Summary

In conclusion, there are many NLP applications around us that we interact with in our day-to-day routines. NLP is difficult and complex, and some of these problems are still unsolved or do not yet have perfect solutions. So anybody who is looking for problems in NLP, try exploring the literature around that. It's a great time to be an NLP researcher. In the era of Big Data, NLP applications are very popular. Many research labs and organizations are currently working on NLP applications such as speech recognition, search, and text classification.

I believe we have learned a lot up until this chapter. For the next couple of chapters, we will delve deeply into some of the applications described here. We have reached a point where we know enough NLP related preprocessing tools and also have a basic understanding about some of the most popular NLP applications. I hope you leverage some of this learning to build a version of an NLP application.

In the next chapter, we will start with some of the important NLP applications, such as text classification, text clustering, and topic modeling. We will move slightly away from the pure NLTK applications on to how NLTK can be used in conjunction with other libraries.

..................Content has been hidden....................

You can't read the all page of ebook, please click here login for view all page.
Reset