CASE STUDY — ENTERPRISE TCO / MATERIALS
5,008 DFT-grade property predictions. 13.5 seconds. The science that makes it possible.
313 materials × 16 properties, end-to-end. Accuracy audited against the public materials-universal benchmark: 1.17% MAPE on family holdout — 9 to 31 times more accurate than AFLOW, JARVIS, and MatBench on the same hard split. Total cost of ownership: dramatically lower than the realistic alternatives a discovery team faces today.
5,008
Property predictions
13.5 s
End-to-end wall-clock
1.17%
MAPE, family holdout
9–31×
More accurate than alternatives
0
Training labels required
Conclusion
13.5 seconds
to predict 16 properties across 313 materials, end-to-end
1.17% MAPE
on hard family holdout, publicly audited
9–31× more accurate
than AFLOW, JARVIS, MatBench on the same split
TCO below alternatives
across DFT HPC, in-house ML, and stitched commercial stacks
FluxMateria delivers DFT-grade accuracy across a 16-property materials suite at workflow latencies, with no fitting and no training data. On the publicly audited family-holdout split, overall MAPE is 1.17% — between 9 and 31 times closer to experiment than the AFLOW, JARVIS, and MatBench adapters scored on the same materials. Annualized capability cost sits below the four enterprise pathways a materials program faces today: high-throughput DFT on cluster, in-house ML pipelines, stitched commercial stacks, and database lookup with DFT fall-back.
Accuracy and throughput are co-derived outputs of a single first-principles physics model. The model does not require functional, basis-set, or k-point selection; both metrics are consequences of the same axiomatic derivation, validated against external public datasets and frozen to a downloadable JSON manifest.
Technical specifications
- Reference cohort
- 313 materials across 38 structural categories
- Property suite
- 16 properties spanning structural, electronic, optical, thermal, and mechanical outputs
- Validation protocol
- S2 family holdout (19 folds, 171 unseen formulas); S3 interaction holdout (15 folds, 175 unseen formulas)
- Public adapters scored
- AFLOW, JARVIS, MatBench — on identical strict splits
- Reported overall MAPE
- FluxMateria 1.17% · AFLOW 36.07% · JARVIS 10.92% · MatBench 18.42%
- Per-prediction runtime
- 2.7 ms median, universal 16-property engine; deterministic single-CPU-core wall-clock for reproducibility
- Output
- Per-property values with units and confidence band; frozen JSON manifest with commit hash
- Reproducibility anchor
- f4fb848fd7fa55be1b68d4e7592f1330553f1112, snapshot 2026-02-24
Reproducibility & audit
Accuracy figures sealed to commit f4fb848fd7fa55be1b68d4e7592f1330553f1112, snapshot 2026-02-24. The materials-universal benchmark page links the frozen JSON manifest, the per-fold strict scoring outputs, and the external adapter scoring on identical hold-outs. Wall-clock figures are reproducible from the per-prediction runtime numbers reported here. TCO ranges reflect typical industry benchmarks for ongoing capability and are independently verifiable from publicly cited license and personnel cost models.