Senior Deal Desk Analyst

Yext
London
1 month ago
Applications closed

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Yext (NYSE: YEXT) is the leading digital presence platform for multi-location brands, with thousands of customers worldwide. With one central platform, brands can seamlessly deliver consistent, accurate, and engaging experiences and meaningfully connect with customers anywhere in the digital world. Our AI and machine learning technology powers the knowledge behind every customer engagement, which is only possible through our team of innovators and enthusiastic collaborators. Join us and experience firsthand why we are consistently recognized as a ‘Best Place to Work’ globally by industry leaders such as Built In, Fortune, and Great Place To Work!

The Deal Desk team serves as trusted advisors to Yext's sales organisation, enabling them to focus on selling while we optimise complex deal structures, ensuring alignment with company goals and driving profitability. We play a critical role in facilitating scalable growth by providing pricing guidance, structuring deals and enhancing operational efficiency across the sales process. As aSenior Deal Desk Analystin EMEA, you will collaborate closely with Sales, Finance, Legal, and Operations teams to ensure deals are structured strategically and effectively.

What You'll Do

  1. Deal Structuring and Analysis
    • Serve as a trusted advisor to the sales team, providing guidance on deal structuring, pricing, and contract terms.
    • Analyze deal profitability, margins, and risks, balancing customer needs with business objectives.
  2. Cross-Functional Collaboration and Process Improvement
    • Partner with a wide range of teams across the business to drive deal closure and ensure contractual/operational compliance.
    • Develop and maintain templates and playbooks to streamline deal approvals.
  3. Reporting and Insights
    • Analyze deal trends and generate reports to inform business decisions.
    • Create and maintain dashboards to track KPIs, including approval cycle times, discount rates, and ACV metrics.
  4. Training and Enablement
    • Train sales and cross-functional teams on deal desk processes, pricing policies, and approval workflows.

What You Have

  1. Bachelor’s degree in Finance, Business Administration, or a related field.
  2. 5+ years of experience in Deal Desk, Sales Operations, Revenue Operations, FP&A or a similar Finance role in a B2B software environment.
  3. Proficiency in CRM tools (e.g., Salesforce), CPQ platforms, and Excel.
  4. Exceptional analytical, communication and interpersonal skills, with an ability to influence and collaborate across departments.
  5. Strong attention to detail and ability to thrive in a fast-paced environment.

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