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Orchestrating billions of remarkable experiences in more than 100 countries – through cloud, digital and AI technology.
Senior AI Architect
Location
Canada
Posted
58 days ago
Salary
$141.6K - $185.9K / year
Seniority
Senior
No structured requirement data.
Job Description
Senior AI Architect
Genesys
Role Description The Genesys AI Architect is a senior presales AI specialist who operates across three core motions: - Driving strategic AI opportunities with customers and sales teams - Scaling the field through reusable assets, technical enablement, and coaching - Shaping product and go-to-market direction through real-world customer and field feedback This role requires a blend of deep AI technical acumen, exceptional sales, communication, and executive storytelling skills, and the ability to translate complex capabilities into clear, actionable business value. Key Responsibilities: - Design end-to-end AI systems for customer experience use cases. - Architect reliable, production-ready AI solutions that go beyond prompt design, combining LLMs, deterministic workflows, tools, and orchestration layers. - Define how AI interacts across the full journey (self-service, agent copilot, journey management, and back-office automation), including fallback strategies, human handoff, and failure handling. - Optimize retrieval-augmented generation (RAG) and knowledge architectures to extend Genesys solutions where required. - Design scalable knowledge and retrieval strategies that ground AI responses in enterprise data. - Develop approaches for content structuring, chunking, embedding, and ranking to ensure accuracy, relevance, and freshness. - Partner with customers to align AI outputs with trusted knowledge sources while balancing performance, latency, and governance requirements. - Establish AI evaluation frameworks and quality measurement strategies. - Define how success is measured for AI-driven experiences, including accuracy, containment, customer satisfaction, and business impact. - Create test sets, evaluation methodologies, and feedback loops to continuously improve performance. - Translate technical quality metrics into business-relevant outcomes to support customer decision-making and adoption. - Engineer contextual AI experiences that leverage real-time data and conversation state. - Design how AI systems incorporate dynamic context such as customer data, interaction history, and external signals. - Optimize context management and prompt structure to maximize relevance while managing token limits and response quality. - Ensure AI interactions remain coherent, personalized, and aligned across channels and touchpoints. - Design for scalability, latency, and cost efficiency in enterprise environments. - Evaluate and optimize AI solutions for real-world constraints, including response time (especially for voice), throughput, and cost at scale. - Make informed tradeoffs across model selection, caching strategies, and architecture patterns to deliver performant and economically viable solutions. - Ensure designs meet enterprise expectations for reliability and responsiveness. - Leverage expert-level knowledge of Genesys AI capabilities to articulate and demonstrate product value to customers and prospects. - Support pre-sales activities such as technical discovery, solution design, product demonstrations, sandbox/trial engagements, AI integration guidance, and value assessments. - Design and deploy AI prototypes in sandbox and/or customer development environments to validate use cases, integrations, latency, and success criteria, and to highlight the differentiated value of Genesys AI. - Partner with account teams and Professional Services to transition successful prototypes into production pilots supporting technical handoff, hardening, KPI alignment, and business outcome validation. - Build integrations to third-party systems via RESTful APIs and emerging interoperability patterns such as MCP and A2A showcasing the art of the possible with Genesys Cloud AI solutions. - Develop reusable technical assets and enable Solution Consultants, partners, and account teams through workshops, coaching, and scalable technical content. - Provide technical feedback and strategic insights to Product Management and Engineering on AI product design, implementation considerations, and customer-driven enhancements. - Influence CIO/CTO-level stakeholders and position Genesys as integral to an organization’s broader IT and transformation strategy. Qualifications - AI Architecture & Technical Judgment: Hands-on experience designing modern AI solutions for customer experience orchestration and contact center use cases using the right mix of classic ML, NLU/NLP, retrieval-based systems, LLMs, orchestration patterns, tool use and agentic approaches. - Enterprise Integration & Real-Time Design: Expertise integrating AI solutions with enterprise platforms, knowledge sources, RESTful APIs, event-driven architectures, identity systems, and broader cloud ecosystems. - Evaluation, Governance & Observability: Ability to define AI evaluation strategies, success metrics, and monitoring approaches across offline and online testing, retrieval quality, tool-call accuracy, safety, drift, auditability, and cost control. - Executive Communication & Field Enablement: Strong ability to translate complex AI architectures into clear business value for technical and executive stakeholders. - Prompt Design & AI Workflow Optimization: Practical experience designing prompts, context strategies, and orchestration flows as part of a broader system architecture. - Technical Demonstration Prowess: Proven ability to create, deliver, and adapt compelling technical demonstrations and presentations that clearly articulate AI integration points and business impact. - Sales Acumen: Demonstrated success partnering with sales teams to understand customer challenges and provide AI-focused technical solutioning. - Business Value Orientation: Ability to identify opportunities for process optimization and recommend AI-driven solutions that enhance customer outcomes and operational efficiency. - Executive Presence: Proven ability to influence CIO/CTO decision-makers. - Strong understanding of the Genesys Cloud platform and Genesys AI preferred. Requirements - This is an active opening at Genesys. - We use Artificial Intelligence to support the hiring process, but every application is reviewed by our Talent Acquisition team. - Compensation: This role has a market-competitive salary with an anticipated base compensation range listed below. Actual salaries will vary depending on a candidate’s experience, qualifications, skills, and location. - This role might also be eligible for a commission or performance-based bonus opportunities. - Compensation range: $141,600.00 - $185,900.00 Employee Referrals - If a Genesys employee referred you, please use the link they sent you to apply. Reasonable Accommodations - If you require a reasonable accommodation to complete any part of the application process, or are limited in your ability to access or use this online application and need an alternative method for applying, you or someone you know may contact us at reasonable.accommodations@genesys.com. - You can expect a response within 24–48 hours. Company Description Genesys® empowers more than 8,000 organizations worldwide to create the best customer and employee experiences. With agentic AI at its core, Genesys Cloud™ is the AI-Powered Experience Orchestration platform that connects people, systems, data and AI across the enterprise. As a result, organizations can drive customer loyalty, growth and retention while increasing operational efficiency and teamwork across human and AI workforces. To learn more, visit www.genesys.com .
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