I have a table with a whole lot of numerical values in it, i know i could extract the column and do a max() on it, but there probably is a way to do this using the inkernel method. Just cant seem to find it though.
In the test I've made, you can achieve over twice faster results using the iterrows method instead of where:
Note that above Tf is the 1000000 entry of that column (which is a Float64). Since the question does not ask for a comparison check, the where test can be spared... Note that the method proposed in the question (loading the data as numpy array) is still somewhat faster (though the difference is less than 3% and gets further smaller for larger datasets, I did not test over 10^7 rows). Best results I found where using the max numpy function (see above). I would also be happy to learn of a more efficient method! 


The fastest way I've found to do this is by indexing your table on the cols you are interested in:
Once indexed, getting a max is almost instant:
This will first get the last (corresponding to the largest timestamp) row index from the Index object of your table for the timestamp column ( 


From High Performance Data Management with PyTables & Family (pdf):
Modifying this to use


