Posted on: 03/12/2025
Responsibilities :
- Lead a team of engineers to build and deploy AI-driven proactive defence systems focused on fraud, risk, and anomaly detection.
- Design and implement agentic frameworks leveraging LangChain, LangGraph, or similar architectures for reasoning, orchestration, and decision automation.
- Develop and maintain MLOps pipelines for scalable model training, versioning, and deployment across distributed systems.
- Architect automated workflows that integrate data ingestion, feature generation, and AI-driven response mechanisms.
- Partner with data science, threat intelligence, and platform engineering teams to translate detection logic into production-grade, low-latency systems.
- Apply LLMs and autonomous AI agents for dynamic pattern recognition, entity linking, and context-aware decisioning.
- Drive roadmap execution, mentor engineers, and uphold engineering best practices in automation, observability, and continuous improvement.
Requirements :
- 10+ years of experience in software engineering, machine learning, or data-intensive systems, with 2+ years in a leadership or technical management capacity.
- Strong background in fraud/risk analytics, behavioural modelling, or anomaly detection, preferably in fintech, ad tech, or cybersecurity.
- Experience developing or integrating agentic AI frameworks using LangChain, LangGraph, Semantic Kernel, or similar technologies.
- Expertise in Python or Go, with familiarity in PyTorch, TensorFlow, or Scikit-learn.
- Proficient in MLOps, data pipeline architecture, feature engineering, and real-time model inference.
- Strong understanding of AI automation, prompt orchestration, and evaluation metrics for LLM-based systems.
- Proven ability to mentor teams, define engineering standards, and lead complex cross-functional initiatives.
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