Come work at a place where innovation and teamwork come together to support the most exciting missions in the world!
Qualys is building the future of cyber risk management with
Enterprise
TruRisk
Management (ETM)
-
A
platform that enables organizations to
measure, communicate, and
eliminate
cyber risk
across the enterprise.
About the Role
We are seeking a
Lead Forward Deployed Engineer
to
operate
at the intersection of engineering, data, and customer deployment. In this role, you will work directly with enterprise customers to onboard, integrate, and operationalize complex cybersecurity data into the Enterprise
TruRisk
Management (ETM) platform. You will play a critical role in translating fragmented security environments into a unified, actionable risk model while providing real‑world feedback to product and engineering teams.
This is a hands‑on, customer‑facing role suited for engineers who thrive in ambiguous environments and enjoy solving complex, high‑impact problems at scale.
Key Responsibilities
Customer Onboarding & Data Integration
Lead complex enterprise customer onboarding engagements, defining onboarding strategy and execution from planning through production rollout.
Integrate multiple cybersecurity and business data sources into a unified asset and risk model, including vulnerability management, EDR/XDR, identity systems, cloud and hybrid infrastructure, penetration testing tools, CMDBs, and GRC platforms.
Design and implement integrations for custom or new data sources using REST APIs, webhooks, and scalable ingestion pipelines (e.g., S3-based ingestion).
Define and configure asset grouping, tagging, and asset criticality scoring aligned with customer business context.
Customize asset
s
and
findings
data models, including transformation and mapping logic, based on source-specific characteristics and customer use cases.
Establish
optimal
onboarding sequencing to ensure a clean and reliable baseline for assets and findings.
Implement robust asset and
findings
identification, correlation, and de‑duplication logic to prevent invalid merges across heterogeneous data sources.
Ensure reliable,
continuous,
full
and incremental data ingestion with
appropriate scheduling
,
monitoring
and error handling.
Enable customers to use ETM as a single, authoritative system of record for assets, findings, and business context.
Data Quality & Validation
Validate data accuracy and integrity in
collaboration
with customers, partners, and internal teams to support trusted risk-based analytics.
Design and
maintain
scalable frameworks for rapid data validation and quality assessment.
Resolve data quality issues through controlled reprocessing and configuration improvements without disrupting existing integrations or metrics.
Maintain
high standards
for data quality at both asset and findings levels to enable confident risk decision-making.
Dashboards, Analytics & Risk Modeling
Design and deliver advanced, customer-specific dashboards that surface meaningful trends and risk indicators.
Enable complex composite risk scenarios, including toxic risk combinations, with
accurate
and actionable outcomes.
Customize risk scoring, analytics, and visualizations to align with customer business and operational requirements.
Response, Remediation & Reporting
Configure scheduled alerts and automated responses using supported notification and response mechanisms.
Integrate ETM with remediation and workflow platforms such as ServiceNow, Jira, and similar systems, ensuring data consistency and reliability.
Implement ownership, assignment, and
escalation of
workflows aligned with customer governance models.
Build and deliver custom reports and metrics for executive, board-level, operational, and regulatory audiences.
Develop reusable utilities
leveraging
public APIs to support advanced reporting and analytics use cases.
Product Feedback & Platform Evolution
Act as a primary feedback loop between customers and ETM
product
and engineering teams.
Identify
recurring gaps in data models, workflows, and integrations based on real-world deployments.
Influence platform roadmap priorities by translating customer needs into actionable product requirements.
Collaborate cross‑functionally with product, engineering, and customer success teams.
Support customers as they mature from visibility to prioritization, decision-making, and remediation-driven action.
Qualifications
Required
Bachelor's or master's degree in computer science
, Engineering, or equivalent practical experience.
8–10 years of hands-on experience in data engineering, platform engineering, or customer-facing technical roles.
Strong programming experience in
Python,
Go
, or similar languages.
Experience with REST APIs, webhooks, asynchronous systems, and scalable data ingestion pipelines (ETL/ELT).
Strong understanding of data modeling, normalization, and transformation.
Hands-on experience applying AI or automation to improve onboarding, data processing, or operational workflows.
Solid understanding of cybersecurity domains, including vulnerability management, cloud security, identity and access management, and risk frameworks.
Experience working with relational, NoSQL, search, or graph-based data platforms.
Excellent communication skills and the ability to work directly with enterprise customers.
Preferred
Experience in forward-deployed engineering, solutions engineering, or professional services roles.
Familiarity with large-scale, distributed systems and microservices-based architectures.
Comfort working in fast-paced, production environments with high customer impact.