- Регистрация
- 27 Авг 2018
- Сообщения
- 37,653
- Реакции
- 538,411
- Тема Автор Вы автор данного материала? |
- #1
What you'll learn:
- Build a fully-functioning Python library similar to pandas that you can use to do data analysis
- Complete a large, comprehensive project
- Test-driven development with pytest
- Environment creation with conda
- Advanced Python topics such as special methods and property decorators
- Students must know the fundamentals of Python. This is an intermediate/advanced course.
- Must feel comfortable using and iterating through lists, tuples, sets, and dictionaries
- Exposure to numpy and pandas is helpful
This course focuses on developing software within the massive ecosystem of tools available in Python. There are 40 detailed steps that you must complete in order to finish the project. During each step, you will be tasked with writing some code that adds functionality to the library. In order to complete each step, you must pass the unit-tests that have already been written. Once you pass all the unit tests, the project is complete. The nearly 100 unit tests give you immediate feedback on whether or not your code completes the steps correctly.
There are many important concepts that you will learn while building Pandas Cub.
- Creating a development environment with conda
- Using test-driven development to ensure code quality
- Using the Python data model to allow your objects to work seamlessly with builtin Python functions and operators
- Build a DataFrame class with the following functionality:
- Select subsets of data with the brackets operator
- Aggregation methods - sum, min, max, mean, median, etc...
- Non-aggregation methods such as isna, unique, rename, drop
- Group by one or two columns to create pivot tables
- Specific methods for handling string columns
- Read in data from a comma-separated value file
- A nicely formatted display of the DataFrame in the notebook
This course is taught by expert instructor Ted Petrou, author of Pandas Cookbook, Master Data Analysis with Python, and Exercise Python.
Who this course is for:
- Students who understand the fundamentals of Python and are looking for a longer more comprehensive project covering advanced topics that they can immerse themselves in.
DOWNLOAD: