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Manual Testing

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Manual Testing

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  1. Data Science with Python 
 - Manipulation • Scikit learn Introduction • What is data science? • Where do we apply data science? • Why is data science a “science”? • What makes up data science? • What is the difference between data science, machine learning and AI? • Data Science vs Data Analytics vs Big Data • Why do we need to understand the difference? • The business of data science • Additional details - Questions that a data scientist must ask - Is your data ready for data science? - Ask the right questions - Pre-requisites and the process Visualizing data – bar plots, line charts, scatterplots, histograms – Matplotlib or seaborn Linear Algebra • Vectors • Matrices Statistics • Central Tendencies, dispersion, Mean, Median and Mode, Data Variability, Standard Deviation, Z-Score, Outliers • Correlation & Causation • sampling Probability • Dependence & Independence • Conditional Probability – CDF’s and PDF’s • Bayes Theorem • Random Variables • Continuous distributions, Normal Distributions • Central Limit Theorem • Skewness & Curtosis Data Science from scratch • Tools required (pic) • Algorithms that can be used Some basic python • Numpy and scipy - Data objects - Math - Comparison Operators - Condition Statements - Loops - Lists - Tuples - Sets - Dictionaries - Functions - Array - Selecting Data - Slicing - Iterating - Manipulations - Stacking - Splitting Arrays Hypotheses and Inferences • Hypothesis testing: Null hypothesis, p- values • ConXidence intervals • Type Errors • A/B testing, T-Tests, ANOVA test • Bayesian Inferences Gradient Descent • Estimation • Usage • Stochastic Gradient Descent Getting Data • Reading Xiles • De-limited Xiles • Pandas - Pandas overview - Series and Data Frame

  2. • Scrapping the web and using APIs • Authentication of connection, APIs • RNN Clustering Data Munging/cleaning • Data exploration: 1-d, 2-d & multi-d data - Grouping - Aggregation - Treating Missing Values - Removing Duplicates - Cleaning data - Munging data - Manipulation of data - Scaling data - Dimensionality reduction - Transforming data NLP – Natural Language Processing • Lexical processing, syntactic processing, semantic processing • Word clouds • N-gram models • Grammars • Gibbs Sampling • Topic modelling Recommender Systems • Trending Recommendations • User based Collaborative Xiltering • Item based collaborative Xiltering What is “Machine Learning”? • Modelling • OverXitting of data • UnderXitting of data • Correctness of data • Bias and variance – trade off • Feature extraction and selection DB and SQL Overview • Table creation and insert • Update • Delete • Select • Group by • Order by • Join • Sub-queries • Indices • Query Optimization • No-SQL Algorithm (s) • K-Nearest Neighbours • Naïve Bayes • Linear Regression • Multi Regression • Logistic Regression and SVM’s • Decision Trees - Entropy - Random Forests MapReduce Overview • Why MapR • General applications Tableau Overview • Overview of Tableau • Connect to Data and make visualizations • Features of Tableau Other directions: • Gradient Boosting • xg-boost • PCA • Deep Learning and GANs • Semi-supervised learning • Active learning Azure ML • What is Azure ML? • What can I do with Azure ML? • The Azure ML process and provisions • Azure ML components and API’s Neural Nets • Perceptron • Feed-forward NNs • Back-propagation • CNN What is Time Series? • Trend, Seasonality, cyclical and random

  3. • White Noise • Auto Regressive Model (AR) • Moving Average Model (MA) • ARMA Model • Stationarity of Time Series • ARIMA Model – Prediction Concepts • ARIMA Model Hands on with Python • Case Study Assignment on ARIMA Plan & Version Control Tools : Jira, Git IDE: Pycharm Distribution: Anaconda (The Anaconda distribution would allow us to implicitly install python 3x, R along with scikit-learn, numpy, scipy and pandas. Anaconda includes jupyter and spyder as part of the package). Platforms : Windows, Linux


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