超要約:ベンガル語の数学問題、AIがサクサク解くよ!教育とかビジネスに革命かも💖
✨ ギャル的キラキラポイント ✨ ● ベンガル語で数学の問題を解く、ってのがスゴくない?😍 ● 低リソース言語(マイナーな言葉)でもAIが活躍できるって、未来すぎる!🚀 ● 教育とかビジネスが、もっと楽しくなりそうじゃん?🎶
詳細解説いくよ~!
背景 ベンガル語(ベンガルご)っていう言葉、知ってる?人口多いのに、AIはあんまり得意じゃないの😢 でも、この研究で、ベンガル語でも数学の問題をスラスラ解けるAI「GANITLLM(ガニトム)」を作ったんだって!
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We present a Bengali mathematical reasoning model called GanitLLM (named after the Bangla word for mathematics, "Ganit"), together with a new difficulty-aware Bengali math corpus and a curriculum-based GRPO pipeline. Bengali is one of the world's most widely spoken languages, yet existing LLMs either reason in English and then translate, or simply fail on multi-step Bengali math, in part because reinforcement learning recipes are tuned for high-resource languages and collapse under reward sparsity in low-resource settings. To address this, we construct Ganit, a rigorously filtered and decontaminated Bengali math dataset with automatic difficulty tags derived from the pass@k of a strong evaluator model. Building on this dataset, we propose Curriculum-GRPO, which combines multi-stage training (SFT + GRPO) with difficulty-aware sampling and verifiable rewards for format, numerical correctness, and Bengali reasoning. On Bn-MGSM and Bn-MSVAMP, GanitLLM-4B improves over its Qwen3-4B base by +8 and +7 accuracy points, respectively, while increasing the percentage of Bengali reasoning tokens from 14% to over 88% and reducing average solution length from 943 to 193 words.