Explainable AI · decision support

Turn the spectrum into a decision.

AI EW Decision sits on top of OAK Defense's physics-based EW models and applies machine learning to classify emitters, prioritise threats and recommend a course of action — transparently, offline, and grounded in open published literature.

UNCLASSIFIED // FOR TRAINING USE ONLY — classification-ready, never confers classification
30-second teaser

Four AI tools over the suite's physics

AI EW Advisor

AI EW Advisor

Classifies every emitter, scores threat & priority, and recommends an EW course of action — with a confidence score, the feature that drove the call, and the published source behind each class. No black box.

AI Model Trainer

AI Model Trainer

Generate datasets from the emitter physics and train/evaluate classifiers (accuracy, confusion matrix, ROC) — or benchmark on real public datasets, RadioML and RadChar. Transparent, pure-numpy.

AI EW Assistant

AI EW Assistant

Ask in plain language — "classify the emitters", "highest-priority threat", "what Chinese radars do you know?" — answered from the suite's models, with an open named-system library of 77 systems across 17 countries. Cites its sources.

Cognitive-EW Agent

Cognitive-EW Agent

A closed-loop agent that senses every emitter, learns which technique beats which emitter class, acts and adapts — out-performing a fixed doctrine once it has learned the threat picture.

Classification-ready

Field it controlled — with your own data and authority

Marking banners, role-based access, an audit log and bring-your-own-data let you operate it in a controlled environment. The software displays the handling level you assert — it never confers classification.

AI EW Decision — classification banner & sign-in
UNCLASSIFIED // FOR TRAINING USE ONLY
CUI
CONFIDENTIAL
SECRET // NOFORN
TOP SECRET
TOP SECRET // SCI

Operator-asserted handling banners. Everything shipped is UNCLASSIFIED // FOR TRAINING — no controlled data, no operational technique library, no exploit content.

Why it wins evaluations

Honest by design

Explainable

Visible confidence and per-feature contribution for every classification — auditable, not a black box.

Cited & grounded

Taxonomy & features trace to RadChar (ICASSP 2023), RadioML 2018, MIT OpenCourseWare, Skolnik / POMR, FOI. The assistant shows its references.

Real-data proof

Benchmarks the same models on public RadioML / RadChar datasets — in transparent, pure-numpy code, fully offline.

13-class taxonomy Named systems · 17 countriesRBAC + audit Bring-your-own dataOffline single-exe

Put it on your threat picture

See the Advisor classify and recommend, the Assistant answer in plain language, and the agent learn — on a scenario you care about.

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UNCLASSIFIED // FOR TRAINING USE ONLY — explainable · cited · classification-ready