Only those candidates can apply who:
1. are available for full time (in-office) internship
2. can start the internship between 1st Jun'20 and 6th Jul'20
3. are available for duration of 6 months
4. have relevant skills and interests
1. Expertise in key language technologies including machine translation or natural language processing
2. Proven background in machine learning and deep learning including deep neural networks, sequence-to-sequence models, etc.
3. In-depth knowledge of architectures like Transformers, Encoder-Decoder, LSTMs, RNNs, etc.
4. Hands-on experience with deep learning toolkits including Tensorflow, PyTorch, Keras, etc.
5. Ability to formulate a research problem, design, experiment and implement solutions in Python
6. Excellent spoken and written communication skills
7. Strong dedication and consistency towards long research projects
8. Good to have experience working with standard MT/NLP toolkits, e.g. Sockeye, OpenNMT, etc.
This is an in-office internship & will start in June.
The need for translating domain specific content such as legal documents, technical and non-technical documents, educational materials, government procedures and services is increasing exponentially. Most of the tools manufactured by Russia are written in Russian. These need to be translated efficiently into English to be of benefit to the Indian Navy.
This includes the automated translations for Standards (GOST), Operating Documents, Repair Technical Documents (RTD), Technical Drawings, Contracts, Supplementary Agreements (SAs), Price Catalogues, Speeches, Minutes of Meetings, etc. These documents are available in formats like Word, Excel, PDF, Power Point, Image etc. The translation process presently being undertaken by RTC is manual.
Manual Translation of documents is evidently tedious and time intensive. Hence the goal is to build processes and models that would lead to enhanced translation tools enabling large-scale translation of domain specific content into English. We propose an online framework for translating Russian to English.
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