First graph generate dictionaries per columns, so output is few very long dictionaries, number of dicts depends of number of columns.

I test multiple methods with `perfplot`

and fastest method is loop by each column and remove missing values or `None`

s by `Series.dropna`

or with `Series.notna`

in `boolean indexing`

in larger DataFrames.

Is smaller DataFrames is fastest dictionary comprehension with testing missing values by `NaN != NaN`

trick and also testing `None`

s.

```
np.random.seed(2020)
import perfplot
def comp_notnull(df1):
return {k1: {k:v for k,v in v1.items() if pd.notnull(v)} for k1, v1 in df1.to_dict().items()}
def comp_NaNnotNaN_None(df1):
return {k1: {k:v for k,v in v1.items() if v == v and v is not None} for k1, v1 in df1.to_dict().items()}
def comp_dropna(df1):
return {k: v.dropna().to_dict() for k,v in df1.items()}
def comp_bool_indexing(df1):
return {k: v[v.notna()].to_dict() for k,v in df1.items()}
def make_df(n):
df1 = pd.DataFrame(np.random.choice([1,2, np.nan], size=(n, 5)), columns=list('ABCDE'))
return df1
perfplot.show(
setup=make_df,
kernels=[comp_dropna, comp_bool_indexing, comp_notnull, comp_NaNnotNaN_None],
n_range=[10**k for k in range(1, 7)],
logx=True,
logy=True,
equality_check=False,
xlabel='len(df)')
```

Another situtation is if generate dictionaries per rows - get list of huge amount of small dictionaries, then fastest is list comprehension with filtering NaNs and Nones:

```
np.random.seed(2020)
import perfplot
def comp_notnull1(df1):
return [{k:v for k,v in m.items() if pd.notnull(v)} for m in df1.to_dict(orient='r')]
def comp_NaNnotNaN_None1(df1):
return [{k:v for k,v in m.items() if v == v and v is not None} for m in df1.to_dict(orient='r')]
def comp_dropna1(df1):
return [v.dropna().to_dict() for k,v in df1.T.items()]
def comp_bool_indexing1(df1):
return [v[v.notna()].to_dict() for k,v in df1.T.items()]
def make_df(n):
df1 = pd.DataFrame(np.random.choice([1,2, np.nan], size=(n, 5)), columns=list('ABCDE'))
return df1
perfplot.show(
setup=make_df,
kernels=[comp_dropna1, comp_bool_indexing1, comp_notnull1, comp_NaNnotNaN_None1],
n_range=[10**k for k in range(1, 7)],
logx=True,
logy=True,
equality_check=False,
xlabel='len(df)')
```