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InfiCare Technologies

Lead AI Engineer (Agentic AI Applications) | Leawood, KS (Onsite)

InfiCare Technologies, Leawood, Kansas, United States

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Job Title Lead AI Engineer (Agentic AI Applications)

Location: Leawood, KS (Onsite)

Job Duration: Long Term Contract

Ideal Candidate Traits

Owns outcomes

– drives initiatives from concept to production with accountability and focus.

Thinks like a product builder

– connects engineering work to user and business value.

Strong in distributed systems and applied AI

– delivers scalable, production-ready solutions.

Acts with curiosity and bias for action

– proactive, self-directed, and solution-oriented.

Clarifies ambiguity

– asks the right questions and brings structure to complex problems.

Communicates with clarity and influence

across technical and product teams.

Passionate about impact

– builds intelligent, reliable systems that make a difference.

Role Overview Ascend Learning is seeking a

Lead AI Engineer (Contract)

who is a

driver, not an order taker

– someone who leads from the front, manages delivery across the AI team, and ensures successful execution of complex, high-impact AI initiatives.

You will architect and deliver applied AI solutions powered by

Large Language Models (LLMs)

and

Small Language Models (SMLs)

within a

distributed, production-grade ecosystem .

This is a

hands‑on technical leadership and delivery management role

that combines engineering excellence, team guidance, and cross‑functional collaboration. You will work closely with

Technical Product Owners (TPOs)

,

Technical Program Managers (TPMs)

,

Platform Engineering

, and

Senior Managers

to deliver scalable, reliable, and innovative AI applications that transform digital learning experiences.

Roles and Responsibilities

Delivery Management & Leadership:

Manage delivery of AI engineering initiatives, ensuring projects are executed on time, within scope, and to high quality standards. Coordinate engineers and workstreams, resolve dependencies, and drive accountability.

Technical Leadership & Team Guidance:

Lead and mentor AI engineers in architecture, design, and implementation of best practices. Set engineering standards for quality, reliability, and maintainability.

AI Solution Design & Development:

Architect and develop Agentic AI applications using LLMs and SMLs for automation, reasoning, and content generation. Build distributed backend systems with Python, Fast API, Azure, Kafka, and Kubernetes.

Cross-Functional Collaboration:

Partner with Technical Product Owners, Technical Program Managers, and Platform Engineering to define scope, success metrics, and optimize infrastructure and performance.

Innovation & Strategic Thinking:

Stay current on advancements in LLMs, SMLs, RAG, and Agentic AI frameworks. Experiment with OpenAI and Azure AI tools and promote technical innovation balanced with predictable delivery.

Productionization & Lifecycle Management:

Lead productionization of AI application, ensuring reliability, observability, and lifecycle management of deployed solutions.

Qualifications

Education & Experience:

Bachelor’s or Master’s degree in Computer Science, Artificial Intelligence, or a closely related field-or equivalent practical experience. Minimum of 7 years in software or AI engineering, with at least 2 years in technical leadership or architectural roles, demonstrating a proven track record of delivering complex solutions.

Delivery Management Expertise:

Demonstrated success managing end-to-end delivery for engineering teams or overseeing multi-stream technical projects, ensuring timely execution, high standards, and effective coordination across stakeholders.

Technical Proficiency:

Deep expertise in designing and implementing distributed systems, microservices architectures, and event-driven solutions. Hands‑on experience with production‑grade AI systems leveraging Large Language Models (LLMs) and Small Language Models (SMLs).

Technology Stack Mastery:

Advanced proficiency in Python, FastAPI, and Azure Cloud. Skilled in deploying and orchestrating solutions with Docker and Kubernetes. Familiarity with LangChain, LangGraph, vector databases, and Retrieval-Augmented Generation (RAG) pipelines.

DevOps & Observability:

Strong understanding of CI/CD pipelines, monitoring, logging, and tracing using tools like Datadog. Experienced with modern DevOps best practices to ensure system reliability and maintainability.

Additional Competencies:

Working knowledge of OpenAI APIs and the Azure ecosystem, including Cosmos DB, AI Search, and Cognitive Services. Familiarity with front‑end frameworks (Angular, React) and principles of UI/UX design, enabling seamless integration of intelligent backends with web applications. Exceptional communication, collaboration, and leadership abilities, with a passion for mentoring teams and driving impactful results.

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