Sr. AI Engineer-promo Optimisation

Target Target · Retail · Bangalore, India

Senior AI Engineer focused on building and scaling production-grade AI/ML applications for promo optimization and personalized marketing. The role involves designing and developing data and ML pipelines, implementing end-to-end model workflows, building APIs and inference systems, and supporting MLOps and observability. It emphasizes software engineering fundamentals, AI/ML deployment experience, and the application of emerging AI technologies like Generative AI and RAG to retail problems.

What you'd actually do

  1. Build production-grade AI/ML applications, services, and platforms using Python and modern engineering practices, with a focus on clean code, testing, documentation, reliability, scalability, and maintainability.
  2. Design and develop scalable data and ML pipelines for batch, streaming, and near-real-time processing using distributed data frameworks, Kafka or event-driven architecture, workflow orchestration tools, and enterprise data platforms.
  3. Implement end-to-end model training, evaluation, deployment, inference, monitoring, and lifecycle management workflows that can scale across large datasets and high-impact enterprise use cases.
  4. Partner with Data Scientists to convert prototypes, notebooks, statistical models, ML models, GenAI workflows, and optimization algorithms into reliable, reusable, and production-ready systems.
  5. Build and deploy REST APIs, microservices, model-serving endpoints, batch scoring jobs, and event-driven integrations that expose AI/ML capabilities to downstream applications and business workflows.

Skills

Required

  • Python
  • software engineering fundamentals
  • AI/ML deployment
  • distributed data pipelines
  • Kafka or event-driven architecture
  • APIs
  • databases
  • model deployment
  • ML workflow orchestration
  • observability
  • production support
  • Generative AI
  • LLMs
  • RAG
  • AI agents
  • model evaluation frameworks
  • intelligent workflow automation
  • SQL
  • NoSQL
  • object stores
  • feature stores
  • distributed data systems
  • CI/CD
  • containerization
  • automated testing
  • model versioning
  • automated validation
  • release controls
  • rollback strategies
  • environment management
  • experiment tracking
  • automated retraining
  • performance monitoring
  • data drift detection
  • model drift detection
  • lineage
  • governance
  • reproducibility

Nice to have

  • optimization algorithms
  • operations research
  • experimentation
  • marketing science

What the JD emphasized

  • production-grade AI/ML
  • reliable, scalable, secure, and high-performing production systems
  • AI/ML deployment experience
  • enterprise-grade AI platforms

Other signals

  • AI/ML systems
  • production-grade AI/ML capabilities
  • model deployment
  • inference systems
  • Generative AI, LLMs, RAG, AI agents