|
Showing 1 - 3 of
3 matches in All Departments
Between major privacy regulations like the GDPR and CCPA and
expensive and notorious data breaches, there has never been so much
pressure for data scientists to ensure data privacy. Unfortunately,
integrating privacy into your data science workflow is still
complicated. This essential guide will give you solid advice and
best practices on breakthrough privacy-enhancing technologies such
as encrypted learning and differential privacy--as well as a look
at emerging technologies and techniques in the field. Practical
Data Privacy answers important questions such as: What do privacy
regulations like GDPR and CCPA mean for my project? What does
"anonymized data" really mean? Should I anonymize the data? If so,
how? Which privacy techniques fit my project and how do I
incorporate them? What are the differences and similarities between
privacy-preserving technologies and methods? How do I utilize an
open-source library for a privacy-enhancing technique? How do I
ensure that my projects are secure by default and private by
design? How do I create a plan for internal policies or a specific
data project that incorporates privacy and security from the start?
How do you take your data analysis skills beyond Excel to the next
level? By learning just enough Python to get stuff done. This
hands-on guide shows non-programmers like you how to process
information that's initially too messy or difficult to access. You
don't need to know a thing about the Python programming language to
get started. Through various step-by-step exercises, you'll learn
how to acquire, clean, analyze, and present data efficiently.
You'll also discover how to automate your data process, schedule
file- editing and clean-up tasks, process larger datasets, and
create compelling stories with data you obtain. Quickly learn basic
Python syntax, data types, and language concepts Work with both
machine-readable and human-consumable data Scrape websites and APIs
to find a bounty of useful information Clean and format data to
eliminate duplicates and errors in your datasets Learn when to
standardize data and when to test and script data cleanup Explore
and analyze your datasets with new Python libraries and techniques
Use Python solutions to automate your entire data-wrangling process
Successfully scrape data from any website with the power of Python
3.x About This Book * A hands-on guide to web scraping using Python
with solutions to real-world problems * Create a number of
different web scrapers in Python to extract information * This book
includes practical examples on using the popular and
well-maintained libraries in Python for your web scraping needs Who
This Book Is For This book is aimed at developers who want to use
web scraping for legitimate purposes. Prior programming experience
with Python would be useful but not essential. Anyone with general
knowledge of programming languages should be able to pick up the
book and understand the principals involved. What You Will Learn *
Extract data from web pages with simple Python programming * Build
a concurrent crawler to process web pages in parallel * Follow
links to crawl a website * Extract features from the HTML * Cache
downloaded HTML for reuse * Compare concurrent models to determine
the fastest crawler * Find out how to parse JavaScript-dependent
websites * Interact with forms and sessions In Detail The Internet
contains the most useful set of data ever assembled, most of which
is publicly accessible for free. However, this data is not easily
usable. It is embedded within the structure and style of websites
and needs to be carefully extracted. Web scraping is becoming
increasingly useful as a means to gather and make sense of the
wealth of information available online. This book is the ultimate
guide to using the latest features of Python 3.x to scrape data
from websites. In the early chapters, you'll see how to extract
data from static web pages. You'll learn to use caching with
databases and files to save time and manage the load on servers.
After covering the basics, you'll get hands-on practice building a
more sophisticated crawler using browsers, crawlers, and concurrent
scrapers. You'll determine when and how to scrape data from a
JavaScript-dependent website using PyQt and Selenium. You'll get a
better understanding of how to submit forms on complex websites
protected by CAPTCHA. You'll find out how to automate these actions
with Python packages such as mechanize. You'll also learn how to
create class-based scrapers with Scrapy libraries and implement
your learning on real websites. By the end of the book, you will
have explored testing websites with scrapers, remote scraping, best
practices, working with images, and many other relevant topics.
Style and approach This hands-on guide is full of real-life
examples and solutions starting simple and then progressively
becoming more complex. Each chapter in this book introduces a
problem and then provides one or more possible solutions.
|
|