#!/usr/bin/env python3 """ Push query logs to Monte Carlo from a JSON manifest — push only. Reads a manifest file produced by ``collect_query_logs.py`` and sends the query log entries to Monte Carlo using the pycarlo push ingestion API. Large payloads are split into batches to stay under the 1 MB compressed limit. Can be run standalone via CLI or imported (use the ``push()`` function). Substitution points ------------------- - MCD_INGEST_ID (env) / --key-id (CLI) : Monte Carlo ingestion key ID - MCD_INGEST_TOKEN (env) / --key-token (CLI) : Monte Carlo ingestion key token - MCD_RESOURCE_UUID (env) / --resource-uuid (CLI) : MC resource UUID for this connection Prerequisites ------------- pip install pycarlo Usage ----- python push_query_logs.py \\ --key-id \\ --key-token \\ --resource-uuid \\ --input-file query_logs_output.json """ import argparse import json import os from concurrent.futures import ThreadPoolExecutor, as_completed from datetime import datetime, timezone from dateutil.parser import isoparse from pycarlo.core import Client, Session from pycarlo.features.ingestion import IngestionService from pycarlo.features.ingestion.models import QueryLogEntry # ← SUBSTITUTE: set LOG_TYPE to match your warehouse type (query logs use log_type, not resource_type) LOG_TYPE = "snowflake" # Maximum entries per batch — conservative default to keep compressed payload under 1 MB. # Query logs include full SQL text — keep batches small to stay under the 1 MB # compressed payload limit. 50 entries can trigger 413 on active warehouses. # ← SUBSTITUTE: tune based on average query length _BATCH_SIZE = 100 # Truncate query_text longer than this to prevent 413 errors. # Some SQL statements (e.g., generated by BI tools) can be 100KB+ and blow up # compressed payloads even at small batch sizes. _MAX_QUERY_TEXT_LEN = 10_000 def _build_query_log_entries(queries: list[dict]) -> list[QueryLogEntry]: """Convert manifest query dicts into QueryLogEntry objects.""" entries = [] truncated = 0 for q in queries: start_time = q.get("start_time") end_time = q.get("end_time") query_text = q.get("query_text") or "" query_id = q.get("query_id") user_name = q.get("user") warehouse_name = q.get("warehouse") bytes_scanned = q.get("bytes_scanned") rows_produced = q.get("rows_produced") # Truncate very long SQL to prevent 413 Request Too Large if len(query_text) > _MAX_QUERY_TEXT_LEN: query_text = query_text[:_MAX_QUERY_TEXT_LEN] + "... [TRUNCATED]" truncated += 1 extra = {} if warehouse_name is not None: extra["warehouse_name"] = warehouse_name if bytes_scanned is not None: extra["bytes_scanned"] = int(bytes_scanned) entries.append( QueryLogEntry( start_time=isoparse(start_time) if start_time else None, end_time=isoparse(end_time) if end_time else None, query_text=query_text, query_id=query_id, user=user_name, returned_rows=int(rows_produced) if rows_produced is not None else None, extra=extra or None, ) ) if truncated: print(f" Truncated {truncated} query text(s) exceeding {_MAX_QUERY_TEXT_LEN} chars") return entries def push( input_file: str, resource_uuid: str, key_id: str, key_token: str, batch_size: int = _BATCH_SIZE, output_file: str = "query_logs_push_result.json", ) -> dict: """ Read a query log manifest and push entries to Monte Carlo in batches. Returns a result dict with invocation IDs for each batch. """ with open(input_file) as fh: manifest = json.load(fh) queries = manifest.get("queries", []) log_type = manifest.get("log_type", LOG_TYPE) entries = _build_query_log_entries(queries) print(f"Loaded {len(entries)} query log entry/entries from {input_file}") if not entries: print("No query log entries to push.") push_result = { "resource_uuid": resource_uuid, "log_type": log_type, "invocation_ids": [], "pushed_at": datetime.now(tz=timezone.utc).isoformat(), "total_entries": 0, "batch_count": 0, "batch_size": batch_size, } with open(output_file, "w") as fh: json.dump(push_result, fh, indent=2) return push_result # Split into batches batches = [] for i in range(0, len(entries), batch_size): batches.append(entries[i : i + batch_size]) total_batches = len(batches) def _push_batch(batch: list, batch_num: int) -> str | None: """Push a single batch using a dedicated Session (thread-safe).""" client = Client(session=Session(mcd_id=key_id, mcd_token=key_token, scope="Ingestion")) service = IngestionService(mc_client=client) result = service.send_query_logs( resource_uuid=resource_uuid, log_type=log_type, events=batch, ) invocation_id = service.extract_invocation_id(result) print(f" Pushed batch {batch_num}/{total_batches} ({len(batch)} entries) — invocation_id={invocation_id}") return invocation_id # Push batches in parallel (each thread gets its own pycarlo Session) max_workers = min(4, total_batches) invocation_ids: list[str | None] = [None] * total_batches with ThreadPoolExecutor(max_workers=max_workers) as pool: futures = { pool.submit(_push_batch, batch, i + 1): i for i, batch in enumerate(batches) } for future in as_completed(futures): idx = futures[future] try: invocation_ids[idx] = future.result() except Exception as exc: print(f" ERROR pushing batch {idx + 1}: {exc}") raise print(f" All {total_batches} batches pushed ({max_workers} workers)") push_result = { "resource_uuid": resource_uuid, "log_type": log_type, "invocation_ids": invocation_ids, "pushed_at": datetime.now(tz=timezone.utc).isoformat(), "total_entries": len(entries), "batch_count": total_batches, "batch_size": batch_size, } with open(output_file, "w") as fh: json.dump(push_result, fh, indent=2) print(f"Push result written to {output_file}") return push_result def main() -> None: parser = argparse.ArgumentParser( description="Push Snowflake query logs from a manifest to Monte Carlo", ) parser.add_argument( "--key-id", default=os.environ.get("MCD_INGEST_ID"), help="Monte Carlo ingestion key ID (env: MCD_INGEST_ID)", ) parser.add_argument( "--key-token", default=os.environ.get("MCD_INGEST_TOKEN"), help="Monte Carlo ingestion key token (env: MCD_INGEST_TOKEN)", ) parser.add_argument( "--resource-uuid", default=os.environ.get("MCD_RESOURCE_UUID"), help="Monte Carlo resource UUID for this Snowflake connection (env: MCD_RESOURCE_UUID)", ) parser.add_argument( "--input-file", default="query_logs_output.json", help="Path to the collect manifest to read (default: query_logs_output.json)", ) parser.add_argument( "--output-file", default="query_logs_push_result.json", help="Path to write the push result (default: query_logs_push_result.json)", ) parser.add_argument( "--batch-size", type=int, default=_BATCH_SIZE, help=f"Max entries per push batch (default: {_BATCH_SIZE})", ) args = parser.parse_args() missing = [ name for name, val in [ ("--key-id", args.key_id), ("--key-token", args.key_token), ("--resource-uuid", args.resource_uuid), ] if not val ] if missing: parser.error(f"Missing required arguments: {', '.join(missing)}") push( input_file=args.input_file, resource_uuid=args.resource_uuid, key_id=args.key_id, key_token=args.key_token, batch_size=args.batch_size, output_file=args.output_file, ) print("Done.") if __name__ == "__main__": main()