Make experiences flow.
Senior AI-Driven Enterprise Support Engineer
Location
Washington
Posted
2 days ago
Salary
0
Seniority
Senior
Job Description
Senior AI-Driven Enterprise Support Engineer
NICE
• Serve as the primary technical support partner for a portfolio of enterprise customers • Build trusted relationships with technical and operational stakeholders • Conduct account reviews, identify trends, and proactively address risks • Help customers maximize the value of their NICE investments • Partner closely with Customer Success, Services, Product, and Engineering teams • Troubleshoot advanced issues across NICE CXone and related applications • Investigate routing, telephony, analytics, integrations, APIs, and platform performance • Act as the quarterback for escalations, coordinating SMEs and Engineering teams when necessary • Drive issues to resolution while maintaining exceptional customer communication • Translate technical complexity into clear business outcomes • Utilize AI-driven tools to accelerate investigations and customer insights • Review AI-generated recommendations and apply technical judgment • Provide feedback that helps improve support automation capabilities • Use AI-powered account intelligence to identify opportunities and risks proactively • Help establish best practices for AI-augmented customer support • Share customer feedback directly with Product and AI teams • Help define how emerging AI support capabilities are used at enterprise scale • Contribute to knowledge management and support process innovation • Mentor peers and promote operational excellence
Job Requirements
- 6+ years supporting enterprise SaaS, cloud, CCaaS, or contact center technologies
- Experience owning customer-facing technical relationships
- Strong troubleshooting and problem-solving capabilities
- Experience managing complex escalations and cross-functional resolution efforts
- Familiarity with APIs, integrations, logs, and platform diagnostics
- Ability to communicate effectively with both technical and business stakeholders.
- Preferred Experience
- NICE CXone, Genesys Cloud, Cisco, Five9, Avaya, Amazon Connect, or similar platforms
- Technical Account Management (TAM) experience
- Contact center technologies including ACD, IVR, omnichannel routing, and workforce solutions
- Salesforce, ServiceNow, Dynamics 365, or CRM integrations
- Experience leveraging AI tools in technical support or customer-facing environments.
Benefits
- You'll join a highly supportive leadership team known for investing in people, collaboration, and growth.
- You'll work alongside experienced technical leaders while partnering with some of the biggest brands in the world.
- Help build a new operating model for enterprise support at a company leading the conversation around AI-powered customer experience.
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