[Pycon] [new paper] "Ayush Kumar Singh" - How to approach a Machine Learning Problem ? : YouTube Like Count Predictor

info a pycon.it info a pycon.it
Dom 26 Nov 2017 18:58:38 CET


Title: How to approach a Machine Learning Problem ? : YouTube Like Count Predictor
Duration: 45 (includes Q&A)
Q&A Session: 15
Language: en
Type: Talk

Abstract: Ever thought of ”How to approach a Machine Learning Problem ?”.
This talk will guide you through pipeline for approaching a Machine Learning problem(Supervised) by taking up a real world problem which will make it easy for the audience to relate with.The task would be “Predicting like counts for a given YouTube video” and I would be taking you through the very first step of Data Collection to Model Evaluation,discussing various essential steps like Data analysis,Feature engineering,feature selection and many more along the way.Every step would be accompanied by some code snippets in Python using various scientific and ML libraries like Sklearn,Numpy etc.

The problem to be discussed : https://github.com/ayush1997/YouTube-Like-predictor
Slides : http://slides.com/ayush1997/ml-3#/

Tags: [u'scikit-learn', u'>pydata </font></font>', u'DataExploration', u'Python', u'machine-learning', u'matplotlib', u'datascience', u'><font style=', u'DataAnalysis', u'vertical-align: inherit;', u'<font style=', u'pandas']


Maggiori informazioni sulla lista Pycon