AI, Data & Technology - AI-ML Architect
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Grant Thornton US is building a market-leading AI practice focused on practical, secure, and scalable outcomes for our clients, and we are hiring AI/ML Solution Architects to lead discovery phase through production delivery. Hiring in most major US cities.
As an AI-ML Architect you will translate business objectives into end-to-end AI architectures across ML/AI, application integration, data and governance—defining target-state designs, reference patterns, and implementation roadmaps; guiding technology choices across cloud and modern stacks; and partnering with security, risk, and delivery leaders to ensure solutions are operable, compliant, and measurable. The ideal candidate brings the right blend of hands-on AI engineering credibility and consulting leadership—strong communication with executives and technical teams, experience designing AI solutions that integrate with enterprise systems, and a pragmatic approach to tradeoffs across accuracy, cost, latency, reliability, and risk—along with the ability to mentor teams and shape repeatable assets and accelerators. We are actively recruiting for: Manager level (5+ years) for architects, and Director level (7+ years) for senior architects who can set technical standards, drive quality and reliability, and help shape reusable patterns and accelerators. This role is specifically a strategic investment to grow our AI capabilities and advisory services.
If you want your work to matter, this is the moment: we are not building “another AI consulting practice”—we are rewriting the playbook for how clients deliver on the promise of AI. We’re building a practice where teams love the pace, the craft, and the real-world impact.
Day-to-day responsibilities:
• Lead discovery workshops to clarify business objectives, constraints, and measurable success criteria for AI/ML initiatives
• Translate requirements into end-to-end target-state architectures across data, ML/AI, application integration, security, and governance
• Define pragmatic tradeoffs across accuracy, latency, cost, reliability, privacy, and risk—and communicate decisions to exec and engineering audiences
• Design the data + model lifecycle (pipelines, training/finetuning, serving, monitoring, drift detection, retraining) and the required MLOps/LLMOps foundations
• Establish integration patterns with enterprise systems (APIs/events/workflows, IAM, observability) so solutions are operable and supportable in production
• Partner with security, privacy, and risk teams to embed controls (access, auditability, data handling, responsible AI) into solution designs
• Produce core delivery artifacts (architecture diagrams, reference patterns, implementation roadmap, runbooks) and drive architecture reviews
• Mentor teams and build reusable assets/accelerators (reference architectures, templates, evaluation scorecards) to scale repeatable delivery quality
You have the following technical skills and qualifications:
• Bachelor's degree preferably in data science or computer science or related discipline
• For managers, minimum five years of hands-on developer experience in machine learning and artificial intelligence stacks
• For Directors, at least two years of experience leading teams of AI/ML architects and developers
• Demonstrated experience designing and delivering production AI/ML solutions in an enterprise environment
• Strong grounding in cloud architecture (AWS/Azure/GCP), distributed systems, and modern data platforms
• Experience with MLOps practices (model lifecycle, monitoring, governance, deployment automation)
• Experience partnering with security/risk to implement privacy, access controls, auditability, and responsible AI practices
• Ability to lead senior client stakeholders through decisions under ambiguity
• Experience to develop long-standing relationships with clients
• Experience leading AI/ML delivery programs
• Experience with AI patterns (RAG, agentic, etc.)
• Preferred: experience with regulated environments (SOX, HIPAA, PCI, model risk management)
• Experience leading proposal solutioning / estimates / technical writing for pursuits
• Experience mentoring junior or senior colleagues in AI/ML architectures
• Experience guiding clients on build vs. buy decisions of AI/ML powered use cases
• Flexible, adaptable and an eager self-starter
• English: Fluent spoken and written communications skills
• Prior consulting industry experience or prior experience in an internal consulting role
• Consistent with the firm’s hybrid work model, this position will require in-person attendance at least two days a week either at a Grant Thornton office or at a client site
• Readiness to travel up to 60%
• Must be currently eligible to work in the United States, position is not eligible for employer sponsorship
• Consistent with the firm’s hybrid work model, this position will require in-person attendance at least two days per week, either at a Grant Thornton office or client site