I absolutely love genetic algorithms.

At university we evolved pilots for the classic moon lander game.

The genome was a collection of instructions like turn left, turn right, accelerate, decelerate.

Each generation you test all of them in the game then “breed” the most successful. Essentially take half of eachs genome and apply some mutations.

Eventually you end up with one that just manoeuvres perfectly onto the landing pad.

It’s just fascinating watching them gradually get better.

We also played around with NEAT which uses evolutionary algorithms to create neural networks by changing their structure and weights.

Just a really awesome topic.

Create a post

Welcome to the main community in programming.dev! Feel free to post anything relating to programming here!

Cross posting is strongly encouraged in the instance. If you feel your post or another person’s post makes sense in another community cross post into it.

Hope you enjoy the instance!

Rules

Rules

  • Follow the programming.dev instance rules
  • Keep content related to programming in some way
  • If you’re posting long videos try to add in some form of tldr for those who don’t want to watch videos

Wormhole

Follow the wormhole through a path of communities !webdev@programming.dev



  • 1 user online
  • 1 user / day
  • 1 user / week
  • 1 user / month
  • 1 user / 6 months
  • 1 subscriber
  • 1.21K Posts
  • 17.8K Comments
  • Modlog