mamba-architecture
Mamba - Selective State Space Models
Quick start
Mamba is a state-space model architecture achieving O(n) linear complexity for sequence modeling.
Installation:
# Install causal-conv1d (optional, for efficiency)
pip install causal-conv1d>=1.4.0
# Install Mamba
pip install mamba-ssm
# Or both together
pip install mamba-ssm[causal-conv1d]
Prerequisites: Linux, NVIDIA GPU, PyTorch 1.12+, CUDA 11.6+
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