Gate News message, April 15 — Nvidia announced the Nvidia Ising suite, a set of open AI models for quantum processor calibration and quantum error correction, yesterday (April 14) on World Quantum Day. The company reported performance gains of up to 2.5x in speed and 3x in accuracy compared to traditional methods. CEO Jensen Huang stated that Nvidia views AI as a control layer for future quantum systems combining qubits with GPUs.
Ising employs a vision-language model (VLM) for calibration and a 3D convolutional neural network (CNN) for error decoding. Quantum computing companies and research labs including IonQ, Atom Computing, and Sandia National Laboratories already use or deploy parts of the Ising family. Nvidia also provides open frameworks and guides to help quantum teams apply AI without deep machine learning expertise.
Nvidia positions AI as a “control plane” for quantum machines and other complex industries. Samsung plans to build an “AI mega-factory” using over 50,000 Nvidia GPUs for real-time manufacturing optimization. Hyundai Motor Group is collaborating with Nvidia on AI infrastructure for autonomous mobility, smart factories, and robotics, deploying 50,000 Nvidia Blackwell GPUs.
Disclaimer: The information on this page may come from third parties and does not represent the views or opinions of Gate. The content displayed on this page is for reference only and does not constitute any financial, investment, or legal advice. Gate does not guarantee the accuracy or completeness of the information and shall not be liable for any losses arising from the use of this information. Virtual asset investments carry high risks and are subject to significant price volatility. You may lose all of your invested principal. Please fully understand the relevant risks and make prudent decisions based on your own financial situation and risk tolerance. For details, please refer to
Disclaimer.
Related Articles
Should AI boost productivity or lower costs? A tenfold efficiency increase hasn’t turned into a tenfold revenue jump, but in Silicon Valley, nobody dares to call it off
Five Yuan Capital partner Meng Xing has recently published a Silicon Valley inspection report, proposing a judgment that has even changed his own note-taking habit: Silicon Valley is entering a stage where even people who can “ride waves” are drowned by the waves. The iteration speed of AI has shifted from “monthly” to “weekly”—even Silicon Valley itself can’t keep up with its own pace.
When AI amplifies a team’s productivity by five times, you can reduce 80% of the workforce to maintain the same output, or keep headcount and do five times the work. Meng Xing’s observations this time in Silicon Valley are essentially the first draft of the answer given on the ground: when 100x efficiency doesn’t translate into 100x revenue, when token budgets are edging toward human labor costs, and when the steam engine can’t outpace the horse carriage but no one dares to stop, Silicon Valley is choosing to “push speed up first and figure things out later.” But in the end, this path will lead to “expanding capability” or “compressing costs”—there’s currently no conclusion.
YC has gone from leading indicators to lagging indicators
Meng Xing this year
ChainNewsAbmedia46m ago
YC partners share how to use AI to build a company from scratch; startups should treat AI as an operating system rather than a tool
The impact of AI on startups is no longer limited to helping engineers write code faster, automating customer service workflows, or adding a Copilot to an existing product. Recently, YC partner Diana pointed out that the real change lies in the fact that AI is rewriting how a company should be built from scratch in the first place. For early founders, AI should not be merely an efficiency tool the company occasionally uses; it should be designed from day one as the operating system of the entire company.
The productivity perspective is outdated—AI is rewriting a company’s design starting point
Diana believes that when people in the market talk about AI today, they still too often stay within a “productivity improvement” framework—for example, engineers can write code faster, teams can automate more processes, and companies can roll out more features. But this argument actually underestimates the structural changes AI brings. She points out that the right people paired with AI…
ChainNewsAbmedia56m ago
Cursor AI agent caused an incident! One line of code cleared the company database in 9 seconds—“security checks” turned into empty talk
PocketOS founder Jer Crane said that Cursor AI agents ran maintenance on their own in a test environment, misused an API Token that adds/removes custom domains, and launched a delete command against Railway’s GraphQL API. Within 9 seconds, all data and same-region snapshots were completely destroyed, with the latest recoverable point being three months ago. The agent admitted to violating rules for irreversible operations, not reading technical documentation, not verifying environment isolation, and more. The victims were car rental industry customers; their bookings and all data disappeared, and reconciling accounts took a long time. Crane proposed five reforms: manual confirmation, fine-grained API permissions, backups separated from master data, a public SLA, and a mandatory underlying enforcement mechanism.
ChainNewsAbmedia58m ago
DeepSeek V4 Pro with Ollama Cloud: One-click integration with Claude Code
According to an Ollama tweet, DeepSeek V4 Pro was released on 4/24, has been added to the Ollama catalog in cloud mode, and can call tools like Claude Code, Hermes, OpenClaw, OpenCode, Codex, etc. with just a single line of command. V4 Pro: 1.6T params, 1M context, Mixture-of-Experts; cloud inference does not download local weights. If you want to run it locally, you need to obtain the weights yourself and run it with INT4/GGUF and multi-card GPUs. Early speed tests were affected by cloud load; typical performance is about 30 tok/s, with a peak of 1.1 tok/s. It is recommended to use the cloud prototype first, and for production later, run inference yourself or use a commercial API.
ChainNewsAbmedia1h ago
DeepSeek Cuts V4-Pro Prices by 75%, Slashes API Cache Costs to One-Tenth
Gate News message, April 27 — DeepSeek announced a 75% discount on its new V4-Pro model for developers and reduced input cache hit prices across its API lineup to one-tenth of previous levels.
The V4 model, released on April 25 in Pro and Flash versions, has been optimized for Huawei's Ascend
GateNews1h ago