RWKV - Receptance Weighted Key Value
Quick start
RWKV (RwaKuv) combines Transformer parallelization (training) with RNN efficiency (inference).
Installation:
# Install PyTorch pip install torch --upgrade --extra-index-url https://download.pytorch.org/whl/cu121 # Install dependencies pip install pytorch-lightning==1.9.5 deepspeed wandb ninja --upgrade # Install RWKV pip install rwkv
Basic usage (GPT mode + RNN mode):
import os from rwkv.model import RWKV os.environ["RWKV_JIT_ON"] = '1' os.environ["RWKV_CUDA_ON"] = '1' # Use CUDA kernel for speed # Load model model = RWKV( model='/path/to/RWKV-4-Pile-1B5-20220903-8040', strategy='cuda fp16' ) # GPT mode (parallel processing) out, state = model.forward([187, 510, 1563, 310, 247], None) print(out.detach().cpu().numpy()) # Logits # RNN mode (sequential processing, same result) out, state = model.forward([187, 510], None) # First 2 tokens out, state = model.forward([1563], state) # Next token out, state = model.forward([310, 247], state) # Last tokens print(out.detach().cpu().numpy()) # Same logits as above!
Common workflows
Workflow 1: Text generation (streaming)
Efficient token-by-token generation:
from rwkv.model import RWKV from rwkv.utils import PIPELINE model = RWKV(model='RWKV-4-Pile-14B-20230313-ctx8192-test1050', strategy='cuda fp16') pipeline = PIPELINE(model, "20B_tokenizer.json") # Initial prompt prompt = "The future of AI is" state = None # Generate token by token for token in prompt: out, state = pipeline.model.forward(pipeline.encode(token), state) # Continue generation for _ in range(100): out, state = pipeline.model.forward(None, state) token = pipeline.sample_logits(out) print(pipeline.decode(token), end='', flush=True)
Key advantage: Constant memory per token (no growing KV cache)
Workflow 2: Long context processing (infinite context)
Process million-token sequences:
model = RWKV(model='RWKV-4-Pile-14B', strategy='cuda fp16') # Process very long document state = None long_document = load_document() # e.g., 1M tokens # Stream through entire document for chunk in chunks(long_document, chunk_size=1024): out, state = model.forward(chunk, state) # State now contains information from entire 1M token document # Memory usage: O(1) (constant, not O(n)!)
Workflow 3: Fine-tuning RWKV
Standard fine-tuning workflow:
# Training script import pytorch_lightning as pl from rwkv.model import RWKV from rwkv.trainer import RWKVTrainer # Configure model config = { 'n_layer': 24, 'n_embd': 1024, 'vocab_size': 50277, 'ctx_len': 1024 } # Setup trainer trainer = pl.Trainer( accelerator='gpu', devices=8, precision='bf16', strategy='deepspeed_stage_2', max_epochs=1 ) # Train model = RWKV(config) trainer.fit(model, train_dataloader)
Workflow 4: RWKV vs Transformer comparison
Memory comparison (1M token sequence):
# Transformer (GPT) # Memory: O(n²) for attention # KV cache: 1M × hidden_dim × n_layers × 2 (keys + values) # Example: 1M × 4096 × 24 × 2 = ~400GB (impractical!) # RWKV # Memory: O(1) per token # State: hidden_dim × n_layers = 4096 × 24 = ~400KB # 1,000,000× more efficient!
Speed comparison (inference):
# Transformer: O(n) per token (quadratic overall) # First token: 1 computation # Second token: 2 computations # ... # 1000th token: 1000 computations # RWKV: O(1) per token (linear overall) # Every token: 1 computation # 1000th token: 1 computation (same as first!)
When to use vs alternatives
Use RWKV when:
- Need very long context (100K+ tokens)
- Want constant memory usage
- Building streaming applications
- Need RNN efficiency with Transformer performance
- Memory-constrained deployment
Key advantages:
- Linear time: O(n) vs O(n²) for Transformers
- No KV cache: Constant memory per token
- Infinite context: No fixed window limit
- Parallelizable training: Like GPT
- Sequential inference: Like RNN
Use alternatives instead:
- Transformers: Need absolute best performance, have compute
- Mamba: Want state-space models
- RetNet: Need retention mechanism
- Hyena: Want convolution-based approach
Common issues
Issue: Out of memory during training
Use gradient checkpointing and DeepSpeed:
trainer = pl.Trainer( strategy='deepspeed_stage_3', # Full ZeRO-3 precision='bf16' )
Issue: Slow inference
Enable CUDA kernel:
os.environ["RWKV_CUDA_ON"] = '1'
Issue: Model not loading
Check model path and strategy:
model = RWKV( model='/absolute/path/to/model.pth', strategy='cuda fp16' # Or 'cpu fp32' for CPU )
Issue: State management in RNN mode
Always pass state between forward calls:
# WRONG: State lost out1, _ = model.forward(tokens1, None) out2, _ = model.forward(tokens2, None) # No context from tokens1! # CORRECT: State preserved out1, state = model.forward(tokens1, None) out2, state = model.forward(tokens2, state) # Has context from tokens1
Advanced topics
Time-mixing and channel-mixing: See references/architecture-details.md for WKV operation, time-decay mechanism, and receptance gates.
State management: See references/state-management.md for att_x_prev, att_kv, ffn_x_prev states, and numerical stability considerations.
RWKV-7 improvements: See references/rwkv7.md for latest architectural improvements (March 2025) and multimodal capabilities.
Hardware requirements
- GPU: NVIDIA (CUDA 11.6+) or CPU
- VRAM (FP16):
- 169M model: 1GB
- 430M model: 2GB
- 1.5B model: 4GB
- 3B model: 8GB
- 7B model: 16GB
- 14B model: 32GB
- Inference: O(1) memory per token
- Training: Parallelizable like GPT
Performance (vs Transformers):
- Speed: Similar training, faster inference
- Memory: 1000× less for long sequences
- Scaling: Linear vs quadratic
Resources
- Paper (RWKV): https://arxiv.org/abs/2305.13048 (May 2023)
- Paper (RWKV-7): https://arxiv.org/abs/2503.14456 (March 2025)
- GitHub: https://github.com/BlinkDL/RWKV-LM ⭐ 12,000+
- Docs: https://wiki.rwkv.com/
- Models: https://huggingface.co/BlinkDL
- Linux Foundation AI: Official project
- Production: Microsoft Windows, Office integration, NeMo support