agnes-the-ai-analyst/app/api/sync.py
ZdenekSrotyr 506a378c3a
release: 0.47.1 — Keboola connector v27 (incremental, partitioned, where_filters, typed parquet) (#217)
## Summary

Brings the Keboola connector to feature parity with the legacy internal data-analyst's per-table sync strategies. Closes the four documented gaps from the spec branch (`zs/keboola-connector-specs`):

- **Typed parquet** in the legacy SDK extraction path — column types from Keboola Storage metadata (provider cascade `user > ai-metadata-enrichment > keboola.snowflake-transformation`) survive the CSV → parquet roundtrip; invalid date strings (`'0000-00-00'`) and invalid numeric strings (`'Non-Manager'`) become NULL while keeping the column's typed schema. Pre-fix everything was VARCHAR.
- **Incremental sync** via Storage API `changedSince` — opt-in per table; pulls only delta rows, merges into the existing parquet by `primary_key` (drop_duplicates with keep='last'). Cuts daily extraction from O(full table) to O(delta).
- **Partitioned sync** — flat per-partition layout `data/<table>/<key>.parquet` (e.g. `2026_05.parquet`), per-affected-partition merge for daily updates, chunked initial load with 1-day overlap and 2-empty-chunk stop heuristic.
- **`where_filters`** — server-side row filter with date placeholders (`{{today}}`, `{{last_3_months}}`, `{{start_of_3_months_ago}}`, etc.) resolved at sync time. Force the SDK path; reject `incremental + where_filters` combination at API layer (changedSince already filters temporally).

## Architecture

- **Schema migration v25 → v26**: 7 new columns on `table_registry`. Existing `sync_strategy` column reused (pre-v26 it was inert catalog metadata; post-v26 the extractor dispatches off it).
- **Per-table dispatcher** in `extractor.run()` routes to one of `_extract_via_extension` (full_refresh + extension), `_extract_via_legacy` (full_refresh + filters or extension fallback), `extract_incremental`, or `extract_partitioned`.
- **API conflict policy**: `incremental + where_filters` → 422; `partitioned + query_mode='remote'` → 422; `partitioned ⇒ partition_by required`.
- **Admin UI**: third "Direct extract (Storage API)" radio in the Keboola Register / Edit modals, alongside existing "Whole table (extension)" and "Custom SQL". When selected, exposes a v26 sync-strategy panel with conditional fields per strategy.

## Test plan

- [x] **Unit + module** — 134 v26 tests covering migration, repo, parquet_io, where_filters, incremental (compute_changed_since + merge_parquet + extract_incremental E2E), partitioned (key derivation + merge_partition + chunked windows + extract_partitioned E2E), extractor dispatcher, admin API validators, PUT field clearing, registry-shape → dispatcher bridge
- [x] **HTML form structure** — all v26 inputs + visibility classes + JS payload fields verified in rendered template
- [x] **Real Keboola roundtrip** — registered a small test table as `sync_strategy='incremental'` against a test Storage project, triggered two syncs:
  - Sync 1: `changedSince=None` → full pull → 9 rows typed parquet
  - Sync 2: `changedSince=last_sync - 1d window` → 9 delta rows merged with 9 existing → 9 after dedup on primary_key (PK merge confirmed)
- [x] **Browser UX** — agent-browser session against a local uvicorn: login → admin/tables → register modal → switch radios → verify field visibility per strategy → submit → edit existing row → switch to Direct/Incremental → save → confirm DB persistence
- [x] **Regression** — no regressions in the broader 3252-test suite (3 pre-v26 tests updated for the deprecation-marker removal + schema-version bump; 2 pre-existing environment-sensitive test failures unrelated to this change)

## Bugs caught + fixed during E2E

The browser + real-Keboola roundtrip exposed four bugs the unit tests missed:

1. **JS visibility race** — two competing `forEach` loops set `display=''` then `display='none'` on form elements sharing `kb-strategy-incremental kb-strategy-partitioned` classes (window_days + max_history_days are reused across strategies). Fix: single-pass selector with class-based visibility resolver.
2. **PUT cannot clear field** — pre-v26 `updates = {k: v ... if v is not None}` collapsed "omitted from body" and "sent as null" into the same case, so admin couldn't switch a partitioned row back to full_refresh and have stale `partition_by` clear. Fix: `model_dump(exclude_unset=True)`.
3. **Subprocess DB lock conflict** — `_read_last_sync` reopened `system.duckdb` while the parent server held the write lock (subprocess contract at `app/api/sync.py:_run_sync` line 260). Fix: parent injects `__last_sync__` into table_config before subprocess spawn.
4. **Wrong KBC table_id** — `extract_incremental` / `extract_partitioned` built the Storage API table_id from the registry row's slugified `id` (`circle_inc`) instead of `bucket.source_table` (`in.c-finance.circle`), producing 404s. Fix: prefer `bucket+source_table`; fall back to `id` only when bucket empty.

## Operator notes

- Existing tables stay on `full_refresh` after migration; admins opt individual tables in via `agnes admin register-table --sync-strategy ...`, the Keboola Edit modal, or `POST/PUT /api/admin/registry`.
- `merge_parquet` and `merge_partition` use `pd.concat + drop_duplicates`, loading both existing and delta into pandas RAM. For tables in the multi-million-row range this may OOM — switch to `partitioned` strategy for those (per-partition merge keeps memory bounded). Documented in `### Internal` of the changelog entry.
- Date placeholders are resolved at **sync time**, not register time — a typo'd `{{lasst_week}}` is accepted at register and surfaces only when the next sync runs. By design (rolling windows need late-binding).

## Spec source

The four corresponding plans on the `zs/keboola-connector-specs` branch under `docs/superpowers/plans/2026-05-07-0[1-4]-*.md` capture the design rationale and link back to internal repo references for each subsystem.
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2026-05-07 19:01:27 +02:00

937 lines
42 KiB
Python

"""Sync endpoints — manifest, trigger, sync-settings, table-subscriptions."""
import hashlib
import logging
import os
import subprocess
import threading
import traceback
from datetime import datetime, timezone
from pathlib import Path
from typing import Any, Optional, List
from fastapi import APIRouter, Body, Depends, HTTPException, BackgroundTasks
from pydantic import BaseModel
import duckdb
from app.auth.access import require_admin
from app.auth.dependencies import get_current_user, _get_db
from app.utils import get_data_dir as _get_data_dir
from src.repositories.sync_state import SyncStateRepository
from src.repositories.sync_settings import SyncSettingsRepository
from src.repositories.table_registry import TableRegistryRepository
from src.rbac import can_access_table
from src.scheduler import filter_due_tables, is_table_due
logger = logging.getLogger(__name__)
router = APIRouter(prefix="/api/sync", tags=["sync"])
# Process-wide guard against overlapping `_run_sync` invocations. Two
# concurrent extractor subprocesses both write `extract.duckdb` and fight
# for its file lock — the first sync stalls, the second crashes, and the
# `/api/health` check times out long enough that Docker flips the
# container to `unhealthy`, which (behind a `reverse_proxy` upstream)
# bricks external traffic until contention drains. The singleton-ness is
# enforced both in the trigger handler (return 409 fast, before the work
# is scheduled) and in `_run_sync` itself (defense in depth, in case
# something bypasses the handler).
_sync_lock = threading.Lock()
def _file_hash(path: Path) -> str:
if not path.exists():
return ""
h = hashlib.md5()
with open(path, "rb") as f:
for chunk in iter(lambda: f.read(8192), b""):
h.update(chunk)
return h.hexdigest()
def _materialize_table(
*,
table_id: str,
sql: str,
bq,
output_dir: str,
max_bytes: Optional[int],
) -> dict:
"""Thin wrapper around `connectors.bigquery.extractor.materialize_query`
so the trigger pass can be unit-tested by patching this seam without
touching the real BqAccess factory or the duckdb import."""
from connectors.bigquery.extractor import materialize_query
return materialize_query(
table_id=table_id, sql=sql, bq=bq,
output_dir=output_dir, max_bytes=max_bytes,
)
def _run_materialized_pass(
conn: duckdb.DuckDBPyConnection,
bq,
tables: Optional[List[str]] = None,
) -> dict:
"""Walk `table_registry` for `query_mode='materialized'` rows and run any
that are due, dispatching by ``source_type`` to the correct connector's
materialize_query. Honors per-table `sync_schedule` via `is_table_due()`,
computes the file hash inline, and updates `sync_state` so the manifest
can serve the row to `agnes pull` without re-hashing on every request.
``tables`` (when not None) restricts the pass to a specific subset —
targeted re-syncs from the operator (POST /api/sync/trigger with a
body) need this, otherwise an admin asking to re-sync `kbc_job` would
re-process every other materialized row that's also due. Matched
against both the registry id and name (admins often pass either).
BigQuery rows go through BqAccess + bigquery_query() (jobs API),
optionally cost-guarded by ``max_bytes_per_materialize``.
Keboola rows go through KeboolaAccess + ATTACH-and-COPY, no
guardrail (extension has no dry-run primitive).
Returns:
``{"materialized": [ids], "skipped": [ids], "errors": [{table, error}]}``
Errors are aggregated per row — one budget-blown table doesn't stop a
healthy sibling. ``MaterializeBudgetError`` is caught and rendered with
its structured fields so operator alerting can pick out the cap-vs-actual
bytes from the log line.
"""
from app.instance_config import get_value
from connectors.bigquery.extractor import MaterializeBudgetError, MaterializeInFlightError
bq_output_dir = str(Path(_get_data_dir()) / "extracts" / "bigquery")
kb_output_dir = Path(_get_data_dir()) / "extracts" / "keboola" / "data"
# Sentinel: max_bytes <= 0 (or None) disables the guardrail. `get_value()`
# treats YAML `null` as "missing" → returns the default; operators must use
# the explicit `0` sentinel to disable. See config/instance.yaml.example.
# YAML accepts floats too (e.g. `10737418240.0`), and operators may
# write `1e10` for readability; coerce to int and tolerate non-numeric
# entries by falling through to the disable path with a warning.
raw_max = get_value(
"data_source", "bigquery", "max_bytes_per_materialize",
default=10 * 2**30,
)
try:
n = int(raw_max) if raw_max is not None else 0
except (TypeError, ValueError):
logger.warning(
"data_source.bigquery.max_bytes_per_materialize is not numeric "
"(%r); cost guardrail disabled. Set an integer or 0 to disable.",
raw_max,
)
n = 0
bq_max_bytes = n if n > 0 else None
registry = TableRegistryRepository(conn)
state = SyncStateRepository(conn)
summary = {"materialized": [], "skipped": [], "errors": []}
keboola_access = None # lazy-init on first Keboola row
# Targeted-trigger filter. Compare against both id and name so an admin
# who passes either form (the registry id slug, or the human-friendly
# name) gets the same result. `None` means "no filter — process all
# due materialized rows".
target_set: Optional[set] = (
set(tables) if tables is not None else None
)
for row in registry.list_all():
if row.get("query_mode") != "materialized":
continue
# Convention across connectors: sync_state.table_id and the parquet
# filename are keyed by `table_registry.name` (matches Keboola's
# `_meta.table_name`) so the manifest's `registry_by_name` lookup
# at `_build_manifest_for_user` resolves cleanly. Without this,
# admins who register `name="Orders_90d"` (id slugified to
# `orders_90d`) would see `query_mode` default to `"local"` in the
# manifest because the lookup misses on `id`.
ref_name = row["name"]
if target_set is not None and not (
ref_name in target_set or row.get("id") in target_set
):
summary["skipped"].append(
{"table": ref_name, "reason": "not_in_target"}
)
continue
last = state.get_last_sync(ref_name)
last_iso = last.isoformat() if last else None
schedule = row.get("sync_schedule") or "every 1h"
if not is_table_due(schedule, last_iso):
summary["skipped"].append({"table": ref_name, "reason": "due_check"})
continue
source_type = row.get("source_type") or "bigquery" # legacy default
# Dispatch by source_type. BQ rows keep using `_materialize_table`
# (the existing test seam); Keboola rows use the new Keboola
# materialize_query via a lazily-initialized KeboolaAccess.
try:
if source_type == "bigquery":
stats = _materialize_table(
table_id=ref_name,
sql=row["source_query"],
bq=bq,
output_dir=bq_output_dir,
max_bytes=bq_max_bytes,
)
elif source_type == "keboola":
if keboola_access is None:
# Lazy-init the Storage API client (replaces the old
# DuckDB extension `KeboolaAccess`). One client is shared
# across all keboola materialized rows in this pass —
# `requests.Session` inside it is thread-safe and reuses
# the connection pool for HTTP keep-alive across rows.
# Variable name kept as `keboola_access` to minimise
# diff churn against the surrounding error-handling
# block; the type is now `KeboolaStorageClient`.
from connectors.keboola.storage_api import KeboolaStorageClient
keboola_url = get_value(
"data_source", "keboola", "stack_url", default=""
) or os.environ.get("KEBOOLA_STACK_URL", "")
token_env = get_value(
"data_source", "keboola", "token_env",
default="KEBOOLA_STORAGE_TOKEN",
) or "KEBOOLA_STORAGE_TOKEN"
keboola_token = os.environ.get(token_env, "")
if not (keboola_url and keboola_token):
summary["errors"].append({
"table": ref_name,
"error": (
"Keboola URL/token not configured for "
"materialized path (data_source.keboola.stack_url "
f"+ env {token_env})"
),
})
continue
keboola_access = KeboolaStorageClient(
url=keboola_url, token=keboola_token,
)
kb_output_dir.mkdir(parents=True, exist_ok=True)
from connectors.keboola.extractor import (
materialize_query as kb_materialize_query,
)
# Storage API needs the bucket+table split — registry rows
# carry both fields per the standard register-table schema.
bucket = row.get("bucket", "")
source_table = row.get("source_table") or ref_name
if not bucket:
summary["errors"].append({
"table": ref_name,
"error": (
"materialized keboola row is missing 'bucket'; "
"re-register with --bucket <in.c-...>"
),
})
continue
kb_stats = kb_materialize_query(
table_id=ref_name,
bucket=bucket,
source_table=source_table,
source_query=row.get("source_query"),
storage_client=keboola_access,
output_dir=kb_output_dir,
)
# Normalize Keboola materialize_query output to the shape the
# BQ branch uses for downstream sync_state updates. KB returns
# {table_id, path, rows, bytes, md5}; map to
# {rows, size_bytes, hash}.
stats = {
"rows": kb_stats["rows"],
"size_bytes": kb_stats["bytes"],
"hash": kb_stats["md5"],
"query_mode": "materialized",
}
else:
summary["errors"].append({
"table": ref_name,
"error": (
f"materialized path not supported for "
f"source_type={source_type!r}"
),
})
continue
except MaterializeInFlightError:
# In-flight on a sibling worker / scheduler tick — treat as
# 'skipped, in-flight'. Do NOT call state.set_error: that
# would flip status='error' on a healthy concurrent run and
# the registry UI would surface a false-positive failure.
summary["skipped"].append({"table": ref_name, "reason": "in_flight"})
continue
except MaterializeBudgetError as e:
logger.warning(
"Materialize cap exceeded for %s: %s bytes > %s bytes",
e.table_id, f"{e.current:,}", f"{e.limit:,}",
)
summary["errors"].append({
"table": ref_name,
"error": str(e),
"current": e.current,
"limit": e.limit,
})
# Persist the failure so `GET /api/admin/registry` can surface
# `last_sync_error` to the admin UI / `agnes admin status`.
# Without this, scheduler stderr was the only place the cap
# failure showed up and operators had no API path to it.
state.set_error(ref_name, str(e))
continue
except Exception as e:
logger.exception("Materialize failed for %s", ref_name)
summary["errors"].append({"table": ref_name, "error": str(e)})
state.set_error(ref_name, str(e))
continue
# `materialize_query` returns the parquet's MD5 inline — hashing
# there means we don't re-read a multi-GB file on the request
# thread. Fallback to `_file_hash(parquet_path)` if for some
# reason the stats dict didn't carry it (defensive).
parquet_hash = stats.get("hash")
if not parquet_hash:
output_dir_for_hash = (
bq_output_dir if source_type == "bigquery" else str(kb_output_dir.parent)
)
parquet_path = Path(output_dir_for_hash) / "data" / f"{ref_name}.parquet"
parquet_hash = _file_hash(parquet_path)
# `update_sync` resets `status='ok'` / `error=NULL` on the upsert
# path (its argument defaults), so a row that previously errored
# has the failure cleared by this call. No separate clear_error
# needed here — the test invariant is that a successful materialize
# leaves status='ok' and error='', which `update_sync` already
# establishes.
state.update_sync(
table_id=ref_name,
rows=stats["rows"],
file_size_bytes=stats["size_bytes"],
hash=parquet_hash,
)
summary["materialized"].append(ref_name)
return summary
def _run_sync(tables: Optional[List[str]] = None):
"""Run extractor as subprocess + orchestrator rebuild.
Reads table configs from DuckDB (in main process which has the shared
connection), passes them as JSON via stdin to the extractor subprocess.
This avoids DuckDB lock conflicts — subprocess never opens system.duckdb.
Singleton: only one invocation runs at a time per process (see
`_sync_lock` module-level). The trigger handler also fast-fails with
409 when the lock is held, so this branch is defense in depth.
"""
import json as _json
import sys as _sys
if not _sync_lock.acquire(blocking=False):
print(
"[SYNC] another sync is already in flight — skipping",
file=_sys.stderr, flush=True,
)
return
try:
from app.instance_config import get_data_source_type, get_value
from src.db import get_system_db
source_type = get_data_source_type()
data_dir = _get_data_dir()
# Read table configs in main process (has shared DuckDB connection)
sys_conn = get_system_db()
# Track whether the REGISTRY (not the post-filter list) was empty.
# Auto-discovery must only fire on a truly empty registry; if the
# filter returned [] because nothing was due, re-discovering would
# bypass the schedule entirely on Keboola instances. (Devin BUG_0001
# on ebb8cc9.)
registry_has_tables = False
try:
repo = TableRegistryRepository(sys_conn)
if tables:
# Manual operator override — bypass schedule filter entirely
# so an admin saying "sync these specific tables now" wins.
all_configs = [repo.get(t) for t in tables]
table_configs = [c for c in all_configs if c is not None]
registry_has_tables = bool(table_configs)
else:
table_configs = repo.list_local(source_type) if source_type else repo.list_local()
# Auto-discover gate must consider the WHOLE registry, not
# just `local` rows. After the Keboola migration to
# materialized (v25→v26), an instance can have 30
# materialized Keboola rows and zero local rows — but
# `bool(table_configs)` here would be False, and
# `not registry_has_tables` would re-trigger
# `_discover_and_register_tables` on every scheduler tick,
# creating duplicate "auto-discovered" rows with the wrong
# bucket prefix every time.
# Use list_all (any source, any mode) for the gate.
registry_has_tables = bool(repo.list_all())
# Without this filter, every scheduler tick would re-sync
# every table regardless of its sync_schedule cadence,
# making the field a no-op at trigger time. Tables with
# no schedule pass through unchanged (opt-in feature).
state_repo = SyncStateRepository(sys_conn)
table_configs = filter_due_tables(table_configs, state_repo)
finally:
sys_conn.close()
if not table_configs:
# Auto-discover tables on first sync when registry is empty.
# `not registry_has_tables` is the load-bearing guard — without
# it, "filter excluded everything" looks identical to "registry
# empty" and we'd re-discover + re-sync every tick regardless of
# sync_schedule.
if not registry_has_tables and source_type == "keboola" and os.environ.get("KEBOOLA_STORAGE_TOKEN"):
logger.info("No tables registered — running auto-discovery from Keboola")
try:
from app.api.admin import _discover_and_register_tables
auto_conn = get_system_db()
try:
result = _discover_and_register_tables(auto_conn, "auto-discovery")
logger.info("Auto-discovered %d tables, skipped %d", result["registered"], result["skipped"])
finally:
auto_conn.close()
# Re-read table configs after auto-registration
sys_conn2 = get_system_db()
try:
table_configs = TableRegistryRepository(sys_conn2).list_local(source_type)
finally:
sys_conn2.close()
except Exception as e:
logger.warning("Auto-discovery failed: %s", e)
# CRITICAL: don't early-return when local-mode tables are empty.
# `list_local("bigquery")` is always empty on BQ-only deployments
# (BQ rows are always remote or materialized, never local), so an
# early return would prevent the materialized pass AND the
# orchestrator rebuild from ever firing on a BQ-only instance.
# Devin BUG_0002 on PR #148 commit 2fa44f2. Just flag whether the
# Keboola subprocess + custom-connectors should run; everything
# below (materialized pass, orchestrator rebuild, profiler) runs
# unconditionally so a registry with materialized rows but no
# local rows still publishes them.
run_extractor_subprocess = bool(table_configs)
if not run_extractor_subprocess:
logger.info(
"No local-mode tables to sync for source_type=%s"
"skipping extractor subprocess; materialized pass + "
"orchestrator rebuild still run.",
source_type,
)
env = {**os.environ}
if run_extractor_subprocess:
# v26: incremental + partitioned strategies need last_sync from
# sync_state to compute changedSince. The subprocess MUST NOT
# reopen system.duckdb (parent holds the lock — see contract at
# the top of this function), so the parent reads watermarks
# here and injects them into each table_config under the key
# `__last_sync__`. extractor.run() picks them up via
# _read_last_sync's first-check-config-then-fall-back pattern.
ws_conn = get_system_db()
try:
ws_repo = SyncStateRepository(ws_conn)
for tc in table_configs:
if tc.get("sync_strategy") in ("incremental", "partitioned"):
state = ws_repo.get_table_state(tc.get("id") or tc.get("name"))
if state and state.get("status") != "error":
ls = state.get("last_sync")
if ls is not None:
tc["__last_sync__"] = ls
finally:
ws_conn.close()
# Serialize configs — strip non-serializable fields
serializable = []
for tc in table_configs:
serializable.append({k: (v.isoformat() if hasattr(v, 'isoformat') else v)
for k, v in tc.items() if v is not None})
# Run extractor subprocess with table configs via stdin
# Subprocess does NOT open system.duckdb — no lock conflict
cmd = [_sys.executable, "-c", """
import json, sys, os, logging, signal
from pathlib import Path
# Subprocess inherits no logging config — without basicConfig, Python's
# lastResort handler only surfaces WARNING+ to stderr and INFO-level
# extraction progress from connectors.keboola.extractor.run() is silently
# dropped. capture_output=True in the parent then swallows the rest.
# Devin BUG_0002 on PR #136 review.
logging.basicConfig(level=logging.INFO, format="%(levelname)s: %(message)s")
# Convert SIGTERM into a controlled SystemExit so the ProcessPoolExecutor
# `with` block in connectors.keboola.extractor.run() runs its __exit__
# (shutdown/wait_for_workers) before this process dies. Without this,
# SIGTERM kills the parent abruptly, leaving the OS to clean up the pool
# children — but each worker holds an open Keboola Storage export job
# whose lifetime is tied to the HTTP poll loop, and those leak until the
# Keboola side TTLs them out. The parent extractor calls this from
# app.api.sync._run_sync after `subprocess.Popen(start_new_session=True)`
# + `os.killpg(SIGTERM)` on timeout.
def _exit_on_sigterm(signum, frame):
sys.exit(143)
signal.signal(signal.SIGTERM, _exit_on_sigterm)
configs = json.load(sys.stdin)
url = os.environ.get("KEBOOLA_STACK_URL", "")
token = os.environ.get("KEBOOLA_STORAGE_TOKEN", "")
if not url or not token:
print("ERROR: Missing KEBOOLA_STACK_URL or KEBOOLA_STORAGE_TOKEN", file=sys.stderr)
sys.exit(1)
from connectors.keboola.extractor import run, compute_exit_code
data_dir = Path(os.environ.get("DATA_DIR", "./data"))
result = run(str(data_dir / "extracts" / "keboola"), configs, url, token)
print(json.dumps(result))
# Issue #81 Group B: surface partial-failure as exit 2 so the API
# caller can distinguish "every table failed" from "9/10 succeeded".
sys.exit(compute_exit_code(result, len(configs)))
"""]
print(f"[SYNC] Starting extractor subprocess for {len(table_configs)} tables", file=_sys.stderr, flush=True)
# Run in a new process group (start_new_session=True) so a
# timeout can take down the whole tree — the extractor itself
# plus any ProcessPoolExecutor workers it spawned for parallel
# legacy-fallback. Without this, plain `subprocess.run` on
# timeout SIGKILLs only the immediate child; the pool workers
# are reparented to PID 1 and continue holding open Keboola
# Storage export jobs, blocking the next sync cycle's
# connectivity to those same job IDs.
extractor_timeout = int(os.environ.get("AGNES_EXTRACTOR_TIMEOUT_SEC", "3600"))
proc = subprocess.Popen(
cmd,
stdin=subprocess.PIPE, stdout=subprocess.PIPE, stderr=subprocess.PIPE,
text=True, env=env,
cwd=str(Path(__file__).parent.parent.parent),
start_new_session=True,
)
try:
stdout, stderr = proc.communicate(input=_json.dumps(serializable), timeout=extractor_timeout)
result = subprocess.CompletedProcess(cmd, proc.returncode, stdout, stderr)
except subprocess.TimeoutExpired:
# SIGTERM the whole process group first to give workers a
# chance to shut down cleanly (release Keboola export jobs,
# close DuckDB conns), then SIGKILL the stragglers after a
# short grace window.
import signal
try:
os.killpg(proc.pid, signal.SIGTERM)
except ProcessLookupError:
pass
try:
proc.communicate(timeout=10)
except subprocess.TimeoutExpired:
try:
os.killpg(proc.pid, signal.SIGKILL)
except ProcessLookupError:
pass
try:
proc.communicate(timeout=5)
except subprocess.TimeoutExpired:
pass
# Catch the timeout LOCALLY so the materialized BQ pass and
# orchestrator rebuild below still fire — pre-fix the timeout
# propagated to the outer except handler and skipped the rest
# of `_run_sync` (Devin BUG_0001 on PR #148 commit 2219255).
print(
f"[SYNC] Extractor timed out after {extractor_timeout}s — process "
"group killed; continuing to materialized pass + orchestrator rebuild",
file=_sys.stderr, flush=True,
)
result = None
if result is not None:
if result.stdout:
print(f"[SYNC] Extractor stdout: {result.stdout.strip()[-500:]}", file=_sys.stderr, flush=True)
if result.stderr:
print(f"[SYNC] Extractor stderr: {result.stderr[-500:]}", file=_sys.stderr, flush=True)
# Issue #81 Group B: three exit codes. 0 = full success,
# 1 = full failure, 2 = partial. Partial is a data-quality
# alert, not a crash — the orchestrator's per-table _meta
# machinery already captured which tables succeeded; we just
# need to log loudly so operator alerting can pick it up.
if result.returncode == 0:
print(f"[SYNC] Extractor OK", file=_sys.stderr, flush=True)
elif result.returncode == 2:
print(
f"[SYNC] Extractor PARTIAL FAILURE (exit 2) — some tables "
f"succeeded, some failed; see stderr for per-table errors. "
f"Successful tables will still be published by the orchestrator.",
file=_sys.stderr, flush=True,
)
else:
print(f"[SYNC] Extractor FAILED (exit {result.returncode})", file=_sys.stderr, flush=True)
# Run custom connectors (Tier A: local mount) — only when there
# were local-mode tables to drive the extractor. Custom connectors
# currently piggyback on the same env as the Keboola extractor.
connectors_dir = Path(os.environ.get("CONNECTORS_DIR", str(Path(__file__).parent.parent.parent / "connectors" / "custom")))
if connectors_dir.exists():
for connector_dir in sorted(connectors_dir.iterdir()):
if not connector_dir.is_dir():
continue
extractor = connector_dir / "extractor.py"
if not extractor.exists():
continue
logger.info("Running custom connector: %s", connector_dir.name)
try:
custom_result = subprocess.run(
[_sys.executable, str(extractor)],
env=env, capture_output=True, text=True, timeout=600,
cwd=str(Path(__file__).parent.parent.parent),
)
if custom_result.returncode != 0:
logger.error("Custom connector %s failed: %s", connector_dir.name, custom_result.stderr[-500:])
else:
logger.info("Custom connector %s completed", connector_dir.name)
except subprocess.TimeoutExpired:
logger.error("Custom connector %s timed out", connector_dir.name)
# Materialized SQL pass — runs admin-registered SQL through the
# source's DuckDB extension (BQ via BqAccess, Keboola via
# KeboolaAccess) and writes parquet for due rows. _run_materialized_pass
# itself dispatches by source_type, so we always run it regardless of
# which (or both) source types have a `project` / `stack_url` set —
# Keboola-only instances would otherwise silently skip Keboola
# materialized rows just because no BQ project is configured (Devin
# finding 2026-05-01: BUG_pr-review-job-3fbd31c9_0001). The BQ
# branch inside _run_materialized_pass uses a per-row try/except so
# the sentinel BqAccess (not_configured) raises a typed error that
# gets recorded against that row only — no cascade.
try:
from connectors.bigquery.access import get_bq_access
from src.db import get_system_db as _get_system_db
bq_access = get_bq_access() # sentinel if no BQ project; OK
mat_conn = _get_system_db()
try:
mat_summary = _run_materialized_pass(
mat_conn, bq_access, tables=tables,
)
finally:
mat_conn.close()
skipped_count = len(mat_summary["skipped"])
in_flight_count = sum(
1 for s in mat_summary["skipped"] if s.get("reason") == "in_flight"
)
print(
f"[SYNC] Materialized SQL: {len(mat_summary['materialized'])} ok, "
f"{skipped_count} skipped (in_flight={in_flight_count}), "
f"{len(mat_summary['errors'])} errors",
file=_sys.stderr, flush=True,
)
for err in mat_summary["errors"]:
print(
f"[SYNC] {err['table']}: {err['error']}",
file=_sys.stderr, flush=True,
)
except Exception as e:
print(
f"[SYNC] Materialized SQL pass FAILED: {e}",
file=_sys.stderr, flush=True,
)
traceback.print_exc()
# Rebuild master views (reads extract.duckdb files, no write conflict)
from src.orchestrator import SyncOrchestrator
orch = SyncOrchestrator()
views = orch.rebuild()
print(f"[SYNC] Orchestrator rebuild: {{{', '.join(f'{k}: {len(v)}' for k, v in views.items())}}}", file=_sys.stderr, flush=True)
# Auto-profile synced tables (best-effort, don't fail sync on profile error)
try:
from src.profiler import profile_table, TableInfo
from src.repositories.profiles import ProfileRepository
data_dir = Path(os.environ.get("DATA_DIR", "./data"))
extracts_dir = data_dir / "extracts"
sys_conn = get_system_db()
try:
profile_repo = ProfileRepository(sys_conn)
profiled = 0
for source_name, table_names in views.items():
for table_name in table_names[:10]: # Limit per sync
pq_path = extracts_dir / source_name / "data" / f"{table_name}.parquet"
if not pq_path.exists():
continue
try:
table_info = TableInfo(name=table_name, table_id=table_name)
profile = profile_table(table_info, pq_path, [], {}, {})
profile_repo.save(table_name, profile)
profiled += 1
except Exception as pe:
print(f"[SYNC] Profile {table_name}: {pe}", file=_sys.stderr, flush=True)
print(f"[SYNC] Profiled {profiled} tables", file=_sys.stderr, flush=True)
finally:
sys_conn.close()
except Exception as e:
print(f"[SYNC] Profiler skipped: {e}", file=_sys.stderr, flush=True)
except subprocess.TimeoutExpired:
# Outer-handler fallback for any subprocess.run call site (e.g.
# custom-connectors below) that didn't already catch its own
# TimeoutExpired. Concrete timeout value isn't available here —
# log generically.
print("[SYNC] Extractor subprocess timed out", file=_sys.stderr, flush=True)
except Exception as e:
print(f"[SYNC] FAILED: {e}", file=_sys.stderr, flush=True)
traceback.print_exc()
finally:
_sync_lock.release()
# ---- Manifest ----
def _build_manifest_for_user(conn, user: dict) -> dict:
"""Build manifest dict filtered by user's accessible tables.
Joins ``sync_state`` with ``table_registry`` so each table entry exposes
``query_mode`` and ``source_type``. The CLI uses these to decide whether
to download a parquet (local) or skip it (remote, e.g. BigQuery views).
Defensive defaults: if a sync_state row has no matching registry entry
(race / manual deletion), fall back to ``query_mode='local'`` and
``source_type=''`` so the manifest still serializes cleanly.
"""
sync_repo = SyncStateRepository(conn)
table_repo = TableRegistryRepository(conn)
all_states = sync_repo.get_all_states()
# `sync_state.table_id` is sourced from `_meta.table_name` which equals
# `table_registry.name`, NOT `table_registry.id`. Auto-discovered Keboola
# tables and manually-registered ones with mixed-case/spaced names produce
# id != name; an id-keyed lookup would miss them and silently default to
# `query_mode=local`, causing the CLI to try downloading remote tables.
registry_by_name = {t["name"]: t for t in table_repo.list_all()}
# Filter by user's accessible tables. `can_access_table` has its own
# admin shortcut (Admin group → True). Lookup translates name→id first
# because `s["table_id"]` is sourced from `_meta.table_name` = registry
# `name` while `can_access_table` keys on registry `id`; when id != name
# an id-keyed call would miss.
def _id_for(state):
reg = registry_by_name.get(state["table_id"])
return reg["id"] if reg else state["table_id"]
all_states = [s for s in all_states if can_access_table(user, _id_for(s), conn)]
data_dir = _get_data_dir()
tables = {}
for state in all_states:
table_id = state["table_id"]
reg = registry_by_name.get(table_id, {})
tables[table_id] = {
"hash": state.get("hash", ""),
"updated": state.get("last_sync").isoformat() if state.get("last_sync") else None,
"size_bytes": state.get("file_size_bytes", 0),
"rows": state.get("rows", 0),
"query_mode": reg.get("query_mode") or "local",
"source_type": reg.get("source_type") or "",
}
# Asset hashes
docs_dir = data_dir / "docs"
assets = {}
for asset_name, asset_path in [
("docs", docs_dir),
("profiles", data_dir / "src_data" / "metadata" / "profiles.json"),
]:
if asset_path.exists():
if asset_path.is_file():
assets[asset_name] = {"hash": _file_hash(asset_path)}
else:
newest = max(
(f.stat().st_mtime for f in asset_path.rglob("*") if f.is_file()),
default=0,
)
assets[asset_name] = {"hash": str(int(newest))}
return {
"tables": tables,
"assets": assets,
"server_time": datetime.now(timezone.utc).isoformat(),
}
@router.get("/manifest")
async def sync_manifest(
user: dict = Depends(get_current_user),
conn: duckdb.DuckDBPyConnection = Depends(_get_db),
):
"""Return hash-based manifest of all synced data, filtered per user."""
return _build_manifest_for_user(conn, user)
# ---- Status ----
@router.get("/status")
async def sync_status():
"""Whether a sync is currently in flight on this app process.
Public (no auth) — used by the host-side ``agnes-auto-upgrade.sh``
cron to decide whether to skip a `docker compose up -d` that would
kill a running extractor / materialized pass mid-flight. Cheap to
serve (single Lock.locked() check) and contains no sensitive data.
Returns:
``{"locked": bool}`` — True if `_sync_lock` is currently held by
a `_run_sync` invocation. The host script defers the upgrade
when this is True and retries on the next 5-min cron tick.
"""
return {"locked": _sync_lock.locked()}
# ---- Trigger ----
@router.post("/trigger")
async def trigger_sync(
background_tasks: BackgroundTasks,
body: Optional[Any] = Body(None),
user: dict = Depends(require_admin),
):
"""Trigger data sync from configured source. Admin only. Runs in background.
Body accepts three shapes (all optional — empty body / `null` syncs
every registered table):
- ``["kbc_job", "orders"]`` — bare JSON array of table ids
- ``{"tables": ["kbc_job", "orders"]}`` — object with a ``tables``
key (matches the wire shape of the response, more discoverable
for clients building requests by hand)
- ``null`` / no body — sync everything
Both array forms have shipped at different times; accepting both
keeps older clients (PR-build CLIs, helper scripts) working while
surfacing the shape that mirrors the response payload. Anything
else returns HTTP 422 with a structured detail.
Returns 409 if a previously-triggered sync is still running. Two
concurrent extractor subprocesses fight for the same `extract.duckdb`
file lock — that contention starves uvicorn, makes `/api/health` time
out, flips the container to `unhealthy`, and (behind a `reverse_proxy`
upstream like the bundled Caddy overlay) bricks external traffic
until contention drains. Fast-fail here keeps that from happening.
"""
if body is None:
tables: Optional[List[str]] = None
elif isinstance(body, list):
tables = list(body)
elif isinstance(body, dict):
tables = body.get("tables")
if tables is not None and not isinstance(tables, list):
raise HTTPException(
status_code=422,
detail="`tables` must be a list of strings",
)
else:
raise HTTPException(
status_code=422,
detail=(
"body must be a list of table ids, an object with a "
"`tables` list, or null"
),
)
if tables is not None and not all(isinstance(t, str) for t in tables):
raise HTTPException(
status_code=422,
detail="all entries in `tables` must be strings",
)
if _sync_lock.locked():
raise HTTPException(
status_code=409,
detail="sync_already_in_progress",
)
background_tasks.add_task(_run_sync, tables)
return {
"status": "triggered",
"tables": tables or "all",
"message": "Data sync started in background. Check /api/health for progress.",
}
# ---- Sync Settings (dataset subscriptions) ----
class SyncSettingsUpdate(BaseModel):
datasets: dict # {dataset_name: bool}
@router.get("/settings")
async def get_sync_settings(
user: dict = Depends(get_current_user),
conn: duckdb.DuckDBPyConnection = Depends(_get_db),
):
"""Get user's dataset sync settings."""
repo = SyncSettingsRepository(conn)
settings = repo.get_user_settings(user["id"])
enabled = repo.get_enabled_datasets(user["id"])
return {
"user_id": user["id"],
"settings": settings,
"enabled_datasets": enabled,
}
@router.post("/settings")
async def update_sync_settings(
request: SyncSettingsUpdate,
user: dict = Depends(get_current_user),
conn: duckdb.DuckDBPyConnection = Depends(_get_db),
):
"""Update user's dataset sync settings.
A dataset can only be enabled when the user has access (via
``resource_grants(group, "table", dataset)`` or Admin membership). The
user_sync_settings layer is per-user preference, not authorization —
the gate stops users from enabling sync on tables they cannot read.
"""
from app.auth.access import can_access
from app.resource_types import ResourceType
settings_repo = SyncSettingsRepository(conn)
results = {}
for dataset, enabled in request.datasets.items():
if not can_access(user["id"], ResourceType.TABLE.value, dataset, conn):
results[dataset] = {"error": "no permission"}
continue
settings_repo.set_dataset_enabled(user["id"], dataset, enabled)
results[dataset] = {"enabled": enabled}
return {"updated": results}
# ---- Table Subscriptions ----
class TableSubscriptionUpdate(BaseModel):
table_mode: str = "all" # "all" or "explicit"
tables: dict = {} # {table_name: bool}
@router.get("/table-subscriptions")
async def get_table_subscriptions(
user: dict = Depends(get_current_user),
conn: duckdb.DuckDBPyConnection = Depends(_get_db),
):
"""Get user's per-table subscription settings."""
repo = SyncSettingsRepository(conn)
settings = repo.get_user_settings(user["id"])
return {"user_id": user["id"], "subscriptions": settings}
@router.post("/table-subscriptions")
async def update_table_subscriptions(
request: TableSubscriptionUpdate,
user: dict = Depends(get_current_user),
conn: duckdb.DuckDBPyConnection = Depends(_get_db),
):
"""Update per-table subscription preferences."""
repo = SyncSettingsRepository(conn)
for table_name, enabled in request.tables.items():
repo.set_dataset_enabled(user["id"], table_name, enabled)
return {"table_mode": request.table_mode, "updated": len(request.tables)}