Senior Principle Agentic AI Orchestrator

Senior Principle Agentic AI Orchestrator

Full-Time 80000 - 100000 £ / year (est.) Home office (partial)
Genesys

At a Glance

  • Tasks: Lead AI transformation projects and create impactful customer experiences.
  • Company: Join Genesys, a global leader in AI-powered customer experience solutions.
  • Benefits: Flexible work culture, paid volunteer time, and professional development opportunities.
  • Other info: Be part of a certified Great Place to Work with a focus on innovation.
  • Why this job: Shape the future of AI in customer service and make a real difference.
  • Qualifications: 8-12 years in AI implementation and strong consultative skills required.

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

Be the one building AI-powered experiences where they matter most. At Genesys, we help organizations create better customer experiences through AI-powered experience orchestration. Our platform connects people, systems, data and AI to help organizations deliver more personalized service, improve operational efficiency and build stronger customer relationships.

As an Agentic AI Orchestrator at Genesys, you will serve as the strategic and technical bridge between customer ambition and successful AI transformation. You will partner directly with strategic customers across the EMEA region — leading with a consultative approach, moving with the agility that enterprise AI demands, and measuring success against customer business outcomes.

This role offers the opportunity to make a lasting impact by helping enterprises move from AI exploration to continuous transformation — and to shape how that transformation capability is built and scaled within the organisation.

What You’ll Do
  • Advise, Influence & Drive Adoption
    • Lead discovery and strategy alignment — partner with Genesys CX Advisors, Solution Consultants, and customer stakeholders to identify AI use cases, assess feasibility and value, and translate business KPIs into actionable technical priorities.
    • Surface the real problem beneath the presenting symptom — use data, evaluation outputs, and systematic analysis to form precise hypotheses and direct where intervention has the most leverage.
    • Influence adoption through credibility: when customers are blocked, uncertain, or sceptical, resolve it through evidence and clearly articulated reasoning.
    • Translate data-driven findings into executive-ready narratives — present complex AI performance insights, business impact, and recommendations with the clarity and confidence that influences C-level decisions.
  • Design and Architecture
    • Define reference architectures, integration patterns, and data flows for AI-powered experience orchestration — adapting the approach iteratively as customer context and data reveals new priorities.
    • Lead process-redesign workshops to create seamless, channel-agnostic CX — facilitated with a consultative approach that builds customer ownership of the solution.
    • Ensure all designs comply with Genesys and customer security, privacy, and regulatory requirements (GDPR, PDPA, PCI, HIPAA where applicable).
  • Prototype and Implementation
    • Deliver rapid POC and MVP implementations using Genesys Cloud AI Studio, CoPilot, Agentic Virtual Agent, and related product suites — moving from hypothesis to working prototype at pace, and adjusting direction when the evidence requires it.
    • Integrate Genesys AI components with customer CRM, ERP, and third-party systems.
    • Establish implementation KPIs and analytics to measure model and journey performance from day one — not as an afterthought.
  • AI Engineering & Outcome-Oriented Delivery
    • Design and implement evaluation frameworks to measure AI solution quality in production: intent accuracy, retrieval groundedness, response relevance, agent goal completion, and policy adherence.
    • Build automated eval pipelines that enable rapid, systematic iteration across prompt variants, guardrail configurations, and model versions.
    • Architect agentic systems with precision: define agent topology, design tool schemas, and engineer orchestration logic.
    • Measure success through production adoption and demonstrable outcome improvement — use outcome data as the primary signal for where to focus next.
  • Optimisation and Continuous Improvement
    • Define baseline metrics at engagement start and iterate relentlessly.
    • Evaluate solution performance against KPIs and refine designs based on data-driven insights, changing direction quickly when the data signals it.
    • Collaborate with Customer Success and Professional Services teams to hand over production-ready assets and roadmaps.
    • Codify field learnings into reusable frameworks, evaluation standards, and accelerators that scale capability beyond individual engagements.
  • Governance, Ethics, and Enablement
    • Champion responsible AI design principles and apply guardrails to prevent bias or unsafe responses.
    • Adhere to Genesys ethical standards and compliance frameworks.
    • Mentor customer, partner, and internal teams to build long-term AI maturity and self-sufficiency — transferring expertise, not just delivering outcomes.
    • Feed well-formed, evidence-backed field signal to product and solution teams — precise enough to influence roadmap priorities directly.
What We’re Looking For
  • Bachelor’s degree (Master’s preferred) in Computer Science, Information Technology, Data Science, or a related discipline.
  • 8–12 years of combined experience across AI implementation, CX/CCaaS platform consulting, or technical solution architecture — demonstrated through overlap and measurable customer impact, not additive year counts across separate tracks.
  • Extensive on-field experience implementing or supporting CX, CRM, or AI orchestration platforms (e.g., Genesys Cloud, Google CCAI, Salesforce, Microsoft, NICE CXone, AWS Connect, ServiceNow, or similar).
  • Hands-on experience with agentic AI systems: building, evaluating, or operating LLM-powered agents in production contexts.
  • Demonstrated experience working with APIs, data pipelines, and modern cloud environments (AWS, Azure, GCP).
  • Track record of mentoring or developing technical peers and codifying expertise into approaches others can build on.
Consultative & Customer-Facing Skills
  • Proven autonomy inside complex enterprise accounts — leading discovery, shaping scope, managing stakeholder expectations, and building trust without hand-holding.
  • Comfortable operating without a defined playbook — able to form and test hypotheses under ambiguity, pivot quickly when the data signals a change, and bring stakeholders along through the process.
  • Translates data-driven findings into executive-ready narratives: quantified outcomes, causal relationships, and clear next steps — not qualitative summaries.
  • Proven leadership in cross-functional environments and complex enterprise contexts.
  • Product instinct: able to define success metrics, surface well-formed requirements, and articulate the business case for technical decisions.
  • Experience with industry verticals such as Financial Services, Healthcare, Insurance, Retail, or Public Sector.
  • Multilingual communication ability is an advantage across the EMEA region.
Technical Skills
  • CX orchestration and workflow design across multiple platforms — with a focus on outcome over architecture elegance.
  • Conversational AI and Agentic Virtual Agent implementation across voice, chat, and messaging channels.
  • Knowledge engineering: retrieval system diagnosis, RAG pipeline design, semantic coverage analysis, and knowledge optimisation for AI consumption.
  • Agentic system design: tool schema authoring, multi-agent topology, prompt engineering as a systematic discipline, and guardrail implementation for enterprise-safe agent behaviour.
  • Applied data analysis: Python for evaluation scripting, log analysis, and integration development; SQL for operational data querying — AI-assisted development tooling expected and encouraged.
  • Deep working knowledge of one or more enterprise CCaaS or Agentic AI platforms — Genesys Cloud preferred, or equivalent such as Google CCAI, Salesforce, AWS Connect, NICE CXone, Sierra, Decagon, or Cognigy; demonstrated expertise in deploying and optimising conversational or agentic AI solutions on any of these platforms is equally valued.
  • Data and integration expertise: REST APIs, event-driven architecture, JSON.
  • Cloud infrastructure familiarity: provisioning, access control, and cost management (AWS preferred).
  • Data governance, security compliance, and responsible AI design principles.
Working at Genesys
  • AI at enterprise scale – Build, support and operate AI-powered technology used by more than 8,000 organizations worldwide. 150+ new AI features were released in the last fiscal year.
  • A flexible-first culture – Join a global team of nearly 7,000 employees with flexible ways of working designed to help people do their best work.
  • Growth in the AI era – Build future-ready skills through mentorship, learning programs, leadership development and education support.
  • Time to recharge and give back – Benefits include paid volunteer time, August Free Fridays, well-being resources and regionally tailored programs for employees and their families.
  • Recognized globally – Genesys is Great Place to Work® certified in 17 countries and 94% of employees are proud to tell others they work at Genesys.

Genesys is an equal opportunity employer committed to fairness in the workplace. We evaluate qualified applicants without regard to race, color, age, religion, sex, sexual orientation, gender identity or expression, marital status, domestic partner status, national origin, genetics, disability, military and veteran status, and other protected characteristics.

Senior Principle Agentic AI Orchestrator employer: Genesys

At Genesys, we pride ourselves on being an exceptional employer, offering a flexible-first culture that empowers our nearly 7,000 global employees to thrive in their roles. With a strong focus on professional growth through mentorship and leadership development, we provide unique benefits such as paid volunteer time and well-being resources, ensuring our team members can recharge and give back. Recognised as a Great Place to Work in 17 countries, we foster an inclusive environment where 94% of our employees take pride in being part of the Genesys family.

Genesys

Contact Details:

Genesys Recruitment Team

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We think this is how you could land Senior Principle Agentic AI Orchestrator

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We think you need these skills to ace Senior Principle Agentic AI Orchestrator

AI Implementation
CX Orchestration
Consultative Approach
Data Analysis
Technical Solution Architecture
API Integration
Conversational AI

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