German Names to English Translation Model

Model Overview

This translation model is specifically designed to accurately and fluently translate German names and surnames into English.

Intended Uses and Limitations

This model is built for Spark IT enterprise looking to automate the translation process of German names and surnames into English.

Training and Evaluation Data

This model has been trained on a diverse dataset consisting of over 68,493 lines of data, encompassing a wide range of Hindi names and surnames along with their English counterparts. Evaluation data has been carefully selected to ensure reliable and accurate translation performance.

Training Procedure

  • 1 days of training

Hardware Environment:

  • Azure Studio
  • Standard_DS12_v2
  • 4 cores, 28GB RAM, 56GB storage
  • Data manipulation and training on medium-sized datasets (1-10GB)
  • 6 cores
  • Loss: 0.4618
  • Bleu: 70.7674
  • Gen Len: 10.2548

Training results

Training Loss Epoch Step Validation Loss Bleu Gen Len
1.0715 1.0 1600 0.9902 41.5519 5.8328
0.8185 2.0 3200 0.9547 53.8222 5.7988
0.6909 3.0 4800 0.9527 54.7846 5.8169
0.6038 4.0 6400 0.9496 55.6009 5.8406

Framework versions

  • Transformers 4.39.1
  • Pytorch 2.2.2+cpu
  • Datasets 2.15.0
  • Tokenizers 0.15.2
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