08-03-2024 11:13 AM - edited 08-03-2024 11:28 AM
For a UK Government Agency, I made a Comprehensive presentation titled " Feature Engineering for Data Engineers: Building Blocks for ML Success". I made an article of it in Linkedlin together with the relevant GitHub code. In summary the code delves into the critical steps of feature engineering, demonstrating how to handle missing values, encode categorical data, and prepare numerical features for modelling. By employing techniques like mean imputation and one-hot encoding, we establish a solid foundation for training complex models such as Variational Autoencoders (VAEs). This comprehensive approach empowers data scientists and data engineers to extract meaningful insights and build high-performing machine learning pipelines.
The full post is here
Feature Engineering for Data Engineers: Building Blocks for ML Success | LinkedIn
09-15-2024 11:48 PM
Hi,
Excellent presentation and article! Your insights on feature engineering and practical code examples are incredibly useful for building strong ML models. Thanks for sharing!
Thanks,
Anushree
09-15-2024 11:48 PM
Hi,
Excellent presentation and article! Your insights on feature engineering and practical code examples are incredibly useful for building strong ML models. Thanks for sharing!
Thanks,
Anushree
09-17-2024 04:16 AM
Many thanks for your kind words Anushree. Much appreciated.
Join a Regional User Group to connect with local Databricks users. Events will be happening in your city, and you won’t want to miss the chance to attend and share knowledge.
If there isn’t a group near you, start one and help create a community that brings people together.
Request a New Group