Data Analyst, Built Environment

Ridge and Partners LLP
Winchester
4 months ago
Applications closed

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Overview

We are recruiting a Data Analyst to join our Property Consultancy team. This role is based in the Winchester office and focuses on data collection, analysis, and forming asset management strategies for affordable housing.

Responsibilities
  • Assist with managing surveys and coordinating with Fieldwork Managers.
  • Set up new surveys and configure data.
  • Set up mobile devices for surveyors.
  • Perform data QA checks and validation in Power BI and MS Excel.
  • Provide monthly progress reports and updates in Power BI and MS Excel.
  • Handle confidential data.
  • Assist with preparing monthly fee accounts.
  • Prepare survey outputs including cost tables for reporting.
  • Provide input into asset management advice and support.
  • Undertake asset performance modelling.
  • Conduct Decent Homes and HHSRS assessments and validations.
  • Manage energy data to inform net zero carbon and sustainability strategies.
  • Develop in-house best practice data management.
  • Support and report to the Team Leader.
Qualifications
  • Analytical mind with excellent written and communication skills.
  • Experience with housing related systems (Civica/Keystone, NEC, PIMSS, etc.) would be advantageous.
  • Good working knowledge of MS Excel.
  • Knowledge of data analytical tools and reporting such as Power BI, AirTable, Python etc. would be beneficial.
  • Knowledge of construction technology for residential accommodation would be beneficial.


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