Cristiano De Nobili

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Cristiano De Nobili

Cristiano De Nobili

@denocris

Theoretical Physicist entangling Physics, AI & Computing. Building my own company. Lecturer @mhpc_sissa_ictp, Quantum PhD @Sissaschool.

Milan Se unió Aralık 2012
707 Siguiendo897 Seguidores
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Cristiano De Nobili
Cristiano De Nobili@denocris·
When I was asked to teach a 16-hour course for a master in Quantum Machine Learning at @CaFoscari, I accepted without question. I thus chose my favourite topic: Entanglement Entropy. I gave a course starting from the role of entanglement in quantum protocols to multipartite entanglement in tensor-networks learning circuit. I will share my lecture soon, after fixing some typos. For the moment, I want to share some resources that inspired me: 🔹This beautiful Github repo by @MonitSharma1729 : github.com/MonitSharma/Le… 🔹This Lecture Notes on Quantum Computing by Ronald de Wolf, where every concept is extremely well explained: arxiv.org/pdf/1907.09415… 🔹This @PennyLaneAI notebook on Quantum Tensor-networks: pennylane.ai/qml/demos/tuto… #QuantumComputing #MachineLearning #DeepLearning #quantum
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Cristiano De Nobili
Cristiano De Nobili@denocris·
Moving from academia to industry? 👇 Join Phase Transition. Exciting new opportunities, all in EU🇪🇺: 🔹QMunicate, a quantum optics and photonics startup closely working with the Max Planck Institute, is hiring a Quantum Engineer in Munich. 🔹The Italian Institute of Artificial Intelligence for Industry is looking for a Senior AI Engineer in Turin to work on applied research and on-site deployment of AI.  ... Many other opportunities and Summer Schools in this latest post: open.substack.com/pub/joinphaset…
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Steven Strogatz
Steven Strogatz@stevenstrogatz·
I really enjoyed Apoorva's essay. It's rare these days to hear what a *student* thinks about what's going on in AI and Math, and I highly recommend you take a look at her piece – it's thoughtful, curious, idealistic, and unmistakably human.
Apoorva Panidapu@apoorvapanidapu

Earlier this month I volunteered at Stanford’s Future of Math symposium, and ever since, I've been puzzling through what it now means to pursue mathematics as a student in the age of AI. I wrote an essay to make sense of it all: apoorvapanidapu.substack.com/p/a-new-consci…

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Raz Akram
Raz Akram@raz_akram·
Physics: Quantum Physics (Particle Behaviour in Quantum World) Non-relativistic Schrödinger Equation: 1D Gaussian Wave Packet Analysing Gaussian wave packets with the Schrödinger equation reveals: • Schrödinger's Equation: Governs wave function evolution #x #twitter #physics
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Muratcan Koylan
Muratcan Koylan@koylanai·
Gradient descent for SKILL.md files sounds interesting, maybe a bit complex but it's becoming a real part of agent harness. SkillOpt is one of the first papers to treat markdown skill files as trainable parameters and provides a proper optimization framework for them. A few things I learned that you should consider too. 1. The validation gate is the only thing that matters in a self-editing loop. Held-out set, strict improvement, ties rejected. End-to-end, their best skills land with 1 to 4 accepted edits total. If your "self-improving agent" is accepting most of what it proposes, you're shipping slop. 2. Bounded edits are better than full rewrites. 4 to 8 edits per step is the sweet spot. Remove the budget and performance collapses. This is the textual analog of learning rate, and it transfers to any LLM-as-author loop. If you're using an agent to refactor your docs, your prompts, or your skills, cap the diff size. 3. Compactness wins. Median final skill: ~920 tokens. Skills do not need to be long. They need to be high-signal. Most skill files I see are bloated because length feels like effort. It isn't. 4. The harness is becoming less important; the skill is becoming more important. A Codex-trained skill ported into Claude Code hit +59.7 points on SpreadsheetBench. Procedural knowledge is more general than the runtime that produced it. 5. Frozen model + trained context is the practical adaptation. GPT-5.4-nano with a SkillOpt'd skill ≈ frontier behavior on procedural benchmarks. Cheaper, portable, inspectable, zero inference-time cost. This is the answer to "how do we adapt a frontier model for our domain" for almost everyone who isn't training their own models. 6. Verification is the bottleneck. Every gate in this paper depends on an auto-grader. That works for benchmarks. It fails for writing, design, and strategy, exactly the open-ended work we want to automate. Whoever builds the verifier for open-ended tasks owns the next stage. There are also two leassons I learned while shipping v2.3.0 of my Context Engineering Agent Skills repo, measured across composer-2, claude-opus-4-7, gpt-5.5, and gemini-3.1-pro via the @cursor_ai SDK: - Description and body are two different surfaces. The router only sees the description. The agent sees the body once activated. They can quietly disagree, and only end-to-end task tests catch it. - Aggregate accuracy is the wrong unit. When I rewrote three descriptions, the corpus average moved ~1pp. Individual skills moved 23–25pp. Per-skill effect size is where the action is. Also, in Feb 2026 I shared a piece called Personal Brain OS arguing that the markdown file is a first-class substrate for agent state. SkillOpt is the optimizer-shaped version of that same argument: not "store memory in files" but "treat files as trainable parameters with proper optimization machinery around them." That's the move from static to measured. The fast/slow split they describe already lives implicitly in the digital-brain-skill repo: - voice-guide and tone-of-voice.md are slow-state (rarely touched) - posts.jsonl and bookmarks.jsonl are fast-state What SkillOpt adds that I didn't have is a protected section invariant, a structural guarantee that fast edits cannot overwrite slow lessons. Removing that mechanism cost them 22 points on SpreadsheetBench. Worth borrowing. If you're building agents, SkillOpt: Executive Strategy for Self-Evolving Agent Skills is a good paper to read: arxiv.org/pdf/2605.23904
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Cristiano De Nobili
Cristiano De Nobili@denocris·
New exciting opportunity, all in EU🇪🇺! @cusp_ai, a frontier AI company reimagining materials discovery (for carbon capture, batteries, and water purification), is hiring an Applied ML Researcher. @ESA_Italia is hiring an Earth Observation Application Engineer at ESRIN to support the development of EO applications and services from Copernicus and other satellite missions. A Summer School you cannot miss is organised by @CmccClimate on of ML for Climate Science. Many other opportunities on this new Phase Transition post: open.substack.com/pub/joinphaset…
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Benjamin Chang
Benjamin Chang@benjamin0chang·
My first PhD paper is out now in @Nature! Very grateful to have worked with the FutureHouse team on this, and a big shoutout to my co-first author @agreeb66 😀
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Sam Rodriques
Sam Rodriques@SGRodriques·
I have spent my entire life working on this and thinking about this for the past 4 years. I don't know what will happen in 20 years, but I can promise you that on the 5-10 year timescale, scientists are not out of their jobs. AI is going to massively accelerate the pace of science, increase productivity, let individual scientists make way more discoveries way faster, and is going to make science overall more fun. But the model is going to be collaboration between humans and AI, not replacement. The key difference here between science and e.g. software engineering is that science is not verifiable in any rapid/convenient way (unlike software), unlike programming. We still need humans for their scientific taste.
Dr. Thomas Ichim@exosome

Today we all lost our jobs..... Three Nature papers showing that scientists in the conventional sense are obsolete At least read the first one.... the AI replaced all things that the scientist does .... nature.com/articles/s4158…

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Cristiano De Nobili
Cristiano De Nobili@denocris·
False! Zionism and a good majority of Judaism is convinced of being elected, of being the people of God, therefore superior. This is racism! If you are intellectually honest, then avoid hiding the facts behind the difference in meaning of words. Instead, start to observe reality, counting the victims of Israel, the stolen territories, the houses, hospitals and the destroyed universities in Gaza, the West Bank and Lebanon. Start counting how many politicians in the USA and EU are funded by Jewish lobbies. This is what a good scientist should do!
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Judea Pearl
Judea Pearl@yudapearl·
Great conference - first of its kind. Sorry for being unable to attend, but more eloquent speakers, I'm sure, have articulated my perspectives on "antisemitism = Zionophobia = genocidal racism" open.substack.com/pub/unapologet…
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Cristiano De Nobili@denocris·
@yudapearl Journalism is no longer needed. It is enough to see the images to realise, if one is intellectually honest as a scientist should be, the atrocities and crimes that Israel and many jews who support it are committing!
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Cristiano De Nobili
Cristiano De Nobili@denocris·
New preprint out! (... and it's my first solo paper!) Context: multi-agent systems of LLMs are becoming widely popular, with applications ranging from satellite constellations to decentralized AI. A rigorous study of their collective behavior and sociology is becoming increasingly important. Research question: in an AI multi-agent system, is the dynamics that leads to alignment or consensus driven by cooperation between agents, or by individual agent bias? Main result: a model-agnostic, statistical-physics-inspired method for characterizing and benchmarking the collective behavior of LLMs, which distinguishes genuine cooperation from correlated single-agent bias and lets us compute critical exponents and probe possible phase transitions. Applied to three open-weight models, we find that observed consensus is dominated by shared bias rather than cooperation. Ah... by the way, our diagnostic also suggests that Mistral:7b, when surrounded by its peers, has a dogmatic character, while phi4-mini:3.8b is a fragile conformist. Llama3.1:8b is a bit more social than the others! 📄 Paper: arxiv.org/abs/2605.10528 ✍️ Blog post: cristianodenobili.com/blog/blogs/coo… Happy to hear thoughts and feedback!
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Anthropic
Anthropic@AnthropicAI·
We’re sharing the research agenda of The Anthropic Institute, or TAI. TAI will focus on four areas: 1) Economic diffusion 2) Threats and resilience 3) AI systems in the wild 4) AI-driven R&D Read the full agenda: anthropic.com/research/anthr…
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elvis
elvis@omarsar0·
arXiv Papers → LLM Artifacts This is how I keep up with AI research now. It's like having access to the most personalized arXiv feed. Automations run everyday to curate papers based a set of rules and insights. Curated papers are indexed and power the artifacts. Agent convert papers to LLM wikis (based on @karpathy idea), which means insights are indexed and easily searchable and reusable. I feel like LLM Artifacts is the natural evolution to LLM Wikis. It's about making that knowledge actionable. Artifacts are customizable via agents. Artifacts can interact with agents and are dynamic in nature. Anything can be injected into the artifact as needed (insights, components, suggested experiments, action items, etc). I can take action on Artifact items with my agent orchestrator (Electron app). So I can ask questions about any paper and automate experiments in the background right from within the artifact. This is more than a visual. It's not a single prompt. It's several proactive agents coordinating to surface interesting facts, knowledge, and insights that I can act on a researcher. Agents are not just for generating useful artifacts, they are useful to keep learning and staying on the cutting edge of knowledge. Stay tuned for more.
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Cristiano De Nobili
Cristiano De Nobili@denocris·
Deep tech in 🇪🇺 EU! Alice & Bob, a quantum startup, is looking for a Quantum Experimentalist and for an Intern in AI for Quantum. Entalpic, an AI-driven Climate Tech startup, is seeking for Senior Platform Engineer for their AI-driven scientific discovery platform. Do not miss the Workshop on Neuromorphic Computing that will take place in Naples in September. Many other opportunities, conferences and summer schools in the latest post: joinphasetransition.substack.com/p/eu-deep-tech…
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Cristiano De Nobili@denocris·
New deep tech opportunities in 🇪🇺, especially for those moving from academia to industry: 🔹QuantumBasel is hiring an AI & Quantum Engineer to work at the intersection of quantum computing and AI innovation. 🔹LiveEO, a company leveraging satellite imagery and AI to provide actionable insights for industries, is looking for a (Senior) Data Engineer for Remote Sensing & AI Pipelines. Many others on the latest Phase Transition post: open.substack.com/pub/joinphaset…
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Cristiano De Nobili@denocris·
Here we are with new opportunities for the growth of the 🇪🇺 European #deeptech ecosystem. - IsomorphicLabs is looking for a Research Scientist to apply AI to drug discovery - TerraSpark is seeking a Project Manager for the in-orbit demonstration mission of its solar energy technology - You can also find several interesting summer schools, particularly one that lies at the intersection of AI and Physics. More information in the latest post on Phase Transition: open.substack.com/pub/joinphaset…
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John Preskill
John Preskill@preskill·
Our paper “Exponential Quantum Advantage in Processing Massive Classical Data” proves that quantum machines can solve common machine learning tasks using exponentially less memory than a classical machine would require. Much further work will be needed to translate this theory into practice. But because modern AI is often hampered by insufficient memory, this finding bolsters our confidence that quantum AI can eventually have a broad impact on daily life. This project was led by the remarkable Caltech student @haimengzhao and inspired by the vision of @RobertHuangHY, with essential contributions from all our collaborators. Here Haimeng tells the story. quantumfrontiers.com/2026/04/09/unl…
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Haimeng Zhao
Haimeng Zhao@haimengzhao·
⚛ Can small quantum computers accelerate AI on massive classical data? Yes! I am absolutely thrilled to share our new work proving *honest* exponential quantum advantages in broadly applicable classical tasks. 🧵👇 Paper: arxiv.org/abs/2604.07639 Blog: quantumfrontiers.com/2026/04/09/unl…
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Collaborative Innovation Network
🛰️ The latest ESA Φ-Lab CIN talk is now on YouTube. Aravind Ravichandran from TerraWatch Space on the intelligence gap in Earth Observation: onboard processing, GeoAI, and what scalable Earth intelligence actually requires. ▶️ bit.ly/4syq064 #EO #GeoAI #AI4EO #ESA
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