5

Looking to index a CSV file to ElasticSearch, without using Logstash. I am using the elasticsearch-dsl high level library.

Given a CSV with header for example:

name,address,url
adam,hills 32,http://rockit.com
jane,valleys 23,http://popit.com

What will be the best way to index all the data by the fields? Eventually I'm looking to get each row to look like this

{
"name": "adam",
"address": "hills 32",
"url":  "http://rockit.com"
}
  • It looks like elasticsearch-dsl depends on the elasticsearch-py library. Checkout elasticsearch-py's docs on an example of how to insert a document. – kiran.koduru Jan 10 '17 at 17:14
  • The question is not about indexing documents, but about a technique how to index entire .csv files into elasticsearch – bluesummers Jan 10 '17 at 19:06
29

This kind of task is easier with the lower-level elasticsearch-py library:

from elasticsearch import helpers, Elasticsearch
import csv

es = Elasticsearch()

with open('/tmp/x.csv') as f:
    reader = csv.DictReader(f)
    helpers.bulk(es, reader, index='my-index', doc_type='my-type')
  • This is the kind of answer I was looking for, I will try it in a few hours when and respond accordingly, thanks! – bluesummers Jan 12 '17 at 6:03
  • Exactly the Pythonic and elegant solution I was looking for - Thanks! – bluesummers Jan 12 '17 at 10:17
  • 1
    what about the mapping how to make it so that we know the type of each filed? – Souad May 9 '17 at 10:23
  • 1
    @shinz4u just wrap the reader in something that will add the desired id as _id key in the dictionary, then it will be taken up by elasticsearch – Honza Král Jul 4 '18 at 13:48
  • 2
    @seamaner that just means that elasticsearch cannot process the data you are sending fast enough. You can increase the timeout (10s by default) by passing timeout=N to Elasticsearch when instantiating it (where N > 10) – Honza Král May 30 at 10:32
1

If you want to create elasticsearch database from .tsv/.csv with strict types and model for a better filtering u can do something like that :

class ElementIndex(DocType):
    ROWNAME = Text()
    ROWNAME = Text()

    class Meta:
        index = 'index_name'

def indexing(self):
    obj = ElementIndex(
        ROWNAME=str(self['NAME']),
        ROWNAME=str(self['NAME'])
    )
    obj.save(index="index_name")
    return obj.to_dict(include_meta=True)

def bulk_indexing(args):

    # ElementIndex.init(index="index_name")
    ElementIndex.init()
    es = Elasticsearch()

    //here your result dict with data from source

    r = bulk(client=es, actions=(indexing(c) for c in result))
    es.indices.refresh()

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.