Getting Started with NLP
In this live talk, I will share my experience on becoming a NLP engineer and researcher.
Slides: https://docs.google.com/presentation/d/1Tn-0kUMpaqT9SxZtPdYw1XE0pKcpt5EmFFp0zSZpyck/edit#slide=id.g77d794e33c_0_202
Some of the topics discussed will include, but not limited to:
- How the journey began
- Where and how I learned about NLP
- On becoming a researcher
- How to keep learning and staying updated with NLP research
- NLP syllabus and education
- Tips and guidance on how to approach NLP problems
- Getting published
- Collaborations and writing about NLP/ML
- Mentoring and getting involved in open-source NLP
Видео Getting Started with NLP канала Elvis Saravia
Slides: https://docs.google.com/presentation/d/1Tn-0kUMpaqT9SxZtPdYw1XE0pKcpt5EmFFp0zSZpyck/edit#slide=id.g77d794e33c_0_202
Some of the topics discussed will include, but not limited to:
- How the journey began
- Where and how I learned about NLP
- On becoming a researcher
- How to keep learning and staying updated with NLP research
- NLP syllabus and education
- Tips and guidance on how to approach NLP problems
- Getting published
- Collaborations and writing about NLP/ML
- Mentoring and getting involved in open-source NLP
Видео Getting Started with NLP канала Elvis Saravia
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