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.
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.
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.
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.
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.
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.

Operator-asserted handling banners. Everything shipped is UNCLASSIFIED // FOR TRAINING — no controlled data, no operational technique library, no exploit content.
Visible confidence and per-feature contribution for every classification — auditable, not a black box.
Taxonomy & features trace to RadChar (ICASSP 2023), RadioML 2018, MIT OpenCourseWare, Skolnik / POMR, FOI. The assistant shows its references.
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
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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