I am new to prolog and am considering using it for a small data analysis application. Here is what I am seeking to accomplish:

I have a csv file with some data of the following from:

```
a,b,c
d,e,f
g,h,i
...
```

The data is purely numerical and I need to do the following: 1st, I need to group rows according to the following scheme:

So what's going on above?

I start at the 1st row, which has value 'a' in column one. Then, I keep going down the rows until I hit a row whose value in column one differs from 'a' by a certain amount, 'z'. The process is then repeated, and many "groups" are formed after the process is complete.

For each of these groups, I want to find the mean of columns two and three (as an example, for the 1st group in the picture above, the mean of column two would be: (b+e+h)/3).

I am pretty sure this can be done in prolog. However, I have 50,000+ rows of data and since prolog is declarative, I am not sure how efficient prolog would be at accomplishing the above task?

Is it feasible to work out a prolog program to accomplish the above task, so that efficiency of the program is not significantly lower than a procedural analog?

`library(pio)`

. Code can now run side effect free and with space overheads proportional to the number of open choice points only. Typically, for a deterministic parsing this means constant space overheads. – false Nov 1 '13 at 3:38`grep`

is just as space efficient as the procedural counterpart. – false Nov 1 '13 at 3:49