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I'm using an in-memory database for a Python app, and am hitting pretty frequent "unable to open database file" errors when attempting to access the same in memory database from multiple threads.

Because it says that the in memory database is automatically cleaned up when the last connection closes, I initialize and leave a connection open to the database like this:

staging_cache = None

MEMORY_CACHE_PATH = "file::memory:?cache=shared"

def init_staging():
  global staging_cache
  staging_cache = sqlite3.connect(MEMORY_CACHE_PATH)
  staging_cache.execute("""CREATE TABLE sigcache (path TEXT NOT NULL COLLATE NOCASE, sig BLOB,
    updated_date REAL, sha512 TEXT DEFAULT "", item_type INT, depth INT, mtime REAL, size INT, revision_id INT)""")
  staging_cache.execute("CREATE INDEX sigcache_rev_id_index on sigcache(path COLLATE NOCASE, revision_id)")

Then from some other threads:

with sqlite3.connect(MEMORY_CACHE_PATH, timeout=20) as db_conn:
  db_conn.execute(query_string, param_tuple)

It seems like I keep hitting OperationalError: cannot open database file

I'm looking at the documentation at http://www.sqlite.org/inmemorydb.html but I can't figure out if I'm doing something wrong or not.

EDIT: Apparently sqlite3 does not accept "file::memory:?cache=shared" as a dbname, it only accepts :memory:. It was creating a file called "file::memory:?cache=shared"

In any case, with sqlalchemy, there was a problem with persisting the data. I solved the problem by just using sqlite3 with :memory:, creating a single connection with check_same_thread=False, and wrapping all accesses in a single threaded mutex.

share|improve this question
up vote 1 down vote accepted

SQLite and multiple threads don't mix well. I'd suggest using SQLAlchemy's connection pooling (or even the whole package) to go around the problem. Maybe something like this if you're not willing to rewrite everything:

import sqlite3
import sqlalchemy.pool

sqlite = sqlalchemy.pool.manage(sqlite3, poolclass=sqlalchemy.pool.SingletonThreadPool)
connection = sqlite.connect(':memory:')

They also have some notes about multithreading:

So while even :memory: databases can be shared among threads in modern SQLite, Pysqlite doesn’t provide enough thread-safety to make this usage worth it.

share|improve this answer
    
It sort of worked. I made some modifications based on the documentation. I'll give you credit anyways tomorrow! I used the StaticPool instead of SingletonThreadPool, and just used sqlite.connect(BLAH BLAH) each time I needed a new connection. – michaelmwu Jan 17 '14 at 4:24

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