I am using bulk_create to loads thousands or rows into a postgresql DB. Unfortunately some of the rows are causing IntegrityError and stoping the bulk_create process. I was wondering if there was a way to tell django to ignore such rows and save as much of the batch as possible?
7 Answers
This is now possible on Django 2.2
Django 2.2 adds a new ignore_conflicts
option to the bulk_create
method, from the documentation:
On databases that support it (all except PostgreSQL < 9.5 and Oracle), setting the ignore_conflicts parameter to True tells the database to ignore failure to insert any rows that fail constraints such as duplicate unique values. Enabling this parameter disables setting the primary key on each model instance (if the database normally supports it).
Example:
Entry.objects.bulk_create([
Entry(headline='This is a test'),
Entry(headline='This is only a test'),
], ignore_conflicts=True)
-
4It seem like, there was almost no performance impact if that option is turned on. Nice Work Django! And thank you for this answer...– SauerMay 24, 2019 at 10:32
-
1
-
1@int_32 are you using a special PK field? At least with the default, the PK gets created fine, except the returned objects still have
None
as their PK, but in the db it's fine. Nov 7, 2019 at 21:27 -
1@HenryWoody correct, I mean that returned objects do not have PK's, of course it's ok in DB.– artemNov 8, 2019 at 15:43
-
26When using this technique, do you get any return info on which rows couldn't be inserted?– shackerMay 28, 2020 at 21:31
One quick-and-dirty workaround for this that doesn't involve manual SQL and temporary tables is to just attempt to bulk insert the data. If it fails, revert to serial insertion.
objs = [(Event), (Event), (Event)...]
try:
Event.objects.bulk_create(objs)
except IntegrityError:
for obj in objs:
try:
obj.save()
except IntegrityError:
continue
If you have lots and lots of errors this may not be so efficient (you'll spend more time serially inserting than doing so in bulk), but I'm working through a high-cardinality dataset with few duplicates so this solves most of my problems.
-
in my personal view this is indeed the best, as it allows you to capture the error which eventually gets missed as part of "ignore conflicts". Nov 1, 2020 at 21:26
(Note: I don't use Django, so there may be more suitable framework-specific answers)
It is not possible for Django to do this by simply ignoring INSERT
failures because PostgreSQL aborts the whole transaction on the first error.
Django would need one of these approaches:
INSERT
each row in a separate transaction and ignore errors (very slow);- Create a
SAVEPOINT
before each insert (can have scaling problems); - Use a procedure or query to insert only if the row doesn't already exist (complicated and slow); or
- Bulk-insert or (better)
COPY
the data into aTEMPORARY
table, then merge that into the main table server-side.
The upsert-like approach (3) seems like a good idea, but upsert and insert-if-not-exists are surprisingly complicated.
Personally, I'd take (4): I'd bulk-insert into a new separate table, probably UNLOGGED
or TEMPORARY
, then I'd run some manual SQL to:
LOCK TABLE realtable IN EXCLUSIVE MODE;
INSERT INTO realtable
SELECT * FROM temptable WHERE NOT EXISTS (
SELECT 1 FROM realtable WHERE temptable.id = realtable.id
);
The LOCK TABLE ... IN EXCLUSIVE MODE
prevents a concurrent insert that creates a row from causing a conflict with an insert done by the above statement and failing. It does not prevent concurrent SELECT
s, only SELECT ... FOR UPDATE
, INSERT
,UPDATE
and DELETE
, so reads from the table carry on as normal.
If you can't afford to block concurrent writes for too long you could instead use a writable CTE to copy ranges of rows from temptable
into realtable
, retrying each block if it failed.
-
Thanks @craig-ringer I ended up clearing my python list of objects before inserting them in the DB, something similar to approach #3 of yours, but in pure python.– MeithamSep 21, 2012 at 12:53
-
Or 5. Divide and conquer
I didn't test or benchmark this thoroughly, but it performs pretty well for me. YMMV, depending in particular on how many errors you expect to get in a bulk operation.
def psql_copy(records):
count = len(records)
if count < 1:
return True
try:
pg.copy_bin_values(records)
return True
except IntegrityError:
if count == 1:
# found culprit!
msg = "Integrity error copying record:\n%r"
logger.error(msg % records[0], exc_info=True)
return False
finally:
connection.commit()
# There was an integrity error but we had more than one record.
# Divide and conquer.
mid = count / 2
return psql_copy(records[:mid]) and psql_copy(records[mid:])
# or just return False
Even in Django 1.11 there is no way to do this. I found a better option than using Raw SQL. It using djnago-query-builder. It has an upsert method
from querybuilder.query import Query
q = Query().from_table(YourModel)
# replace with your real objects
rows = [YourModel() for i in range(10)]
q.upsert(rows, ['unique_fld1', 'unique_fld2'], ['fld1_to_update', 'fld2_to_update'])
Note: The library only support postgreSQL
Here is a gist that I use for bulk insert that supports ignoring IntegrityErrors and returns the records inserted.
Late answer for pre Django 2.2 projects :
I ran into this situation recently and I found my way out with a seconder list array for check the uniqueness.
In my case, the model has that unique together check, and bulk create is throwing Integrity Error exception because of the array of bulk create has duplicate data in it.
So I decided to create checklist besides bulk create objects list. Here is the sample code; The unique keys are owner and brand, and in this example owner is an user object instance and brand is a string instance:
create_list = []
create_list_check = []
for brand in brands:
if (owner.id, brand) not in create_list_check:
create_list_check.append((owner.id, brand))
create_list.append(ProductBrand(owner=owner, name=brand))
if create_list:
ProductBrand.objects.bulk_create(create_list)
it's work for me
i am use this this funtion in thread.
my csv file contains 120907 no of rows.
def products_create():
full_path = os.path.join(settings.MEDIA_ROOT,'productcsv')
filename = os.listdir(full_path)[0]
logger.debug(filename)
logger.debug(len(Product.objects.all()))
if len(Product.objects.all()) > 0:
logger.debug("Products Data Erasing")
Product.objects.all().delete()
logger.debug("Products Erasing Done")
csvfile = os.path.join(full_path,filename)
csv_df = pd.read_csv(csvfile,sep=',')
csv_df['HSN Code'] = csv_df['HSN Code'].fillna(0)
row_iter = csv_df.iterrows()
logger.debug(row_iter)
logger.debug("New Products Creating")
for index, row in row_iter:
Product.objects.create(part_number = row[0],
part_description = row[1],
mrp = row[2],
hsn_code = row[3],
gst = row[4],
)
# products_list = [
# Product(
# part_number = row[0] ,
# part_description = row[1],
# mrp = row[2],
# hsn_code = row[3],
# gst = row[4],
# )
# for index, row in row_iter
# ]
# logger.debug(products_list)
# Product.objects.bulk_create(products_list)
logger.debug("Products uploading done")```
UNLOGGED
orTEMPORARY
, thenINSERT INTO realtable SELECT * FROM temptable WHERE NOT EXISTS (SELECT 1 FROM realtable WHERE temptable.id = realtable.id)
or similar.