Text Mining & Natural Language Understanding at Scale Training Video
2016-07-27 | SKU: 02392 | .MP4, AVC, 1000 kbps, 1280x720 | English, AAC, 128 kbps, 2 Ch | 2.25 hours | 871 MB
Instructors: David Talby, Claudiu Branzan

A text mining system must go way beyond indexing and search to appear truly intelligent. First, it should understand language beyond keyword matching. For example, it should be able to distinguish the critical difference between "Jane has the flu" and "Jane had the flu when she was 9". Second, it should be capable of making likely inferences even if they're not explicitly written.

For example, inferring that Jane may have the flu if she has had a fever, headache, fatigue, and runny nose for three days. And third, it should do its work as part of a robust, scalable, efficient and easy to extend system. This course teaches software engineers and data scientists how to build intelligent natural language understanding (NLU) based text mining systems at scale using Java, Scala and Spark for distributed processing.

* Learn the meaning of natural language understanding (NLU) and its use in text mining

* Discover how to build a natural language processing (NLP) pipeline within a big data framework

* Recognize the differences between NLP pipelines and other approaches to semantic text mining

* Learn about standard UIMA annotators, custom annotators, and machine learned annotators

* Discover how different types of annotators are composed into a text processing pipeline

* Use machine learning to generate annotators and apply them within a data pipeline

* See pipeline architectures that incorporate Kafka, Spark, SparkSQL, Cassandra, and ElasticSearch