Staff ML Application Engineer

dragos· Data Engineering
Apply Now ↗
📍 United States

About this role

Dragos is on a relentless mission to defend industrial organizations that provide us with the necessities of modern civilization; running water, functioning electricity, and safe industrial working environments. As the market leader in ICS/OT Cybersecurity, we are dedicated to arming our customers with best-in-class technology, threat intelligence, and services to protect their systems as effectively and efficiently as possible. We’re a remote-first culture with operations in North America, Europe, the Middle East, and APAC. We’re looking for mission-oriented teammates who embody our core values of authenticity, transparency, and trust. Are you ready to make a difference? Come join a mission that can save the world! 

About the Role: 

We're looking for a Machine Learning Application Engineer to join our Engineering team. This role sits at the intersection of data engineering and applied ML. You'll be taking existing model types and putting them to work inside our product and data pipelines. You won't be training models from scratch or managing ML infrastructure, but you will be doing the thoughtful applied work of figuring out which techniques fit which problems, wiring them into our workflows, and making sure the outputs are reliable and useful.

You'll work closely with AI Engineers, Data Engineers, and product teams to bring ML-driven capabilities into the Dragos platform. Things like clustering network behaviors, classifying assets, and surfacing anomalies that matter for ICS/OT security analysts.

Responsibilities: 

  • Apply clustering, classification, anomaly detection, and other established ML techniques to cybersecurity data problems in the ICS/OT domain.
  • Integrate ML model outputs into existing data pipelines and product workflows, supporting both batch and near-real-time processing patterns.
  • Understand model behavior and translate research outputs into reliable pipeline components.
  • Work with Data Engineers to ensure ML-driven stages of the pipeline have clear data contracts, appropriate observability, and sane failure modes.
  • Evaluate open-source and third-party models for fit against specific use cases, knowing when to apply an existing tool versus when to escalate to a model-building effort.
  • Write clean, maintainable Python or Rust that other engineers can reason about, test, and extend.
  • Troubleshoot ML component behavior in production to diagnose issues with output quality, data drift, or unexpected edge cases.
  • Communicate clearly about what a model is doing, where it's uncertain, and how its outputs should (and shouldn't) be used downstream.

Qualifications: 

  • 4+ years of software engineering experience, with meaningful time spent working with ML outputs or data pipelines in a production context.
  • Strong Python skills; SQL proficiency; comfort reading and reasoning about data at scale.
  • Hands-on experience applying ML techniques including clustering (k-means, DBSCAN, hierarchical), classification, and anomaly detection.
  • Familiarity with scikit-learn and the surrounding Python ML ecosystem; you don't need to have implemented a neural net, but you should know how to use one responsibly.
  • Solid understanding of data pipeline concepts: how data flows, where it gets transformed, what can go wrong, and how to make failures visible.
  • Ability to evaluate whether a model's outputs are actually trustworthy for a given use case — not just whether accuracy metrics look good.
  • Strong written and verbal communication; comfortable explaining tradeoffs to both technical and non-technical stakeholders.
  • Cybersecurity domain knowledge — especially around threat detection, network behavior, or ICS/OT operations is a meaningful plus, but not a prerequisite.

Nice to Have:

  • Experience working with graph-based representations of network topology or asset relationships.
  • Familiarity with stream processing or event-driven architectures.
  • Exposure to containerized environments (Docker, Kubernetes) as a consumer/deployer, not necessarily an operator.

Compensation: 

  • Salary:  $225,000.00
  • Competitive Equity Package  
  • Comprehensive Benefits Plan 

 

#LI-JF1 #LI-REMOTE   

#LI-NH1 #LI-REMOTE 

 

Dragos is an Equal Opportunity Employer and considers applicants for employment without regard to race, color, religion, sex, orientation, national origin, age, disability, genetics, or any other basis forbidden under federal, state, or local laws. All new hires must pass a background check as a condition of employment.

Frequently Asked Questions

Is the salary disclosed for the Staff ML Application Engineer position at dragos?
The salary for this Staff ML Application Engineer role at dragos is not publicly listed. Click "Apply Now" to learn more about the compensation package on their official careers page.
Where is the Staff ML Application Engineer position at dragos located?
This Staff ML Application Engineer role at dragos is based in United States. The position is listed as on-site or hybrid. Check the full job description or apply directly to confirm the work arrangement.
Which team or department does the Staff ML Application Engineer at dragos belong to?
This Staff ML Application Engineer position is part of the Data Engineering department at dragos. See the full job description for more information about the team structure and responsibilities.
How do I apply for the Staff ML Application Engineer position at dragos?
Click the "Apply Now" button on this page. You will be redirected to dragos's official application portal hosted on greenhouse where you can submit your application directly.
When was the Staff ML Application Engineer job at dragos posted?
This Staff ML Application Engineer position at dragos was posted on May 27, 2026. Apply as soon as possible — early applications are often reviewed first.
Staff ML Application Engineer
dragos
Apply for this role ↗

You'll be redirected to dragos's official application page on Greenhouse.