DataScience_Machine Learning - NLP- Python-R-BigData-PySpark
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Description

Data Scientist is amongst the trendiest jobs, Glassdoor ranked it as the #1 Best Job in America in 2018 for the third year in a row, and it still holds its #1 Best Job position. Python is now the top programming language used in Data Science, with Python and R at 2nd place. Data Science is a field where data is analyzed with an aim to generate meaningful information. Today, successful data professionals understand that they require much-advanced skills for analyzing large amounts of data.  Rather than relying on traditional techniques for data analysis, data mining and programming skills, as well as various tools and algorithms, are used. While there are many languages that can perform this job, Python has become the most preferred among Data Scientists. Today, the popularity of Python for Data Science is at its peak. Researchers and developers are using it for all sorts of functionality, from cleaning data and Training models to developing advanced AI and Machine Learning software. As per Statista, Python is LinkedIn's most wanted Data Science skill in the United States. Data Science with R, Python and Spark Training lets you gain expertise in Machine Learning Algorithms like K-MeansClustering, Decision Trees, Random Forest, and Naive Bayes using R, Python and Spark. Data Science Trainingencompasses a conceptual understanding of Statistics, Time Series, Text Mining and an introductionto Deep Learning. Throughout this Data Science Course, you will implement real-life use-cases onMedia, Healthcare, Social Media, Aviation and HR. CurriculumIntroduction to Data ScienceLearning Objectives - Get an introduction to Data Science in this module and see how Data Sciencehelps to analyze large and unstructured data with different tools. Topics: What is Data Science? What does Data Science involve?Era of Data Science Business Intelligence vs Data ScienceLife cycle of Data Science Tools of Data ScienceIntroduction to Big Data and Hadoop Introduction to RIntroduction to Spark Introduction to Machine LearningStatistical InferenceLearning Objectives - In this module, you will learn about different statistical techniques andterminologies used in data analysis. Topics: What is Statistical Inference? Terminologies of StatisticsMeasures of Centers Measures of SpreadProbability Normal DistributionBinary DistributionData Extraction, Wrangling and ExplorationLearning Objectives - Discuss the different sources available to extract data, arrange the data instructured form, analyze the data, and represent the data in a graphical format. Topics: Data Analysis Pipeline What is Data ExtractionTypes of Data Raw and Processed DataData Wrangling Exploratory Data AnalysisVisualization of DataIntroduction to Machine LearningLearning Objectives - Get an introduction to Machine Learning as part of this module. You willdiscuss the various categories of Machine Learning and implement Supervised Learning Algorithms. Topics: What is Machine Learning? Machine Learning Use-CasesMachine Learning Process Flow Machine Learning CategoriesSupervised Learning algorithm: LinearRegression and Logistic Regression• Define Data Science and its various stages• Implement Data Science development methodology in business scenarios• Identify areas of applications of Data Science. • Understand the fundamental concepts of Python• Use various Data Structures of Python. • Perform operations on arrays using NumPy library• Perform data manipulation using the Pandas library• Visualize data and obtain insights from data using the Matplotlib and Seaborn library• Apply Scrapy and Beautiful Soup to scrap data from websites• Perform end to end Case study on data extraction, manipulation, visualization and analysis using Python 

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