Machine Learning Engineer Remote Jobs in Washington (US)
This page tracks remote machine learning engineer openings that are location-eligible for Washington.
This page tracks remote machine learning engineer openings that are location-eligible for Washington.
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Ensono delivers complete Hybrid IT solutions, from mainframe to cloud, tailored to each client’s journey.
• Release the function's pipeline of production tools — prioritized by business impact as the discovery pipeline surfaces them. • Engage directly with business stakeholders alongside the Solutions Lead — sit in on discovery conversations, ask the technical questions that surface real constraints, and translate what you hear into the right solution form. The Solutions Lead opens the door; the engineer brings the technical eye that decides what actually gets built. • Build headless, API-first, and agent-callable by default — every tool is engineered so a human can invoke it directly and an AI agent can invoke it programmatically as part of a larger workflow. API-first design, structured I/O, clean tool contracts. • Pair-program with an AI-paired development environment (Claude Code, Cursor, Copilot, or equivalent) — treat AI-paired development as the baseline mode of work, not an enhancement. Sustained throughput is the load-bearing promise of this role. • Contribute to a pattern catalog that compounds — document reusable patterns, tool contracts, and architectural decisions so each solution makes the next one cheaper to build. • Build internal tooling for the function’s own operations — including, over time, a FinOps agent that monitors AI usage across the function and surfaces cost-optimization opportunities. • Engineer with token-economics in mind — model routing (Haiku for retrieval and classification, Sonnet for reasoning), prompt caching, output validation, retry/cost discipline. Cost-aware code is good code. • Partner with Internal IT on the graduation pipeline — work alongside IT to harden tools that prove themselves and ensure handoff readiness when a tool graduates to production-grade managed infrastructure. • Practice security-conscious AI engineering — secrets in Bitwarden, environment hygiene, awareness of data exposure risks, and adherence to internal security and AI Spend Finance policy controls. • Document workflows, decisions, and reusable patterns so the work compounds across the Finance AI Transformation function rather than living in one person's head.
We’re on a mission to unlock the value of alternative assets, and looking for talented people who share our vision.
• Optimize our pricing models to significantly reduce infrastructure costs while maintaining and improving their accuracy, especially for high-value assets. • Iterate on our underwriting model to maximize cash advance disbursements while maintaining target risk thresholds and default rates. • Lead the full ML lifecycle from model training and feature generation to production deployment and monitoring. • Collaborate closely with our Expert Pricers to become a domain expert in the trading card market and inform model improvements. • Design and execute experiments and backtesting to discover and validate new features that improve the models’ predictive power and coverage. • Own the models’ AWS infrastructure, writing code for our pricing APIs to ensure the models can serve at scale and with low latency.
• Build internal agentic workflows end-to-end on OpenRouter, from prototype to production, that automate support and GTM operations • Integrate our systems with the tools the company runs on, and steadily replace those tools where it makes sense to • Own the reliability of what you ship: evals, guardrails, and monitoring, so automation is trustworthy rather than flashy • Drive measurable impact — deflect support volume, accelerate GTM motions, cut manual toil — and prove it with data • Work directly with support, GTM, and engineering to find the highest-leverage workflows to automate next • Iterate on real usage: ship, measure, improve
Block builds simple, powerful tools that make progress towards an economy that’s truly open to all.
Role Description At Block, we believe product quality is foundational to great user experiences, and AI is transforming how we measure, understand, and improve that quality at scale. Our team builds the intelligence layer that evaluates system behavior across millions of real-world interactions, helping ensure our products are reliable, safe, and continuously improving. We’re looking for a Senior Machine Learning Engineer to lead the technical direction of next-generation quality systems powered by LLMs and AI agents. You’ll drive the architecture and strategy behind systems that evaluate product behavior, surface emerging issues, generate actionable insights, and enable teams across Block to make higher-confidence product decisions. In this role, you’ll operate across ambiguous, high-impact problem spaces and shape how quality is measured and operationalized across the organization. You’ll work across engineering, product, platform, and leadership teams to define long-term technical direction, establish scalable evaluation frameworks, and build systems that become foundational infrastructure for AI-driven product quality. You Will - Lead the technical strategy and architecture for AI-driven quality and evaluation systems used across products and teams. - Drive the development of scalable systems that use LLMs, agents, and behavioral signals to evaluate quality, detect regressions, and generate product insights. - Define long-term approaches for evaluation, measurement, and quality intelligence across complex product surfaces. - Translate ambiguous organizational needs into clear technical direction, roadmap priorities, and platform capabilities. - Influence engineering standards and best practices for building reliable, measurable, and trustworthy AI systems. - Lead complex cross-functional initiatives spanning product, infrastructure, data, and applied AI teams. - Mentor and level up engineers across the organization through technical leadership, design reviews, and systems thinking. - Identify leverage opportunities where AI systems can fundamentally improve how teams understand, debug, and improve product behavior. Qualifications - 5+ years of experience in software engineering, machine learning engineering or applied AI. - Deep experience designing and shipping large-scale AI/ML systems in production environments. - Strong expertise with LLMs, agents, evaluation systems, retrieval architectures, and modern AI infrastructure. - Proven ability to lead ambiguous, high-impact technical initiatives from concept through adoption across multiple teams. - Strong systems thinking and architectural judgment, with the ability to balance experimentation, scalability, and operational rigor. - Experience defining technical strategy and influencing roadmaps beyond your immediate team. - Excellent communication and cross-functional leadership skills, with the ability to align engineering, product, and organizational priorities. - A track record of creating leverage through platforms, frameworks, and systems that enable other engineers and teams to move faster and make better decisions. Benefits - Remote work - Medical insurance - Flexible time off - Retirement savings plans - Modern family planning Company Description Block, Inc. (NYSE: XYZ) builds technology to increase access to the global economy. Each of our brands unlocks different aspects of the economy for more people. - Square makes commerce and financial services accessible to sellers. - Cash App is the easy way to spend, send, and store money. - Afterpay is transforming the way customers manage their spending over time. - TIDAL is a music platform that empowers artists to thrive as entrepreneurs. - Bitkey is a simple self-custody wallet built for bitcoin. - Proto is a suite of bitcoin mining products and services.
NAVANTA is the community bank technology outfitter that inspires confidence for community banks, by providing purpose-built solutions that make technology work for them, instead of the other way around. Founded in 1991, our purpose is to Empower Community Banks and Our People to Thrive – Together. We live that Purpose by always putting people first in our decisions and actions. Our engaged culture is strongly influenced by the passion our team members bring while serving Community Banks and their communities. We believe in encouraging confidence in each other and delivering solutions that make our customers confident with us. To that end we seek out problem solvers, creative thinkers and engaged individuals that thrive in a fast-paced yet supportive environment. We believe engaged employees lead to loyal customers, which in turn drives results for our business. We are caring, intense, and approachable, and have a lot of fun along the way.
Role Description The Lead AI/ML Engineer owns the brain of the Navanta AI platform — retrieval, text-to-metrics, model serving, tool orchestration, and the evaluation harness that keeps answers honest. Working under the SVP of Technology and Commercial AI and in close collaboration with the data, platform, and product teams, this role makes “correct and verifiable” the product’s default — the foundation of trust in a regulated banking environment where a confident wrong number loses the account. Key Responsibilities - Build Navanta’s retrieval and verifications over data systems, with shown queries and citations for every answer. - Stand up self-hosted open-weight models serving and embeddings inside each bank’s environment or shared environments for Navanta; evolve RAG to a dedicated standard. - Design the MCP tool layer that exposes a small, audited set of read-only tools (metrics, documents, customer 360), eventually growing into read/write tools with heavy amounts of regulated, highly sensitive data. - Build and maintain the evaluation harness — golden-question regression, groundedness and retrieval metrics, explicit “I don’t know” behavior — and make it a release gate. - Implement LLM guardrails: PII redaction in prompts and context, prompt-injection defenses, and cost and row limits aligned to regulatory security expectations. - Partner with data teams so the model selects governed metrics from the semantic layer rather than improvising SQL. - Document model architecture, evaluation methodology, and guardrail controls to support customer security reviews and audit readiness. - Track latency, cost, and quality trade-offs across model versions and deployment configurations. Core Competencies - Accuracy and evaluation orientation — a demonstrated focus on verifiability and groundedness, not just compelling demos. - Production LLM/RAG engineering: retrieval pipelines, tool orchestration, prompt engineering, and guardrail implementation. - Security and compliance mindset: PII handling, prompt-injection defense, and least-privilege tool access aligned to NIST CSF 2.0 principles. - Cross-functional collaboration with data and platform engineering to deliver a governed, auditable AI system. Key Performance Indicators (KPIs) - Golden-question accuracy — maintained or improved release over release against the verified question set. - Groundedness rate: percentage of assistant answers fully supported by retrieved context. - PII redaction coverage and zero prompt-injection incidents in production. - Model serving latency and cost per query within defined targets. - Evaluation harness adoption as a release gate — zero releases without passing the regression suite. Qualifications - 6–10+ years building software, with 2–3+ years shipping production LLM, RAG, or NLP systems used by real people — not prototypes. - A demonstrated focus on accuracy and evaluation, not just demos. - Strong Python and solid software-engineering fundamentals. - Comfort operating self-hosted open-weight models and reasoning about latency, cost, and quality trade-offs. Core Technologies - Languages: Python. - Serving & inference: vLLM, Ollama; GPU / CUDA familiarity, NVIDIA Enterprise (NVAIE). - RAG & retrieval: LlamaIndex or Haystack; Qdrant, pgvector; embeddings. - Orchestration: MCP, tool / function calling. - Structured querying: text-to-SQL; semantic layers (Cube / dbt MetricFlow). - Evaluation & guardrails: groundedness and eval frameworks, PII redaction, prompt-injection defense. Nice to Have - Experience in regulated or high-stakes domains where a wrong answer is costly. - Fine-tuning, adapters, and retrieval-quality optimization. - Familiarity with banking and finance terminology. Education and/or Experience - Bachelor’s degree in computer science, mathematics, or a related technical field, or equivalent hands-on experience. - Experience in the financial services industry or a regulated, high-accuracy AI application environment strongly preferred. Work Structure & Expectations - Full-time role combining ongoing model operations and evaluation with initiative-based build-out of the data retrieval, guardrail, and serving infrastructure. - Close collaboration with data engineering, platform engineering, and product teams; on-call rotation covering reliability in production. Physical Demands The physical demands described here are representative of those that must be met by an employee to successfully perform the essential functions of this job. Reasonable accommodations may be made to enable individuals with disabilities to perform the essential functions. - While performing the duties of this job, the employee is regularly required to sit and use hands to finger, handle, or touch objects, tools, or controls. - The employee frequently is required to talk or hear. - The employee is occasionally required to stand; walk; and stoop, kneel, crouch, or crawl. - The employee must occasionally lift and/or move up to 10 pounds, usually waist high, up to 50 feet away. - Specific vision abilities required by this job include close vision and the ability to adjust focus. Work Environment - Typical office environment. - Up to 20% travel time may be required. Company Description Navanta is the trusted technology and services partner for community financial institutions, unifying critical systems, security, cloud infrastructure, and support into one seamless, purpose built experience. With more than 35 years of banking expertise — from Managed IT to Core Banking, CRM, and Advisory Services — Navanta helps institutions simplify complexity, reduce risk, and strengthen daily operations. Navanta empowers community bankers and their people to thrive together. Go Bankers, Go.™
• Design, build, and maintain agentic systems and LLM-powered applications that automate healthcare workflows, data pipelines, and clinical decision support — from conception through production deployment • Build and orchestrate agents using LLM APIs (OpenAI, Anthropic, etc.) and agentic frameworks (LangChain, LangGraph, CrewAI, or custom orchestration) to solve complex, multi-step healthcare problems • Develop prompt libraries, agent instructions, and reusable "skills" that improve agent accuracy, consistency, and reliability across different use cases and data domains • Build validation and confidence-scoring layers that flag low-confidence agent decisions for human review before production deployment; establish guardrails and review workflows for agent-authored code and outputs • Own end-to-end delivery of AI-automated systems — from problem scoping and requirements gathering through agent development, testing, and validated production deployment • Implement rigorous evaluation and QA frameworks for agentic systems — including golden datasets, test cases, output validation, hallucination detection, and regression testing • Establish and maintain evaluation metrics for agent performance, reliability, and clinical appropriateness; measure agent accuracy, hallucination rates, clinical validity, and real-world impact • Implement observability, evaluation, and regression testing frameworks specific to agentic systems — decision tracing, lineage logging, and performance tracking • Collaborate with data engineering and platform teams to integrate agent-built outputs (dbt models, transformation logic, recommendations) into existing data architectures and clinical workflows • Ensure all agentic systems comply with healthcare regulations (HIPAA, FDA guidance on AI/ML) and responsible AI practices — including explainability, auditability, and clinician trust • Continuously evaluate new LLM models, agent frameworks, prompt engineering techniques, and tooling; recommend adoption or migration based on healthcare-specific requirements (accuracy, cost, latency, regulatory alignment) • Partner with data engineering to establish robust data validation and input validation layers for agents — agents are only as good as the data they operate on • Lead experimentation and measurement of AI-automated systems impact on speed, quality, compliance, and cost across healthcare workflows • Document agent architectures, prompt strategies, evaluation frameworks, and best practices for both technical and non-technical stakeholders • Mentor AI Connector Engineers and other team members on agentic development patterns, LLM-powered application design, and responsible AI practices • Work on-call as needed to support production agentic systems, troubleshoot agent issues, and respond to performance degradation or hallucination detection
Empowering People and Property Management companies with future proof staffing solutions.
Role Description If you're a full-stack engineer who is already using tools like Claude Code, Codex, Cursor, or similar AI-assisted workflows to ship real product work — and you care enough to review, test, and secure every line those tools help produce — this is a chance to build meaningful software in a regulated, mission-critical industry. You'll join a PE-backed B2B SaaS company modernizing aviation compliance, credentialing, training, and access-control workflows used by airports and aviation organizations. This is a hands-on full-stack engineering role for an early-to-mid-career engineer who wants ownership, mentorship, and a clear path to grow. The company is moving legacy acquired products toward a newer unified platform while building new capabilities in areas like: - Drug program workflows - Fingerprinting - Background checks - Credentialing - Compliance operations The work is practical, high-impact, and directly tied to reducing key-person risk while accelerating a major platform transformation. You'll work closely with a hands-on Head of Engineering who wants to mentor engineers, raise the technical bar, and build a modern AI-forward engineering culture. What You'll Own - Build and ship full-stack product features - Develop new product capabilities across full-stack web applications - Work primarily in modern JavaScript/TypeScript environments, with React and Next.js strongly preferred - Help migrate important workflows from legacy systems into a newer platform architecture - Build features that support regulated aviation workflows such as compliance tracking, credentialing, background checks, fingerprinting, and related operational processes - Use AI-assisted development responsibly - Review AI-generated code for correctness, maintainability, security, edge cases, and bugs - Validate outputs through thoughtful testing, manual review, and clear technical reasoning - Contribute to team execution and reliability - Communicate progress, questions, and blockers proactively - Work with teammates to improve code quality, documentation, testing practices, and delivery flow - Help create a more energized, collaborative engineering team after a period of change What Makes You a Strong Fit - You have strong full-stack engineering fundamentals and enjoy solving product problems, not just writing code - You have experience shipping features using AI-assisted or agentic development workflows such as Claude Code, Codex, Cursor, or similar tools - You can explain how you validate AI-generated code before it reaches production - You are comfortable with JavaScript or TypeScript; TypeScript, React, and Next.js are especially relevant to the new platform work - You care about clean, maintainable code and understand the importance of testing - You are coachable, direct, and comfortable receiving feedback from senior engineering leadership - You can work with urgency while still being careful in regulated, compliance-oriented product domains - You are motivated by visible impact in a small-to-mid-sized company environment Experience Level - This role is open to a range of early-to-mid-level engineers - Roughly 3–5 years of software engineering experience is a strong fit - Candidates with 1–2 years of experience or strong recent graduate backgrounds may also be considered if they show strong technical signal, hunger, coachability, and shipped project work - Nonlinear career paths, startups, project-based work, or recent transitions are not automatic red flags, but you should be able to clearly explain what you built, why you moved, and what will make you successful here Why This Role Is Interesting - You'll work on real software for real customers in a regulated industry where accuracy and reliability matter - You'll be part of a platform modernization effort, not just incremental feature maintenance - You'll get direct access to engineering leadership and a strong mentoring environment - You'll help shape how AI-assisted engineering is used responsibly inside a product team - You'll have room to make a visible impact in a PE-backed SaaS company with meaningful growth expectations Compensation, Location, and Work Model - Base salary range: $100,000–$145,000, based on experience and level - Remote role based in the United States - Full-time position - Interview process includes video interviews A Note on the Environment This is not a purely greenfield startup role. There is legacy complexity, regulated workflow complexity, and a real need for engineers who can execute with focus. The right person will be excited by that mix: modern AI-assisted development, practical full-stack product work, and the chance to help move a business-critical platform forward. If you're hungry to build, excited about the future of software development, and ready to use AI tools with real engineering discipline, we'd like to hear from you. Apply now and get a response within 24 hours.
Build software faster. The One DevOps Platform enables your entire org to collaborate around your code. We're hiring.
• Architect GitLab's AI-native learning ecosystem, including adaptive learning paths, coaching agents, bots, intelligent recommendations, and automated content workflows. • Lead GitLab's company-wide AI fluency and enablement strategy in partnership with the Enterprise AI team, from baseline literacy through builder capability. • Embed AI fluency into onboarding, leadership development, and role-specific learning pathways. • Own the multi-year learning platform strategy and roadmap, including platform evaluations, migrations, integrations, and capability expansions. • Drive operational excellence across the Talent Management & Development team by managing the product roadmap, release schedule, intake processes, documentation, automations, and cross-functional coordination. • Partner with People Technology as the technical lead for Talent Development, translating learner and business needs into architecture briefs and co-building agents, workflows, and platform integrations. • Partner with People Analytics to define measurement infrastructure and dashboards for learning engagement, AI adoption, behavior change, capability growth, and program return on investment. • Lead global compliance training and vendor management, including audit readiness, negotiations, renewals, quarterly business reviews, budgets, adoption targets, and investment cases.
• Ship and debug code on a live, real-time voice pipeline where latency and correctness are user-facing • Design control systems around LLMs: guardrails, budgets, watchdogs, safe fallbacks • Build and operate LLM evaluation and batch-analysis pipelines • Own traditional ML workflows from data to scheduled production inference • Trace production issues from a metric anomaly to root cause, including building the evidence when the cause is a vendor
Bjak is a technology company focused on making financial services easy, fun and more rewarding for everyone
• Build customer-facing and internal product features end to end. • Develop web flows, backend APIs, admin tools, dashboards and operational systems. • Support products across insurance, payments, savings, investing, travel and financial services. • Work with product, design, mobile and operations teams to launch fast. • Integrate APIs, handle data flows and improve production reliability. • Use analytics, feedback and production issues to improve features after launch. • Help build tools that reduce manual work and improve speed across the business.
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