Lead AI Engineer
Location: Hyderabad, TG, IN
Lead AI Developer
About the Role
As a Lead AI Developer, you will play a key role in shaping and delivering AI-enabled solutions that transform how engineering teams, business users, and cross-functional stakeholders work across Property & Casualty Reinsurance.
You will be responsible for designing, building, and scaling AI-powered applications, agentic workflows, intelligent automation capabilities, and enterprise-ready GenAI solutions. The role requires a strong hands-on engineering mindset, deep technical understanding of modern AI platforms, and the ability to convert business and engineering challenges into practical, secure, scalable, and reusable AI solutions.
This is not only a development role. You will act as a technical lead and AI engineering SME, helping teams adopt AI responsibly across the software delivery lifecycle, business processes, knowledge discovery, decision support, and productivity improvement use cases. You will work closely with product owners, architects, engineering teams, data specialists, business stakeholders, and platform teams to identify high-value opportunities and deliver solutions that are reliable, measurable, and aligned with Swiss Re’s engineering and governance standards.
You will also help establish patterns, standards, guardrails, reusable components, and best practices that enable AI adoption across multiple P&C Re teams and domains.
Key Responsibilities
Lead the design and development of scalable AI-powered applications, GenAI solutions, intelligent assistants, and agentic workflows for P&C Re.
Build enterprise-grade AI capabilities using modern technologies such as Python, Java, TypeScript, Azure AI Foundry, Azure OpenAI, GitHub Copilot, LangChain, Palantir, Semantic Kernel, or similar frameworks.
Design and implement AI solutions that support practical business and engineering use cases such as knowledge discovery, document intelligence, process automation, engineering productivity, code assistance, testing support, operational insights, and decision support.
Architect and implement robust Retrieval-Augmented Generation solutions, including data ingestion, chunking strategies, embeddings, vector search, prompt orchestration, grounding, source attribution, and response quality controls.
Develop and integrate AI agents and LLM-based workflows with enterprise systems such as Azure DevOps, Jira, Confluence, SharePoint, Palantir Foundry, Databricks, internal APIs, and business applications where applicable.
Collaborate with product owners, business SMEs, architects, data engineers, platform teams, and engineering squads to understand business needs and translate them into secure, scalable, and maintainable AI solutions.
Establish strong engineering practices for AI development, including prompt design, evaluation frameworks, automated testing, observability, monitoring, versioning, CI/CD, and production support.
Implement responsible AI practices, including human-in-the-loop controls, access management, data protection, explainability, validation checks, auditability, and alignment with Swiss Re governance standards.
Lead technical troubleshooting for complex AI solution issues, including model behavior, hallucination risk, grounding gaps, latency, integration failures, data quality issues, and production reliability concerns.
Evaluate and recommend new AI technologies, frameworks, engineering tools, and platform capabilities that can improve productivity, quality, scalability, and business value.
Mentor developers and engineers on AI development patterns, prompt engineering, agentic development, secure integration, testing approaches, and responsible AI practices.
Create and maintain technical specifications, architecture documents, reusable patterns, implementation guides, runbooks, and engineering best practices for AI solution delivery.
Act as an AI Engineering SME across multiple P&C Re teams, supporting adoption, enabling teams, reviewing solution designs, and helping establish common engineering standards.
Contribute to the broader AI adoption journey in P&C Re by identifying high-impact use cases, supporting pilots, sharing learnings, and helping scale successful solutions across teams.
About the Team
We are a team that believes in engineering excellence, practical innovation, and responsible use of technology. Our leaders are expected to stay close to engineering and lead by example through strong technical judgement, hands-on contribution, and high-quality delivery.
In P&C Re, AI is becoming an important part of how we improve engineering productivity, business processes, decision support, and user experience. We are focused on applying AI where it creates real value, with clear guardrails, strong ownership, and close collaboration between business and technology teams.
Quality, stability, security, and responsible delivery are first-class expectations in everything we do. We work closely with product owners, business stakeholders, architects, engineers, data specialists, and platform teams to build solutions that are thoughtfully designed, well-engineered, and sustainable over time.
About You
You are an experienced AI-focused engineer who enjoys solving complex problems and turning emerging technologies into practical, enterprise-ready solutions. You are hands-on, curious, collaborative, and comfortable working across engineering, architecture, product, and business teams.
You understand that successful AI adoption is about integrating an LLM. It requires strong software engineering, reliable data flows, thoughtful user experience, responsible AI controls, measurable outcomes, and continuous learning from real usage.
You are comfortable leading technical discussions, making architecture decisions, mentoring engineers, and helping teams adopt new ways of working. You are pragmatic, outcome-oriented, and able to balance innovation with security, governance, maintainability, and delivery discipline.
Minimum Requirements
We are looking for candidates who meet these minimum requirements:
Bachelor's degree in computer science, Engineering, Information Technology, Data Science, or a related field, with 12+ years of software engineering experience, including significant hands-on experience in AI, GenAI, automation, or intelligent application development.
Strong hands-on development experience in one or more programming languages such as Python, Java, or TypeScript, with the ability to build production-grade applications and services.
Proven experience designing and delivering AI-powered applications, LLM-based solutions, intelligent assistants, automation capabilities, or agentic workflows in an enterprise environment.
Strong understanding of modern GenAI concepts such as prompt engineering, function calling, tool usage, RAG, embeddings, vector databases, grounding, semantic search, AI agents, orchestration, and evaluation.
Experience with AI and cloud platforms such as Azure AI Foundry, Azure OpenAI, Azure services, GitHub Copilot, Palantir Foundry AIP, Databricks, AWS Bedrock, Google Vertex AI, or similar platforms.
Strong software engineering foundation, including API design, microservices, integration patterns, secure coding, automated testing, CI/CD, observability, and production support.
Experience integrating AI solutions with enterprise data sources, internal applications, APIs, document repositories, workflow systems, knowledge bases, or engineering platforms.
Ability to design scalable and secure solution architectures for AI use cases, including access control, data privacy, auditability, monitoring, and responsible AI guardrails.
Experience implementing quality and reliability practices for AI solutions, including response evaluation, regression testing, hallucination mitigation, traceability, feedback loops, and performance monitoring.
Strong understanding of data structures, data pipelines, APIs, metadata, and enterprise information architecture required to support AI applications.
Proven ability to troubleshoot complex technical issues across application code, AI model behavior, data quality, integrations, infrastructure, and user workflows.
Strong experience partnering with product owners, architects, business stakeholders, data engineers, analysts, and engineering teams to translate business needs into practical AI-enabled solutions.
Demonstrated ability to lead technical initiatives, make architectural decisions, mentor engineers, define engineering standards, and promote reusable best practices across teams.
Demonstrated ability to act as an AI Engineering SME across multiple teams, projects, or business domains, with the ability to influence engineering practices beyond a single delivery team.
Ability to evaluate emerging AI technologies and recommend practical improvements to enterprise platforms, tools, engineering workflows, and delivery practices.
Strong documentation skills, including the ability to create architecture documents, technical specifications, implementation guidance, process documents, standards, and reusable playbooks.
Nice-to-Have Requirements
These are additional nice-to-have requirements:
Experience with agentic AI development, including multi-step workflows, tool-using agents, task decomposition, autonomous execution patterns, and human approval flows.
Experience with software engineering productivity use cases, such as AI-assisted code generation, code review, test case generation, documentation generation, vulnerability analysis, CI/CD troubleshooting, and SDLC automation.
Experience with document intelligence, including extraction, classification, summarization, semantic search, and knowledge management use cases.
Experience with Palantir Foundry, Foundry AIP, Azure Databricks, or similar enterprise platforms for data integration, workflow orchestration, and AI-enabled business solutions.
Experience with vector databases and search technologies such as Azure AI Search, OpenSearch, Elasticsearch, Pinecone, Weaviate, FAISS, Chroma, or similar.
Experience with orchestration and AI engineering frameworks such as LangChain, Semantic Kernel, LlamaIndex, AutoGen, CrewAI, or comparable tools.
Experience with MLOps, LLMOps, model evaluation, prompt lifecycle management, AI observability, model monitoring, and AI governance practices.
Experience with cloud-native development on Azure, AWS, or GCP, including containers, serverless services, identity management, networking, logging, and monitoring.
Experience with workflow orchestration, DevOps, and CI/CD practices for AI-enabled applications.
Experience with data visualization or insight delivery tools such as Power BI, Tableau, Streamlit, or similar.
Familiarity with frontend development and user experience design for AI-enabled applications, including React, Angular, TypeScript, or similar technologies.
Experience working in insurance, reinsurance, underwriting, claims, risk management, finance, or other regulated enterprise environments.
About Swiss Re
Swiss Re is one of the world’s leading providers of reinsurance, insurance and other forms of insurance-based risk transfer, working to make the world more resilient. We anticipate and manage a wide variety of risks, from natural catastrophes and climate change to cybercrime. We cover both Property & Casualty and Life & Health. Combining experience with creative thinking and cutting-edge expertise, we create new opportunities and solutions for our clients. This is possible thanks to the collaboration of more than 15,000 employees across the world.
Our success depends on our ability to build an inclusive culture encouraging fresh perspectives and innovative thinking. We embrace a workplace where everyone has equal opportunities to thrive and develop professionally regardless of their age, gender, race, ethnicity, gender identity and/or expression, sexual orientation, physical or mental ability, skillset, thought or other characteristics. In our inclusive and flexible environment everyone can bring their authentic selves to work and their passion for sustainability.
If you are an experienced professional returning to the workforce after a career break, we encourage you to apply for open positions that match your skills and experience.
We may use AI-powered tools to support the review and evaluation of applications for this position. These tools provide additional insights to our recruitment teams, but all hiring decisions are carefully reviewed and made by people. To learn more about how we use AI in recruitment and how we handle your personal data, please review our Data Privacy Statement before applying.
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