WaveMind Living Benchmark Dashboard

Generated from checked-in benchmark artifacts. Planned rows are not claimed wins; external service evidence is shown separately.

Readiness

pass

39/39 criteria pass

Implemented

39

4 runner-ready and 6 planned public proof paths

Refresh

2026-07-15T00:57:04Z

source 025b8285cbf2

Visual Summary

WaveMind benchmark summary

Publication Contract

The leaderboard is generated from artifacts, freshness-checked, published to GitHub Pages, and claim-limited until strict production evidence passes.

Statuspass
Weekly schedule17 4 * * 1
Refresh profilelocal
Pages URLhttps://caspiang.github.io/wavemind/
Source ref025b8285cbf2
Workflow runlocal or manual artifact
weekly schedule: truemanual dispatch: truegithub pages upload: truegithub pages deploy: truereview artifact uploaded: trueno scheduled bot commit to main: truestrict freshness gate: truemachine status published: true

Agent Impact

Behavioral evidence: task success, stale-fact suppression, context savings, long-memory retrieval, and checked-in answer-quality smoke results.

Statuspass
Benchmarks6
WaveMind wins6
Average lift0.37
Context saved0.719
Stale safety1
Best profileagent-coherence-and-token-savings-wavemind

Read the agent impact report

Structured Memory

Typed memory evidence: image, audio, video, 3D, table, event, graph, external vectors, temporal recall, knowledge-graph traversal, provenance, and persistence.

Modalities: image, audio, table, event, video, 3d, graph

Statuspass
Modalities7
Gate checks26/26
Structured precision@11
Cross-modal precision@11
Encoder healthTrue
Encoder query p951.515 ms
Temporal precision@11
Graph precision@11
Cross-modal avg latency4.715 ms

Read the structured memory report

Multimodal Admission

Production multimodal claims stay locked until real external image, audio, video, and 3D encoder evidence proves object-store persistence, cross-modal routing, provenance, latency, and error-rate thresholds.

Statusplan_only
Admittedfalse
Structured contractpass
Requested evidenceaction_required
Required artifactbenchmarks/multimodal_external_encoder_results.json
External modalities0
External payloads0
External queries0
Object store

Read the multimodal admission report

Memory OS Intelligence

Worker evidence: hot-query prewarm, transition-learned predictive prefetch, priority learning, adaptive forgetting, concept consolidation, Redis coordination, and rollout admission boundaries.

Statuspass
Gate checks39/39
Hot queries2
Prewarm warmed2
Predictive warmed6
Transition hitTrue
Priority predictions2
Forgetting demotions4
Concepts created1
Canary statuspass
Admission statusplan_only

Read the Memory OS intelligence report

Cluster Autoscale

Cluster evidence: shard placement, autoscale planning, Kubernetes operator reconciliation, rebalance safety, active-active convergence, CRDT field state, and the deterministic 100M capacity envelope.

Statuspass
Gate checks62/62
Simulated memories1000000
Namespaces4096
Autoscale target10000000
Required nodes50
Operator replicas34
100M capacity nodes128
100M capacity zones8
Recommended max replicas192

Read the cluster autoscale report

Strict Evidence Readiness

Operator runbook for the remaining remote, 10M, 50M, and 100M evidence gaps: safe dispatch commands, missing environment, promotion steps, strict validation, and locked claims.

Blockers: complete: 5, missing_env: 3

Report statuspass
Readinessaction_required
Claim statusclaims_limited
Requirements8
Action required3
Safe dispatch ready0
Can auto-run now0
Planned target memories180000000

Read the strict evidence readiness runbook

Benchmark Leaderboard

benchmark category primary metric best WaveMind result best baseline result readout
Agent user-memory retrieval agent-memory precision@1 WaveMind: 0.82 / 2.249 ms Chroma: 0.82 / 0.933 ms Quality tie; WaveMind slower
Agent coherence and token savings agent-memory task success WaveMind: 0.917 / 2.647 ms Static vector: 0.333 / 0.679 ms WaveMind leads on quality
Dynamic memory policy agent-memory precision@1 WaveMind: 1 / 3.918 ms Chroma static: 0.571 / 1.662 ms WaveMind leads on quality
Field memory graph dynamics agent-memory precision@1 WaveMind graph: 1 / 0.332 ms - WaveMind-only check
WaveMind capacity curve capacity precision@1 WaveMind dynamic capacity: 1 / 48.4 ms - WaveMind-only check
Long-term memory evidence long-term-agent-memory evidence recall@k WaveMind: 1 / 6.103 ms Static vector: 1 / 0.648 ms Quality tie; WaveMind slower
BEIR-style open retrieval runner retrieval precision@1 WaveMind: 0.24 / 117.0 ms Chroma: 0.243 / 1.794 ms Baseline leads on quality
NoMIRACL Russian retrieval multilingual-retrieval precision@1 WaveMind: 0.41 / 10.2 ms Chroma: 0.41 / 2.603 ms Quality tie; WaveMind slower
LoCoMo evidence retrieval runner long-term-conversation-memory evidence recall@k WaveMind sentence: 0.547 / 3.438 ms Qdrant sentence: 0.409 / 124.3 ms WaveMind leads on quality
LongMemEval evidence retrieval long-term-agent-memory evidence recall@k WaveMind: 0.782 / 7.274 ms Static vector: 0.52 / 0.083 ms WaveMind leads on quality
LongMemEval evidence 50-query smoke long-term-agent-memory evidence recall@k WaveMind: 0.92 / 15.3 ms Static vector: 0.6 / 0.337 ms WaveMind leads on quality
ANN index latency curve index-latency Recall@k WaveMind numpy: 1 / 1.988 ms Qdrant local: 1 / 33.8 ms Quality tie; WaveMind faster
Production index profile index-latency Recall@k WaveMind faiss-persisted: 1 / 3.524 ms Qdrant service: 1 / 4.414 ms Quality tie; WaveMind faster
Production pgvector tuning profile index-latency Recall@k WaveMind pgvector-exact: 1 / 55.7 ms Qdrant service: 1 / 9.137 ms Quality tie; WaveMind slower
Production load profile 100k production-scale Recall@k WaveMind pgvector: 0.736 / 17.8 ms Qdrant service: 1 / 10.3 ms Baseline leads on quality; production SLO pass: Qdrant service; cost: Qdrant service $1.39/1M queries
Production load profile 1M production-scale Recall@k WaveMind faiss-persisted: 1 / 39.1 ms Qdrant service: 0.984 / 82.6 ms WaveMind leads on quality; production SLO needs scale: WaveMind faiss-persisted; cost: WaveMind faiss-persisted $4.17/1M queries
Qdrant 1M HNSW ef sweep production-scale Recall@k - hnsw_ef=2048: 0.977 / 64.8 ms No WaveMind result; production SLO miss; cost if SLO fixed: hnsw_ef=512 $4.86/1M queries
Production streaming load runner production-scale Recall@k 10k smoke / WaveMind numpy-streaming: 1 / 0.098 ms Qdrant sharded smoke / Qdrant sharded service streaming: 1 / 9.103 ms Quality tie; WaveMind faster; production SLO pass: 10k smoke / WaveMind numpy-streaming; cost: 10k smoke / WaveMind numpy-streaming $0.69/1M queries
Scale readiness profile production-scale precision@1 WaveMind structured payloads: 1 / 1.959 ms - WaveMind-only check
Production readiness gate production-scale readiness score WaveMind production readiness: 1 / - - WaveMind-only check
Memory competitor adapter profile agent-memory precision@1 WaveMind: 0.8 / 14.5 ms GraphRAG static graph: 0.852 / 0.079 ms Baseline leads on quality
LongMemEval answer generation long-term-agent-memory token F1 WaveMind + qwen2.5:1.5b: 0.333 / - Chroma static + qwen2.5:1.5b: 0.17 / - WaveMind leads on quality

Evidence Source Status

area current source claim status next action
Artifact freshness local matrix refresh at 2026-07-15T00:57:04Z source 025b8285cbf2; audit gate enforced by validate_benchmark_artifacts.py Keep weekly refresh green before public claims.
Serverless telemetry loopback API pool; loopback-api-capacity-estimate; 4 measured replicas observed SLO True; loopback evidence, not a managed-serverless claim Run .github/workflows/serverless-observed-telemetry.yml against deployed API nodes.
External HTTP cluster load kubernetes-kind-non-loopback-ci; kubernetes-pod-dns-physical-node-drill; 4 nodes SLO True; non-loopback Kubernetes pod-DNS evidence Run .github/workflows/external-http-cluster-load.yml with a remote node manifest.
External HTTP active-active loopback local-loopback; loopback-api-regions; 3 regions SLO True; external URL contract over local API regions Run .github/workflows/external-http-active-active.yml with remote regions for production evidence.
External HTTP active-active no checked-in remote region artifact action required before remote active-active production claim Run .github/workflows/external-http-active-active.yml with a remote region manifest.
pgvector tuning real PostgreSQL/pgvector service profile at 50k vectors iterative recall 0.97, iterative p99 55.2 ms; exact recall 1 Promote pgvector-iterative into the 100k and 1M production load SLO profiles.
10M streaming load local WaveMind faiss-ivfpq-persisted streaming profile target recall 0.99, p99 60.1 ms, SLO scale_required Repeat at 50M and add service-backed Qdrant/pgvector 10M artifacts.
50M streaming preflight WaveMind faiss-ivfpq-persisted streaming plan-only contract action_required; index 1.12 GB; app storage 119.2 GB; blockers missing_env:WAVEMIND_FAISS_IVFPQ_PATH, insufficient_local_disk_for_index_and_transient_batches Run .github/workflows/production-streaming-load.yml with faiss-ivfpq-persisted and publish benchmarks/production_streaming_load_ivfpq_50m_results.json.
Qdrant streaming real Qdrant service smoke plus measured 10M profile smoke recall 1, smoke p99 17.9 ms; 10M recall 0.975, 10M p99 43.3 ms, SLO scale_required Keep the measured 10M profile green and run the sharded Qdrant and pgvector 10M profiles next.
Qdrant sharded streaming real fanout smoke plus measured four-service 10M profile smoke recall 1, smoke p99 16.0 ms; 10M recall 0.993, 10M p99 71.3 ms, shards 4; 100M preflight action_required; planned shards 4; blockers none (measured artifact passes) Keep the measured 10M sharded profile green and run the strict 100M sharded profile next.
Qdrant 1M streaming real Qdrant service run before and after warmup/chunking tuning cold p99 3014.0 ms; tuned recall 1, tuned p99 26.4 ms, SLO pass Use the tuned warmup/chunking profile for the 10M Qdrant service run.
pgvector streaming real PostgreSQL/pgvector service smoke plus 10M preflight smoke recall 1, smoke p99 7.624 ms; 10M preflight action_required Run .github/workflows/production-streaming-load.yml with pgvector-service against sized Postgres storage.
Production readiness gate checked-in benchmark artifacts pass; 39/39 pass Keep the gate at readiness_score 1.0 while repeating larger service-backed runs and moving external competitor evidence into the separate adapter profile.
Competitor adapters checked local adapters plus optional external services configured 4; skipped Zep Configure skipped external services before claiming full competitor coverage.

Reading Rules

Quality wins and latency wins are separate. A row can lead on recall while still being slower.

WaveMind-only rows are regression and capacity checks, not competitor claims.

Production SLO rows use checked recall, p99, QPS, replica count, autoscaling, and cost assumptions.

Remote active-active, managed serverless, and live competitor rows stay marked as external evidence until real service artifacts are checked in.