Tag Info

Hot answers tagged

4

You can Use Pentaho data integration tool . Check this out. http://www.pentaho.com/product/data-integration


2

I'd go with a two-phased approach. Here's the general idea (not a full, step-by-step solution). Perform pivot to get all values in separate rows (eg. from "A,B,D,H" do a substring and union the data to get four rows) Perform sort with distinct and insert into target to get IDs assigned. End of mapping one. In mapping two add a Sequence to add row numbers ...


2

Here are some more: Simplifies development and deployment process. Easy to debug and incorporate changes. Would reduce maintenance and enhancement costs. Industry standard ETL tools perform better on large volume of data as they use various techniques like, grid computing, parallel processing, partitioning etc. Can support many types for data as source or ...


2

Surely single machine with 100MM records processing by Hadoop won't give you performance. For Development/Testing purpose you can use single machine with small/moderate amount of data, but not in production. Hadoop Linearly scales it's performace as you add more number of nodes to the cluster. Single machine also can act as a cluster. PIG can run in 2 ...


2

SELECT table1.column1, table2.column2... FROM table1, table2 A cartesian join is a cross join in MS-SQL world. Use cross join without a where clause A step-by-step in SSIS for cross join: http://toddmcdermid.blogspot.be/2010/09/performing-cross-join-cartesian-product.html Some SQL Server documentation about cross join: ...


1

Add an identical column to both the sources and assign it the same value, say 1. So all the 10 rows in table1 and 20 rows in table2 have the value of "1" for that column. When you now do a merge join, keeping the join type as full outer join, Voila!, you have your cross join. Do keep in mind, the sources need to be sorted on that column for SSIS to go ahead ...


1

Assuming you'd like one line of output for each serial number (the question shows five output lines but I think you mean four): In the Get XML Data step Content tab Set Loop XPath to /LineHeader/LineItem/Product/SerialNumberHeader Fields tab Name XPath Element LineNumber ../../../LineNumber Attribute Product SKU ...


1

Potential advantages of pyodbc over pypyodbc by being written in C would be: speed - see the pypyodbc wiki comparison more conservative memory usage Potential advantages of pypyodbc over pyodbc by written in Python would be: Less likely to contain C pointer issues Slightly less likely to contain memory allocation issues Simpler to maintain; a ...


1

I think I can relate to this use case. Any how, Data Pipeline does not do this kind of dependency management on its own. It however can be simulated using file preconditions. In this example, your child pipelines may depend on a file being present (as a precondition) before starting. A Master pipeline would create trigger files based on some logic ...


1

This works very well and thanks for the solution. I used this to convert some visual foxpro dbf tables to flat files. With these tables, there is the additional challenge of converting fields of type Currency. Currency fields are a 64-bit (8 byte) signed integer amidst a 36 element byte array starting at the 27th position. The integer is then divided by 1000 ...


1

This is assuming that your input always as your desired name as the 4th section in the filename. Only 1 thing is a magic number, as I dont know of another way you expect your data to be named. # the path of your files path = 'C:\\Users\\Office\\Desktop\\TEST\\LOAD' # the place you want to output your files # set to input because i have no idea where you ...


1

All you need is a Dataflow Task with an OLEDB source and an OLE DB Command transformation. The OLEDB source SELECTs from the table that you want to perform the row-by-row stored procedure on. It then is followed by an OLE DB Command transformation that calls the stored procedure and passes columns from the data flow to the parameters of the stored ...


1

The usual pattern - regardless of what tools you're using to populate your data warehouse - is to populate your Dimension before you populate your Fact, precisely to avoid this problem. The usual way to do things is to have a package which pulls out your Dimension data from your source system(s), and then load any new rows into your Dimension table. Then, ...



Only top voted, non community-wiki answers of a minimum length are eligible