A notebook tutorial series for performing predictive maintenance using machine learning
-
Updated
Jun 23, 2020 - Jupyter Notebook
A notebook tutorial series for performing predictive maintenance using machine learning
Use a Raspberry Pi as fast mass storage solution for your Commodore 8-bit computer using just the datassette port.
remaining useful life, residual useful life, remaining life estimation, survival analysis, degradation models, run-to-failure models, condition-based maintenance, CBM, predictive maintenance, PdM, prognostics health management, PHM
C128 MMU 256K RAM expansion
Simple Console 6502/C64 Emulator written in C++ for Portability (ported from simple-emu-c64) ***AND see branches for embedded, LCD versions
CBM 1551 paddle replacement / mass storage using an SD card interfacing with the Commodore C16/116/Plus4 simulating a TCBM bus 1551 disk drive
Reverse engineering the SSE SoftBox, a CP/M system for Commodore PET/CBM computers
Server for hosting software via HTTP for use with Meatloaf. A Commodore 64/128/VIC20/+4 multi-device emulator.
Plotting and analytic utilities for the CHOIR Body Map.
DolphinDOS 3 board for (but not only) C128DCR internal 1571
A daughterboard to expand C128/D/DCR color ram to 8 bits and/or to 32K OR expand internal 1571 RAM
Raspberry Pi and Commodore PET / CBM communication via GPIO and user port.
Add a description, image, and links to the cbm topic page so that developers can more easily learn about it.
To associate your repository with the cbm topic, visit your repo's landing page and select "manage topics."