Sr. Engineering AI Enterprise Architect in Chew Magna

Sr. Engineering AI Enterprise Architect in Chew Magna

Chew Magna Full-Time 80000 - 100000 £ / year (est.) No working from home possible
TE Connectivity

At a Glance

  • Tasks: Lead the design and scaling of AI solutions across a global engineering organisation.
  • Company: Join a leading tech company focused on innovative AI solutions.
  • Benefits: Enjoy a competitive salary, performance bonuses, and wellness incentives.
  • Other info: Collaborative environment with opportunities for community outreach and personal growth.
  • Why this job: Make a real impact by shaping the future of AI in engineering.
  • Qualifications: Proven experience in AI solution design and enterprise architecture.

The predicted salary is between 80000 - 100000 £ per year.

The Engineering AI Enterprise Architect is a senior AI technical authority responsible for the safe, consistent and scalable use of AI across a global engineering organisation. The role owns the Engineering AI solution design framework, including the architecture principles, reusable patterns, technical standards and production expectations used by business units to design AI models, agents, workflows and solution concepts. It helps identify common AI capabilities, reduce duplication and ensure local solutions are positioned for broader enterprise scale. Working within a wider delivery model, the role provides AI expertise across solution design, model and agent quality, architecture fit, integration quality and technical issue resolution. It requires deep AI solution design expertise, credibility in engineering environments, enterprise architecture awareness and the ability to guide technical contributors without relying on direct authority. The role partners closely with Engineering Systems and Data. The AI Enterprise Architect is accountable for the AI technical framework, solution patterns, model and agent design standards and long-term scalability decisions. The Engineering Systems and Data team are accountable for the systems, data, supplier and integration capabilities required to deliver those AI patterns effectively.

Your Main Tasks

  • Define and maintain the engineering AI technical framework, including architecture principles, reusable patterns, readiness criteria, governance checkpoints and lifecycle expectations.
  • Scale AI solutions across business units by assessing local designs, identifying reuse potential, industrialising successful prototypes and guiding solutions toward production ready capability.
  • Create and maintain the engineering AI technology roadmap across tools, agents, models, workflows, data products, integrations and reusable services.
  • Identify common AI capabilities required across multiple use cases, such as retrieval, similarity search, recommendation logic, engineering reasoning, orchestration, evaluation and shared data services.
  • Coordinate architecture alignment across business units, engineering teams, systems leads, subject matter experts, IT, data teams, suppliers and vendors.
  • Review technical proposals and solution designs for scalability, maintainability, security, integration quality, reuse potential and enterprise architecture fit.
  • Embed security, data, IP protection, responsible AI, testing, documentation, monitoring and support expectations into practical delivery standards.
  • Reduce duplicate development by steering teams toward shared platforms, common services and standard architecture patterns.

Your Ideal Profile

  • Proven track record designing and scaling AI-enabled solutions across engineering or other complex operational environments.
  • Experience acting as a senior AI technical authority, including defining standards, reviewing solution designs and driving reuse across multiple teams.
  • Practical experience taking GenAI, agentic AI, RAG, intelligent automation or AI workflow solutions from concept to pilot to production with measurable adoption and impact.
  • Strong background in enterprise or solution architecture, with the ability to link AI capabilities to business processes, engineering workflows, data sources and enterprise systems.
  • Ability to engage credibly with engineering leaders, architects, systems leads, subject matter experts, IT, data teams, suppliers and vendors.
  • Experience creating technical frameworks, reference architectures, reusable patterns or platform enabled capabilities.
  • Success in global, matrixed organisations driving alignment without relying on direct authority.

Technical Capabilities

  • LLM and GenAI solution design, including model selection, prompt and context design, grounding, tool use, structured outputs and scalability trade-offs.
  • Agentic AI, orchestration and human in the loop patterns.
  • Classical and applied machine learning architecture, including supervised and unsupervised learning, predictive models, recommendation systems, similarity models, optimization, model validation, feature engineering and production deployment patterns for engineering and manufacturing use cases.
  • Retrieval and knowledge systems, including RAG, embeddings, vector search, hybrid search, reranking, metadata and source traceability.
  • AI evaluation, MLOps and lifecycle management, including test sets, hallucination testing, model and version governance, CI/CD, monitoring, drift detection, rollback, observability, feedback loops, support handover and continuous improvement.
  • Secure and responsible AI architecture, including access control, data classification, data leakage prevention, prompt injection risk, secure model and API access, auditability, vendor risk, data residency, IP protection and safe use of proprietary engineering knowledge.
  • AI platform and integration architecture, including cloud AI services, model gateways, orchestration tools, reusable services, APIs and supplier solutions.
  • Integration of AI capabilities with engineering systems and data environments, such as PLM, CAD, simulation, manufacturing, quality or supply chain platforms.

Leadership and Working Style

  • Leads as an enabler and technical authority, putting business unit needs first while ensuring solutions are scalable and enterprise aligned.
  • Creates structure from ambiguous AI opportunities and turns them into practical roadmaps, solution patterns, decision points and delivery guidance.
  • Applies systems thinking across tools, agents, models, data, workflows, platforms and enterprise systems.
  • Balances innovation speed with enterprise controls, sustainable support models and production readiness.
  • Constructively challenges designs that create duplication, unnecessary complexity, weak controls, poor scalability or vendor lock in.
  • Guides multiple contributors through clarity, disciplined architecture and practical governance.

Values

  • Integrity
  • Accountability
  • Inclusion
  • Innovation
  • Teamwork

Benefits

  • Competitive Salary Package
  • Performance-Based Bonus Plans
  • Health and Wellness Incentives
  • Employee Stock Purchase Program
  • Community Outreach Programs / Charity Events
  • Employee Resource Group

TE Connectivity has become aware of fraudulent recruitment activities being conducted by individuals or organizations falsely claiming to represent TE Connectivity. TE never requests payment or fees from job applicants at any stage of the recruitment process. All legitimate job openings are posted exclusively on our official careers website at te.com/careers, and all email communications from our recruitment team will come only from actual email addresses ending in @te.com. If you receive any suspicious communications, we strongly advise you not to engage or provide any personal information, and to report the incident to your local authorities.

Sr. Engineering AI Enterprise Architect in Chew Magna employer: TE Connectivity

At TE Connectivity, we pride ourselves on being an exceptional employer, offering a dynamic work culture that fosters innovation and collaboration. Our commitment to employee growth is evident through comprehensive training programs and opportunities to lead impactful AI projects within a global engineering environment. With competitive salaries, performance-based bonuses, and a strong focus on health and wellness, we ensure our employees thrive both personally and professionally in a supportive and inclusive atmosphere.

TE Connectivity

Contact Details:

TE Connectivity Recruitment Team

StudySmarter Expert Advice🤫

We think this is how you could land Sr. Engineering AI Enterprise Architect in Chew Magna

Tip Number 1

Network like a pro! Reach out to folks in your industry on LinkedIn or at events. A friendly chat can open doors that applications alone can't.

Tip Number 2

Show off your skills! If you’ve got a portfolio or examples of your work, bring them along to interviews. It’s a great way to demonstrate your expertise in AI solutions.

Tip Number 3

Prepare for the unexpected! Brush up on common interview questions and be ready to discuss your past projects. We want to see how you think on your feet!

Tip Number 4

Don’t forget to follow up! A quick thank-you email after an interview can keep you top of mind. Plus, it shows you’re genuinely interested in the role.

We think you need these skills to ace Sr. Engineering AI Enterprise Architect in Chew Magna

AI Solution Design
Enterprise Architecture
Technical Framework Development
Model Selection
Machine Learning Architecture
Integration Architecture
Data Management

Some tips for your application 🫡

Tailor Your Application:Make sure to customise your CV and cover letter to highlight your experience with AI solutions and enterprise architecture. We want to see how your skills align with the specific requirements of the Sr. Engineering AI Enterprise Architect role.

Showcase Your Expertise:Don’t hold back on detailing your past projects and achievements in AI design and implementation. We’re looking for someone with a proven track record, so let us know how you’ve made an impact in previous roles!

Be Clear and Concise:When writing your application, keep it straightforward and to the point. We appreciate clarity, so avoid jargon unless it’s necessary to convey your expertise. Make it easy for us to see your qualifications at a glance.

Apply Through Our Website:We encourage you to submit your application through our official website. It’s the best way to ensure your application gets into the right hands and is considered for the role. Plus, it’s super easy!

How to prepare for a job interview at TE Connectivity

Know Your AI Frameworks

Before the interview, make sure you’re well-versed in the engineering AI technical frameworks relevant to the role. Brush up on architecture principles, reusable patterns, and governance checkpoints. This will show that you understand the foundational elements of the position and can contribute from day one.

Demonstrate Your Experience

Prepare specific examples of your past work with AI solutions, especially those that involved scaling and integration across complex environments. Be ready to discuss how you’ve taken AI projects from concept to production, highlighting measurable impacts. This will help you establish credibility as a senior AI technical authority.

Engage with Stakeholders

Since the role requires collaboration with various teams, practice how you would engage with engineering leaders, architects, and data teams. Think of ways to articulate your ideas clearly and how you can guide others without direct authority. This will demonstrate your leadership style and ability to foster teamwork.

Stay Updated on AI Trends

Familiarise yourself with the latest trends in AI, particularly in areas like GenAI, agentic AI, and MLOps. Being knowledgeable about current technologies and methodologies will not only impress your interviewers but also show that you’re committed to continuous learning and innovation in the field.