Let's talk about how you can build your first machine learning solution.
(And let's make sure we piss off half the industry in the process.)
Grab that ☕️, and let's go! 🧵
Contrary to popular belief, your first attempt at deploying machine learning should not use TensorFlow, PyTorch, Scikit-Learn, or any other fancy machine learning framework or library.
Your first solution should be a bunch of if-then-else conditions.
Regular, ol' conditions make for a great MVP solution to a machine learning wannabe system.
Pair those conditions with a human, and you have your first system in production!
Conditions handle what they can. Humans handle the rest.
I use Google Spreadsheets because it's in the cloud, and it's convenient for me. I don't have Microsoft Office installed, and as long as spreadsheets aren't crazy large, Google has what I need.
Here are the best 10 machine learning threads I posted in February.
They go all the way from beginner-friendly content to a broader dive into specific machine learning concepts and techniques.
I'd love to hear which one is your favorite!
🧵👇
Having to pick only 10 threads is painful. I always struggle to decide what should stay out of the list.
This, however, is a great incentive when I'm writing the content: I have to compete against myself to make sure what I write ends up being part of the list!
[2 / 13]
[Thread 1]
An explanation about three of the most important metrics we use: accuracy, precision, and recall.
More specifically, this thread shows what happens when we focus on the wrong metric using an imbalanced classification problem.
For the first time yesterday, I set up a project using a Development Container in Visual Studio Code and it immediately hit me:
✨ This is the way going forward! 🤯
If you haven't used this yet, here are some thoughts.
👇
The basic idea: you can run your entire development environment inside a container.
Every time you open your project, @code prepares and runs your container.
[2 / 7]
There are several advantages to this:
First of all, your entire team will run exactly the same environment, regardless of their preferred operating system, folder structure, existing libraries, etc.