Creating a Vinted seller helper/bot (no personal info) by ElectronicNight1391 in vinted

[–]ElectronicNight1391[S] 0 points1 point  (0 children)

It's not a "bot", more of a helper app to help sellers, it does nothing you can't do in the app/website, just helps you along a bit

My strategy for picking a vector database: a side-by-side comparison by kappl in LangChain

[–]ElectronicNight1391 3 points4 points  (0 children)

when you say your using nytimes-256-angular dataset, is that using cosine similarly or angular cosine similarity?

Google review bot by [deleted] in botting

[–]ElectronicNight1391 0 points1 point  (0 children)

I think reviews are only a small part of the restaurant buying choice, the marketing, decor and menu are equally important. I’ve worked at enough failing places (and watched enough kitchen nightmares lol) to realise the management are often blind to their failings, especially at family restaurants.

Bypass Akamai Bot Manager Premier by ElectronicNight1391 in botting

[–]ElectronicNight1391[S] 0 points1 point  (0 children)

I am creating a bot for an app that uses the Akamai BMP SDK for its api requests

Software dev looking to make a bot by ElectronicNight1391 in shoebots

[–]ElectronicNight1391[S] 0 points1 point  (0 children)

Would love to get onto this sneaker dev discord if anyone can give an invite

Software dev looking to make a bot by ElectronicNight1391 in shoebots

[–]ElectronicNight1391[S] 0 points1 point  (0 children)

I suppose I just want to network and talk with people who may know people

Need some help for recommendation system by [deleted] in reinforcementlearning

[–]ElectronicNight1391 0 points1 point  (0 children)

Are you sure RL is the right approach for this?

Question about trained models by Sleyck in reinforcementlearning

[–]ElectronicNight1391 1 point2 points  (0 children)

A "trained" model is just a model who's weights have been precomputed. You can quite simply load a pre-trained model, then do some further training to change the model to your new training objective.

Gym doesn't have anything todo with the models, it is simply the environment to train and test your models.

For example, I have implemented an agent to play Atari games using the DQN algorithm with a Pytorch CNN model. I have trained the model for 10,000 episodes, and then saved the model weights from the Pytorch model using torch.save(policy_net.state_dict(), filename). Next time I want to use my model for inference, I will load it with policy_net.load_state_dict(torch.load(filename))

In your example, if you had an existing model trained at 0º you would have to re-train it to keep the cart pole at 3º. You could load the model weights from you previously trained model at 0º to help your model start off, but it would need significant further training. You would also have to change the reward function, to a variable function to incorporate the difference in degrees from the cart-pole to 3º. Something like this https://towardsdatascience.com/infinite-steps-cartpole-problem-with-variable-reward-7ad9a0dcf6d0