AI Engineer - AI Solutions

Inspyr Solutions
Dallas, United States of America
6 days ago

Role details

Contract type
Permanent contract
Employment type
Full-time (> 32 hours)
Working hours
Regular working hours
Languages
English
Experience level
Senior

Job location

Dallas, United States of America

Tech stack

API
Artificial Intelligence
Computing Platforms
Audit Trail
Azure
Cloud Computing
Cloud Engineering
Python
Machine Learning
Runbook
Search Technologies
SQL Databases
Data Logging
Google Cloud Platform
Data Classification
Large Language Models
Generative AI
AI Platforms
Information Technology
Machine Learning Operations
Virtual Agents

Job description

The Senior AI Engineer is a senior-level individual contributor responsible for designing, building, and operationalizing enterprise-grade AI solutions within a highly regulated banking environment. This role provides deep technical leadership across AI engineering, MLOps/LLMOps, and governance-by-design, ensuring all AI solutions are secure, scalable, auditable, and production-ready.

You will own complex AI systems end-to-end, influence platform standards, and serve as a technical authority for AI delivery-bridging experimentation and enterprise production while meeting strict risk, privacy, and regulatory requirements., * Lead AI engineering initiatives, owning design decisions for complex, high-impact solutions

  • Define and contribute to reference architectures, reusable patterns, and "golden paths" for AI development and deployment
  • Review and approve solution designs to ensure alignment with platform standards, security controls, and governance requirements, * Design and implement production-grade AI services and pipelines (batch and real-time) with a focus on reliability, performance, and operational excellence
  • Package and deploy models as scalable services (APIs, jobs, agents) with defined SLAs, monitoring, alerting, and runbooks
  • Lead complex issue resolution across environments, including production incidents involving AI systems, * Embed governance directly into engineering workflows, including:
  • Security and access controls
  • Data classification and handling
  • Model risk management
  • Privacy and consent controls
  • Responsible AI principles
  • Auditability and regulatory traceability
  • Partner closely with Risk, Compliance, Legal, and Architecture teams to ensure alignment with internal and external regulatory expectations, * Lead implementation of advanced AI patterns, including Retrieval-Augmented Generation (RAG), embeddings, semantic search, and agent-based workflows
  • Ensure GenAI solutions are grounded in approved data sources with governed access, logging, and retention policies
  • Define evaluation and monitoring frameworks for GenAI outputs in regulated environments, * Design and implement automated ML/LLM pipelines covering training, evaluation, approval, deployment, and rollback
  • Establish standards for model versioning, reproducibility, environment isolation, and controlled releases
  • Improve time-to-production while enhancing safety, repeatability, and governance through automation, * Mentor engineers and elevate overall technical standards across AI engineering teams
  • Contribute to internal best practices, documentation, and knowledge sharing initiatives

Requirements

  • AI/ML tooling and frameworks
  • Agentic AI solutions
  • Machine Learning (ML), * Bachelor's degree in Computer Science, Engineering, or equivalent practical experience
  • 8+ years of cloud engineering experience, with 5+ years focused on AI/ML systems
  • Expert-level proficiency in Python, SQL, and cloud infrastructure
  • Hands-on experience deploying AI solutions in Azure and/or Google Cloud Platform environments
  • Strong understanding of production systems, including reliability, scalability, observability, cost optimization, and security
  • Experience delivering AI solutions in regulated industries (e.g., banking, financial services, insurance, healthcare)
  • Familiarity with model risk management, audit requirements, and regulatory review processes
  • Hands-on experience with enterprise MLOps/LLMOps tooling and platform design
  • Experience designing platform-level AI capabilities, beyond individual model development

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