Skip to main content
Tallo logoTallo logo
Apply for this opportunity

This job application is on an outside website. Be sure to review the job posting there to verify it's the same.

Senior AI Engineer

Job

Wisestep-Inc

Des Moines, IA (In Person)

Full-Time

Posted 6 days ago (Updated 1 day ago) • Actively hiring

Expires 7/4/2026

Review key factors to help you decide if the role fits your goals.
Pay Growth
?
out of 5
Not enough data
Not enough info to score pay or growth
Job Security
?
out of 5
Not enough data
Calculating job security score...
Total Score
100
out of 100
Average of individual scores

Were these scores useful?

Skill Insights

Compare your current skills to what this opportunity needs—we'll show you what you already have and what could strengthen your application.

Job Description

Senior AI Engineer Job Poster :
Wisestep-Inc Skills:
DevOps Practices, Cloud Platforms, CI/CD Pipelines, Data Engineering, Containerization, LLMs, Artificial Intelligence, Microservices Architecture, Nat |
Location:
Des Moines , Iowa ,
United States Of America Views:
9 Senior AI Engineer Must Have Technical/Functional Skills Seeking a highly skilled Senior AI Engineer to lead the design, development, and deployment of advanced AI/ML solutions. The ideal candidate has strong expertise in machine learning, deep learning, LLMs, and scalable AI system architecture, with the ability to mentor junior engineers and drive strategic AI initiatives. Key Responsibilities AI/ML Architecture & Development • Lead development of sophisticated machine learning and deep learning models for NLP, computer vision, and predictive analytics. • Architect and optimize LLM based and GenAI solutions, including fine-tuning, RAG pipelines, and custom model development. • Drive feature engineering, experimentation, model tuning, and validation. AI System Design & Deployment • Build and maintain end to end AI pipelines from data ingestion to production deployment. • Deploy large-scale AI systems on cloud platforms (Azure, AWS, or GCP) using Docker, Kubernetes, and serverless technologies. • Implement scalable API endpoints and microservices for AI model consumption. MLOps Strategy & Automation • Implement modern MLOps practicesâ€"model tracking, versioning, monitoring, drift detection, automated retraining. • Own CI/CD pipelines for AI workloads using GitHub Actions, Azure DevOps, Jenkins, etc. Data Engineering • Work closely with data engineering teams to build high-quality data pipelines. • Manage large datasets using Spark/Databricks, SQL, and data processing frameworks.