NumPy is a Python library that provides multi-dimensional array and matrix objects to handle large amounts of numerical data efficiently. It contains a powerful N-dimensional array object called ndarray that facilitates fast operations on large data sets. NumPy arrays can have any number of dimensions and elements of the array can be of any Python data type. NumPy also provides many useful methods for fast mathematical and statistical operations on arrays like summing, averaging, standard deviation, slicing, and matrix multiplication.
Vectorization refers to performing operations on entire NumPy arrays or sequences of data without using explicit loops. This allows computations to be performed more efficiently by leveraging optimized low-level code. Traditional Python code may use loops to perform operations element-wise, whereas NumPy allows the same operations to be performed vectorized on entire arrays. Broadcasting rules allow operations between arrays of different shapes by automatically expanding dimensions. Vectorization is a key technique for speeding up numerical Python code using NumPy.
Abstract: This PDSG workshop introduces the basics of Python libraries used in machine learning. Libraries covered are Numpy, Pandas and MathlibPlot.
Level: Fundamental
Requirements: One should have some knowledge of programming and some statistics.
This document provides an overview of data analysis and visualization techniques using Python. It begins with an introduction to NumPy, the fundamental package for numerical computing in Python. NumPy stores data efficiently in arrays and allows for fast operations on entire arrays. The document then covers Pandas, which builds on NumPy and provides data structures like Series and DataFrames for working with structured and labeled data. It demonstrates how to load data, select subsets of data, and perform operations like filtering and aggregations. Finally, it discusses various data visualization techniques using Matplotlib and Seaborn like histograms, scatter plots, box plots, and heatmaps that can be used for exploratory data analysis to gain insights from data.
Matplotlib adalah pustaka plotting 2D Python yang menghasilkan gambar berkual...HendraPurnama31
Matplotlib adalah pustaka plotting 2D Python yang menghasilkan gambar berkualitas publikasi dalam berbagai format cetak dan lingkungan interaktif di berbagai platform.
This document discusses popular Python libraries for machine learning: Numpy, Pandas, and Matplotlib. Numpy provides multidimensional arrays and functions for working with large datasets. Pandas allows working with labeled data frames and series. Matplotlib is used for visualizing data through plots, histograms, and other charts. Key features of each library are described through examples of array creation, selection, and basic plotting functions.
NumPy provides two fundamental objects for multi-dimensional arrays: the N-dimensional array object (ndarray) and the universal function object (ufunc). An ndarray is a homogeneous collection of items indexed using N integers. The shape and data type define an ndarray. NumPy arrays have a dtype attribute that returns the data type layout. Arrays can be created using the array() function and have various dimensions like 0D, 1D, 2D and 3D.
NumPy is a Python package that provides multidimensional array and matrix objects as well as tools to work with these objects. It was created to handle large, multi-dimensional arrays and matrices efficiently. NumPy arrays enable fast operations on large datasets and facilitate scientific computing using Python. NumPy also contains functions for Fourier transforms, random number generation and linear algebra operations.
Basic of array and data structure, data structure basics, array, address calc...nsitlokeshjain
The document discusses different data structures and algorithms. It defines data structures as ways to store and organize data, mentioning linear structures like arrays and linked lists, and non-linear structures like trees and graphs. It also discusses abstract data types, arrays, sorting algorithms like bubble sort, and searching algorithms like linear and binary search. Key operations and their implementations are provided for each concept through definitions, examples and pseudocode.
This document provides a summary of key aspects of NumPy, the fundamental package for scientific computing in Python. It introduces NumPy ndarrays as a more efficient way to store and manipulate numerical data compared to built-in Python data types. It then covers how to create ndarrays, their basic properties like shape and dtype, and common operations like slicing, sorting, random number generation, and aggregations.
1. NumPy is a fundamental Python library for numerical computing that provides support for arrays and vectorized computations.
2. Pandas is a popular Python library for data manipulation and analysis that provides DataFrame and Series data structures to work with tabular data.
3. When performing arithmetic operations between DataFrames or Series in Pandas, the data is automatically aligned based on index and column labels to maintain data integrity. NumPy also automatically broadcasts arrays during arithmetic to align dimensions element-wise.
This document provides an overview of NumPy arrays, including how to create and manipulate vectors (1D arrays) and matrices (2D arrays). It discusses NumPy data types and shapes, and how to index, slice, and perform common operations on arrays like summation, multiplication, and dot products. It also compares the performance of vectorized NumPy operations versus equivalent Python for loops.
NumPy is a Python package that is used for scientific computing and working with multidimensional arrays. It allows fast operations on arrays through the use of n-dimensional arrays and has functions for creating, manipulating, and transforming NumPy arrays. NumPy arrays can be indexed, sliced, and various arithmetic operations can be performed on them element-wise for fast processing of large datasets.
Abstract: This PDSG workshop introduces the basics of Python libraries used in machine learning. Libraries covered are Numpy, Pandas and MathlibPlot.
Level: Fundamental
Requirements: One should have some knowledge of programming and some statistics.
This document provides an overview of data analysis and visualization techniques using Python. It begins with an introduction to NumPy, the fundamental package for numerical computing in Python. NumPy stores data efficiently in arrays and allows for fast operations on entire arrays. The document then covers Pandas, which builds on NumPy and provides data structures like Series and DataFrames for working with structured and labeled data. It demonstrates how to load data, select subsets of data, and perform operations like filtering and aggregations. Finally, it discusses various data visualization techniques using Matplotlib and Seaborn like histograms, scatter plots, box plots, and heatmaps that can be used for exploratory data analysis to gain insights from data.
Matplotlib adalah pustaka plotting 2D Python yang menghasilkan gambar berkual...HendraPurnama31
Matplotlib adalah pustaka plotting 2D Python yang menghasilkan gambar berkualitas publikasi dalam berbagai format cetak dan lingkungan interaktif di berbagai platform.
This document discusses popular Python libraries for machine learning: Numpy, Pandas, and Matplotlib. Numpy provides multidimensional arrays and functions for working with large datasets. Pandas allows working with labeled data frames and series. Matplotlib is used for visualizing data through plots, histograms, and other charts. Key features of each library are described through examples of array creation, selection, and basic plotting functions.
NumPy provides two fundamental objects for multi-dimensional arrays: the N-dimensional array object (ndarray) and the universal function object (ufunc). An ndarray is a homogeneous collection of items indexed using N integers. The shape and data type define an ndarray. NumPy arrays have a dtype attribute that returns the data type layout. Arrays can be created using the array() function and have various dimensions like 0D, 1D, 2D and 3D.
NumPy is a Python package that provides multidimensional array and matrix objects as well as tools to work with these objects. It was created to handle large, multi-dimensional arrays and matrices efficiently. NumPy arrays enable fast operations on large datasets and facilitate scientific computing using Python. NumPy also contains functions for Fourier transforms, random number generation and linear algebra operations.
Basic of array and data structure, data structure basics, array, address calc...nsitlokeshjain
The document discusses different data structures and algorithms. It defines data structures as ways to store and organize data, mentioning linear structures like arrays and linked lists, and non-linear structures like trees and graphs. It also discusses abstract data types, arrays, sorting algorithms like bubble sort, and searching algorithms like linear and binary search. Key operations and their implementations are provided for each concept through definitions, examples and pseudocode.
This document provides a summary of key aspects of NumPy, the fundamental package for scientific computing in Python. It introduces NumPy ndarrays as a more efficient way to store and manipulate numerical data compared to built-in Python data types. It then covers how to create ndarrays, their basic properties like shape and dtype, and common operations like slicing, sorting, random number generation, and aggregations.
1. NumPy is a fundamental Python library for numerical computing that provides support for arrays and vectorized computations.
2. Pandas is a popular Python library for data manipulation and analysis that provides DataFrame and Series data structures to work with tabular data.
3. When performing arithmetic operations between DataFrames or Series in Pandas, the data is automatically aligned based on index and column labels to maintain data integrity. NumPy also automatically broadcasts arrays during arithmetic to align dimensions element-wise.
This document provides an overview of NumPy arrays, including how to create and manipulate vectors (1D arrays) and matrices (2D arrays). It discusses NumPy data types and shapes, and how to index, slice, and perform common operations on arrays like summation, multiplication, and dot products. It also compares the performance of vectorized NumPy operations versus equivalent Python for loops.
NumPy is a Python package that is used for scientific computing and working with multidimensional arrays. It allows fast operations on arrays through the use of n-dimensional arrays and has functions for creating, manipulating, and transforming NumPy arrays. NumPy arrays can be indexed, sliced, and various arithmetic operations can be performed on them element-wise for fast processing of large datasets.
This document provides an introduction and overview of natural language processing (NLP). It discusses how NLP aims to allow computers to communicate with humans using everyday language. It also discusses related areas like artificial intelligence, linguistics, and cognitive science. The document outlines some key aspects of communication like intention, generation, perception, analysis, and incorporation. It discusses the roles of syntax, semantics, and pragmatics. It also covers challenges in NLP like ambiguity and how ambiguity is pervasive and can lead to many possible interpretations. The document contrasts natural languages with computer languages and provides examples of common NLP tasks.
This document discusses database security. It introduces common threats to databases like loss of confidentiality, integrity and availability. The key database security requirements are then outlined as confidentiality, integrity, availability and non-repudiation. Two main types of access control are described - discretionary access control (DAC) using privileges and mandatory access control (MAC) using security classifications. The role of the database administrator to implement access controls is also discussed.
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This presentation has been made keeping in mind the students of undergraduate and postgraduate level. To keep the facts in a natural form and to display the material in more detail, the help of various books, websites and online medium has been taken. Whatever medium the material or facts have been taken from, an attempt has been made by the presenter to give their reference at the end.
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• Analysis of Co-variance (One-way)
Non-Parametric Tests:
• Chi-Square test
• Sign test
• Median test
• Sum of Rank test
• Mann-Whitney U-test
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Completed Tuesday June 10th.
An Orientation Sampler of 8 pages.
It helps to understand the text behind anything. This improves our performance and confidence.
Your training will be mixed media. Includes Rehab Intro and Meditation vods, all sold separately.
Editing our Vods & New Shop.
Retail under $30 per item. Store Fees will apply. Digital Should be low cost.
I am still editing the package. I wont be done until probably July? However; Orientation and Lecture 1 (Videos) will be available soon. Media will vary between PDF and Instruction Videos.
Thank you for attending our free workshops. Those can be used with any Reiki Yoga training package. Traditional Reiki does host rules and ethics. Its silent and within the JP Culture/Area/Training/Word of Mouth. It allows remote healing but there’s limits for practitioners and masters. We are not allowed to share certain secrets/tools. Some content is designed only for “Masters”. Some yoga are similar like the Kriya Yoga-Church (Vowed Lessons). We will review both Reiki and Yoga (Master symbols) later on. Sounds Simple but these things host Energy Power/Protection.
Imagine This package will be a supplement or upgrade for professional Reiki. You can create any style you need.
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(Job) Tech for students: In short, high speed is essential. (Space, External Drives, virtual clouds)
Fast devices and desktops are important. Please upgrade your technology and office as needed and timely. - MIA J. Tech Dept (Timeless)
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Copyright Disclaimer 2007-2025+: These lessons are not to be copied or revised without the
Author’s permission. These Lessons are designed Rev. Moore to instruct and guide students on the path to holistic health and wellness.
It’s about expanding your Nature Talents, gifts, even Favorite Hobbies.
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First, Society is still stuck in the matrix. Many of the spiritual collective, say the matrix crashed. Its now collapsing. This means anything lower, darker realms, astral, and matrix are below 5D. 5D is thee trend. It’s our New Dimensional plane. However; this plane takes work ethic,
integration, and self discovery. ♥♥♥
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We don’t need to slave, mule, or work double shifts to fuse Reiki lol. It should blend naturally within our lifestyles. Same with Yoga. There’s no
need to use all the poses/asanas. For under a decade, my fav exercises are not asanas but Pilates. It’s all about Yoga-meditation when using Reiki. (Breaking old myths.)
Thank You for reading our Orientation Sampler. The Workshop is 14 pages on introduction. These are a joy and effortless to produce/make.
Slides from a Capitol Technology University presentation covering doctoral programs offered by the university. All programs are online, and regionally accredited. The presentation covers degree program details, tuition, financial aid and the application process.
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This event series to help nonprofits obtain Copilot skills is made possible by generous support from Microsoft.
2. Usage of Numpy for numerical Data
NumPy (Numerical Python) is a fundamental library for
numerical computing in Python. It provides support for arrays,
matrices, and a wide range of mathematical functions.
Key Features
• Efficient storage and manipulation of numerical data.
• Functions for array operations, linear algebra, and random
number generation.
3. NumPy
• Stands for Numerical Python
• Is the fundamental package required for high performance
computing and data analysis
• NumPy is so important for numerical computations in Python
is because it is designed for efficiency on large arrays of data.
• It provides
• ndarray for creating multiple dimensional arrays
• Internally stores data in a contiguous block of memory, independent of other
built-in Python objects, use much less memory than built-in Python sequences.
• Standard math functions for fast operations on entire arrays of data without
having to write loops
• NumPy Arrays are important because they enable you to express batch
operations on data without writing any for loops. We call this vectorization.
4. NumPy ndarray vs list
• One of the key features of NumPy is its N-dimensional array
object, or ndarray, which is a fast, flexible container for large
datasets in Python.
• Whenever you see “array,” “NumPy array,” or “ndarray” in
the text, with few exceptions they all refer to the same thing:
the ndarray object.
• NumPy-based algorithms are generally 10 to 100 times faster
(or more) than their pure Python counterparts and use
significantly less memory.
import numpy as np
my_arr = np.arange(1000000)
my_list = list(range(1000000))
5. ndarray
• ndarray is used for storage of homogeneous data
• i.e., all elements the same type
• Every array must have a shape and a dtype
• Supports convenient slicing, indexing and efficient vectorized
computation
import numpy as np
data1 = [6, 7.5, 8, 0, 1]
arr1 = np.array(data1)
print(arr1)
print(arr1.dtype)
print(arr1.shape)
print(arr1.ndim)
6. Creating ndarrays
Using list of lists
import numpy as np
data2 = [[1, 2, 3, 4], [5, 6, 7, 8]] #list of lists
arr2 = np.array(data2)
print(arr2.ndim) #2
print(arr2.shape) # (2,4)
7. Create a 2d array from a list of list
• You can pass a list of lists to create a matrix-like a 2d array.
In:
Out:
8. The dtype argument
• You can specify the data-type by setting the dtype() argument.
• Some of the most commonly used NumPy dtypes are: float, int, bool,
str, and object.
In:
Out:
9. The astype argument
• You can also convert it to a different data-type using the astype method.
In: Out:
• Remember that, unlike lists, all items in an array have to be of the same
type.
10. dtype=‘object’
• However, if you are uncertain about what data type your
array will hold, or if you want to hold characters and
numbers in the same array, you can set the dtype as 'object'.
In: Out:
11. The tolist() function
• You can always convert an array into a list using the tolist() command.
In: Out:
12. Inspecting a NumPy array
• There are a range of functions built into NumPy that allow you to
inspect different aspects of an array:
In:
Out:
15. Arithmatic with NumPy Arrays
• Arithmetic operations with scalars propagate the scalar argument
to each element in the array:
• Comparisons between arrays of the same size yield boolean
arrays:
arr = np.array([[1., 2., 3.], [4., 5., 6.]])
print(arr)
[[1. 2. 3.]
[4. 5. 6.]]
print(arr **2)
[[ 1. 4. 9.]
[16. 25. 36.]]
arr2 = np.array([[0., 4., 1.], [7., 2., 12.]])
print(arr2)
[[ 0. 4. 1.]
[ 7. 2. 12.]]
print(arr2 > arr)
[[False True False]
[ True False True]]
16. Extracting specific items from an array
• You can extract portions of the array using indices, much like when
you’re working with lists.
• Unlike lists, however, arrays can optionally accept as many
parameters in the square brackets as there are number of dimensions
In: Out:
17. Indexing and Slicing
• One-dimensional arrays are simple; on the surface they act
similarly to Python lists:
arr = np.arange(10)
print(arr) # [0 1 2 3 4 5 6 7 8 9]
print(arr[5]) #5
print(arr[5:8]) #[5 6 7]
arr[5:8] = 12
print(arr) #[ 0 1 2 3 4 12 12 12 8 9]
18. Indexing and Slicing
• As you can see, if you assign a scalar value to a slice, as in
arr[5:8] = 12, the value is propagated (or broadcasted) to the
entire selection.
• An important first distinction from Python’s built-in lists is that
array slices are views on the original array.
• This means that the data is not copied, and any modifications to the view will be
reflected in the source array.
arr = np.arange(10)
print(arr) # [0 1 2 3 4 5 6 7 8 9]
arr_slice = arr[5:8]
print(arr_slice) # [5 6 7]
arr_slice[1] = 12345
print(arr) # [ 0 1 2 3 4 5 12345 7 8 9]
arr_slice[:] = 64
print(arr) # [ 0 1 2 3 4 64 64 64 8 9]
19. Indexing
• In a two-dimensional array, the elements at each index are no
longer scalars but rather one-dimensional arrays:
• Thus, individual elements can be accessed recursively. But that is
a bit too much work, so you can pass a comma-separated list of
indices to select individual elements.
• So these are equivalent:
arr2d = np.array([[1, 2, 3], [4, 5, 6], [7, 8, 9]])
print(arr2d[2]) # [7 8 9]
print(arr2d[0][2]) # 3
print(arr2d[0, 2]) #3
20. Activity 3
• Consider the two-dimensional array, arr2d.
• Write a code to slice this array to display the last column,
[[3] [6] [9]]
• Write a code to slice this array to display the last 2 elements of
middle array,
[5 6]
arr2d = np.array([[1, 2, 3], [4, 5, 6], [7, 8, 9]])
21. Boolean indexing
• A boolean index array is of the same shape as the array-to-
be-filtered, but it only contains TRUE and FALSE values.
In: Out:
22. Pandas
• Pandas, like NumPy, is one of the most popular Python
libraries for data analysis.
• It is a high-level abstraction over low-level NumPy, which is
written in pure C.
• Pandas provides high-performance, easy-to-use data
structures and data analysis tools.
• There are two main structures used by pandas; data frames
and series.
23. Indices in a pandas series
• A pandas series is similar to a list, but differs in the fact that a series associates a label with
each element. This makes it look like a dictionary.
• If an index is not explicitly provided by the user, pandas creates a RangeIndex ranging from 0
to N-1.
• Each series object also has a data type.
In: Ou
t:
24. • As you may suspect by this point, a series has ways to extract all of
the values in the series, as well as individual elements by index.
In: Ou
t:
• You can also provide an index manually.
In:
Out:
25. • It is easy to retrieve several elements of a series by their indices or make
group assignments.
In:
Out:
26. Filtering and maths operations
• Filtering and maths operations are easy with Pandas as well.
In: Ou
t:
27. Pandas data frame
• Simplistically, a data frame is a table, with rows and columns.
• Each column in a data frame is a series object.
• Rows consist of elements inside series.
Case ID Variable one Variable two Variable 3
1 123 ABC 10
2 456 DEF 20
3 789 XYZ 30
28. Creating a Pandas data frame
• Pandas data frames can be constructed using Python dictionaries.
In:
Out:
29. • You can also create a data frame from a list.
In: Out:
30. • You can ascertain the type of a column with the type() function.
In:
Out:
31. • A Pandas data frame object as two indices; a column index and row
index.
• Again, if you do not provide one, Pandas will create a RangeIndex from
0 to N-1.
In:
Out:
32. • There are numerous ways to provide row indices explicitly.
• For example, you could provide an index when creating a data frame:
In: Out:
• or do it during runtime.
• Here, I also named the index ‘country
code’.
In:
Out:
33. • Row access using index can be performed in several ways.
• First, you could use .loc() and provide an index label.
• Second, you could use .iloc() and provide an index number
In: Out:
In: Out:
34. • A selection of particular rows and columns can be selected this way.
In: Out:
• You can feed .loc() two arguments, index list and column list, slicing operation
is supported as well:
In: Out:
37. Reading from and writing to a file
• Pandas supports many popular file formats including CSV, XML,
HTML, Excel, SQL, JSON, etc.
• Out of all of these, CSV is the file format that you will work with the
most.
• You can read in the data from a CSV file using the read_csv() function.
• Similarly, you can write a data frame to a csv file with the to_csv()
function.
38. • Pandas has the capacity to do much more than what we have
covered here, such as grouping data and even data
visualisation.
• However, as with NumPy, we don’t have enough time to cover
every aspect of pandas here.
39. Exploratory data analysis (EDA)
Exploring your data is a crucial step in data analysis. It involves:
• Organising the data set
• Plotting aspects of the data set
• Maybe producing some numerical summaries; central tendency
and spread, etc.
“Exploratory data analysis can never be the whole story, but
nothing else can serve as the foundation stone.”
- John Tukey.
40. Reading in the data
• First we import the Python packages we are going to use.
• Then we use Pandas to load in the dataset as a data frame.
NOTE: The argument index_col argument states that we'll treat the first
column of the dataset as the ID column.
NOTE: The encoding argument allows us to by pass an input error created
by special characters in the data set.
#18: As NumPy has been designed to be able to work with very large arrays, you could imagine performance
and memory problems if NumPy insisted on always copying data.
If you want a copy of a slice of an ndarray instead of a view, you
will need to explicitly copy the array—for example,
arr[5:8].copy().