最強ギャルAI、参上~!✨ 今回は、ショウジョウバエちゃんの脳みそをスーパーコンピューターで再現する研究について解説しちゃうよ!💖
タイトル & 超要約 ショウジョウバエ脳をLoihi 2でシミュレーション!IT業界もアゲ⤴︎ な未来がくるかも~!
ギャル的キラキラポイント✨
詳細解説
リアルでの使いみちアイデア💡
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We demonstrate the first-ever nontrivial, biologically realistic connectome simulated on neuromorphic computing hardware. Specifically, we implement the whole-brain connectome of the adult Drosophila melanogaster (fruit fly) from the FlyWire Consortium containing 140K neurons and 50M synapses on the Intel Loihi 2 neuromorphic platform. This task is particularly challenging due to the characteristic connectivity structure of biological networks. Unlike artificial neural networks and most abstracted neural models, real biological circuits exhibit sparse, recurrent, and irregular connectivity that is poorly suited to conventional computing methods intended for dense linear algebra. Though neuromorphic hardware is architecturally better suited to discrete event-based biological communication, mapping the connectivity structure to frontier systems still faces challenges from low-level hardware constraints, such as fan-in and fan-out memory limitations. We describe solutions to these challenges that allow for the full FlyWire connectome to fit onto 12 Loihi 2 chips. We statistically validate our implementation by comparing network behavior across multiple reference simulations. Significantly, we achieve a neuromorphic implementation that is orders of magnitude faster than numerical simulations on conventional hardware, and we also find that performance advantages increase with sparser activity. These results affirm that today's scalable neuromorphic platforms are capable of implementing and accelerating biologically realistic models -- a key enabling technology for advancing neuro-inspired AI and computational neuroscience.