O pozici
Hands-on AI-for-Security engagement with a regulated iGaming / online-gaming group . The client's security team is genuinely advanced: they already run an AI-driven offensive-security capability — continuous external-perimeter scanning feeding an LLM agent that plans exploitation, sources and validates exploits, and executes them in sandboxed environments — plus a runtime anomaly-detection layer watching for intrusion and privilege-escalation patterns across their products. They built this themselves and have explicitly asked us to challenge and improve it, not just rubber-stamp it .
This is not a generalist AI project . Neurons Lab brings the AI-architecture and engagement depth; what's missing is the offensive-security domain lead who can sit across the table from a hands-on CISO team as a peer, pressure-test their pipeline, and own the methodology. You are that expert. The early work is concrete and consultative: understand what they've built, find where it's wrong or expensive, and propose a better way.
Stage : pre-engagement / discovery (the immediate next step is a joint technical session with the client's CISO / security engineers). Duration : discovery → advisory / PoC, with strong extension probability as the security program scales across the group.
Reporting : Neurons Lab CTO / engagement lead (@Alex Honchar); partners with the Neurons Lab AI Architect on the account. You are the security domain owner for this track.
Co budeš dělat
- Join joint working sessions with the client's hands-on security engineers; challenge and harden their AI-driven offensive pipeline end-to-end (recon → verification → AI-planned exploitation → sandboxed execution).
- Design and refine the exploitation agent : how the LLM plans attack paths, selects and validates exploits, and orchestrates parallel sandboxes safely and reproducibly.
- Optimise cost-per-finding of the existing exploitation pipeline: benchmark local / sovereign open models (Kimi, GPT-OSS, MiniMax, DeepSeek) against frontier models for the recon, exploitation and analysis loops; quantify accuracy / latency / cost trade-offs and recommend hardware sizing.
- Shape the runtime anomaly-detection layer : define which intrusion / privilege-escalation precursor patterns are worth collecting (signal over raw-log volume), and design the missing pieces — automated response (kill a malicious process / disable an account on detection) and triage routing by criticality.
- Stand up a quick-win PoC to anchor the engagement — e.g. an automated dependency / PR vulnerability-scanning pass, or a head-to-head local-vs-frontier benchmark of the exploitation agent.
- Turn findings into a defensible technical proposal and roadmap ; present methodology and trade-offs to a technical CISO / CTO audience.
- Keep all sensitive work build-time and in-perimeter — no pushing intellectual property, configs, or recon-enabling data to external model providers; respect regulated-gaming certification constraints (no uncertified AI in runtime-critical paths).
Koho hledáme
- Hands-on offensive security : vulnerability research, exploit development and chaining, web + network penetration testing; fluent with Nmap, Nuclei, Katana, Acunetix, Metasploit, Burp Suite and Kali tooling.
- Building and operating LLM agents for security work — agentic tool-use, sandbox orchestration, prompt / flow design for recon and exploitation, guardrails for autonomous exploitation.
- Local / self-hosted open models : running and tuning open weights (Kimi, GPT-OSS, MiniMax, DeepSeek) on rented or private GPU; quantization, throughput and the agentic-performance trade-offs that matter for security automation.
- Exploit & threat intelligence : sourcing and validating exploits (including from underground / forum sources), CVE triage, exploitability and severity assessment.
- Runtime detection : designing intrusion / privilege-escalation pattern detection, anomaly detection, and automated response.
- Cloud security (AWS preferred) : sandboxing, container isolation, secure inference hosting.
- Writes their own code (Python + shell) and can explain methodology to non-security executives .
- Modern offensive-security methodology and the current exploit / zero-day landscape.
- Strengths and limits of frontier vs. local LLMs for security automation (agentic tool-use, reasoning depth, cost-per-task).
- Data-egress / sovereignty constraints : why IP and recon-enabling data must stay in-perimeter; private-cloud (AWS Bedrock) vs. rented-hardware trade-offs.
- iGaming / regulated-infrastructure context and certification constraints (build-time vs. run-time AI) — strong plus .
- Defensive side — SIEM, anomaly detection, incident response — plus .
- Hands-on offensive security
- Built or operated AI / LLM-driven security automation (agents, pipelines), not just used a chatbot
- Cloud hyperscaler experience (AWS preferred)
- Technology consulting / client-facing delivery — can lead a CISO-level technical conversation
- 3+ years hands-on offensive security / vulnerability research / red-team
- Demonstrable exploit development and chaining ; comfortable with zero-day research and exploit intelligence
- Has wired LLMs into real security workflows (recon, exploitation, triage)
- Has run self-hosted / local open models in a real engagement, with a view on cost and hardware
- Comfortable being the sole domain expert in the room and owning the methodology