This article covers ‘for’ loops and how they are used with tuples. Even if the tuples are immutable, the accessibility of the tuples is similar to that of the list.
This article covers ‘for’ loops and how they are used with tuples. Even if the tuples are immutable, the accessibility of the tuples is similar to that of the list.
This article covers ‘for’ loops and how they are used with tuples. Even if the tuples are immutable, the accessibility of the tuples is similar to that of the list. Traverse through a tuple with a for loop.
tuples=()
tuples=(1,'user@gmail.com',5.2,'User',True)
for i in tuples:
print(i)
1
user@gmail.com
5.2
User
True
Pythonfor i,j in enumerate(tuples):
print(i,j)
0 1
1 user@gmail.com
2 5.2
3 User
4 True
PythonTo get this output without enumerating, we have to change codes as follows.
size=len(tuples)
# i will be used as index pointer here,
for i in range(size):
print(i,tuples[i])
0 1
1 user@gmail.com
2 5.2
3 User
4 True
PythonLet’s create a pseudo-dataset within a nested structure, a tuple. If we print it directly, it will not show up in table format.
ntuple=(
('id','sal','name','email','married'),
(1,5.2,'User1','user1@gmail.com',True),
(2,4.8,'User2','user2@gmail.com',True),
(3,6.3,'User3','user3@gmail.com',True)
)
print(ntuple)
(('id', 'sal', 'name', 'email', 'married'), (1, 5.2, 'User1', 'user1@gmail.com', True), (2, 4.8, 'User2', 'user2@gmail.com', True), (3, 6.3, 'User3', 'user3@gmail.com', True))
Pythonfor i in ntuple:
for j in i:
print(j,end=' \t ')
print()
id sal name email married
1 5.2 User1 user1@gmail.com True
2 4.8 User2 user2@gmail.com True
3 6.3 User3 user3@gmail.com True
PythonWe will use the same tuple to demonstrate the tuple unpacking.
ntuple=(
('id','sal','name','email','married'),
(1,5.2,'User1','user1@gmail.com',True),
(2,4.8,'User2','user2@gmail.com',True),
(3,6.3,'User3','user3@gmail.com',True)
)
print(ntuple)
(('id', 'sal', 'name', 'email', 'married'), (1, 5.2, 'User1', 'user1@gmail.com', True), (2, 4.8, 'User2', 'user2@gmail.com', True), (3, 6.3, 'User3', 'user3@gmail.com', True))
PythonLet’s try to unpack a tuple without any special method. Let’s use for loop to unpack tuple.
for i in ntuple:
j,k,l,m,n=i
print(j,k,l,m,n)
id sal name email married
1 5.2 User1 user1@gmail.com True
2 4.8 User2 user2@gmail.com True
3 6.3 User3 user3@gmail.com True
Pythoni,*j=ntuple
print(i,j,sep='\n')
('id', 'sal', 'name', 'email', 'married')
[(1, 5.2, 'User1', 'user1@gmail.com', True), (2, 4.8, 'User2', 'user2@gmail.com', True), (3, 6.3, 'User3', 'user3@gmail.com', True)]
PythonThis is how a tuple is unpacked without a for loop.
i,j,*k=ntuple
print(i,j,k,sep='\n')
('id', 'sal', 'name', 'email', 'married')
(1, 5.2, 'User1', 'user1@gmail.com', True)
[(2, 4.8, 'User2', 'user2@gmail.com', True), (3, 6.3, 'User3', 'user3@gmail.com', True)]
PythonANCOVA is an extension of ANOVA (Analysis of Variance) that combines blocks of regression analysis and ANOVA. Which makes it Analysis of Covariance.
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