Language barriers impede global communication in commerce, science, and culture. Traditional translation methods (rule-based or phrase-based) are often slow, error-prone, and unable to handle nuances of context or low-resource languages. In this work, we propose an AI-powered language translation system leveraging neural machine translation (NMT) with Transformer-based models. Our system trains on large multilingual corpora using attention mechanismsand sub-word tokenization, enabling it to learn translations end-to-end ar5iv.org papers.neurips.cc. It produces high-quality translations for multiple languages, runs in real-time (via optimized inference), and can be deployed on cloud or mobile platforms. Experimental results show BLEU scores on standard benchmarks that match or exceed current state-of-art (e.g. achieving competitive English→French/German scores) papers.neurips.cc arxiv.org. A human evaluation indicates ~60% fewer errors than legacy phrase-based systems ar5iv.org. The proposed AI translation pipeline reduces reliance on human translators for routine tasks, facilitates communication across languages (even in low-resource settings), and offers a scalable, accessible solution for global information exchange.
V Saratchandran Nair (Thu,) studied this question.
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