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Epython Lab

Epython Lab

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Welcome to Epython Lab, where you can get resources to learn, one-on-one trainings on machine learning, business analytics, and Python, and solutions for business problems. Buy ads: https://telega.io/c/epythonlab

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Function Scope: Global or Local https://www.youtube.com/watch?v=GzbPCRcf-gU

#nlp #ml @epythonlab
#nlp #ml @epythonlab

#nlp #ml @epythonlab
#nlp #ml @epythonlab

ML Algorithms Cheatsheet (python and R) #code #python #R @epythonlab #mlbooks

Watch "Python Tutorial Part-09| Function Definition in Python" on YouTube https://youtu.be/5IHXsnxdVFI

spaCy is a Python package that bills itself as "industrial-strength" natural language processing. https://spacy.io/

#Keynote #DataScience #NLP #Python @epythonlab Natural Language Processing Natural language processing (NLP) is the field devoted to methods and algorithms for processing human (natural) languages for computers. NLP is a vast discipline that is actively being researched. Some examples of machine learning applications using NLP include sentiment analysis, topic modeling, and language translation. In NLP, the following terms have specific meanings: - Corpus: The body/collection of text being investigated. - Document: The unit of analysis, what is considered a single observation. Examples of corpora include a collection of reviews and tweets, the text of the Iliad, and Wikipedia articles. Documents can be whatever you decided, it is what your model will consider an observation. For the example when the corpus is a collection of reviews or tweets, it is logical to make the document a single review or tweet. For the example of the text of the Iliad, we can set the document size to a sentence or a paragraph. The choice of document size will be influenced by the size of our corpus. If it is large, it may make sense to call each paragraph a document. As is usually the case, some design choices that need to be made.

#opportunityAlert Internship Opportunity! Global AI Hub is a Swiss-based leading global online community of AI Enthusiasts. A
#opportunityAlert Internship Opportunity! Global AI Hub is a Swiss-based leading global online community of AI Enthusiasts. A powerful platform providing both quality online AI education as well as AI career opportunities. We have an ambitious goal to make quality education accessible to all, bridge the gender divide, and help bring job opportunities to all those passionate and hard working. If this sounds like the kind of mission you would like to be a part of we are looking for interns! Simply fill out this form to submit an application. We look forward to working with you! Join us and became a shaper of your future. Apply Here: https://globalaihub.typeform.com/to/smebvec3

Open Datasets for Research During last week there were several news about newly open datasets for researchers. 1. Twitter opened “full history of public conversation” for academics (specifically, for academics): https://www.theverge.com/2021/1/26/22250203/twitter-academic-research-public-tweet-archive-free-access We can happily conduct researches about social networks graphs, users behavior and fake news (especially fake news🙃) without fighting with Twitter API. 2. Papers with code are now also Papers with Datasets: https://www.paperswithcode.com/datasets Not for only NLP, but for all fields structured for easy search and download.

Here is a useful website to learn mathematics for free https://www.britannica.com/browse/Mathematics

The pre-requisite topics that you should understand before you get started Data science and Machine Learning. Mathematics:- - covering differential calculus, - integral calculus, - matrices and linear algebra, - set theory, - differential equations, - complex numbers, - sequences and series, - logic and proofs, - multivariate calculus, - convergence of sequences and functions, - and partial differential equations. Statistics:- - covering exploratory data analysis, - elementary probability, - univariate random variables, - bi-variate random variables, - generating functions, - statistical estimation theory, - hypothesis testing and confidence intervals, - and simple linear regression. #DataScience #machinelearning #statistics #mathematics @epythonlab

The pre-requisite topics that you should understand before you get in to Machine learning and Data science. Mathematics:- - differential calculus, - integral calculus, - matrices and linear algebra, - set theory, - differential equations, - complex numbers, - sequences and series, - logic and proofs, - multivariate calculus, - convergence of sequences and functions, and partial differential equations. Statistics:- - covering exploratory data analysis, - elementary probability, - univariate random variables, - bi-variate random variables, - generating functions, - statistical estimation theory, - hypothesis testing and confidence intervals, and simple linear regression. #DataScience #machinelearning #statistics #mathematics @epythonlab

Function definition in Python https://youtu.be/5IHXsnxdVFI

Which one of the following tools is used for data aggregation.
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Which of the following Python tools is useful for Data Visualization.
Anonymous voting

Python for bioinformatics, second edition @epythonlab #pythonbooks

According to the 2020 Kaggle ML and DS survey, 80% of data scientists first learn Python. Why? Watch "Why Python is so Popular?" on YouTube https://youtu.be/hrOGa8XXPrk

Machine Learning and Data Science Blueprints for Finance (2020) @epythonlab #mlbooks