I am supposed to perform ETL where source is a large and badly designed sql 2k database and a a better designed sql 2k5 database. I think SSIS is the way to go. Can anyone suggest a to-do list or a checklist or things to watchout for so that I dont forget anything? How should I approach this so that it does not bite me in the rear later on.
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We're doing a huge ETL (moving a client from legacy AS400 apps to Oracle EBS), and we actually have a process that (with modifications) I can recommend:
The trickiest steps are 2 & 3 in my experience - it's sometimes difficult to get the business users to correctly identify all the bits they need in one pass, and can be even harder to properly identify exactly where the data is coming from (though that may have something to do with cryptic file and field names that I'm seeing!). However, this process should help you avoid major misses. |
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I have experience with ETL processes pulling data from 200+ distributed databases to a central database on a daily, weekly, monthly and yearly basis. It is a massive amount of data and there are many issues we have had specific to our situation. But as I see it, there are several items to think about regardless of the situation:
HTH, ill update this if I think of anything else. |
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Some general ETL tips
Points 1-2 and 4-5 mean that you can build a system where all of the code for any given subsystem (e.g. a single dimension or fact table) lives in one and only one place in the system. This type of architecture is also better for larger numbers of data sources. Point 3 is a counterpoint to point 2. Basically the choice between SQL and ETL tooling is a function of transformation complexity and number of source systems. The simpler the data and larger the number of data sources, the stronger the case for a tools-based approach. The more complex the data, the stronger the case for moving to an architecture based on stored procedures. Generally it's better to exclusively or almost exclusively use one or the other but not both. Point 6 is a general performance tip that you will need to observe for large data volumes. Note that you may only need incremental loading for some parts of a system; for smaller reference tables and dimensions you may not need it. Point 5 makes your system easier to test. Testing SCD's or any change based functionality is fiddly, as you have to be able to present more than one version of the source data to the system. If you move the change management functionality into infrastructure code, you can test it in isolation with test data sets. This is a win in testing, as it reduces the complexity of your system testing requirements. Point 7 is germane to any headless process. If it goes tits up during the night, you want some fighting chance of seeing what went wrong the next day. If the code doesn't properly log what's going on and catch errors, you will have a much harder job troubleshooting it. Point 8 gives the data warehouse a life of its own. You can easily add and drop source systems when the warehouse has its own keys. Warehouse keys are also necessary to implement slowly changing dimensions. Point 9 is a maintenance and deployment win, as the ODS can be re-structured if you need to add new systems or change the cardinality of a record. It also means that a dimension can be loaded from more than one place in the ODS (think: adding manual accounting adjustments) without a dependency on the ODS keys. |
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This thread is old, but I want to draw your attention to ConcernedOfTunbridgeWells' answer. It is incredibly good advice, on all points. I could reiterate a few, but that would diminish the rest, and they all deserve close study. |
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