27

What is the quickest way to insert a pandas DataFrame into mongodb using PyMongo?

Attempts

db.myCollection.insert(df.to_dict())

gave an error

InvalidDocument: documents must have only string keys, the key was Timestamp('2013-11-23 13:31:00', tz=None)

db.myCollection.insert(df.to_json())

gave an error

TypeError: 'str' object does not support item assignment

db.myCollection.insert({id: df.to_json()})

gave an error

InvalidDocument: documents must have only string a keys, key was <built-in function id>

df

<class 'pandas.core.frame.DataFrame'>
DatetimeIndex: 150 entries, 2013-11-23 13:31:26 to 2013-11-23 13:24:07
Data columns (total 3 columns):
amount    150  non-null values
price     150  non-null values
tid       150  non-null values
dtypes: float64(2), int64(1)
  • 1
    what do you want to do afterwards? do you want one doc per record or one doc per dataframe? – alko Nov 23 '13 at 20:22
  • Each mongo record will have the fields date, amount, price, and tid. tid should be a unique field – Nyxynyx Nov 23 '13 at 21:01
  • you can convert the dataframe to a dict-list by: records = json.loads(df.to_json(orient='records')), the result will be like:[{'c1': 1, 'c2': 1},{'c1': 2, 'c2': 2},{'c1': 3, 'c2': 3}], then just use db.coll.insert_many(records). btw, use df.to_dict('recoreds') may counter Type error – l mingzhi May 22 '18 at 3:56
26

I doubt there is a both quickest and simple method. If you don't worry about data conversion, you can do

>>> import json
>>> df = pd.DataFrame.from_dict({'A': {1: datetime.datetime.now()}})
>>> df
                           A
1 2013-11-23 21:14:34.118531

>>> records = json.loads(df.T.to_json()).values()
>>> db.myCollection.insert(records)

But in case you try to load data back, you'll get:

>>> df = read_mongo(db, 'myCollection')
>>> df
                     A
0  1385241274118531000
>>> df.dtypes
A    int64
dtype: object

so you'll have to convert 'A' columnt back to datetimes, as well as all not int, float or str fields in your DataFrame. For this example:

>>> df['A'] = pd.to_datetime(df['A'])
>>> df
                           A
0 2013-11-23 21:14:34.118531
  • 5
    db.myCollection.insert(records) should be replaced by db.myCollection.insert_many(records) see warning //anaconda/bin/ipython:1: DeprecationWarning: insert is deprecated. Use insert_one or insert_many instead. #!/bin/bash //anaconda/bin/python.app – Femto Trader Dec 24 '15 at 17:45
23

Here you have the very quickest way. Using the insert_many method from pymongo 3 and 'records' parameter of to_dict method.

db.insert_many(df.to_dict('records'))
  • 1
    This is the best idea imo, although I don't think the syntax is going to work for the original use case. The basic problem is that mongo needs string keys, whereas your df has a Timestamp index. You need to use the parameters passed to to_dict() to make the keys in mongo be something other than dates. A frequent use case that I've had is where you actually want each row in the df to be a record with an additional 'date' field. – Marshall Farrier Feb 16 '16 at 20:43
9

odo can do it using

odo(df, db.myCollection)
  • 1
    I really like odo, but it fails terribly when the mongo uri has non alpha username, passwd. I wouldn't recommend it for anything but using an unauthenticated mongo. – armundle Aug 25 '16 at 4:17
3

If your dataframe has missing data (i.e None,nan) and you don't want null key values in your documents:

db.insert_many(df.to_dict("records")) will insert keys with null values. If you don't want the empty key values in your documents you can use a modified version of pandas .to_dict("records") code below:

from pandas.core.common import _maybe_box_datetimelike
my_list = [dict((k, _maybe_box_datetimelike(v)) for k, v in zip(df.columns, row) if v != None and v == v) for row in df.values]
db.insert_many(my_list)

where the if v != None and v == v I've added checks to make sure the value is not None or nan before putting it in the row's dictionary. Now your .insert_many will only include keys with values in the documents (and no null data types).

  • This is a good way because dealing with null values is indeed necessary when uploading dataframe to mongodb, and this method is faster that DataFrame.to_dict(), BTW, columns = list(df.columns), then [{k: _maybe_box_datetimelike(v) for k, v in zip(columns, row) if v != None and v == v} for row in df.values] is even faster. – Woods Chen Dec 31 '18 at 6:11
2

I think there is cool ideas in this question. In my case I have been spending time more taking care of the movement of large dataframes. In those case pandas tends to allow you the option of chunksize (for examples in the pandas.DataFrame.to_sql). So I think I con contribute here by adding the function I am using in this direction.

def write_df_to_mongoDB(  my_df,\
                          database_name = 'mydatabasename' ,\
                          collection_name = 'mycollectionname',
                          server = 'localhost',\
                          mongodb_port = 27017,\
                          chunk_size = 100):
    #"""
    #This function take a list and create a collection in MongoDB (you should
    #provide the database name, collection, port to connect to the remoete database,
    #server of the remote database, local port to tunnel to the other machine)
    #
    #---------------------------------------------------------------------------
    #Parameters / Input
    #    my_list: the list to send to MongoDB
    #    database_name:  database name
    #
    #    collection_name: collection name (to create)
    #    server: the server of where the MongoDB database is hosted
    #        Example: server = '132.434.63.86'
    #    this_machine_port: local machine port.
    #        For example: this_machine_port = '27017'
    #    remote_port: the port where the database is operating
    #        For example: remote_port = '27017'
    #    chunk_size: The number of items of the list that will be send at the
    #        some time to the database. Default is 100.
    #
    #Output
    #    When finished will print "Done"
    #----------------------------------------------------------------------------
    #FUTURE modifications.
    #1. Write to SQL
    #2. Write to csv
    #----------------------------------------------------------------------------
    #30/11/2017: Rafael Valero-Fernandez. Documentation
    #"""



    #To connect
    # import os
    # import pandas as pd
    # import pymongo
    # from pymongo import MongoClient

    client = MongoClient('localhost',int(mongodb_port))
    db = client[database_name]
    collection = db[collection_name]
    # To write
    collection.delete_many({})  # Destroy the collection
    #aux_df=aux_df.drop_duplicates(subset=None, keep='last') # To avoid repetitions
    my_list = my_df.to_dict('records')
    l =  len(my_list)
    ran = range(l)
    steps=ran[chunk_size::chunk_size]
    steps.extend([l])

    # Inser chunks of the dataframe
    i = 0
    for j in steps:
        print j
        collection.insert_many(my_list[i:j]) # fill de collection
        i = j

    print('Done')
    return
  • This is really useful, thanks. You may want to update the Args (Input) section with the current inputs. – ximiki Jun 8 '18 at 21:37
1

how about this:

db.myCollection.insert({id: df.to_json()})

id will be a unique string for that df

  • Thanks, I get the error InvalidDocument: documents must have only string keys, key was <built-in function id> – Nyxynyx Nov 23 '13 at 20:21
  • you have to generate that id by youself – PasteBT Nov 23 '13 at 20:22
  • Is this id the same as the usual _.id in mongo documents? If so, it looks like a random hash, how do I generate it? – Nyxynyx Nov 23 '13 at 21:04
  • It fails for @Nyxynyx since id is a buildin function in Python, overriding is not recommended. You can generate an simple test-id by using id(df) but since object ID's aren't persistent across sessions this might cause you problems depending on how you use it. Works for testing though. – erb Apr 21 '14 at 11:05
  • I got maximum recursion level reached error. Fixed it with sys.setrecursionlimit(1000000) – Gabriel Fair Apr 24 '18 at 10:37
1

Just make string keys!

import json
dfData = json.dumps(df.to_dict('records'))
savaData = {'_id': 'a8e42ed79f9dae1cefe8781760231ec0', 'df': dfData}
res = client.insert_one(savaData)

##### load dfData
data = client.find_one({'_id': 'a8e42ed79f9dae1cefe8781760231ec0'}).get('df')
dfData = json.loads(data)
df = pd.DataFrame.from_dict(dfData)

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.