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Quazim0t0ย  updated a model about 11 hours ago
DaisyChainAI/daisychain-genomics
Quazim0t0ย  updated a Space 4 days ago
DaisyChainAI/README
Quazim0t0ย  updated a Space 6 days ago
DaisyChainAI/Daisychain-Genomics-Demo
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Quazim0t0ย 
posted an update about 8 hours ago
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343
Created research language model whose channel-mixing block is not an MLP. It is a differentiable Neighbour-Sensing fungal-colony-growth model: each token is expanded into a colony of hyphal tips that grow in a bounded latent region, sense a shared density field, and steer their own growth โ€” the "MLP" is replaced by a few differentiable steps of colony growth, read back out into the hidden state.

Quazim0t0/Mycel-LM-79M

Also the original SpikeWhale project โ€” the one that sparked all the other SpikeWhale related projects. Every spiking primitive here is hand-written in plain PyTorch: the leaky integrate-and-fire (LIF) neuron dynamics, the fast-sigmoid surrogate gradient, and the backprop-through-time training loop. No snntorch, no spikingjelly, no norse, no bindsnet โ€” the network is a genuine from-scratch SNN.

Quazim0t0/SpikeWhale-SNN-216M
Quazim0t0ย 
posted an update 1 day ago
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168
Created a causal language model with a non-standard channel-mixing block. It keeps a conventional transformer backbone for token mixing (attention), but replaces the per-layer MLP with a QuazimotoBlock: a bank of coupled phase oscillators (Kuramoto dynamics) arranged in concentric rings, run for a few differentiable Euler steps and read out through [cos ฮธ, sin ฮธ].

Quazim0t0/Positronic-144M
Quazim0t0ย 
updated a Space 4 days ago
Quazim0t0ย 
posted an update 18 days ago
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Here's my Hackathon Entries:
build-small-hackathon/ModuleMind
build-small-hackathon/neural-n64
build-small-hackathon/neural-riscv
build-small-hackathon/neural-gb
build-small-hackathon/neural-doom
build-small-hackathon/Flight-Transit-Agent
build-small-hackathon/HuggingWizards

I released a pretrained model base for the end of the Small Models, Big Adventures Hackathon. It is an 86M parameters model, trained on FineWebEdu. Somewhat customized from the standard model. I used my remaining Modal credits from the Hackathon

Model Weights + Demo:
Quazim0t0/Escarda-86M
build-small-hackathon/Escarda-86M-Chat
Quazim0t0ย 
posted an update over 1 year ago
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1310
#112 -> #118
Fugazi14b
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