You will learn how machine can be trained to make sense of
language humans use to interact. You will come across many NLP
algorithms that teach the computational models about Lexical
processing, basic syntactic processing. You will learn the
mechanism Google translator uses, to understand the context of
language and converts to a different language. You will build a
chat-bot using an open-source tool Rasa, which is a text and
voice-based conversations, understand messages, hold conversations,
and connect to messaging channels and APIs. You will also learn to
train the model you have created on NLU.
The machine cannot be trained to understand or process data by traditional hand coded programs that rely heavily on very specific conditions. The moment there is a change in input, the hand coded program is rendered useless. So, rather than having to code possible conversations, we require a model that enables the system to make sense of context. By the end of the course you will be able to build NLP models that can summarize blocks of text to extract most important ideas, sentiment analysis to extract the sentiments from given block of text, identification of type entity extracted. All the projects included in this course are Real-World projects.