Sustainability Data Analyst

Allegis Global Solutions
London
4 days ago
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Location:London, UK

Work type:Hybrid

Contract duration:3 months

Payrate:TBC (PAYE/Umbrella, inside IR35)

Client:Global biopharma conglomerate



Working closely with the Sustainability team and a Tech development team you will:


  • Review and update our Client's consolidated database of Lifecycle assessment (LCA) impact factors including carbon emission factors
  • Review and cleanse existing emission factors in the dataset
  • Create an emission factor index to manage and prevent duplication of entries
  • Define new data fields to capture metadata associated with each emission factor to show provenance and history
  • Identify emission factors for materials used by our Client, and set up processes to download factors from external databases such as Ecoinvent and environmentally extended input-output (EEIO) database (EEIO) factor databases for annual maintenance of the Client's application.
  • Perform an impact assessment for any proposed changes to emission factors
  • Develop business processes for identifying and ingesting new emission factors developed by central LCA team, R&D LCA team or factors provided by suppliers through engagement with THE procurement team. Provide a feedback loop back to these teams to standardize which emission factors are used across the Client's company


A successful candidate has experience in:


  • Lifecycle Assessment (LCA):Strong knowledge of LCA methodologies, impact assessments, and carbon footprint analysis.
  • Data Management:Experience in managing large datasets, including cleansing, indexing, and metadata structuring.
  • Familiarity with Databases:Understanding of tools like Ecoinvent or EEIO databases, and proficiency in integrating external datasets.
  • Sustainability Expertise:A solid grasp of sustainability concepts, particularly related to emissions and environmental impact factors.
  • Attention to Detail:Sharp focus on accuracy while reviewing and updating emission factors.
  • Impact Assessment:Ability to predict and evaluate the implications of proposed changes.
  • Process Development:Skills in designing workflows and feedback loops that enhance efficiency and standardization.

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