Extract value from dict in pandas dataframe - python

I am trying to extract all values only and change it to dataframe
My code:
miss = pd.DataFrame({'currency': x, 'balance': miss.values()})
Output:
balance
currency
SNIP (0.007275)
TEM (15.97)
1WO (6.51)
The output is not correct as it seems that it is still in dict type as demonstrated by the output into an excel sheet where it is written dict_values([0.02706]) in each excel cell.
Could you help me to create the correct dataframe please.

Use list comprehension if miss.values() has one element lists:
miss = pd.DataFrame({'currency': x, 'balance': [x[0] for x in miss.values()]})
Or pandas altrnative with indexing str[0]:
miss = pd.DataFrame({'currency': x, 'balance': miss.values()})
miss['balance'] = miss['balance'].str[0]

Related

How to map column of lists with values in a dictionary using pandas

I'm new to pandas and I want to know if there is a way to map a column of lists in a dataframe to values stored in a dictionary.
Lets say I have the dataframe 'df' and the dictionary 'dict'. I want to create a new column named 'Description' in the dataframe where I can see the description of the Codes shown. The values of the items in the column should be stored in a list as well.
import pandas as pd
data = {'Codes':[['E0'],['E0','E1'],['E3']]}
df = pd.DataFrame(data)
dic = {'E0':'Error Code', 'E1':'Door Open', 'E2':'Door Closed'}
Most efficient would be to use a list comprehension.
df['Description'] = [[dic.get(x, None) for x in l] for l in df['Codes']]
output:
Codes Description
0 [E0] [Error Code]
1 [E0, E1] [Error Code, Door Open]
2 [E3] [None]
If needed you can post-process to replace the empty lists with NaN, use an alternative list comprehension to avoid non-matches: [[dic[x] for x in l if x in dic] for l in df['Codes']], but this would probably be ambiguous if you have one no-match among several matches (which one is which?).

How to split df with a column of dictionary need to split all its values and keys into respective coulmn

{'labels': ['travel', 'dancing', 'cooking'],
'scores': [0.9938651323318481, 0.0032737774308770895, 0.002861034357920289],
'sequence': 'one day I will see the world'}
i have this a df['prediction'] column i want to split this result into three different column as df['travel'],df['dancing'],df['cooking'] and their respective scores i am sorry if the question is not appropriaterequired result
required result
you can edit your data as a list of dicts and each dict is row data
and at the end, you can you set_index you select the index
import pandas as pd
list_t = [{
"travel":0.9938651323318481,
"dancing": 0.0032737774308770895,
"cooking":0.002861034357920289,
"sequence":'one day I will see the world'
}]
df = pd.DataFrame(list_t)
df.set_index("sequence")
#output
travel dancing cooking
sequence
one day I will see the world 0.993865 0.003274 0.002861
What you can do is iterate over this dict and make another dictionary
say s is the source dictionary and x is the new dictionary that you want
x = {}
x['sequence']=s['sequence']
for i, l in enumerate(s['labels']):
x[l] = s['scores'][i]
This should solve your problem.

Creating List Comprehension using pandas dataframe

I am new to pandas, and I would appreciate any help. I have a pandas dataframe that comes from csv file. The data contains 2 columns : dates and cashflows. Is it possible to convert these list into list comprehension with tuples inside the list? Here how my dataset looks like:
2021/07/15 4862.306832
2021/08/15 3474.465543
2021/09/15 7121.260118
The desired output is :
[(2021/07/15, 4862.306832),
(2021/08/15, 3474.465543),
(2021/09/15, 7121.260118)]
use apply with lambda function
data = {
"date":["2021/07/15","2021/08/15","2021/09/15"],
"value":["4862.306832","3474.465543","7121.260118"]
}
df = pd.DataFrame(data)
listt = df.apply(lambda x:(x["date"],x["value"]),1).tolist()
Output:
[('2021/07/15', '4862.306832'),
('2021/08/15', '3474.465543'),
('2021/09/15', '7121.260118')]

Changing column values for a value in an adjacent column in the same dataframe using Python

I am quite new to Python programming.
I am working with the following dataframe:
Before
Note that in column "FBgn", there is a mix of FBgn and FBtr string values. I would like to replace the FBtr-containing values with FBgn values provided in the adjacent column called "## FlyBase_FBgn". However, I want to keep the FBgn values in column "FBgn". Maybe keep in mind that I am showing only a portion of the dataframe (reality: 1432 rows). How would I do that? I tried the replace() method from Pandas, but it did not work.
This is actually what I would like to have:
After
Thanks a lot!
With Pandas, you could try:
df.loc[df["FBgn"].str.contains("FBtr"), "FBgn"] = df["## FlyBase_FBgn"]
Welcome to stackoverflow. Please next time provide more info including your code. It is always helpful
Please see the code below, I think you need something similar
import pandas as pd
#ignore the dict1, I just wanted to recreate your df
dict1= {"FBgn": ['FBtr389394949', 'FBgn3093840', 'FBtr000025'], "FBtr": ['FBgn546466646', '', 'FBgn15565555']}
df = pd.DataFrame(dict1) #recreating your dataframe
#print df
print(df)
#function to replace the values
def replace_values(df):
for i in range(0, (df.size//2)):
if 'tr' in df['FBgn'][i]:
df['FBgn'][i] = df['FBtr'][i]
return df
df = replace_values(df)
#print new df
print(df)

Create a dictionary from pandas empty dataframe with only column names

I have a pandas data frame with only two column names( single row, which can be also considered as headers).I want to make a dictionary out of this with the first column being the value and the second column being the key.I already tried the
to.dict() method, but it's not working as it's an empty dataframe.
Example
df=|Land |Norway| to {'Land': Norway}
I can change the pandas data frame to some other type and find my way around it, but this question is mostly to learn the best/different/efficient approach for this problem.
For now I have this as the solution :
dict(zip(a.iloc[0:0,0:1],a.iloc[0:0,1:2]))
Is there any other way to do this?
Here's a simple way convert the columns to a list and a list to a dictionary
def list_to_dict(a):
it = iter(a)
ret_dict = dict(zip(it, it))
return ret_dict
df = pd.DataFrame([], columns=['Land', 'Normway'])
dict_val = list_to_dict(df.columns.to_list())
dict_val # {'Land': 'Normway'}
Very manual solution
df = pd.DataFrame(columns=['Land', 'Norway'])
df = pd.DataFrame({df.columns[0]: df.columns[1]}, index=[0])
If you have any number of columns and you want each sequential pair to have this transformation, try:
df = pd.DataFrame(dict(zip(df.columns[::2], df.columns[1::2])), index=[0])
Note: You will get an error if your DataFrame does not have at least two columns.

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