A project developed and maintained as part of the aim at bringing current capabilities in machine learning and artificial intelligence into practical use for non-programmers and average computer users.
Repositories
OlafenwaMoses repositories
(14 stars) (12 forks) (0 indexed issues) (0 open good first issues)
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A dataset of traffic, fire and accident images for training deep learning models.
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A collection of experiences utilizing machine learning models with Fritz
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OlafenwaMoses/imageai-frPython
(1 star) (6 forks) (0 indexed issues) (0 open good first issues)
OlafenwaMoses/kerasPython
Deep Learning for humans
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Python bindings for llama.cpp
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Port of Facebook's LLaMA model in C/C++
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The repository provides code for running inference and training for "Segment and Caption Anything" (SCA) , links for downloading the trained model checkpoints, and example notebooks / gradio demo that show how to use the model.
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OlafenwaMoses/vizion3DPython
3D Capability and Intelligence for the real world.
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