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I have an excel sheet with a million rows. Each row has 100 columns. Each row represents an instance of a class with 100 attributes, and the columns values are the values for these attributes.

What data structure is the most optimal for use here, to store the million instance of data?


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What do you want to do with the data? –  Morten Jensen Jun 19 '12 at 5:04
That depends on how you want to access that data. Sequentially, random access, by a key attribute. –  smichak Jun 19 '12 at 5:05
Also it matters if the data are dense (almost all cells are filled) or sparse (many cells are blank). –  Gene Jun 19 '12 at 5:09
Any reason you aren't using a database package of some kind? SQLite is probably faster and easier than anything you could implement on your own. –  Li-aung Yip Jun 19 '12 at 5:54
I want all the data to be in the memory. I want to be able to access it randomly. The data could have values missing for few attributes in its set. –  Abhishek Shivkumar Jun 19 '12 at 6:44
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6 Answers

It really depends on how you need to access this data and what you want to optimize for – like, space vs. speed.

  • If you want to optimize for space, well, you could just serialize and compress the data, but that would likely be useless if you need to read/manipulate the data.
  • If you access by index, the simplest thing is an array of arrays.
  • If you instead use an array of objects, where each object holds your 100 attributes, you have a better way to structure your code (encapsulation!)
  • If you need to query/search the data, it really depends on the kind of queries. You may want to have a look at BST data structures...
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If you want to store all the data in memory, you can use one of the implementations of Table from Guava, typically ArrayTable for dense tables or HashBasedTable if most cells are expected to be empty. Otherwise, a database (probably with some cache system like ehcache or terracota) would be a better shot.

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One million rows with 100 values where is each value uses 8 bytes of memory is only 800 MB which will easily fit into the memory of most PC esp if they are 64-bit. Try to make the type of each column as compact as possible.

A more efficient way of storing the data is by column. i.e. you have array for each column with a primitive data type. I suspect you don't even need to do this.

If you have many more rows e.g. billions, you can use off heap memory i.e. memory mapped files and direct memory. This can efficient store more data than you have main memory while keeping you heap relatively small. (e.g. 100s of GB off-heap with 1 GB in heap)

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You're right about the memory consumption. If you use a good design it will fit. But perhaps there are nested objects as well and you don't know what memory-consuming code runs as well. So I think loading files like this into memory is not a really good idea. As you said: memory-mapped-files would be a good solution (that I couldn't come up with ;) ) –  AlexS Jun 19 '12 at 8:18
Since the data is derived from an excel spreadsheet, one would hope the contexts of each cell can be kept simple. ;) –  Peter Lawrey Jun 19 '12 at 8:27
Those you can read have a clear advantage! Obviously I didn't read carefully... but nonetheless: 800 MB on the heap is quiet a lot and in my opinion generally too much... –  AlexS Jun 19 '12 at 8:36
Its not idea, but if it makes the code simpler, I wouldn't worry about it too much. Heap sizes up to 4 GB can perform efficiently, depending on what you are doing. Obviously if you use off heap memory, your heap can be less than 64 MB. –  Peter Lawrey Jun 19 '12 at 8:40
I don't doubt it could make good performance. It's just risky in terms of code reusal, since if you have more solutions like that, there will be problems and depending on the platform there will be problems as well. This is why I tend to say: Take a layer of abstraction and don't use the heap like there are no limits to it... But after all it is always a decision based on one's preferences and the purpose of the code and application. –  AlexS Jun 19 '12 at 8:50
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In that kind of data i would prefer using a MYSQL database because it is faster and can accumulate a large file like that.

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The best option would be using a database that can store large number of data and fast enough for faster accessibility like ORACLE, MSSQL, MYSQL and any other databases that are fast and can store large amount of data.

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If you really have a million rows or more with 100 values each, I doubt it will all fit into your memory... or is there a special reason for it? For example poor performance using a database?

Since you wnat to have random access, I'd use a persistence provider like hibernate and some database you like (for example mysql).

But be aware that the way you use the persistence provider has a great impact on performance. For example you should use batch-inserts (which are incompatible with autogenerated ids).

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