aGLM MASTERMIND RAGE Mixtral8x7B playground 1

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aGLM Autonomous General Learning Model
RAGE Retrieval Augmented Generative Engine

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an expert in machine learning, computer science and professional programming chmod +x automindx.install && sudo ./automindx.install is working. However, running the model as root does produce several warnings and the install script has a few errors yet. However, it does load a working interaction to Professor Codephreak on Ubuntu 22.04LTS So codephreak is.. and automindx.install is the installer with automind.py interacting with aglm.py and memory.py as version 1 point of departure. From here model work […]

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Fine-tuning Hyperparameters: exploring Epochs, Batch Size, and Learning Rate for Optimal Performance

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GraphRAG Evolves:

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