bench: add per-room recall threshold test
Concentrates all drawers into a single wing+room to isolate the embedding model's retrieval limit independent of palace filtering. Confirms recall degrades to ~0.4-0.5 at 5K drawers per room even with wing+room filters applied — the spatial structure helps by keeping buckets small, but can't fix the underlying embedding ceiling.
This commit is contained in:
@@ -1,6 +1,6 @@
|
||||
# MemPalace Scale Benchmark Suite
|
||||
|
||||
94 tests that benchmark mempalace at scale to validate real-world performance limits.
|
||||
106 tests that benchmark mempalace at scale to validate real-world performance limits.
|
||||
|
||||
## Why
|
||||
|
||||
@@ -11,6 +11,7 @@ MemPalace has strong academic scores (96.6% R@5 on LongMemEval) but no empirical
|
||||
- Modified files are never re-ingested — what's the skip-check cost at scale?
|
||||
- How does query latency degrade as the palace grows from 1K to 100K drawers?
|
||||
- Does wing/room filtering actually improve retrieval, and by how much?
|
||||
- At what per-room drawer count does recall break regardless of filtering?
|
||||
|
||||
This suite finds those answers.
|
||||
|
||||
@@ -20,7 +21,7 @@ This suite finds those answers.
|
||||
# Fast smoke test (~2 min)
|
||||
uv run pytest tests/benchmarks/ -v --bench-scale=small -m "benchmark and not slow"
|
||||
|
||||
# Full small scale (~30 min)
|
||||
# Full small scale (~35 min)
|
||||
uv run pytest tests/benchmarks/ -v --bench-scale=small
|
||||
|
||||
# Medium scale with JSON report
|
||||
@@ -61,6 +62,7 @@ uv run pytest tests/benchmarks/ -v --bench-scale=stress -m stress
|
||||
| File | What it tests |
|
||||
|------|--------------|
|
||||
| `test_palace_boost.py` | Retrieval improvement from wing/room filtering at different scales |
|
||||
| `test_recall_threshold.py` | Per-room recall ceiling — isolates embedding model limit with all drawers in one bucket |
|
||||
| `test_knowledge_graph_bench.py` | Triple insertion rate, temporal query accuracy, SQLite concurrent access |
|
||||
| `test_layers_bench.py` | MemoryStack wake-up cost, Layer1 unbounded fetch, token budget compliance |
|
||||
|
||||
@@ -68,10 +70,10 @@ uv run pytest tests/benchmarks/ -v --bench-scale=stress -m stress
|
||||
|
||||
```
|
||||
tests/benchmarks/
|
||||
conftest.py # --bench-scale / --bench-report CLI options, fixtures, markers
|
||||
data_generator.py # Deterministic data factory (seeded RNG, planted needles)
|
||||
report.py # JSON report writer + regression checker
|
||||
test_*.py # 8 test modules (94 tests total)
|
||||
conftest.py # --bench-scale / --bench-report CLI options, fixtures, markers
|
||||
data_generator.py # Deterministic data factory (seeded RNG, planted needles)
|
||||
report.py # JSON report writer + regression checker
|
||||
test_*.py # 9 test modules (106 tests total)
|
||||
```
|
||||
|
||||
### Data Generator
|
||||
|
||||
@@ -0,0 +1,179 @@
|
||||
"""
|
||||
Recall threshold test — find the per-bucket size where retrieval breaks.
|
||||
|
||||
The palace_boost tests showed room-filtered recall of 1.0, but only because
|
||||
each room had ~333 drawers. This test concentrates ALL drawers into a single
|
||||
wing+room to find the actual embedding model limit.
|
||||
"""
|
||||
|
||||
import hashlib
|
||||
import os
|
||||
import time
|
||||
from datetime import datetime
|
||||
|
||||
import chromadb
|
||||
import pytest
|
||||
|
||||
from tests.benchmarks.data_generator import PalaceDataGenerator
|
||||
from tests.benchmarks.report import record_metric
|
||||
|
||||
|
||||
NEEDLE_TOPICS = [
|
||||
"Fibonacci sequence optimization uses memoization with O(n) space complexity",
|
||||
"PostgreSQL vacuum autovacuum threshold set to 50 percent for table users",
|
||||
"Redis cluster failover timeout configured at 30 seconds with sentinel monitoring",
|
||||
"Kubernetes horizontal pod autoscaler targets 70 percent CPU utilization",
|
||||
"GraphQL subscription uses WebSocket transport with heartbeat interval 25 seconds",
|
||||
"JWT token rotation policy requires refresh every 15 minutes with sliding window",
|
||||
"Elasticsearch index sharding strategy uses 5 primary shards with 1 replica each",
|
||||
"Docker multi-stage build reduces image size from 1.2GB to 180MB for production",
|
||||
"Apache Kafka consumer group rebalance timeout set to 45 seconds",
|
||||
"MongoDB change streams resume token persisted every 100 operations",
|
||||
]
|
||||
|
||||
NEEDLE_QUERIES = [
|
||||
"Fibonacci sequence optimization memoization",
|
||||
"PostgreSQL vacuum autovacuum threshold",
|
||||
"Redis cluster failover timeout sentinel",
|
||||
"Kubernetes horizontal pod autoscaler CPU",
|
||||
"GraphQL subscription WebSocket heartbeat",
|
||||
"JWT token rotation policy refresh",
|
||||
"Elasticsearch index sharding primary replica",
|
||||
"Docker multi-stage build image size production",
|
||||
"Apache Kafka consumer group rebalance",
|
||||
"MongoDB change streams resume token",
|
||||
]
|
||||
|
||||
|
||||
def _populate_single_room(palace_path, n_drawers, n_needles=10):
|
||||
"""Pack all drawers into one wing+room, plant needles, return queries."""
|
||||
gen = PalaceDataGenerator(seed=42, scale="small")
|
||||
os.makedirs(palace_path, exist_ok=True)
|
||||
client = chromadb.PersistentClient(path=palace_path)
|
||||
col = client.get_or_create_collection("mempalace_drawers")
|
||||
|
||||
batch_size = 500
|
||||
docs, ids, metas = [], [], []
|
||||
|
||||
# Plant needles
|
||||
for i in range(n_needles):
|
||||
needle_id = f"NEEDLE_{i:04d}"
|
||||
content = f"{needle_id}: {NEEDLE_TOPICS[i]}. Unique planted needle for threshold test."
|
||||
drawer_id = f"drawer_single_room_{hashlib.md5(needle_id.encode()).hexdigest()[:16]}"
|
||||
docs.append(content)
|
||||
ids.append(drawer_id)
|
||||
metas.append({
|
||||
"wing": "concentrated",
|
||||
"room": "single_room",
|
||||
"source_file": f"needle_{i}.txt",
|
||||
"chunk_index": 0,
|
||||
"added_by": "threshold_bench",
|
||||
"filed_at": datetime.now().isoformat(),
|
||||
})
|
||||
|
||||
# Fill with noise — all in the SAME room
|
||||
remaining = n_drawers - len(docs)
|
||||
for i in range(remaining):
|
||||
content = gen._random_text(400, 800)
|
||||
drawer_id = f"drawer_single_room_{hashlib.md5(f'noise_{i}'.encode()).hexdigest()[:16]}"
|
||||
docs.append(content)
|
||||
ids.append(drawer_id)
|
||||
metas.append({
|
||||
"wing": "concentrated",
|
||||
"room": "single_room",
|
||||
"source_file": f"noise_{i:06d}.txt",
|
||||
"chunk_index": i % 10,
|
||||
"added_by": "threshold_bench",
|
||||
"filed_at": datetime.now().isoformat(),
|
||||
})
|
||||
|
||||
if len(docs) >= batch_size:
|
||||
col.add(documents=docs, ids=ids, metadatas=metas)
|
||||
docs, ids, metas = [], [], []
|
||||
|
||||
if docs:
|
||||
col.add(documents=docs, ids=ids, metadatas=metas)
|
||||
|
||||
return client, col
|
||||
|
||||
|
||||
@pytest.mark.benchmark
|
||||
class TestRecallThresholdSingleRoom:
|
||||
"""
|
||||
All drawers in one room — isolates the embedding model's retrieval limit.
|
||||
|
||||
Room filtering can't help here. This is the true ceiling.
|
||||
"""
|
||||
|
||||
SIZES = [250, 500, 1_000, 2_000, 3_000, 5_000]
|
||||
|
||||
@pytest.mark.parametrize("n_drawers", SIZES)
|
||||
def test_single_room_recall(self, n_drawers, tmp_path):
|
||||
"""Recall@5 and @10 with all drawers in one bucket."""
|
||||
palace_path = str(tmp_path / "palace")
|
||||
_populate_single_room(palace_path, n_drawers, n_needles=10)
|
||||
|
||||
from mempalace.searcher import search_memories
|
||||
|
||||
hits_at_5 = 0
|
||||
hits_at_10 = 0
|
||||
n_queries = len(NEEDLE_QUERIES)
|
||||
|
||||
for i, query in enumerate(NEEDLE_QUERIES):
|
||||
result = search_memories(
|
||||
query,
|
||||
palace_path=palace_path,
|
||||
wing="concentrated",
|
||||
room="single_room",
|
||||
n_results=10,
|
||||
)
|
||||
if "error" in result:
|
||||
continue
|
||||
|
||||
texts = [h["text"] for h in result.get("results", [])]
|
||||
needle_id = f"NEEDLE_{i:04d}"
|
||||
|
||||
found_at_5 = any(needle_id in t for t in texts[:5])
|
||||
found_at_10 = any(needle_id in t for t in texts[:10])
|
||||
|
||||
if found_at_5:
|
||||
hits_at_5 += 1
|
||||
if found_at_10:
|
||||
hits_at_10 += 1
|
||||
|
||||
recall_5 = hits_at_5 / n_queries
|
||||
recall_10 = hits_at_10 / n_queries
|
||||
|
||||
record_metric("single_room_recall", f"recall_at_5_at_{n_drawers}", round(recall_5, 3))
|
||||
record_metric("single_room_recall", f"recall_at_10_at_{n_drawers}", round(recall_10, 3))
|
||||
|
||||
@pytest.mark.parametrize("n_drawers", SIZES)
|
||||
def test_single_room_no_filter_recall(self, n_drawers, tmp_path):
|
||||
"""Same test but WITHOUT wing/room filter — pure unfiltered search."""
|
||||
palace_path = str(tmp_path / "palace")
|
||||
_populate_single_room(palace_path, n_drawers, n_needles=10)
|
||||
|
||||
from mempalace.searcher import search_memories
|
||||
|
||||
hits_at_5 = 0
|
||||
hits_at_10 = 0
|
||||
n_queries = len(NEEDLE_QUERIES)
|
||||
|
||||
for i, query in enumerate(NEEDLE_QUERIES):
|
||||
result = search_memories(query, palace_path=palace_path, n_results=10)
|
||||
if "error" in result:
|
||||
continue
|
||||
|
||||
texts = [h["text"] for h in result.get("results", [])]
|
||||
needle_id = f"NEEDLE_{i:04d}"
|
||||
|
||||
if any(needle_id in t for t in texts[:5]):
|
||||
hits_at_5 += 1
|
||||
if any(needle_id in t for t in texts[:10]):
|
||||
hits_at_10 += 1
|
||||
|
||||
recall_5 = hits_at_5 / n_queries
|
||||
recall_10 = hits_at_10 / n_queries
|
||||
|
||||
record_metric("single_room_unfiltered", f"recall_at_5_at_{n_drawers}", round(recall_5, 3))
|
||||
record_metric("single_room_unfiltered", f"recall_at_10_at_{n_drawers}", round(recall_10, 3))
|
||||
Reference in New Issue
Block a user