cli-tool/components/skills/ai-research/model-architecture-mamba/SKILL.md
State-space model with O(n) complexity vs Transformers' O(n²). 5× faster inference, million-token sequences, no KV cache. Selective SSM with hardware-aware design. Mamba-1 (d_state=16) and Mamba-2 (d_state=128, multi-head). Models 130M-2.8B on HuggingFace.
npx skillsauth add davila7/claude-code-templates mamba-architectureInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
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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+
Basic usage (Mamba block):
import torch
from mamba_ssm import Mamba
batch, length, dim = 2, 64, 16
x = torch.randn(batch, length, dim).to("cuda")
model = Mamba(
d_model=dim, # Model dimension
d_state=16, # SSM state dimension
d_conv=4, # Conv1d kernel size
expand=2 # Expansion factor
).to("cuda")
y = model(x) # O(n) complexity!
assert y.shape == x.shape
Complete LM with generation:
from mamba_ssm.models.mixer_seq_simple import MambaLMHeadModel
from mamba_ssm.models.config_mamba import MambaConfig
import torch
# Configure Mamba-2 LM
config = MambaConfig(
d_model=1024, # Hidden dimension
n_layer=24, # Number of layers
vocab_size=50277, # Vocabulary size
ssm_cfg=dict(
layer="Mamba2", # Use Mamba-2
d_state=128, # Larger state for Mamba-2
headdim=64, # Head dimension
ngroups=1 # Number of groups
)
)
model = MambaLMHeadModel(config, device="cuda", dtype=torch.float16)
# Generate text
input_ids = torch.randint(0, 1000, (1, 20), device="cuda", dtype=torch.long)
output = model.generate(
input_ids=input_ids,
max_length=100,
temperature=0.7,
top_p=0.9
)
Load from HuggingFace:
from transformers import AutoTokenizer
from mamba_ssm.models.mixer_seq_simple import MambaLMHeadModel
# Load pretrained model
model_name = "state-spaces/mamba-2.8b"
tokenizer = AutoTokenizer.from_pretrained("EleutherAI/gpt-neox-20b") # Use compatible tokenizer
model = MambaLMHeadModel.from_pretrained(model_name, device="cuda", dtype=torch.float16)
# Generate
prompt = "The future of AI is"
input_ids = tokenizer(prompt, return_tensors="pt").input_ids.to("cuda")
output_ids = model.generate(
input_ids=input_ids,
max_length=200,
temperature=0.7,
top_p=0.9,
repetition_penalty=1.2
)
generated_text = tokenizer.decode(output_ids[0])
print(generated_text)
Available models:
state-spaces/mamba-130mstate-spaces/mamba-370mstate-spaces/mamba-790mstate-spaces/mamba-1.4bstate-spaces/mamba-2.8bMamba-1 (smaller state):
from mamba_ssm import Mamba
model = Mamba(
d_model=256,
d_state=16, # Smaller state dimension
d_conv=4,
expand=2
).to("cuda")
Mamba-2 (multi-head, larger state):
from mamba_ssm import Mamba2
model = Mamba2(
d_model=256,
d_state=128, # Larger state dimension
d_conv=4,
expand=2,
headdim=64, # Head dimension for multi-head
ngroups=1 # Parallel groups
).to("cuda")
Key differences:
Generation speed comparison:
# Benchmark Mamba
python benchmarks/benchmark_generation_mamba_simple.py \
--model-name "state-spaces/mamba-2.8b" \
--prompt "The future of machine learning is" \
--topp 0.9 --temperature 0.7 --repetition-penalty 1.2
# Benchmark Transformer
python benchmarks/benchmark_generation_mamba_simple.py \
--model-name "EleutherAI/pythia-2.8b" \
--prompt "The future of machine learning is" \
--topp 0.9 --temperature 0.7 --repetition-penalty 1.2
Expected results:
Use Mamba when:
Advantages:
Use alternatives instead:
Issue: CUDA out of memory
Reduce batch size or use gradient checkpointing:
model = MambaLMHeadModel(config, device="cuda", dtype=torch.float16)
model.gradient_checkpointing_enable() # Enable checkpointing
Issue: Slow installation
Install binary wheels (not source):
pip install mamba-ssm --no-build-isolation
Issue: Missing causal-conv1d
Install separately:
pip install causal-conv1d>=1.4.0
Issue: Model not loading from HuggingFace
Use MambaLMHeadModel.from_pretrained (not AutoModel):
from mamba_ssm.models.mixer_seq_simple import MambaLMHeadModel
model = MambaLMHeadModel.from_pretrained("state-spaces/mamba-2.8b")
Selective SSM: See references/selective-ssm.md for mathematical formulation, state-space equations, and how selectivity enables O(n) complexity.
Mamba-2 architecture: See references/mamba2-details.md for multi-head structure, tensor parallelism, and distributed training setup.
Performance optimization: See references/performance.md for hardware-aware design, CUDA kernels, and memory efficiency techniques.
Performance (vs Transformers):
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