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Sundayy

Data Scientist

Full Time · In Office · USA

Posted Jun 20, 2026

About The Company

AgileEngine is an Inc. 5000 company renowned for creating award-winning software solutions tailored for Fortune 500 brands and innovative startups across more than 17 industries. The company has established itself as a leader in application development and artificial intelligence/machine learning (AI/ML), consistently delivering cutting-edge technology to its clients. AgileEngine prides itself on fostering a people-first culture that emphasizes growth, collaboration, and innovation. Recognized with multiple Best Place to Work awards, the organization is committed to providing an environment where talented professionals can thrive, make impactful contributions, and advance their careers.

About The Role

We are seeking a highly skilled Senior/Lead Data Scientist to join our dynamic team. In this role, you will be instrumental in developing predictive models and quantitative analytics that enhance risk-based vulnerability prioritization within a large-scale enterprise security framework. Your expertise will be crucial in structuring and analyzing extensive security telemetry datasets, designing machine learning algorithms to reduce scanning noise and false positives, and creating unified data dashboards that promote data-driven security governance. The ideal candidate will have over six years of specialized experience applying data science techniques to cybersecurity, vulnerability management, or financial risk modeling, demonstrating autonomy and a deep understanding of the domain.

Qualifications

  • Minimum of 6+ years of professional experience in data science, specifically within cybersecurity, vulnerability management, or financial risk models
  • Authorization to work for any employer in the United States (e.g., Green Card, TN visa, GC EAD, H4 EAD, U4U with EAD); sponsorship not available
  • Proficiency in Python, R, and SQL
  • Experience with machine learning frameworks such as TensorFlow and PyTorch
  • Strong skills in data visualization tools and techniques
  • Demonstrated ability to operate independently without supervision
  • Upper-intermediate proficiency in English

Responsibilities

  • Develop and implement predictive models and analytics to prioritize vulnerabilities based on contextual risk and business impact
  • Structure and analyze large-scale security telemetry data from across enterprise ecosystems to support the Asset and Security Portfolio Management (ASPM) framework
  • Create machine learning algorithms and statistical models to automatically identify and filter out scanning noise and false positives
  • Design and establish a unified data delivery architecture and dashboards to foster the adoption of data-driven security governance
  • Collaborate with cross-functional teams to translate security data into actionable insights
  • Continuously improve models and analytics based on feedback and evolving security landscapes
  • Document methodologies and ensure the reproducibility of data science processes

Benefits

  • Opportunities for professional growth through mentorship, TechTalks, and personalized development plans
  • Competitive USD-based compensation package
  • Budget allocations for education, fitness, and team-building activities
  • Engagement in innovative projects with Fortune 500 clients and leading product companies
  • Flexible work arrangements including remote work and office-based options

Equal Opportunity

AgileEngine is an equal opportunity employer committed to fostering a diverse and inclusive workplace. We do not discriminate based on race, ethnicity, gender, sexual orientation, age, disability, or any other protected status. All qualified applicants will receive consideration for employment without regard to these factors.

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Data Scientist

Sundayy

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