Data scientists spend only 20 percent of their time on building machine learning algorithms and 80 percent of their time finding, cleaning, and reorganizing huge amounts of data. That mostly happen because many use graphical tools such as Excel to process their data. However, if you use a programming language such as Python you can drastically reduce the time it takes for processing your data and make them ready for use in your project. This course will show how Python can be used to manage, clean, and organize huge amounts of data.
This course assumes you have basic knowledge of variables, functions, for loops, and conditionals. In the course you will be given access to a million records of raw historical weather data and you will use Python in every single step to deal with that dataset. That includes learning how to use Python to batch download and extract the data files, load thousands of files in Python via pandas, cleaning the data, concatenating and joining data from different sources, converting between fields, aggregating, conditioning, and many more data processing operations. On top of that, you will also learn how to calculate statistics and visualize the final data. The course also covers a series of exercises where you will be given some sample data then practice what you learned by cleaning and reorganizing those data using Python.
Instructor Details
Courses : 6
Specification: Data Processing with Python
|
12 reviews for Data Processing with Python
Add a review Cancel reply
This site uses Akismet to reduce spam. Learn how your comment data is processed.
Price | $13.99 |
---|---|
Provider | |
Duration | 4 hours |
Year | 2019 |
Level | All |
Language | English |
Certificate | Yes |
Quizzes | Yes |
$19.99 $13.99
Ramesh Kumar –
The course content is very useful and the examples that are used are practical.
Alebrije –
It is not up to date, code and explanations are based on Python 3.4 where as of today there is Python 3.7 (Jan 2020). So as I have read in FAQ section there are some coding issues (using deprecated funtions for example). This might seem minor things but courses about Python should be updated regularly, not the specific case for this one. Instructor is good so maybe updating some coding and lectures will make the course more attractive for future students willing to learn Python from this course.
Maria Mazmanian –
Very good course with lots of exercises and examples. I enjoy learning Python. The instructor delivers very clearly and explains very well.
Sergio Yahni –
I am happy. The lecturer is clear it is easy to understand and provides useful examples that can be reproduces.
Brian Toy –
Very knowledgeable instructor. Clear and practical information, easy to follow and learn specific techniques and procedures.
Juan Pablo Alanis –
Esperaba m s del curso, no cumpli mis expectativas
Jorge Nunes –
Very Important Knowledge!
Daniel Chika –
very clear and concise
Aditya –
Experiencing severe video streaming issues. First video doesn’t play at all. My internet connection is perfectly OK but still facing problems.
Savahnna Cunningham –
Easily understandable, good content, perfect speed.
Ispahan Sarker –
Fantastic course and very much helpful
Pablo Aguilar –
exc