Data Analysis with Python Course - Numpy, Pandas, Data Visualization

Data Analysis with Python Course - Numpy, Pandas, Data Visualization

freeCodeCamp.org via freeCodeCamp Direct link

Notebook - First Steps with Python and Jupyter

4 of 69

4 of 69

Notebook - First Steps with Python and Jupyter

Class Central Classrooms beta

YouTube videos curated by Class Central.

Classroom Contents

Data Analysis with Python Course - Numpy, Pandas, Data Visualization

Automatically move to the next video in the Classroom when playback concludes

  1. 1 Course Introduction
  2. 2 Python Programming Fundamentals
  3. 3 Course Curriculum
  4. 4 Notebook - First Steps with Python and Jupyter
  5. 5 Performing Arithmetic Operations with Python
  6. 6 Solving Multi-step problems using variables
  7. 7 Combining conditions with Logical operators
  8. 8 Adding text using Markdown
  9. 9 Saving and Uploading to Jovian
  10. 10 Variables and Datatypes in Python
  11. 11 Built-in Data types in Python
  12. 12 Further Reading
  13. 13 Branching Loops and Functions
  14. 14 Notebook - Branching using conditional statements and loops in Python
  15. 15 Branching with if, else, elif
  16. 16 Non Boolean conditions
  17. 17 Iteration with while loops
  18. 18 Iteration with for loops
  19. 19 Functions and scope in Python
  20. 20 Creating and using functions
  21. 21 Writing great functions in Python
  22. 22 Local variables and scope
  23. 23 Documentation functions using Docstrings
  24. 24 Exercise - Data Analysis for Vacation Planning
  25. 25 Numercial Computing with Numpy
  26. 26 Notebook - Numerical Computing with Numpy
  27. 27 From Python Lists to Numpy Arrays
  28. 28 Operating on Numpy Arrays
  29. 29 Multidimensional Numpy Arrays
  30. 30 Array Indexing and Slicing
  31. 31 Exercises and Further Reading
  32. 32 Assignment 2 - Numpy Array Operations
  33. 33 100 Numpy Exercises
  34. 34 Reading from and Writing to Files using Python
  35. 35 Analysing Tabular Data with Pandas
  36. 36 Notebook - Analyzing Tabular Data with Pandas
  37. 37 Retrieving Data from a Data Frame
  38. 38 Analyzing Data from Data Frames
  39. 39 Querying and Sorting Rows
  40. 40 Grouping and Aggregation
  41. 41 Merging Data from Multiple Sources
  42. 42 Basic Plotting with Pandas
  43. 43 Assignment 3 - Pandas Practice
  44. 44 Visualization with Matplotlib and Seaborn
  45. 45 Notebook - Data Visualization with Matplotlib and Seaborn
  46. 46 Line Charts
  47. 47 Improving Default Styles with Seaborn
  48. 48 Scatter Plots
  49. 49 Histogram
  50. 50 Bar Chart
  51. 51 Heatmap
  52. 52 Displaying Images with Matplotlib
  53. 53 Plotting multiple charts in a grid
  54. 54 References and further reading
  55. 55 Course Project - Exploratory Data Analysis
  56. 56 Exploratory Data Analysis - A Case Study
  57. 57 Notebook - Exploratory Data Analysis - A case Study
  58. 58 Data Preparation and Cleaning
  59. 59 Exploratory Analysis and Visualization
  60. 60 Asking and Answering Questions
  61. 61 Inferences and Conclusions
  62. 62 References and Future Work
  63. 63 Setting up and running Locally
  64. 64 Project Guidelines
  65. 65 Course Recap
  66. 66 What to do next?
  67. 67 Certificate of Accomplishment
  68. 68 What to do after this course?
  69. 69 Jovian Platform

Never Stop Learning.

Get personalized course recommendations, track subjects and courses with reminders, and more.

Someone learning on their laptop while sitting on the floor.