AI & Big Data — Information Advantage, Responsibly

We build data pipelines, models, and governance that sharpen situational and operational awareness—aligned to DoD Responsible AI, NIST AI RMF, and test & evaluation practices for AI-enabled capabilities.

AI analytics dashboard and data fabric
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What we solve

From noisy data and brittle tooling to decision‑grade intelligence.

Data readiness

Authoritative sources, lineage, and quality checks; schema‑on‑read streaming and batch ETL to feed the COP.

MLOps at the edge/enterprise

Pipelines for training/inference, model registries, drift & performance monitoring, and rollback plans.

Responsible AI & TEVV

Risk‑based governance (RAI), evaluation plans, and evidence to build justified confidence in AI results.

How we do it

Standards‑aligned architecture, workflows, and evidence.

Data fabric

Ingest, curate, and fuse telemetry, logs, geospatial, and intel—edge‑to‑cloud with degraded‑mode options.

Lifecycle & MLOps

Model/data versioning, CI/CD for ML, evaluation gates, and audit trails that survive review.

Evaluation (TEVV)

Threat‑informed tests, performance/robustness, human‑machine trust, and rollback triggers.

Governance & RAI

RAI toolkit artifacts, risk registers, and approval workflows tied to mission context.

Deliverables
  • Reference data model & pipeline specs (edge/enterprise)
  • Model cards & evaluation reports (metrics, datasets, limitations)
  • MLOps runbooks, monitoring & rollback plans
  • RAI/AI RMF alignment package & decision logs
Aligned to
  • DoD Responsible AI Strategy & Toolkit
  • NIST AI Risk Management Framework 1.0 (+ GenAI profile)
  • DoD T&E for AI (DT&E/OT&E) and VV&A for M&S
We scope unclassified and classified (as authorized) AI; all work follows client cybersecurity and sharing requirements.
We design and assure AI‑enabled decision support. We do not develop offensive cyber tools or provide services that violate U.S. law or policy.