本帖最后由 chenglu 于 2012-10-24 21:34 编辑
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本文讨论Web应用中实现数据分页功能,不同的技术实现方式的性能方区别。
上图功能的技术实现方法拿MySQL来举例就是 select * from msgs where thread_id = ? limit page * count, count不过在看Twitter API的时候,我们却发现不少接口使用cursor的方法,而不用page, count这样直观的形式,如 followers ids 接口 URL:
http://twitter.com/followers/ids.format
Returns an array of numeric IDs for every user following the specified user.
Parameters:
* cursor. Required. Breaks the results into pages. Provide a value of -1 to begin paging. Provide values as returned to in the response body’s next_cursor and previous_cursor attributes to page back and forth in the list.
o Example: http://twitter.com/followers/ids/barackobama.xml?cursor=-1
o Example: http://twitter.com/followers/ids ... 1300794057949944903
http://twitter.com/followers/ids.format
A cursor is an opaque deletion-tolerant index into a Btree keyed by source
userid and modification time. It brings you to a point in time in the
reverse chron sorted list. So, since you can’t change the past, other than
erasing it, it’s effectively stable. (Modifications bubble to the top.) But
you have to deal with additions at the list head and also block shrinkage
due to deletions, so your blocks begin to overlap quite a bit as the data
ages. (If you cache cursors and read much later, you’ll see the first few
rows of cursor[n+1]’s block as duplicates of the last rows of cursor[n]’s
block. The intersection cardinality is equal to the number of deletions in
cursor[n]’s block). Still, there may be value in caching these cursors and
then heuristically rebalancing them when the overlap proportion crosses some
threshold.
The page based approach does not scale with large sets. We can no
longer support this kind of API without throwing a painful number of
503s.
Working with row-counts forces the data store to recount rows in an O
(n^2) manner. Cursors avoid this issue by allowing practically
constant time access to the next block. The cost becomes O(n/
block_size) which, yes, is O(n), but a graceful one given n < 10^7 and
a block_size of 5000. The cursor approach provides a more complete and
consistent result set.
Proportionally, very few users require multiple page fetches with a
page size of 5,000.
Also, scraping the social graph repeatedly at high speed is could
often be considered a low-value, borderline abusive use of the social
graph API.
通过这两段文字我们已经很清楚了,对于大结果集的数据,使用cursor方式的目的主要是为了极大地提高性能。还是拿MySQL为例说明,比如翻页到100,000条时,不用cursor,对应的SQL为 select * from msgs limit 100000, 100在一个百万记录的表上,第一次执行这条SQL需要5秒以上。
假定我们使用表的主键的值作为cursor_id, 使用cursor分页方式对应的SQL可以优化为 select * from msgs where id > cursor_id limit 100;结论建议Web应用中大数据集翻页可以采用这种cursor方式,不过此方法缺点是翻页时必须连续,不能跳页。
原文
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