Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I have two tables, records are being continuously inserted to these tables from outside source. Lets say these tables are keeping statistics of user interactions. When a user is clicking a button the details of that click (the user, time of click etc.) is written to one of the tables. When a user mouseovers that button a record is added with details to other table.

If there are lots of users constantly interacting with the system, there will be lots of data generated, and those tables will grow enormously.

When I want to look at the data, I want to see it in hourly or daily resolution.

Is there a way, or best practice to continuously summarize the data incrementally (as the data is collected) in the demanded resolution?

Or is there a better approach to this kind of problem?

PS. What I found so far is ETL tools like Talend could make life easy.

Update: I am using MySQL at the moment, but I am wondering the best practices regardless of DB, environment etc.

share|improve this question
What are you currently using to store these tables ? Unless you tell us we risk making recommendations that don't fit with your current operations. –  High Performance Mark Jan 14 '10 at 19:04

6 Answers 6

up vote 8 down vote accepted

The normal way to do this on a low-latency data warehouse application is to have a partitioned table with a leading partition containing something that can be updated quickly (i.e. without having to recalculate aggregates on the fly) but with trailing partitions backfilled with the aggregates. In other words, the leading partition can use a different storage scheme to the trailing partitions.

Most commercial and some open-source RDBMS platforms (e.g. PostgreSQL) can support partitioned tables, which can be used to do this type of thing one way or another. How you populate the database from your logs is left as an exercise for the reader.

Basically, the structure of this type of system goes like:

  • You have a table partitioned on some sort of date or date-time value, partitioned by hour, day or whatever grain seems appropriate. The log entries get appended to this table.

  • As the time window slides off a partition, a periodic job indexes or summarises it and converts it into its 'frozen' state. For example, a job on Oracle may create bitmap indexes on that partition or update a materialized view to include summary data for that partition.

  • Later on, you can drop old data, summarize it or merge partitions together.

  • As time goes on, the periodic job back fills behind the leading edge partition. The historical data is converted to a format that lends itself to performant statistical queries while the front edge partition is kept easy to update quickly. As this partition doesn't have so much data, querying across the whole data set is relatively fast.

The exact nature of this process varies between DBMS platforms.

For example, table partitioning on SQL Server is not all that good, but this can be done with Analysis Services (an OLAP server that Microsoft bundles with SQL Server). This is done by configuring the leading partition as pure ROLAP (the OLAP server simply issues a query against the underlying database) and then rebuilding the trailing partitions as MOLAP (the OLAP server constructs its own specialised data structures including persistent summaries known as 'aggregations'). Analysis services can do this completely transparently to the user. It can rebuild a partition in the background while the old ROLAP one is still visible to the user. Once the build is finished it swaps in the partition; the cube is available the whole time with no interruption of service to the user.

Oracle allows partition structures to be updated independently, so indexes can be constructed, or a partition built on a materialized view. With Query re-write, the query optimiser in Oracle can work out that aggregate figures calculated from a base fact table can be obtained from a materialized view. The query will read the aggregate figures from the materialized view where partitions are available and from the leading edge partition where they are not.

PostgreSQL may be able to do something similar, but I've never looked into implementing this type of system on it.

If you can live with periodic outages, something similar can be done explicitly by doing the summarisation and setting up a view over the leading and trailing data. This allows this type of analysis to be done on a system that doesn't support partitioning transparently. However, the system will have a transient outage as the view is rebuilt, so you could not really do this during business hours - the most often would be overnight.

Edit: Depending on the format of the log files or what logging options are available to you, there are various ways to load the data into the system. Some options are:

  • Write a script using your favourite programming language that reads the data, parses out the relevant bits and inserts it into the database. This could run fairly often but you have to have some way of keeping track of where you are in the file. Be careful of locking, especially on Windows. Default file locking semantics on Unix/Linux allow you to do this (this is how tail -f works) but the default behaviour on Windows is different; both systems would have to be written to play nicely with each other.

  • On a unix-oid system you could write your logs to a pipe and have a process similar to the one above reading from the pipe. This would have the lowest latency of all, but failures in the reader could block your application.

  • Write a logging interface for your application that directly populates the database, rather than writing out log files.

  • Use the bulk load API for the database (most if not all have this type of API available) and load the logging data in batches. Write a similar program to the first option, but use the bulk-load API. This but would use less resources than populating it line-by-line, but has more overhead to set up the bulk loads. It would be suitable a less frequent load (perhaps hourly or daily) and would place less strain on the system overall.

In most of these scenarios, keeping track of where you've been becomes a problem. Polling the file to spot changes might be infeasibly expensive, so you may need to set the logger up so that it works in a way that plays nicely with your log reader.

  • One option would be to change the logger so it starts writing to a different file every period (say every few minutes). Have your log reader start periodically and load new files that it hasn't already processed. Read the old files. For this to work, the naming scheme for the files should be based on the time so the reader knows which file to pick up. Dealing with files still in use by the application is more fiddly (you will then need to keep track of how much has been read), so you would want to read files only up to the last period.

  • Another option is to move the file then read it. This works best on filesystems that behave like Unix ones, but should work on NTFS. You move the file, then read it at leasure. However, it requires the logger to open the file in create/append mode, write to it and then close it - not keep it open and locked. This is definitely Unix behaviour - the move operation has to be atomic. On Windows you may really have to stand over the logger to make this work.

share|improve this answer
Very interesting stuff and well explained. +1 –  monojohnny Jan 15 '10 at 14:58
The information you provided are quite useful, thank you very much. That was something that I did not know that I needed. But my initial question was about populating those partitioned tables. And you left it as an exercise :) Any pointers about how to load the table? –  nimcap Jan 17 '10 at 17:36
I've added something above, but without some more details about the architecture of the system, I can't really recommend a specific approach. However, the edit might give you some ideas. –  ConcernedOfTunbridgeWells Jan 17 '10 at 22:14
thank you very much for your valuable and detailed answer –  nimcap Jan 18 '10 at 11:36

Take a look at RRDTool. It's a round robin database. You define the metrics you want to capture but can also define the resolution that you store it at.

For example, you can specify for the las hour, you keep every seconds worth of information; for the past 24 hours - every minute; for the past week, every hour, etc.

It's widely used to gather stats in systems such as Ganglia and Cacti.

share|improve this answer
You probably wouldn't want the rrdb to be the initial data store. I don't think it can handle concurrent inputs to a single table. Probably best off using a normal database for handling the insertions. But, using the rrdb as the summary information location is a great call. And you don't need any etl tools for this; just insert into the db as you already are. Example flow: 1. Write to db table (from application) 2. rrd pulls data into its data store - optional, trim db table after 2 Done. Then rrdtool will generate images for you. –  coffeepac Jan 11 '10 at 19:20
@coffeepac: The concurrent access problem is easily solved with a queue. I know ganglia is deployed to environments with many thousands of nodes all contributing data back to a single ganglia host and managing concurrent updates isn't a problem. –  Robert Christie Jan 11 '10 at 21:09

When it comes to slicing and aggregating data (by time or something else), the star schema (Kimball star) is a fairly simple, yet powerful solution. Suppose that for each click we store time (to second resolution), user’s info, the button ID, and user’s location. To enable easy slicing and dicing, I’ll start with pre-loaded lookup tables for properties of objects that rarely change -- so called dimension tables in the DW world.

alt text

The dimDate table has one row for each day, with number of attributes (fields) that describe a specific day. The table can be pre-loaded for years in advance, and should be updated once per day if it contains fields like DaysAgo, WeeksAgo, MonthsAgo, YearsAgo; otherwise it can be “load and forget”. The dimDate allows for easy slicing per date attributes like

WHERE [YEAR] = 2009 AND DayOfWeek = 'Sunday'

For ten years of data the table has only ~3650 rows.

The dimGeography table is preloaded with geography regions of interest -- number of rows depend on “geographic resolution” required in reports, it allows for data slicing like

WHERE Continent = 'South America'

Once loaded, it is rarely changed.

For each button of the site, there is one row in the dimButton table, so a query may have

WHERE PageURL = 'http://…/somepage.php'

The dimUser table has one row per registered user, this one should be loaded with a new user info as soon as the user registers, or at least the new user info should be in the table before any other user transaction is recorded in fact tables.

To record button clicks, I’ll add the factClick table.

alt text

The factClick table has one row for each click of a button from a specific user at a point in time. I have used TimeStamp (second resolution), ButtonKey and UserKey in a composite primary key to to filter-out clicks faster than one-per-second from a specific user. Note the Hour field, it contains the hour part of the TimeStamp, an integer in range 0-23 to allow for easy slicing per hour, like


So, now we have to consider:

  • How to load the table? Periodically -- maybe every hour or every few minutes -- from the weblog using an ETL tool, or a low-latency solution using some kind of event-streaming process.
  • How long to keep the information in the table?

Regardless of whether the table keeps information for a day only or for few years -- it should be partitioned; ConcernedOfTunbridgeW has explained partitioning in his answer, so I’ll skip it here.

Now, a few example of slicing and dicing per different attributes (including day and hour)

To simplify queries, I’ll add a view to flatten the model:

/* To simplify queries flatten the model */ 
FROM factClick AS f 
JOIN dimDate AS d ON d.DateKey = f.DateKey 
JOIN dimButton AS b ON b.ButtonKey = f.ButtonKey 
JOIN dimUser AS u ON u.UserKey = f.UserKey 
JOIN dimGeography AS g ON g.GeographyKey = f.GeographyKey

A query example

Count number of times specific users clicked any button  
today between 7 and 9 AM (7:00 - 9:59)
SELECT  [Email] 
       ,COUNT(*) AS [Counter] 
FROM    vClicks 
WHERE   [DaysAgo] = 0 
        AND [Hour] BETWEEN 7 AND 9 
        AND [Email] IN ('dude45@somemail.com', 'bob46@bobmail.com') 
GROUP BY [Email] 
ORDER BY [Email]

Suppose that I am interested in data for User = ALL. The dimUser is a large table, so I’ll make a view without it, to speed up queries.

Because dimUser can be large table it is good 
to have a view without it, to speed-up queries 
when user info is not required 
FROM factClick AS f 
JOIN dimDate AS d ON d.DateKey = f.DateKey 
JOIN dimButton AS b ON b.ButtonKey = f.ButtonKey 
JOIN dimGeography AS g ON g.GeographyKey = f.GeographyKey

A query example

Count number of times a button was clicked on a specific page 
today and yesterday, for each hour. 
SELECT  [FullDate] 
       ,COUNT(*) AS [Counter] 
FROM    vClicksNoUsr 
WHERE   [DaysAgo] IN ( 0, 1 ) 
        AND PageURL = 'http://...MyPage' 
GROUP BY [FullDate], [Hour] 
ORDER BY [FullDate] DESC, [Hour] DESC

Suppose that for aggregations we do not need to keep specific user info, but are only interested in date, hour, button and geography. Each row in the factClickAgg table has a counter for each hour a specific button was clicked from a specific geography area.

alt text

The factClickAgg table can be loaded hourly, or even at the end of each day –- depending on requirements for reporting and analytic. For example, let’s say that the table is loaded at the end of each day (after midnight), I can use something like:

/* At the end of each day (after midnight) aggregate data. */ 
INSERT  INTO factClickAgg 
        SELECT  DateKey 
               ,COUNT(*) AS [ClickCount] 
        FROM    vClicksNoUsr 
        WHERE   [DaysAgo] = 1 
        GROUP BY DateKey 

To simplify queries, I'll create a view to flatten the model:

/* To simplify queries for aggregated data */ 
CREATE VIEW vClicksAggregate 
FROM factClickAgg AS f 
JOIN dimDate AS d ON d.DateKey = f.DateKey 
JOIN dimButton AS b ON b.ButtonKey = f.ButtonKey 
JOIN dimGeography AS g ON g.GeographyKey = f.GeographyKey

Now I can query aggregated data, for example by day :

Number of times a specific buttons was clicked 
in year 2009, by day 
SELECT  FullDate 
       ,SUM(ClickCount) AS [Counter] 
FROM    vClicksAggregate 
WHERE   ButtonName = 'MyBtn_1' 
        AND [Year] = 2009 
GROUP BY FullDate 

Or with a few more options

Number of times specific buttons were clicked 
in year 2008, on Saturdays, between 9:00 and 11:59 AM 
by users from Africa 

SELECT  SUM(ClickCount) AS [Counter] 
FROM    vClicksAggregate 
WHERE   [Year] = 2008 
        AND [DayOfWeek] = 'Saturday' 
        AND [Hour] BETWEEN 9 AND 11 
        AND Continent = 'Africa' 
        AND ButtonName IN ( 'MyBtn_1', 'MyBtn_2', 'MyBtn_3' )
share|improve this answer

You could use an historical db like PI or Historian. Those might be more money than you want to spend for this project, so you might want to look up one of the freeware alternatives, like the Realtime and History Database Package.

share|improve this answer

Quick 'n dirty suggestions.

[Assuming you can't change the underlying tables, that those tables already record the time/date rows were added and that you do have permission to create objects in the DB].

  1. Create a VIEW (or a couple of VIEWS) which has a logical field on it, which generates a unique 'slot-number' by chopping up the date in the tables. Something like:

CREATE VIEW view AS SELECT a,b,c, SUBSTR(date_field,x,y) slot_number FROM TABLE;

The example above is simplified, you probably want to add in more elements from date+time.

[eg, say date is '2010-01-01 10:20:23,111', you could perhaps generate the key as '2010-01-01 10:00': so your resolution is one-hour].

  1. Optionally: use the VIEW to generate a real table, like:

    CREATE TABLE frozen_data AS SELECT * FROM VIEW WHERE slot_number='xxx;

Why bother with step 1? You don't actually have to: just using a VIEW might make things a bit easier (from a SQL point of view).

Why bother with step 2? Just a way of a (possibly) reducing load on the already busy tables: if you can dynamically generate DDL then you could produce separate tables with copies of the 'slots' of data: which you can then work with.

OR you could set up a group of tables : one per hour of the day. Create a trigger to populate the secondary tables : the logic of the trigger could segregrate which table is written to.

On a daily basis you would have to reset these tables: unless you can generate tables in your trigger on your DB. [unlikely I think].

share|improve this answer

A suggestion that has not been given (so far) might be to use couchDB or similar database concepts that deal with unstructured data.

Wait! Before jumping on me in horror, let me finish.

CouchDB collects unstructured data (JSON &c); quoting the technical overview from the website,

To address this problem of adding structure back to unstructured and semi-structured data, CouchDB integrates a view model. Views are the method of aggregating and reporting on the documents in a database, and are built on-demand to aggregate, join and report on database documents. Views are built dynamically and don’t affect the underlying document, you can have as many different view representations of the same data as you like.

View definitions are strictly virtual and only display the documents from the current database instance, making them separate from the data they display and compatible with replication. CouchDB views are defined inside special design documents and can replicate across database instances like regular documents, so that not only data replicates in CouchDB, but entire application designs replicate too.

From your requirements, I can tell you need

  • to collect lots of data in a reliable way
  • the priority is on speed/reliability, not on structuring data as soon as it get into the system nor on maintaining/checking the structural properties of what you collect (even if you miss 1ms of user data it might not be such a big problem)
  • you need structured data when it comes out of the DB

Personally, I'd do something like:

  • cache collected data on client(s) and save it in bursts onto couchdb
  • depending on the workload, keep a cluster of db (again, couchdb has been designed for that) in sync between each other
  • every interval have a server generate a view of the things you need (i.e. every hour, etc) while the other(s) keep collecting data
  • save such (now structured) views into a proper database for manipulation and playing with SQL tools, or whatever

Last point is just an example. I have no idea what you plan to do with it.

share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.