Data Engineer

Hays Specialist Recruitment Limited
Hampshire
1 month ago
Applications closed

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Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Your new companyYou will be working at the UK's largest public ultra-rapid electric vehicle charging network, known for its reliability, simplicity, and customer-first approach. Founded in 2016, the company operates high-power DC chargers ranging from 50kW to 160kW, delivering fast, hassle-free charging across convenient locations nationwide. The company continues to expand rapidly, with over 1,700-1,800 live chargers across the UK as of late 2024 and a growing presence in Europe, supported entirely by 100% renewable energy.With chargers positioned at popular retail and hospitality partners such as McDonald's, Costa Coffee and Bannatyne Health Club this company enables drivers to "recharge" themselves while charging their vehicles. Their focus on user convenience includes simple contactless payments, transparent pricing, and a reputation for industry-leading reliability.Recognised as one of the most dependable networks in the UK, they continue to scale their infrastructure to meet growing EV demand, supporting the transition to cleaner, more sustainable transport nationwide. Your new roleYou'll work with the Senior Data Engineer and wider teams to maintain and improve InstaVolt's data warehouse and data pipelines. Your main focus will be integrating new data sources, building data models, fixing issues, and helping the team expand our data capabilities. This role is ideal for someone who enjoys problem-solving,...

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