<div style="margin:20px 0 0 200px"> To view the site, enable JavaScript by changing your browser options, then <a href="">Try Again</a>.</div>
07 Feb, 2020
Nfstream - A Flexible Network Data Analysis Framework

nfstream is a Python package providing fast, flexible, and expressive data structures designed to make working with online or offline network data both easy and intuitive. It aims to be the fundamental high-level building block for doing practical, real world network data analysis in Python. Additionally, it has the broader goal of becoming a common network data processing framework for researchers providing data reproducibility across experiments.

Main Features

  • Performance: nfstream is designed to be fast (x10 faster with pypy3 support) with a small CPU and memory footprint.
  • Layer-7 visibility: nfstream deep packet inspection engine is based on nDPI. It allows nfstream to perform reliable encrypted applications identification and metadata extraction (e.g. TLS, QUIC, TOR, HTTP, SSH, DNS).

How to use it?

  • Dealing with a big pcap file and just want to aggregate it as network flows? nfstream make this path easier in few lines:
    from nfstream import NFStreamer
    my_awesome_streamer = NFStreamer(source="facebook.pcap") # or network interface (source="eth0")
    for flow in my_awesome_streamer:
    print(flow) # print it, append to pandas Dataframe or whatever you want :)!
    NFEntry(
    id=0,
    first_seen=1472393122365,
    last_seen=1472393123665,
    version=4,
    src_port=52066,
    dst_port=443,
    protocol=6,
    vlan_id=0,
    src_ip='192.168.43.18',
    dst_ip='66.220.156.68',
    total_packets=19,
    total_bytes=5745,
    duration=1300,
    src2dst_packets=9,
    src2dst_bytes=1345,
    dst2src_packets=10,
    dst2src_bytes=4400,
    expiration_id=0,
    master_protocol=91,
    app_protocol=119,
    application_name='TLS.Facebook',
    category_name='SocialNetwork',
    client_info='facebook.com',
    server_info='*.facebook.com',
    j3a_client='bfcc1a3891601edb4f137ab7ab25b840',
    j3a_server='2d1eb5817ece335c24904f516ad5da12'
    )
  • From pcap to Pandas DataFrame?
    import pandas as pd
    streamer_awesome = NFStreamer(source='devil.pcap')
    data = []
    for flow in streamer_awesome:
    data.append(flow.to_namedtuple())
    my_df = pd.DataFrame(data=data)
    my_df.head(5) # Enjoy!

  • Didn't find a specific flow feature? add a plugin to nfstream in few lines: from nfstream import NFPlugin
    class my_awesome_plugin(NFPlugin):
    def on_update(self, obs, entry):
    if obs.length >= 666:
    entry.my_awesome_plugin += 1

    streamer_awesome = NFStreamer(source='devil.pcap', plugins=[my_awesome_plugin()])
    for flow in streamer_awesome:
    print(flow.my_awesome_plugin) # see your dynamically created metric in generated flows

Prerequisites

apt-get install libpcap-dev

Installation

Using pip
Binary installers for the latest released version are available:
pip3 install nfstream

Build from source

If you want to build nfstream on your local machine:
git clone https://github.com/aouinizied/nfstream.git
cd nfstream
python3 setup.py install

Authors

Zied Aouini created nfstream and these fine people have contributed.

Ethics

nfstream is intended for network data research and forensics. Researchers and network data scientists can use these framework to build reliable datasets, train and evaluate network applied machine learning models. As with any packet monitoring tool, nfstream could potentially be misused. Do not run it on any network of which you are not the owner or the administrator.

License

This project is licensed under the GPLv3 License - see the License file for details

Download Tool: https://github.com/aouinizied/nfstream

Other Hacking Tools

Explore All Hacking Tools »

Exclusive Blog

Read All Exclusive Blog »
A few tips for the perfect homework
A few tips for the perfect homework

With world working from home, it's time to make it enjoyable and effective.

Read Details

Breaking News

Breaking News Of Each Month »
Cyber Scam in the days of Coronavirus & Lockdown
Cyber Scam in the days of Coronavirus & Lockdown

The recent pandemic was unexpected and unknown to most part of the world. It has changed our life and we are slowly adapting to our new lifestyle. The risks associated with the new lifestyle, both personal & corporate, are unknown to most of us.

Read Details