AI contractor for the Department of Energy and national labs.

Scientific machine learning, HPC-scale AI, grid and power analytics, materials discovery, and nuclear nonproliferation modeling. Ames, Iowa-based small business — next door to Ames National Lab, within a day's drive of Argonne and INL.

8
Target National Labs
6+
DOE Proposal Drafts
24h
Teaming Response SLA
541512
Primary NAICS

Why DOE is an AI buyer in 2026

The Department of Energy is the largest federal funder of physical-sciences research and the steward of the U.S. national laboratory system. In 2026, DOE's AI budget is concentrated in three arcs: scientific machine learning that accelerates simulation and discovery, grid modernization and power AI that stabilizes a grid absorbing renewables and distributed resources, and national-security AI that supports nuclear nonproliferation, stockpile stewardship, and counter-WMD work. The Office of Science, NNSA, the Office of Electricity, ARPA-E, and EERE are all spending.

Precision Delivery Federal LLC is an Ames, Iowa-based small business aimed squarely at this work. We are SAM.gov active, NAICS 541512 primary, SBIR-registered, and we carry a production federal ML past performance anchor at SAMHSA. Geography matters in DOE work — we are a short drive from Ames National Lab and well-positioned for collaboration with Argonne, Fermilab, and Idaho National Laboratory.

National labs we target

Each lab has a mission character and an AI-buying behavior worth knowing. The labs where our capability set fits:

  • Los Alamos National Laboratory (LANL) — Nuclear weapons, nonproliferation, HPC-scale scientific ML, cyber. NNSA-funded work.
  • Lawrence Livermore National Laboratory (LLNL) — Stockpile stewardship, HPC (Sierra, El Capitan), inertial confinement fusion, AI for simulation.
  • Sandia National Laboratories (SNL) — Weapons engineering, cybersecurity, energy systems, autonomy.
  • Oak Ridge National Laboratory (ORNL) — Frontier exascale system, AI for science, materials, bioenergy.
  • Idaho National Laboratory (INL) — Nuclear reactor R&D, grid resilience, critical infrastructure cyber. Regional neighbor to Iowa.
  • Argonne National Laboratory (ANL) — Aurora exascale, scientific ML, materials, energy storage.
  • Pacific Northwest National Laboratory (PNNL) — Grid modernization, chem/bio, nuclear nonproliferation, national security.
  • NREL — Renewable energy modeling, grid AI, power-systems optimization.
  • Ames National Laboratory — Materials science, rare earths, our literal geographic neighbor.

DOE vehicles and opportunity paths

  • DOE SBIR / STTR — Roughly two annual solicitations, AI-heavy across program offices (Office of Science, EERE, NNSA, Fossil Energy, Nuclear Energy). Post-April-2026 reauthorization this is an active path. We are SBIR-registered and ready.
  • ARPA-E solicitations — Open topic and focused-program solicitations in energy breakthroughs. Small-team-friendly, outcome-oriented.
  • National lab subcontracts — Each lab runs its own procurement. For AI/ML work, a small business with FedRAMP-grade stack and production federal past performance is exactly the profile labs reach for.
  • DOE program office BAAs — Office of Electricity, Office of Science, EERE, NNSA all run BAAs relevant to AI/ML scope.
  • Consortium-led OTAs — Several OTA consortia intersect DOE grid and national-security work.
  • Governmentwide vehicles — OASIS+, Alliant 2, and GSA MAS occasionally used by DOE program offices for specialized professional services.

Where our AI/ML fits DOE mission

DOE AI scope is distinct from civilian-agency AI. The buyers are PhDs, the corpora are physical-sciences data, and the compute is HPC. Our fit categories:

  • Scientific machine learning — surrogate models that replace expensive simulation steps, physics-informed neural networks, operator learning (DeepONet, FNO) on PDE-governed systems, active-learning campaigns for materials and molecules.
  • Grid and power AI — short-horizon load forecasting, distributed energy resource orchestration, grid-edge anomaly detection, storm-impact prediction for utility operations, ML-assisted state estimation.
  • HPC-scale training and inference — distributed training on lab-scale GPU fleets, mixed-precision at scale, parameter-efficient fine-tuning of foundation models for science.
  • Materials and molecular discovery — graph neural networks for molecular property prediction, generative models for candidate structures, Bayesian optimization over synthesis campaigns.
  • Carbon capture and sequestration — ML for subsurface imaging, reservoir dynamics, sorbent screening, process optimization.
  • Nuclear nonproliferation analytics — ML over open-source, remote-sensing, and radiological signatures. NNSA-relevant scope.
  • Critical infrastructure cyber — ICS/SCADA anomaly detection, OT telemetry modeling, adversarial robustness testing of grid-control ML.
  • Reactor and fusion analytics — disruption prediction, plasma control ML, reactor diagnostics (relevant to INL, LLNL, PPPL-adjacent work).

Why a small business on DOE AI

DOE and the labs run aggressive small-business goals. Many lab procurements are set aside or strongly preference small business subs. A prime or lab-internal PI partnering with a SAM.gov-registered, NAICS 541512 small business with production federal ML past performance gets specialized AI capability and small-business credit in one move. We are also leaner than a large integrator, which means a higher fraction of SBIR and BAA budget flows to the actual science.

Beyond the economics, a small business is faster. Lab PIs working against a DOE SBIR Phase I deadline or an ARPA-E submission window do not have weeks to wait on a large prime's capture committee. We sign NDAs in a day and deliver technical narrative in under a week.

Past performance and what we bring

Our confirmed federal past performance is a production ML system at SAMHSA (HHS) — a live system, not a pilot, inside a federal ATO boundary, with NIST 800-53 controls and ongoing operations. That is directly relevant to DOE lab environments where ATO governance and audit logging are required. Pre-Precision, Bo delivered cloud migration and data platform engineering at federal consulting firms supporting HHS and IRS, and competed to Kaggle Top 200 globally — the competition-grade modeling skill that DOE science-ML work demands.

For DOE scope, we target and pursue rather than claiming delivered lab past performance. That honesty is how we earn a first task order.

Stack for DOE workloads

  • HPC frameworks — PyTorch FSDP, DeepSpeed, Megatron, JAX, distributed training on multi-node GPU clusters.
  • Scientific ML — physics-informed neural networks, neural operators (FNO, DeepONet), graph neural networks (PyG, DGL), active-learning pipelines.
  • Foundation models — Claude, GPT-4, Llama, Mistral via appropriate federal paths; parameter-efficient fine-tuning on domain corpora.
  • Data platforms — lakehouse architectures, governed science-data stores, experiment tracking (MLflow, W&B).
  • Cloud + on-prem — AWS GovCloud, Azure Government, on-premise lab HPC environments, hybrid bursting patterns.
  • Security — NIST 800-53 controls by default, audit logging, provenance on every generation, adversarial robustness testing.

Geography and why Iowa matters for DOE

Precision Federal is headquartered in Ames, Iowa 50010. Ames is home to Ames National Laboratory (operated by Iowa State University under a DOE contract) — a DOE Office of Science lab focused on materials science and rare-earth processing. Iowa State's computational and data science ecosystem runs through the city. We are within a day's drive of Argonne and Fermilab and well-positioned to support INL work. For DOE program managers who value geographic diversity in their small-business partners, Iowa places us outside the D.C./Bay Area clustering that dominates most federal AI procurement.

How to engage

If you are a lab PI, a DOE program manager, a prime on a DOE IDIQ, or a commercialization partner on an SBIR or ARPA-E opportunity, email [email protected]. Include the lab or program office, the vehicle or topic, and the scope. We respond within 24 hours with a fit assessment, rough level of effort, and a teaming construct.

DOE AI contracting, answered.
Which DOE national labs does Precision Federal target?

LANL, LLNL, SNL, ORNL, INL, ANL, PNNL, NREL, and Ames National Laboratory. INL is a regional neighbor, and Ames Lab is in our home city.

What DOE vehicles do you pursue?

DOE SBIR / STTR (two annual solicitations), ARPA-E open and topic-specific calls, national lab subcontracts, DOE program office BAAs (Office of Science, EERE, NNSA, Office of Electricity), consortium-led OTAs, and governmentwide vehicles used by DOE program offices.

Is Precision Federal near a DOE lab?

Yes. Headquartered in Ames, Iowa 50010 — home to Ames National Laboratory. Argonne, Fermilab, and Idaho National Lab are all reachable for hands-on collaboration.

Do you have DOE past performance?

We pursue DOE opportunities and do not claim delivered past performance inside the Department. Confirmed federal past performance is a production ML system at SAMHSA (HHS) plus cloud migration and data platform engineering at prior consulting firms.

What AI scope fits DOE best?

Scientific ML (surrogates, PINNs, neural operators), grid and power AI, materials and molecular discovery, HPC-scale training and inference, carbon capture modeling, nuclear nonproliferation analytics, and critical-infrastructure cyber ML.

How do I engage on a DOE requirement?

Email [email protected] with the program office or lab, vehicle, and scope. We respond within 24 hours with a fit assessment, LOE, and teaming construct.

Also relevant for DOE teaming.
1 business day response

Ready to team on a
DOE opportunity.

Eight labs tracked. Iowa-based. SBIR-ready. AI-native.

[email protected]
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