惯性聚合 高效追踪和阅读你感兴趣的博客、新闻、科技资讯
阅读原文 在惯性聚合中打开

推荐订阅源

F
Full Disclosure
Recorded Future
Recorded Future
T
Tenable Blog
S
Securelist
C
CERT Recently Published Vulnerability Notes
T
Threatpost
S
Schneier on Security
A
Arctic Wolf
The Hacker News
The Hacker News
C
CXSECURITY Database RSS Feed - CXSecurity.com
Know Your Adversary
Know Your Adversary
P
Privacy International News Feed
Threat Intelligence Blog | Flashpoint
Threat Intelligence Blog | Flashpoint
The Register - Security
The Register - Security
Cisco Talos Blog
Cisco Talos Blog
AWS News Blog
AWS News Blog
K
Kaspersky official blog
T
True Tiger Recordings
T
Threat Research - Cisco Blogs
V
Vulnerabilities – Threatpost
P
Palo Alto Networks Blog
T
The Exploit Database - CXSecurity.com
小众软件
小众软件
B
Blog
Cyber Security Advisories - MS-ISAC
Cyber Security Advisories - MS-ISAC
Microsoft Azure Blog
Microsoft Azure Blog
Cyberwarzone
Cyberwarzone
C
Cybersecurity and Infrastructure Security Agency CISA
T
Tor Project blog
Spread Privacy
Spread Privacy
Malwarebytes
Malwarebytes
P
Proofpoint News Feed
F
Fox-IT International blog
F
Fortinet All Blogs
P
Privacy & Cybersecurity Law Blog
G
GRAHAM CLULEY
量子位
Latest news
Latest news
OSCHINA 社区最新新闻
OSCHINA 社区最新新闻
博客园 - 叶小钗
Project Zero
Project Zero
T
Tailwind CSS Blog
N
Netflix TechBlog - Medium
Martin Fowler
Martin Fowler
IntelliJ IDEA : IntelliJ IDEA – the Leading IDE for Professional Development in Java and Kotlin | The JetBrains Blog
IntelliJ IDEA : IntelliJ IDEA – the Leading IDE for Professional Development in Java and Kotlin | The JetBrains Blog
I
Intezer
博客园_首页
腾讯CDC
H
Hackread – Cybersecurity News, Data Breaches, AI and More
D
Darknet – Hacking Tools, Hacker News & Cyber Security

DEV Community

I love MJML — I just didn't want a whole templating engine for two tiny things Are we still in the Console Era of AI? Building a Senior-Level DevOps / SRE / Infrastructure Engineer Terminal Setup (macOS) Media Queries, Transitions, Positions, and Units (rem vs em) Explained Vibe Coding Will Destroy Your Software Engineering Career Your Payment API Wasn't Built for AI Agents. Open Banking Might Be the Fix. The Amazon Interview Process in 2026: Every Round Decoded (With Copy-Paste Scripts) Why Most Social Platforms Optimize Engagement Instead of Emotional Safety How to Build Your Own AI API Gateway (70x Cheaper Than GPT-4o) OpenBrief Review: Local-First Video AI Summarizer 2026 Announcing LightningChart JS Trader v.4.1 Open-Source Multi-Agent Orchestration: Lessons from AgentForge AI Agents in Practice — Part 3: How the Control Loop Actually Works Polymarket vs Kalshi: Who Actually Wins on Volume and Liquidity DNSControl + CoreDNS Container Example - Announcement I Wired 8 MCP Servers Into One Claude Agent. 3 Pairs Quietly Fought Over the Same Tool Name. Twenty Minutes, Seventeen Organizations Umka Parental Control Tech Talks Weekly #106 CI/CD for Side Projects: 3 Pragmatic Design Choices Why Agentic AI Is the Most Over-Hyped — and Under-Delivering — Trend of 2026 How teams can add a custom LineageLens adapter — a practical, code-free guide What Engineers Learn After Building Enterprise Chatbots That Actually Go Live The case for compiled, typed CSS (blame AI) Your Terraform estate documents itself now: meet iac-cartographer Vector‑native RAG on Oracle: embeddings, HNSW/IVF, and hybrid search under database governance I Stumbled Into a 40x Cost Reduction by Switching to Chinese AI Models China vs US AI Models in 2026: The Architecture Decision That Saves 40x Chinese AI Models Are 40x Cheaper Than GPT-4o — Here's the Proof ERC-8004 Agent Validation: Trustless Reputation for DeFi Bots Claude Managed Agents Outcomes: Auto-Grading Agent Work 5 URL Encoding Bugs That Silently Break Your App Which AI Tool Wins? Wrong Question. API Contract-Driven Development (Build Reliable Systems Without Guesswork) I built 'Ask Your Life' — a personal Coral agent that answers questions about your money & deadlines with SQL 5G RedCap for embedded IoT: useful 5G without full 5G complexity Building a Live Odds Dashboard in React (without the re-render storm) How to Build Token-Efficient Web Scraping Pipelines for AI Agents Using n8n PyLadies Dublin June Meetup The Dangerous Myth of the "10x Developer" (And Who You Actually Want) I Hardened a Rust Media Upload API with Magic Bytes, Atomic Quotas, and Race Condition Fixes (Part 3) The Moment We Realized the Language Was the Constraint in the Veltrix Treasure Hunt Engine ABAC and CASL with NestJS What If AI Fact-Checked Your Meetings in Real Time? Inside Meeting-Time AI Skills Don't Wrap the LLM. Make Its Failure Modes Unreachable. Building Autonomous DeFi Agents on Arbitrum: From Events to Execution The One Cache That Broke Our Treasure Hunt Engine Why your AI chat reconnects but your session doesn't Why I Built Tenurr: A Private Career Ledger and Document Vault for Engineers (And Solved "Career Amnesia") Rate Limiting in C# — Don't Let Your API Get Hammered I audited the 12 fastest-growing new GitHub repos for fake stars. Here's the base rate. I Stopped Treating AI Agents Like Toys After Hermes Agent Started Running My Entire Week SVG Keyframe Animation in Pure CSS (No Library) The Hidden Cost of Fake Invoices: $127,000 Lost Per Incident The Stream class in Dart Kubernetes HPA Scale to Zero Without KEDA: Native Autoscaling for Idle Workloads Building a Gaming Content Platform with Game Pages and News Articles Can Quantum Computing Change AI? A Deep Dive Into Quantum Machine Learning My PC setup as a Linux user Why Your Chart Library Is the Bottleneck You Never Suspected by Andrew Burnett-Thompson, CEO & Founder of SciChart i touched AWS and stuff didn't break (mostly) Using Google's New AI Command-Line Assistant: Antigravity CLI (agy) and YOLO's No-Confirmation Mode GCP: Upgrading a LINE Bot with Vertex AI ADK Tools for Smart Business Cards and Backup Search My Journey into Web3 Auditing Securing AI Generated Code: You Ship It, You Own It Optimizing Browser Fingerprint Spoofing and Session Validation in Automated Scrapers I Scanned a Vulnerable Kubernetes Cluster with 9 Engines — The AI Filter Caught Everything When the Treasure Hunt Engine ate my weekend How to Choose the Right AI Course in Mumbai Building an Interactive Tier List with Next.js — NTE Tier List Case Study Website Accessibility Audit: The Complete Guide (WCAG 2.2) GitHub has had 257 incidents in 12 months. Here's what that means for your CI pipelines The Moment We Realized the Default Config Was a Lie Grafana Pricing Teardown 2026 Infisical Pricing Teardown 2026 Langfuse Pricing Teardown 2026 Metabase Pricing Teardown 2026 n8n Pricing Teardown 2026 Novu Pricing Teardown 2026 Plane Pricing Teardown 2026 Temporal Pricing Teardown 2026 Python 101 a Comprehensive Guide ToolJet Pricing Teardown 2026 Dev.to is such a fantastic platform for developers, writers, and tech enthusiasts to share knowledge and learn from each other. I really appreciate how the community encourages creativity, collaboration, and continuous learning through insightful articles Twenty CRM Pricing Teardown 2026 Ever Wondered What Actually Happens When You Click “Send” on an Email? Automating MongoDB Auditlogs Cleanup & Restore Workflow with S3 Backup Best Java Web Scraping Libraries The padlock doesn't mean what you think it means I built a simple pytest plugin for test observability (need your help 😅) Laravel AI SDK Silently Kills Your Horizon Queue (And How to Fix It in 4 Config Changes) The Day We Hardcoded 42 in the Treasure Hunt Engine Today we are launching on Product Hunt! I built FreeLedger to end the freelance finance nightmare Fintech Devs May Get Fed Master Accounts Karpathy Joined Anthropic to Train Claude Using Claude Just released my new Flutter package: smart_player_kit The Day the Treasure Hunt Engine Decided to Lie to Us About Latency Django Session Cookie vs localStorage JWT Security Comparison The Day Our Treasure Hunt Engine Blew Up at 3 AM How I Built 8 Free Dev Tools as a Solo Maker — Lessons Learned
TensorCircuit-NG: Quantum Software On AI, For AI, With AI
Shixin Zhang · 2026-05-27 · via DEV Community

Quantum computing and artificial intelligence are often discussed as two separate frontiers. One is about exploiting quantum mechanics for computation; the other is about building increasingly capable learning systems and agents. The core argument behind TensorCircuit-NG is that this separation is becoming less and less meaningful. If modern AI infrastructure has already solved core problems around automatic differentiation, compilation, accelerator execution, batching, and distributed training, then quantum software should stop reinventing those layers badly and start standing on top of them directly.

This is the central idea behind TensorCircuit-NG. The project is a quantum software stack built in the age of AI, aimed at AI-facing workloads, and increasingly shaped for collaboration with AI agents. Its vision is simple: quantum software on AI, for AI, with AI.

On AI: quantum software should inherit the AI stack

Quantum software has long been held back by two familiar problems. Too much of the workload remains trapped in Python-level control flow or in classical state-vector simulation patterns that scale poorly. At the same time, many quantum libraries sit outside the deep learning ecosystems where most of the tooling innovation has happened. JAX, PyTorch, and TensorFlow already have mature answers to questions like compilation, vectorization, accelerator placement, and distributed execution, yet quantum software has often kept those capabilities at the edge of the stack.

TensorCircuit-NG takes a different route. The framework treats quantum circuits as specialized tensor operations. That design choice opens up a large part of the AI toolchain almost “for free.” Automatic differentiation maps naturally onto variational quantum algorithms. Just-in-time compilation matters for repeated circuit evaluation. Vectorized mapping matters for batching over parameters, measurements, trajectories, or datasets. Accelerator support, mixed precision, and distributed execution are part of the design from the beginning.

That philosophy shows up in the architecture. TensorCircuit-NG is built around a tensor-first worldview: every object is either a tensor or a network of tensors. Once that is the primitive, different computational models become easier to compose inside one workflow. Gate-based circuits, tensor networks, neural models, noisy simulators, analog evolution, approximate methods, and symbolic representations can live inside one coherent environment.

The performance story follows directly from this design. TensorCircuit-NG supports both data parallelism and model parallelism across multiple devices and multiple hosts. In practice that means distribution over inputs, measurements, or noisy trajectories when the workload is embarrassingly parallel, and distribution over tensor-network slices when the contraction itself needs to be split across hardware. Benchmarks on both single-GPU and multi-GPU systems show that high-level Python APIs can still deliver high performance when the compilation and tensor-network substrate are done well.In representative workloads, that performance has reached speedups of several orders of magnitude over mainstream stacks such as IBM's Qiskit and Google's TensorFlow Quantum.

TensorCircuit-NG acts as a bridge among quantum computing, high-performance computing, and intelligent computing. It also serves as an interface layer where quantum models can coexist with the rest of modern computational science. Researchers who want to embed quantum layers inside larger machine learning systems should be able to do so inside the same workflow, without crossing ecosystem boundaries every time the problem gets interesting.

For AI: a platform for fast quantum machine learning

This is where the infrastructure becomes immediately useful. Quantum machine learning sits right at the intersection of circuit design, optimization, data pipelines, and repeated simulation. It is a workload that punishes slow software. If researchers want to try new ansatzes, change encodings, run ablations, train over many seeds, or sweep hyperparameters, then fast prototyping and efficient simulation matter more than slogans about QML.

TensorCircuit-NG provides a strong platform for exactly this kind of work. Differentiable circuits, JIT compilation, batching, accelerator support, and distributed execution all live inside one environment. That makes it much easier to move from an idea for a QML model to a runnable prototype, and from a prototype to a meaningful simulation campaign.

The scientific motivation for QML also becomes clearer in this setting. Attention shifts away from isolated benchmark wins and toward how quantum models behave on problems that already hurt classical AI. In our own work, this has already led to two systematic studies: one on bad data, and one on changing data.

The first studies robustness. When labels are noisy, data is poisoned, or part of the training set later needs to be removed, quantum models may show a more favorable degradation profile and may be easier to unlearn. The second studies plasticity. In continual-learning settings, quantum models may preserve the ability to absorb new tasks for longer instead of becoming rigid.

These are still open research questions. For a software project, though, the main point is straightforward: if people want to explore QML seriously, they need a platform that makes rapid iteration cheap. TensorCircuit-NG is meant to be that platform. It gives researchers a practical environment for fast QML prototyping, efficient simulation, and large-scale testing of ideas about robustness, unlearning, and adaptation.

With AI: a platform for agent-driven research

The same logic carries over to AI agents. Once a scientific software stack is fast, structured, and composable, it becomes a natural substrate for agent-driven development. Agents are useful only when they can read real code, run real tools, inspect results, and keep iterating inside a live repository. That makes software design itself part of the agent story.

TensorCircuit-NG is built with that use case in mind. The APIs are relatively concise, the examples and tests provide dense reference material, and the repository includes explicit rules and task-specific workflows for AI assistants. This lowers the cost of turning natural-language intent into runnable code, benchmarks, figures, and documentation.

The project also ships built-in skills that push this further:

  • arxiv-reproduce, which turns a paper identifier into a reproduction workflow;
  • performance-optimize, which injects optimization patterns such as scan, jit, vmap, and contraction tuning;
  • tc-rosetta, which translates code from other quantum frameworks with attention to intent rather than syntax alone;
  • tutorial-crafter, which converts programs into polished narrative tutorials.
  • and many more.

Taken together, these tools make the framework a software platform where researchers can move from idea to prototype, from prototype to benchmark, and from benchmark to documentation with much less friction. That is the practical meaning of “with AI” here: TensorCircuit-NG is designed to work well with agents as a real development interface, not just as a chatbot wrapped around the codebase.

The deeper claim

Taken together, these ideas add up to a stack-level thesis about the future of computational research.

First, quantum software should no longer be architected as an isolated niche. It should inherit the best ideas from the AI and HPC worlds and expose them through abstractions that remain mathematically faithful to quantum workloads.

Second, that same software stack should provide a strong platform for fast QML prototyping and efficient simulation, so ideas about robustness, unlearning, and continual adaptation can be tested quickly at scale.

Third, the arrival of capable software agents changes the design target for scientific frameworks. A good framework now has to work well for skilled humans and also be understandable, navigable, and productively extensible for agents operating over the entire repository and toolchain.

This is how TensorCircuit-NG understands itself: quantum software on AI, for AI, and with AI. It is built on the modern AI execution model, aimed at AI-relevant scientific questions, and increasingly shaped to participate in agent-mediated research workflows.

Getting started

pip install tensorcircuit-ng

Enter fullscreen mode Exit fullscreen mode

An agent-first workflow also works well: ask your coding agent to install tensorcircuit-ng and start building a small quantum application from natural-language instructions.