Skip to main content

Jupyter extension for NebulaGraph

Project description

for NebulaGraph Jupyter Docker Image Docker Extension GitHub release (latest by date) pypi-version Open In Colab Documentation

https://github.com/wey-gu/jupyter_nebulagraph/assets/1651790/10135264-77b5-4d3c-b68f-c5810257feeb

jupyter_nebulagraph, formerly ipython-ngql, is a Python package that simplifies the process of connecting to NebulaGraph from Jupyter Notebooks or iPython environments. It enhances the user experience by streamlining the creation, debugging, and sharing of Jupyter Notebooks. With jupyter_nebulagraph, users can effortlessly connect to NebulaGraph, load data, execute queries, visualize results, and fine-tune query outputs, thereby boosting collaborative efforts and productivity.

Getting Started

Explore the capabilities of jupyter_nebulagraph by trying it on Google Colab, and the equivalent Jupyter Notebook is available in Docs here.

For a comprehensive guide, visit the official documentation.

Feature Cheat Sheet Example Command Documentation
Connect %ngql --address 127.0.0.1 --port 9669 --user user --password password Connect %ngql
Load Data from CSV %ng_load --source actor.csv --tag player --vid 0 --props 1:name,2:age --space basketballplayer Load Data %ng_load
Query Execution %ngql MATCH p=(v:player{name:"Tim Duncan"})-->(v2:player) RETURN p; Query Execution %ngql or %%ngql(multi-line)
Result Visualization %ng_draw Draw Graph %ng_draw
Draw Schema %ng_draw_schema Draw Schema %ng_draw_schema
Tweak Query Result df = _ to get last query result as pd.dataframe or ResultSet Tweak Result Configure ngql_result_style
Click to see more!

Installation

jupyter_nebulagraph could be installed either via pip or from this git repo itself.

Install via pip

pip install jupyter_nebulagraph

Install inside the repo

git clone git@github.com:wey-gu/jupyter_nebulagraph.git
cd jupyter_nebulagraph
python setup.py install

Load it in Jupyter Notebook or iPython

%load_ext ngql

Connect to NebulaGraph

Arguments as below are needed to connect a NebulaGraph DB instance:

Argument Description
--address or -addr IP address of the NebulaGraph Instance
--port or -P Port number of the NebulaGraph Instance
--user or -u User name
--password or -p Password

Below is an exmple on connecting to 127.0.0.1:9669 with username: "user" and password: "password".

%ngql --address 127.0.0.1 --port 9669 --user user --password password

Make Queries

Now two kind of iPtython Magics are supported:

Option 1: The one line stype with %ngql:

%ngql USE basketballplayer;
%ngql MATCH (v:player{name:"Tim Duncan"})-->(v2:player) RETURN v2.player.name AS Name;

Option 2: The multiple lines stype with %%ngql

%%ngql
SHOW TAGS;
SHOW HOSTS;

Query String with Variables

jupyter_nebulagraph supports taking variables from the local namespace, with the help of Jinja2 template framework, it's supported to have queries like the below example.

The actual query string should be GO FROM "Sue" OVER owns_pokemon ..., and "{{ trainer }}" was renderred as "Sue" by consuming the local variable trainer:

In [8]: vid = "player100"

In [9]: %%ngql
   ...: MATCH (v)<-[e:follow]- (v2)-[e2:serve]->(v3)
   ...:   WHERE id(v) == "{{ vid }}"
   ...: RETURN v2.player.name AS FriendOf, v3.team.name AS Team LIMIT 3;
Out[9]:   RETURN v2.player.name AS FriendOf, v3.team.name AS Team LIMIT 3;
FriendOf	Team
0	LaMarcus Aldridge	Trail Blazers
1	LaMarcus Aldridge	Spurs
2	Marco Belinelli	Warriors

Draw query results

Just call %ng_draw after queries with graph data.

# one query
%ngql GET SUBGRAPH 2 STEPS FROM "player101" YIELD VERTICES AS nodes, EDGES AS relationships;
%ng_draw

# another query
%ngql match p=(:player)-[]->() return p LIMIT 5
%ng_draw

Draw Graph Schema

%ng_draw_schema

Load Data from CSV

It's supported to load data from a CSV file into NebulaGraph with the help of ng_load_csv magic.

For example, to load data from a CSV file actor.csv into a space basketballplayer with tag player and vid in column 0, and props in column 1 and 2:

"player999","Tom Hanks",30
"player1000","Tom Cruise",40
"player1001","Jimmy X",33

Just run the below line:

%ng_load --source actor.csv --tag player --vid 0 --props 1:name,2:age --space basketballplayer

Some other examples:

# load CSV from a URL
%ng_load --source https://github.com/wey-gu/jupyter_nebulagraph/raw/main/examples/actor.csv --tag player --vid 0 --props 1:name,2:age --space demo_basketballplayer
# with rank column
%ng_load --source follow_with_rank.csv --edge follow --src 0 --dst 1 --props 2:degree --rank 3 --space basketballplayer
# without rank column
%ng_load --source follow.csv --edge follow --src 0 --dst 1 --props 2:degree --space basketballplayer

Tweak Query Result

By default, the query result is a Pandas Dataframe, and we could access that by read from variable _.

In [1]: %ngql MATCH (v:player{name:"Tim Duncan"})-->(v2:player) RETURN v2.player.name AS Name;

In [2]: df = _

It's also configurable to have the result in raw ResultSet, to enable handy NebulaGraph Python App Development.

See more via Docs: Result Handling

CheatSheet

If you find yourself forgetting commands or not wanting to rely solely on the cheat sheet, remember this one thing: seek help through the help command!

%ngql help

Acknowledgments ♥️

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

ipython_ngql-0.11.4.tar.gz (14.8 kB view details)

Uploaded Source

Built Distribution

ipython_ngql-0.11.4-py3-none-any.whl (16.1 kB view details)

Uploaded Python 3

File details

Details for the file ipython_ngql-0.11.4.tar.gz.

File metadata

  • Download URL: ipython_ngql-0.11.4.tar.gz
  • Upload date:
  • Size: 14.8 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/5.0.0 CPython/3.9.19

File hashes

Hashes for ipython_ngql-0.11.4.tar.gz
Algorithm Hash digest
SHA256 ebc662f233ddb0414b829a14026b3b92190d153af4c2cef13d7a3d1ad6128c02
MD5 6905fdb18a5e55fca389fee42ad0cf8c
BLAKE2b-256 90247f1138397704acf1c3dadcb0ee3047160612ee15c8e4f9d269abc75f9c97

See more details on using hashes here.

File details

Details for the file ipython_ngql-0.11.4-py3-none-any.whl.

File metadata

File hashes

Hashes for ipython_ngql-0.11.4-py3-none-any.whl
Algorithm Hash digest
SHA256 f2477f332885c3dac980e1e85ec3c01e3bacbe6c67eb60312c9f2df82e61f5c1
MD5 d006e4c59f86499de8ba12cfd0e03853
BLAKE2b-256 43dba83447d2adbcbe2fe6cd4290c0d03b596181efbf4f26ced64615a50679f1

See more details on using hashes here.

Supported by

AWS AWS Cloud computing and Security Sponsor Datadog Datadog Monitoring Fastly Fastly CDN Google Google Download Analytics Microsoft Microsoft PSF Sponsor Pingdom Pingdom Monitoring Sentry Sentry Error logging StatusPage StatusPage Status page