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This Master's thesis focuses on robust AI inference within a WebAssembly (Wasm) engine. You will gain experience in Wasm fundamentals, bytecode structures, and AI inference workloads. The role involves analyzing Wasm bytecode for AI inference, investigating data flow during execution, and identifying areas for improvement in the Wasm engine to enhance robustness and reliability. You will also design and prototype approaches for data flow monitoring of AI inference within a Wasm engine. This is a temporary, 5-6 month role for the Winter Semester 2026/27.
Wintersemester 2026/27 - befristet auf 5 - 6 Monate
IHRE AUFGABEN
IHR PROFIL
Kontakt: Sarah Disch