Skip to content

helps to analyse integrated circuit die images (for example from siliconpr0n.org) with the help of ai

License

Notifications You must be signed in to change notification settings

TheCrazyT/SiliconAnalyser

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

18 Commits
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Installation

Install from source:

pip install --upgrade .

Install from pip:

pip install --upgrade silicon-analyser

Information

Side note

Bad project name decisions might lead people to this project.

Maybe you are looking for SiliconAnalysis instead?

I'm sorry for that but I can't figure out any new project name (yet).

Acceleration

The code will use your graphic card for acceleration. (but only if correct pytorch is installed, see "Additional info" below)

Frameworks/Libraries used:

Small example

  • start
  • select image
  • add grid
  • press mouse down on image and drag your rectangle for your grid
  • adjust x,y,cols,rows,width,height manualy to fit
  • add label (while grid is selected)
    • give it a random name
  • with that label selected, select cells for that label (for example cells that mark a "1")
  • select grid (for example "grid_0" again)
  • add another label (while grid is selected)
    • give it a random name
  • with that label selected, select cells for that label (for example cells that mark a "0")
  • with enough "1" and "0" labels drawn, click the "Compute" button
    • ai will find images in the grid that have the same properties
    • click "stop" once the results are satisfied
      • maximum for "acc" and "val_acc" is 1.00, the closer you are to those values, the better are the results
      • results depend on many factors:
        • the amount of cells you selected
        • how good your grid matches the current image
        • the quality of your image
        • ...
      • "acc" stands for "accuracy", "val" for "validation"
  • found ai-cells will be drawn green

Additional info

  • you might need to install cuda-specific PyTorch for accelerated computing
    • check your graphic driver version for compatible cuda version!
  • Computation (currently) only happens based on active/visible grid cells (don't be fooled by accuracy of 1 just because you have only 1 label active - just activate all and use compute)

Command line

For automatically opening a file, you can pass the filepath as a filename. For example: silicon-analyser c:\my_files\image.png But keep in mind, that the program currently needs to create files in its current working directory (grid.json, rect.json).

Keys

  • Use up/down/left/right to navigate
  • Hold shift to move faster
  • Scroll-wheel to zoom out
  • Click on minimap to get directly to a position
  • Right click on tree-items (left navigation menu) for additional options
  • Hold down middle mouse button, to move across the screen
    • (behaviour might change in future, currently it does not behave as expected)

image

TODO

  • undo option
  • maybe use a real db in background
  • some method to autofit grid
  • performance improvements
  • option for compute to continue from last training (currently starts fresh training)
  • show loading screen on start (pytorch with cuda support takes a bit to load)
  • ai-model configuration
  • project management (project-file/-folder)
  • possibility to rotate grid
  • maybe store your model on a public place? (for others to use)

About

helps to analyse integrated circuit die images (for example from siliconpr0n.org) with the help of ai

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages