Mitrasamgraha: A Comprehensive Classical Sanskrit Machine Translation Dataset
Sebastian Nehrdich, David Allport, Sven Sellmer, Jivnesh Sandhan, Manoj Balaji Jagadeeshan, Pawan Goyal, Sujeet Kumar, Kurt Keutzer

TL;DR
This paper introduces Mitrasamgraha, a large, high-quality Sanskrit-English translation dataset covering diverse domains and historical periods, enabling detailed analysis and benchmarking of translation models for complex classical Sanskrit texts.
Contribution
It provides the largest and most comprehensive Sanskrit translation dataset to date, with domain and temporal annotations, and demonstrates its utility through benchmarking and fine-tuning translation models.
Findings
Fine-tuned models show significant improvements on the dataset.
Challenges remain in translating complex compounds and metaphors.
Temporal and domain annotations enable detailed analysis of model performance.
Abstract
While machine translation is regarded as a "solved problem" for many high-resource languages, close analysis quickly reveals that this is not the case for content that shows challenges such as poetic language, philosophical concepts, multi-layered metaphorical expressions, and more. Sanskrit literature is a prime example of this, as it combines a large number of such challenges in addition to inherent linguistic features like sandhi, compounding, and heavy morphology, which further complicate NLP downstream tasks. It spans multiple millennia of text production time as well as a large breadth of different domains, ranging from ritual formulas via epic narratives, philosophical treatises, poetic verses up to scientific material. As of now, there is a strong lack of publicly available resources that cover these different domains and temporal layers of Sanskrit. We therefore introduce…
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Taxonomy
TopicsNatural Language Processing Techniques · Topic Modeling · Digital Humanities and Scholarship
