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Data Scientist

Randstad Enterpriseabout 19 hours ago
Hybrid
Canada
Senior Level
Full-Time

About the role

We are seeking a Data Scientist to design and implement advanced analytics methodologies that enable measurement, trending, and insight generation across the firm’s vulnerability landscape. This role will sit at the intersection of cybersecurity, data science, and risk management, developing scalable data models and analytics capabilities to transform large, complex vulnerability datasets into actionable intelligence and executive-ready reporting.

Location: Montreal (Day 1 onboarding onsite / in office presence 3x week

Key Responsibilities:

  1. Data Modeling & Architecture Design and implement scalable data models that integrate vulnerability data across multiple systems (e.g., cloud, infrastructure, application, endpoint). Standardize and normalize disparate vulnerability data sources into a consistent, queryable structure, supporting aggregation and cross-domain analysis. Partner with data engineering teams to ensure efficient ingestion, transformation, and storage pipelines.

  2. Analytical Methodology Development Develop quantitative methods to: Measure vulnerability exposure and risk posture Track remediation effectiveness over time Identify drivers of exposure (e.g., asset type, product, CVE clustering, ownership) Determine how to measure Mean Time to Patch Build frameworks to distinguish: One-time remediation issues vs. recurring systemic vulnerabilities Stable vs. volatile vulnerability populations

  3. Reporting & KPI Framework Development Trendlines (week-over-week, SLA adherence, backlog movement) Exposure metrics (e.g., open vulnerabilities, aged findings, critical assets) Ownership views (by division, product, or application) Develop monthly analytical snapshots to: Assess current-state risk posture Identify structural improvements or regressions Support governance and regulatory reporting Build automated dashboards and reporting solutions in tools such as Power BI or Tableau.

  4. Trend Analysis & Insight Generation Perform deep-dive analyses to identify: Root causes of vulnerability accumulation Systemic control gaps or weak points Trends across CVEs, products, and technology stacks Develop models to support forecasting and predictive risk insights where feasible. Translate analytical findings into clear narratives for senior stakeholders.

  5. Stakeholder Engagement & Executive Communication Partner with vulnerability management, risk, and engineering teams to: Define reporting requirements and KPIs Align on data definitions and governance standards

Required Qualifications: 7+ years of experience in data science, analytics, or quantitative modeling, with a strong focus on security, risk, or vulnerability management domains Strong proficiency in: SQL and relational data modeling, including designing and optimizing queries against large-scale security and operational datasets Python (or similar) for data analytics, transformation, and automation of data pipelines used in vulnerability and risk analysis Experience working with large-scale, complex datasets, particularly in environments with high-volume vulnerability telemetry, asset inventories, and security findings

Strong understanding of: Data modeling concepts (dimensional modeling, aggregation strategies) applied to security data (e.g., vulnerabilities, assets, controls, scan results) KPI development and performance measurement frameworks, including defining metrics such as vulnerability aging, remediation SLAs, risk scoring, and coverage Proven ability to translate complex data into clear, actionable insights, enabling prioritization of vulnerability remediation, risk reduction strategies, and measurable improvements in security posture

Preferred Qualifications: Experience in Cybersecurity or vulnerability management domains and Risk analytics or regulatory reporting environments Familiarity with vulnerability constructs:CVEs, severity/priority frameworks (e.g., P1–P4, exploitability tiers).SLA-based remediation tracking Exposure to data governance and data quality controls, including definitions and lineage management (Aligned with expectations for data governance and quality controls in similar roles ) Hands-on experience building dashboards and visualization solutions (e.g., Power BI, Tableau) to communicate vulnerability posture, risk exposure, and remediation progress to both technical and executive stakeholders

About Randstad Enterprise

Human Resources Services
1001-5000

Randstad Enterprise is the leading global talent solutions provider, enabling companies to create sustainable business value and agility by keeping people at the heart of their organizations. As part of Randstad N.V. — a global talent leader with revenue of € 25.4 billion — we combine unmatched talent data and market insights with smart technologies and deep people expertise. Our integrated talent solutions – talent acquisition (RPO, MSP, services procurement/SOW and talent BPO) delivered through Randstad Sourceright, and talent development and transition (talent mobility, career coaching and outplacement) delivered through Randstad RiseSmart – help companies build a skilled and agile workforce that moves their business forward.

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