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Added Content on NumPy Array Iteration under NumPy modulepull/712/head
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# NumPy Array Iteration
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Iterating over arrays in NumPy is a common task when processing data. NumPy provides several ways to iterate over elements of an array efficiently.
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Understanding these methods is crucial for performing operations on array elements effectively.
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## 1. Basic Iteration
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- Iterating using basic `for` loop.
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### Single-dimensional array
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Iterating over a single-dimensional array is straightforward using a basic `for` loop
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```python
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import numpy as np
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arr = np.array([1, 2, 3, 4, 5])
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for i in arr:
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print(i)
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```
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#### Output
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```python
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1
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2
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3
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4
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5
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```
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### Multi-dimensional array
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Iterating over multi-dimensional arrays, each iteration returns a sub-array along the first axis.
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```python
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marr = np.array([[1, 2, 3], [4, 5, 6], [7, 8, 9]])
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for arr in marr:
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print(arr)
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```
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#### Output
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```python
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[1 2 3]
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[4 5 6]
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[7 8 9]
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```
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## 2. Iterating with `nditer`
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- `nditer` is a powerful iterator provided by NumPy for iterating over multi-dimensional arrays.
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- In each interation it gives each element.
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```python
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import numpy as np
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arr = np.array([[1, 2, 3], [4, 5, 6]])
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for i in np.nditer(arr):
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print(i)
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```
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#### Output
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```python
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1
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2
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3
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4
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5
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6
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```
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## 3. Iterating with `ndenumerate`
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- `ndenumerate` allows you to iterate with both the index and the value of each element.
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- It gives index and value as output in each iteration
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```python
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import numpy as np
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arr = np.array([[1, 2], [3, 4]])
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for index,value in np.ndenumerate(arr):
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print(index,value)
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```
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#### Output
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```python
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(0, 0) 1
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(0, 1) 2
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(1, 0) 3
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(1, 1) 4
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```
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## 4. Iterating with flat
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- The `flat` attribute returns a 1-D iterator over the array.
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```python
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import numpy as np
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arr = np.array([[1, 2], [3, 4]])
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for element in arr.flat:
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print(element)
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```
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#### Output
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```python
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1
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2
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3
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4
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```
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Understanding the various ways to iterate over NumPy arrays can significantly enhance your data processing efficiency.
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Whether you are working with single-dimensional or multi-dimensional arrays, NumPy provides versatile tools to iterate and manipulate array elements effectively.
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@ -8,4 +8,5 @@
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- [Loading Arrays from Files](loading_arrays_from_files.md)
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- [Saving Numpy Arrays into FIles](saving_numpy_arrays_to_files.md)
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- [Sorting NumPy Arrays](sorting-array.md)
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- [NumPy Array Iteration](array-iteration.md)
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- [Concatenation of Arrays](concatenation-of-arrays.md)
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