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Digital Software Engineering Lead Analyst- Vice President
Citi
- Tampa, Florida, United States
- Tampa, Florida, United States
Über
Design and build agentic AI systems, including autonomous agents, multiagent orchestration, tool use, and adaptive decision-making workflows. Architect fault tolerant, scalable AI solutions using modern agent frameworks (e.g., Google_ADK, LangGraph, LangChain, OpenAI Assistants, CrewAI, AutoGen, custom orchestrators). Define the end-to-end AI system blueprint, including knowledge integration, orchestration, pipelines, observability, governance, and failover strategies. Evaluate and select LLMs, embeddings, vector stores, and middleware best suited for complex enterprise requirements.
Partner with engineering teams to aggregate, ingest, and harmonize data from multiple systems, including APIs, databases, internal platforms, and unstructured sources. Design robust data pipelines optimized for LLM workloads (e.g., chunking, metadata design, semantic indexing, retrieval strategies). Implement mechanisms for ensuring data freshness, quality, and fault tolerance across distributed systems.
Build advanced Retrieval-Augmented Generation (RAG) architectures, including hybrid retrieval, query planning, and retrieval optimization. Develop, tune, and deploy applications leveraging major LLMs (OpenAI, Gemini, Claude, Llama, Mistral, HuggingFace ecosystem). Engineer prompts, system instructions, and reusable prompt templates for deterministic AI behavior. Implement safety guardrails, evaluation pipelines, and bias/error mitigation strategies.
Develop cloudnative GenAI applications using containerized infrastructure (Kubernetes, OpenShift, Docker). Build and support production-grade MLOps / AIOps pipelines, including CI/CD, automated testing, monitoring, model versioning, and rollback strategies. Partner with engineering teams to ensure secure, compliant deployment of all AI workloads.
Serve as technical SME for AI engineering patterns, solution design, and architecture. Mentor mid-level engineers and analysts, guiding best practices in AI build patterns and engineering quality. Influence product and platform strategy by providing insights on emerging GenAI and agentic technologies.
Qualification Experience
10+ years of experience in software engineering, AI/ML engineering, systems architecture, or related fields. Proven experience designing and deploying enterprisegrade AI Systems in production.
Required Technical Skills Core AI/ML & GenAI Expertise
Strong foundations in ML, NLP, embeddings, statistics, neural networks, and LLMs. Extensive handson experience with LLMs: Gemini, OpenAI, Claude, Mistral, Llama, opensource models, etc. Deep expertise in RAG architectures, including retrieval optimization, vector search, and semantic data modeling. Experience building agentic AI using Google_ADK or langGraph
Programming & Data Engineering
Strong proficiency in Python and libraries such as: Pandas, NumPy, scikitlearn, PyTorch, TensorFlow, Transformers, FastAPI, LangChain, LlamaIndex. Hands-on experience with vector databases: Pinecone, PGVector, MongoDB Atlas Vector Search, Neo4j, Milvus, etc. Experience building pipelines for large-scale unstructured data processing.
Cloud, DevOps, & MLOps
Strong CI/CD experience: GitLab CI, Jenkins, Azure DevOps, ArgoCD, GitHub Actions. Expertise deploying GenAI solutions in production using: Kubernetes, Docker, Helm, serverless runtimes, or cloud-native LLM services. Experience with monitoring, observability, and logging frameworks relevant for AI workloads.
Soft Skills
Exceptional problem-solving and analytical skills. Ability to execute independently while operating effectively in ambiguity. Strong collaboration skills across engineering, architecture, and product teams. Deep commitment to ethics, transparency, and responsible AI usage.
Preferred Qualifications
Experience building AI systems in regulated or enterprise environments. Experience using knowledge graphs, graph databases, or enterprise metadata systems. Familiarity with AIOps, agent monitoring, or AI governance frameworks.
Education
Bachelor's degree or equivalent experience required. Master's degree preferred.
Sprachkenntnisse
- English
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