--- license: apache-2.0 language: - zh base_model: - Qwen/Qwen2.5-0.5B-Instruct tags: - code library_name: transformers --- [中文](README.zh.md) # Qwen2.5-Interpreter ## Model Overview **Qwen2.5-Interpreter** is a fine-tuned version of the Qwen2.5-0.5B model, designed to perform system operations on Windows platforms by generating Python or Batch scripts. This model specializes in processing user requests for automation tasks, ensuring precision, security, and efficiency. --- **You can integrate this model with the [Code-Atlas project](https://github.com/ystemsrx/Code-Atlas) for seamless utilization and enhanced functionality.** --- ## Intended Use This model is tailored for automation tasks requiring the generation and execution of Python or Batch scripts. It performs best when used with the following **system prompt**: ``` **Identity Setup**: - You are **Open Interpreter**, operating on the user's Windows computer. **Execution Capability**: - Complete tasks using **Batch scripts** or **Python code**. **Operation Process**: 1. **Receive Request**: The user submits an operation request. 2. **Develop Plan**: Plan the steps and required resources. 3. **Choose Language**: Select Batch or Python. 4. **Generate and Output Code**: Provide executable code to the user. 5. **Receive Execution Results**: Obtain the results of the executed code sent by the user. 6. **Ensure Single Execution**: Accurately discern execution results to prevent repeated executions of the same code. **Code Requirements**: - **No User Interaction**: No user input required. - **Path Handling**: Use the current directory by default, ensure paths are valid and secure. - **Execution Result Handling**: Obtain, parse, and succinctly feedback the results. **Multi-step Tasks**: - Execute complete code snippets step-by-step, maintaining solution consistency. For the same problem, only one solution can be used. **Security and Efficiency**: - Code is safe and harmless, follows best programming practices, ensuring efficiency and maintainability. - Must avoid hallucinations. **Additional Instructions**: - **Result Submission**: After executing the code, the user will send the execution results back to you. - **Avoid Redundancy**: Ensure that each code snippet is executed only once by accurately tracking and recognizing previously executed tasks. ``` By utilizing this prompt, the model can fully leverage its fine-tuned capabilities to deliver optimal results. --- ## Example Usage ### Example 1: Create a new folder ``` > Create a new folder # 执行计划: 1. 我会在当前目录创建一个名为 "NewFolder" 的文件夹。 **选择编程语言:** - 选择使用 Batch 脚本,因为它适合简单的文件和目录操作。 **生成的代码:** ```batch @echo off set "foldername=NewFolder" mkdir "%cd%\%foldername%" \``` ``` --- ### Example 2: Tell me what's in `story.txt` ``` > Tell me what's in story.txt # 执行计划: 1. 打开文件并读取文件内容。 **选择编程语言:** - 选择使用 Python,因为它有文件读取的功能。 **生成的代码:** ```python # 打开文件并读取文件内容 with open('story.txt', 'r', encoding='utf-8') as file: content = file.read() print(f'文件content:{content}') \``` > 代码执行成功: 文件content:This story is about me and my family. 文件content:This story is about me and my family. 请问还有什么可以帮助您的吗? ``` --- ## Training Data The model was fine-tuned on a curated dataset focusing on: - Windows-specific automation and scripting scenarios. - Practical examples of Python and Batch operations. - Security-compliant programming practices. --- ## Limitations - **Platform Specificity**: Optimized for Windows; performance may vary on other operating systems. - **No Interactive Code**: Cannot generate scripts requiring real-time user interaction. - **Complex Custom Scripts**: For highly intricate tasks, external review might be needed. --- ## Ethical Considerations - **Safety Assurance**: Ensures generated code is non-malicious and adheres to security standards. - **Privacy Respect**: Avoids creating scripts that could compromise user data without clear intent. --- ## Relevant Topics Model Fine-tuning Python Batch Windows Automation System Scripting Security Efficiency Multi-step Operations