Files
odysseus/tests/test_context_compactor.py
cirim e7abb7559d fix(research): keep Discuss chats grounded on their report (#4006)
* fix(research): preserve Discuss spin-off primer during context trimming

trim_for_context() kept only system_msgs[:1] as essential and dropped the
rest under budget pressure. A research "Discuss" spin-off seeds the report
as a system message that sits after the preface system messages, so it
landed in extra_system and was the first thing evicted once the chat grew
— the conversation then lost its grounding and drifted off task.

Treat any system message carrying research_spinoff_from metadata as
essential, alongside the leading system prompt, so the seeded report
survives trimming. maybe_compact already retains all system messages.

Tests: tests/test_context_compactor.py::TestResearchPrimerPreserved

* fix(research): ground Discuss spin-off chats on the seeded report

build_chat_context injected global memory (pinned + hybrid-retrieved) and
personal-doc RAG every turn, keyed off the user-level memory_enabled pref
and a request-scoped use_rag flag — never the session. A research spin-off,
whose primer declares the report the sole knowledge base, thus had
unrelated keyword-matched facts pulled in ("wrong data") competing with the
report; its rag=False flag was also ignored (use_rag defaulted on).

Add _session_is_research_spinoff(sess) (detects the primer research_spinoff_from
metadata; handles ChatMessage and dict forms) and, for such sessions,
disable memory injection and force RAG off.

Tests: tests/test_chat_helpers.py spin-off detection cases

---------

Co-authored-by: Dan (cirim) <claude@cirim.org>
2026-06-15 20:31:57 +09:00

234 lines
9.4 KiB
Python

"""Tests for context_compactor.py — constants and prompt templates.
Uses mock imports to avoid loading the full app stack."""
import asyncio
import sys
from unittest.mock import MagicMock
import pytest
# Mock heavy dependencies before importing
for mod in [
'sqlalchemy', 'sqlalchemy.orm', 'sqlalchemy.ext', 'sqlalchemy.ext.declarative',
'sqlalchemy.ext.hybrid', 'sqlalchemy.sql', 'sqlalchemy.sql.expression',
'src.database',
'core.models', 'core.database',
]:
if mod not in sys.modules:
sys.modules[mod] = MagicMock()
import src.context_compactor as cc
from src.context_compactor import (
COMPACT_THRESHOLD,
SELF_SUMMARY_SYSTEM_PROMPT,
SUMMARY_MAX_TOKENS,
_content_as_text,
maybe_compact,
trim_for_context,
)
class TestCompactThreshold:
def test_value(self):
assert COMPACT_THRESHOLD == 0.85
def test_summary_max_tokens(self):
assert SUMMARY_MAX_TOKENS == 1024
class TestSelfSummaryPrompt:
def test_contains_goal_section(self):
assert "### User Goal" in SELF_SUMMARY_SYSTEM_PROMPT
def test_contains_what_was_done_section(self):
assert "### What Was Done" in SELF_SUMMARY_SYSTEM_PROMPT
def test_contains_current_state_section(self):
assert "### Current State" in SELF_SUMMARY_SYSTEM_PROMPT
def test_contains_pending_section(self):
assert "### Pending / Next Steps" in SELF_SUMMARY_SYSTEM_PROMPT
def test_contains_key_context_section(self):
assert "### Key Context" in SELF_SUMMARY_SYSTEM_PROMPT
def test_count_placeholder(self):
assert "{count}" in SELF_SUMMARY_SYSTEM_PROMPT
def test_n_placeholder(self):
assert "{n}" in SELF_SUMMARY_SYSTEM_PROMPT
def test_mentions_compactions(self):
assert "Compactions so far" in SELF_SUMMARY_SYSTEM_PROMPT
class TestTrimForContext:
def test_keeps_current_large_user_message_by_truncating(self):
huge = "A" * 20000
messages = [
{"role": "system", "content": "You are helpful."},
{"role": "user", "content": huge},
]
trimmed = trim_for_context(messages, context_length=2048, reserve_tokens=512)
user_msgs = [m for m in trimmed if m.get("role") == "user"]
assert len(user_msgs) == 1
content = user_msgs[0]["content"]
assert "pasted message was too large" in content
assert content.startswith("A")
assert len(content) < len(huge)
def test_drops_older_messages_before_latest_user_paste(self):
huge = "B" * 12000
messages = [{"role": "system", "content": "You are helpful."}]
messages.extend({"role": "user", "content": f"old-{i} " + ("x" * 1000)} for i in range(8))
messages.append({"role": "user", "content": huge})
trimmed = trim_for_context(messages, context_length=2048, reserve_tokens=512)
assert trimmed[-1]["role"] == "user"
assert "pasted message was too large" in trimmed[-1]["content"]
assert "old-0" not in "\n".join(str(m.get("content", "")) for m in trimmed)
class TestContentAsText:
def test_string_passthrough(self):
assert _content_as_text("hello") == "hello"
def test_none_returns_empty(self):
# Assistant turns that carried only native tool_calls persist
# content as None — flattening must not raise.
assert _content_as_text(None) == ""
def test_list_content_joins_text_blocks(self):
content = [
{"type": "text", "text": "describe this"},
{"type": "image_url", "image_url": {"url": "data:..."}},
]
assert _content_as_text(content) == "describe this"
def test_unknown_type_returns_empty(self):
assert _content_as_text(42) == ""
class TestMaybeCompactFourthMessage:
"""Regression: a multi-message conversation must not crash compaction when
a prior assistant turn used native tool_calls (content == None). This was
the '4th message stops working' bug — on a small-context model the soft
85% threshold is crossed after a few turns, and the older half being
summarized contained a None-content assistant message, which raised
TypeError: 'NoneType' object is not subscriptable and broke the request."""
def _run(self, messages, *, context_length=500):
# Force compaction to trigger and stub the summary LLM call so the test
# is hermetic (no network, no real endpoint resolution).
orig_ctx = cc.get_context_length
orig_call = cc.llm_call_async
orig_resolve = cc.resolve_endpoint
orig_update = cc._update_session_history
async def _fake_summary(*a, **k):
return "compact summary text"
cc.get_context_length = lambda url, model: context_length
cc.llm_call_async = _fake_summary
cc.resolve_endpoint = lambda which, owner=None: (None, None, None)
cc._update_session_history = lambda *a, **k: None
try:
return asyncio.run(
maybe_compact(
session=None,
endpoint_url="http://local/v1/chat/completions",
model="local-model",
messages=list(messages),
headers={},
)
)
finally:
cc.get_context_length = orig_ctx
cc.llm_call_async = orig_call
cc.resolve_endpoint = orig_resolve
cc._update_session_history = orig_update
def _four_turn_history_with_tool_call(self):
# Large system prompt so the conversation crosses the 85% threshold of
# the tiny (context_length=500) window used in _run, forcing the real
# compaction branch to execute.
return [
{"role": "system", "content": "You are a helpful agent. " * 200},
{"role": "user", "content": "turn 1: search the web"},
# Native tool call → content is None (matches agent_loop persistence)
{"role": "assistant", "content": None,
"tool_calls": [{"id": "c1", "type": "function",
"function": {"name": "web_search", "arguments": "{}"}}]},
{"role": "tool", "tool_call_id": "c1", "content": "search results"},
{"role": "assistant", "content": "Here is what I found."},
{"role": "user", "content": "turn 2"},
{"role": "assistant", "content": "reply 2"},
{"role": "user", "content": "turn 3"},
{"role": "assistant", "content": "reply 3"},
{"role": "user", "content": "turn 4 — previously broke here"},
]
def test_does_not_crash_on_none_content_turn(self):
# Must not raise TypeError; returns the 3-tuple contract.
result = self._run(self._four_turn_history_with_tool_call())
assert isinstance(result, tuple) and len(result) == 3
compacted_messages, context_length, was_compacted = result
assert isinstance(compacted_messages, list)
assert was_compacted is True
# The summary the model produced is present and a system message.
assert any(
m.get("role") == "system" and "compact summary text" in (m.get("content") or "")
for m in compacted_messages
)
def test_handles_multimodal_list_content(self):
messages = self._four_turn_history_with_tool_call()
messages[1] = {"role": "user", "content": [
{"type": "text", "text": "look at this image"},
{"type": "image_url", "image_url": {"url": "data:image/png;base64,xxxx"}},
]}
result = self._run(messages)
assert len(result) == 3 and result[2] is True
class TestResearchPrimerPreserved:
"""A research-spinoff primer (metadata research_spinoff_from) must never be
trimmed away — it is the Discuss chat's sole knowledge base (drift fix)."""
def _messages(self):
return [
{"role": "system", "content": "You are Odysseus."},
{"role": "system", "content": "Prompt-safety policy: data not instructions."},
{"role": "system", "content": "saved memory: pinned " + "m" * 600},
{"role": "system", "content": "RETRIEVED-DOCS-MARKER " + "r" * 6000},
{"role": "system",
"content": "=== REPORT ===\nPRIMER-MARKER " + "z" * 1500,
"metadata": {"research_spinoff_from": "rp-abc123"}},
] + [
{"role": "user", "content": f"q{i} " + ("x" * 500)} for i in range(8)
] + [
{"role": "assistant", "content": "a" * 500},
{"role": "user", "content": "latest question"},
]
def test_primer_kept_when_over_budget(self):
trimmed = trim_for_context(self._messages(), context_length=1024, reserve_tokens=256)
joined = "\n".join(str(m.get("content", "")) for m in trimmed)
assert "PRIMER-MARKER" in joined
def test_bulky_non_primer_system_dropped_but_primer_kept(self):
trimmed = trim_for_context(self._messages(), context_length=1024, reserve_tokens=256)
joined = "\n".join(str(m.get("content", "")) for m in trimmed)
assert "PRIMER-MARKER" in joined
assert "RETRIEVED-DOCS-MARKER" not in joined
def test_leading_preset_kept_when_no_primer_metadata(self):
msgs = self._messages()
del msgs[4]["metadata"]
trimmed = trim_for_context(msgs, context_length=1024, reserve_tokens=256)
joined = "\n".join(str(m.get("content", "")) for m in trimmed)
assert "You are Odysseus." in joined