimal Classification | 
| Koha item type | Books | 
| Withdrawn status | Lost status | Source of classification or shelving scheme | Damaged status | Not for loan | Collection code | Home library | Current library | Shelving location | Date acquired | Source of acquisition | Cost, normal purchase price | Total Checkouts | Full call number | Barcode | Date last seen | Cost, replacement price | Price effective from | Koha item type | 
|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
| Dewey Decimal Classification | Reference | School of Engineering & Technology | School of Engineering & Technology | Reference Section | 25/11/2019 | 2 | 799.20 | 005.1 GUP | E15174 | 04/07/2025 | 999.00 | 25/11/2019 | Books | 
