German Speaking Team Lead - Credit Analyst

London
6 days ago
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A thrilling opportunity has arisen for a German-speaking Team Lead Credit Analyst to join an innovative fintech company, either at their Frankfurt office, their new Berlin location, or their London headquarters! This is a permanent full-time role, to work on a hybrid scheme 2 days per week from the office based in the city centre.

Your Key Responsibilities:

Leading, developing, and training a team of credit analysts.
Providing structured feedback to enhance team performance.
Supporting complex credit decisions and optimizing processes with data science teams.
Using data-driven insights to assess loan applications efficiently.About You:

The ideal candidate is a strategic leader with strong analytical skills and a passion for empowering teams. With experience in credit analysis, lending, or underwriting, you thrive in a fast-paced environment and have a deep understanding of risk and revenue factors in SME financing. You'll be joining a dynamic, diverse team with opportunities for career growth, training, and unique perks such as company Summer and Winter trips, employee stock ownership program, a sabbatical after 4 years, and more!

Profile:

High Fluency in German and English to business standards (written and spoken).
Minimum 2 years of experience leading an operational team.
At least 4 years of experience in credit analysis, lending, or underwriting (SME sector preferred).
Strong expertise in financial statement analysis.
Excellent communication, leadership, and decision-making skills.
A proactive, solution-driven mindset with a keen eye for process improvements.To apply, please send your CV in English and in Word format to Alexia.
languagematters is acting as an employment agency in relation to this vacancy

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