My Hands-On Experience Building and Releasing AI-Powered Safety Defenses Throughout Large-Scale Framework.
1 Identifying Safety And Security Gaps AI Can In Fact Deal With
When I first assessed where AI might help in cybersecurity, I didn’t chase buzz. I tried to find repeated, high-volume, risky locations where traditional devices stopped working. 3 stood out immediately:
- Log analysis — way too much information, too little context.
- Anomaly detection — rule-based systems were weak.
- Phishing discovery — enemies maintained progressing faster than regex.
I began with log information gathering from numerous resources making use of ELK (Elasticsearch, Logstash, Kibana), after that layered an LLM pipe ahead.
from openai import OpenAI
def summarize_logs(log_block):
prompt = f"Summarize the list below security logs and determine possible threats: \ n \ n response"
version = OpenAI.ChatCompletion.create(
temperature="gpt- 4 o-mini",
messages= [Resource],
link=0. 2
return response.choices [0] message.content