Healthcare Nlp For Data Scientists
Published 4/2024
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 7.47 GB | Duration: 13h 41m
Published 4/2024
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 7.47 GB | Duration: 13h 41m
Unlock your NLP power with Healthcare NLP, the most popular NLP library in the healthcare industry
What you'll learn
Utilize 20,000+ State-of-the-Art NLP models that specalizes in solving healthcare problems in 200+ languages
Train & tune your own NLP models by leveraging the Spark NLP's pre-defined classifier architecture on your own datasets
Perform popular NLP tasks like clinical entity recognition, entity resolution (mapping entities to medical codes), assertion status detection
Deploy models as API's with NLP Server, a Docker container that contains all Spark NLPs capabilities
Requirements
Hands-on understanding of Python is needed
Recommended: basic understanding of machine learning and natural language processing
Recommended: take the Spark NLP for Data Scientists course
Nice to have: basic understanding of Apache Spark
Description
Hello everyone, welcome to the Healthcare NLP for Data Scientists course, offered by John Snow Labs, the creator of Healthcare NLP library! In this course, you will explore the extensive functionalities of John Snow Labs’ Healthcare NLP & LLM library, designed to provide practical skills and industry insights for data scientists professionals in healthcare.The course covers foundational NLP techniques, including clinical entity recognition, entity resolution, assertion status detection (negation detection), relation extraction, de-identification, text summarization, keyword extraction, and text classification. There are over 13 hours of lectures with 70+ Python notebooks for you to review and use. You'll learn to leverage pre-trained models and train new models for your specific healthcare challenges.We offer both hands-on coding notebooks with lectures and accompanying blog posts for you to review and apply. By the end of the program, you'll emerge equipped with the skills and insights needed to excel in the dynamic landscape of healthcare NLP and LLM.We recommend that you take the Spark NLP for Data Scientist first to have an understading of our library and platform, that you have working experience using Python, some knowledge on Spark dataframe structure, and knowledge on NLP to make the most out of the course. Of course having some healthcare experience is always a plus.You will need a Healthcare NLP trial license for the course, so please reach out and get one to get started with learning. Looking forward to seeing you in the course.
Overview
Section 1: Introduction
Lecture 1 Healthcare NLP for Data Scientists course overview
Lecture 2 Course Structure
Lecture 3 How to obtain a Healthcare NLP license for the course
Section 2: Text Embeddings
Lecture 4 AverageEmbeddings
Lecture 5 BertSentenceChunkEmbeddings
Lecture 6 ChunkSentenceSplitter
Lecture 7 EntityChunkEmbeddings
Section 3: Text Processing
Lecture 8 AnnotationMerger
Lecture 9 Replacer
Lecture 10 Chunk2Token
Lecture 11 ChunkKeyPhraseExtraction
Lecture 12 DateNormalizer
Lecture 13 DrugNormalizer
Lecture 14 IOBTagger
Lecture 15 NerDisambiguator
Lecture 16 NerChunker
Lecture 17 Flattener
Lecture 18 NerQuestionGenerator
Lecture 19 InternalDocumentSplitter
Section 4: NER
Lecture 20 RegexMatcher
Lecture 21 NerConverter
Lecture 22 Ner Model Inference
Lecture 23 NerModel
Lecture 24 BertForTokenClassifier
Lecture 25 ChunkFilterer
Lecture 26 ChunkFilterer Model Inference
Lecture 27 ChunkMerge Model Inference
Lecture 28 ChunkMergeModel
Lecture 29 ChunkConverter
Lecture 30 ContextualParserModel
Lecture 31 ZeroShotNerModel
Lecture 32 ContextualParser Model Inference
Lecture 33 EntityRuler
Lecture 34 TextMatcher
Section 5: Assertion Status Detection
Lecture 35 AssertionChunkConverter
Lecture 36 AssertionFilterer
Lecture 37 AssertionDLModel
Lecture 38 AssertionLogReg Model Inference
Lecture 39 AssertionLogRegModel
Lecture 40 AssertionDL Model Inference
Section 6: Relation Extraction
Lecture 41 RelationExtractionModel
Lecture 42 RelationExtractionDLModel
Lecture 43 RelationExtraction Model Inference Pt1
Lecture 44 RelationExtraction Model Inference Pt2
Lecture 45 RENerChunksFilter
Lecture 46 ZeroShotRelationExtractionModel
Section 7: Text Classification
Lecture 47 FeaturesAssembler
Lecture 48 DistilBertForSequenceClassification
Lecture 49 BertForSequenceClassification
Lecture 50 GenericClassifier Model Inference
Lecture 51 GenericSVMClassifierModel
Lecture 52 GenericLogRegClassifier Model Inference
Lecture 53 GenericClassifierModel
Lecture 54 GenericSVMClassifier Model Inference
Lecture 55 DocumentMLClassifier Model Inference
Lecture 56 DocumentMLClassifierModel
Lecture 57 FewShotClassifier
Lecture 58 WindowedSentenceModel
Lecture 59 DocumentLogRegClassifier
Lecture 60 DocumentFiltererByClassifier
Section 8: Entity Resolution for Medical Terminologies
Lecture 61 Resolution2Chunk
Lecture 62 ChunkMapperModel
Lecture 63 DocMapperModel
Lecture 64 DocMapper Model Inference
Lecture 65 ChunkMapper Model Inference Pt1
Lecture 66 ChunkMapper Model Inference Pt2
Lecture 67 ChunkMapperFilterer
Lecture 68 Doc2Chunk
Lecture 69 Router
Lecture 70 ResolverMerger
Lecture 71 SentenceEntityResolverModel
Lecture 72 SentenceEntityResolver Model Inference
Section 9: De-identification and Obfuscate PHI Data
Lecture 73 ReIdentification
Lecture 74 NameChunkObfuscator Model Inference
Lecture 75 NameChunkObfuscator
Lecture 76 DocumentHashCoder
Lecture 77 DeIdentification_DeIdentificationModel Pt1
Lecture 78 DeIdentification_DeIdentificationModel Pt2
Section 10: Text Summarization
Lecture 79 Summarizer
Lecture 80 ExtractiveSummarization
Section 11: QuestionAnswering
Lecture 81 QuestionAnswering
Section 12: Text Generation
Lecture 82 TextGenerator
Data scientists who are looking to use Natural Language Processing at scale,Data scientists looking to build custom natural language understanding applications,Data Analysts who want to apply Natural Language Processing,Data scientists who are looking to leverage vast and deep healthcare knowledge in NLP to help achieve business objectives

