Paul George Savluc Advances International Initiative for Agentic AI, Digital-Twin Simulation, and Generative Hardware Development for Industry

Paul started from nothing, graduating with a bachelor’s at the age of 19, while working multiple jobs at once. He inspired, trained and mentored over 3000 engineers over the past 2-3 years. He even is on the official verified credits section for the Mandalorian Season 3.
As can be verified here: “The Mandalorian” Chapter 23: The Spies (TV Episode 2023) – Full cast & crew – IMDb
He’s building a pipeline of outcomes: AI systems that ship, engineering platforms that accelerate real hardware, and business development networks that move deals across borders. Add to that a serious push into medical technology and non-intrusive sensing, and you get a profile that’s increasingly rare: a founder-operator who can speak software, hardware, data, and deployment without turning it into vaporware.
What makes Paul unusually visible is not just the work, it’s the distribution. His network is being grown with a media and partnership strategy designed to amplify technical and business content at scale. Based on internal projections tied to current growth and publishing cadence, the network is targeting 7M+ views in 2025 and 100M+ views in 2026. Those are forecasts, not guarantees, but the direction is clear: Paul is building the kind of reach that turns engineering into a global conversation and turns conversations into contracts.
A business development network built like a system
Most “networking” is chaos. Paul’s approach is closer to an engineered system: repeatable, measurable, and designed for compounding.
He’s been developing a business development engine that connects:
- founders and engineers who need build capacity,
- companies who need product acceleration and data systems,
- organizations who need credible technical leadership in public.
The point is not hype. The point is high-trust distribution: producing content, demos, technical breakdowns, and partnership outreach that makes it easier for serious organizations to say yes, faster.
Engineering and AI: from ideas to working systems
Paul’s technical work clusters around applied AI infrastructure and generative engineering:
- Building LLM and NLP pipelines that are designed for production constraints, not demos.
- Developing workflows for generative AI in electronics and embedded systems, where constraints are real and mistakes are expensive.
- Prioritizing simulation and digital-twin thinking, because the cheapest prototype is the one you can break in software before you break it in the real world.
That mindset shows up in his platform work at OpenQQuantify and in analytics and automation efforts across business systems.
The medical and health-tech side: non-intrusive sensing and practical diagnostics
Paul’s medical-side work focuses on engineering realities that matter: signal quality, usability, privacy, and deployment.
His interests and efforts include:
- A worldwide medical platform for people to talk to online doctors and book specialized medical help.
- Online AI Medical Diagnostics
- Non-intrusive sensing for monitoring physiological signals using modalities like EEG-adjacent approaches, acoustics, and other sensor pathways.
- Building health-tech concepts that lean toward real utility: better monitoring, better data capture, better interpretation, and better integration into systems people already use.
This is not “health content.” It’s engineering applied to human outcomes, where safety, accuracy, and reliability are the whole game.
Why companies hire and contract Paul
Organizations bring Paul in when they need someone who can operate across layers:
- AI engineering + infrastructure
- electronics and embedded constraints
- product delivery and systems architecture
- partnership and deal motion
He’s built to be a multiplier: capable of building directly, but also capable of shaping roadmaps, teams, and execution that survives reality.
What Paul is actively open to worldwide
Paul is a strong fit for global roles and contracts in:
- Business Development (Digital and Physical)
- Applied LLM systems (RAG, tool use, retrieval, evaluation, latency work)
- MLOps and ML systems engineering (pipelines, monitoring, data quality, deployment)
- AI + simulation and digital-twin engineering
- Robotics
- Embedded and edge systems with AI integration
- Health-tech sensing and signal-driven system design
- Technical product leadership and founder-level execution
Paul is building compounding distribution around real engineering output, and that combination tends to scale fast when it’s consistent.
Cybersecurity and government compliance automation: making regulation executable
Savluc’s published work highlights a practical theme: compliance is not just policy, it’s an operational system. His books focus on turning U.S. Government contracting and cybersecurity requirements into repeatable engineering workflows, bridging controls, audit-readiness, incident response expectations, and systems automation.
His current Amazon Kindle titles include:
Media Contact
Organization: OpenQQuantify
Contact Person: Paul Savluc
Website: https://www.openqquantify.com
Email: Send Email
Contact Number: +40751476842
Address:560 Raven Woods Drive, suite 215
Address 2: suite 215
City: North Vancouver
State: BC
Country:Canada
Release id:34899
The post Paul George Savluc: The Engineer Connecting AI, Robotics, Industry, and Health at Internet Scale appeared first on King Newswire. This content is provided by a third-party source.. King Newswire makes no warranties or representations in connection with it. King Newswire is a press release distribution agency and does not endorse or verify the claims made in this release. If you have any complaints or copyright concerns related to this article, please contact the company listed in the ‘Media Contact’ section
Disclaimer: The views, suggestions, and opinions expressed here are the sole responsibility of the experts. No Watch Mirror journalist was involved in the writing and production of this article.
