FPMoE applies a sparse MoE architecture with per-language routed experts and a shared expert to improve LLM code generation on functional languages, outperforming fine-tuned baselines while matching larger models with 3B active parameters.
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FPMoE: A Sparse Mixture-of-Experts Approach to Functional Code Generation
FPMoE applies a sparse MoE architecture with per-language routed experts and a shared expert to improve LLM code generation on functional languages, outperforming fine-tuned baselines while matching larger models with 3B active parameters.