--- library_name: keras-hub extra_gated_heading: Access PaliGemma on Hugging Face extra_gated_prompt: >- To access PaliGemma on Hugging Face, you’re required to review and agree to Google’s usage license. To do this, please ensure you’re logged-in to Hugging Face and click below. Requests are processed immediately. extra_gated_button_content: Acknowledge license license: gemma pipeline_tag: image-text-to-text --- PaliGemma is a set of multi-modal large language models published by Google based on the Gemma model. Both a pre-trained and instruction tuned models are available. See the model card below for benchmarks, data sources, and intended use cases. ## Links * [PaliGemma API Documentation](https://keras.io/api/keras_nlp/models/pali_gemma/) * [KerasNLP Beginner Guide](https://keras.io/guides/keras_nlp/getting_started/) * [KerasNLP Model Publishing Guide](https://keras.io/guides/keras_nlp/upload/) ## Installation Keras and KerasNLP can be installed with: ``` pip install -U -q keras-nlp pip install -U -q keras>=3 ``` Jax, TensorFlow, and Torch come preinstalled in Kaggle Notebooks. For instruction on installing them in another environment see the [Keras Getting Started](https://keras.io/getting_started/) page. ## Presets The following model checkpoints are provided by the Keras team. Full code examples for each are available below. | Preset name | Parameters | Description | |-----------------------|------------|-------------------------------------------------------------| | [**paligemma-3b-224-mix-keras**](https://huggingface.co/google/paligemma-3b-224-mix-keras) | 2.92B | image size 224, mix fine tuned, text sequence length is 256 | | [paligemma-3b-448-mix-keras](https://huggingface.co/google/paligemma-3b-448-mix-keras) | 2.92B | image size 448, mix fine tuned, text sequence length is 512 | | [paligemma-3b-224-keras](https://huggingface.co/google/paligemma-3b-224-keras) | 2.92B | image size 224, pre trained, text sequence length is 128 | | [paligemma-3b-448-keras](https://huggingface.co/google/paligemma-3b-448-keras) | 2.92B | image size 448, pre trained, text sequence length is 512 | | [paligemma-3b-896-keras](https://huggingface.co/google/paligemma-3b-896-keras) | 2.93B | image size 896, pre trained, text sequence length is 512 | ## Prompts The PaliGemma `"mix"` models can handle a number of prompting structures out of the box. It is important to stick exactly to these prompts, including the newline. Lang can be a language code such as `"en"` or `"fr"`. Support for languages outside of English will vary depending on the prompt type. * `"cap {lang}\n"`: very raw short caption (from WebLI-alt). * `"caption {lang}\n"`: coco-like short captions. * `"describe {lang}\n"`: somewhat longer more descriptive captions. * `"ocr\n"`: optical character recognition. * `"answer en {question}\n"`: question answering about the image contents. * `"question {lang} {answer}\n"`: question generation for a given answer. * `"detect {thing} ; {thing}\n"`: count objects in a scene. Not `"mix"` presets should be fine-tuned for a specific task. ``` !pip install -U -q keras-nlp ``` Pick a backend of your choice ``` import os os.environ["KERAS_BACKEND"] = "jax" ``` Now we can load the PaliGemma "causal language model" from the Kaggle Models hub. A causal language model is just a LLM that is ready for generation, by training with a causal mask, and running generation a token at a time in a recurrent loop. ``` keras.config.set_floatx("bfloat16") pali_gemma_lm = keras_nlp.models.PaliGemmaCausalLM.from_preset( "hf://google/paligemma-3b-224-mix-keras" ) ``` Function that reads an image from a given URL ``` def read_image(url): contents = io.BytesIO(requests.get(url).content) image = PIL.Image.open(contents) image = np.array(image) # Remove alpha channel if neccessary. if image.shape[2] == 4: image = image[:, :, :3] return image ``` ``` image_url = 'https://storage.googleapis.com/keras-cv/models/paligemma/cow_beach_1.png' image = read_image(image_url) ``` Use `generate()` call with a single image and prompt. The text prompt has to end with `\n`. ``` prompt = 'answer en where is the cow standing?\n' output = pali_gemma_lm.generate( inputs={ "images": image, "prompts": prompt, } ) print(output) ``` Use `generate()` call with a batched images and prompts. ``` prompts = [ 'answer en where is the cow standing?\n', 'answer en what color is the cow?\n', 'describe en\n', 'detect cow\n', 'segment cow\n', ] images = [image, image, image, image, image] outputs = pali_gemma_lm.generate( inputs={ "images": images, "prompts": prompts, } ) for output in outputs: print(output) ``` There's a few other style of prompts this model can handle out of the box... `cap {lang}\n`: very raw short caption (from WebLI-alt). `caption {lang}\n`: nice, coco-like short captions. `describe {lang}\n`: somewhat longer more descriptive captions. `ocr\n`: optical character recognition. `answer en {question}\n`: question answering about the image contents. `question {lang} {answer}\n`: question generation for a given answer. `detect {thing} ; {thing}\n`: count objects in a scene. Call `fit()` on a single batch ``` import numpy as np image = np.random.uniform(-1, 1, size=(224, 224, 3)) x = { "images": [image, image], "prompts": ["answer en Where is the cow standing?\n", "caption en\n"], } y = { "responses": ["beach", "A brown cow standing on a beach next to the ocean."], } pali_gemma_lm = keras_nlp.models.PaliGemmaCausalLM.from_preset("hf://google/paligemma-3b-224-mix-keras") pali_gemma_lm.fit(x=x, y=y, batch_size=2) ```