Bhasha-Rupantarika: Algorithm-Hardware Co-design approach for Multilingual Neural Machine Translation
By: Mukul Lokhande , Tanushree Dewangan , Mohd Sharik Mansoori and more
Potential Business Impact:
Translates many languages on small devices.
This paper introduces Bhasha-Rupantarika, a light and efficient multilingual translation system tailored through algorithm-hardware codesign for resource-limited settings. The method investigates model deployment at sub-octet precision levels (FP8, INT8, INT4, and FP4), with experimental results indicating a 4.1x reduction in model size (FP4) and a 4.2x speedup in inference speed, which correlates with an increased throughput of 66 tokens/s (improvement by 4.8x). This underscores the importance of ultra-low precision quantization for real-time deployment in IoT devices using FPGA accelerators, achieving performance on par with expectations. Our evaluation covers bidirectional translation between Indian and international languages, showcasing its adaptability in low-resource linguistic contexts. The FPGA deployment demonstrated a 1.96x reduction in LUTs and a 1.65x decrease in FFs, resulting in a 2.2x enhancement in throughput compared to OPU and a 4.6x enhancement compared to HPTA. Overall, the evaluation provides a viable solution based on quantisation-aware translation along with hardware efficiency suitable for deployable multilingual AI systems. The entire codes [https://github.com/mukullokhande99/Bhasha-Rupantarika/] and dataset for reproducibility are publicly available, facilitating rapid integration and further development by researchers.
Similar Papers
AdiBhashaa: A Community-Curated Benchmark for Machine Translation into Indian Tribal Languages
Computation and Language
Helps tribal languages speak to computers.
BhashaBench V1: A Comprehensive Benchmark for the Quadrant of Indic Domains
Computation and Language
Tests AI on Indian knowledge in English and Hindi.
BhashaBench V1: A Comprehensive Benchmark for the Quadrant of Indic Domains
Computation and Language
Tests AI on India's specific knowledge.