Data Scientist

GHGSAT
London
1 year ago
Applications closed

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Data Scientist

Data Scientist

Data Scientist

Data Scientist

Data Scientist

Data Scientist

GHGSat is mapping and tracking the world's greenhouse gas (GHG) emitters. To accomplish this goal GHGSat operates its own satellite and aircraft sensors to collect emissions data, and uses these with third-party data to inform an analytics pipeline that: 

 

  • Detects and quantifies GHG emissions 
  • Identifies and classifies potential GHG emitters 
  • Generates valuable insights for our customers 

 

The successful candidate will extract, analyse, and interpret large amounts of structured and unstructured data from a range of proprietary and public sources, using modern data science techniques to develop emissions intelligence for GHGSat’s analytics products.  

Opportunities to contribute to the publication of scientific papers are possible. 

Requirements

Data Exploration and Curation 

  • Visualisation and storytelling. 
  • Discovering and evaluating new data sources. 
  • Keeping up to date with relevant scientific literature. 
  • Data preparation for machine learning (e.g. data modelling, automatic data cleaning). 
  • Develop and cultivate data quality best practices. 

 

Model Design, Development and Deployment 

  • Develop algorithms, machine learning models and statistical methods. 
  • Validate, improve, and integrate algorithms and models developed by others. 
  • Operationalise machine learning pipelines on the required infrastructure with the support of engineers. 

 

Derive, Deliver and Communicate Insight 

  • Present results to technical and non-technical audiences. 
  • Work collaboratively within the Analytics Team and with other subject matter experts to design and prototype solutions for analytics problems. 
  • Demonstrate strong communication skills and critical, bold thinking in all situations. 

 

Rapid Innovation and Prototyping 

  • Build prototypes quickly to address applied scientific and business problems. 
  • Provide high attention to detail with ability to manage and resolve multiple priorities, project complexities and uncertainties. 
  • Keep abreast of latest developments in data science and machine learning. 

 

Desired Attributes:

  • Impact-Driven Mindset: Passionate about contributing to environmental sustainability and climate impact. 
  • Self-motivated and collaborative worker: Able to work proactively and as part of a team, using initiative to uncover solutions to improve workflows and data processes. 
  • Continuous Learner: Continuously seeks out new data science techniques, technologies, and datasets to incorporate into projects. 
  • Effective Communicator: Able to convey technical information effectively to both technical and non-technical audiences, promoting a collaborative environment. 

 

Skills and qualifications:

  • Experience: 1-2+ years of experience as a data scientist, with expertise in exploring data and developing machine learning solutions.  
  • Education: MSc or higher in physics, computer science, data science, engineering, theoretical chemistry or biology, mathematics, computational science, or a related field. 
  • Technical proficiency: Confidence writing code (Python, Git) and willingness to learn supporting technologies (e.g. Docker, AWS). 
  • Core competencies: Knowledge and experience in three or more of the following: 
    • Exploratory data analysis (e.g. Pandas, NumPy
    • Statistics and machine learning (e.g. Scikit-learn, time-series analysis, Bayesian techniques
    • Mathematical modelling of physical systems (e.g. physics, chemistry, systems biology
    • Deep learning, computer vision and image processing (e.g. PyTorch, Detectron, OpenCV
    • Geospatial modelling (e.g. Rasterio, Xarray, GeoPandas, QGIS
  • Analytical skills. Strong analytical and problem-solving skills with the ability to work collaboratively in a cross-functional team. 
  • Must be a UK resident with valid work authorization. 

 

We understand that you may not have experience with every tool or technique listed here. If you have a strong foundation in data science and a willingness to learn, we encourage you to apply! 

 

GHGSat offers a creative and highly motivating work environment. We offer competitive salaries, health and social benefits including flex time and continuing development. We are an open and transparent company, and we are committed to preserving a diverse and inclusive work environment. 

Benefits

  • Competitive salary + stock options for all full-time employees  
  • Full comprehensive benefits
  • Statutory leave + paid time off
  • Flexible hybrid work environment 

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