I just spent a day creating an abstraction layer to kyotodb to remove global locks from my code, I was busy porting my algorithms to this new abstraction layer when I discover that scan_parallel isn't really parallel. It only maxes out one core -- For jollies I stuck in a billion-int-countdown spin-loop in my code(empty stubs as I port) to try and simulate some processing time. still only one core maxed. Do I need to move to berkley db or leveldb ? I thought kyotodb was meant for internet scale problems :/. I must be doing something wrong or missing some gotchas.

top or iostat never went above 100% / 25% (iostat one cpu maxed = 1/number of cores * 100):/ On a quad core i5.

source db is 10gigs corpus of protocol buffer encoded data (treedb) with the following flags (picked these up from the documentation).

index_db.tune_options(TreeDB::TLINEAR | TreeDB::TCOMPRESS);
index_db.tune_buckets(1LL * 1000);


Do not remove the IR TAG. Please think before you wave arround the detag bat.

This IS an IR related question, its about creating GINORMOUS (40 gig +) inverted files ONLINE, inverted indices are the base of IR data access methods, and inverted index creation has a unique transactional profile. By removing the IR tag you rob me of the wisdom of IR researchers who have used a database library to create such large database files.

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    What's the actual goal you have here? Different DBs respond differently to different usage patterns; we need to know what you're doing with it to suggest a good alternative. – Jonathan Grynspan Dec 15 '11 at 22:37
  • I just want to max out my cpu's to start. standard AI/IR (set intersection, read-append-write inverted index creation) processing my algorithms are very loop heavy. p.s., I am only reading from the database in question. The index building is done to different output files. – Hassan Syed Dec 15 '11 at 22:40

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