AI Engineer - AI Solutions
Role details
Job location
Tech stack
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