I try to insert 150.000 generated data to the Cassandra using BATCH in Python driver. And it take approximately 30 seconds. What should I do to optimize it and insert data faster ? Here is my code:

from cassandra.cluster import Cluster
from faker import Faker
import time
fake = Faker()

cluster = Cluster([''], port=9042)
session = cluster.connect()
session.default_timeout = 150
num = 0
def create_data():
    global num
    BATCH_SIZE = 1500

    for i in range(BATCH_SIZE):
        BATCH_STMT +=  f" INSERT INTO tt(id, title) VALUES ('{num}', '{fake.name()}')";
        num += 1

    prep_batch = session.prepare(BATCH_STMT)
    return prep_batch

tt = []
session.execute('USE ttest_2')

prep_batch = []
print("Start create data function!")
start = time.time()
for i in range(100):

end = time.time()
print("Time for create fake data: ", end - start)

start = time.time()

for i in range(100):

end = time.time()
print("Time for execution insert into table: ", end - start)

Main problem is that you're using batches for inserting the data - in Cassandra, that's a bad practice (see documentation for explanation). Instead you need to prepare a query, and insert data one by one - this will allow driver to route data to specific node, decreasing the load onto that node, and allow to perform data insertion faster. Pseudo-code would look as following (see the python driver code for exact syntax):

prep_statement = session.prepare("INSERT INTO tt(id, title) VALUES (?, ?)")
for your_loop:
   session.execute(prep_statement, [id, title])

Another problem is that you're using synchronous API - this means that driver waits until insert happens & then fire the next one. To speedup you need to use asynchronous API instead (see the same doc for details). See the Developing applications with DataStax drivers guide for a list of best practices, etc.

But really, if you just want to load database with data, I recommend not to re-invent the wheel, but either:

  • generate the data into CSV file & load into Cassandra using DSBulk that is heavily optimized for loading of data
  • use NoSQLBench to generate data & populate Cassandra - it's also heavily optimized for data generation & loading (not only into Cassandra).
| improve this answer | |

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.