Read, write and update large scale pandas DataFrame with ElasticSearch
Project description
es_pandas
Read, write and update large scale pandas DataFrame with ElasticSearch.
Requirements
This package should work on Python3(>=3.4) and ElasticSearch should be version 5.x, 6.x or 7.x.
Installation The package is hosted on PyPi and can be installed with pip:
pip install es_pandas
Deprecation Notice
Supporting of ElasticSearch 5.x will by deprecated in future version.
Usage
import time
import pandas as pd
from es_pandas import es_pandas
# Information of es cluseter
es_host = 'localhost:9200'
index = 'demo'
# crete es_pandas instance
ep = es_pandas(es_host)
# Example data frame
df = pd.DataFrame({'Num': [x for x in range(100000)]})
df['Alpha'] = 'Hello'
df['Date'] = pd.datetime.now()
# init template if you want
doc_type = 'demo'
ep.init_es_tmpl(df, doc_type)
# Example of write data to es, use the template you create
ep.to_es(df, index, doc_type=doc_type, thread_count=2, chunk_size=10000)
# set use_index=True if you want to use DataFrame index as records' _id
ep.to_es(df, index, doc_type=doc_type, use_index=True, thread_count=2, chunk_size=10000)
# delete records from es
ep.to_es(df.iloc[5000:], index, doc_type=doc_type, _op_type='delete', thread_count=2, chunk_size=10000)
# Update doc by doc _id
df.iloc[:1000, 1] = 'Bye'
df.iloc[:1000, 2] = pd.datetime.now()
ep.to_es(df.iloc[:1000, 1:], index, doc_type=doc_type, _op_type='update')
# Example of read data from es
df = ep.to_pandas(index)
print(df.head())
# return certain fields in es
heads = ['Num', 'Date']
df = ep.to_pandas(index, heads=heads)
print(df.head())
# set certain columns dtype
dtype = {'Num': 'float', 'Alpha': object}
df = ep.to_pandas(index, dtype=dtype)
print(df.dtypes)
# infer dtype from es template
df = ep.to_pandas(index, infer_dtype=True)
print(df.dtypes)
# Example of write data to es with pandas.io.json
ep.to_es(df, index, doc_type=doc_type, use_pandas_json=True, thread_count=2, chunk_size=10000)
print('write es doc with pandas.io.json finished')
Project details
Release history Release notifications | RSS feed
Download files
Download the file for your platform. If you're not sure which to choose, learn more about installing packages.
Source Distribution
es_pandas-0.0.16.tar.gz
(5.0 kB
view hashes)
Built Distribution
Close
Hashes for es_pandas-0.0.16-py3-none-any.whl
Algorithm | Hash digest | |
---|---|---|
SHA256 | 094d29d25028f4005a408aafc1011ac3d08cc7b8cc019d894c56cb92089cdff1 |
|
MD5 | d245918cf4fa5ec43cc001d2a3646740 |
|
BLAKE2b-256 | 4a1d8899f5321acf9c768eaf9507dd1388064b7e1a0aaebe8256635b9b84a5dd |