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JoyD/TARS/UI-TARS/README_deploy.md

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2025-10-31 11:12:44 +08:00
# UI-TARS 1.5 HuggingFace Endpoint Deployment Guide
## 1. HuggingFace Inference Endpoints Cloud Deployment
We use HuggingFace's Inference Endpoints platform to quickly deploy a cloud-based model.
### Deployment Steps
1. **Access the Deployment Interface**
- Click [Deploy from Hugging Face](https://endpoints.huggingface.co/catalog)
![Deploy from Hugging Face](https://huggingface.co/datasets/JjjFangg/Demo_video/resolve/main/deployment_1_formal.png?download=true)
- Select the model `UI-TARS 1.5 7B` and click **Import Model**
![Import Model](https://huggingface.co/datasets/JjjFangg/Demo_video/resolve/main/deployment_2_formal.png?download=true)
2. **Configure Settings**
- **Hardware Configuration**
- In the `Hardware Configuration` section, choose a GPU instance. Here are the recommendations for different model sizes:
- For the 7B model, select `GPU L40S 1GPU 48G` (Recommended: Nvidia L4 / Nvidia A100).
![Hardware Configuration](https://huggingface.co/datasets/JjjFangg/Demo_video/resolve/main/deployment_3_formal.png?download=true)
- **Container Configuration**
- Set the following parameters:
- `Max Input Length (per Query)`: 65536
- `Max Batch Prefill Tokens`: 65536
- `Max Number of Tokens (per Query)`: 65537
![Container Configuration](https://huggingface.co/datasets/JjjFangg/Demo_video/resolve/main/deployment_4_formal.png?download=true)
- **Environment Variables**
- Add the following environment variables:
- `CUDA_GRAPHS=0` to avoid deployment failures. For details, refer to [issue 2875](https://github.com/huggingface/text-generation-inference/issues/2875).
- `PAYLOAD_LIMIT=8000000` to prevent request failures due to large images. For details, refer to [issue 1802](https://github.com/huggingface/text-generation-inference/issues/1802).
![Environment Variables](https://huggingface.co/datasets/JjjFangg/Demo_video/resolve/main/deployment_5_formal.png?download=true)
- **Create Endpoint**
- Click **Create** to set up the endpoint.
![Create Endpoint](https://huggingface.co/datasets/JjjFangg/Demo_video/resolve/main/deployment_6_formal.png?download=true)
- **Enter Setup**
- Once the deployment is finished, you will see the confirmation page and need to enter the settings page.
![Complete](https://huggingface.co/datasets/JjjFangg/Demo_video/resolve/main/deployment_7_formal.png?download=true)
- **Update URI** -
- Go to the Container page, set the Container URI to ghcr.io/huggingface/text-generation-inference:3.2.1, and **click Update Endpoint to apply the changes**.
![Complete](https://huggingface.co/datasets/JjjFangg/Demo_video/resolve/main/deployment_8_formal.png?download=true)
## 2. API Usage Example
### **Python Test Code**
```python
# pip install openai
import io
import re
import json
import base64
from PIL import Image
from io import BytesIO
from openai import OpenAI
def add_box_token(input_string):
# Step 1: Split the string into individual actions
if "Action: " in input_string and "start_box=" in input_string:
suffix = input_string.split("Action: ")[0] + "Action: "
actions = input_string.split("Action: ")[1:]
processed_actions = []
for action in actions:
action = action.strip()
# Step 2: Extract coordinates (start_box or end_box) using regex
coordinates = re.findall(r"(start_box|end_box)='\((\d+),\s*(\d+)\)'", action)
updated_action = action # Start with the original action
for coord_type, x, y in coordinates:
# Convert x and y to integers
updated_action = updated_action.replace(f"{coord_type}='({x},{y})'", f"{coord_type}='<|box_start|>({x},{y})<|box_end|>'")
processed_actions.append(updated_action)
# Step 5: Reconstruct the final string
final_string = suffix + "\n\n".join(processed_actions)
else:
final_string = input_string
return final_string
client = OpenAI(
base_url="https:xxx",
api_key="hf_xxx"
)
result = {}
messages = json.load(open("./data/test_messages.json"))
for message in messages:
if message["role"] == "assistant":
message["content"] = add_box_token(message["content"])
print(message["content"])
chat_completion = client.chat.completions.create(
model="tgi",
messages=messages,
top_p=None,
temperature=0.0,
max_tokens=400,
stream=True,
seed=None,
stop=None,
frequency_penalty=None,
presence_penalty=None
)
response = ""
for message in chat_completion:
response += message.choices[0].delta.content
print(response)
```
### **Expected Output** ###
```python
Thought: 我看到Preferences窗口已经打开了但这里显示的都是系统资源相关的设置。要设置图片的颜色模式我得先看看左侧的选项列表。嗯"Color Management"这个选项看起来很有希望,应该就是处理颜色管理的地方。让我点击它看看里面有什么选项。
Action: click(start_box='(177,549)')
```