LaureΞ·t Fainsin

1aurent

AI & ML interests

Generative Models connoisseur, Pathology enthusiast, Reproducibility advocate

Recent Activity

liked a model about 2 hours ago
black-forest-labs/FLUX.1-Fill-dev
liked a model about 2 hours ago
black-forest-labs/FLUX.1-Redux-dev
New activity about 5 hours ago
data-is-better-together-contributor/README

Articles

Organizations

1aurent's activity

posted an update 3 months ago
view post
Post
1066
Hey everyone πŸ€—!
We (finegrain) have created some custom ComfyUI nodes to use our refiners micro-framework inside comfy! πŸŽ‰

We only support our new Box Segmenter at the moment, but we're thinking of adding more nodes since there seems to be a demand for it. We leverage the new (beta) Comfy Registry to host our nodes. They are available at: https://registry.comfy.org/publishers/finegrain/nodes/comfyui-refiners. You can install them by running:
comfy node registry-install comfyui-refiners

Or by unzipping the archive you can download by clicking "Download Latest" into your custom_nodes comfy folder.
We are eager to hear your feedbacks and suggestions for new nodes and how you'll use them! πŸ™
reacted to their post with πŸ”₯ 3 months ago
view post
Post
4347
Hey everyone πŸ€—!
Check out this awesome new model for object segmentation!
finegrain/finegrain-object-cutter.

We (finegrain) have trained this new model in partnership with Nfinite and some of their synthetic data, the resulting model is incredibly accurate πŸš€.
It’s all open source under the MIT license ( finegrain/finegrain-box-segmenter), complete with a test set tailored for e-commerce ( finegrain/finegrain-product-masks-lite). Have fun experimenting with it!
posted an update 3 months ago
view post
Post
4347
Hey everyone πŸ€—!
Check out this awesome new model for object segmentation!
finegrain/finegrain-object-cutter.

We (finegrain) have trained this new model in partnership with Nfinite and some of their synthetic data, the resulting model is incredibly accurate πŸš€.
It’s all open source under the MIT license ( finegrain/finegrain-box-segmenter), complete with a test set tailored for e-commerce ( finegrain/finegrain-product-masks-lite). Have fun experimenting with it!
replied to their post 4 months ago
view reply

Hi @arcayi , the pipeline is indeed exposed via an API - I updated the post to clarify it.

reacted to their post with πŸš€πŸ”₯ 4 months ago
view post
Post
2564
Hey everyone πŸ€—!
Check out this cool new space from Finegrain: finegrain/finegrain-object-eraser

Under the hoods, it's a pipeline of models (currently exposed via an API) that allows you to easily erase any object from your image just by naming it or selecting it! Not only will the object disappear, but so will its effects on the scene, like shadows and reflections. Built on top of Refiners, our micro-framework for simple foundation model adaptation (feel free to star it on GitHub if you like it: https://github.com/finegrain-ai/refiners)
  • 2 replies
Β·
posted an update 4 months ago
view post
Post
2564
Hey everyone πŸ€—!
Check out this cool new space from Finegrain: finegrain/finegrain-object-eraser

Under the hoods, it's a pipeline of models (currently exposed via an API) that allows you to easily erase any object from your image just by naming it or selecting it! Not only will the object disappear, but so will its effects on the scene, like shadows and reflections. Built on top of Refiners, our micro-framework for simple foundation model adaptation (feel free to star it on GitHub if you like it: https://github.com/finegrain-ai/refiners)
  • 2 replies
Β·
reacted to ehristoforu's post with πŸš€ 4 months ago
view post
Post
3577
😏 Hello from Project Fluently Team!

✨ Finally we can give you some details about Supple Diffusion. We worked on it for a long time and we have little left, we apologize that we had to increase the work time.

πŸ› οΈ Some technical information. The first version will be the Small version (there will also be Medium, Large, Huge, possibly Tiny), it will be based on the SD1 architecture, that is, one text encoder, U-net, VAE. Now about each component, the first is a text encoder, it will be a CLIP model (perhaps not CLIP-L-path14), CLIP was specially retrained by us in order to achieve the universality of the model in understanding completely different styles and to simplify the prompt as much as possible. Next, we did U-net, U-net in a rather complicated way, first we trained different parts (types) of data with different U-nets, then we carried out merging using different methods, then we trained DPO and SPO using methods, and then we looked at the remaining shortcomings and further trained model, details will come later. We left VAE the same as in SD1 architecture.

πŸ™Œ Compatibility. Another goal of the Supple model series is full compatibility with Auto1111 and ComfyUI already at the release stage, the model is fully supported by these interfaces and the diffusers library and does not require adaptation, your usual Sampling methods are also compatible, such as DPM++ 2M Karras, DPM++ SDE and others.

🧐 Today, without demo images (there wasn’t much time), final work is underway on the model and we are already preparing to develop the Medium version, the release of the Small version will most likely be in mid-August or earlier.

😻 Feel free to ask your questions in the comments below the post, we will be happy to answer them, have a nice day!
  • 1 reply
Β·
reacted to rwightman's post with 🧠 4 months ago
reacted to their post with πŸ”₯ 4 months ago
replied to their post 4 months ago
view reply

haha yes, that's one of the biases of the juggernaut model (it also tends to transform everyone into women). You can reduce this effect by changing the base model and/or tweaking the parameters of the diffusion pipeline.

posted an update 4 months ago
reacted to their post with πŸ‘ 4 months ago
posted an update 4 months ago
reacted to albertvillanova's post with πŸ”₯ 7 months ago
view post
Post
1660
πŸš€ We recently released datasets 2.19.0! πŸ“¦

πŸ”₯ What's New:
- Polars integration πŸ»β€β„οΈ
- fsspec support for conversion to JSON, CSV, and Parquet
- Mode parameter for Image feature
- CLI function to convert script-datasets to Parquet
- Dataset.take and Dataset.skip

Plus, a bunch of general improvements & bug fixes!

Check out the release notes: https://github.com/huggingface/datasets/releases/tag/2.19.0

Upgrade now and power up your data workflows! πŸ’₯
  • 2 replies
Β·