Files
chat/tests/test_turn_flow.py
T
2026-04-26 13:27:25 -04:00

197 lines
6.4 KiB
Python

"""End-to-end turn flow (T19): user POSTs prose, server parses, streams via SSE.
Covers:
- POST ``/chats/<id>/turns`` returns 404 when the chat doesn't exist.
- A successful POST appends both a ``user_turn`` and an ``assistant_turn``
event in chronological order. The assistant payload carries the full
streamed text and ``truncated=False``.
- After a turn lands, the chat detail GET renders the user prose and the
assistant text from the event log.
"""
from __future__ import annotations
import json
from pathlib import Path
import pytest
from fastapi.testclient import TestClient
from chat.app import app
from chat.db.connection import open_db
from chat.eventlog.log import append_event
from chat.eventlog.projector import project
from chat.llm.mock import MockLLMClient
@pytest.fixture
def client(tmp_path, monkeypatch):
cfg = tmp_path / "config.toml"
cfg.write_text('featherless_api_key = "test"\n')
monkeypatch.setenv("CHAT_CONFIG_PATH", str(cfg))
db = tmp_path / "test.db"
monkeypatch.setenv("CHAT_DB_PATH", str(db))
canned_parse = json.dumps(
{"segments": [{"kind": "dialogue", "text": "hello"}]}
)
canned_response = "Hi there."
# Two state-update classifier calls fire after the assistant_turn
# (one per directed edge: bot->you, you->bot). We feed them benign
# zero-delta JSON so the existing assertions about ``user_turn`` /
# ``assistant_turn`` are unaffected.
canned_state_update = json.dumps(
{"affinity_delta": 0, "trust_delta": 0, "knowledge_facts": []}
)
# Import here so env vars are visible to the dependency lookup.
from chat.web.kickoff import get_llm_client
mock = MockLLMClient(
canned=[
canned_parse,
canned_response,
canned_state_update,
canned_state_update,
]
)
app.dependency_overrides[get_llm_client] = lambda: mock
with TestClient(app) as c:
# Disable the lifespan-managed background worker — it would
# otherwise try to score significance through Featherless with
# a fake test API key. Worker behavior is exercised directly in
# tests/test_significance.py with a mock LLM factory.
app.state.background_worker.enabled = False
c.mock_llm = mock # type: ignore[attr-defined]
yield c
app.dependency_overrides.clear()
def _seed(db_path: Path) -> None:
"""Author a bot, create a chat, and seed enough state for prompt assembly."""
with open_db(db_path) as conn:
append_event(
conn,
kind="bot_authored",
payload={
"id": "bot_a",
"name": "BotA",
"persona": "thoughtful, observant",
"voice_samples": [],
"traits": [],
"backstory": "",
"initial_relationship_to_you": "",
"kickoff_prose": "...",
},
)
append_event(
conn,
kind="chat_created",
payload={
"id": "chat_bot_a",
"host_bot_id": "bot_a",
"initial_time": "2026-04-26T20:00:00+00:00",
"narrative_anchor": "Day 1",
"weather": "",
},
)
# Seed an edge so the prompt assembler has something to render.
append_event(
conn,
kind="edge_update",
payload={
"source_id": "bot_a",
"target_id": "you",
"chat_id": "chat_bot_a",
"knowledge_facts": ["coworker"],
},
)
# Activity for both speakers — required by the prompt assembler.
append_event(
conn,
kind="activity_change",
payload={
"entity_id": "you",
"posture": "sitting",
"action": {
"verb": "talking",
"interruptible": True,
"required_attention": "low",
"expected_duration": "ongoing",
},
"attention": "",
"holding": [],
"status": {},
},
)
append_event(
conn,
kind="activity_change",
payload={
"entity_id": "bot_a",
"posture": "sitting",
"action": {
"verb": "listening",
"interruptible": True,
"required_attention": "low",
"expected_duration": "ongoing",
},
"attention": "",
"holding": [],
"status": {},
},
)
project(conn)
def test_post_turn_404_when_chat_missing(client):
response = client.post("/chats/no_such/turns", data={"prose": "hello"})
assert response.status_code == 404
def test_post_turn_appends_user_and_assistant_events(client, tmp_path):
_seed(tmp_path / "test.db")
response = client.post(
"/chats/chat_bot_a/turns", data={"prose": "hello"}
)
assert response.status_code == 204
with open_db(tmp_path / "test.db") as conn:
cur = conn.execute(
"SELECT kind, payload_json FROM event_log "
"WHERE kind IN ('user_turn', 'assistant_turn') ORDER BY id"
)
rows = cur.fetchall()
assert len(rows) == 2
assert rows[0][0] == "user_turn"
assert rows[1][0] == "assistant_turn"
user_payload = json.loads(rows[0][1])
assert user_payload["chat_id"] == "chat_bot_a"
assert user_payload["prose"] == "hello"
# Segments come from the canned classifier output.
assert any(
s.get("kind") == "dialogue" and s.get("text") == "hello"
for s in user_payload["segments"]
)
assistant_payload = json.loads(rows[1][1])
assert assistant_payload["chat_id"] == "chat_bot_a"
assert assistant_payload["speaker_id"] == "bot_a"
assert assistant_payload["text"] == "Hi there."
assert assistant_payload["truncated"] is False
def test_get_chat_renders_existing_turns(client, tmp_path):
_seed(tmp_path / "test.db")
post = client.post("/chats/chat_bot_a/turns", data={"prose": "hello"})
assert post.status_code == 204
response = client.get("/chats/chat_bot_a")
assert response.status_code == 200
body = response.text
assert "hello" in body
assert "Hi there." in body