SYSTEMIQ in London Salary

69 CARTER LANE CARTER LANE LONDON EC4V 5EQ UNITED KINGDOM
TIN: 09950762

SYSTEMIQ
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Estimated salary

£ 3583

Median salary at SYSTEMIQ

£ 2500 Lowest salary
£ 4111 The average salary
£ 6250 Highest salary

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SYSTEMIQ is looking for employees for positions:

data scientist

Responsibility

  • company Description
  • SYSTEMIQ is a different kind of company
  • work as part of a project team to deliver analytical insights to SYSTEMIQ’s impact partners
  • create bespoke models and tools to accelerate and scale system change for clients
  • build out ANALYTIQ’s internal suite of tools that enable accelerated impact by our SYSTEMIQ project teams
  • but, so far, most change has been incremental
  • liaise with SYSTEMIQ’s platforms on energy, materials, nature, finance and cities to design and build new tools
  • we need to transform economic systems much faster to hit the targets and stop the degradation of natural resources

Requirements

  • we're seeking individuals with a strong analytical track record, proven achievements, and impactful problem-solving skills
  • you share SYSTEMIQ's passion for system change
  • this role is available in our offices in London, Amsterdam or Munich
  • strong quantitative background, owning a master’s degree or higher in mathematics, physics, engineering, computer science or equivalent area
  • recent graduate or up to 2 years of work experience
  • A strong track record of working with geospatial vector and raster data, conducting GIS assessments, and conducting remote sensing analysis
  • experience working with various GIS software applications such as ArcGIS, QGIS, Google Earth Engine, etc
  • A strong track record of building large energy, materials or nature system models and/or complex applications in data poor environments