I am trying to find the average time between two processes. Each record is a repair process with an part ID, a start date, and an end date. For a given ID, only one repair process can occur at a time. See sample data below:

123  1/2/2006   2/3/2006
124  1/3/2006   4/2/2006
123  3/5/2006   3/7/2006
123  6/2/2006   6/4/2006
123  6/8/2006   6/9/2006
124  6/2/2006   6/4/2006
124  6/5/2006   6/9/2006
124  6/10/2006   6/12/2006

The information I need is the difference between the END_DATE and START_DATE for a given ID. For example, for ID 123, the time between its first process and the second process is 3/5/2006 - 2/3/2006. If the list were longer, I would then take the all those differences and take the average of them.

The output would be something like this:

ID  AverageTime
123   4.3
124   2.3

My approach is to create a macro based on the following steps:

  1. Create list of unique IDs.
  2. For each ID in list, create table of just that ID.
  3. Calculate the difference between START_DATE and END_DATE for that ID using the LAG function.
  4. Average the difference and append to list of unique IDs.

I think this would work, but may take a long time because there are 400k rows. Is there a way to do this without a macro? How might this process be optimized as the server I am running this on is very slow?

  • You don't need a macro. Show what you want as output and a larger input set. This is at most a simple data step and PROC MEANs or a single SQL query. – Reeza Dec 5 '17 at 21:11
  • And 400K records is trivial these days, you should be able to process this is less than a minute on your server. – Reeza Dec 5 '17 at 21:11
  • And do you mean the third and first process? Your date references don't seem correct. – Reeza Dec 5 '17 at 21:12
  • @Reeza. Updated the question. Also, by first and second I mean first and second for that ID. – falling_up Dec 5 '17 at 21:16
  • 1
    And are your dates mmddyy or ddmmyy? – Reeza Dec 5 '17 at 21:36
up vote 2 down vote accepted

You can do it in a data step and a PROC MEANS. Use LAG() to find the previous value. You cannot use DIF() here because you're looking at different variables.

data middle_step;
set have;
by id;

lag_end = lag(end_date);
duration = start_date-lag_end;

if first.id then duration=.;


proc means data=middle_step mean;
class id;
var duration;
  • I am going to try this, but doesn't this have some overlap on ID then, even if sorted? At the end of each section of each ID, this compares START_DATE for the next ID to the end date of the last ID, right? – falling_up Dec 5 '17 at 22:21
  • Try it. if first.id resets it so that it is missing by default for the first record. – Reeza Dec 5 '17 at 22:46

Here is the "SAS-y" way of doing it.

First your data:

data have;
informat start_date end_date mmddyy10.;
format start_date end_date mmddyy10.;
123  1/2/2006   2/3/2006
124  1/3/2006   4/2/2006
123  3/5/2006   3/7/2006
123  6/2/2006   6/4/2006
123  6/8/2006   6/9/2006
124  6/2/2006   6/4/2006
124  6/5/2006   6/9/2006
124  6/10/2006   6/12/2006

Sort by the ID and Start_Date:

proc sort data=have;
by id start_date;

Next add a record count for each id and a link to the previous one.

data tmp;
set have;
by id;
if first.id then 
    id_cnt = 0;

id_cnt + 1;
id_last = id_cnt-1;

Then join the data to itself taking the mean of the difference between first end and next start:

proc sql noprint;
create table want as
select a.id
     , mean(b.start_date - a.end_date) as ave
    from tmp as a,
         tmp as b
    where a.id=b.id and 
    group by a.id;

Working off Dom's input and sort, this DOW loop will compute each id's mean gap in a single pass:

... input ...
... sort ...

data want(keep=id gap_mean);
  do _n_ = 1 by 1 until (last.id);
    set have;
    by id;

    if prior_end then gap_sum = sum ( gap_sum, end_date - prior_end );
    prior_end = end_date;

  gap_mean = gap_sum / (_n_ - 1);  * number of gaps is the number of iterations less 1;

Code items of note:

  • set and by statement inside loop
  • loop iterations tracked with _n_ (convenience - reuse of automatic variable)
  • until (last.id) loop test works because every by group has at least one row and flag is set at last row in group
  • gap_sum computed with sum() so the first gap can accumulated cleanly.
    • Alternative ... then gap_sum = gap_sum + end_date-prior_end works, but would cause the LOG to sho NOTE: Missing values were generated as a result of performing an operation on missing values.
    • Alternative ... then gap_sum + (end_date - prior_date) works without the NOTE, but the + operator would cause gap_sum to be implicitly RETAINed, which means gap_sum would have to be explicitly reset before the do
  • prior_end is a manual lag for next iter
  • when a group is finished the mean is computed and implicitly output
  • when implicit loop returns to top it will be the start of the next group. Non-retained variables will get reset to missing (.) Those of importance are gap_sum and prior_end

The calculation can also be done in a single SQL query:

proc sql;
  create table want as
    select id,mean(dif) as mean_dif from(
       select a.id,min(b.start_date-a.end_date) as dif
       from have a,have b
       where a.id=b.id
         and a.end_date<b.start_date
       group by a.id,a.start_date)
    group by id;

But a datastep solution may run faster, if that matters.

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