* fix(replay-e2e): match by conversation, not the living system prompt The model-replay match key hashed the full input including the lead-agent system prompt. That prompt is edited frequently (e.g. #3195 added a "File Editing Workflow" section), so the committed fixture went stale the moment the prompt changed on main — turning the Layer-2 render gate RED on every unrelated PR (#3430, #3432, ...). This was a self-inflicted false positive. Root-cause fix: - replay_provider._canonical_messages now EXCLUDES the system message from the hash. The conversation (human/ai/tool) is the stable contract that identifies a recorded turn; the system prompt is an internal detail not part of the front-back contract under test. (Mirrors how open-design keys its mock picker on the user prompt, not the system internals.) Proven robust: injecting a prompt edit no longer causes a replay miss. - Layer-1 golden was BLIND to replay misses: the gateway swallows a miss into an assistant error message, so the shape-only golden stayed green on a stale fixture. It now inspects replay_provider.replay_misses() and fails loud. (Layer-2 already fails on a miss.) - Re-recorded write_read_file.ultra fixture + regenerated golden under the new conversation-only hash. - Layer-2 render spec: assert the in-graph auto-title (deterministic); the follow-up suggestion is fired async and depends on a clean JSON model output, so assert it only when the fixture captured one — never gate on its absence (recording flakiness must not block CI). - docs: REPLAY_E2E.md updated. Verified: Layer-1 golden green (no miss), Layer-2 both specs green, CI=true make test 4033 passed / 0 failed, frontend pnpm check clean. * test(replay-e2e): restore suggestions coverage with a reliable capture Addresses review feedback (the suggestion path was dropped from Layer-2): - record spec now waits for the `/suggestions` response before checking capture stability, so the recorded fixture reliably includes the frontend-fired suggestions turn (previously the stability window could return before suggestions fired, yielding a fixture without it). - Re-recorded write_read_file.ultra: 5 turns (write_file, auto-title, read_file, answer, suggestions). Golden unchanged — suggestions is a separate /suggestions call, not part of the /runs/stream SSE sequence. - Layer-2 spec: restore the hard `EXPECTED_SUGGESTION` assertion. With the record spec now waiting for /suggestions, a fixture missing the suggestion turn means a broken recording and must fail loud, not pass silently. Verified: Layer-1 golden green (no miss), Layer-2 both specs green (auto-title + suggestion render), frontend pnpm check clean. * ci: re-trigger (flaky Docker Hub image pull in sandbox e2e, unrelated) backend-unit-tests failed only in test_sandbox_orphan_reconciliation_e2e.py with 'docker pull busybox:latest ... context deadline exceeded' — a CI-runner network flake reaching Docker Hub, not related to this docs/tests-only change. Empty commit to re-run CI. --------- Co-authored-by: DanielWalnut <45447813+hetaoBackend@users.noreply.github.com>
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Record/Replay E2E — front-back contract verification
Deterministic, key-free end-to-end checks that a backend change can't silently break the frontend (and vice-versa). Two complementary layers, fed by a single recording.
Why
The mock-based frontend e2e hand-writes the backend's JSON/SSE, so a backend schema or SSE change passes green ("fake green"). These layers replay a recorded real run against the real backend (and, for Layer 2, the real frontend), so contract drift turns the build red instead.
The two layers
- Layer 1 — backend golden (
tests/test_replay_golden.py): replays a fixture through the real FastAPI gateway withReplayChatModeland asserts the streamed SSE event sequence equals a committed golden. Fast, no browser. Guards protocol shape. - Layer 2 — full-stack render (
frontend/tests/e2e-real-backend/): real Next.js + real gateway (replay model) + Chromium; asserts the replayed auto-title and a follow-up suggestion render in the browser. Guards semantic render. (Complementary to Layer 1 — neither subsumes the other.)
Layer 2 also hosts cross-stack contract scenarios — the dangerous class where a backend change silently breaks a frontend assumption and both sides' unit tests stay green. See below.
Cross-stack scenario: multi-run render order (multi-run-order.spec.ts)
Regression guard for issue #3352 (after context compression, refreshing a
thread rendered history out of order). Root cause was a front-back desync:
backend RunManager.list_by_thread returns runs newest-first (PR #2932),
while the frontend (core/threads/hooks.ts) iterated runs and prepended each
loaded page — inverting chronological order once the checkpoint no longer held
the older messages. The backend ordering test was green throughout, and the
frontend regression unit test hardcodes "backend returns newest-first" in a mock,
so only a real frontend against a real backend catches the desync.
This scenario does not record a conversation. It uses a test-only seeder
(tests/seed_runs_router.py, mounted on the replay gateway only when
DEERFLOW_ENABLE_TEST_SEED=1) to stand up a thread with ≥2 runs and per-run
message events — and deliberately no checkpoint, which is the #3352
precondition: it forces the frontend's per-run reload path to be the sole source
of truth so the ordering bug becomes observable. The seeder writes through the
gateway's own run/event stores using the request's auth context, so the real
list_by_thread → /runs/{id}/messages → prepend path runs live. Reverting the
#3354 frontend fix turns this spec red.
How replay works
tests/replay_provider.py::ReplayChatModel returns recorded assistant turns keyed
by a normalized hash of the conversation (human / ai / tool messages — role,
text, tool-call name+args; with <system-reminder>, dates, UUIDs, tmp paths
stripped). A miss raises loudly rather than passing silently.
The system prompt is excluded from the match key. The lead-agent system
prompt is a living, frequently-edited implementation detail — its wording changes
across PRs (e.g. #3195 added a "File Editing Workflow" section). Hashing it would
make every fixture go stale and red-fail unrelated PRs the moment anyone edits the
prompt. The conversation flow (user input → tool calls → results → answer) is the
stable contract that identifies a recorded turn. (This mirrors how open-design's
mock picker keys on the user prompt, not the system internals.) Combined with
pinning skills + extensions empty and disabling memory/summarization
(tests/_replay_fixture.py::build_config_yaml), a fixture replays the same across
machines, days, prompt edits, and CI. Replaying needs no API key.
A swallowed hash-miss keeps the SSE event shapes identical (the gateway wraps it
into a normal assistant error message), so the Layer-1 golden can't catch a miss
by shape alone — it inspects replay_provider.replay_misses() and fails loud
instead. Layer-2 already fails on a miss (the recorded turns never render).
Record a new scenario (needs a real key — dev machine only)
Recording drives the real frontend so captured inputs match exactly what the browser sends; fixtures contain no API key.
# 1. drive the real frontend against a real-model gateway, capturing model calls
OPENAI_API_KEY=... OPENAI_API_BASE=<openai-compatible-endpoint>/v1 \
DEERFLOW_RECORD_OUT=/tmp/rec/turns.jsonl RECORD_MODEL=<model> \
bash -c 'cd frontend && pnpm exec playwright test -c playwright.record.config.ts'
# 2. stitch the capture into a fixture
cd backend && uv run python scripts/build_fixture_from_jsonl.py \
--jsonl /tmp/rec/turns.jsonl --meta /tmp/rec/turns.jsonl.meta.json \
--out tests/fixtures/replay/<scenario>.<mode>.json --model <model>
# 3. regenerate the committed golden
DEERFLOW_WRITE_GOLDEN=1 PYTHONPATH=. uv run pytest tests/test_replay_golden.py
Run (no key)
cd backend && PYTHONPATH=. uv run pytest tests/test_replay_golden.py # Layer 1
cd frontend && pnpm exec playwright test -c playwright.real-backend.config.ts # Layer 2
CI
.github/workflows/replay-e2e.yml runs both layers on changes to either side
of the contract (frontend/**, backend/app/gateway/**,
backend/packages/harness/**, fixtures). DOM assertions are the gate; the rendered
screenshot + Playwright HTML report are uploaded as a CI artifact.
Known limitations
- Visual regression baselines are OS-specific, so they are a local dev gate only (gitignored); CI uploads the render as an artifact for human review instead of hard-asserting a cross-OS baseline.
- Fixtures are coupled to the recording-time prompt; if new
environment-dependent content enters the system prompt, extend the
normalization in
replay_provider.py(or pin it inbuild_config_yaml). - Re-record a scenario if the agent graph changes how many model calls it makes — the replay raises loudly on a hash miss pointing at the divergence.