Design, develop, and implement advanced threat detection systems leveraging ML/AI techniques to identify malicious activity, anomalies, and emerging risks.
Build and optimize machine learning models for real-time detection, including supervised, unsupervised, and reinforcement learning approaches.
Data engineering and pre-processing for cybersecurity applications.
Analyze large-scale datasets to extract meaningful insights, detect patterns, and enhance the accuracy of detection systems.
Develop and refine detection algorithms for intrusion detection, anomaly detection, endpoint security, behavioral analysis, and other cybersecurity applications.
Automate detection workflows and processes to improve efficiency and scalability of security monitoring systems.
Work closely with threat intelligence, red team, security operations, and data scientists, to integrate detection models into security platforms and tools.
Test, validate, and monitor the performance of detection models, ensuring reliability and minimizing false positives/negatives.
Stay up to date with emerging threats, ML/AI technologies, and advancements in cybersecurity to continuously improve detection systems.
Maintain clear documentation of models, processes, and methodologies for knowledge sharing across teams.
Requirements
Bachelor’s or master’s degree in computer science, cybersecurity, data science, or related engineering field.
Certifications such as CISSP, CISM, CEH or OSCP preferred.
Proven experience (8+ years) in cybersecurity, with a focus on threat detection and response.
Deep understanding of cybersecurity frameworks and concepts, including attack vectors, threat landscapes, and defense mechanisms.
Familiarity with SIEM/SOAR/ and EDR/XDR platforms.
Strong expertise in Machine Learning (ML) and Artificial Intelligence (AI), including model design, training, and deployment.
Knowledge of adversarial machine learning and techniques for defending against model exploitation.
Experience with anomaly detection, behavioral Modeling, and predictive analytics in cybersecurity contexts.
Experience with deep learning architectures or natural language processing (NLP) applied to cybersecurity.
Experience integrating machine learning models into security operations workflows in enterprise environments.
Proficiency in languages such as Python, Go, SPL, YaraL, R , Java, SQL and frameworks like TensorFlow, PyTorch, or Scikit-learn.
Hands-on experience with big data technologies and cloud environments (AWS, Azure, GCP).
Benefits
Health & Wellbeing
Personal & Professional Development
Unconditional Inclusion
Applicant Tracking System Keywords
Tip: use these terms in your resume and cover letter to boost ATS matches.
Hard skills
machine learningartificial intelligenceanomaly detectionbehavioral modelingpredictive analyticsdeep learningnatural language processingdata engineeringmodel designmodel training