ESG Data Manager
- Employer
- Madison Berkeley
- Location
- London / Manchester / Cambridge / Bristol
- Salary
- £35,000 - £50,000 + Comprehensive Package (DOE)
- Closing date
- 6 Feb 2023
View more
- Job position
- Manager
- Contract Type
- Permanent
- Hours
- Full Time
- Job Function
- Sustainability
Job Details
Do you have a passion for sustainability within Real Estate and want to make a positive impact on the industry?
We’re working with a leading real estate company seeking an ESG Data Manager to join their growing team. In this role, you will be responsible for collecting, organising, and analysing ESG data for their portfolio of properties. You will work closely with various teams to ensure that the data is accurate and up-to-date, and you will use your analytical skills to identify trends and areas for improvement.
To be successful in this role, you will need to have a strong background in data analysis and management, as well as experience working with ESG data (within real estate is a distinct advantage but will look at candidates outside of this).
You should be proficient in a variety of software and tools, including Excel. Power BI experience would be great but training can be provided.
If you are a highly motivated and organised individual with a strong commitment to sustainability, we encourage you to apply for this exciting opportunity. Please do get in touch me on LinkedIn - Freddie Bulgin or email freddie@madisonberkeley.com
Company
Madison Berkeley, a boutique real estate recruitment specialist, offering you a unique and personal approach to recruitment services within real estate. Working with a variety of property clients including developers, client side and consultancies.
- Website
- http://www.madisonberkeley.com/
- Telephone
- 07887 874995
- Location
-
91 Wimpole Street
Marylebone
London
London
W1G 0EF
GB
Apply for ESG Data Manager
Fields marked with an asterisk (*) are required
Get job alerts
Create a job alert and receive personalised job recommendations straight to your inbox.
Create alert