O’REILLY | Python for Data Science Complete Video Course Video Training [FCO]

seeders: 3
leechers: 2
Added 6 years ago by SunRiseZone in Other

Download Fast Safe Anonymous
movies, software, shows...

Files

O’REILLY | Python for Data Science Complete Video Course Video Training [FCO] (Size: 13.1 GB)
  01 - Python for Data Science Complete Video Course Video Training - Introduction.mp4 76.6 MB
  02 - Learning objectives.mp4 11.2 MB
  03 - 1.1 History of Python in data science.mp4 78.1 MB
  04 - 1.2 Overview of Python data science libraries.mp4 44.4 MB
  05 - 1.3 Future trends of Python in AI, ML, and data science.mp4 77.5 MB
  06 - Learning objectives.mp4 25 MB
  07 - 2.1 Create your first Colab document.mp4 328.8 MB
  08 - 2.2 Manage Colab documents.mp4 451.8 MB
  09 - 2.3 Use magic functions.mp4 156.3 MB
  1. (FreeTutorials.Us) Download Udemy Paid Courses For Free.url 307.2 B
  10 - 2.4 Understand compatibility with Jupyter.mp4 258.1 MB
  11 - Learning objectives.mp4 28.8 MB
  12 - 3.1 Write procedural code.mp4 112.9 MB
  13 - 3.2 Use simple expressions and variables.mp4 173.9 MB
  14 - 3.3 Work with the built-in types.mp4 66.6 MB
  15 - 3.4 Learn to Print.mp4 70.6 MB
  16 - 3.5 Perform basic math operations.mp4 167.1 MB
  17 - 3.6 Use classes and objects with dot notation.mp4 194.5 MB
  18 - Learning objectives.mp4 17 MB
  19 - 4.1 Use string methods.mp4 131.9 MB
  2. (FreeCoursesOnline.Me) Download Udacity, Masterclass, Lynda, PHLearn, Pluralsight Free.url 307.2 B
  20 - 4.2 Format strings.mp4 98.7 MB
  21 - 4.3 Manipulate strings - membership, slicing, and concatenation.mp4 136.7 MB
  22 - 4.4 Learn to use unicode.mp4 74.4 MB
  23 - Learning objectives.mp4 22.5 MB
  24 - 5.1 Use lists and tuples.mp4 370 MB
  25 - 5.2 Explore dictionaries.mp4 213.3 MB
  26 - 5.3 Dive into sets.mp4 83 MB
  27 - 5.4 Work with the numpy array.mp4 234.4 MB
  28 - 5.5 Use the Pandas DataFrame.mp4 116.8 MB
  29 - 5.6 Use the Pandas Series.mp4 71.6 MB
  3. (NulledPremium.com) Download Cracked Website Themes, Plugins, Scripts And Stock Images.url 204.8 B
  30 - Learning objectives.mp4 24 MB
  31 - 6.1 Convert lists to dicts and back.mp4 74.4 MB
  32 - 6.2 Convert dicts to Pandas Dataframe.mp4 104.6 MB
  33 - 6.3 Convert characters to integers and back.mp4 35.7 MB
  34 - 6.4 Convert between hexadecimal, binary, and floats.mp4 101.4 MB
  35 - Learning objectives.mp4 24.9 MB
  36 - 7.1 Learn to loop with for loops.mp4 44.9 MB
  37 - 7.2 Repeat with while loops.mp4 50.2 MB
  38 - 7.3 Learn to handle exceptions.mp4 111.9 MB
  39 - 7.4 Use conditionals.mp4 168.2 MB
  4. (FTUApps.com) Download Cracked Developers Applications For Free.url 204.8 B
  40 - Learning objectives.mp4 22.5 MB
  41 - 8.1 Write and use functions.mp4 206.5 MB
  42 - 8.2 Learn to use decorators.mp4 210.9 MB
  43 - 8.3 Compose closure functions.mp4 132.9 MB
  44 - 8.4 Use lambdas.mp4 106.2 MB
  45 - 8.5 Advanced Use of Functions.mp4 319 MB
  46 - Learning objectives.mp4 33.8 MB
  47 - 9.1 Learn NumPy.mp4 287.9 MB
  48 - 9.2 Learn SciPy.mp4 665 MB
  49 - 9.3 Learn Pandas.mp4 335.6 MB
  5. (Discuss.FTUForum.com) FTU Discussion Forum.url 307.2 B
  50 - 9.4 Learn TensorFlow.mp4 341.9 MB
  51 - 9.5 Use Seaborn for 2D plots.mp4 261.6 MB
  52 - 9.6 Use Plotly for interactive plots.mp4 262.1 MB
  53 - 9.7 Specialized Visualization Libraries.mp4 241.7 MB
  54 - 9.8 Learn Natural Language Processing Libraries.mp4 124.9 MB
  55 - Learning objectives.mp4 27.7 MB
  56 - 10.1 Understand functional programming.mp4 151.1 MB
  57 - 10.2 Apply functions to data science workflows.mp4 47.1 MB
  58 - 10.3 Use map_reduce_filter.mp4 95.2 MB
  59 - 10.4 Use list comprehensions.mp4 98.3 MB
  60 - 10.5 Use dictionary comprehensions.mp4 15.4 MB
  61 - Learning objectives.mp4 17.8 MB
  62 - 11.1 Use generators.mp4 69.4 MB
  63 - 11.2 Design generator pipelines.mp4 141.3 MB
  64 - 11.3 Implement lazy evaluation functions.mp4 59.1 MB
  65 - Learning objectives.mp4 21 MB
  66 - 12.1 Perform simple pattern matching.mp4 97.1 MB
  67 - 12.2 Use regular expressions.mp4 284.6 MB
  68 - 12.3 Learn text processing techniques - Beautiful Soup.mp4 87.6 MB
  69 - Learning objectives.mp4 18.2 MB
  70 - 13.1 Sort in Python.mp4 186.7 MB
  71 - 13.2 Create custom sorting functions.mp4 229.3 MB
  72 - 13.3 Sort in Pandas.mp4 302 MB
  73 - Learning objectives.mp4 22.1 MB
  74 - 14.1 Read and write files - file, pickle, CSV, JSON.mp4 214.7 MB
  75 - 14.2 Read and write with Pandas - CSV, JSON.mp4 336.5 MB
  76 - 14.3 Read and write using web resources (requests, boto, github).mp4 110.9 MB
  77 - 14.4 Use function-based concurrency.mp4 608.1 MB
  78 - Learning objectives.mp4 20.9 MB
  79 - 15.1 Share with Github.mp4 358.1 MB
  80 - 15.2 Create Kaggle Kernels.mp4 207.5 MB
  81 - 15.3 Collaborate with Colab.mp4 125.2 MB
  82 - 15.4 Post public graphs with Plotly.mp4 103.5 MB
  83 - Learning Objectives.mp4 28.7 MB
  84 - 16.1 PyTest.mp4 372.9 MB
  85 - 16.2 Visual Studio Code.mp4 364.6 MB
  86 - 16.3 Vim.mp4 136.8 MB
  87 - 16.4 Ludwig (Open Source AutoML).mp4 146.5 MB
  88 - 16.5 Sklearn Algorithm Cheatsheet.mp4 104.1 MB
  89 - 16.6 Recommendations.mp4 47.7 MB
  How you can help Team-FTU.txt 204.8 B
  ▲ 95 total files

Description


By Kennedy Behrman, Noah Gift
Publisher: Addison-Wesley Professional
Release Date: April 2019
ISBN: 9780135687253

Video Description

9+ Hours of Video Instruction

While there are resources for Data Science and resources for Machine Learning, there’s a distinct gap in resources for the precursor course to Data Science and Machine Learning. This complete video course fills that gap–it is specifically designed to prepare students to learn how to program for Data Science and Machine Learning with Python. This is the antidote to the over-complicated universe of these hot new, growing technologies. With this course, students will learn the fundamentals of Python and get prepared specifically for Data Science.
Noah Gift and Kennedy Behrman take students with zero programming background through enough Python to prepare them for their Data Science curriculum. Companies are looking for developers who can create insight-driven systems, as they are now becoming critical to business success. Very few professionals are adequately trained to handle both large-scale software engineering and Machine Learning/AI. This is an emerging field, and we are developing the training to meet this need in the marketplace.

Description

Notebook-based Data Science programming in Python is the emerging standard but there is a dearth of quality training material available for beginners. This 9-hour video, complete with interactive quizzes, provides foundational training on the Python language for the novice or beginner programmer looking to start in the Data Science field. The video serves as the 100-level course for a Data Science undergraduate or graduate program.

The course has been designed around Colab notebook-based learning. Students would be able to run every exercise shown in the videos. The material focuses on a smaller, easier subset of Python that is needed just for Data Science coding.

Skill Level

• Beginner

What You Will Learn

• Learn Google Colab notebook Data Science programming
• Learn the essential subset of Python used in Data Science
• Learn to manipulate data using popular Python libraries such as pandas and numpy
• Learn to apply Python Data Science recipes to real-world projects
• Learn functional programming fundamentals unique to Data Science

Who Should Take This Course

• Complete beginners to programming
• Statisticians and Analysts in the data industry looking to use Python for Data Science
• Sales, Product Managers, Data Analysts, Marketing who want to perform Data Science
• Software Engineers looking to level up into Data Science and Machine Learning tracks
• Students enrolled in a Data Science program

Course Requirements

• General computer skills are an asset, such as moving, copying, renaming, and deleting files on the computer they will be using
• Experience using text editors and/or spreadsheet applications
• Comfort using web browsers and search engines

Lessons

• Introduction
• Lesson 1: Python Past and Future
• Lesson 2: Introduction to Colab
• Lesson 3: Fundamentals of Python
• Lesson 4: Strings in Python
• Lesson 5: Python Data Structures
• Lesson 6: Data Conversion Recipes
• Lesson 7: Execution Control
• Lesson 8: Functions in Python
• Lesson 9: Data Science Libraries
• Lesson 10: Functional Programming
• Lesson 11: Lazy Evaluation
• Lesson 12: Pattern Matching
• Lesson 13: Sorting in Python
• Lesson 14: I/O in Python
• Lesson 15: Sharing Your Work
• Lesson 16: Case Studies
• Summary

About Pearson Video Training

Pearson publishes expert-led video tutorials covering a wide selection of technology topics designed to teach you the skills you need to succeed. These professional and personal technology videos feature world-leading author instructors published by your trusted technology brands: Addison-Wesley, Cisco Press, Pearson IT Certification, Prentice Hall, Sams, and Que Topics include: IT Certification, Network Security, Cisco Technology, Programming, Web Development, Mobile Development, and more. Learn more about Pearson Video training at http://www.informit.com/video.

Video Lessons are available for download for offline viewing within the streaming format. Look for the green arrow in each lesson.

For More Udemy Free Courses >>> https://ftuforum.com/
For more Lynda and other Courses >>> https://www.freecoursesonline.me/
Our Forum for discussion >>> https://discuss.ftuforum.com/




Related Torrents

torrent name size uploader age seed leech
4
1
1
6
0