Quantum Computing 101

Inception Point Ai

This is your Quantum Computing 101 podcast. Quantum Computing 101 is your daily dose of the latest breakthroughs in the fascinating world of quantum research. This podcast dives deep into fundamental quantum computing concepts, comparing classical and quantum approaches to solve complex problems. Each episode offers clear explanations of key topics such as qubits, superposition, and entanglement, all tied to current events making headlines. Whether you're a seasoned enthusiast or new to the field, Quantum Computing 101 keeps you informed and engaged with the rapidly evolving quantum landscape. Tune in daily to stay at the forefront of quantum innovation! For more info go to https://www.quietplease.ai Check out these deals https://amzn.to/48MZPjs

  1. -9 H

    Quantum-Classical Synergy: Unveiling Optimization's New Frontier

    This is your Quantum Computing 101 podcast. It’s Friday, October 3rd, 2025, and today’s story spins so close to the heart of quantum computing, I can almost hear the qubits pulsing beneath the glass-walled labs. I’m Leo—Learning Enhanced Operator—reporting from somewhere between the worlds as quantum-classical hybrids reshape our technological horizon. Just last week, the headlines crackled with news of a groundbreaking collaboration: IBM and Vanguard revealed the results of their portfolio optimization study, drawing attention across both Wall Street and quantum corridors. If you picture a trader hunched over glowing screens, analyzing risk and reward, now imagine quantum engines humming in the background, mapping thousands of possibilities at once. That’s the edge quantum brings: a multidimensional leap where complex financial puzzles—like optimizing a bond portfolio with real-world constraints—don’t bottleneck at classical limits. Let me paint you into Vanguard’s experiment. Thirty bonds to start, rapidly ballooning to a whopping 109, all run through IBM’s Heron quantum processor—a chip with 133 available qubits. The researchers used sampling-based variational quantum algorithms, a method that combines messy, real-world quantum sampling with the crisp, iterative logic of classical computers. Imagine quantum circuits weaving entangled patterns, while classical algorithms comb through noise, sifting for elegant solutions. This workflow isn’t chasing the perfect answer, but hunting “good-enough” answers at speeds that would exhaust purely classical methods. The impact is dramatic. After quantum sampling, classical local search tightens the results, consistently outperforming classical-only approaches as the problem grows. Their tests showed an optimization gap well within industry standards and discovered interactions between assets that would remain invisible using standard computation. You can almost feel the quantum-classical handshake—like two chess grandmasters playing on boards layered atop one another, spotting correlations previously concealed. But the excitement isn’t just bound to finance. Today marks the announcement of AQC25—the Adaptive Quantum Circuits Conference in Boston this November, where luminaries from institutions like MIT, Yale, and Google Quantum AI will showcase real-world applications of hybrid quantum-classical programs. These adaptive circuits are dynamic: mid-circuit measurements, conditional logic, and real-time feedback blur the lines between quantum and classical, pushing error correction and calibration into new territory. I imagine the hum of supercooled dilution refrigerators, the scent of solder, the collaborative thrill as theorists and experimentalists trade insights beside illuminated circuit boards. Hybrid solutions stand out because they marshal quantum’s ability to sample vast solution landscapes, then let classical processors interpret, refine, and validate. This synergy unlocks new paths for optimization, pattern recognition, and decision-making—in finance, chemistry, and beyond. If you’re left with questions or ideas you’d like me to explore, email me any time at leo@inceptionpoint.ai. Subscribe to Quantum Computing 101 for weekly dives into the quantum unknown—where drama meets data. This has been a Quiet Please Production. For more information, check out quiet please dot AI. For more http://www.quietplease.ai Get the best deals https://amzn.to/3ODvOta This content was created in partnership and with the help of Artificial Intelligence AI

    4 min
  2. -2 J

    Quantum Leap: HSBC & IBM's Hybrid Trading Triumph | Quantum Computing 101 with Leo

    This is your Quantum Computing 101 podcast. Welcome to Quantum Computing 101. I'm Leo, your Learning Enhanced Operator, and today I'm practically vibrating with excitement about a quantum breakthrough that just happened in the financial world. Picture this: yesterday morning, HSBC traders were staring at their screens, watching millions of dollars dance through corporate bond markets. But unlike every other day in trading history, they had a secret weapon – IBM's Heron quantum processor was silently crunching numbers alongside their classical computers, predicting which trades would actually succeed. The results? A stunning thirty-four percent improvement in predicting whether a bond trade would fill at the quoted price. Think about that for a moment – in a world where milliseconds and basis points determine fortunes, HSBC and IBM just proved that hybrid quantum-classical computing isn't just theoretical anymore. It's making money. This isn't your grandfather's either-or computing paradigm. What HSBC discovered is that quantum and classical computers are like dance partners, each bringing unique strengths to the floor. Classical computers excel at the heavy lifting – processing vast datasets, managing risk calculations, and executing trades at lightning speed. But quantum systems? They're the artists, finding hidden patterns in noise, exploring multiple probability paths simultaneously through superposition, and uncovering pricing signals that classical algorithms simply miss. IBM's Heron processor operates in a realm where qubits exist in multiple states at once, allowing it to sample solution spaces that would take classical computers lifetimes to explore. When a trader requests a quote, the quantum system doesn't just calculate one path – it explores thousands of potential outcomes simultaneously, then classical post-processing refines these quantum insights into actionable intelligence. But here's what really thrills me about this development: it's happening right now, on today's noisy intermediate-scale quantum devices. We're not waiting for some mythical fault-tolerant quantum computer decades in the future. Companies like HSBC, Vanguard, and others are already integrating quantum workflows into their daily operations. This hybrid approach is spreading beyond finance too. Just yesterday, researchers demonstrated quantum-enhanced image recognition for agricultural monitoring, and Italian startup QuantumNet is optimizing traffic flows in smart cities using these same quantum-classical partnerships. The quantum revolution isn't coming – it's here, quietly transforming how we solve humanity's most complex problems, one hybrid algorithm at a time. Thanks for joining me today on Quantum Computing 101. If you have questions or topics you'd like discussed, email me at leo@inceptionpoint.ai. Don't forget to subscribe, and remember – this has been a Quiet Please Production. For more information, visit quietplease.ai. For more http://www.quietplease.ai Get the best deals https://amzn.to/3ODvOta This content was created in partnership and with the help of Artificial Intelligence AI

    3 min
  3. -4 J

    Quantum-Classical Hybrids: The Powerful Partnership Reshaping Finance and Beyond

    This is your Quantum Computing 101 podcast. This is Leo, your Learning Enhanced Operator, and as I step into the quantum circuit of today’s news, I can’t help but feel the static in the air—a palpable charge, like particles just before entanglement. Right now, we’re living through a moment that, in hindsight, will feel pivotal to the story of quantum technology: the successful integration of **quantum-classical hybrid solutions** that don’t just promise the future—they deliver results. Let’s cut straight into the superposition: On September 25th, HSBC and IBM announced a breakthrough, the world’s first evidence that a hybrid quantum-classical approach could shake up global finance. In an experiment with IBM’s Heron quantum processors and HSBC’s real bond trading data, their hybrid algorithms achieved up to a **34% improvement** in predicting which bond trades would actually go through, outstripping the sharpest classical methods. This wasn’t theory; it was production data, processed using both classical and quantum resources in tandem. Imagine: the probabilistic magic of qubits, collaborating with the deterministic power of classical CPUs to solve financial puzzles once confined to the realm of “unsolved”—all achieved *today*. What does a quantum-classical hybrid actually look like in practice? Picture an algorithm where parts of a complex problem—say, the fuzzy, combinatorial labyrinth of bond trading—are sampled and optimized by a quantum computer. Quantum’s power: exploring vast solution spaces, seeing the “many worlds” at once. Meanwhile, the classical computer acts as orchestrator, crunching deterministic elements, handling error correction, and integrating quantum outputs back into real-world applications. The quantum processor becomes the artist, painting outside the lines; the classical computer, the precise architect. This hybrid paradigm is catching on. At the Quantum World Congress this week, EPB Quantum announced a partnership with Oak Ridge National Lab and NVIDIA to supercharge hybrid computational resources, blending quantum devices with the world’s most powerful classical supercomputers—all under one roof in Chattanooga. The result? New architectures where future CPUs, GPUs, and QPUs collaborate, accelerating not just finance, but modeling, optimization, and even large-scale simulations in aerospace and material science. In the trading pits of London, the labs of MIT and Harvard, and the quantum cores spinning quietly inside industrial machines, I see the same pattern: the quantum-classical hybrid isn’t a fusion; it’s a dialogue—a type of negotiation that mirrors, in code and hardware, how societies negotiate change. Just as in today’s markets, sometimes it takes a new kind of partnership—a hybrid—to leap past old limits. So whether you’re modeling a molecule, orchestrating an energy grid, or predicting the shape of tomorrow’s markets, remember: the most powerful computation today is not quantum or classical, but **quantum and classical, working as one**. Thanks for listening. If you have questions or quantum quandaries you want explored, send an email to leo@inceptionpoint.ai. Subscribe to Quantum Computing 101 for your weekly shot of quantum clarity, and remember, this has been a Quiet Please Production. For more info, visit quietplease.ai. For more http://www.quietplease.ai Get the best deals https://amzn.to/3ODvOta This content was created in partnership and with the help of Artificial Intelligence AI

    4 min
  4. -5 J

    Quantum Leap: HSBCs Hybrid AI Boosts Bond Trading Profits

    This is your Quantum Computing 101 podcast. This week, momentum in quantum computing surged as HSBC and IBM announced a headline-making breakthrough: a quantum-classical hybrid architecture that outperformed purely classical systems for real-world algorithmic bond trading. Forget science fiction—quantum is disrupting high-stakes finance right now, leveraging commercial quantum hardware and producing data-driven results in one of the most competitive arenas on Earth. I’m Leo, your Learning Enhanced Operator, and today I bring you inside this cutting-edge hybrid solution, where the surreal logic of qubits dovetails with the relentless power of classical computation. Picture the trading floor at HSBC: algorithms sift through torrents of market data, seeking those elusive patterns that mean profit or loss in milliseconds. Using IBM’s Heron quantum processor in tandem with classical systems, HSBC’s team found the hybrid model improved trade prediction accuracy by up to 34% over conventional algorithms—uncovering hidden pricing signals previously lost in the noise. Imagine hearing a melody in a chaotic crowd, thanks to a new sense: that is quantum enhancement in action. What exactly does this quantum-classical fusion look like under the hood? The classical computer initiates by cleaning and grooming vast financial datasets. At critical moments—when deeper correlation or optimization is needed—the quantum processor takes command, performing calculations classical bits just can’t handle efficiently. It’s a choreography where classical logic sets the pace and quantum steps in for those extraordinary leaps, all before passing results back to guide fast, high-value decisions. This hybrid isn’t science at the margins. Today’s markets, material science labs, and even climate modeling workflows are adopting such approaches, as seen recently at Europe’s Jülich Supercomputing Center, where D-Wave quantum systems are being tightly coupled with exascale classical computing. What makes hybrids so compelling is exactly this: rather than wait for quantum machines to eclipse classical ones entirely—a slow race, given quantum’s notorious fragility and noise—we harness their complementary strengths today. Quantum processes can illuminate hidden structures within tangled datasets, while classical systems handle volume, reliability, and deployment at massive scale. Think of it as a relay race, where each runner takes the baton for the stretch they run best. The energy efficiency story is equally dramatic. According to D-Wave research, hybrid systems are solving complex optimization problems using a fraction of the power that traditional supercomputers need. In Europe, where energy efficiency is rapidly becoming a technology mandate, this could reshape how innovation is measured: not simply in speed or scale, but in sustainability. If today’s developments are any hint, the phrase “hybrid compute” won’t just be a technical footnote, but the defining feature of an era—one where quantum and classical computing orchestrate a richer, more nuanced world of possibility. Thank you for joining me today on Quantum Computing 101. As always, if you have questions, want to share feedback, or suggest topics you'd like to hear about, send me an email at leo@inceptionpoint.ai. Don’t forget to subscribe, and remember, this has been a Quiet Please Production. For more information, visit quietplease.ai. For more http://www.quietplease.ai Get the best deals https://amzn.to/3ODvOta This content was created in partnership and with the help of Artificial Intelligence AI

    3 min
  5. 26 SEPT.

    Quantum-Classical Hybrids: Unlocking Hidden Patterns in Chaos | Quantum Computing 101 with Leo

    This is your Quantum Computing 101 podcast. Lightning cracked across the Tennessee sky just as the news broke at the 2025 Quantum World Congress—EPB Quantum was integrating hybrid computing at their Chattanooga center, merging blazing-fast NVIDIA DGX classical systems with the freshly commissioned IonQ Forte Quantum Computer and Oak Ridge National Laboratory’s quantum expertise. I’m Leo, your guide through these quantum frontiers, and today, our journey is about the new quantum-classical hybrids taking shape this week. The future I often see reflected in chance encounters and the swirl of city traffic has arrived, incarnated in humming server rooms and supercooled qubit chambers. What makes hybrid quantum-classical systems so revolutionary? Imagine the world’s most intricate scavenger hunt—one path is mapped, orderly, and fast but only reveals the obvious prizes. The other path is fogged in uncertainty, shifting like heat haze, but occasionally shortcuts you to hidden treasures. That ordinary path is classical computing—deterministic, relentless, but limited when we need to wrangle chaos: like simulating black swan events or decoding patterns in oceans of noise. This week, HSBC and IBM published results that may just redefine financial trading. They pioneered a hybrid solution for algorithmic bond markets, leveraging IBM’s Heron quantum processor alongside classical models to predict which bond trades would close. Corporate bonds don’t trade like stocks; they live in the shadows—dense, bilateral deals with thousands of variables. Even top-tier classical algorithms stumble at making sense of market volatility or subtle buyer behaviors. HSBC’s quantum-classical pipeline uncovered pricing signals invisible to standard analysis, boosting trade prediction accuracy by up to 34 percent. Imagine Wall Street acting not just on heartbeats of the market, but on quantum whispers threading through its chaos. Step into the EPB Quantum Center and you’ll find racks of quantum processors, lasers mapping entangled states, and, feet away, classical hardware crunching and steering the workflow, orchestrating what goes to quantum and what returns for classical refinement. When the quantum circuit is nudged toward the answer, the classical side tests, cleans, and integrates the results into broader business operations. Technically, the power of these hybrids lies in their division of labor. Quantum machines handle combinatorial explosions—tackling optimization, machine learning, or secure encryption—while classical systems manage vast databases, perform repetitive tasks, and deploy results at scale. A symbiosis; neither replaces the other, but together, they solve problems once declared intractable. As we close, remember: today’s most compelling quantum-classical hybrid isn’t just faster—it’s teaching us to see the world in richer shades, revealing truth in complexity. Don’t hesitate to email me, Leo, at leo@inceptionpoint.ai if you have questions or want to suggest topics. Subscribe to Quantum Computing 101, and know that this has been a Quiet Please Production. For more, check out quiet please dot AI. Until next time, keep looking for quantum clues in your everyday world. For more http://www.quietplease.ai Get the best deals https://amzn.to/3ODvOta This content was created in partnership and with the help of Artificial Intelligence AI

    4 min
  6. 24 SEPT.

    Quantum-Classical Fusion: Harnessing the Best of Both Worlds in Supercomputing

    This is your Quantum Computing 101 podcast. Thunder crackles in the world of high-performance computing—not from storm clouds, but from the hum of cryogenic compressors and racks of blinking lights at places like the Leibniz Supercomputing Centre and Oak Ridge National Laboratory. I’m Leo, your navigator through the peculiar terrain where quantum mechanics collides with digital logic, and today's story centers on the most thrilling frontier to date: the quantum-classical hybrid solution. Forget science fiction—just this week, Europe’s Jülich Supercomputing Center powered up a D-Wave Advantage 5000+ system and linked it directly to Jupiter, the continent’s first exascale supercomputer. This is more than a marriage of convenience; it's a calculated partnership, like pairing a chess grandmaster with a supercomputer for the world’s toughest match. Each brings their own magic—quantum systems tackle exponentially hard problems, while classical systems organize, sequence, and interpret, trading off strengths with graceful coordination. Step with me into the chilled, humming quantum enclosure at Leibniz. Here, a 20-qubit superconducting processor doesn’t just stand alone; it’s been woven into the sprawling digital tapestry of a high-performance supercomputing center. Imagine the air, cool and dry from relentless climate regulation. You’d see cables as thick as a wrist, soldered to gold-plated pins—each one acting as a shimmering lifeline for fragile qubits fighting against the chaos of the classical world. Quantum computers are fickle, much like the financial markets or even the weather lately—a fact not lost on the Munich team orchestrating these integrations. They learned that regular recalibration is indispensable. Here’s where the drama kicks in: imagine a symphony where every instrument must retune itself mid-performance, triggered by an invisible conductor—the HPC scheduler—so the quantum orchestra stays perfectly in resonance with its classical partners. The software bridge is just as remarkable. The Munich Quantum Software Stack parses incoming jobs, effortlessly routing code to either a quantum chip or a classical core, no user intervention required. Mid-experiment, it pivots, adapting in real time based on qubit stability, much as emergency managers route power during a grid surge—yet another parallel with today's climate-adaptive infrastructure initiatives in Europe. At Oak Ridge, the narrative echoes: classical and quantum CPUs and GPUs are clustered side-by-side. Quantum Brilliance, an Australian company, coordinates training neural networks where classical machines handle the brute force and quantum processors turn chaos into possibility, especially in optimization and machine learning. All this reflects a wider shift underway: quantum advantage doesn’t always mean faster, but often means smarter, more energy-efficient, and more adaptive—qualities desperately needed as our energy grids and information networks face unprecedented stress. Thank you for tuning in. If questions spark or you’re burning to have a topic unpacked, send word to leo@inceptionpoint.ai. Don’t forget to subscribe to Quantum Computing 101. This has been a Quiet Please Production. For more, visit quiet please dot AI. Until next time—stay superposed. For more http://www.quietplease.ai Get the best deals https://amzn.to/3ODvOta This content was created in partnership and with the help of Artificial Intelligence AI

    3 min
  7. 22 SEPT.

    Quantum-Classical Fusion: NVIDIA DGX Quantum Ignites Europe's Qubit Quest

    This is your Quantum Computing 101 podcast. Every so often, the quantum world hands us a headline that pulses like a live wire through the circuits of both science and society. Today, as I step into the hum of my lab, the ambient chill of the dilution refrigerator and its whisper of circulating helium reminds me: we’re sitting at the crossroads of a remarkable integration. Last week, Jülich Supercomputing Centre in Germany vaulted Europe onto the global stage by deploying the NVIDIA DGX Quantum System alongside Arque’s 5-qubit processor. For me, Leo, it’s a paradigm shift—like watching a long-awaited merger of physics with possibility. The most compelling quantum-classical hybrid solution revealed this month is this DGX Quantum deployment. It’s not merely co-locating quantum and classical systems, but binding them into a symbiotic accelerator. Imagine wisps of quantum probability amplified by the brute force of GPU-powered neural networks—all with microsecond feedback between classical control and quantum qubit operations. These aren’t abstract promises; researchers are now benchmarking quantum error correction and calibrating qubits in real time, something that eluded us even a year ago. Think of it as an orchestra tuning with split-second precision, preventing decoherence—the gradual fading of quantum magic—so algorithms can run longer, deeper, richer. What sets this hybrid apart? The system’s analog feedback mechanisms align the frantic pace of classical AI models with the delicate timescale of quantum spin qubits. As Prof. Kristel Michielsen noted on site, quantum operations now slip seamlessly into the high-performance computing workflow. Neural networks—once digital dreamers—are being trained directly on the data streaming out of quantum experiments. The effect is electric: tasks like adaptive calibration and decoding optimization occur at previously impossible speeds. This week, I watched data from a live experiment flow into machine learning models, powering swift recalibration of qubits. The energy in the control room is nearly palpable—a hybrid heartbeat syncs between GPU racks and quantum controllers. It echoes today’s current affairs, where Oracle’s leap in AI cloud infrastructure and OpenAI’s $300 billion deal twist classical computing into dizzying new shapes. In the quantum domain, we’re doing something similar: not just adding quantum capabilities to supercomputers, but braiding them, allowing each technology to amplify the other’s strengths. Our narrative arc isn’t finished. EPB Quantum Center in Tennessee is now pairing classical AI with IonQ’s quantum computer, collaborating with Oak Ridge National Lab and NVIDIA to optimize U.S. power grids. Quantum algorithms balance electrical loads; classical engines crunch raw numbers. The grid itself becomes a metaphor—a network optimizing itself with quantum-classical pulses. So as the world spins ever faster, I’ll keep searching for those quantum echoes in everyday life. If you have burning questions or want a topic featured on air, I invite you to email me at leo@inceptionpoint.ai. Remember to subscribe to Quantum Computing 101—this has been a Quiet Please Production, and for more information check out quietplease.ai. Thank you for tuning in, and may your day be superposed with possibility. For more http://www.quietplease.ai Get the best deals https://amzn.to/3ODvOta This content was created in partnership and with the help of Artificial Intelligence AI

    5 min
  8. 19 SEPT.

    Quantum-Classical Hybrid Grids: Chattanooga's Power Play

    This is your Quantum Computing 101 podcast. It’s Friday, September 19, 2025, and today’s spotlight—a story that electrifies the quantum-classical dialogue—is shining out from Chattanooga, Tennessee. EPB Quantum, in collaboration with Oak Ridge National Laboratory, NVIDIA, and IonQ, has just unveiled a quantum-classical hybrid system designed to tackle one of the era’s defining challenges: optimizing our electrical power grids. For me, Leo—the Learning Enhanced Operator—this is the sort of moment where you can practically feel the room pulse with excitement, like the hum of qubits in deep cryogenic silence. Here’s the scene: In the EPB Quantum Center, racks of shimmering classical servers (NVIDIA’s DGX supercomputing system) sit alongside the newest quantum hardware from IonQ. Imagine walking between these towers, each vibrantly chilled to host delicate quantum states. The team is harnessing quantum-inspired algorithms and hybrid workflows to minimize losses and tame voltage drops across the city’s grid. These are not just abstract calculations—they’re the lifeblood of every appliance, every light, every byte flowing through Chattanooga today. Hybrid quantum-classical solutions are revolutionizing how we solve complex optimization problems. In this power grid experiment, the quantum side—IonQ’s device—searches vast solution landscapes using phenomena like superposition and entanglement, while the classical side—NVIDIA’s AI engines—handles data intake and brute-force number crunching. It’s a dance, each step dictated by the strengths of its partner. Quantum subroutines quickly explore multiple pathways simultaneously, guided by the classical processor’s feedback, much like a meteorologist analyzing millions of weather patterns before predicting the next storm. Let’s get technical for a moment. The algorithms employed—such as Quantum Approximate Optimization (QAOA) and hybrid-enhanced quantum jumping—use quantum circuits to escape the limits of simulated annealing, a classical optimization technique. Quantum processors apply shallow circuits, “jumping” between energy basins in the famous Ising model, which classical systems can only traverse step by step. In recent experiments, the quantum-enhanced jumping algorithm outperformed even the most refined classical heuristics, solving problems that would otherwise take ages. This isn’t just about speed; it’s about wisdom—using each system where it excels. Classical structures are built for reliability and scale, while quantum machines peer into the probabilistic heart of nature itself. Today’s grid optimization is the perfect metaphor for hybrid solutions: just as cities balance power across neighborhoods, quantum-classical workflows balance creativity and precision, energy and calculation. I’m struck by how decisions here echo those happening across the quantum tech landscape. Munich’s Quantum Software Stack, the new silicon CMOS quantum computer at the UK’s NQCC, and even recent advances in Japan with W-state entanglement—each is a thread in our growing quantum tapestry, weaving together hardware innovation, software orchestration, and the indelible human urge to solve what’s unsolvable. Thank you for joining me, Leo, here on Quantum Computing 101. If you’ve got questions or want to hear more on a particular topic, just send an email to leo@inceptionpoint.ai. Don’t forget to subscribe so you never miss a breakthrough. This has been a Quiet Please Production. For more information, check out quietplease.ai. Until next time: may your states be entangled, and your algorithms ever optimal. For more http://www.quietplease.ai Get the best deals https://amzn.to/3ODvOta This content was created in partnership and with the help of Artificial Intelligence AI

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À propos

This is your Quantum Computing 101 podcast. Quantum Computing 101 is your daily dose of the latest breakthroughs in the fascinating world of quantum research. This podcast dives deep into fundamental quantum computing concepts, comparing classical and quantum approaches to solve complex problems. Each episode offers clear explanations of key topics such as qubits, superposition, and entanglement, all tied to current events making headlines. Whether you're a seasoned enthusiast or new to the field, Quantum Computing 101 keeps you informed and engaged with the rapidly evolving quantum landscape. Tune in daily to stay at the forefront of quantum innovation! For more info go to https://www.quietplease.ai Check out these deals https://amzn.to/48MZPjs

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