Files
wifi-densepose/.roo/rules/insert_content.md
rUv f3c77b1750 Add WiFi DensePose implementation and results
- Implemented the WiFi DensePose model in PyTorch, including CSI phase processing, modality translation, and DensePose prediction heads.
- Added a comprehensive training utility for the model, including loss functions and training steps.
- Created a CSV file to document hardware specifications, architecture details, training parameters, performance metrics, and advantages of the model.
2025-06-07 05:23:07 +00:00

1.1 KiB

Insert Content Guidelines

insert_content

<insert_content>
  <path>File path here</path>
  <operations>
    [{"start_line":10,"content":"New code"}]
  </operations>
</insert_content>

Required Parameters:

  • path: The file path to modify
  • operations: JSON array of insertion operations

Each Operation Must Include:

  • start_line: The line number where content should be inserted (REQUIRED)
  • content: The content to insert (REQUIRED)

Common Errors to Avoid:

  • Missing start_line parameter
  • Missing content parameter
  • Invalid JSON format in operations array
  • Using non-numeric values for start_line
  • Attempting to insert at line numbers beyond file length
  • Attempting to modify non-existent files

Best Practices:

  • Always verify the file exists before attempting to modify it
  • Check file length before specifying start_line
  • Use read_file first to confirm file content and structure
  • Ensure proper JSON formatting in the operations array
  • Use for adding new content rather than modifying existing content
  • Prefer for documentation additions and new code blocks