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Table of Contents
Network scanning and port detection
Packet sniffing and analysis
Automated vulnerability detection scripts
Home Backend Development Python Tutorial Ethical Hacking with Python

Ethical Hacking with Python

Aug 01, 2025 am 05:46 AM

Penetration testing and security research using Python can be achieved through the following steps: 1. Use the socket module to write a port scanner, combine multithreading to improve efficiency and set a timeout mechanism; 2. Use the scapy and pyshark libraries to perform packet sniffing and analysis, monitor network traffic to identify HTTP requests; 3. Use the requests library to automatically detect vulnerabilities, such as checking whether common background paths exist. Python is mainly used in this process for automated tasks, process optimization and tool development. Mastering key libraries such as sockets, requests, and scapy can greatly improve security detection efficiency.

Ethical Hacking with Python

If you want to use Python for penetration testing or security research, it is indeed a good starting point. Not only is Python simple syntax, it also has a large number of ready-made libraries that can be used to write network detection, vulnerability scanning, data packet capture and even automated attack scripts. But here is not to teach you how to hack other people's systems, but to talk about how to use Python to do some common security detection and tool development.

Ethical Hacking with Python

Network scanning and port detection

The first step in doing Ethical Hacking is usually to understand what services are open to the target. At this time, you can write a simple port scanner in Python.

  • Try to establish a TCP connection using socket module
  • It can speed up scanning speed with multithreading
  • Pay attention to controlling the timeout time to avoid being stuck

For example, the following idea:

Ethical Hacking with Python
 import socket

def scan_port(ip, port):
    try:
        s = socket.socket(socket.AF_INET, socket.SOCK_STREAM)
        s.settimeout(1)
        result = s.connect_ex((ip, port))
        if result == 0:
            print(f"Port {port} is open")
        s.close()
    except:
        pass

Of course, in reality, you may not write it from scratch, and will directly encapsulate functions with modules like nmap . However, understanding the underlying principles is very helpful for debugging and customizing scripts.


Packet sniffing and analysis

If you want to know what traffic is in the local network, you can use Python to capture packets and analyze the protocol content. This is useful when troubleshooting abnormal traffic or learning protocol structures.

Ethical Hacking with Python
  • Use the scapy library to easily construct and parse packets of various protocols
  • Can read pyshark capture files in Wireshark format
  • Packet capture requires administrator permission (running with administrator identity on Windows, and sudo on Linux)

For example, you can write a small script that listens for HTTP requests:

 from scapy.all import sniff, TCP, IP

def process_packet(packet):
    if packet.haslayer(TCP) and packet.haslayer(IP):
        if packet[TCP].dport == 80 or packet[TCP].sport == 80:
            print(packet.summary())

sniff(prn=process_packet, filter="tcp port 80", count=0)

In this way, you can see if there are any HTTP requests transmitted in plain text on the LAN and remind users to use HTTPS.


Automated vulnerability detection scripts

Some common vulnerabilities can be determined by sending specific requests, such as directory traversal, SQL injection, weak password login, etc. You can use Python to write scripts to batch detect these situations.

  • Send HTTP requests using requests
  • Analyze the response content to determine whether the keyword is hit
  • Can cooperate with dictionary for brute force cracking test (authorization scope only)

For example, check if there is a default background path:

 import requests

common_paths = ["/admin", "/login.php", "/dashboard"]

for path in common_paths:
    url = f"http://target.com{path}"
    r = requests.get(url)
    if r.status_code == 200:
        print(f"Found: {url}")

This type of script cannot be too violent or abused, but it can help you quickly discover some obvious problems.


In general, Python plays a main auxiliary role in Ethical Hacking - allowing you to complete repetitive tasks, automate processes, and build prototype tools more efficiently. After mastering several key libraries (such as socket, requests, and scapy), you will find that many of the things you did manually before can be done in code.

Basically all that is, it’s not difficult but the details need to be in place.

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