$200,000 – $218,000/yr

Senior Engineering Manager, Applied Machine Learning

RemoteRemotesenior
EngineeringData ScienceOtherManagementEngineering ManagerMachine LearningData & AI
0 views0 saves0 applied

Quick Summary

Overview

At ExtraHop, we’re on a mission to protect and empower the connected enterprise. We reveal what is happening in the very infrastructure that sustains businesses, lives, and communities,

Technical Tools
EngineeringData ScienceOtherManagementEngineering ManagerMachine LearningData & AI

At ExtraHop, we’re on a mission to protect and empower the connected enterprise. We reveal what is happening in the very infrastructure that sustains businesses, lives, and communities, and ensure the integrity of networks, data, systems, and processes. Organizations rely on ExtraHop to provide visibility into the cyber threats, vulnerabilities, and network performance issues that evade their existing security and IT tools. With this insight, organizations can investigate smarter, stop threats faster, and keep operations running.

Our mission is fueled by a profound social and moral responsibility to be the best at what we do, ensuring a secure world where everyone can thrive. If this sounds like a place you’d like to spend the next chapter of your career, we’d love to hear from you. 

ExtraHop is seeking a Senior Engineering Manager to lead the Applied Machine Learning team responsible for behavioral detections within the ExtraHop Network Detection and Response (NDR) platform.

This team develops machine learning systems that analyze large-scale network telemetry and surface meaningful behavioral signals for Security Operations Center (SOC) analysts. The work sits at the intersection of applied machine learning, cybersecurity, and high-volume time-series data.

This role owns the applied machine learning strategy for behavioral detection within the product. You will lead a team responsible for designing, evaluating, and operationalizing models that identify anomalous or suspicious patterns in complex network activity. The position combines technical leadership, scientific rigor, and product influence to ensure machine learning capabilities translate directly into actionable security insights.

Responsibilities

~1 min read
  • Lead and grow a multidisciplinary team of data scientists and software engineers building production machine learning models and supporting systems for behavioral detection.
  • Drive the research, development, evaluation, and operational monitoring of models that analyze large-scale network telemetry, including time-series and behavioral anomaly detection.
  • Establish high standards for experimental rigor across the team, including statistically sound experimentation, clear evaluation methodologies, and disciplined model validation.
  • Own the technical direction for production ML systems supporting behavioral detections, including experimentation frameworks, model lifecycle management, data pipelines, and monitoring.
  • Collaborate closely with Product Management and Security Research to translate machine learning capabilities into practical detection signals that improve SOC analyst workflows.
  • Influence the product roadmap by identifying opportunities where applied machine learning can materially improve detection quality and analyst productivity.
  • Mentor senior data scientists and engineers while fostering a culture of scientific rigor, intellectual curiosity, and technical ownership.
  • Represent the machine learning function in cross-organizational discussions and communicate technical strategy and outcomes to senior leadership.
  • Stay current with advances in machine learning research and engineering practices and guide the team in adopting techniques that meaningfully improve detection performance.

Requirements

~1 min read
  • Bachelor’s degree or equivalent experience in Computer Science, Statistics, Machine Learning, or a related quantitative field; advanced degree preferred.
  • 5+ years experience leading applied machine learning or machine learning engineering teams delivering production systems.
  • Strong background in machine learning, statistics, or a related quantitative discipline.
  • Experience guiding experimental design, model evaluation strategies, and statistically rigorous decision making.
  • Experience building or operating production ML systems, including model lifecycle management, data pipelines, and monitoring.
  • Experience working with large-scale telemetry, time-series data, or behavioral modeling problems.
  • Demonstrated ability to partner with product and domain experts to translate machine learning capabilities into user-facing value.
  • Strong technical judgment and the ability to guide architecture and modeling decisions.
  • Experience mentoring senior individual contributors and building high-performing ML teams.
  • Exceptional communication skills; able to translate model performance, technical tradeoffs, and data science concepts for product, executive, and cross-functional audiences.
  • Consistent, reliable, and accountable in attendance and execution.

Requirements

~1 min read
  • Experience with network security, NDR, or related security domains; familiarity with tools and frameworks commonly used in threat detection.
  • Experience building ML systems on AWS cloud infrastructure, including data pipelines and model deployment at scale.
  • Familiarity with compliance requirements such as FedRAMP or NIST SP 800-53 and their implications for data science workloads.
  • Experience with containerization technologies (Docker, Kubernetes) for ML workload deployment.
  • AWS certification such as AWS Certified Solutions Architect or Machine Learning Specialty.
  • Understanding of threat detection, intrusion prevention, and incident response strategies.

 

The salary range for this role is $200,000 - $218,000 + bonus + benefits 

ExtraHop is reinventing Network Detection and Response (NDR) to offer enterprises unparalleled visibility, context, and control against emerging threats. The platform integrates NDR with Network Performance Management (NPM), Intrusion Detection Systems (IDS), and forensics, providing a single, comprehensive solution. By decrypting and analyzing complete packet-level data at wire speed and leveraging cloud-scale machine learning, ExtraHop empowers Security Operations Centers (SOCs) to detect, investigate, and remediate modern cyber risks in real time across their entire hybrid infrastructure, including data center, cloud, and SASE environments.

This comprehensive approach and market innovation have earned ExtraHop unique recognition as the only NDR vendor acknowledged as a leader by all major analyst firms, including the 2025 Gartner® Magic Quadrant for Network Detection and Response™, the 2025 Forrester® Wave for Network Analysis and Visibility, the 2024 IDC® Marketscape for NDR, and the 2025 Gigamon® Radar Report for Network Detection and Response. Since 2007, ExtraHop has consistently helped organizations worldwide extract in-depth network telemetry and contextual insights, affirming its commitment to protecting and empowering the connected enterprise.

Our culture is rooted in our five Values. These set the expectations for how we work individually and collectively as a team. 

What We Offer

~1 min read

What We Offer

~1 min read

Interested in building your career at ExtraHop? Get future opportunities sent straight to your email.

Location & Eligibility

Where is the job
Worldwide
Fully remote, anywhere in the world
Who can apply
Open to applicants worldwide
Listed under
Worldwide

Listing Details

Posted
April 3, 2026
First seen
April 4, 2026
Last seen
April 27, 2026

Posting Health

Days active
23
Repost count
0
Trust Level
43%
Scored at
April 27, 2026

Signal breakdown

freshnesssource trustcontent trustemployer trust
Newsletter

Stay ahead of the market

Get the latest job openings, salary trends, and hiring insights delivered to your inbox every week.

A
B
C
D
Join 12,000+ marketers

No spam. Unsubscribe at any time.

E
Senior Engineering Manager, Applied Machine Learning$200k–$218k