feat(stage-8c): scaffold qwen3_5 (Qwen3.6) — dispatch + stubs + TP gate
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Lays the wiring for the top-priority TP-2 target without doing the substantive architecture work yet. After this commit, attempting to load a Qwen3.6 (`model_type = "qwen3_5"`) model: - Passes config.json parse — the real upstream shape (text_config wrapper, layer_types, attn_output_gate, head_dim=256, etc.) round- trips through a typed Config (unit test included). - Constructs a placeholder Qwen3_5ForCausalLM, attaches it to a ModelArch::Qwen3_5Dense variant, registers it in the loaded set. - Fails on the first inference forward with a clear "Qwen3-Next forward not implemented yet (Stage 8c, TP-2 motivator)" — the point where the real architecture work begins. New layout: - `harness/arch/` for custom architectures candle-transformers doesn't ship. Each architecture is one module: Config + ForCausalLM + impl. - `harness/arch/qwen3_5.rs` — the scaffold. Heavy doc comments on the open work: layer_types dispatch (full_attention vs linear_attention, the latter being the hard part with no candle precedent), attn_output_gate, text_config nesting, recurrent state lifecycle. - DENSE_SUPPORTED_MODEL_TYPES adds "qwen3_5"; load_arch_dense gains a branch that constructs the stub. TP-side gate: - New `check_tp_arch_supported`: even though Llama / Qwen3 MoE pass the single-GPU dense check (DENSE_SUPPORTED_MODEL_TYPES), the worker pool's `load_dense_shard` reconstructs the config as Qwen3 on every rank — silently misrouting a non-Qwen3 dense load through it would surface as a cryptic per-rank deserialise error. - TP_SUPPORTED_MODEL_TYPES = ["qwen3"] (cuda-gated). Anything else bails *before* the worker pool spawns and NCCL handshake costs are paid, with a marker pointing at the `tp_<family>.rs` module a contributor would need to add. qwen3_5 specifically lands here until its architecture is real. The naming choice: keep "qwen3_5" from the model's own config.json rather than mistralrs's "qwen3_next" — the latter ages poorly the moment Qwen ship another architecture revision. Unit tests: 2 new for qwen3_5 (config deserialise + dispatch gate); the previously-rejecting test for qwen3_5 swapped to a fictional arch so it stays meaningful as the supported set grows. 26 lib tests pass; cargo clippy CPU + --features cuda both clean. Co-Authored-By: Claude Opus 4.7 (1M context) <noreply@anthropic.com>
This commit is contained in:
23
crates/neuron/src/harness/arch/mod.rs
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23
crates/neuron/src/harness/arch/mod.rs
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@@ -0,0 +1,23 @@
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//! Custom architecture implementations.
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//!
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//! When candle-transformers ships a model family unchanged
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//! (`models::llama`, `models::qwen3`, `models::qwen3_moe`, etc.), the
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//! handler in `harness/candle.rs` just wraps the upstream type in a
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//! `ModelArch` variant.
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//!
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//! When candle has nothing for the architecture and we have to write
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//! it from scratch — Qwen3-Next / Qwen3.6 (`qwen3_5`) being the
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//! motivating example — the implementation lands here, one file per
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//! architecture.
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//!
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//! Each architecture module is expected to expose:
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//! - A `Config` type deserialised from the model's `config.json`
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//! (some architectures nest the real hyperparams under `text_config`,
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//! in which case the module owns the unwrapping).
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//! - A `ForCausalLM` struct with `new`, `forward(&mut self, x, offset)
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//! -> Result<Tensor>`, and `clear_kv_cache(&mut self)`.
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//!
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//! TP-aware analogues live in `harness/tp/tp_<family>.rs` and follow
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//! the pattern set by `tp_qwen3.rs`.
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pub mod qwen3_5;
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207
crates/neuron/src/harness/arch/qwen3_5.rs
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crates/neuron/src/harness/arch/qwen3_5.rs
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//! Qwen3-Next (`model_type = "qwen3_5"`) architecture — Qwen3.6's
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//! upstream architecture revision.
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//!
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//! ## Naming
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//!
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//! The model release this targets is `Qwen/Qwen3.6-*` but the
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//! architecture name in HuggingFace's `config.json` is `qwen3_5`.
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//! mistralrs calls the same architecture `qwen3_next`; that label
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//! ages poorly the next time Qwen ship a new arch, so we key on the
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//! canonical `qwen3_5` from the model's own config.
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//!
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//! ## Status
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//!
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//! **Scaffold only.** `Config` deserialisation is real (so the dispatch
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//! in `candle.rs::load_arch_dense` can route based on `model_type`
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//! and the operator's diagnostic surfaces "qwen3_5" in the supported
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//! set); the actual forward pass is `unimplemented!()`. Filling this
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//! in is the substantive Stage 8c work.
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//!
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//! ## What the architecture needs (open work)
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//!
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//! Confirmed from `Qwen/Qwen3.6-27B/config.json`:
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//! - Real hyperparams nested under `text_config: {...}`. The
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//! architecture is text-side; the multimodal vision tower is
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//! separate (`image_token_id`, `language_model_only=false`).
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//! - `hidden_size: 5120`, `head_dim: 256`, `intermediate_size: 17408`,
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//! `num_attention_heads`, `num_key_value_heads`, etc. — bigger
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//! head_dim than plain Qwen3.
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//! - `attn_output_gate: true` — a sigmoid gate multiplied into the
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//! attention output before the projection. ~10 LoC addition vs the
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//! plain Qwen3 attention.
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//! - `layer_types: ["linear_attention", "linear_attention",
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//! "linear_attention", "full_attention", ...]` with
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//! `full_attention_interval: 4` — every 4th layer is full
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//! attention, the rest are linear-attention. The full-attention
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//! layers shape like a Qwen3 attention; the linear-attention
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//! layers are the hard part.
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//!
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//! ## Linear-attention layer
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//!
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//! Candle has nothing we can reuse — has to be written against the
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//! reference Python in the Qwen3-Next HF repo. Likely Lightning
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//! Attention-2 (state-space-ish recurrence) given the
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//! `linear_attention` tag and Qwen3's prior `qwen3-omni` work. Needs:
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//! - A persistent recurrent state per layer (replaces the explicit
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//! KV cache for full attention).
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//! - Per-token update + readout primitives, fused if possible.
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//! - Numerical-correctness validation against the Python reference
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//! on a fixed prompt before trusting any output downstream.
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//!
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//! ## TP-2 (the immediate motivator)
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//!
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//! Beast's 2x RTX 5090 needs tensor-parallel to fit Qwen3.6-27B.
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//! TP-aware analogue lives at `harness/tp/tp_qwen3_5.rs` (not yet
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//! created — added alongside the dense impl). Sharding strategy
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//! diverges by layer type:
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//! - Full-attention layers: column-parallel q/k/v + row-parallel o,
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//! same as `tp_qwen3.rs`. With `attn_output_gate`, the gate weight
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//! is also column-parallel (one gate scalar per head).
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//! - Linear-attention layers: the recurrent state is per-token, not
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//! per-head, so head-dim sharding doesn't apply. Options are
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//! (a) replicate the linear-attention layers across ranks (cheap
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//! but wastes ~half the per-rank VRAM since 3 of every 4 layers
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//! replicate), or (b) shard along the recurrent-state dimension
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//! if the formulation allows. Decision deferred until the linear
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//! attention is actually implemented and profiled.
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use anyhow::Result;
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use candle_core::Tensor;
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use serde::Deserialize;
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/// `model_type` we deserialise from `config.json`. Const so the
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/// dispatch in `candle.rs::load_arch_dense` can pattern-match without
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/// magic strings.
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pub const MODEL_TYPE: &str = "qwen3_5";
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/// Top-level shape of Qwen3-Next's `config.json`. The real
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/// hyperparameters live in `text_config`; the rest is multimodal /
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/// tokeniser glue we don't need for the language-model forward.
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#[derive(Debug, Clone, Deserialize)]
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pub struct Config {
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/// Always `"qwen3_5"` for this architecture. Kept on the struct
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/// so the (eventual) dispatch / logging code can show it without
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/// re-parsing the JSON.
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pub model_type: String,
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/// The text-side hyperparameters. Everything we actually need.
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pub text_config: TextConfig,
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}
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/// Inner config (the `text_config` block). Mirrors the Qwen3 layout
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/// but with the extras Qwen3-Next adds (`attn_output_gate`,
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/// `layer_types`, `full_attention_interval`, larger `head_dim`).
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#[derive(Debug, Clone, Deserialize)]
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pub struct TextConfig {
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pub vocab_size: usize,
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pub hidden_size: usize,
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pub intermediate_size: usize,
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pub num_hidden_layers: usize,
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pub num_attention_heads: usize,
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pub num_key_value_heads: usize,
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pub head_dim: usize,
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pub max_position_embeddings: usize,
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pub rope_theta: f64,
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pub rms_norm_eps: f64,
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#[serde(default)]
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pub tie_word_embeddings: bool,
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/// New in Qwen3-Next: a sigmoid gate multiplied into the attention
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/// output before the o_proj. The Python reference applies it
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/// pointwise after softmax+matmul.
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#[serde(default)]
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pub attn_output_gate: bool,
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/// One entry per decoder layer; values are `"full_attention"` or
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/// `"linear_attention"`. Length must equal `num_hidden_layers`.
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/// `full_attention_interval` is a derived hint (every 4th layer
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/// by default) — `layer_types` is authoritative.
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#[serde(default)]
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pub layer_types: Vec<String>,
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/// Hint for the layer-type pattern (defaults to 4). Kept for
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/// logging / validation; the forward dispatches on `layer_types`.
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#[serde(default)]
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pub full_attention_interval: Option<usize>,
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}
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/// Stub model. Fields are intentionally empty — filling in the
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/// concrete architecture is the substantive Stage 8c work. The struct
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/// exists so the `ModelArch::Qwen3_5Dense(_)` variant has a payload
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/// and dispatch wiring compiles end-to-end.
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///
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/// To extend: add embed_tokens, decoder layers, final norm, and
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/// lm_head fields here; implement `new`, `forward`, `clear_kv_cache`
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/// in terms of them. Mirror the layout of `qwen3_dense::ModelForCausalLM`
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/// (in candle-transformers) as a starting point.
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pub struct Qwen3_5ForCausalLM {
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#[allow(dead_code)]
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config: Config,
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}
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impl Qwen3_5ForCausalLM {
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pub fn new(config: Config, _vb: candle_nn::VarBuilder) -> Result<Self> {
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// TODO(stage-8c): build embed_tokens, decoder layers (dispatching
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// on layer_types), final RmsNorm, lm_head from the VarBuilder.
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// For now we accept the construction so the load path can be
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// exercised end-to-end (config parse + safetensors mmap), and
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// bail at forward time with a clear marker.
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Ok(Self { config })
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}
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pub fn forward(&mut self, _input: &Tensor, _offset: usize) -> Result<Tensor> {
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anyhow::bail!(
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"Qwen3-Next ({}) forward not implemented yet (Stage 8c, TP-2 motivator)",
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self.config.model_type
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)
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}
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pub fn clear_kv_cache(&mut self) {
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// No-op for the stub. The real impl needs a `clear_kv_cache`
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// that resets the per-layer KV cache (full-attention layers)
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// and the per-layer recurrent state (linear-attention layers).
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}
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}
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#[cfg(test)]
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mod tests {
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use super::*;
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/// Confirms we can deserialise the real upstream config shape.
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/// Sample taken from `Qwen/Qwen3.6-27B/config.json`, trimmed to
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/// the fields the architecture cares about.
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#[test]
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fn config_deserialises_the_real_qwen3_6_shape() {
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let raw = r#"{
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"architectures": ["Qwen3_5ForConditionalGeneration"],
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"model_type": "qwen3_5",
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"image_token_id": 248056,
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"language_model_only": false,
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"text_config": {
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"vocab_size": 248064,
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"hidden_size": 5120,
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"intermediate_size": 17408,
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"num_hidden_layers": 64,
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"num_attention_heads": 64,
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"num_key_value_heads": 8,
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"head_dim": 256,
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"max_position_embeddings": 32768,
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"rope_theta": 5000000.0,
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"rms_norm_eps": 1e-6,
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"tie_word_embeddings": false,
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"attn_output_gate": true,
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"full_attention_interval": 4,
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"layer_types": [
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"linear_attention", "linear_attention",
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"linear_attention", "full_attention"
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]
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}
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}"#;
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let cfg: Config = serde_json::from_str(raw).expect("parse Qwen3.6 config");
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assert_eq!(cfg.model_type, "qwen3_5");
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assert_eq!(cfg.text_config.hidden_size, 5120);
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assert_eq!(cfg.text_config.head_dim, 256);
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assert!(cfg.text_config.attn_output_gate);
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assert_eq!(cfg.text_config.full_attention_interval, Some(4));
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assert_eq!(cfg.text_config.layer_types.len(), 4);
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}
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}
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@@ -126,6 +126,12 @@ pub enum ModelArch {
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// than the others (clippy::large_enum_variant).
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LlamaQuantized(QuantizedLlamaWeights),
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LlamaDense(Box<LlamaDense>),
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// Qwen3-Next family (model_type "qwen3_5") — Qwen3.6's
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// architecture. Stage 8c scaffolding only: dispatch + config parse
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// are real; forward bails "not implemented yet". See
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// `arch/qwen3_5.rs` for the open architecture work.
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Qwen3_5Dense(super::arch::qwen3_5::Qwen3_5ForCausalLM),
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}
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impl ModelArch {
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@@ -141,6 +147,7 @@ impl ModelArch {
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ModelArch::Qwen3MoeDense(m) => m.forward(input, offset)?,
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ModelArch::LlamaQuantized(m) => m.forward(input, offset)?,
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ModelArch::LlamaDense(m) => m.forward(input, offset)?,
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ModelArch::Qwen3_5Dense(m) => m.forward(input, offset)?,
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};
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squeeze_to_vocab(&raw)
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}
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@@ -164,6 +171,10 @@ impl ModelArch {
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}
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ModelArch::LlamaQuantized(_) => Ok(()),
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ModelArch::LlamaDense(m) => m.clear_kv_cache(),
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ModelArch::Qwen3_5Dense(m) => {
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m.clear_kv_cache();
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Ok(())
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}
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}
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}
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}
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@@ -225,7 +236,7 @@ const REPEAT_LAST_N: usize = 64;
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/// value. New entries land alongside a new `ModelArch` variant + a
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/// dispatch branch in `load_arch_dense` (plus, for TP, a parallel
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/// pattern in `tp_qwen3.rs`).
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const DENSE_SUPPORTED_MODEL_TYPES: &[&str] = &["llama", "qwen3", "qwen3_moe"];
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const DENSE_SUPPORTED_MODEL_TYPES: &[&str] = &["llama", "qwen3", "qwen3_5", "qwen3_moe"];
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/// Pre-flight check the operator's `config.json` against the set of
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/// architectures the dense path actually knows how to build. Surfaces
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@@ -275,6 +286,38 @@ fn check_dense_config_supported(config_json: &str, model_id: &str) -> Result<()>
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);
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}
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/// Architectures the TP path can actually load and run. A subset of
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/// `DENSE_SUPPORTED_MODEL_TYPES` — the single-GPU path supports more
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/// families than the TP path because each TP-aware module is a real
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/// chunk of work (`tp_qwen3.rs` is the only one shipped today).
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#[cfg(feature = "cuda")]
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const TP_SUPPORTED_MODEL_TYPES: &[&str] = &["qwen3"];
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/// TP-side counterpart to `check_dense_config_supported`. Gates the
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/// `load_tp` path on a narrower architecture set: even though the
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/// single-GPU dense path knows how to build a Llama model, the worker
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/// pool's `load_dense_shard` reconstructs the config as Qwen3 — there
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/// is no `tp_llama.rs` yet. Surfacing this as a config-time error
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/// (before we spawn workers and burn NCCL handshake cost) is much
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/// kinder than the inevitable per-rank deserialise failure.
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#[cfg(feature = "cuda")]
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fn check_tp_arch_supported(config_json: &str, model_id: &str) -> Result<()> {
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let v: serde_json::Value = serde_json::from_str(config_json)
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.with_context(|| format!("parse config.json for '{model_id}' as JSON"))?;
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let model_type = v.get("model_type").and_then(|x| x.as_str()).unwrap_or("");
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if TP_SUPPORTED_MODEL_TYPES.contains(&model_type) {
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return Ok(());
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}
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anyhow::bail!(
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"tensor_parallel requested for '{model_id}' (model_type='{model_type}') but \
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the TP path supports only {TP_SUPPORTED_MODEL_TYPES:?}. Adding a new \
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TP-aware architecture needs a `harness/tp/tp_<family>.rs` module mirroring \
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`tp_qwen3.rs` (sharded linears, AllReduce, per-rank head counts) and a \
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dispatch in `WorkerPool::load_dense_shard`. For models that fit on one \
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GPU, drop `tensor_parallel` to use the single-GPU dense path."
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)
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}
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/// Resolve the effective HuggingFace cache directory for the candle
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/// harness. Precedence (first hit wins):
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///
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@@ -573,6 +616,16 @@ impl CandleHarness {
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device: device_for_load,
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})))
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}
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"qwen3_5" => {
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// Stage 8c scaffold: config parses, model
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// constructs, but forward bails. See
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// `arch/qwen3_5.rs` for the open architecture work.
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let cfg: super::arch::qwen3_5::Config = serde_json::from_str(&cfg_text)
|
||||
.context("parse Qwen3-Next (qwen3_5) config.json")?;
|
||||
let model = super::arch::qwen3_5::Qwen3_5ForCausalLM::new(cfg, vb)
|
||||
.context("build Qwen3-Next dense model")?;
|
||||
Ok(ModelArch::Qwen3_5Dense(model))
|
||||
}
|
||||
other => {
|
||||
// Defensive: `check_dense_config_supported` already
|
||||
// gated on the supported set, so this branch is
|
||||
@@ -1045,6 +1098,16 @@ impl CandleHarness {
|
||||
// lifecycle on a load that's guaranteed to fail at deserialise
|
||||
// time inside every rank.
|
||||
check_dense_config_supported(&config_json, &spec.model_id)?;
|
||||
// The TP path knows how to ship and reconstruct a Qwen3 dense
|
||||
// shard (`tp_qwen3.rs`). Other architectures may pass the
|
||||
// single-GPU `check_dense_config_supported` check above but
|
||||
// have no TP-aware module — bail with a clear marker pointing
|
||||
// at the file the implementer needs to add. This keeps an
|
||||
// operator who sets `tensor_parallel=2` on a Llama model from
|
||||
// silently routing through `pool.load_dense_shard` (which
|
||||
// assumes Qwen3 config shape on the worker side) and producing
|
||||
// a confusing config-parse failure inside every rank.
|
||||
check_tp_arch_supported(&config_json, &spec.model_id)?;
|
||||
|
||||
// 2. Spawn the worker pool. Rank 0 stays in-process; ranks
|
||||
// 1..tp_size are subprocesses, one per device after the
|
||||
@@ -1704,22 +1767,24 @@ mod tests {
|
||||
}
|
||||
|
||||
#[test]
|
||||
fn check_dense_config_rejects_qwen3_5_with_clear_message() {
|
||||
fn check_dense_config_rejects_unsupported_arch_with_clear_message() {
|
||||
// Use a deliberately-fake model_type so this test stays
|
||||
// meaningful as the supported set grows. (qwen3_5 was the
|
||||
// motivating real example but now lives in the supported set
|
||||
// as a Stage 8c scaffold.)
|
||||
let cfg = r#"{
|
||||
"model_type": "qwen3_5",
|
||||
"architectures": ["Qwen3_5ForConditionalGeneration"],
|
||||
"image_token_id": 248056,
|
||||
"text_config": {"hidden_size": 5120}
|
||||
"model_type": "fictional_arch_99",
|
||||
"architectures": ["FictionalArch99ForCausalLM"]
|
||||
}"#;
|
||||
let err = check_dense_config_supported(cfg, "Qwen/Qwen3.6-27B")
|
||||
.expect_err("qwen3_5 should be rejected");
|
||||
let err = check_dense_config_supported(cfg, "Fake/Model-99")
|
||||
.expect_err("fictional_arch_99 should be rejected");
|
||||
let msg = format!("{err}");
|
||||
assert!(
|
||||
msg.contains("unsupported model_type 'qwen3_5'"),
|
||||
msg.contains("unsupported model_type 'fictional_arch_99'"),
|
||||
"message should name the rejected type: {msg}"
|
||||
);
|
||||
assert!(
|
||||
msg.contains("Qwen/Qwen3.6-27B"),
|
||||
msg.contains("Fake/Model-99"),
|
||||
"message should echo the model id: {msg}"
|
||||
);
|
||||
assert!(
|
||||
@@ -1728,6 +1793,21 @@ mod tests {
|
||||
);
|
||||
}
|
||||
|
||||
#[test]
|
||||
fn check_dense_config_accepts_qwen3_5() {
|
||||
// Sanity: Stage 8c scaffold means qwen3_5 deserialises into the
|
||||
// supported set. Forward still bails (covered by tests on the
|
||||
// architecture module itself), but the dispatch gate must let
|
||||
// it through.
|
||||
let cfg = r#"{
|
||||
"model_type": "qwen3_5",
|
||||
"architectures": ["Qwen3_5ForConditionalGeneration"],
|
||||
"text_config": {"hidden_size": 5120}
|
||||
}"#;
|
||||
check_dense_config_supported(cfg, "Qwen/Qwen3.6-27B")
|
||||
.expect("qwen3_5 should be in the supported set as of Stage 8c scaffold");
|
||||
}
|
||||
|
||||
#[test]
|
||||
fn check_dense_config_rejects_missing_model_type() {
|
||||
let cfg = r#"{ "vocab_size": 1234 }"#;
|
||||
|
||||
@@ -1,5 +1,6 @@
|
||||
//! Harness registry — maps harness names to trait implementations.
|
||||
|
||||
pub mod arch;
|
||||
pub mod candle;
|
||||
pub mod tp;
|
||||
|
||||
|
||||
Reference in New Issue
Block a user