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OmniFusion

Hugging Face

ArXiv Project page

OmniFusion is an advanced multimodal AI model designed to extend the capabilities of traditional language processing systems by integrating additional data modalities such as images, and potentially audio, 3D and video content.

ChangeLog

[10/04/2024] OmniFusion-1.1 weights are uploaded to Huggingface. Now the model can speak Russian :)

[01/04/2024] Model training source code for OmniFusion-1.1 released

[22/11/2023] OmniFusion weights are available on Huggingface

Architecture

The open source OmniFusion core is Mistral-7B. There are two versions of the model: the first uses one visual encoder CLIP-ViT-L, the second uses two encoders (CLIP-ViT-L and Dino V2). Initially focusing on images, we chose CLIP-ViT-L as a visual encoder due to for its efficient information transfer capabilities.

The most important component of OmniFusion is its adapter, a mechanism that allows the language model to interpret and incorporate information from different modalities. For the single encoder version, the adapter is a single-layer four-headed transformer layer that has shown superior performance compared to simpler linear layers or MLP structures. The model with two encoders uses an adapter that collects features from all layers of visual encoders, this adapter does not have an attention layer.

The adapter takes embeddings from the visual encoder (excluding the CLS token) and maps them to textual embeddings that are compatible with the language model.

To further enhance the multimodal capabilities of the model, we use learnable custom tokens to mark the beginning and end of visual data in a text sequence.

Training Process consists of two stages

  1. Pre-training the adapter on Image Captioning tasks (LAION, CC-4M, etc.).
  2. Once the adapter has learned to map visual embeddings to the language model's textual space, we proceed to unfreeze Mistral for improved understanding of dialog formats and complex queries.
  3. The dataset consists of data in English and Russian and has the following structure:
Task Dataset Source #Samples
Caption ShareGPT4V 100K
VQA COCO, SAM-9K 20K, 9K
WebQA WebData 1.5K
OCRQA TextVQA, OCRVQA 120K
Conversation LLaVA-v1.5-665K, OCRVQA 665K
DocVQA Proprietary data (ru) 20K
Text-only SFT Proprietary data (ru), Alpaca (en) 10K

How to Use

import torch
from PIL import Image
from transformers import AutoTokenizer, AutoModelForCausalLM
from urllib.request import urlopen
import torch.nn as nn
from huggingface_hub import hf_hub_download

# Loading some sources of the projection adapter and image encoder
hf_hub_download(repo_id="AIRI-Institute/OmniFusion", filename="models.py", local_dir='./')
from models import CLIPVisionTower

DEVICE = "cuda:0"
PROMPT = "This is a dialog with AI assistant.\n"

tokenizer = AutoTokenizer.from_pretrained("AIRI-Institute/OmniFusion", subfolder="OmniMistral-v1_1/tokenizer", use_fast=False)
model = AutoModelForCausalLM.from_pretrained("AIRI-Institute/OmniFusion", subfolder="OmniMistral-v1_1/tuned-model", torch_dtype=torch.bfloat16, device_map=DEVICE)

hf_hub_download(repo_id="AIRI-Institute/OmniFusion", filename="OmniMistral-v1_1/projection.pt", local_dir='./')
hf_hub_download(repo_id="AIRI-Institute/OmniFusion", filename="OmniMistral-v1_1/special_embeddings.pt", local_dir='./')
projection = torch.load("OmniMistral-v1_1/projection.pt", map_location=DEVICE)
special_embs = torch.load("OmniMistral-v1_1/special_embeddings.pt", map_location=DEVICE)

clip = CLIPVisionTower("openai/clip-vit-large-patch14-336")
clip.load_model()
clip = clip.to(device=DEVICE, dtype=torch.bfloat16)

def gen_answer(model, tokenizer, clip, projection, query, special_embs, image=None):
    bad_words_ids = tokenizer(["\n", "</s>", ":"], add_special_tokens=False).input_ids + [[13]]
    gen_params = {
        "do_sample": False,
        "max_new_tokens": 50,
        "early_stopping": True,
        "num_beams": 3,
        "repetition_penalty": 1.0,
        "remove_invalid_values": True,
        "eos_token_id": 2,
        "pad_token_id": 2,
        "forced_eos_token_id": 2,
        "use_cache": True,
        "no_repeat_ngram_size": 4,
        "bad_words_ids": bad_words_ids,
        "num_return_sequences": 1,
    }
    with torch.no_grad():
        image_features = clip.image_processor(image, return_tensors='pt')
        image_embedding = clip(image_features['pixel_values']).to(device=DEVICE, dtype=torch.bfloat16)

        projected_vision_embeddings = projection(image_embedding).to(device=DEVICE, dtype=torch.bfloat16)
        prompt_ids = tokenizer.encode(f"{PROMPT}", add_special_tokens=False, return_tensors="pt").to(device=DEVICE)
        question_ids = tokenizer.encode(query, add_special_tokens=False, return_tensors="pt").to(device=DEVICE)

        prompt_embeddings = model.model.embed_tokens(prompt_ids).to(torch.bfloat16)
        question_embeddings = model.model.embed_tokens(question_ids).to(torch.bfloat16)

        embeddings = torch.cat(
            [
                prompt_embeddings,
                special_embs['SOI'][None, None, ...],
                projected_vision_embeddings,
                special_embs['EOI'][None, None, ...],
                special_embs['USER'][None, None, ...],
                question_embeddings,
                special_embs['BOT'][None, None, ...]
            ],
            dim=1,
        ).to(dtype=torch.bfloat16, device=DEVICE)
        out = model.generate(inputs_embeds=embeddings, **gen_params)
    out = out[:, 1:]
    generated_texts = tokenizer.batch_decode(out)[0]
    return generated_texts

img_url = "https://i.pinimg.com/originals/32/c7/81/32c78115cb47fd4825e6907a83b7afff.jpg"
question = "What is the sky color on this image?"
img = Image.open(urlopen(img_url))

answer = gen_answer(
    model,
    tokenizer,
    clip,
    projection,
    query=question,
    special_embs=special_embs,
    image=img
)

img.show()
print(question)
print(answer)

Results

OmniFusion was benchmarked against the latest multimodal SOTA models. It excelled in generative metrics and classification benchmarks like TextVQA.

OmniFusion-1.1 (GigaChat LLM) results on various benchmarks:

Omifusion-1.0 results:

Omifusion-1.1 (Mistral)

Model textvqa scienceqa pope gqa ok_vqa
OmniFusion-1.1 (one encoder, Mistral) 0.4893 0.6802 0.7818 0.4600 0.5187
OmniFusion-1.1 (two encoders, Mistral) 0.4755 0.6732 0.8153 0.4761 0.5317

Omifusion-1.0 (previous version) Performance on Visual Dialog Benchmark

Model NDCG MRR Recall@1 Recall@5 Recall@10
OmniFusion 25.91 10.78 4.74 13.80 20.53
LLaVA-13B 24.74 8.91 2.98 10.80 18.02

OmniFusion-1.1 examples

OmniFusion-1.0 Examples

Future Plans

Work is underway on a version that understands Russian, uses ImageBind encoders, and accepts more modalities (sound, 3D, video). Stay tuned for updates on GitHub!

Authors

The FusionBrain scientific group from the AIRI Institute, in collaboration with scientists from Sber AI, led the model's development.

Main contributors:

  • Anton Razzhigaev: Blog
  • Elizaveta Goncharova
  • Matvey Mihkalchuk
  • Maxim Kurkin
  • Irina Abdullaeva
  • Denis Dimitrov Blog
  • Andrey Kuznetsov Blog