EMEA Solutions Engineer: Data Analytics & Presales

Sigma Computing
London
1 week ago
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A leading analytics company in London is looking for a Solutions Engineer to drive customer success through analytics and business intelligence solutions. The role involves managing presales activities, presenting customized demos, and engaging with clients to understand their business needs. A Bachelor's degree in a technical field and experience in analytics or sales engineering are required. The company offers flexible time off and a dog-friendly office.
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