Data Analytics Sales Specialist III, Google Cloud

Google Inc.
London
2 days ago
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  • Bachelor's degree or equivalent practical experience.
  • 10 years of experience in a sales role in the enterprise software or cloud space.
  • Experience selling data analytics or data management technologies to clients.
  • Experience with big data technologies or concepts, such as analytics warehousing, data processing, data transformation, data governance, data migrations, ETL, ELT, SQL, NoSQL, performance or scalability optimizations.

Preferred qualifications:

  • Experience with developing data warehousing, data lakes, batch/real-time event processing, streaming, data processing (ETL/ELT), data migrations, data visualization tools, and data governance on cloud native architectures.
  • Experience working with internal/external teams, including account teams, technical leads, procurement, and legal, build cases for transformation with implementation plans, and close agreements.
  • Experience supporting executive relationships, and developing new territories/accounts.
  • Experience prioritizing and planning sales activity and transformation strategies.
  • Knowledge of trends, products, and solutions in cloud and Data and Analytics (e.g., BigQuery, Looker, Dataproc, Pub/Sub), and with data analytics technology stack.

About the job

As a Data Analytics Sales Specialist, you will help us grow our Data Analytics business by building and expanding relationships with new and existing customers. In this role, you will work with customers to deliver true business value, pitch and demonstrate product functionality and provide a comprehensive overview of key business use cases. You will lead day-to-day relationships with cross-functional team members, serving as a solution lead within the sales organization. You will lead go-to-market strategies and sales plays, manage campaigns, and provide feedback to Product and Global Solutions Teams to inform our product solutions roadmap. You will shape customers' cloud and data analytics strategy and enable digital transformation. You will lead with empathy, while identifying innovative ways to multiply your impact and the impact of the team as a whole to drive the overall value for Google Cloud. Google Cloud accelerates every organization’s ability to digitally transform its business and industry. We deliver enterprise-grade solutions that leverage Google’s technology, and tools that help developers build more sustainably. Customers in more than 200 countries and territories turn to Google Cloud as their trusted partner to enable growth and solve their most critical business problems.


Responsibilities

  • Cultivate relationships with customers as a subject matter expert and trusted advisor, managing business cycles, identifying solution use cases, and influencing long-term direction of accounts.
  • Achieve or exceed quota and business and growth goals while forecasting and reporting your territory’s business.
  • Collaborate with Google accounts and cross-functional teams (e.g., customer engineering, marketing, customer success, product, engineering, channels) to develop go-to-market strategies, drive pipeline and business growth, close agreements, understand the customer, and provide excellent prospect and customer experience.
  • Execute account plans, including a broader enterprise plan across key industries, focus on building accounts.
  • Manage multiple customers and opportunities simultaneously, understanding each customer’s technology footprint and strategy, growth plans, business drivers, performers, and how they can transform their business using our technologies.

Google is proud to be an equal opportunity and affirmative action employer. We are committed to building a workforce that is representative of the users we serve, creating a culture of belonging, and providing an equal employment opportunity regardless of race, creed, color, religion, gender, sexual orientation, gender identity/expression, national origin, disability, age, genetic information, veteran status, marital status, pregnancy or related condition (including breastfeeding), expecting or parents-to-be, criminal histories consistent with legal requirements, or any other basis protected by law. See also Google's EEO Policy , Know your rights: workplace discrimination is illegal , Belonging at Google , and How we hire .


Google is a global company and, in order to facilitate efficient collaboration and communication globally, English proficiency is a requirement for all roles unless stated otherwise in the job posting.


To all recruitment agencies: Google does not accept agency resumes. Please do not forward resumes to our jobs alias, Google employees, or any other organization location. Google is not responsible for any fees related to unsolicited resumes.


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