SpikeMLLM is the first spike-based MLLM framework that maintains near-lossless performance under aggressive timestep compression and delivers 9x throughput and 25x power efficiency gains via a custom RTL accelerator.
Title resolution pending
2 Pith papers cite this work. Polarity classification is still indexing.
fields
cs.NE 2years
2026 2verdicts
UNVERDICTED 2representative citing papers
SDLLM is a spike-driven LLM that uses gamma-SQP two-step encoding, bidirectional symmetric quantization, and membrane potential clipping to achieve 7x lower energy consumption and 4.2% higher accuracy than prior spike-based language models.
citing papers explorer
-
SpikeMLLM: Spike-based Multimodal Large Language Models via Modality-Specific Temporal Scales and Temporal Compression
SpikeMLLM is the first spike-based MLLM framework that maintains near-lossless performance under aggressive timestep compression and delivers 9x throughput and 25x power efficiency gains via a custom RTL accelerator.
-
Spike-driven Large Language Model
SDLLM is a spike-driven LLM that uses gamma-SQP two-step encoding, bidirectional symmetric quantization, and membrane potential clipping to achieve 7x lower energy consumption and 4.2% higher accuracy than prior spike-based language models.