Job Summary
- 10+ years of enterprise software engineering experience with bachelor’s or master’s degree in computer science, Software Engineering, or a related technical discipline
- Experience in solution architecture and SDLC transformation initiatives
Key Responsibilities
Generative AI & Agent Technologies (2+ Years)
- Hands-on experience building GenAI Agent systems using LangChain, LangGraph, CrewAI, AutoGen, MCP Protocol.
- Strong knowledge of LLM APIs: Anthropic Claude, OpenAI GPT-4o
- Experience implementing Retrieval-Augmented Generation (RAG) pipelines and vector stores (Pinecone, Weaviate, pgvector, Chroma)
- Proficiency in prompt engineering techniques: Chain-of-Thought, ReAct, few-shot/zero-shot strategies
- Exposure to cloud AI platforms: AWS Bedrock, Azure OpenAI Service, or Google Vertex AI
CI/CD & DevOps Tooling
- Extensive hands-on experience with Jenkins — pipeline-as-code (Jenkinsfile), multi-branch pipelines, shared libraries, and plugin management
- Additional CI/CD experience with GitHub Actions, GitLab CI, or AWS CodePipeline / CodeBuild for end-to-end delivery automation
- Containerisation and orchestration: Docker, Kubernetes (EKS / self-managed), Helm charts, and service mesh (Istio or AWS App Mesh)
- Infrastructure-as-Code: Terraform, AWS CloudFormation, or AWS CDK for provisioning and managing cloud resources
- Configuration management and automation: Ansible, Chef, or AWS Systems Manager (SSM) for environment consistency
- Observability and monitoring: AWS CloudWatch, Prometheus, Grafana, ELK Stack (Elasticsearch, Logstash, Kibana), and distributed tracing with AWS X-Ray or Jaeger
AWS Cloud Platform
- Core AWS services: EC2, ECS/EKS, Lambda, S3, RDS, DynamoDB, VPC, IAM, and CloudFront
- AI/ML services: AWS Bedrock (foundation model hosting & RAG), SageMaker (model training, endpoints, pipelines), and Bedrock Agents for agentic workflows
- Secrets and security: AWS Secrets Manager, KMS, IAM roles/policies, SCPs, and security best practices for LLM workloads
- Cost optimisation: AWS Cost Explorer, tagging strategies, reserved/spot instances, and FinOps practices for AI workloads
Solution Architecture & SDLC Transformation
- Demonstrated experience leading architecture reviews, technical road-mapping, and design-pattern governance
- Ability to transform traditional SDLC processes with AI-assisted development, automated testing, and DevSecOps practices
Domain Experience
- Experience in the life insurance domain: underwriting, claims processing, policy administration, or actuarial tooling
- Knowledge of insurance regulatory and data-governance standards (SOX, GDPR equivalents)
Skill Requirements
Soft Skills & Professional Competencies
- Excellent written communication skills — ability to produce clear technical documents, architecture proposals, and executive summaries tailored to both technical and non-technical audiences
- Strong verbal communication — able to articulate complex AI/engineering concepts confidently in meetings, workshops, and presentations
- Stakeholder engagement — proven ability to work closely with business leaders, product owners, and cross-functional teams to align technical solutions with business goals
- Collaborative team player — comfortable working in distributed, agile teams while also being self-driven as an individual contributor
- Mentoring & knowledge sharing — willingness to coach junior engineers and contribute to a culture of continuous learning
- Analytical thinking — structured problem-solver who can break down ambiguous challenges and propose pragmatic, scalable solutions
- Adaptability — thrives in fast-moving environments where AI technologies and business priorities evolve rapidly
Other Requirements
1.DevOps Engineer Expert certification is preferred.