Edit model card

Finetune Llama 3.2, Qwen 2.5, Gemma 2, Mistral 2-5x faster with 70% less memory via Unsloth!

We have a free Google Colab Tesla T4 notebook for Pixtral (12B) 2409 here: https://colab.research.google.com/drive/1Ys44kVvmeZtnICzWz0xgpRnrIOjZAuxp?usp=sharing

And a free notebook for Llama 3.2 Vision (11B) here

unsloth/Pixtral-12B-2409

For more details on the model, please go to Mistral's original model card

✨ Finetune for Free

All notebooks are beginner friendly! Add your dataset, click "Run All", and you'll get a 2x faster finetuned model which can be exported to GGUF, vLLM or uploaded to Hugging Face.

Unsloth supports Free Notebooks Performance Memory use
Llama-3.2 (3B) ▶️ Start on Colab 2.4x faster 58% less
Llama-3.2 (11B vision) ▶️ Start on Colab 2x faster 40% less
Qwen2 VL (7B) ▶️ Start on Colab 1.8x faster 40% less
Qwen2.5 (7B) ▶️ Start on Colab 2x faster 60% less
Llama-3.1 (8B) ▶️ Start on Colab 2.4x faster 58% less
Phi-3.5 (mini) ▶️ Start on Colab 2x faster 50% less
Gemma 2 (9B) ▶️ Start on Colab 2.4x faster 58% less
Mistral (7B) ▶️ Start on Colab 2.2x faster 62% less
DPO - Zephyr ▶️ Start on Colab 1.9x faster 19% less

Special Thanks

A huge thank you to the Mistral team for creating and releasing these models.

Pixtral 2409 Details

Mistral common has image support! You can now pass images and URLs alongside text into the user message.

pip install --upgrade mistral_common

To use the model checkpoint:

# pip install huggingface-hub

from huggingface_hub import snapshot_download

snapshot_download(repo_id="mistral-community/pixtral-12b-240910", local_dir="...")
                                                                 ▄▄▄░░
                                                        ▄▄▄▄▄█████████░░░░
                                            ▄▄▄▄▄▄████████████████████░░░░░
                                         █████████████████████████████░░░░░
                    ▄▄▄▄▄▄█████░░░       █████████████████████████████░░░░░
         ▄▄▄▄▄██████████████████░░░░░░  ██████████████████████████████░░░░░
  ▄█████████████████████████████░░░░░░░░██████████████████████████████░░░░░
  ███████████████████████████████░░░░░░░██████████████████████████████░░░░░
  ███████████████████████████████░░░░░░░██████████████████████████████░░░░░
  ███████████████████████████████░░░░░░███████████████████████████████░░░░░
  ████████████████████████████████░░░░░███████████████████████████████░░░░░
  ████████████████████████████████░░░░████████████████████████████████░░░░░
  █████████████████████████████████░░░████████████████████████████████░░░░░
  █████████████████████████████████░░░████████████░███████████████████░░░░░
  ██████████████████████████████████░█████████████░███████████████████░░░░░
  ███████████████████░██████████████▄█████████████░███████████████████░░░░░
  ███████████████████░███████████████████████████░░███████████████████░░░░░
  ███████████████████░░██████████████████████████░░███████████████████░░░░░
  ███████████████████░░█████████████████████████░░░███████████████████░░░░░
  ███████████████████░░░████████████████████████░░░███████████████████░░░░░
  ███████████████████░░░████████████████████████░░░███████████████████░░░░░
  ███████████████████░░░░██████████████████████░░░░███████████████████░░░░░
  ███████████████████░░░░██████████████████████░░░░███████████████████░░░░░
  ███████████████████░░░░░█████████████████████░░░░███████████████████░░░░░
  ███████████████████░░░░░████████████████████░░░░░███████████████████░░░░░
  ███████████████████░░░░░░███████████████████░░░░░███████████████████░░░░░
  ███████████████████░░░░░░██████████████████░░░░░░███████████████████░░░░░
  ███████████████████░░░░░░░█████████████████░░░░░░███████████████████░░░░░
  ███████████████████░░░░░░░█████████████████░░░░░░███████████████████░░░░░
  ███████████████████░░░░░░░░███████████████░░░░░░░██████████░░░░░░░░░░░░░░
  ███████████████████░░░░░░░░███████████████░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░
  ███████████████████░░░░░░░░███████████░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░
  ███████████████████░░░░░░░░░██░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░
  ███████████████░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░
  ██████████░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░  ░░░░░░░
      ░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░      ░░░
            ░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░░    ░░░░░░░░░░░░░░░░░░
               ░░░░░░░░░░░░░░░░░░░░░░░░░░░░
                    ░░░░░░░░░░░░░░░░░
                       ░░░░░

╓────────────────────────────────────────────────────────────────────────────╖ ║ PIXTRAL - 12B - v0.1 10/09/24 ║ ╙────────────────────────────────────────────────────────────────────────────╜

╓────────────────────────────────────────────────────────────────────────────╖ ║ ║ ║ ·· md5sum ·· ║ ║ ║ ║ b8e9126ef0c15a1130c14b15e8432a67 consolidated.safetensors ║ ║ 68b39355a7b14a7d653292dab340a0be params.json ║ ║ 10229adc84036ff8fe44a2a8e2ad9ba9 tekken.json ║ ╙────────────────────────────────────────────────────────────────────────────╜

╓────────────────────────────────────────────────────────────────────────────╖ ║ ║ ║ ·· Released by the Mistral AI team ·· ║ ║ ║ ║ - Use GELU for the vision adapter ║ ║ - Use 2D ROPE for the vision encoder ║ ║ ║ ╙────────────────────────────────────────────────────────────────────────────╜

Images

You can encode images as follows

from mistral_common.protocol.instruct.messages import (
    UserMessage,
    TextChunk,
    ImageURLChunk,
    ImageChunk,
)
from PIL import Image
from mistral_common.protocol.instruct.request import ChatCompletionRequest
from mistral_common.tokens.tokenizers.mistral import MistralTokenizer

tokenizer = MistralTokenizer.from_model("pixtral")

image = Image.new('RGB', (64, 64))

# tokenize images and text
tokenized = tokenizer.encode_chat_completion(
    ChatCompletionRequest(
        messages=[
            UserMessage(
                content=[
                    TextChunk(text="Describe this image"),
                    ImageChunk(image=image),
                ]
            )
        ],
        model="pixtral",
    )
)
tokens, text, images = tokenized.tokens, tokenized.text, tokenized.images

# Count the number of tokens
print("# tokens", len(tokens))
print("# images", len(images))

Image URLs

You can pass image url which will be automatically downloaded

url_dog = "https://picsum.photos/id/237/200/300"
url_mountain = "https://picsum.photos/seed/picsum/200/300"

# tokenize image urls and text
tokenized = tokenizer.encode_chat_completion(
    ChatCompletionRequest(
        messages=[
            UserMessage(
                content=[
                    TextChunk(text="Can this animal"),
                    ImageURLChunk(image_url=url_dog),
                    TextChunk(text="live here?"),
                    ImageURLChunk(image_url=url_mountain),
                ]
            )
        ],
        model="pixtral",
    )
)
tokens, text, images = tokenized.tokens, tokenized.text, tokenized.images

# Count the number of tokens
print("# tokens", len(tokens))
print("# images", len(images))

ImageData

You can also pass image encoded as base64

tokenized = tokenizer.encode_chat_completion(
    ChatCompletionRequest(
        messages=[
            UserMessage(
                content=[
                    TextChunk(text="What is this?"),
                    ImageURLChunk(image_url="data:image/jpeg;base64,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"),
                ]
            )
        ],
        model="pixtral",
    )
)
tokens, text, images = tokenized.tokens, tokenized.text, tokenized.images

# Count the number of tokens
print("# tokens", len(tokens))
print("# images", len(images))
Downloads last month
27
Safetensors
Model size
12.7B params
Tensor type
BF16
·
Inference Examples
Inference API (serverless) does not yet support transformers models for this pipeline type.

Model tree for unsloth/Pixtral-12B-2409

Finetuned
(2)
this model

Collection including unsloth/Pixtral-12B-2409