Data, Insights and Analytics Manager

XO
London
1 year ago
Applications closed

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Job Profile

Vista Global is building the future of private air travel so the world can experience aviation as it was meant to be. There was a time when we waited in long lines, removed our shoes, and shuffled through crowded security checkpoints. We settled for search engines, commoditization, and a plethora of apps. Meanwhile, thousands of private jets sat on runways and in hangars depreciating in value, and 40% of the private planes in the sky were flying empty. No-one stopped to ask if there wasn’t a better way.

Through our proprietary algorithms, and advanced mobile technology, private jet travel is now more accessible, convenient, and infinitely more efficient. Our vision to create and optimize socially-powered air travel has been backed by numerous strategic and institutional investors. Our members – global leaders in business, sports, entertainment, and culture – have helped define what Vista Global is today.

Founded by Thomas Flohr, the group’s mission is to further industrialize and consolidate the fragmented business aviation industry, and to lead the change to provide customers with the most advanced flying solutions and the very best value, anytime, anywhere around the globe.

Your Responsibilities

Work closely with the Sales, Analytics and Data Science team to generate insights on leads, conversion trends, pricing, etc. while differentiating between causation and correlation factors Leverage the insights to inform AI model for sales funnel optimization, pricing and fleet utilization Lead the collection, analysis, and interpretation of data from various sources. Use statistical tools to identify trends, patterns, and insights that can influence business decisions. Prepare and present comprehensive reports to stakeholders. Ensure findings are communicated in a clear, concise, and impactful manner, translating complex data into understandable insights. Deepen product management, analytical, storytelling, and communication skills Manage and mentor junior team members. Provide guidance and support in their projects, fostering a culture of learning and growth.

Required Skills, Qualifications, and Experience

Bachelor’s or Master’s degree in Business Administration, Business Analytics, Data Science, Computer Science, or a related field. Minimum of 5 years of experience in Data analytics Strong analytical skills with the ability to collect, organize, analyze, and disseminate significant amounts of information with attention to detail and accuracy Excellent communication and interpersonal skills, with the ability to articulate insights to both technical and non-technical audiences. Highly proficient in Tableau and SQL Demonstrated ability to work collaboratively in a cross-functional team environment and influence strategic decisions based on data insights.

At Vista Global, we encourage diverse ideas and welcome people from all backgrounds. If you are curious, passionate and believe in #OneTeam come join us in creating the best flying experience for our customers.

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