Hey all, as a company that creates dev tools for AI/ML projects, we spend a ton of time helping our users with the more basic aspects of designing, building, and deploying their applications.
After going through this a few (hundred?) times, we decided to create a guide to machine learning system design and make it available to everyone.
This guide covers the following:
- Setting up your machine learning development environment 
- Preparing, processing and working with machine learning data 
- Selecting features and predictors for your machine learning model construction 
- Tools for developing your machine learning system 
- Utilities for your machine learning system 
- Testing your machine learning application 
- Project reproducibility and version control 
8.Getting to production
One note, it is gated with just email, as we don't want it scraped
You can access the full guide here https://learning.jozu.com
 
 
              
 
                       
    
Top comments (4)
Thank you for this post! This is top client ask today... please clarify best practices..
I liked the explanation, several interesting points. I miss the full content within the post, instead of leaving the page I'm on to see on another platform.
Unfortunately, it's a lot of text (like 15 pages!)
It would be very useful, besides creating 15 new posts, to draw more attention from Dev.To readers.