I am analysing intra-day volume profiles on stocks. I have built a (rough) piece of code that does 2 things well, but slowly. One stock can have north of 200k trades over a given period and I want to analyse around 200 stocks.

My code looks over 3 months' worth of trade data, binning the data into 10 minute buckets for each day. I do this to make sure a stock trades at least x value per bucket. I then aggregate the intra day buckets to just time buckets to get a sense of the average volume distribution.

Code sample below just shows how I bin data and then aggregate by bin:

```
% Totals by time bucket
for i = 1:size(VALUE,1)
MyDay = day(datenum(sprintf('%d',VALUE(i,1)),'yyyymmdd'));
MyMonth = month(datenum(sprintf('%d',VALUE(i,1)),'yyyymmdd'));
MyYear = year(datenum(sprintf('%d',VALUE(i,1)),'yyyymmdd'));
StartHour = hour(VALUE(i,2));
StartMinute = minute(VALUE(i,2));
EndHour = hour(VALUE(i,3));
EndMinute = minute(VALUE(i,3));
if StartMinute ~= 50
t = (day(MyTrades(:,1)) == MyDay & month(MyTrades(:,1)) == MyMonth & year(MyTrades(:,1)) == MyYear & hour(MyTrades(:,1)) == StartHour & minute(MyTrades(:,1)) >= StartMinute & minute(MyTrades(:,1)) <= EndMinute);
else
t = (day(MyTrades(:,1)) == MyDay & month(MyTrades(:,1)) == MyMonth & year(MyTrades(:,1)) == MyYear & hour(MyTrades(:,1)) == StartHour & hour(MyTrades(:,1)) < EndHour & minute(MyTrades(:,1)) >= StartMinute);
end
tt = MyTrades(t,:);
MyVALUE(i,1) = sum(tt(:,5));
end
% Aggregate totals
for ii = 1:50
VWAP(ii,1) = datenum(0,0,0,9,0,0)+datenum(0,0,0,0,10,0)*ii-datenum(0,0,0,0,10,0) ;
VWAP(ii,2) = datenum(0,0,0,9,0,0)+datenum(0,0,0,0,10,0)*ii;
StartTime = VWAP(ii,1);
temp = (VALUE(:,2) == StartTime);
temp2 = VALUE(temp,:);
VWAP(ii,3) = sum(temp2(:,4))/100;
end
```

Is there a more elegant and (more importantly) faster way of calculating these types of "brute force" analyses?