Python for Computer Science & Data Science: Programming with AI, Big Data, and Cloud, Summaries of Programming Languages

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Typology: Summaries

2018/2019

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DS 14. IBM Watson® and
Cognitive Computing
DS Intro: Time Series and
Simple Linear Regression
DS 16. Deep Learning
Convolutional and Recurrent
Neural Networks; Reinforcement
Learning in the Exercises
CS and DS Other Topics Blog
CS 11. Computer Science
Thinking: Recursion,
Searching, Sorting and Big O
DS 15. Machine Learning:
Classification, Regression
and Clustering
CS 10. Object-Oriented
Programming
DS 13. Data Mining Twitter®
Sentiment Analysis, JSON and
Web Services
CS 1. Introduction to
Computers and Python
DS 12. Natural Language
Processing (NLP)
Web Scraping in the Exercises
DS 17. Big Data: Hadoop®,
Spark™, NoSQL and IoT
CS 2. Introduction to
Python Programming
DS Intro: Basic Descriptive Stats
CS 3. Control Statements and
Program Development
DS Intro: Measures of Central
Tendency—Mean, Median, Mode
CS 4. Functions
DS Intro: Basic Statistics—
Measures of Dispersion
CS 5. Lists and Tuples
DS Intro: Simulation and
Static Visualization
CS 7. Array-Oriented
Programming with NumPy
High-Performance NumPy Arrays
DS Intro:
Pandas Series and DataFrames
CS 9. Files and
Exceptions
DS Intro: Loading Datasets from
CSV Files into Pandas DataFrames
CS 8. Strings: A Deeper Look
Includes Regular Expressions
DS Intro: Pandas,
Regular Expressions and
Data Wrangling
DS Intro: AI—at the
Intersection of CS and DS
CS: Python
Fundamentals Quickstart
CS: Python Data Structures,
Strings and Files
CS: Python
High-End Topics
AI, Big Data and Cloud
Case Studies
PART 1 PART 2 PART 3 PART 4
1. Chapters 1–11 marked CS are
traditional Python programming
and computer-science topics.
2. Light-tinted bottom boxes in
Chapters 1–10 marked DS Intro
are brief, friendly introductions
to data-science topics.
3. Chapters 12–17 marked DS are
Python-based, AI, big data and
cloud chapters, each containing
several full-implementation
studies.
4. Functional-style programming
is integrated book wide.
5. Preface explains the dependen-
cies among the chapters.
6. Visualizations throughout.
7. CS courses may cover more of
the Python chapters and less
of the DS content. Vice versa for
Data Science courses.
8. We put Chapter 5 in Part 1. It’s
also a natural fit with Part 2.
CS 6. Dictionaries and Sets
DS Intro: Simulation and
Dynamic Visualization
Intro to Python® for Computer Science and Data Science
Learning to Program with AI, Big Data and the Cloud
by Paul Deitel & Harvey Deitel
PyCDS_titlepages.fm Page i Wednesday, January 30, 2019 4:27 PM

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DS 14. IBM Watson® and

Cognitive Computing

DS Intro: Time Series and

Simple Linear Regression

DS 16. Deep Learning

Convolutional and Recurrent

Neural Networks; Reinforcement

Learning in the Exercises

CS and DS Other Topics Blog

CS 11. Computer Science

Thinking: Recursion,

Searching, Sorting and Big O

DS 15. Machine Learning:Classification, Regression

and Clustering

CS 10. Object-Oriented

Programming

DS 13. Data Mining Twitter®

Sentiment Analysis, JSON and

Web Services

CS 1. Introduction to

Computers and Python

DS 12. Natural Language

Processing (NLP)

Web Scraping in the Exercises DS 17. Big Data: Hadoop®,

Spark™, NoSQL and IoT

CS 2. Introduction to Python Programming

DS Intro: Basic Descriptive Stats

CS 3. Control Statements and

Program Development

DS Intro: Measures of Central

Tendency—Mean, Median, Mode

CS 4. Functions

DS Intro: Basic Statistics—

Measures of Dispersion

CS 5. Lists and Tuples DS Intro: Simulation and

Static Visualization

CS 7. Array-Oriented

Programming with NumPy

High-Performance NumPy Arrays

DS Intro:

Pandas Series and DataFrames

CS 9. Files and

Exceptions

DS Intro: Loading Datasets from

CSV Files into Pandas DataFrames

CS 8. Strings: A Deeper Look

Includes Regular Expressions

DS Intro: Pandas,

Regular Expressions and

Data Wrangling

DS Intro:

AI—at the

Intersection of CS and DS

CS: Python

Fundamentals Quickstart

CS: Python Data Structures,

Strings and Files

CS: Python

High-End Topics

AI, Big Data and Cloud

Case Studies

PART 1

PART 2

PART 3

PART 4

1. Chapters 1–11 marked

CS

are

traditional

Python

programming

and

computer-science

topics.

2. Light-tinted bottom boxes in

Chapters 1–10 marked

DS Intro

are

brief, friendly introductions

to data-science topics

3. Chapters 12–17 marked

DS

are

Python-based, AI, big data andcloud

chapters, each containing

several full-implementationstudies

Functional-style programming is integrated book wide.

5. Preface explains the dependen-

cies among the chapters.

Visualizations

throughout.

CS courses

may cover more of

the Python chapters and lessof the DS content. Vice versa for Data Science courses

8. We put Chapter 5 in Part 1. It’s

also a natural fit with Part 2.

Questions?

[email protected]

CS 6. Dictionaries and Sets

DS Intro: Simulation and

Dynamic Visualization

Intro to Python® for Computer Science and Data Science

Learning to Program with AI, Big Data and the Cloud

by Paul Deitel & Harvey Deitel