Analyzing grapeot/devin.cursorrules...
Checking for context files and running AI analysis
Magic to turn Cursor/Windsurf as 90% of Devin
Excellent context documentation
This repository demonstrates excellent context engineering! Innovative self-improving system with lessons learned tracking across different AI platforms
Comprehensive coverage of tools, workflow patterns, and lessons learned system. Includes web scraping, LLM integration, screenshot verification, and search capabilities.
Highly specific to this AI assistant enhancement project with custom tools, learned lessons, and project-specific workflows like git commit handling.
Excellent organization with clear sections for Instructions, Tools, Lessons, and Scratchpad. Consistent formatting across all three AI platforms.
Good actionable instructions with code examples and command-line usage, but could benefit from more detailed error handling and troubleshooting guidance.
# Instructions
During your interaction with the user, if you find anything reusable in this project (e.g. version of a library, model name), especially about a fix to a mistake you made or a correction you received, you should take note in the `Lessons` section in the `.cursorrules` file so you will not make the same mistake again.
You should also use the `.cursorrules` file as a Scratchpad to organize your thoughts. Especially when you receive a new task, you should first review the content of the Scratchpad, clear old different task if necessary, first explain the task, and plan the steps you need to take to complete the task. You can use todo markers to indicate the progress, e.g.
[X] Task 1
[ ] Task 2
Also update the progress of the task in the Scratchpad when you finish a subtask.
Especially when you finished a milestone, it will help to improve your depth of task accomplishment to use the Scratchpad to reflect and plan.
The goal is to help you maintain a big picture as well as the progress of the task. Always refer to the Scratchpad when you plan the next step.
# Tools
Note all the tools are in python3. So in the case you need to do batch processing, you can always consult the python files and write your own script.
## Screenshot Verification
The screenshot verification workflow allows you to capture screenshots of web pages and verify their appearance using LLMs. The following tools are available:
1. Screenshot Capture:
```bash
venv/bin/python3 tools/screenshot_utils.py URL [--output OUTPUT] [--width WIDTH] [--height HEIGHT]
```
2. LLM Verification with Images:
```bash
venv/bin/python3 tools/llm_api.py --prompt "Your verification question" --provider {openai|anthropic} --image path/to/screenshot.png
```
Example workflow:
```python
from screenshot_utils import take_screenshot_sync
from llm_api import query_llm
# Take a screenshot
screenshot_path = take_screenshot_sync('https://example.com', 'screenshot.png')
# Verify with LLM
response = query_llm(
"What is the background color and title of this webpage?",
provider="openai", # or "anthropic"
image_path=screenshot_path
)
print(response)
```
## LLM
You always have an LLM at your side to help you with the task. For simple tasks, you could invoke the LLM by running the following command:
```
venv/bin/python3 ./tools/llm_api.py --prompt "What is the capital of France?" --provider "anthropic"
```
The LLM API supports multiple providers:
- OpenAI (default, model: gpt-4o)
- Azure OpenAI (model: configured via AZURE_OPENAI_MODEL_DEPLOYMENT in .env file, defaults to gpt-4o-ms)
- DeepSeek (model: deepseek-chat)
- Anthropic (model: claude-3-sonnet-20240229)
- Gemini (model: gemini-pro)
- Local LLM (model: Qwen/Qwen2.5-32B-Instruct-AWQ)
But usually it's a better idea to check the content of the file and use the APIs in the `tools/llm_api.py` file to invoke the LLM if needed.
## Web browser
You could use the `tools/web_scraper.py` file to scrape the web.
```bash
venv/bin/python3 ./tools/web_scraper.py --max-concurrent 3 URL1 URL2 URL3
```
This will output the content of the web pages.
## Search engine
You could use the `tools/search_engine.py` file to search the web.
```bash
venv/bin/python3 ./tools/search_engine.py "your search keywords"
```
This will output the search results in the following format:
```
URL: https://example.com
Title: This is the title of the search result
Snippet: This is a snippet of the search result
```
If needed, you can further use the `web_scraper.py` file to scrape the web page content.
# Lessons
## User Specified Lessons
- You have a python venv in ./venv. Always use (activate) it when doing python development. First, to check whether 'uv' is available, use `which uv`. If that's the case, first activate the venv, and then use `uv pip install` to install packages. Otherwise, fall back to `pip`.
- Due to Cursor's limit, when you use `git` and `gh` and need to submit a multiline commit message, first write the message in a file, and then use `git commit -F <filename>` or similar command to commit. And then remove the file. Include "[Cursor] " in the commit message and PR title.
## Cursor learned
- For search results, ensure proper handling of different character encodings (UTF-8) for international queries
- When using seaborn styles in matplotlib, use 'seaborn-v0_8' instead of 'seaborn' as the style name due to recent seaborn version changes
- Use 'gpt-4o' as the model name for OpenAI's GPT-4 with vision capabilities
- When searching for recent news, use the current year (2025) instead of previous years, or simply use the "recent" keyword to get the latest information
# Scratchpad