The Wildlife Trust | CRM Insights Manager

The Wildlife Trust
Newark-on-Trent
4 months ago
Applications closed

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CRM Insights Manager
Salary: Up to £35,000
Location: Home based with occasional travel to Newark office/UK
Full time: 35 hours per week (Mon-Fri)
Permanent contract
Closing date for applications: 5th January 2025
First interview: 14th January 2025
Second interview: 20th January 2025
About Us
The Wildlife Trusts are a federation of 46 charities, supported by a central charity, the Royal Society of Wildlife Trusts. Together we have over 940,000 members, 32,500 volunteers and 3,400 staff across the UK. From precious peatlands and wildflower meadows, to Britains lost rainforests, Wildlife Trusts have restored and care for some of the most special places for wildlife in the UK.
Weve re-wiggled rivers, brought back beavers to the UK and helped thousands of communities take matters into their own hands to bring back nature on their doorsteps. Collectively we manage more than 2,600 nature reserves, operate 123 visitor and education centres and own 29 working farms. We undertake research, we campaign for wildlife and wild places under threat, and we help people access nature.
But were not standing still. The next few years will be critical in determining what kind of world we all live in. We need to urgently reverse the loss of wildlife and put nature into recovery at scale if we are to prevent climate and ecological disaster. We have an ambitious new strategy to address this, setting out our bold vision of nature in recovery with many more people taking action for wildlife.
About You
Are you passionate about using data to drive strategic fundraising decisions and make a real difference to nature in the UK?
We are seeking an exceptional supporter data specialist to join one of the UKs best loved nature charities at an exciting time in our 112-year history. Working closely with our fundraising teams, senior leadership team and Wildlife Trust colleagues across the UK, you will be instrumental in enhancing our fundraising through developing insights and processes that take our relationship management to the next level.
You will be a confident and engaging database expert, with the ability to generate insights into relationships from a range of audiences from businesses, through campaigners to members and major donors. Your recommendations and insights will enhance fundraising and the impact of these relationships both within the central charity, The Royal Society of Wildlife Trusts (RSWT) and the wider Wildlife Trusts federation.
The Wildlife Trusts value passion, respect, trust, integrity, pragmatic activism and strength in diversity. Whilst we are passionate in promoting our aims, we are not judgmental and are inclusive. We particularly encourage applications from people who are underrepresented within our sector, including people from minority backgrounds and people with disabilities.We are committed to creating a movement that recognises and truly values individual differences and identities.
The Royal Society of Wildlife Trusts takes our safeguarding responsibilities extremely seriously. RSWT is committed to safeguarding and promoting the welfare of children and adults at risk. For applicable roles, applicants must be willing to undergo checks with past employers and Disclosure and Barring Service checks at the eligible level.
As a Disability Confident employer, we are committed to offering an interview to anyone with a disability that meets all the essential criteria for the post. Please let us know if you require any adjustments to make our recruitment process more accessible.
RSWT are committed to increasing the diversity of its staff through its Levelling the Field recruitment pledge and will put any ethnic minority applicants that meet all the essential criteria for the post through to the next stage of recruitment.
Please do not use artificial intelligence tools to assist you to complete the application form. We may not accept applications that have been completed utilising AI tools.

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