I want to read data from Cloud BigQuery to Cloud Datastore through Dataflow runner with Apache Beam. From the documentation, Firestore is not yet be supported. I write my own class to do it.

class UpdateIntoFireStore(beam.DoFn):

    def process(self, element):
            cred = credentials.Certificate({

            firebase_admin.initialize_app(cred, {
            'projectId': '...',
        except ValueError:
        db = firestore.client()
        doc_ref = db.collection(u'poi')

The pipeline is as below:

job = ( p  | 'Read from BigQuery' >> Read(BigQuerySource(query="SELECT * FROM ...", use_standard_sql=True))
           | 'Update to Firestore' >> beam.ParDo(UpdateIntoFireStore()))

Is this approach fine? I am concerned about the influence of the parallel processing on these write operation on Cloud Firestore.


This is exactly like making external calls from dataflow. Technically this will work. However there are a couple of things to be aware of.

  1. There are no guarantees on how many times a single element will be processed so you might get multiple entries for the same element in firestore.
  2. You will be making separate call for each element to the firestore and there is no caching of the firestore clients/connections.
  • Any suggestion to improve the existing code before waiting the FirestoreIO to be supported? Thanks
    – Mervyn Lee
    Oct 5 '18 at 1:43

Use start_bundle to define your client.

start_bundle - Called before a bundle of elements is processed on a worker. Elements to be processed are split into bundles and distributed to workers. Before a worker calls process() on the first element of its bundle, it calls this method.

Much better approach:

class FirestoreDoFn(beam.DoFn):

def __init__(self):
    super(FirestoreDoFn, self).__init__()

def start_bundle(self):
    self.firestore_client = GoogleServices(

def process(self, element, *args, **kwargs):
    # response = self.firestore_client.save()
    # logging.info("response: {}".format(response))
    return {"status":"ok"}

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.