_build_ollama_payload sends options.temperature and options.num_predict
to /api/chat, but never options.num_ctx. Ollama defaults num_ctx to 2048
when the option is omitted, so prompts going to any Ollama backend are
silently truncated there regardless of the model's actual capability.
Thread the discovered context length through the three call sites
(llm_call, llm_call_async, stream_llm) and emit options.num_ctx when it
is known and positive. The builder filters out the DEFAULT_CONTEXT
fallback (128000) so we don't lie to Ollama about models whose window
we couldn't actually discover. The issue's literal 'when > 2048'
heuristic is dropped: a model with a real context smaller than 2048
would OOM if Ollama used its default, so we pass the real value
regardless of size. Matches how src/context_compactor.py uses the
same helper.
Sister fix to PR #753 — that PR teaches the compactor the right budget,
this one tells Ollama to actually use that budget on the way in.
The agent's multi-round (tool-result) follow-up request was rejected with
HTTP 400 on two providers, so tools ran but the agent never produced an answer:
- OpenAI-compatible streaming (Gemini 3) dropped the per-call thought_signature
and collided parallel tool calls, which arrive with index=None: they all
landed in slot 0, overwriting the first call's name and corrupting its
arguments by concatenation, so the follow-up request 400'd. Capture and replay
each call's extra_content (thought_signature), and give every parallel call
its own accumulator slot (allocated above the max key, so sparse or mixed
indices can't collide).
- Native Ollama /api/chat expects object tool-call arguments, but Odysseus
carries them as a JSON string, which Ollama rejected ("Value looks like
object, but can't find closing '}' symbol"). Convert them to objects in the
Ollama payload builder.
Both compose with the no-prose null-content sanitize fix from #862.
Tested: python -m pytest tests/test_llm_core_streaming.py
tests/test_llm_core_ollama.py tests/test_agent_loop.py (53 pass), and
python -m py_compile src/llm_core.py src/agent_loop.py.