Is there an equivalent Python function similar to complete.cases in R - python

I am removing a number of records in a pandas data frame which contains diverse combinations of NaN in the 4-columns frame. I have created a function called complete_cases to provide indexes of rows which met the following condition: all columns in the row are NaN.
I have tried this function below:
def complete_cases(dataframe):
indx = []
indx = [x for x in list(dataframe.index) \
if dataframe.loc[x, :].isna().sum() ==
len(dataframe.columns)]
return indx
I am wondering should this is optimal enough or there is a better way to do this.

Absolutely. All you need to do is
df.dropna(axis = 0, how = 'any', inplace = True)
This will remove all rows that have at least one missing value, and updates the data frame "inplace".

I'd recommend to use loc, isna, and any with 'columns' axis, like this:
df.loc[df.isna().any(axis='columns')]
This way you'll filter only the results like the complete.cases in R.

A possible solution:
Count the number of columns with "NA" creating a column to save it
Based on this new column, filter the rows of the data frame as you wish
Remove the (now) unnecessary column
It is possible to do it with a lambda function. For example, if you want to remove rows that have 10 "NA" values:
df['count'] = df.apply(lambda x: 0 if x.isna().sum() == 10 else 1, axis=1)
df = df[df.count != 0]
del df['count']

Related

pandas df masking specific row by list

I have pandas df which has 7000 rows * 7 columns. And I have list (row_list) that consists with the value that I want to filter out from df.
What I want to do is to filter out the rows if the rows from df contain the corresponding value in the list.
This is what I got when I tried,
"Empty DataFrame
Columns: [A,B,C,D,E,F,G]
Index: []"
df = pd.read_csv('filename.csv')
df1 = pd.read_csv('filename1.csv', names = 'A')
row_list = []
for index, rows in df1.iterrows():
my_list = [rows.A]
row_list.append(my_list)
boolean_series = df.D.isin(row_list)
filtered_df = df[boolean_series]
print(filtered_df)
replace
boolean_series = df.RightInsoleImage.isin(row_list)
with
boolean_series = df.RightInsoleImage.isin(df1.A)
And let us know the result. If it doesn't work show a sample of df and df1.A
(1) generating separate dfs for each condition, concat, then dedup (slow)
(2) a custom function to annotate with bool column (default as False, then annotated True if condition is fulfilled), then filter based on that column
(3) keep a list of indices of all rows with your row_list values, then filter using iloc based on your indices list
Without an MRE, sample data, or a reason why your method didn't work, it's difficult to provide a more specific answer.

Pandas - contains from other DF

I have 2 dataframes:
DF A:
and DF B:
I need to check every row in the DFA['item'] if it contains some of the values in the DFB['original'] and if it does, then add new column in DFA['my'] that would correspond to the value in DFB['my'].
So here is the result I need:
I tought of converting the DFB['original'] into list and then use regex, but this way I wont get the matching result from column 'my'.
Ok, maybe not the best solution, but it seems to be working.
I did cartesian join and then check the records which contains the data needed
dfa['join'] = 1
dfb['join'] = 1
dfFull = dfa.merge(dfb, on='join').drop('join' , axis=1)
dfFull['match'] = dfFull.apply(lambda x: x.original in x.item, axis = 1)
dfFull[dfFull['match']]

How to insert a condition of one line into another in pandas?

I'm with a challenge in python/pandas script.
My data is a gene expression table, which is organized as follow:
Basically, Index 0 contain the both conditions studied, while Index 1 has the information about the gene identified between the samples.
Then, I would like to produce a table with index 0 and 1 close together, as follow:
I've tried a lot of things, such as generate a list of index 0 to join in index 1...
Save me, guys, please!
Thank you
Assuming your first row of column names are in row 0, and your second column names are in row 1 try this:
df.columns = [f'{c1}.{c2}'.strip('.') for c1,c2 in zip(df.loc[0], df.loc[1])]
df.loc[2:]
Should look like this
According to OP's comment, I change the add_suffix function.
construct the dataframe
s1 = "Gene name,Description,Foldchange,Anova,Sample 1,Sample 2,Sample 3,Sample 4,Sample 5,Sample 6".split(",")
s2 = "HK1,Hexokinase,Infinity,0.05,1213,1353,14356,0,0,0".split(",")
df = pd.DataFrame(s2).T
df.columns = s1
define a function, (change the funcition according to different situations)
def add_suffix(x):
try:
flag = int(x[-1])
except:
return x
if flag <= 4:
return x + '.Conditon1'
else:
return x + '.Condition2'
and then assign the columns
cols = df.columns.to_series().apply(add_suffix)
df.columns = cols

Add values to bottom of DataFrame automatically with Pandas

I'm initializing a DataFrame:
columns = ['Thing','Time']
df_new = pd.DataFrame(columns=columns)
and then writing values to it like this:
for t in df.Thing.unique():
df_temp = df[df['Thing'] == t] #filtering the df
df_new.loc[counter,'Thing'] = t #writing the filter value to df_new
df_new.loc[counter,'Time'] = dftemp['delta'].sum(axis=0) #summing and adding that value to the df_new
counter += 1 #increment the row index
Is there are better way to add new values to the dataframe each time without explicitly incrementing the row index with 'counter'?
If I'm interpreting this correctly, I think this can be done in one line:
newDf = df.groupby('Thing')['delta'].sum().reset_index()
By grouping by 'Thing', you have the various "t-filters" from your for-loop. We then apply a sum() to 'delta', but only within the various "t-filtered" groups. At this point, the dataframe has the various values of "t" as the indices, and the sums of the "t-filtered deltas" as a corresponding column. To get to your desired output, we then bump the "t's" into their own column via reset_index().

How to iterate over columns of pandas dataframe to run regression

I have this code using Pandas in Python:
all_data = {}
for ticker in ['FIUIX', 'FSAIX', 'FSAVX', 'FSTMX']:
all_data[ticker] = web.get_data_yahoo(ticker, '1/1/2010', '1/1/2015')
prices = DataFrame({tic: data['Adj Close'] for tic, data in all_data.iteritems()})
returns = prices.pct_change()
I know I can run a regression like this:
regs = sm.OLS(returns.FIUIX,returns.FSTMX).fit()
but how can I do this for each column in the dataframe? Specifically, how can I iterate over columns, in order to run the regression on each?
Specifically, I want to regress each other ticker symbol (FIUIX, FSAIX and FSAVX) on FSTMX, and store the residuals for each regression.
I've tried various versions of the following, but nothing I've tried gives the desired result:
resids = {}
for k in returns.keys():
reg = sm.OLS(returns[k],returns.FSTMX).fit()
resids[k] = reg.resid
Is there something wrong with the returns[k] part of the code? How can I use the k value to access a column? Or else is there a simpler approach?
for column in df:
print(df[column])
You can use iteritems():
for name, values in df.iteritems():
print('{name}: {value}'.format(name=name, value=values[0]))
This answer is to iterate over selected columns as well as all columns in a DF.
df.columns gives a list containing all the columns' names in the DF. Now that isn't very helpful if you want to iterate over all the columns. But it comes in handy when you want to iterate over columns of your choosing only.
We can use Python's list slicing easily to slice df.columns according to our needs. For eg, to iterate over all columns but the first one, we can do:
for column in df.columns[1:]:
print(df[column])
Similarly to iterate over all the columns in reversed order, we can do:
for column in df.columns[::-1]:
print(df[column])
We can iterate over all the columns in a lot of cool ways using this technique. Also remember that you can get the indices of all columns easily using:
for ind, column in enumerate(df.columns):
print(ind, column)
You can index dataframe columns by the position using ix.
df1.ix[:,1]
This returns the first column for example. (0 would be the index)
df1.ix[0,]
This returns the first row.
df1.ix[:,1]
This would be the value at the intersection of row 0 and column 1:
df1.ix[0,1]
and so on. So you can enumerate() returns.keys(): and use the number to index the dataframe.
A workaround is to transpose the DataFrame and iterate over the rows.
for column_name, column in df.transpose().iterrows():
print column_name
Using list comprehension, you can get all the columns names (header):
[column for column in df]
Based on the accepted answer, if an index corresponding to each column is also desired:
for i, column in enumerate(df):
print i, df[column]
The above df[column] type is Series, which can simply be converted into numpy ndarrays:
for i, column in enumerate(df):
print i, np.asarray(df[column])
I'm a bit late but here's how I did this. The steps:
Create a list of all columns
Use itertools to take x combinations
Append each result R squared value to a result dataframe along with excluded column list
Sort the result DF in descending order of R squared to see which is the best fit.
This is the code I used on DataFrame called aft_tmt. Feel free to extrapolate to your use case..
import pandas as pd
# setting options to print without truncating output
pd.set_option('display.max_columns', None)
pd.set_option('display.max_colwidth', None)
import statsmodels.formula.api as smf
import itertools
# This section gets the column names of the DF and removes some columns which I don't want to use as predictors.
itercols = aft_tmt.columns.tolist()
itercols.remove("sc97")
itercols.remove("sc")
itercols.remove("grc")
itercols.remove("grc97")
print itercols
len(itercols)
# results DF
regression_res = pd.DataFrame(columns = ["Rsq", "predictors", "excluded"])
# excluded cols
exc = []
# change 9 to the number of columns you want to combine from N columns.
#Possibly run an outer loop from 0 to N/2?
for x in itertools.combinations(itercols, 9):
lmstr = "+".join(x)
m = smf.ols(formula = "sc ~ " + lmstr, data = aft_tmt)
f = m.fit()
exc = [item for item in x if item not in itercols]
regression_res = regression_res.append(pd.DataFrame([[f.rsquared, lmstr, "+".join([y for y in itercols if y not in list(x)])]], columns = ["Rsq", "predictors", "excluded"]))
regression_res.sort_values(by="Rsq", ascending = False)
I landed on this question as I was looking for a clean iterator of columns only (Series, no names).
Unless I am mistaken, there is no such thing, which, if true, is a bit annoying. In particular, one would sometimes like to assign a few individual columns (Series) to variables, e.g.:
x, y = df[['x', 'y']] # does not work
There is df.items() that gets close, but it gives an iterator of tuples (column_name, column_series). Interestingly, there is a corresponding df.keys() which returns df.columns, i.e. the column names as an Index, so a, b = df[['x', 'y']].keys() assigns properly a='x' and b='y'. But there is no corresponding df.values(), and for good reason, as df.values is a property and returns the underlying numpy array.
One (inelegant) way is to do:
x, y = (v for _, v in df[['x', 'y']].items())
but it's less pythonic than I'd like.
Most of these answers are going via the column name, rather than iterating the columns directly. They will also have issues if there are multiple columns with the same name. If you want to iterate the columns, I'd suggest:
for series in (df.iloc[:,i] for i in range(df.shape[1])):
...
assuming X-factor, y-label (multicolumn):
columns = [c for c in _df.columns if c in ['col1', 'col2','col3']] #or '..c not in..'
_df.set_index(columns, inplace=True)
print( _df.index)
X, y = _df.iloc[:,:4].values, _df.index.values

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