- Data Science A-z Download Torrent Download
- Science A-z Words
- Data Science A-z Download Torrent Full
- Data Science A To Z
- Learning A-z
Dec 3, 2018 - Machine Learning A-Z: Download Practice Datasets. Step-by-step-Blueprints-For-Building-Models.pdf Multiple-Linear-Regression.zip.
by(shelved 37 times as data-science)
avg rating 3.74 — 9,950 ratings — published 2014
by(shelved 36 times as data-science)
avg rating 3.71 — 6,873 ratings — published 2013
by(shelved 36 times as data-science)
avg rating 3.64 — 324 ratings — published 2011
by(shelved 35 times as data-science)
avg rating 4.28 — 191 ratings — published 2016
by(shelved 35 times as data-science)
avg rating 4.45 — 217 ratings — published 2013
by(shelved 33 times as data-science)
avg rating 3.79 — 3,763 ratings — published 2015
by(shelved 33 times as data-science)
avg rating 3.73 — 314 ratings — published 2011
by(shelved 30 times as data-science)
avg rating 4.28 — 440 ratings — published 2015
by(shelved 27 times as data-science)
avg rating 3.72 — 379 ratings — published 2012
by(shelved 26 times as data-science)
avg rating 3.83 — 145 ratings — published 2015
by(shelved 25 times as data-science)
avg rating 4.11 — 4,898 ratings — published 2013
by(shelved 24 times as data-science)
avg rating 4.38 — 362 ratings — published 2012
Data Science A-z Download Torrent Download
by(shelved 24 times as data-science)
avg rating 3.87 — 8,485 ratings — published 1954
by(shelved 24 times as data-science)
avg rating 4.22 — 6,973 ratings — published 1990
by(shelved 23 times as data-science)
avg rating 4.14 — 70 ratings — published 2014
by(shelved 23 times as data-science)
avg rating 3.64 — 246 ratings — published 2009
by(shelved 22 times as data-science)
avg rating 4.09 — 10,479 ratings — published 2015
by(shelved 21 times as data-science)
avg rating 4.35 — 189 ratings — published 2016
by(shelved 21 times as data-science)
avg rating 4.15 — 578 ratings — published 2009
by(shelved 21 times as data-science)
avg rating 4.20 — 396 ratings — published 1995
by(shelved 20 times as data-science)
avg rating 4.67 — 310 ratings — published
by(shelved 20 times as data-science)
avg rating 4.02 — 2,899 ratings — published 2015
by(shelved 20 times as data-science)
avg rating 4.15 — 428 ratings — published 2009
by(shelved 20 times as data-science)
avg rating 3.87 — 692 ratings — published 1999
by(shelved 20 times as data-science)
avg rating 3.65 — 267 ratings — published 2011
by(shelved 19 times as data-science)
avg rating 4.00 — 139 ratings — published
by(shelved 19 times as data-science)
avg rating 4.44 — 353 ratings — published 2012
by(shelved 19 times as data-science)
avg rating 3.89 — 1,027 ratings — published 2011
by(shelved 18 times as data-science)
avg rating 4.34 — 178 ratings — published 2015
by(shelved 18 times as data-science)
avg rating 3.86 — 101 ratings — published 2014
by(shelved 18 times as data-science)
avg rating 3.71 — 5,298 ratings — published 2007
Artificial Neural Networks and Deep Learning
More lists...
―
―
More quotes...
Clickable IMG
[]()
**Publisher: Packt Publishing - ebooks Account (May 29, 2015)
Language: English
Science A-z Words
ISBN-10: 1785284010
Data Science A-z Download Torrent Full
ISBN-13: 978-1785284014**
**
**
Key Features:
Data Science A To Z
*** Grow your data science expertise by filling your toolbox with proven strategies for a wide variety of cleaning challenges
Familiarize yourself with the crucial data cleaning processes, and share your own clean data sets with others
Complete real-world projects using data from Twitter and Stack Overflow**
**
**
Learning A-z
Book Description:
**Is much of your time spent doing tedious tasks such as cleaning dirty data, accounting for lost data, and preparing data to be used by others? If so, then having the right tools makes a critical difference, and will be a great investment as you grow your data science expertise.
The book starts by highlighting the importance of data cleaning in data science, and will show you how to reap rewards from reforming your cleaning process. Next, you will cement your knowledge of the basic concepts that the rest of the book relies on: file formats, data types, and character encodings. You will also learn how to extract and clean data stored in RDBMS, web files, and PDF documents, through practical examples.
At the end of the book, you will be given a chance to tackle a couple of real-world projects.**
**
**
What you will learn:
*** Understand the role of data cleaning in the overall data science process
Learn the basics of file formats, data types, and character encodings to clean data properly
Master critical features of the spreadsheet and text editor for organizing and manipulating data
Convert data from one common format to another, including JSON, CSV, and some special-purpose formats
Implement three different strategies for parsing and cleaning data found in HTML files on the Web
Reveal the mysteries of PDF documents and learn how to pull out just the data you want
Develop a range of solutions for detecting and cleaning bad data stored in an RDBMS
Create your own clean data sets that can be packaged, licensed, and shared with others
Use the tools from this book to complete two real-world projects using data from Twitter and Stack Overflow**
More at ibit.to
And ibit.uno
And ibit.ws