Curated and trained by Alican Kiraz
Links:
- Medium: https://alican-kiraz1.medium.com/
- Linkedin: https://tr.linkedin.com/in/alican-kiraz
- X: https://x.com/AlicanKiraz0
- YouTube: https://youtube.com/@alicankiraz0
SenecaLLM has been trained and fine-tuned for nearly one month—around 100 hours in total—using various systems such as 1x4090, 8x4090, and 3xH100, focusing on the following cybersecurity topics. Its goal is to think like a cybersecurity expert and assist with your questions. It has also been fine-tuned to counteract malicious use.
It does not pursue any profit.
Over time, it will specialize in the following areas:
- Incident Response
- Threat Hunting
- Code Analysis
- Exploit Development
- Reverse Engineering
- Malware Analysis
"Those who shed light on others do not remain in darkness..."
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