Advancing next-generation AI beyond deep learning, grounded in first principles to master complex systems. Join our team, remote and internships welcome!
INSIDE AI Podcast: Industrial-Scale Qubits—Hype or Reality?
Is the dream of industrial-scale quantum computing finally becoming a reality? In this episode of INSIDE AI, the team at Loop Quantum AI Labs dives deep into the current state of the quantum landscape. We move past the buzzwords to discuss the genuine transition from theoretical physics to production-ready hardware.
From the extreme engineering required to keep qubits stable to the revolutionary feedback loop where classical AI is actually helping build its quantum successor, we explore what it truly takes to operate at the cutting edge of "Quantum Native" AI.
Episode Highlights
- (0:40) The Three Pillars of Quantum Tech – Distinguishing between Quantum Computing (QC), Communication (QCom), and Sensing.
- (1:05) The Hardware Landscape – A breakdown of the major players in superconducting, neutral atom, and trapped ion systems.
- (1:55) Quantum Native AI vs. Simulations (1:55) – Why we must move beyond classical neural networks to unlock true quantum power.
- (3:05) The "Diva" of Tech: Extreme Engineering – The logistical challenge of maintaining temperatures 180x colder than interstellar space.
- (4:10) The AI Feedback Loop – How classical AI is being used to tune and calibrate the next generation of quantum machines.
Join Our Team
We are currently expanding our interdisciplinary research team! If you are an expert in quantum control theory, adiabatic quantum computing, or computational biology, we want to hear from you.
🔗 Explore open positions and read Loop Quantum AI Labs manifesto at: https://t.co/0cBeOKIu05
#QuantumAI #DeepTech #MachineLearning #QuantumComputing #LoopQuantumAI #InsideAI
🚀 INSIDE QUANTUM AI: From Leaking Transistors to Quantum-Native AI 🚀
Ever wondered why your device gets warm? It isn't just the battery; it’s the sound of classical physics breaking down as we hit the "Silicon Wall." In this episode, we explore why the era of simply shrinking transistors is over and why Quantum-Native AI is the only way to truly model our world.
Main Topics & Deep Dives
• (1:10) – The 3-Nanometer Breaking Point: We have reached the scale of DNA (2.5nm), where transistor walls are only atoms thick. At this scale, classical physics fails as electrons "tunnel" through solid barriers, creating the heat and calculation errors that are stalling modern hardware.
• (4:05) – The Efficiency Ceiling & The GPT Distraction: While the world is focused on LLMs, the "brute force" approach of building massive data centers is hitting a physical and sustainable ceiling. We discuss why hoarding more text won't lead to true intelligence.
• (6:40) – The Paradox of Classical Shields: We spend billions on engineering feats to shield chips from quantum effects, only to use that rigid hardware to try and simulate a reality—chemistry, biology, and finance—that is fundamentally quantum. It’s like trying to paint a masterpiece with a brush that only does black and white dots.
• (8:45) – Moving from Statistical Guessing to Real-World Simulation: Quantum-native AI moves beyond "predicting the next word." Instead of a weather app guessing rain based on history, quantum-native models simulate actual physics to know the outcome with certainty.
• (10:15) – The Mission at Loop AI: The transition to processing information the way the universe does requires a new breed of experts. We are looking for pioneers in quantum control, error correction, and computational biology to join the simulation era.
The era of "just make it smaller" is over. The simulation era has begun.
🔗 Explore open positions and read our manifesto at: https://t.co/MxyQBplx7V
#QuantumComputing #InsideQuantumAI #DeepTech #SiliconWall #QuantumNative #LoopQuantumAI
The Schrödinger Foundations for Quantum-Native Intelligence
From Clockwork to Quantum, How Schrödinger’s Equation Redefines Intelligence
A journey from Newton’s deterministic universe to Quantum-Native AI, where probability becomes the engine of intelligence.
Inside Quantum AI Podcast:
Why Big AI Can’t Scale and What Comes Next.
(0:00) Intro
(0:56) Context windows limitations
(2:37) With current AI we’re trying to simulate a probabilistic world on a deterministic machine
(2:52) Quantum Native AI
(3:17) Superposition and the double-slit experiment
(5:50) The parallel reality engine
What if next-gen AI isn't built on neural nets?
At https://t.co/zj28rab2C7, we're rethinking intelligence from first principles—where quantum mechanics meets computation.
We're looking for curious minds in:
⚛️ Quantum Physics & Algorithms
🧬 Computational Biology
💻 Software & Research Engineering
🤖 AI/ML Research & Quantum-ML Hybrids
No incremental work. Foundational research.
Apply → https://t.co/zj28rab2C7