Lets imagine you have a DataFrame df with a large number of columns, say 50, and df does not have any indexes (i.e. index_col=None). You would like to select a subset of the columns as defined by a required_columns_list, but would like to only return those rows meeting a mutiple criteria as defined by various boolean indexes. Is there a way to consicely generate the selection statement using a dict generator?

As an example:

```
df = pd.DataFrame(np.random.randn(100,50),index=None,columns=["Col" + ("%03d" % (i + 1)) for i in range(50)])
# df.columns = Index[u'Col001', u'Col002', ..., u'Col050']
required_columns_list = ['Col002', 'Col012', 'Col025', 'Col032', 'Col033']
```

now lets imagine that I define:

```
boolean_index_dict = {'Col001':"MyAccount", 'Col002':"Summary", 'Col005':"Total"}
```

I would like to select out using a dict generator to construct the multiple boolean indices:

```
df.loc[GENERATOR_USING_boolean_index_dict, required_columns_list].values
```

The above generator boolean method would be the equivalent of:

```
df.loc[(df['Col001']=="MyAccount") & (df['Col002']=="Summary") & (df['Col005']=="Total"), ['Col002', 'Col012', 'Col025', 'Col032', 'Col033']].values
```

Hopefully, you can see that this would be really useful 'template' in operating on large DataFrames and the boolean indexing can then be defined in the boolean_index_dict. I would greatly appreciate if you could let me know if this is possible in Pandas and how to construct the GENERATOR_USING_boolean_index_dict? Many thanks and kind regards, Bertie

p.s. If you would like to test this out, you will need to populate some of df columns with text. The definition of df using random numbers was simply given as a starter if required for testing...