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. 1D AGO

    Quantum-Classical Fusion: Hybrid Architectures Accelerate Breakthroughs | Quantum Computing 101

    This is your Quantum Computing 101 podcast. The news electrified my office this morning—the hum of quantum processors was practically drowned out by headlines of the latest hybrid solution poised to bridge quantum and classical computing once more. I’m Leo, Learning Enhanced Operator, and you’re listening to Quantum Computing 101. Let’s cut right into what’s making my qubits tingle with excitement: the new hybrid architectures that go beyond theoretical promise, shaping real technological inflection points. This week, Diraq and Quantum Machines pulled off what many called impossible just months ago: a genuinely integrated quantum-classical architecture, centered on the NVIDIA DGX Quantum platform. Picture this—blindingly fast CPUs and GPUs, cradled with a quantum processing unit, linked over an ultra-low-latency interconnect that shaves response times to under 4 microseconds. It’s like having a conversation with the quantum world in real time, each decision echoing back before decoherence has a chance to intervene. As a quantum specialist, I see it as choreographing a ballet where classical and quantum dancers switch seamlessly mid-performance. In these new experiments, classical reinforcement learning re-tunes quantum experiments as they happen. The result? Keeping fragile quantum states, like three-qubit GHZ states, perfectly orchestrated—using machine learning models that auto-correct drift, noise, and error in the same breath as the quantum calculation. This isn’t merely theoretical optimization. Early reports show hybrid workflows accelerating calibration, feedback, even quantum error mitigation, all within the fleeting windows where qubits remain coherent. It’s dramatic, it’s immediate, and it’s the future—right now. There’s more: just published is a framework called hybrid sequential quantum computing. Think of it as a relay race for algorithms. Classical optimizers sprint the first lap, rapidly sifting through a mountainous problem space. As they tire, quantum processors leap in, tunneling through the most stubborn local minima—just as John Clarke, Michel Devoret, and John Martinis, this year’s Nobel Prize laureates, once envisioned in their pioneering work on quantum tunneling. When quantum hardware can’t quite cross the finish line—thanks to decoherence or hardware noise—a third lap of classical refinement closes the gap, guaranteeing the best performance in speed and solution quality. On advanced superconducting processors, this yields runtime improvements up to two orders of magnitude over classical solvers in complex optimization tasks. The world outside may credit the International Year of Quantum Science for today’s fever pitch of innovation, but here in the lab, I see it as a manifestation of quantum-classical complementarity. Hybrids fuse the raw pattern-finding power of classical AI with quantum’s uncanny ability to breach what once seemed computationally insurmountable. If you have burning questions or topics you’d love featured, email me at leo@inceptionpoint.ai. Make sure to subscribe to Quantum Computing 101, and remember, this has been a Quiet Please Production. For more, 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

    3 min
  2. 2D AGO

    Quantum-Classical Duet: Hybrid Algorithms Leap Ahead in Complex Problem Solving

    This is your Quantum Computing 101 podcast. There’s a scene unfolding right now in the world of quantum computing that reminds me of a high-stakes chess match at a grandmaster tournament. Except here, the pieces are algorithms, the board spans two realities—classical and quantum—and every move is a bid for computational supremacy. I’m Leo, Learning Enhanced Operator, your resident quantum expert. Earlier this week, a team at Tohoku University made headlines for achieving a breakthrough in what many consider one of the most intractable puzzles in computer science—solving massive mixed-integer quadratic programming problems. Picture optimizing a portfolio with thousands of constraints or managing dynamic power grids; these are tasks so complex that even the most advanced classical computers grind to a crawl. But with their new hybrid quantum-classical solver, they didn’t just inch forward—they leapt. Here’s the dramatic twist: The team embedded the D-Wave Constrained Quadratic Model solver, a quantum powerhouse, directly into an extended Benders decomposition framework—a classical workhorse known for its stubborn bottlenecks. The quantum edge comes in handling computations that spiral in complexity, making decisions at speed and precision that evoke the sensation of navigating a superposition of possible futures. Integrated this way, the hybrid solver sidesteps classical slowdowns and, for select real-world problem sets, achieves exponential speedups that left traditional algorithms in the dust. Walking through the quantum computer lab, you feel the chill of the dilution refrigerator and hear the subtle hum of control electronics, a reminder that these machines operate at physics’ frontier. Quantum bits—qubits—dance delicately between states, like tightrope walkers spanning probability. Each quantum computation is a kind of performance art—balancing coherence, gate fidelity, and the omnipresent threat of environmental noise. As a specialist, what impresses me isn’t just the quantum bravado, but how these hybrids deploy both quantum and classical strengths, choreographing their assets like partners in a duet. Classical algorithms dissect the immense structure of the problem, preparing pathways for the quantum solver to shine where it’s strongest. It’s a profound metaphor for this year’s events across science and society: distinct systems collaborating, leveraging each other's best traits to create outcomes neither could achieve alone. Meanwhile, at Oak Ridge National Lab, Quantum Brilliance’s new Quoll system—just tapped by TIME as one of the year’s top inventions—brings quantum-classical hybrid clusters to industry, proof that these advances aren’t just theoretical bravado but real-world innovation with staying power. Today’s quantum-classical symbiosis is ushering in a new era—not replacing what came before, but transcending boundaries. If you’d like to dive deeper or have a quantum question that keeps you up at night, send me an email at leo@inceptionpoint.ai. Don’t forget to subscribe to Quantum Computing 101. This is Leo, signing off on behalf of Quiet Please Productions. For more information, visit quietplease.ai. Stay entangled, and see you on the next episode. 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. 4D AGO

    Quantum Leaps: Hybrid Computing Shatters Speed Limits at Oak Ridge

    This is your Quantum Computing 101 podcast. Smoke still lingers in the chilled, helium-cooled corridors of Oak Ridge National Lab as I walk past rows of cryostats, their blue LEDs blinking in a quasi-random quantum pulse. Just last week, Quantum Brilliance’s Quoll—the world’s first commercially viable hybrid quantum-classical cluster—went live right here, earning a place on TIME’s list of the best inventions of 2025. Today, I want to take you right into the heart of this new frontier: where quantum and classical computing converge to create something neither can achieve alone. Picture it—October 2025, and I’m at the rack, ears full of superconducting hum, eyes on the readout. The Quoll doesn’t look like science fiction. It’s a sleek module nestled beside powerful classical servers. Yet within, pure quantum magic unfolds. Hybrid solutions like the one at Oak Ridge blend the raw parallelism and tunneling power of quantum computers with the stamina, memory, and error resilience of classical machines. You don’t just get the best of both worlds—you get a fundamentally new paradigm, something greater than the sum of its parts. This isn’t theory—it’s cutting-edge application. Take “hybrid sequential quantum computing,” a breakthrough demonstrated earlier this week by researchers Chandarana, Romero, and team. Their approach uses classical simulated annealing to quickly sweep through the enormous solution space of, say, a logistics or portfolio optimization problem. But when that brute-force classical method tires and stalls out in a local minimum—a kind of digital dead end—that’s when they hand the baton to quantum optimization. The quantum processor, with its uncanny ability to tunnel through energy barriers, leaps past classical limitations, exploring new, promising states the classical computer can never hope to reach. Finally, another classical pass polishes off the result, circling closer and closer to the true optimum. The results? This hybrid architecture, when deployed on a 156-qubit superconducting chip, “found” ground state solutions up to 700 times faster than traditional algorithms—often in just a few seconds. This is not academic promise. It’s real, measurable speedup, moving us from theoretical quantum advantage to practical, commercial-grade performance. The recent Nobel Prize in Physics awarded to Clarke, Devoret, and Martinis for demonstrating macroscopic quantum tunneling is a poetic coda to this era. Their work in the 1980s brought quantum strangehood—tunneling, superposition, entanglement—from the invisible world of atoms to the tangible circuitry beneath my fingertips. It’s fitting, isn’t it, that now, in 2025, hybrid machines like Quoll are weaving these quantum effects into every byte, bringing quantum intelligence to big data, logistics, and secure communication in ways even Nobel laureates could scarcely imagine. Thanks for joining me, Leo, here on Quantum Computing 101. If you have questions or want a topic featured, email me—leo@inceptionpoint.ai. Subscribe for more, and remember, this is a Quiet Please Production. For more, visit quietplease.AI. Stay curious—because quantum never sleeps. 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
  4. 4D AGO

    Quantum Leaps: HSQC Marries Classical & Quantum for Unrivaled Optimization

    This is your Quantum Computing 101 podcast. Today the quantum world feels closer than ever, especially with yesterday’s headlines. The Nobel Prize in Physics just honored Michel Devoret, John Clarke, and John Martinis—the architects who proved quantum tunneling works not only in theoretical sandboxes, but on real chips, with groups of electrons punching through barriers almost magically, giving rise to the superconducting qubits on which much of our field relies. That’s not ancient history; it set the stage for everything happening now, from mobile phones to quantum computers humming in national labs. I’m Leo, your guide to Quantum Computing 101, and I have a passion for where classical and quantum lines blur into something new. If you caught TIME’s announcement two days ago, you saw Quantum Brilliance’s ‘Quoll’ named one of 2025’s Best Inventions for bringing quantum power—inside a small, portable module—into the everyday working world. Even more intriguing, Oak Ridge National Lab just unveiled their first onsite quantum-classical cluster. This isn’t sci-fi; scientists there now run combinatorial optimization tasks at speeds impossible with classical chips alone. But today’s true marvel is hybrid sequential quantum computing. Recently, Pranav Chandarana and colleagues published the first demonstration of a paradigm called HSQC—Hybrid Sequential Quantum Computing—tailored for combinatorial optimization. Picture this: first, a classical optimizer like simulated annealing rapidly scouts the problem landscape, identifying promising solution valleys. But classical methods easily get trapped in local minima, stuck like a hiker lost in fog. Quantum algorithms—specifically, bias-field digitized counterdiabatic quantum optimization—then step in, using quantum tunneling to pierce right through those energy barriers, revealing unexplored terrain where better answers lie. Finally, a third classical method polishes these quantum-enhanced candidates, diving toward the ground state with relentless precision. I recently visited a superconducting quantum processor lab—imagine a room colder than deep space, filled with racks of tangled wires and glinting sapphire chips. The 156-qubit heavy-hex device buzzes quietly, each qubit a tiny world of probability, responding to pulses that coax them to shift and flip, sometimes tunneling through barriers in ways that would stun a classical engineer. When HSQC took on higher-order binary optimization in those conditions, it reached ground-state solutions hundreds of times faster than standalone classical algorithms. It’s like pairing a chess grandmaster with a prodigy who can see alternate dimensions of the game. We’re seeing a future where hybrid quantum-classical clusters—and initiatives like the Quantum Brilliance Quoll—make these capabilities available in hospitals, stock exchanges, factories, even local governments chasing smarter resource allocation. Superconducting chips, photonic networks, trapped-ion clusters—each brings its own signature to the chorus. The classical and quantum realms intertwine, forming co-processors that will someday seem as ordinary as our GPUs. Thanks for listening to Quantum Computing 101. If you have questions or want a topic covered on air, email me at leo@inceptionpoint.ai. Subscribe wherever you get your podcasts, and remember, this has been a Quiet Please Production. For more, visit quiet please dot AI. The wonders of quantum are just a click away. 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
  5. 6D AGO

    Quantum-Classical Hybrids: Powering Breakthroughs in Finance, Optimization, and Beyond

    This is your Quantum Computing 101 podcast. Picture this: Less than a week ago, in a sleek, climate-controlled lab alive with the hum of helium compressors and flickering LEDs, researchers at IBM and Vanguard unveiled a quantum-classical hybrid workflow for financial portfolio construction. They deployed 109 cutting-edge qubits from IBM’s Heron processors, proving yet again that—not in some distant future, but right now—hybrid computing is where the most electrifying breakthroughs are materializing in quantum. I’m Leo, your Learning Enhanced Operator, and today on Quantum Computing 101, we’re plunging into the thrilling crossroads of quantum and classical computation. Hybrid solutions aren’t just a stop-gap—they’re the jet engines powering quantum’s climb from research curiosity into practical tool. In fact, the buzz at last week’s Qubits 2025 conference and the upcoming Adaptive Quantum Circuits event is all about quantum-classical hybrids as the backbone of today’s most powerful algorithms. Let me paint you into the scene: Imagine a financial portfolio as an enormous, tangled forest. Classical computers tromp through the underbrush—fast, methodical, but limited by every rock and thicket. Quantum computers? They quantum-tunnel—leaping straight through those dense patches to reveal shortcuts invisible to classical explorers. But, sometimes, they zoom past the prize. That’s where the hybrid approach shines. Take IBM and Vanguard’s workflow. First, classical algorithms map the broad landscape—surveying risk, correlations, constraints. Then, the quantum hardware orchestrates superpositions, exploring a web of potential portfolio choices far beyond classical reach. Afterwards, the classical side swoops in once more, gathering quantum output to fine-tune selections and enforce regulatory or practical constraints. This dance fuses quantum’s fearless leaps with classical rigor, producing stronger, more resilient solutions than either alone. This mirrors a pattern dominating October’s headlines: Elsewhere, researchers introduced Hybrid Sequential Quantum Computing—HSQC—successfully solving higher-order optimization problems with commercial quantum processors at speeds 700 times faster than traditional simulated annealing. Meanwhile, Quantum Machines is convening the world’s leading minds at the upcoming Adaptive Quantum Circuits conference. Their mission? To develop dynamic quantum-classical programs that adapt on-the-fly, using real-time measurement and classical feedback—a bit like programming your GPS to reroute instantly if quantum traffic jams appear on the optimization highway. If you’ve ever watched AI models training on vast data lakes, this is the same concept on quantum-boosted steroids. Large-scale challenges—drug discovery, climate modeling, logistics—are now within striking distance, not by abandoning classical computation, but by synchronizing its precision with quantum’s radical parallelism. The vibe in the lab when a hybrid run completes is electric—a surge of possibility as two universes of computation work as one. We’re not waiting for future magic: the quantum-classical hybrid age is now. Thanks for tuning in to Quantum Computing 101. I’m Leo, your quantum guide. If you have questions or want a topic spotlighted, just drop me a line at leo@inceptionpoint.ai. Don’t forget to subscribe, and check out Quiet Please dot AI for more. This has been a Quiet Please Production—until next time, keep questioning reality. 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. OCT 6

    Quantum-Classical Hybrids: Wall Street's New Superpower | Quantum Computing 101 with Leo

    This is your Quantum Computing 101 podcast. I’m Leo, your Learning Enhanced Operator, and today I want you to imagine the bustling nerve center of a global financial institution—quants hunched over screens, the faint hum of servers, and, pulsing beneath it all, the signature cool of a quantum processor. Just last week, IBM and Vanguard announced their latest breakthrough: a quantum-classical hybrid solution for finance that's rippling through Wall Street and the tech world alike. Picture this: portfolio construction, a problem so complex that even the mightiest classical computers choke as asset lists scale to thousands. The classical approach—think Markowitz’s efficient frontier—was a revolution in the 1950s. But today's markets surge with unpredictability, nonlinear constraints, and uncertainties reminiscent of quantum superpositions. Enter the hybrid workflow. The IBM Quantum Heron r1 system, wielding up to 109 qubits, unleashed a Variational Quantum Algorithm to probe the solution space. Quantum-generated samples—like photons flickering across a darkened lab—were then meticulously refined using classical local search. This synergy produced a relative error below half a percent, notably outperforming pure classical solvers on large-scale bond ETF optimization. Paul Malloy, Vanguard’s head of municipals, called the achievement “beyond original expectations.” It's a watershed moment for asset management. But the excitement isn't confined to finance. As Quantum Machines’ upcoming AQC25 conference will showcase, adaptive quantum circuits—hybrid programs blending quantum logic with classical feedback—are redefining calibration, error correction, and adaptive algorithms. Institutions like MIT, Yale, and global tech leaders will gather this November in Boston, championing a new era where quantum and classical methods collaborate dynamically. The future looks less like a duel and more like a dance—each system compensating for the other’s blind spots. Metaphorically, think of this hybridization as today’s news cycle—a swirl of digital information requiring rapid filtering and pattern extraction. Classical computers are like seasoned reporters, fast and reliable, but sometimes missing the story’s deeper quantum complexity. Quantum algorithms, by contrast, plunge into the data’s entangled layers, surfacing hidden solutions. Only together do they reveal headlines worthy of tomorrow’s front page. Across Europe, Qilimanjaro Quantum Tech stands out as the sole hybrid full-stack vendor in the new IMPAQT consortium, merging analog quantum, digital quantum, and classical computing. Their SpeQtrum QaaS platform offers seamless cloud access to hybrid data centers. The goal: interoperability and standards, accelerating quantum’s move from research into daily enterprise. This hybrid paradigm isn’t a speculative bubble; Wall Street’s $3.77 billion equity funding so far in 2025 voices deep belief in quantum’s real-world applications, especially in AI and complex optimization. Giants like IBM, Google, Microsoft, and Nvidia aren’t chasing pipe dreams—they’re engineering tomorrow’s hybrid, error-corrected, scalable solutions. Whether you’re a physicist, investor, or simply quantum-curious, let today’s breakthroughs remind you: the boundary between quantum and classical is blurring, offering us tools that combine speed, intuition, and raw computational power. Thank you for joining me on Quantum Computing 101. If you have questions or topics for discussion, email me at leo@inceptionpoint.ai. Subscribe for more episodes, 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

    4 min
  7. OCT 5

    Hybrid Quantum-Classical Computing: Adaptive Circuits Fusing Uncertainty and Logic

    This is your Quantum Computing 101 podcast. It’s early October 2025, and I’m standing in the humming chill of a quantum lab, the kind of place where you can almost hear history turning its gears. I’m Leo—the Learning Enhanced Operator—and today on Quantum Computing 101, I want to catapult you straight into one of the most fascinating recent breakthroughs: hybrid quantum-classical solutions, the computing equivalent of combining a grandmaster’s intuition with a world-class chess engine. Just three days ago, in Boston, Quantum Machines announced the upcoming Adaptive Quantum Circuits 2025 conference. Researchers from MIT, Google, IBM, and global tech leaders will dive into hybrid quantum-classical programs—solutions that adapt on the fly, blurring the line between quantum uncertainty and classical logic. It’s the dawn of a new era: circuits that can react mid-calculation, change strategy, and fuse quantum weirdness with classical reliability in real-time. But what truly caught my attention this week came from the IBM-Vanguard team. They tackled one of finance’s thorniest puzzles: portfolio optimization. Imagine trying to select the perfect basket of investments—thousands of stocks and bonds—while balancing risk, regulatory constraints, and the wildcard variables that make Wall Street quake. Classical computers alone get bogged down, like marathoners running through molasses as complexity explodes. Enter the new hybrid paradigm. IBM and Vanguard implemented what’s called a sampling-based variational quantum algorithm. Picture a quantum system, delicate yet powerful, mapping out the swirling landscape of possible portfolio configurations while a classical computer refines these quantum-born ideas. It’s a dance: quantum circuits generate a superposition-rich swath of possible answers—more options than a human can fathom. Then, classical algorithms comb through these, selecting and perfecting the most promising candidates. Even with current hardware, noisy and finicky as it is, their 109-qubit experiment achieved optimizations on par with industry standards. The hybrid system outperformed a classical-only approach as the size of the problem ballooned. This synergy—quantum exploration, classical exploitation—could be the beginning of tools that help portfolio managers, supply chain analysts, and drug designers make decisions rapidly in landscapes where possibilities are tangled and vast. There’s a parallel here with global affairs: just as businesses and nations now have to combine classic strategies with rapid adaptation to emerging threats and opportunities, quantum-classical hybrids show us that breakthroughs come not just from raw power, but from intelligently blending strengths. And as Qilimanjaro, Europe’s hybrid full-stack company, joins the IMPAQT consortium, we see the future becoming more interconnected—modular systems merging analog quantum, digital quantum, and classical platforms to ensure not just power, but agility. That’s the front line of quantum computing today: a hybrid horizon. Thanks for joining me, Leo, on Quantum Computing 101. Got a burning question or a topic you want explored? Send me an email at leo@inceptionpoint.ai. Subscribe for more mind-bending updates, and remember—this has been a Quiet Please Production. For more info, 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
  8. OCT 3

    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
out of 5
4 Ratings

About

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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