--- license: apache-2.0 language: - en base_model: - openai/clip-vit-large-patch14-336 - Qwen/Qwen2-7B pipeline_tag: image-text-to-text tags: - multimodal - olmo - molmo - pixmo library_name: transformers --- # Molmo 7B-D Model Card with Endpoint Usage This is a copy of the original [Molmo 7B-D model card](https://huggingface.co/allenai/Molmo-7B-D-0924) with additional information about using the model via Hugging Face Inference Endpoints. ## Using the Model via Inference Endpoints **Note: The following implementation is a community-contributed endpoint handler and is not an official implementation. For the official model and its usage, please refer to the [official Molmo 7B-D model page](https://huggingface.co/allenai/Molmo-7B-D-0924).** You should see a `Deploy` via Inference Endpoints option at the top of this model card. ![image/png](https://cdn-uploads.huggingface.co/production/uploads/60107b385ac3e86b3ea4fc34/kHR0wO_GchczmsmHtjJ1u.png) Currently, this handler uses `bloat16` for inference. The original authors found some differences in results vs using `float32` weights. I didn't find results that degraded much in my initial experiments, but I may change this implementation in the future. If you've deployed the model using Hugging Face's Inference Endpoints with a community-contributed handler, you can use it with the following code: ```python import requests import json import base64 from IPython.display import Image, display API_URL = YOUR_ENDPOINT_URL_HERE headers = { "Accept" : "application/json", "Authorization": "Bearer hf_TOKEN_HERE", "Content-Type": "application/json" } # Function to encode image to base64 def encode_image(image_path): with open(image_path, "rb") as image_file: return base64.b64encode(image_file.read()).decode('utf-8') # Path to your local image file image_path = "hf-logo-with-title.png" # Display the image (if in a Jupyter notebook) display(Image(filename=image_path)) # Encode the image base64_image = encode_image(image_path) # Prepare the payload payload = { "inputs": { "image": base64_image, "text_prompt": "Describe this image in detail." } } # Make the POST request response = requests.post(API_URL, headers=headers, json=payload) # Check if the request was successful if response.status_code == 200: # Parse the JSON response result = response.json() print(result) else: print("Error:", response.status_code) print("Response:", response.text) # Print some debug information print("\nDebug Information:") print(f"API URL: {API_URL}") print(f"Image Path: {image_path}") print(f"Payload size: {len(json.dumps(payload))} bytes") print(f"Response status code: {response.status_code}") ``` Example output: ``` [{'generated_text': ' The image features a simple, cartoon-style emoji on the left side, set against a white background. The emoji is a yellow circle with a white outline, depicting a smiling face with black eyes and a red tongue sticking out. The face has two small yellow dots on its cheeks, giving it a cheerful expression. The emoji\'s hands are positioned in front of its chest, as if it is hugging itself. To the right of the emoji, in large, dark blue text, the words "Hugging Face" are displayed. The overall design is minimalistic, with the emoji and text being the only elements in the image.'}] ``` This code snippet demonstrates how to use the model with an image file, encode it to base64, and send it to the inference endpoint for processing. Make sure to replace `"hf_TOKEN_HERE"` with your actual Hugging Face API token. Remember that this is a community implementation and may not reflect the most up-to-date or official way to use the model. For the latest official information and usage instructions, always refer to the [official Molmo 7B-D model page](https://huggingface.co/allenai/Molmo-7B-D-0924). --- # Original Molmo 7B-D Model Card The content below is a copy of the original model card. For the most up-to-date information, please refer to the [official Molmo 7B-D model page](https://huggingface.co/allenai/Molmo-7B-D-0924). Logo for the Molmo Project # Molmo 7B-D Molmo is a family of open vision-language models developed by the Allen Institute for AI. Molmo models are trained on PixMo, a dataset of 1 million, highly-curated image-text pairs. It has state-of-the-art performance among multimodal models with a similar size while being fully open-source. You can find all models in the Molmo family [here](https://huggingface.co/collections/allenai/molmo-66f379e6fe3b8ef090a8ca19). **Learn more** about the Molmo family [in our announcement blog post](https://molmo.allenai.org/blog). Molmo 7B-D is based on [Qwen2-7B](https://huggingface.co/Qwen/Qwen2-7B) and uses [OpenAI CLIP](https://huggingface.co/openai/clip-vit-large-patch14-336) as vision backbone. It performs comfortably between GPT-4V and GPT-4o on both academic benchmarks and human evaluation. It powers the **Molmo demo at** [**molmo.allenai.org**](https://molmo.allenai.org). This checkpoint is a **preview** of the Molmo release. All artifacts used in creating Molmo (PixMo dataset, training code, evaluations, intermediate checkpoints) will be made available at a later date, furthering our commitment to open-source AI development and reproducibility. [**Sign up here**](https://docs.google.com/forms/d/e/1FAIpQLSdML1MhNNBDsCHpgWG65Oydg2SjZzVasyqlP08nBrWjZp_c7A/viewform) to be the first to know when artifacts are released. Quick links: - 💬 [Demo](https://molmo.allenai.org/) - 📂 [All Models](https://huggingface.co/collections/allenai/molmo-66f379e6fe3b8ef090a8ca19) - 📃 [Paper](https://molmo.allenai.org/paper.pdf) - 🎥 [Blog with Videos](https://molmo.allenai.org/blog) ## Quick Start To run Molmo, first install dependencies: ```bash pip install einops torchvision ``` Then, follow these steps: ```python from transformers import AutoModelForCausalLM, AutoProcessor, GenerationConfig from PIL import Image import requests # load the processor processor = AutoProcessor.from_pretrained( 'allenai/Molmo-7B-D-0924', trust_remote_code=True, torch_dtype='auto', device_map='auto' ) # load the model model = AutoModelForCausalLM.from_pretrained( 'allenai/Molmo-7B-D-0924', trust_remote_code=True, torch_dtype='auto', device_map='auto' ) # process the image and text inputs = processor.process( images=[Image.open(requests.get("https://picsum.photos/id/237/536/354", stream=True).raw)], text="Describe this image." ) # move inputs to the correct device and make a batch of size 1 inputs = {k: v.to(model.device).unsqueeze(0) for k, v in inputs.items()} # generate output; maximum 200 new tokens; stop generation when <|endoftext|> is generated output = model.generate_from_batch( inputs, GenerationConfig(max_new_tokens=200, stop_strings="<|endoftext|>"), tokenizer=processor.tokenizer ) # only get generated tokens; decode them to text generated_tokens = output[0,inputs['input_ids'].size(1):] generated_text = processor.tokenizer.decode(generated_tokens, skip_special_tokens=True) # print the generated text print(generated_text) # >>> This image features an adorable black Labrador puppy, captured from a top-down # perspective. The puppy is sitting on a wooden deck, which is composed ... ``` To make inference more efficient, run with autocast: ```python with torch.autocast(device_type="cuda", enabled=True, dtype=torch.bfloat16): output = model.generate_from_batch( inputs, GenerationConfig(max_new_tokens=200, stop_strings="<|endoftext|>"), tokenizer=processor.tokenizer ) ``` We did most of our evaluation in this setting (autocast on, but float32 weights) To even further reduce the memory requirements, the model can be run with bfloat16 weights: ```python model.to(dtype=torch.bfloat16) inputs["images"] = inputs["images"].to(torch.bfloat16) output = model.generate_from_batch( inputs, GenerationConfig(max_new_tokens=200, stop_strings="<|endoftext|>"), tokenizer=processor.tokenizer ) ``` Note that we have observed that this can change the output of the model compared to running with float32 weights. ## Evaluations | Model | Average Score on 11 Academic Benchmarks | Human Preference Elo Rating | |-----------------------------|-----------------------------------------|-----------------------------| | Molmo 72B | 81.2 | 1077 | | **Molmo 7B-D (this model)** | **77.3** | **1056** | | Molmo 7B-O | 74.6 | 1051 | | MolmoE 1B | 68.6 | 1032 | | GPT-4o | 78.5 | 1079 | | GPT-4V | 71.1 | 1041 | | Gemini 1.5 Pro | 78.3 | 1074 | | Gemini 1.5 Flash | 75.1 | 1054 | | Claude 3.5 Sonnet | 76.7 | 1069 | | Claude 3 Opus | 66.4 | 971 | | Claude 3 Haiku | 65.3 | 999 | | Qwen VL2 72B | 79.4 | 1037 | | Qwen VL2 7B | 73.7 | 1025 | | Intern VL2 LLAMA 76B | 77.1 | 1018 | | Intern VL2 8B | 69.4 | 953 | | Pixtral 12B | 69.5 | 1016 | | Phi3.5-Vision 4B | 59.7 | 982 | | PaliGemma 3B | 50.0 | 937 | | LLAVA OneVision 72B | 76.6 | 1051 | | LLAVA OneVision 7B | 72.0 | 1024 | | Cambrian-1 34B | 66.8 | 953 | | Cambrian-1 8B | 63.4 | 952 | | xGen - MM - Interleave 4B | 59.5 | 979 | | LLAVA-1.5 13B | 43.9 | 960 | | LLAVA-1.5 7B | 40.7 | 951 | *Benchmarks: AI2D test, ChartQA test, VQA v2.0 test, DocQA test, InfographicVQA test, TextVQA val, RealWorldQA, MMMU val, MathVista testmini, CountBenchQA, Flickr Count (we collected this new dataset that is significantly harder than CountBenchQA).* ## FAQs ### I'm getting an error a broadcast error when processing images! Your image might not be in RGB format. You can convert it using the following code snippet: ```python from PIL import Image image = Image.open(...) if image.mode != "RGB": image = image.convert("RGB") ``` ### Molmo doesn't work great with transparent images! We received reports that Molmo models might struggle with transparent images. For the time being, we recommend adding a white or dark background to your images before passing them to the model. The code snippet below shows how to do this using the Python Imaging Library (PIL): ```python # Load the image url = "..." image = Image.open(requests.get(url, stream=True).raw) # Convert the image to grayscale to calculate brightness gray_image = image.convert('L') # Convert to grayscale # Calculate the average brightness stat = ImageStat.Stat(gray_image) average_brightness = stat.mean[0] # Get the average value # Define background color based on brightness (threshold can be adjusted) bg_color = (0, 0, 0) if average_brightness > 127 else (255, 255, 255) # Create a new image with the same size as the original, filled with the background color new_image = Image.new('RGB', image.size, bg_color) # Paste the original image on top of the background (use image as a mask if needed) new_image.paste(image, (0, 0), image if image.mode == 'RGBA' else None) # Now you can pass the new_image to Molmo processor = AutoProcessor.from_pretrained( 'allenai/Molmo-7B-D-0924', trust_remote_code=True, torch_dtype='auto', device_map='auto' ) ``` ## License and Use This model is licensed under Apache 2.0. It is intended for research and educational use. For more information, please see our [Responsible Use Guidelines](https://allenai.org/responsible-use).