GPT_Vuln-analyzer uses ChatGPT API and Python-Nmap module to use the GPT3 model to create vulnerability reports based on Nmap scan data.
This is a Proof Of Concept application demonstrating how AI can generate accurate results for vulnerability analysis and allows further utilization of the already super helpful ChatGPT. The tool supports both Windows and Linux.
Requirements
Usage
- First, Change the “API__KEY” part of the code with the OpenAI API key
openai.api_key = "__API__KEY" # Enter your API key
- Second, install the packages
pip3 install -r requirements.txt or pip install -r requirements.txt
To run the code
Understanding the code
Profiles:
Parameter | Return data | Description | Nmap Command |
---|---|---|---|
p1 | json | Effective Scan | -Pn -sV -T4 -O -F |
p2 | json | Simple Scan | -Pn -T4 -A -v |
p3 | json | Low Power Scan | -Pn -sS -sU -T4 -A -v |
p4 | json | Partial Intense Scan | -Pn -p- -T4 -A -v |
p5 | json | Complete Intense Scan | -Pn -sS -sU -T4 -A -PE -PP -PS80,443 -PA3389 -PU40125 -PY -g 53 --script=vuln |
The profile is the type of scan that the Nmap subprocess will execute. The Ip or target will be provided via argparse.
At first, the custom Nmap scan is run, which has all the crucial arguments for the scan to continue. Next, the scan data is extracted from the huge pile of data driven by Nmap.
The “scan” object lists sub-data under “tcp” each labeled according to the ports opened. once the data is extracted, the data is sent to the Openai API davenci model via a prompt.
The prompt specifically asks for a JSON output and the data to be used in a certain manner.
The entire structure of requests that must be sent to the openai API is designed in the completion section of the Program.
def profile(ip): nm.scan('{}'.format(ip), arguments='-Pn -sS -sU -T4 -A -PE -PP -PS80,443 -PA3389 -PU40125 -PY -g 53 --script=vuln') json_data = nm.analyse_nmap_xml_scan() analize = json_data["scan"] # Prompt about what the quary is all about prompt = "do a vulnerability analysis of {} and return a vulnerabilty report in json".format(analize) # A structure for the request completion = openai.Completion.create( engine=model_engine, prompt=prompt, max_tokens=1024, n=1, stop=None, ) response = completion.choices[0].text return response
Advantages
- It can be used in developing more advanced systems wholly made of the API and scanner combination.
- Can increase the effectiveness of the final system
- Highly productive when working with models such as GPT3.
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