Founding Machine Learning Engineer

PragmatikeWashington, DC
2dRemote

About The Position

Pragmatike is hiring on behalf of a high-growth AI cybersecurity company backed by top-tier investors and strategic AI leaders. The company is building the security layer for the AI era, protecting enterprises against AI-powered threats such as deepfakes, smishing, and synthetic voice attacks. Following a major Series B funding round led by industry-leading AI and venture partners, the company is entering a critical growth phase. Trusted by major banks, technology companies, and healthcare organizations, they are scaling rapidly to meet enterprise demand in a $200B+ market opportunity. We are looking for a Staff Machine Learning Engineer to define and build the companys ML capabilities from the ground up. ML is central to the product vision. This role is not about incremental optimization — it is about owning the strategy, infrastructure, and execution of machine learning across the organization. There is currently no dedicated ML infrastructure or ML team. You will establish the foundations: define where ML drives product value, design production systems end-to-end, and set the technical direction for how ML evolves across the company. This is a high-impact, highly autonomous role suited for someone who has built ML systems in production and is ready to architect an ML function from zero to scale.

Requirements

  • 8+ years of experience building ML systems in production environments.
  • Experience standing up ML infrastructure at an early-stage startup or serving as the senior/lead ML engineer at a company.
  • Strong software engineering fundamentals with production experience in languages such as Python, Java, or TypeScript.
  • Experience with cloud-based ML infrastructure (e.g., SageMaker, Bedrock, Modal, Baseten, or similar platforms).
  • Hands-on experience with ML and data frameworks such as PyTorch, TensorFlow, Spark, or equivalent tools.
  • Comfortable working across the stack — infrastructure, backend systems, and data platforms.
  • Demonstrated ability to mentor engineers and elevate technical standards within a team.
  • High autonomy and ownership mindset, with the ability to define direction and execute without predefined playbooks.

Nice To Haves

  • Experience building ML systems for security, fraud detection, or adversarial environments.
  • Experience working with LLMs in production (evaluation, fine-tuning, retrieval systems, guardrails).
  • Background in real-time inference systems or high-throughput distributed systems.
  • Experience making strategic build vs. buy infrastructure decisions.
  • Previous startup experience in high-growth environments.

Responsibilities

  • Define the companys ML strategy: where ML should be applied across products, what infrastructure is required, and how to approach build vs. buy decisions.
  • Design and build production ML systems end-to-end — including data pipelines, model training workflows, evaluation frameworks, and inference serving.
  • Establish rigorous evaluation methodology to measure model quality, detect regressions, and support data-driven iteration.
  • Own the data strategy: determine what data is needed, how it should be labeled, how feedback loops are structured, and how models continuously improve.
  • Partner closely with product and backend engineers to integrate ML into customer-facing systems.
  • Write production-quality code within the existing codebase and contribute to architectural decisions.
  • Over time, help recruit, mentor, and lead the ML team as the function expands.

Benefits

  • Competitive salary & equity options
  • Health, Dental, and Vision
  • 401k
  • Hybrid flexibility
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