Bjak is a technology company focused on making financial services easy, fun and more rewarding for everyone
Applied AI Engineer – Finance Super App
Location
Austria
Posted
2 days ago
Salary
0
Seniority
Senior
Job Description
Applied AI Engineer – Finance Super App
BJAK
• Aufbau KI-gestützter Workflows, Assistenten, Agenten und Automatisierungssysteme. • Anwendung von KI in den Bereichen Kundenservice, CRM, Onboarding, Schadensfälle, Verlängerungen, Zahlungen, Betrieb und interne Werkzeuge. • Zusammenarbeit mit Produkt- und Engineering-Teams, um manuelle Prozesse in skalierbare KI-native Systeme umzuwandeln. • Integrationen mit LLMs, internen Daten, APIs, Dokumenten, Wissensdatenbanken und Geschäftssystemen aufbauen. • Entwurf von Evaluierungs-, Überwachungs- und Rückfall-Flows, damit KI-Ausgaben nützlich, sicher und zuverlässig sind. • Schnell Prototypisieren, mit Nutzern oder Betreibern testen und dann das, was funktioniert, in die Produktivumgebung bringen. • Verbesserung von Geschwindigkeit, Qualität und Konsistenz über Workflows hinweg, wo KI echten geschäftlichen Wert schafft.
Job Requirements
- Starke Softwareentwicklungserfahrung, vorzugsweise mit Python und Backend-Systemen.
- Praktische Erfahrung mit LLM-APIs, Agenten, RAG, Workflow-Automatisierung oder KI-Tools.
- Fähigkeit, KI-Systeme mit realen Produkten, Daten und Betriebsabläufen zu verbinden.
- Gute Urteilsfähigkeit, wo KI hilft und wo regelbasierte Systeme oder menschliche Überprüfung besser sind.
- Versteht Bewertung, Genauigkeit, Latenz, Kosten, Datenschutz und Ausfallmodi.
- Schneller Builder, der Prototypen, Tests und praktische Systeme verschiffen kann.
- Erfahrung im Fintech, Versicherung, Automatisierung von Supportprozessen, CRM oder Automatisierung von Betriebsabläufen ist ein großer Vorteil.
Benefits
- Flexibles Arbeitsumfeld
- Technische Schulungen
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