GERMAN-SPEAKING Real Estate Analyst

City of London
1 year ago
Applications closed

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Rare opportunity to join a Pan-Euro Real Estate Investment Manager, set up by partners who enjoy significant experience from prior roles in top 10 global Private Equity and Investment Banks. The firm is growing and require a German-speaking analyst to join the team as investment transactions and value-add strategies increase across western Europe.

Client Details

Headquartered in London (with complementary offices in western Europe), our client invests and develops Logistics Real Estate across key locations on the Continent. They are committed to driving long-term and sustainable investments for their top-level institutional capital partners

Description

Supporting and owning detailed financial modelling and analysis of investment opportunities incorporating debt, tax and partnership and incentive structures
Feeding into and drafting detailed investment memos and presentations for internal and external use, and capital partners
Assisting the acquisition team due diligence on investment and development opportunities, eventually taking on project management duties
Sourcing, analysis and recording of key market and comparable investment data
Supporting the Asset Management team with ongoing AM and portfolio reporting
Collaborate with and support the Finance, Investor Relations and ESG functions
Creating and owning advanced PowerPoint presentations and Excel models to support ad-hoc pieces of analysis and strategic work.
Investigating and leveraging data and AI-enabled tools to support all analytical work. Analyse property market trends and investment opportunities.Profile

The successful German-speaking Real Estate Analyst should have:

Real Estate / Built Environment / Real Estate Finance / Economics / Maths (or similar) Degree at high level
Fluency (written and spoken) in both German and English
12-18 months experience in a similar role at an established real estate / investment firm.
Advanced Excel and PowerPoint skills, including the ability to build complex financial models.
Strong analytical skills with the ability to forensically analyse data, ability to on-board new and complex ideas quickly
Familiarity with data science and tools such as SQL, PowerBI and AI/LLMs desirable
Highly motivated to produce top-quality work as well as learn new markets / skills
Strong interpersonal skills, ability to seek guidance / help where necessary
Prior work experience in PERE, Investment Banking, Real Estate Investment management highly desirable.Job Offer

Competitive basic salary + bonus + benefits
Significant annual holiday and overseas working policy

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