Job Description Enterprise AI Architect

Job Description Enterprise AI Architect

Full-Time 80000 - 100000 £ / year (est.) Home office (partial)
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At a Glance

  • Tasks: Design and implement cutting-edge AI solutions across diverse technology environments.
  • Company: Join Alvarez & Marsal, a global consulting firm with a collaborative culture.
  • Benefits: Enjoy competitive salary, inclusive environment, and opportunities for professional growth.
  • Other info: Work in a fast-paced environment with excellent career advancement opportunities.
  • Why this job: Make a real impact by driving AI innovation in a dynamic team.
  • Qualifications: Experience in enterprise architecture and AI delivery; strong communication skills.

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

Company Overview

Alvarez & Marsal (A&M) is a global consulting firm with entrepreneurial, action and results-oriented professionals in over 40 countries. We take a hands‑on approach to solving our clients' problems and assisting them in reaching their potential. Our culture celebrates independent thinkers and doers who positively impact our clients and shape our industry. The collaborative environment and engaging work—guided by A&M's core values of Integrity, Quality, Objectivity, Fun, Personal Reward, and Inclusive Diversity—are why our people love working at A&M.

The Team

We are a cross-disciplinary group bringing together enterprise architecture, data platforms, engineering, security, and delivery excellence to help clients design, govern, and scale AI solutions across complex environments. We partner with senior business and technology leaders to translate strategic outcomes into secure, scalable, and responsible AI capabilities that deliver measurable impact. Our work spans advisory and hands‑on delivery—defining target‑state architectures, establishing guardrails and governance, and guiding engineering teams from prototype to production.

Responsibilities

  • Define enterprise AI architecture spanning data, cloud, applications, integration, and security across diverse technology estates.
  • Design scalable AI solutions using modern AI, machine learning, and GenAI technologies, aligned to business outcomes and value cases.
  • Translate business problems into practical AI use cases, solution designs, and delivery roadmaps with clear benefits, risks, and dependencies.
  • Assess current‑state platforms and identify data, platform, and integration changes needed to enable AI at scale.
  • Establish architecture patterns, guardrails, and governance standards for responsible AI adoption, including security, privacy, and model risk controls.
  • Partner with cloud, data, engineering, security, and business teams to progress AI use cases from prototype to production with robust MLOps/LMMOps practices.
  • Lead technical decision‑making across platforms, vendors, operating models, and delivery approaches, balancing speed, risk, and total cost of ownership.
  • Advise senior stakeholders on technical trade‑offs, risks, interdependencies, and investment choices to inform portfolio and roadmap decisions.
  • Drive measurable outcomes through automation, productivity improvements, cost reduction, and better use of enterprise data assets.

Qualifications

  • Experience across enterprise architecture and solution architecture with exposure to cloud, data, or AI delivery in large organizations.
  • Strong understanding of how AI solutions are designed, integrated, governed, and deployed at enterprise scale, including security and compliance considerations.
  • Hands‑on familiarity with modern cloud and data platforms (e.g., AWS, Azure), and ecosystem tools (e.g., Snowflake, Databricks, or similar).
  • Knowledge of GenAI, machine learning, orchestration and automation, data pipelines, APIs, integration patterns, and enterprise security controls.
  • Ability to define pragmatic technical architectures without being limited to a single platform or vendor; experience evaluating build/buy/partner options.
  • Proven track record moving AI use cases beyond pilots into resilient, observable, and cost‑effective enterprise solutions.
  • Comfortable operating from strategic target‑state design through delivery detail, including patterns, reference architectures, and implementation guidance.
  • Excellent stakeholder management and communication skills, able to explain complex topics clearly to business and technology leaders.
  • Experience in regulated, data‑heavy, or complex enterprise environments is advantageous.

Equal Opportunity Employer

It is Alvarez & Marsal’s practice to provide and promote equal opportunity in employment, compensation, and other terms and conditions of employment without discrimination because of race, color, creed, religion, national origin, ancestry, citizenship status, sex or gender, gender identity or gender expression (including transgender status), sexual orientation, marital status, military service and veteran status, physical or mental disability, family medical history, genetic information or other protected medical condition, political affiliation, or any other characteristic protected by and in accordance with applicable laws.

Job Description Enterprise AI Architect employer: Alvarez & Marsal

Alvarez & Marsal (A&M) is an exceptional employer that fosters a collaborative and inclusive work culture, where independent thinkers thrive. With a strong focus on employee growth and development, A&M offers unique opportunities to engage in meaningful projects that leverage cutting-edge AI technologies, all while being guided by core values that prioritise integrity and personal reward. Located in a dynamic global environment, employees benefit from a hands-on approach to problem-solving, ensuring their contributions have a tangible impact on clients and the industry.

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Contact Details:

Alvarez & Marsal Recruitment Team

StudySmarter Expert Advice🤫

We think this is how you could land Job Description Enterprise AI Architect

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We think you need these skills to ace Job Description Enterprise AI Architect

Enterprise Architecture
Solution Architecture
AI Solution Design
Cloud Platforms (e.g., AWS, Azure)
Data Platforms (e.g., Snowflake, Databricks)
Machine Learning
GenAI Technologies

Some tips for your application 🫡

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