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vLLM plugin for Qwerky AI MambaInLlama hybrid models

Project description

Qwerky vLLM Models

A vLLM plugin for serving Qwerky AI's MambaInLlama hybrid models without the --trust-remote-code flag.

Installation

pip install vllm qwerky-vllm-models

Usage

After installing, serve Qwerky models with vLLM:

vllm serve QwerkyAI/Qwerky-Llama3.2-Mamba-3B-Llama3.3-70B-base-distill --max-model-len 4096

The plugin automatically registers the model architecture with vLLM on import.

Supported Models

  • QwerkyAI/Qwerky-Llama3.2-Mamba-3B-Llama3.3-70B-base-distill

How It Works

This package uses vLLM's plugin system (vllm.general_plugins entry point) to register the MambaInLlama model architecture. This means:

  • No fork of vLLM required
  • No --trust-remote-code flag needed
  • Works with standard vLLM installation
  • Uses vLLM's native Triton-accelerated Mamba kernels

Requirements

  • Python >= 3.10
  • vLLM >= 0.14.0
  • PyTorch >= 2.0.0

Changelog

0.2.26

  • FIX: Don't inherit from MambaBase - it breaks nn.Module callability
  • MambaBase inherits from AttentionLayerBase which requires CustomOp decorator
  • Keep nn.Module as base, implement MambaBase interface methods separately
  • This fixes "object is not callable" error and restores parameter registration

0.2.25

  • MAJOR: Conform to vLLM's caching style for CUDA graph compatibility
  • Implements get_state_shape(), get_state_dtype(), and mamba_type property
  • Registers layers in static_forward_context for CUDA graph support
  • Added state_indices support for proper batch indexing via attn_metadata
  • Added copy_inputs_before_cuda_graphs() and get_seqlen_agnostic_capture_inputs()
  • Passes attn_metadata through the model forward chain
  • Should fix state persistence issues causing output degeneration/repetition

0.2.24

  • FIX: Restore double bias in dt/delta computation
  • Reference implementation intentionally applies dt_proj.bias twice:
    1. Once in dt_proj(dt) (Linear includes bias)
    2. Again in softplus(dt + bias) before discretization
  • Model was trained with this double-bias behavior, so we must match it
  • This fixes repetition issues from v0.2.22-0.2.23

0.2.23

  • CRITICAL FIX: Wrong in_proj split order causing gibberish output
  • Reference implementation uses: [z(d_inner), x(d_xb), B(d_xb), C(d_inner), dt(dt_rank)]
  • Our code incorrectly had: [z(d_inner), x(d_inner), B(d_xb), C(d_xb), dt(dt_rank)]
  • x is d_xb (needs repeat_kv expansion), C is d_inner (already full size)
  • Fixed _prefill and _decode_step to handle x/C dimensions correctly

0.2.22

  • FIX: Attempted to fix double bias (WRONG - model was trained with double bias)
  • Removed redundant bias addition - this broke the model

0.2.21

  • FIX: Dtype mismatch in rotary position embeddings
  • Cast cos/sin to match q's dtype before applying rotation
  • Fixes RuntimeError: expected scalar type Float but found BFloat16 in Q×K matmul

0.2.20

  • FIX: Dtype mismatch in attention matmul
  • After softmax (computed in float32), convert to v.dtype instead of q.dtype
  • Fixes RuntimeError: expected scalar type Float but found BFloat16

0.2.19

  • FIX: Handle vLLM warmup where seq_len exceeds KV cache size
  • During warmup/autotune, max_num_batched_tokens=8192 but cache only holds 2048
  • Skip KV caching when tokens don't fit, allowing warmup to complete

0.2.18

  • Added extensive debug logging to diagnose attention layer shape issue
  • Logs: input shape, batch_size, seq_len, Q/K/V shapes, rotary output, KV cache shapes

0.2.17

  • Added debug logging in MHADecoderLayer to trace tensor shapes

0.2.16

  • Fixed attention layer to handle vLLM's flattened 2D tensor format
  • vLLM passes [total_tokens, hidden] but attention needs [batch, seq, hidden]
  • Added automatic batch dimension handling in MHADecoderLayer

0.2.15

  • Fixed attention layer KV cache shape mismatch
  • Removed incorrect tensor transpositions in KV cache assignment

0.2.14

  • Fixed mamba_config.json loading - removed local_files_only=True restriction
  • Now properly downloads mamba_config.json from HuggingFace Hub if not cached
  • Added more detailed logging for config loading

0.2.13

  • CRITICAL FIX: Load mamba_config.json for attn_layers, d_inner, d_xb
  • MambaInLlama models store Mamba-specific config in separate mamba_config.json file
  • Main config.json has model_type: "llama" without Mamba params
  • Fixed: Model was treating ALL layers as Mamba (attn_layers=[]) because config wasn't loaded
  • Added better logging for weight loading diagnostics
  • Attention layers at indices [3, 8, 13, 18, 23, 27] now properly recognized

0.2.12

  • CRITICAL FIX: Corrected d_xb default to match qwerky-distill PR #81
  • d_xb = num_key_value_heads * head_dim (GQA-style, e.g., 8×128=1024 for 8B)
  • Fixed in_proj split: [z(d_inner), x(d_inner), B(d_xb), C(d_xb), dt(dt_rank)]
  • Added repeat_kv expansion for C (same as B) in Mamba1 architecture
  • Fixed head count: num_heads = d_inner // d_state after B/C expansion

0.2.11

  • CRITICAL FIX: Changed d_inner default from intermediate_size to hidden_size
  • MambaInLlama Mamba layers use d_inner = hidden_size, not intermediate_size
  • Fixed d_xb default: hidden_size // 16 (was hidden_size // 4)
  • This fixes the shape mismatch for all Mamba layer weights (A_log, D, conv1d, dt_proj, in_proj, out_proj)

0.2.10

  • Added debug logging to weight loading to diagnose parameter mapping issues
  • Logs first 20 model params, first 20 checkpoint weights, and all skipped weights

0.2.9

  • Fixed weight loading: split fused mha.in_proj into separate q/k/v projections
  • Renamed mha.out_proj to o_proj for checkpoint compatibility
  • Should now load all ~395 parameters instead of just 163

0.2.8

  • Fixed dtype mismatch in SSM scan: F.softplus/torch.exp compute in float32, now cast back to original dtype
  • This caused "expected BFloat16 but found Float" error in einsum

0.2.7

  • Fixed tensor broadcasting bug in _ssm_scan: A.unsqueeze(0).unsqueeze(-1) -> A.unsqueeze(0).unsqueeze(2)
  • This caused shape mismatch (8192 vs 16) during SSM discretization

0.2.6

  • Added embed_input_ids method required by vLLM's VllmModelForTextGeneration interface
  • This was the root cause of "This model does not support --runner generate" error

0.2.5

  • Fixed vLLM runner detection: added MambaInLlamaMambaForCausalLM alias for HF config compatibility
  • Added proper protocol inheritance (HasInnerState, IsHybrid) from vllm.model_executor.models.interfaces
  • Fixed class variable type hints (ClassVar[Literal[True]]) for vLLM model inspection
  • Simplified model registration code

0.2.4

  • Complete architecture rewrite with explicit state cache management
  • Separate prefill and decode paths for Mamba layers
  • Grouped-head Mamba support (num_xb_head, num_C_head, repeat_group)
  • Pure PyTorch SSM implementation (preparing for vLLM Triton op integration)

0.2.3

  • Fixed d_xb default value computation in configuration
  • Removed unsupported device/dtype kwargs from RMSNorm calls

0.2.2

  • Fixed vLLM 0.14+ compatibility issues with Mamba ops API

0.2.1

  • Updated README, removed SFT model reference

0.2.0

  • Initial public release with vLLM plugin system integration

License

Apache 2.0

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