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Complete NLP Training Basic to Advance level
NLP Training
Session 1 - 4th Sept-Difference between NLP and nlu | sentiment analysis | implementation of textblob | polarity | subjectivity | objectivity (109:15)
Session 1 - Summary
Session 2 - 5th Sept-Implementation on dataset | data handling with pandas | textblob implementation on data (82:44)
Session 2 - Summary
Session 3 - 6th Sept-Tokenization | lemmatization | stemming | implementation of nltk (103:26)
Session 3 - Summary
Session 4 - 7th Sept-nltk installation | WordNet | Spacy | Automatic Conversion from uppercase to lowercase (113:47)
Session 4 - Summary
Session 5 - 11th Sept - Revision Session (101:52)
Session 6 - 12th Sept-NLU |introduction of spacy |token ID|read token|mapping| (101:52)
Session 7 - 18th Sept-NER | Spacy using rule based matching |Phrase Matcher |Hosting on Local Ip (95:57)
Session 8 - 19th Sept-Pipeline | Tokenizer |Analyze pipe using Spacy| add pipe |@language (95:46)
Session 9 - 20th Sept-Spacy Usage | Creating And Adding Custom Attributes| Register Token Extension (95:46)
Session 10 - 22nd Sept - Practice Session (49:17)
Session 11 - 28th Sept-use case of text classification|stemming or lemma| (96:10)
Session 12 - 4th Oct-text classification|TF-IDF|classification model| (102:38)
Extra Session
Visualization | Exploratory data analysis | One hot label encoding | Nan | Binary class | logistic regression | confusion matrix (118:54)
Activation function | DL | Regression | Classification | Feed forward Forward Propogation | Back propagation | Keras (123:47)
Binary Classification | Model using sigmoid function | Logistic regression | visuals, searborn | graph | bar graph | Discrete variable | frequency distribution table | One hot encoding | Feature Engineering | Missing value resolving using feature engineering | Imputation (267:58)
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Session 1 - Summary
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