"""Regression test: the MoA aggregator's one-shot synthesis call (``aggregate_moa_context``, used by the ``/moa `` command) must get the same Anthropic-style prompt-caching decoration as the acting-aggregator turn (``MoAChatCompletions.create``) and the advisor fan-out (``_run_reference``). 22c5048d9 ("fix(moa): restore prompt caching for the aggregator and advisors") fixed the other two MoA call paths but never touched ``aggregate_moa_context`` — a third, independent call path with its own ``call_llm(task="moa_aggregator", ...)`` invocation. Without this fix, every ``/moa `` one-shot call re-bills its full input (system-less prompt containing all joined reference outputs) with zero cache_control breakpoints, even when the resolved aggregator slot is a cache-honoring route. """ from __future__ import annotations from types import SimpleNamespace import pytest def _response(content="synthesized guidance"): message = SimpleNamespace(content=content, tool_calls=[]) choice = SimpleNamespace(message=message, finish_reason="stop") return SimpleNamespace(choices=[choice], usage=None, model="fake") @pytest.fixture def captured_calls(monkeypatch): calls = [] def fake_call_llm(**kwargs): calls.append(kwargs) return _response() monkeypatch.setattr("agent.moa_loop.call_llm", fake_call_llm) monkeypatch.setattr( "agent.moa_loop._run_references_parallel", lambda *a, **k: [("advisor-a", "advice from a", None)], ) return calls def _aggregator_kwargs(calls): return next(c for c in calls if c.get("task") == "moa_aggregator") def test_aggregator_synthesis_gets_cache_control_on_native_anthropic_route( captured_calls, monkeypatch ): """A cache-honoring aggregator slot (native Anthropic) must get cache_control breakpoints on its synthesis call.""" from agent import moa_loop monkeypatch.setattr( moa_loop, "_slot_runtime", lambda slot: { "provider": "anthropic", "model": "claude-opus-4.8", "base_url": "", "api_mode": "anthropic_messages", }, ) moa_loop.aggregate_moa_context( user_prompt="what should I do next?", api_messages=[{"role": "user", "content": "help me plan"}], reference_models=[{"provider": "openrouter", "model": "openai/gpt-5.5"}], aggregator={"provider": "anthropic", "model": "claude-opus-4.8"}, ) agg_kwargs = _aggregator_kwargs(captured_calls) synth_message = agg_kwargs["messages"][0] assert synth_message["role"] == "user" content = synth_message["content"] # Native Anthropic layout places cache_control on inner content blocks, # so a cached message's content is a list of blocks rather than a bare # string once decorated. assert isinstance(content, list), "expected native cache_control block layout" assert any( isinstance(block, dict) and "cache_control" in block for block in content ), "aggregator synthesis message must carry a cache_control breakpoint" def test_aggregator_synthesis_untouched_on_non_caching_route( captured_calls, monkeypatch ): """A non-cache-honoring aggregator slot (plain OpenAI) must not be decorated — proves the guard doesn't over-fire.""" from agent import moa_loop monkeypatch.setattr( moa_loop, "_slot_runtime", lambda slot: { "provider": "openai", "model": "gpt-5.5", "base_url": "", "api_mode": "chat_completions", }, ) moa_loop.aggregate_moa_context( user_prompt="what should I do next?", api_messages=[{"role": "user", "content": "help me plan"}], reference_models=[{"provider": "openrouter", "model": "openai/gpt-5.5"}], aggregator={"provider": "openai", "model": "gpt-5.5"}, ) agg_kwargs = _aggregator_kwargs(captured_calls) synth_message = agg_kwargs["messages"][0] assert isinstance(synth_message["content"], str), "must stay undecorated (plain string content)"