6 Commits

Author SHA1 Message Date
1582a5295d Prepare 2026.05.08 for first PyPI publish
- Bump version 2026.05.05.12 → 2026.05.08 (CalVer, publish date)
- Expand sdist excludes to **/glob patterns: docs/**, docs-site/**,
  tests/reference/**, tests/benchmarks/.results/** — the trailing-slash
  form was silently passing through subtree contents
- Sanitize tests/benchmarks/baseline.json hostname → PLACEHOLDER
- Rewrite README relative docs/, tests/, Makefile links to absolute
  Gitea URLs (git.supported.systems/warehack.ing/informix-db)
- pyproject urls: Homepage + Documentation → informix-db.warehack.ing,
  Source/Issues/Changelog → Gitea (warehack.ing org is now public)
2026-05-08 04:13:09 -06:00
e9aed6ce59 Phase 25: Branch reorder + invariant tripwires (2026.05.04.10)
Third-pass optimization on parse_tuple_payload's hot loop. Previous
phases removed redundant work; this one removes correct-but-wasteful
work: the if/elif chain checked branches in implementation order, not
frequency order. Fixed-width types (INT, FLOAT, DATE, BIGINT - the most
common columns in real queries) sat at the bottom, paying ~7 frozenset
misses per column.

Changes (src/informix_db/_resultset.py):
* Added _FIXED_WIDTH_TYPES = frozenset(FIXED_WIDTHS.keys()) at module
  load.
* New fast-path branch at the TOP of parse_tuple_payload's loop body
  that handles every _FIXED_WIDTH_TYPES column inline: one frozenset
  check, one dict lookup, one decode, continue. Skips every other
  branch.
* Cleaned up the bottom fall-through; it now genuinely only catches
  unknown types.

Performance vs Phase 24 baseline:
* parse_tuple_5cols_iso8859: 1659 ns -> 1400 ns (-16%)
* parse_tuple_5cols_utf8:    1649 ns -> 1341 ns (-19%)

Cumulative vs Phase 21 baseline (before any optimization):
* parse_tuple_5cols: 2796 ns -> 1400 ns (-50%) - HALF the time
* decode_int:        230 ns  -> 139 ns  (-40%)

Margaret Hamilton review surfaced one HIGH finding addressed before
tagging:
* H: The fast-path optimization assumes every FIXED_WIDTHS key is
  decodable WITHOUT qualifier inspection (encoded_length etc.). True
  today, but a future contributor adding a fixed-width type that
  needs qualifier bits (like DATETIME does) would silently get wrong
  decode behavior - Lauren-Bug class failure.

  Fix: added INVARIANT comment to FIXED_WIDTHS in converters.py AND
  added tests/test_resultset_invariants.py with three CI tripwire
  tests:
  - _FIXED_WIDTH_TYPES is disjoint from every other dispatch branch
  - Every FIXED_WIDTHS key has a DECODERS entry
  - DECODERS keys stay < 0x100 (Phase 24 collision-free guarantee)

  The tests carry instructions: if one fires, don't update the test
  to match - either restore the property or refactor the optimization.
  Comments rot when nobody reads them; tests fail loudly.

baseline.json refreshed; 72 unit + 224 integration + 28 bench = 324
tests; ruff clean.
2026-05-04 23:34:05 -06:00
dfa60ea501 Phase 24: Decoder dispatch split + struct precompilation (2026.05.04.9)
Second pass of hot-path optimization on parse_tuple_payload. Two changes
to converters.py:

1. Split decode() into public + internal. Added _decode_base(base_tc,
   raw, encoding) that takes an already-base-typed code and skips the
   redundant base_type() call. Public decode() is now a one-line
   wrapper. parse_tuple_payload's 4 call sites swapped to use
   _decode_base directly. _fastpath.py's external decode() caller is
   unaffected.

2. Pre-compiled struct.Struct unpackers. The fixed-width integer/float
   decoders (_decode_smallint, _decode_int, _decode_bigint,
   _decode_smfloat, _decode_float, _decode_date) switched from per-call
   struct.unpack(fmt, raw) to module-level bound methods like
   _UNPACK_INT = struct.Struct("!i").unpack. Format-string parsed once
   at module load. Measured 37% faster than per-call struct.unpack on
   CPython 3.13 micro.

Performance vs Phase 23 baseline:
* decode_int: 173 ns -> 139 ns (-20%)
* decode_bigint: 188 ns -> 150 ns (-20%)
* parse_tuple_5cols: 2047 ns -> 1592 ns (-22%)
* 1k-row SELECT: 1255 us -> 989 us (-21%)

Cumulative vs original Phase 21 baseline:
* decode_int: 230 ns -> 139 ns (-40%)
* parse_tuple_5cols: 2796 ns -> 1592 ns (-43%)
* 1k-row SELECT: 1477 us -> 989 us (-33%)

Real-world fetch ceiling: 358K rows/sec -> ~620K rows/sec.

Margaret Hamilton review surfaced one HIGH-severity finding addressed
before tagging:
* H: The no-collision guarantee that makes _decode_base safe is
  structural but undocumented (all DECODERS keys are ≤ 0xFF, all flag
  bits are ≥ 0x100, so flagged inputs cannot coincidentally match).
  Added load-bearing INVARIANT comment at DECODERS dict explaining
  the constraint and what to do if violated. Cross-referenced from
  _decode_base's docstring for bidirectional traceability.

baseline.json refreshed; all 224 integration tests pass; ruff clean.
2026-05-04 19:31:21 -06:00
f3e589c5bf Phase 23: Hot-path optimization for parse_tuple_payload (2026.05.04.8)
Per-row decode is hit on every row of every SELECT. The original code
had three forms of waste in the inner loop:

1. Redundant base_type() call. ColumnInfo.type_code is already
   base-typed by parse_describe at construction; calling base_type()
   again per column per row was pure waste. Single largest savings.
2. IntFlag->int conversions inline (~10x per iteration). Lifted to
   module-level _TC_X constants.
3. Lazy imports inside the loop body (_decode_datetime, _decode_interval,
   BlobLocator, ClobLocator, RowValue, CollectionValue). Moved to top.

Plus three precomputed frozensets (_LENGTH_PREFIXED_SHORT_TYPES,
_COMPOSITE_UDT_TYPES, _NUMERIC_TYPES) replace inline tuple-membership
checks. _COLLECTION_KIND_MAP is now MappingProxyType (actually frozen).

Performance:
* parse_tuple_5cols: 2796 ns -> 2030 ns (-27%)
* select_bench_table_all (1k rows): 1477 us -> 1198 us (-19%)
* Codec micro-bench, cold connect, executemany: unchanged

Real-world fetch ceiling on a single connection: 350K rows/sec ->
490K rows/sec.

Margaret Hamilton review surfaced four cleanup items, all addressed
before tagging:
* H1: cursor._dereference_blob_columns had the same redundant
  base_type() call - stripped for consistency.
* M1: documented the load-bearing invariant at parse_describe (the
  single producer site) so future contributors have a grep target.
* M2: _COLLECTION_KIND_MAP wrapped in MappingProxyType.
* L1: stale line-number comment fixed to point at the INVARIANT
  comment instead.

baseline.json refreshed; all 224 integration tests pass; ruff clean.
2026-05-04 17:52:20 -06:00
495128c679 Phase 21.1: executemany perf - it was the autocommit cliff (2026.05.04.6)
Investigation of the Phase 21 baseline finding that executemany(N) cost
scaled linearly per-row (1.74 ms x N) regardless of batch size.

Root cause: every autocommit=True INSERT forces a server-side
transaction-log flush. Not a wire-protocol bug.

Numbers:
* executemany(1000) autocommit=True: 1.72 s (1.72 ms/row)
* executemany(1000) in single txn:    32 ms (32 us/row)

53x speedup from changing the transaction boundary, not the driver.
Pure protocol overhead is ~32 us/row -> ~31K rows/sec sustained
throughput on a single connection. Comparable to pg8000.

Added test_executemany_1000_rows_in_txn benchmark to make this
visible. Updated README headline numbers and added a "Performance
gotchas" section explaining when autocommit=False matters.

Decision: don't pipeline. The remaining 32 us is already excellent;
the autocommit gotcha is the real user-facing footgun. Docs > code.
If someone reports needing >31K rows/sec single-connection, that
becomes Phase 22.
2026-05-04 17:26:16 -06:00
90ce035a00 Phase 21: Performance benchmarks (2026.05.04.5)
Adds tests/benchmarks/ with pytest-benchmark coverage of the hot codec
paths and end-to-end SELECT/INSERT/pool/async round-trips. Establishes
a committed baseline.json so PRs can be regression-checked at review
via --benchmark-compare.

* test_codec_perf.py (16): decode/encode_param/parse_tuple_payload
  micro-benchmarks - run without container, suitable for pre-merge CI.
* test_select_perf.py (4): SELECT round-trips - 1-row latency floor,
  10-row, 1k-row full fetch, parameterized.
* test_insert_perf.py (3): single-row INSERT, executemany 100 / 1000.
* test_pool_perf.py (3): cold connect, pool acquire/release, pool
  acquire + query + release.
* test_async_perf.py (2): async round-trip overhead, 10x concurrent.
* baseline.json: committed snapshot, 28 measurements.
* benchmark pytest marker, gated off by default.
* Makefile: bench / bench-codec / bench-save targets;
  test-integration excludes benchmarks for speed.

Headline numbers (dev container loopback):
* decode(int): 181 ns
* parse_tuple 5 cols: 2.87 µs/row
* SELECT 1 round-trip: 177 µs
* Pool acquire+query+release: 295 µs
* Cold connect: 11.2 ms (72x slower than pool)

UTF-8 decode carries no measurable cost vs iso-8859-1 - confirms
Phase 20 didn't regress anything.

Total: 69 unit + 211 integration + 28 benchmark = 308 tests.
2026-05-04 17:21:12 -06:00