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Image classification programs

Loren Pechtel

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Everything I'm finding is about training to your data set--which is not what I'm after. I just want the nature of the subject of the picture. Must run locally (the images do not leave the computer) and automated as there are upwards of 50,000 images to deal with.
 
Everything I'm finding is about training to your data set--which is not what I'm after. I just want the nature of the subject of the picture. Must run locally (the images do not leave the computer) and automated as there are upwards of 50,000 images to deal with.
So... Clip?

This is a pre-trained part of most genAI models, the CLIP layer.

Most models have such a layer built in. Flux uses something different (better), I think, but by in large you want to look into local "captioning" models (T5).

You're probably going to want something trained on the image subgenre you are trying to positively/negatively ID on specifically.

I think a lot of people like DeepBoru too.

What is your use case?
 
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Everything I'm finding is about training to your data set--which is not what I'm after. I just want the nature of the subject of the picture. Must run locally (the images do not leave the computer) and automated as there are upwards of 50,000 images to deal with.
So... Clip?

This is a pre-trained part of most genAI models, the CLIP layer.

Most models have such a layer built in. Flux uses something different (better), I think, but by in large you want to look into local "captioning" models (T5).

You're probably going to want something trained on the image subgenre you are trying to positively/negatively ID on specifically.

I think a lot of people like DeepBoru too.

What is your use case?
Sorting out things that might be relevant from the trash that accumulates on a phone. Even person/animal/thing sorting would be quite useful.
 
Everything I'm finding is about training to your data set--which is not what I'm after. I just want the nature of the subject of the picture. Must run locally (the images do not leave the computer) and automated as there are upwards of 50,000 images to deal with.
So... Clip?

This is a pre-trained part of most genAI models, the CLIP layer.

Most models have such a layer built in. Flux uses something different (better), I think, but by in large you want to look into local "captioning" models (T5).

You're probably going to want something trained on the image subgenre you are trying to positively/negatively ID on specifically.

I think a lot of people like DeepBoru too.

What is your use case?
Sorting out things that might be relevant from the trash that accumulates on a phone. Even person/animal/thing sorting would be quite useful.
Yeah, CLIP, DeepBoru, or T5 I think would be your best bet
 
Everything I'm finding is about training to your data set--which is not what I'm after. I just want the nature of the subject of the picture. Must run locally (the images do not leave the computer) and automated as there are upwards of 50,000 images to deal with.
So... Clip?

This is a pre-trained part of most genAI models, the CLIP layer.

Most models have such a layer built in. Flux uses something different (better), I think, but by in large you want to look into local "captioning" models (T5).

You're probably going to want something trained on the image subgenre you are trying to positively/negatively ID on specifically.

I think a lot of people like DeepBoru too.

What is your use case?
Sorting out things that might be relevant from the trash that accumulates on a phone. Even person/animal/thing sorting would be quite useful.
Yeah, CLIP, DeepBoru, or T5 I think would be your best bet
Which one should I try first?
 
Everything I'm finding is about training to your data set--which is not what I'm after. I just want the nature of the subject of the picture. Must run locally (the images do not leave the computer) and automated as there are upwards of 50,000 images to deal with.
So... Clip?

This is a pre-trained part of most genAI models, the CLIP layer.

Most models have such a layer built in. Flux uses something different (better), I think, but by in large you want to look into local "captioning" models (T5).

You're probably going to want something trained on the image subgenre you are trying to positively/negatively ID on specifically.

I think a lot of people like DeepBoru too.

What is your use case?
Sorting out things that might be relevant from the trash that accumulates on a phone. Even person/animal/thing sorting would be quite useful.
Yeah, CLIP, DeepBoru, or T5 I think would be your best bet
Which one should I try first?
Clip is easiest, T5 would be harder but give the best captions, I think. Maybe Forge would be a good place to start?
 
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