Aligning LLMs for Multilingual Consistency in Enterprise Applications

arXiv — cs.CLTuesday, October 28, 2025 at 4:00:00 AM
Large language models (LLMs) are falling short in global enterprise applications due to significant performance disparities between high-resource languages like English and mid/low-resource languages. This inconsistency can lead to poor customer experiences and operational challenges in multilingual environments, such as customer support and content moderation. Addressing these gaps is crucial for businesses aiming to provide reliable and effective services across diverse linguistic landscapes.
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