Training scheduleJoin waiting list
Create Data Science Products
Just like ice cream, code from data scientists comes in different flavors, shapes and sizes. Creating Data Science products out of it, require understanding the various ingredients and data science techniques, without being an expert on any particular machine learning model. In this course you’ll be introduced to how to efficiently productionize data science models.
Clients we've helped
What you'll learn
- How to restructure a notebook into a Python package
- How to choose the right file format for storing your data
- How to create testable pipelines from code written by data scientists
- How to monitor models running in production
- Pandas dataframes
- Sklearn pipelines
- Data Serialization
- Hands-on code refactoring exercise
Data Engineering Learning Journey
This online course is perfect for
Data and Machine Learning Engineers who deal with productionizing Data Science models. Basic experience with Python is required. If you’re not quite there yet, we recommend the Python for Data Engineers course as preparation for this training.
What will you learn during the Create Data Science Products training?
After this training, you will have learned how to take data science models into production. You will understand the pandas and scikit-learn APIs and pipelines to effectively structure Python code. You will also learn about serializing data and monitoring models.
Tim van CannData Magician
Tim is often referred to as machine learning engineer. He has a background in Artificial Intelligence (MSc) and Software Development and as such enjoys building scalable machine learning solutions, feeling comfortable with both data science and data engineering.
His main focus is getting models to production to achieve business value.
Tim is often seen in the gym lifting weights. He also takes the occasional run, bike ride, swim, or crossfit WOD. Ask him anything about food and/or fitness and you’ll likely get a helpful answer.
The Right Format For Your Preferred Learning Style
It was a hands-on and tangible course. We could apply what we learned in a matter of minutes. The trainer did a great job of answering ad-hoc questions that complemented the material. We appreciated the fact that we could apply what we were taught directly to our company.
I liked every aspect of this training and would like to thank the trainers. They did an excellent job of explaining how to use Spark for data science. This is the fourth GoDataDriven training I’ve followed. All were great, but this was the best one so far.
Climbing a steep Python and Machine Learning curve in three days. This would have taken me months on my own.