The proof

Independently verified: 8× cheaper, zero errors, on real enterprise data.

Not our benchmark. BoonAI ran OpenSymbolic against their own production system, on their own document corpus, scored by an independent judge.

01 · The setup

What was tested.

BoonAI evaluated OpenSymbolic against their production multi-turn RAG system on 104 real enterprise queries over their proprietary construction-document corpus: a mix of factual, multi-hop, document-comparison, and vision questions. Answers were scored by an LLM judge; failures scored 0.1 and were never excluded. Same task, same data, head to head.

02 · Headline results

Same or better, at a fraction of the cost.

Cost / query
$0.61$0.08
8× cheaper
Errors
13.5%0%
zero failed queries
Tokens (median)
67,2629,450
86% fewer
Latency (median)
46.5s29.7s
36% faster
Accuracy (mean)
0.7770.813
+4.6%

Same or better answers, a fraction of the cost, because the baseline’s 14 errors (silent context overflows) score zero, and OpenSymbolic had none.

03 · Per-category breakdown

Where the gap is widest.

CategorynBaselineOpenSymbolicTokens savedLatency
Simple factual550.9240.89889% fewer9% faster
Multi-hop250.5840.744 (+0.160)80% fewer45% faster
Doc comparison150.5600.655 (+0.095)92% fewer47% faster
Vision selection90.7830.753*93% fewer38% faster
OpenSymbolic wins biggest on multi-hop (+0.160) and doc comparison (+0.095), exactly the hard, high-value queries where the baseline’s context overflows caused silent failures.
On simple factual it’s a hair lower (−0.026) at 89% fewer tokens, a trade most teams take gladly.
* The vision dip was an S3 permissions issue during the eval, not a framework limitation.
Head-to-head: 27 OpenSymbolic wins, 29 baseline, 48 ties, and OpenSymbolic dominates the multi-hop queries that matter most.
04 · Why it’s cheaper

The introspection boundary.

The planner sees summaries and highlights, never raw page content. Context grows ~0.5–2K tokens per step instead of the 5–30K a raw-data loop re-sends every iteration. 64% of queries resolve in a single iteration, with zero errors.

How it works: the mechanism in full
05 · Public benchmarks

And it’s not just one dataset.

MULTIHOP-RAG
82.9%+22.9 pts
Over the next-best approach across 2,556 multi-document queries. 99.6% goal completion.
TRAVELPLANNER · ICML 2024
97.9%4–13× cheaper
Pass rate at 4–13× lower cost than a ReAct loop. 7 of 11 models hit 100%.
FOLIO · FIRST-ORDER LOGIC
89.2%96% human bar
Near the human bar, backed by a theorem prover rather than a guess.

Want these numbers on your data?

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