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| import gradio as gr | |
| import requests | |
| from PIL import Image | |
| import io | |
| from typing import Any, Tuple | |
| import os | |
| class Client: | |
| def __init__(self, server_url: str): | |
| self.server_url = server_url | |
| def send_request(self, task_name: str, model_name: str, text: str, normalization_type: str) -> Tuple[Any, str]: | |
| response = requests.post( | |
| self.server_url, | |
| json={ | |
| "task_name": task_name, | |
| "model_name": model_name, | |
| "text": text, | |
| "normalization_type": normalization_type | |
| }, | |
| timeout=60 | |
| ) | |
| if response.status_code == 200: | |
| response_data = response.json() | |
| img_data = bytes.fromhex(response_data["image"]) | |
| img = Image.open(io.BytesIO(img_data)) | |
| return img, "OK" | |
| else: | |
| return "Error, please retry", "Error: Could not get response from server" | |
| client = Client(f"http://{os.environ['SERVER']}/predict") | |
| def get_layerwise_nonlinearity(task_name: str, model_name: str, text: str, normalization_type: str) -> Tuple[Any, str]: | |
| return client.send_request(task_name, model_name, text, normalization_type) | |
| def update_output(task_name: str, model_name: str, text: str, normalization_type: str) -> Tuple[Any]: | |
| img, _ = get_layerwise_nonlinearity(task_name, model_name, text, normalization_type) | |
| return img | |
| def set_default(task_name: str) -> str: | |
| if task_name in ["Layer wise non-linearity", "Next-token prediction from intermediate representations", "Tokenwise loss without i-th layer"]: | |
| return "token-wise" | |
| return "global" | |
| def check_normalization(task_name: str, normalization_name) -> Tuple[str]: | |
| if task_name == "Contextualization measurement" and normalization_name == "token-wise": | |
| return "global" | |
| return normalization_name | |
| def update_description(task_name: str) -> str: | |
| descriptions = { | |
| "Layer wise non-linearity": "Non-linearity per layer: shows how complex each layer's transformation is. Red = more nonlinear.", | |
| "Next-token prediction from intermediate representations": "Layerwise token prediction: when does the model start guessing correctly?", | |
| "Contextualization measurement": "Context stored in each token: how well can the model reconstruct the previous context?", | |
| "Layerwise predictions (logit lens)": "Logit lens: what does each layer believe the next token should be?", | |
| "Tokenwise loss without i-th layer": "Layer ablation: how much does performance drop if a layer is removed?" | |
| } | |
| return descriptions.get(task_name, "ℹ️ No description available.") | |
| with gr.Blocks() as demo: | |
| # gr.Markdown("# 🔬 LLM-Microscope — Understanding Token Representations in Transformers") | |
| gr.Markdown("# 🔬 LLM-Microscope — A Look Inside the Black Box") | |
| gr.Markdown("Select a model, analysis mode, and input — then peek inside the black box of an LLM to see which layers matter most, which tokens carry the most memory, and how predictions evolve.") | |
| with gr.Row(): | |
| model_selector = gr.Dropdown( | |
| choices=[ | |
| "facebook/opt-1.3b", | |
| "TheBloke/Llama-2-7B-fp16", | |
| "Qwen/Qwen3-8B" | |
| ], | |
| value="facebook/opt-1.3b", | |
| label="Select Model" | |
| ) | |
| task_selector = gr.Dropdown( | |
| choices=[ | |
| "Layer wise non-linearity", | |
| "Next-token prediction from intermediate representations", | |
| "Contextualization measurement", | |
| "Layerwise predictions (logit lens)", | |
| "Tokenwise loss without i-th layer" | |
| ], | |
| value="Layer wise non-linearity", | |
| label="Select Mode" | |
| ) | |
| normalization_selector = gr.Dropdown( | |
| choices=["global", "token-wise"], | |
| value="token-wise", | |
| label="Select Normalization" | |
| ) | |
| task_description = gr.Markdown("ℹ️ Choose a mode to see what it does.") | |
| with gr.Column(): | |
| text_message = gr.Textbox(label="Enter your input text:", value="I love to live my life") | |
| submit = gr.Button("Submit") | |
| box_for_plot = gr.Image(label="Visualization", type="pil") | |
| with gr.Accordion("📘 More Info and Explanation", open=False): | |
| gr.Markdown(""" | |
| This heatmap shows **how each token is processed** across layers of a language model. Here's how to read it: | |
| - **Rows**: layers of the model (bottom = deeper) | |
| - **Columns**: input tokens | |
| - **Colors**: intensity of effect (depends on the selected metric) | |
| --- | |
| ### Metrics explained: | |
| - `Layer wise non-linearity`: how nonlinear the transformation is at each layer (red = more nonlinear). | |
| - `Next-token prediction from intermediate representations`: shows which layers begin to make good predictions. | |
| - `Contextualization measurement`: tokens with more context info get lower scores (green = more context). | |
| - `Layerwise predictions (logit lens)`: tracks how the model’s guesses evolve at each layer. | |
| - `Tokenwise loss without i-th layer`: shows how much each token depends on a specific layer. Red means performance drops if we skip this layer. | |
| Use this tool to **peek inside the black box** — it reveals which layers matter most, which tokens carry the most memory, and how LLMs evolve their predictions. | |
| --- | |
| You can also use `llm-microscope` as a Python library to run these analyses on **your own models and data**. | |
| Just install it with: `pip install llm-microscope` | |
| More details provided in [GitHub repo](https://github.com/AIRI-Institute/LLM-Microscope). | |
| """) | |
| task_selector.change(fn=update_description, inputs=[task_selector], outputs=[task_description]) | |
| task_selector.select(set_default, [task_selector], [normalization_selector]) | |
| normalization_selector.select(check_normalization, [task_selector, normalization_selector], [normalization_selector]) | |
| submit.click( | |
| fn=update_output, | |
| inputs=[task_selector, model_selector, text_message, normalization_selector], | |
| outputs=[box_for_plot] | |
| ) | |
| if __name__ == "__main__": | |
| demo.launch(share=True, server_port=7860, server_name="0.0.0.0") | |