There are several good answers here. I've written and tested some code.

First here is an naive implementation of the requirements:

```
import pprint
t = [
[ 23, None, 'Delhi', None, 0.33 ],
[ None, 'M', 'Mumbai', None, 0.78 ],
[ None, None, None, 'Hindu', 0.23 ],
[ 34, 'F', 'Chennai', None, 0.33 ],
]
rlen = len(t[0])
# None may require special handling
m = [23, 'M', 'Delhi', 'Hindu', None]
a = [[] for i in range(rlen+1)]
for r in t:
s = sum([1 for i in range(rlen) if r[i] == m[i]])
if 0 < s:
a[s].append(r)
# Print rows from least matching to most matching (easy to reverse)
rtable = [row for n in a for row in n]
pprint.pprint(rtable)
```

The problem is we scan each row and check each element value. To avoid the need to sort at the end, we keep separate lists for each possible match count, then we flatten our list of lists for the final result. I expect this to perform about O(n) relative to the size of table, worse if we have a large number of matches (building a large result list will be slower than O(n), approaching O(n^2) as a worst case).

We can speed things up If we index the table. We can use one dict per column and combine columns using sets.

```
from collections import defaultdict
import pprint
# data table
TABLE = [
[ 23, None, 'Delhi', None, 0.33 ],
[ None, 'M', 'Mumbai', None, 0.78 ],
[ None, None, None, 'Hindu', 0.23 ],
[ 34, 'F', 'Chennai', None, 0.33 ],
]
# The index is a list of dicts, cdictlist.
# cdictlist is indexed by column number to get the column dict.
# The column dict's key is the data value of the column
def BuildIndex(table):
rlen = len(table[0])
rrange = range(rlen)
cdictlist = [defaultdict(set) for i in range(rlen+1)]
for ir in range(len(table)):
r = table[ir]
for ic in rrange:
f = r[ic]
cdictlist[ic][f].add(ir)
return cdictlist
def multisearch(table, match, cdictlist):
# rcounts is row counts, number of times columns have matched for a row
rccounts = defaultdict(int)
#rset is the result set, set of row indexes returned for this search
rset = set()
for ic in range(len(table[0])):
cset = cdictlist[ic].get(match[ic], set())
rset = rset.union(cset)
for i in cset:
rccounts[i] += 1
# sort the list by column match count, original row index
l = sorted((v,k) for (k,v) in rccounts.iteritems())
# return list of rows, for each row we return (count, index, raw data)
lr = [ [l[i][0], l[i][1]] + table[l[i][1]] for i in range(len(l)) ]
return lr
def main():
cdictlist = BuildIndex(TABLE)
# None may require special handling
match = [23, 'M', 'Delhi', 'Hindu', None]
lr = multisearch(TABLE, match, cdictlist)
pprint.pprint(lr)
if __name__ == '__main__':
main()
```

The performance will depend on how many records are returned rather than the size of the table. The set union operation will quickly become problematic for large number of matches. And a record matches if *any* field matches and one of the example fields is Gender, so we should expect at least half the rows to be returned.

This approach would work *much* better if you had to match all the columns. We might be able to improve this by building the set of records **NOT** returned (using set intersection), then filtering out those records.