问题
I am working on a project where I am using Spark for Data processing. My data is now processed and I need to load the data into Neo4j. After loading into Neo4j, I will be using that to showcase the results.
I wanted all the implementation to de done in Python Programming. But I could't find any library or example on net. Can you please help with links or the libraries or any example.
My RDD is a PairedRDD. And in every tuple, I have to create a relationship.
PairedRDD
Key Value
Jack [a,b,c]
For simplicity purpose, I transformed the RDD to
Key value
Jack a
Jack b
Jack c
Then I have to create relationships between
Jack->a
Jack->b
Jack->c
Based on William Answer, I am able to load a list directly. But this data is throwing the cypher error.
I tried like this:
def writeBatch(b):
print("writing batch of " + str(len(b)))
session = driver.session()
session.run('UNWIND {batch} AS elt MERGE (n:user1 {user: elt[0]})', {'batch': b})
session.close()
def write2neo(v):
batch_d.append(v)
for hobby in v[1]:
batch_d.append([v[0],hobby])
global processed
processed += 1
if len(batch) >= 500 or processed >= max:
writeBatch(batch)
batch[:] = []
max = userhobbies.count()
userhobbies.foreach(write2neo)
b is the list of lists. Unwinded elt is a list of two elements elt[0],elt[1] as key and values.
Error
ValueError: Structure signature must be a single byte value
Thanks Advance.
回答1:
You can do a foreach
on your RDD, example :
from neo4j.v1 import GraphDatabase, basic_auth
driver = GraphDatabase.driver("bolt://localhost", auth=basic_auth("",""), encrypted=False)
from pyspark import SparkContext
sc = SparkContext()
dt = sc.parallelize(range(1, 5))
def write2neo(v):
session = driver.session()
session.run("CREATE (n:Node {value: {v} })", {'v': v})
session.close()
dt.foreach(write2neo)
I would however improve the function to batch the writes, but this simple snippet is working for basic implementation
UPDATE WITH EXAMPLE OF BATCHING WRITES
sc = SparkContext()
batch = []
max = None
processed = 0
def writeBatch(b):
print("writing batch of " + str(len(b)))
session = driver.session()
session.run('UNWIND {batch} AS elt CREATE (n:Node {v: elt})', {'batch': b})
session.close()
def write2neo(v):
batch.append(v)
global processed
processed += 1
if len(batch) >= 500 or processed >= max:
writeBatch(batch)
batch[:] = []
dt = sc.parallelize(range(1, 2136))
max = dt.count()
dt.foreach(write2neo)
- Which results with
16/09/15 12:25:47 INFO Executor: Running task 0.0 in stage 1.0 (TID 1)
writing batch of 500
writing batch of 500
writing batch of 500
writing batch of 500
writing batch of 135
16/09/15 12:25:47 INFO PythonRunner: Times: total = 279, boot = -103, init = 245, finish = 137
16/09/15 12:25:47 INFO Executor: Finished task 0.0 in stage 1.0 (TID 1). 1301 bytes result sent to driver
16/09/15 12:25:47 INFO TaskSetManager: Finished task 0.0 in stage 1.0 (TID 1) in 294 ms on localhost (1/1)
16/09/15 12:25:47 INFO TaskSchedulerImpl: Removed TaskSet 1.0, whose tasks have all completed, from pool
16/09/15 12:25:47 INFO DAGScheduler: ResultStage 1 (foreach at /Users/ikwattro/dev/graphaware/untitled/writeback.py:36) finished in 0.295 s
16/09/15 12:25:47 INFO DAGScheduler: Job 1 finished: foreach at /Users/ikwattro/dev/graphaware/untitled/writeback.py:36, took 0.308263 s
来源:https://stackoverflow.com/questions/39504400/load-spark-rdd-to-neo4j-in-python