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AI Tech Lead / AI Engineer

We are seeking a high-caliber AI Tech Lead / AI Engineer to design, build, and operationalize agentic AI solutions that accelerate analytics and reporting delivery. This role goes beyond basic agent creation and requires hands-on experience with agent orchestration, memory, and enterprise-grade data access patterns, delivering scalable components that fit into an existing framework while rapidly adapting to incoming business requests.

Responsibilities: -

  • Design, Architect, implement, and iterate on agentic AI solutions to shorten the cycle time for analytics, log analysis, and reporting requests.
  • Design agent orchestration patterns (multi-agent workflows), tool/function calling, and memory approaches appropriate for enterprise deployments.
  • Define secure and scalable data access patterns for agents (retrieval, context building, and grounding), integrating with existing data sources and governance expectations.
  • Partner closely with product, analytics, and engineering stakeholders to intake requirements quickly and deliver working prototypes and production-ready solutions.
  • Engineer reusable components and best practices that enable scalable delivery (not one-off scripts), aligned to an existing base framework.
  • Operationalize solutions for reliability and maintainability: testing strategies, monitoring/observability, prompt/version management, and deployment automation.
  • Evaluate build vs. buy options pragmatically when needed, while keeping focus on shipping solutions on the current platform stack.

Tech Stack (Core): -

  • Cloud: AWS (primary deployment environment; open to alternatives)
  • Data/Analytics Platform: Databricks (including native "chat with data" capabilities and potential agent integrations)
  • Agent Frameworks: LangChain, LangGraph
  • Conversational analytics patterns: Ask-questions-on-data / conversational BI approaches (agent-driven analytics and dashboards

Experience: -

10+ Years

Location: -

Rosemont, IL (3days/Week)

Educational Qualifications: -

Engineering Degree BE/ME/BTech/MTech/BSc/MSc.

Technical certification in multiple technologies is desirable.

Skills: -

Mandatory skills

  • Demonstrated experience delivering agentic AI solutions beyond prototypes, including enterprise deployment considerations.
  • Strong hands-on engineering background with AWS-based deployments.
  • Experience working with modern data platforms (e.g., Databricks) and integrating LLM solutions with analytics/data ecosystems.
  • Ability to operate as a senior individual contributor who can define architecture and implement key pieces end-to-end.

Excellent communication and collaboration skills with US-based stakeholders

Skills & Expertise Needed

  • Agentic AI engineering: building and deploying LLM-powered agents for real business workflows.
  • Agent orchestration: designing multi-step and/or multi-agent flows; managing tool use, control flow, retries, and failure handling.
  • Agent memory: short-term and long-term memory patterns; conversation state; summarization and context window management.
  • Enterprise data access patterns for agents: retrieval/grounding strategies; context assembly from structured and unstructured sources; performance-conscious access.
  • Production deployment mindset: security, reliability, monitoring, and maintainability for enterprise-grade AI services.
  • Architecture & best practices: ability to design scalable components that fit into an existing framework and can be extended by the team.
  • Rapid requirements intake: quickly translating ambiguous reporting/analytics asks into implementable solutions and iterating with stakeholders.
  • High autonomy: tech-lead level capability without direct people management; self-directed and able to set engineering direction for the workstream

Good-to-Have Skills

  • Experience implementing retrieval-augmented generation (RAG) and hybrid retrieval across structured/unstructured sources.
  • Experience with LLMOps practices: prompt/version management, automated evaluation, and regression testing.
  • Experience building observability for AI systems (quality metrics, traces, latency/cost monitoring).
  • Familiarity with Databricks-specific agent or model serving patterns (where applicable).

Experience building lightweight analytics experiences on top of agent outputs (e.g., auto-generated insights/dashboards).

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