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    PYTHON 2022 - Machine Learning, NLP & Python-Cut to the Chase | Simpliv

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    Website https://www.simpliv.com/python/from-0-to-1-machine-learning-nlp-python-cut-to-the-chase | Edit Freely

    Category Python

    Deadline: December 30, 2022 | Date: December 30, 2022

    Venue/Country: Online Courses, U.S.A

    Updated: 2018-05-07 16:17:10 (GMT+9)

    Call For Papers - CFP

    Prerequisites: No prerequisites, knowledge of some undergraduate level mathematics would help but is not mandatory. Working knowledge of Python would be helpful if you want to run the source code that is provided.

    Taught by a Stanford-educated, ex-Googler and an IIT, IIM - educated ex-Flipkart lead analyst. This team has decades of practical experience in quant trading, analytics and e-commerce.

    This course is a down-to-earth, shy but confident take on machine learning techniques that you can put to work today

    Let’s parse that.

    The course is down-to-earth : it makes everything as simple as possible - but not simpler

    The course is shy but confident : It is authoritative, drawn from decades of practical experience -but shies away from needlessly complicating stuff.

    You can put ML to work today : If Machine Learning is a car, this car will have you driving today. It won't tell you what the carburetor is.

    The course is very visual : most of the techniques are explained with the help of animations to help you understand better.

    This course is practical as well : There are hundreds of lines of source code with comments that can be used directly to implement natural language processing and machine learning for text summarization, text classification in Python.

    The course is also quirky. The examples are irreverent. Lots of little touches: repetition, zooming out so we remember the big picture, active learning with plenty of quizzes. There’s also a peppy soundtrack, and art - all shown by studies to improve cognition and recall.

    What's Covered:

    Machine Learning:

    Supervised/Unsupervised learning, Classification, Clustering, Association Detection, Anomaly Detection, Dimensionality Reduction, Regression.

    Naive Bayes, K-nearest neighbours, Support Vector Machines, Artificial Neural Networks, K-means, Hierarchical clustering, Principal Components Analysis, Linear regression, Logistics regression, Random variables, Bayes theorem, Bias-variance tradeoff

    Natural Language Processing with Python:

    Corpora, stopwords, sentence and word parsing, auto-summarization, sentiment analysis (as a special case of classification), TF-IDF, Document Distance, Text summarization, Text classification with Naive Bayes and K-Nearest Neighbours and Clustering with K-Means

    Sentiment Analysis:

    Why it's useful, Approaches to solving - Rule-Based , ML-Based , Training , Feature Extraction, Sentiment Lexicons, Regular Expressions, Twitter API, Sentiment Analysis of Tweets with Python

    Mitigating Overfitting with Ensemble Learning:

    Decision trees and decision tree learning, Overfitting in decision trees, Techniques to mitigate overfitting (cross validation, regularization), Ensemble learning and Random forests

    Recommendations: Content based filtering, Collaborative filtering and Association Rules learning

    Get started with Deep learning: Apply Multi-layer perceptrons to the MNIST Digit recognition problem

    A Note on Python: The code-alongs in this class all use Python 2.7. Source code (with copious amounts of comments) is attached as a resource with all the code-alongs. The source code has been provided for both Python 2 and Python 3 wherever possible

    Who is the target audience?

    Yep! Analytics professionals, modelers, big data professionals who haven't had exposure to machine learning

    Yep! Engineers who want to understand or learn machine learning and apply it to problems they are solving

    Yep! Product managers who want to have intelligent conversations with data scientists and engineers about machine learning

    Yep! Tech executives and investors who are interested in big data, machine learning or natural language processing

    Yep! MBA graduates or business professionals who are looking to move to a heavily quantitative role

    Basic knowledge

    No prerequisites, knowledge of some undergraduate level mathematics would help but is not mandatory. Working knowledge of Python would be helpful if you want to run the source code that is provided

    What you will learn

    Identify situations that call for the use of Machine Learning

    Understand which type of Machine learning problem you are solving and choose the appropriate solution

    Use Machine Learning and Natural Language processing to solve problems like text classification, text summarization in Python

    Gmail: support@simpliv.com

    Phone no: 5108496155

    Click to Continue Reading: https://www.simpliv.com/search

    Registration Link: https://www.simpliv.com/python/from-0-to-1-machine-learning-nlp-python-cut-to-the-chase

    Simpliv Youtube Course & Tutorial : https://www.youtube.com/channel/UCZZevQcSlAK689KbsrMvEog?view_as=subscriber

    Facebook Page: https://www.facebook.com/simplivllc

    Linkedin: https://www.linkedin.com/company/simpliv

    Twitter: https://twitter.com/simplivllc


    Keywords: Accepted papers list. Acceptance Rate. EI Compendex. Engineering Index. ISTP index. ISI index. Impact Factor.
    Disclaimer: ourGlocal is an open academical resource system, which anyone can edit or update. Usually, journal information updated by us, journal managers or others. So the information is old or wrong now. Specially, impact factor is changing every year. Even it was correct when updated, it may have been changed now. So please go to Thomson Reuters to confirm latest value about Journal impact factor.