简体   繁体   中英

Index CSV to ElasticSearch in Python

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"
}

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')

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()

The technical post webpages of this site follow the CC BY-SA 4.0 protocol. If you need to reprint, please indicate the site URL or the original address.Any question please contact:yoyou2525@163.com.

 
粤ICP备18138465号  © 2020-2024 STACKOOM.COM