data science with python
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Latest content data science with python
You are now able to: 
Explain why Python should be integrated with Hadoop 
Outline the ecosystem and architecture of Hadoop 
Explain the functioning of MapReduce 
Discuss Apache Spark functions and their benefits 
Write Python programs for Hadoop operations
- Summary
- • 72 pages's •
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Data Science with Python•Data Science with Python
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You are now able to: 
Explain why Python should be integrated with Hadoop 
Outline the ecosystem and architecture of Hadoop 
Explain the functioning of MapReduce 
Discuss Apache Spark functions and their benefits 
Write Python programs for Hadoop operations
Define web scraping and explain its importance 
List the steps involved in the web scraping process 
Describe basic terminologies, such as parser, object, and tree associated with the BeautifulSoup 
Explain various operations, such as searching, modifying, and navigating the tree to yield the required result
- Summary
- • 59 pages's •
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Data Science with Python•Data Science with Python
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Define web scraping and explain its importance 
List the steps involved in the web scraping process 
Describe basic terminologies, such as parser, object, and tree associated with the BeautifulSoup 
Explain various operations, such as searching, modifying, and navigating the tree to yield the required result
Explain what data visualization is and its importance 
Illustrate why Python is considered one of the best data visualization tools 
Describe matplotlib and its data visualization features in 
Python 
List the types of plots and the steps involved in creating these plots
- Summary
- • 35 pages's •
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Data Science with Python•Data Science with Python
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Explain what data visualization is and its importance 
Illustrate why Python is considered one of the best data visualization tools 
Describe matplotlib and its data visualization features in 
Python 
List the types of plots and the steps involved in creating these plots
Define natural language processing 
Explain the importance of natural language processing 
List the applications using natural language processing 
Outline the modules to load content and category 
Apply feature extraction techniques 
Implement the approaches of natural language processing
- Summary
- • 57 pages's •
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Data Science with Python•Data Science with Python
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Define natural language processing 
Explain the importance of natural language processing 
List the applications using natural language processing 
Outline the modules to load content and category 
Apply feature extraction techniques 
Implement the approaches of natural language processing
Define machine learning 
Explain the machine learning approach 
List relevant terminologies that help you understand a dataset 
Discuss features of supervised and unsupervised learning models 
Explain algorithms, such as regression, classification, clustering, and dimensionality reduction
- Summary
- • 62 pages's •
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Data Science with Python•Data Science with Python
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Define machine learning 
Explain the machine learning approach 
List relevant terminologies that help you understand a dataset 
Discuss features of supervised and unsupervised learning models 
Explain algorithms, such as regression, classification, clustering, and dimensionality reduction
Explain Pandas and its features 
List different data structures of Pandas 
Outline the process to create series and DataFrame with data inputs 
Explain how to view, select, and access elements in a data structure 
Describe the procedure to handle vectorized operations 
Illustrate how to handle missing values 
Analyze data with different data operation methods
- Summary
- • 48 pages's •
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Data Science with Python•Data Science with Python
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Explain Pandas and its features 
List different data structures of Pandas 
Outline the process to create series and DataFrame with data inputs 
Explain how to view, select, and access elements in a data structure 
Describe the procedure to handle vectorized operations 
Illustrate how to handle missing values 
Analyze data with different data operation methods
Everything there is to know about Scipy
- Summary
- • 53 pages's •
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Data Science with Python•Data Science with Python
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Everything there is to know about Scipy
Explain NumPy and its importance 
Discuss the basics of NumPy, including its fundamental objects 
Demonstrate how to create and print a NumPy array 
Analyze and perform basic operations in NumPy 
Utilize shape manipulation and copying methods 
Demonstrate how to execute linear algebraic functions 
Build basic programs using NumPy
- Summary
- • 59 pages's •
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Data Science with Python•Data Science with Python
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Explain NumPy and its importance 
Discuss the basics of NumPy, including its fundamental objects 
Demonstrate how to create and print a NumPy array 
Analyze and perform basic operations in NumPy 
Utilize shape manipulation and copying methods 
Demonstrate how to execute linear algebraic functions 
Build basic programs using NumPy
Explain Anaconda and Jupyter notebook installation 
List the important data types supported by Python 
Discuss data structures, such as lists, tuples, sets, and dicts 
Explain slicing and accessing the four data structures 
Discuss basic operators and functions 
Outline the important control flow statements
- Summary
- • 54 pages's •
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Data Science with Python•Data Science with Python
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Explain Anaconda and Jupyter notebook installation 
List the important data types supported by Python 
Discuss data structures, such as lists, tuples, sets, and dicts 
Explain slicing and accessing the four data structures 
Discuss basic operators and functions 
Outline the important control flow statements
Differentiate between statistical and non-statistical analysis 
Illustrate the two major categories of statistical analysis and their differences 
Describe statistical analysis process 
Calculate mean, median, mode, and percentile 
Describe data distribution and the various methods of representing it 
Explain types of frequencies 
Outline correlation matrix and its uses
- Summary
- • 71 pages's •
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Data Science with Python•Data Science with Python
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Differentiate between statistical and non-statistical analysis 
Illustrate the two major categories of statistical analysis and their differences 
Describe statistical analysis process 
Calculate mean, median, mode, and percentile 
Describe data distribution and the various methods of representing it 
Explain types of frequencies 
Outline correlation matrix and its uses