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inline-traffic-classification-using-p4

A ML-based inline traffic classification using P4

This repository implements a machine-learning-based approach to classify encrypted network traffic using P4. The testbed is evaluated on a P4 virtual device, BMv2 Simple Switch. The model is Decision Tree Classifier using 3 features which are independent of packets' payload (that is encrypted) :

  • iat (Inter-Arrival Time): different arrival time of the current packet and the one of the previous packet
  • len: total length of the current IP packet
  • diffLen: different of len (that represents the difference of lengths of 2 consecutive IP packets)

The source code consists mainly 2 parts:

  • offline contains tools to extract features from pcap files, train model, evaluate model and generate P4 match-action tables' entries
  • bmv2 contains P4 code to run BMv2 switch which performs the infererence of the DT model against network traffic
  • p4pi contains P4 code to run inside a Raspberry Pi which installs P4PI and its controller

Execution

The execution can be performed basically in 2 steps as below.

Model preparation

cd ./bmv2/offline
# extract iat and len features from pcap files in ./pcaps folder
././process_pcaps.py

# train a DT model using the features above
 ./train_model.py

# generate match-action table's entries to configure P4 switch
./generate_table_entries.py 

Inference

See prerequisites here

cd ./src/bmv2
# start P4 switch
make run

# open a new terminal, start the controller which will:
# - configure the switch within the table's entries generated above
# - receive inference output from the switch
./controller.py

# back to the first terminal of P4 switch, use tcpreplay to generate some traffic
mininet> sh tcpreplay -i s1-eth1  --preload-pcap --timer=gtod ../offline/pcaps/skype.v2.pcap

Note: Inaccuracy classification

You might notice that the inference output is inaccuracy wrt the replaying pcap file, e.g., the output of the controller is as the following when replaying skype.v2.pcap file:

[Mon Apr 08 14:28:09] mmt@mmt:bmv2$ ./controller.py 
192.168.1.34 157.55.130.153 50057 443 6 => 0 64 0 => unknown
157.55.130.153 192.168.1.34 443 50057 6 => 130404000 60 65531 => skype
192.168.1.34 157.55.130.153 50057 443 6 => 445000 52 65527 => webex
192.168.1.34 157.55.130.153 50057 443 6 => 494000 124 65607 => webex
157.55.130.153 192.168.1.34 443 50057 6 => 133455000 52 65463 => skype
192.168.1.34 157.55.130.153 50057 443 6 => 316000 86 65569 => whasapp
192.168.1.34 157.55.130.153 50057 443 6 => 533322000 86 65535 => skype
192.168.1.34 157.55.130.153 50057 443 6 => 857429000 86 65535 => skype
192.168.1.34 157.55.130.153 50057 443 6 => 1511845000 86 65535 => skype
192.168.1.34 157.55.130.153 50057 443 6 => 2820222000 86 65535 => skype
192.168.1.34 157.55.130.153 50057 443 6 => 5447201000 86 65535 => skype
192.168.1.34 157.55.130.153 50057 443 6 => 2026143000 52 65501 => skype
192.168.1.34 157.55.130.153 50057 443 6 => 5509756000 86 65569 => skype
157.55.130.153 192.168.1.34 443 50057 6 => 129894000 93 65542 => skype
192.168.1.34 157.55.130.153 50057 443 6 => 1478000 40 65482 => whasapp

There are few packets which are classified as webex (unless the first packet is unknown as it has no IAT). However this inference in the P4 switch is performed correctly as its score is 100%, e.g.,

src/offline$ ./predict_file.py 
Score 1.0

When comparing this output with the extracted features, we see that the IAT values have been changed. This difference is caused by:

  • tcpreplay cannot replay exactly packets in the time
  • and the software switch of P4 does not capture precisely arrival timestamp of packets

When using only len and diffLen features, then the BMv2 switch can infer correctly when replaying skype.v2.pcap. See result here.