Posted on: 11/11/2025
Responsibilities :
- Design, develop, and implement robust data pipelines for collecting, cleaning, and preparing data for model training and evaluation, specifically from web and API traffic, and security event logs.
- Select appropriate machine learning models, with a particular emphasis on smaller, efficient models suitable for security applications (e., WAF, bot detection, anomaly detection, API threat prevention) and other performance-critical use cases.
- Train, fine-tune, and evaluate machine learning models, employing techniques to optimize for performance, cost, and accuracy in identifying and mitigating security threats.
- Deploy models into production environments, establishing and managing MLOps processes for continuous integration, delivery, and training (CI/CD/CT) within our cloud security infrastructure.
- Monitor model performance in production, implementing strategies for regular re-tuning and updates to ensure continued accuracy and relevance against evolving threat landscapes.
- Collaborate with product management and engineering teams to understand requirements, define AI solutions, and integrate them into existing products and new features for web and API security.
- Drive the evolution of our MLOps practices to enhance the speed, reliability, and scalability of our AI deployments, fostering a culture of continuous improvement and innovation in AI operations.
- Stay up-to-date with the latest advancements in applied AI, MLOps, and relevant technologies, particularly in cybersecurity AI, threat intelligence, and Generative AI for security.
- Document AI solutions, processes, and model performance for internal stakeholders.
Candidate Profile :
- 4+ years of hands-on experience in applied AI or machine learning engineering, preferably in a cybersecurity context.
- Proven experience in developing, deploying, and maintaining machine learning models in production environments for security use cases.
- Strong proficiency in Python and relevant AI/ML libraries/frameworks (e., Scikit-learn, TensorFlow Lite, PyTorch, ONNX, Hugging Face Transformers, MLflow, Kubeflow).
- Hands-on experience with data cleaning, feature engineering, model selection, and hyperparameter tuning, particularly for smaller, efficient models tailored to security data.
- Demonstrable experience in building and maintaining robust data pipelines and CI/CD/CT for ML systems.
- Software development experience in building high-performant, secure, and scalable web applications or security services.
- Fair understanding of dynamically scalable cloud architectures, ideally AWS.
- Excellent problem-solving and analytical skills.
- Strong verbal and written communication skills.
- Collaborative, quality-conscious, and self-motivated with a proactive approach.
- A passion for building, deploying, and meticulously managing the full lifecycle of impactful AI systems.
- Experience with security AI use cases like anomaly detection, threat intelligence, or user behaviour analytics.
- Experience with Layer 7 security concepts, web application firewalls (WAF), API security, and bot mitigation techniques.
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