Machine Learning Engineer, Public Sector
Listed on 2026-03-01
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IT/Tech
Systems Engineer, AI Engineer, Machine Learning/ ML Engineer, Data Scientist
Location: California
Overview
The goal of a Staff Machine Learning Engineer at Scale is to lead the design and deployment of agentic AI systems that operate in real-world, mission-critical government environments. On the Public Sector team, you’ll work at the intersection of agentic ML, systems engineering, and applied research, building foundational infrastructure that enables AI systems to reason, plan, and act reliably at national scale.
Our Public Sector ML Team partners directly with U.S. defense and intelligence agencies to deploy AI into classified and regulated environments. Through flagship programs like Donovan and Thunder forge, we are advancing the next generation of agentic AI for geospatial reasoning, planning, and decision support. Staff Machine Learning Engineers play a central role in setting technical direction, owning core architectures, and translating ambitious ideas into production systems trusted by government operators.
Responsibilities- Lead the architecture and implementation of agentic AI systems, with a focus on long-horizon reasoning, orchestration, and system-level reliability.
- Build and scale agents that perform complex geospatial reasoning, including interpreting, generating, and reasoning over maps and spatial data.
- Design and improve retrieval systems across large collections of static and semi-structured documents, enabling agents to surface high-signal context efficiently.
- Fine-tune and evaluate embedding models to improve recall and precision for mission-critical datasets.
- Design memory systems that allow agents to persist state, operate over long contexts, and learn from prior interactions.
- Own and evolve shared agentic infrastructure and core libraries, enabling reuse across teams, products, and Public Sector contracts.
- Define evaluation strategies for agentic systems, including robustness testing, failure-mode analysis, and regression testing in production environments.
- Partner closely with engineering managers, product leaders, and researchers to scope high-impact initiatives and unblock execution across teams.
- Serve as a technical mentor and multiplier—raising the bar for system design, ML rigor, and production readiness across the organization.
This role will require an active security clearance or the ability to obtain a security clearance.
Ideally You’d Have- 8+ years of experience building and deploying applied ML systems in production environments.
- Deep experience with agentic systems, autonomous workflows, or ML systems that reason and act over multiple steps.
- Strong background in ML systems engineering, including model serving, pipelines, monitoring, and evaluation.
- Hands-on experience with retrieval systems, embeddings, or representation learning.
- Proficiency in Python and modern ML frameworks (e.g., PyTorch), with the ability to design systems end to end.
- Demonstrated ability to operate at Staff-level scope: setting technical direction, owning ambiguous problems, and driving 0→1 initiatives to production.
- Experience making thoughtful tradeoffs across performance, cost, reliability, and development velocity.
- High ownership over 0→1 systems that move directly into production.
- Real-world constraints that force thoughtful engineering tradeoffs, not just model tuning.
- Opportunity to shape foundational agentic infrastructure used across multiple teams and missions.
- Work that blends research depth with applied impact, in environments where correctness, robustness, and trust matter.
Compensation packages at Scale for eligible roles include base salary, equity, and benefits. The base salary range for this full-time position in Washington DC is:
$260,400 — $326,600 USD
Other locations may have different base salary ranges as noted by the job posting.
The range displayed on each job posting reflects the minimum and maximum target for new hire salaries for the position, determined by work location and additional factors, including job-related skills, experience, interview performance, and relevant education or training. Scale employees in eligible roles are also granted equity-based compensation, subject to Board of Director approval. You’ll also receive benefits including, but not limited to: comprehensive health, dental and vision coverage, retirement benefits, a learning and development stipend, and generous PTO.
This role may be eligible for additional benefits such as a commuter stipend.
We are an inclusive and equal opportunity workplace. We are committed to equal employment opportunity regardless of race, color, ancestry, religion, sex, national origin, sexual orientation, age, citizenship, marital status, disability status, gender identity or Veteran status. We comply with applicable laws and provide reasonable accommodations on request. For more information, please refer to our privacy policy.
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