Commit Graph

12 Commits

Author SHA1 Message Date
Dobromir Popov
471893c9d5 Skip multimodal/MTP checkpoint tensors absent from the text-only causal LM
Qwen3.5/3.6-MoE checkpoints ship vision (model.visual.*) and multi-token-
prediction (mtp.*) weights; the partial shard loader assigned them into the
text-only Qwen3_5MoeForCausalLM and crashed with AttributeError 'mtp'.
Filter selected tensors against the built model's state_dict keys, matching
transformers' _keys_to_ignore_on_load_unexpected behavior.

Co-Authored-By: Claude Fable 5 <noreply@anthropic.com>
2026-07-07 19:16:19 +02:00
Dobromir Popov
cdd2699e63 try fix model loading quen3.6-35b 2026-07-07 18:36:29 +02:00
Dobromir Popov
456c43ea1d set max tokens to 5k 2026-07-07 18:21:13 +02:00
Dobromir Popov
e81d989f39 dash QOL 2026-07-07 17:37:38 +03:00
Dobromir Popov
2e696be80f dual billing; tracker to node model sharing 2026-07-06 17:31:11 +03:00
Dobromir Popov
ccb69c41e3 new tasks, model pricing, auto quantisation, etc... 2026-07-06 17:11:53 +03:00
Dobromir Popov
bc760c1694 Track Kimi model metadata and cache path 2026-07-01 12:38:31 +02:00
Dobromir Popov
96af82892f feat(us-022): X-Meshnet-Start-Layer pipeline protocol for overlapping shards
When _select_route picks two nodes with overlapping registrations (e.g.
A:0-22 and B:20-24), the tracker now injects start_layer per hop so B
executes only layers 23-24, not 20-24.

- model_backend: forward_bytes + _run_layers accept start_layer offset;
  clamped to shard_start to prevent out-of-bounds indexing
- torch_server: _handle_binary_forward reads X-Meshnet-Start-Layer header;
  _run_downstream_pipeline sends it per hop; route is now list[tuple[str,int]]
- server: proxy injects {endpoint, start_layer} objects in X-Meshnet-Route;
  /v1/route response includes start_layer per node in the nodes list
- test: fake backends accept start_layer=None kwarg

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-06-30 13:14:45 +03:00
Dobromir Popov
1bdfce657d inference working 2026-06-29 23:54:35 +03:00
Dobromir Popov
607d49f5b0 fix: proper autoregressive inference with streaming support
Single-node mode now uses HF model.generate() instead of one-shot
decode_tail(), giving correct multi-token output with KV cache.

model_backend.py:
- generate_text(messages, max_new_tokens, temperature, top_p) — full
  autoregressive generation via model.generate() with chat template
- generate_text_streaming() — yields token strings via TextIteratorStreamer
- _encode_messages() — applies chat template (tokenize=False then tokenize),
  falls back to joining user messages; avoids BatchEncoding issues

torch_server.py:
- _handle_chat_completions: fast path when backend is head+tail — calls
  generate_text() or generate_text_streaming() directly instead of the
  single-token encode_prompt+decode_tail pipeline
- _stream_openai_response: new SSE streaming handler for token iterators
- Parses max_tokens, temperature, top_p from request body
- Distributed path (partial shards) unchanged

Verified: streaming and non-streaming both work with Qwen2.5-0.5B-Instruct.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-06-29 18:46:51 +03:00
Dobromir Popov
4e292eaaae fix: shard_end convention — inclusive (0-based) not exclusive
model_backend.py was using Python-style exclusive end (layers[start:end])
while all callers (CLI, tests, QUICKSTART) use inclusive 0-based indexing.
Result: 24-layer model with shard_end=23 ran only 23 layers and never
set is_tail=True, so decode_tail() was never called and responses were empty.

- is_tail: == total_layers → >= total_layers - 1
- _run_layers: layers[start:end] → layers[start:end+1]
- Validation: > total_layers → >= total_layers (was also wrong)

Inference confirmed: Qwen2.5-0.5B-Instruct now returns real LLM output.

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
2026-06-29 18:37:01 +03:00
Dobromir Popov
2690d9b9ba feat: add real PyTorch model backend 2026-06-29 15:54:40 +03:00