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We have a table with around 2 billions of records. Simple select query also taking lots of time to fetch the records. We tried Indexing & partitioning options but didn't got any help. Any pointers will be appreciated.

table structure:

     id           NUMBER PRIMARY KEY,
     created_date DATE,
     topic1       NUMBER,
     topic2       NUMBER

Query i am trying is like:

FROM   sample
WHERE  created_date = to_date('10/16/2011', 'MM/DD/YY');  
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closed as not a real question by Grant Thomas, Martin Smith, Michael Petrotta, Marc B, limc Nov 16 '11 at 17:29

It's difficult to tell what is being asked here. This question is ambiguous, vague, incomplete, overly broad, or rhetorical and cannot be reasonably answered in its current form. For help clarifying this question so that it can be reopened, visit the help center. If this question can be reworded to fit the rules in the help center, please edit the question.

Can't help without more info. Please post the table definition (including indexes, PKs etc.) and the query that is slow. Also, is this SQL Server or Oracle or both? –  MusiGenesis Nov 16 '11 at 17:17
This question is, among other things, lacking a query. –  Grant Thomas Nov 16 '11 at 17:17
This question is unanswerable without more detailed information about the table structure, the indexes you tried, the variance of the data within columns for making them index candidates, a "simple select" example you tried, etc, etc, etc. –  HardCode Nov 16 '11 at 17:18
Ahh yes, the elusive SQL Server/Oracle RDBMS accessed via Java. I once sighted it in the depths of Patagarang. Actually, I'm making that up, much like your tags. What is the actual RDBMS this applies to? Can you provide examples of the table structures, indexes, partition functions, and queries that you have tried and that are proving to be not responsive enough. Can you also describe the hardware for the database server –  billinkc Nov 16 '11 at 17:20
You should be able to improve performance 100% by using hardware that is twice as fast. Alternatively, it might be cheaper to just delete half of your records. That will give a significant performance boost as well. Problem solved. –  mdahlman Nov 16 '11 at 17:22

3 Answers 3

Your question is really too vague for anyone to be able to provide any detailed useful help. However, some questions to ask yourself:

  • Have you run a query plan to determine whether the expected indices are being used? What are the query hotspots? For example, perhaps a loop join is being performed where a hash join would be more efficient.
  • Is it possible to partition the data either explicitly yourself or by using something like SQL Server Partitioning (you've put Oracle and SQL Server as tags so I'm not sure which database server you're using). For the former approach you could create one table per year for example, assuming your data can be represented as a time series.
  • How are you clustering your data and does it match the typical access pattern?
  • How many records are you fetching at once? Is there scope for caching these within a server application (assuming a 3 tier architecture).
  • Is the data fully normalised? i.e. Is each table row represented in as compact format as possible?
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If you have to fetch all records no indexing will help you. But if you have to select some of queries indexing of fields that you are using in your query and partitioning help very well.

Also check what are the fields that you really need. Probably you do not need all fields but fetch them anyway? And yet another tip. If you have complex where clause with AND between conditions think about the order of your conditions. If for example the first condition uses numeric indexed field and is expected to filter 100 records while second condition uses like on text field and is expected to filter 10000 records use the numeric condition first.

But if nothing helps you probably should think about NoSQL storage like Redis or Cassandra.

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For the example you have given, I would suggest that you do some summarization. Create a summary table in which you store the count of records per day. Update daily.

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