{"slug": "requests-for-curiosity-summer-2026", "title": "Requests for Curiosity Summer 2026", "summary": "South Park Commons (SPC) is seeking applicants for its Summer 2026 cohort, targeting individuals exploring frontier questions in AI, energy, education, and marketplaces. The community aims to accelerate discovery by gathering people who tackle problems like AI empathy, energy scarcity, and enterprise model fleets.", "body_md": "# Requests for Curiosity Summer 2026\n\n### If you're wrestling with these questions, we want to meet you\n\nGreat ideas aren’t found in charted territory. Reaching them means wandering off the well-worn path and staying lost long enough to find a new frontier.\n\nThat doesn’t mean going alone.\n\nCuriosity compounds, and it compounds faster in good company. The people you explore alongside widen your surface area for discovery. Their problems send you somewhere you wouldn’t have looked. The more you ask, the more you find.\n\nSouth Park Commons exists to push the frontier by gathering the right people. The questions we explore at SPC are indicators of where the frontier ends up next.\n\nIf you’re thinking about any of these questions, reach out to the SPC team member below, or [apply to join SPC directly](https://www.southparkcommons.com/apply).\n\n### Can AI express more than just intelligence?\n\nAI is on the trajectory to be the world’s most intelligent lawyer, doctor, and accountant. But empathy, curiosity, connection and humanity are integral to those professions.\n\nIs it possible for AI tools to truly develop empathy in a way that would be deeply felt by humans interacting with them?\n\nHow can AIs foster a deep connection with humans?\n\nWhat is the form factor that AIs should have in order to enable connectivity?\n\nReach out to [Aditya](https://www.linkedin.com/in/adityaagarwal3/)\n\n### What markets emerge when supply is no longer constrained?\n\nMany successful companies emerged by unlocking previously inaccessible supply through making it discoverable, accessible, and economically viable. Expertise can now be replicated, services can be partially automated, and a single person can serve dramatically more customers than before. Markets that were previously constrained by scarce human expertise may suddenly become viable.\n\nWhat marketplaces were historically impossible because supply was too scarce?\n\nWhich marketplace ideas failed historically because they arrived before AI made the economics work?\n\nWhich marketplaces become more defensible as AI makes software easier to build?\n\nReach out to [Danh](https://www.linkedin.com/in/danhtrang/)\n\n### What needs to get built for a world that stays abundant as AI turns energy into a scarce, contested input?\n\nIn 2005, Thomas Friedman called it a [flat world](https://en.wikipedia.org/wiki/The_World_Is_Flat): cheap energy, free trade, stable geopolitics, abundant labor. Recently, our world has started to look more jagged than flat. One example: AI training and inference are turning electricity into a contested input just as stationary battery costs fall along a Wright’s Law trajectory, pushing home storage toward a default appliance.\n\nWhat new tools, regulatory changes, or business models are needed to get breakthroughs to market faster?\n\nWhat are the components, materials, models, and software that underpin critical infrastructure?\n\nIf enough homes localize storage, does the grid’s fixed cost collapse onto fewer customers until the system unravels, and who profits from re-bundling the defectors?\n\nReach out to [Evan](https://www.linkedin.com/in/evantana/)\n\n### What does it mean to learn and how should AI reshape pedagogy?\n\nNew education models promise a hyper-personalized and accelerated pace of learning. As AI makes information more accessible, instilling depth of understanding isn’t guaranteed.\n\nHow much of comprehension depends on effort, on the friction of figuring something out yourself?\n\nIs memorization an outdated proxy for understanding, or is it a foundation we’re too quick to dismiss?\n\nHow do you build AI tools that guide and inspire curiosity without short-circuiting the process?\n\nReach out to [Arian](https://www.linkedin.com/in/arian-agrawal-46639439/)\n\n### How do we help every enterprise run its own fleet of models?\n\nThe default assumption is that enterprises will rent intelligence from a handful of frontier labs. That assumption is fragile. Open-source models are less than a year behind frontier models, post-training is getting cheaper, and, most importantly, companies are finally figuring out how to capture organizational context and put it to work.\n\nHow can companies turn proprietary context into proprietary models? What verticals benefit the most from this shift?\n\nWhat does the infrastructure stack (routing, evals, versioning, observability) look like for running hundreds of specialized models in production?\n\nWhat parts of this get built in-house versus outsourced—what new roles emerge inside enterprises, and who serves the long tail of companies without ML teams?\n\nReach out to [Finn](https://www.linkedin.com/in/finn-meeks/)\n\n### Where are the robots?\n\nDespite a huge influx of capital, we’re nowhere near widespread deployment of robotics in complex, generalized environments. ‘World model’ has become a punchline in funding circles for its imprecision and overuse. It seems plausible we’ll get recursively self-improving AI before we get a robot that can load a dishwasher.\n\nAre world models necessary for widespread deployment of general robotics, and if so, what remains unsolved to make them work?\n\nWhat still needs solving in hardware and the supply chains even when the software layer works?\n\nWhat kinds of infrastructure changes (in software, hardware, and the built environment) will be needed to safely deploy more capable robots?\n\nReach out to [Jonathan](https://www.linkedin.com/in/jonathan-brebner/)\n\n### What is the future of proprietary intelligence?\n\nNearly every consumer app is built on roughly the same intelligence, available to everyone at falling prices. But the data that feeds that intelligence will remain proprietary, and problems surround temporal memory: fast decay, inaccuracy, and volatile costs.\n\nWhat will be the right architecture for long-horizon user memory?\n\nIf users own their personal memories, how will they be stored, ported and retrieved?\n\nWhat does this mean for privacy and regulations—how will data-portability rules, deletion rights, and user-owned-memory standards evolve?\n\nReach out to [Prateek](https://www.linkedin.com/in/prateek-mehta-a571972/)\n\n### What does an AI-driven shift toward consumer-controlled medicine look like?\n\nFor decades, tech-forward patients and advocates have tried to wrest control of their health choices and data from the medical establishment. AI may radically expand the ease of accessing medical data and its value, while collapsing the cost of reasoning.\n\nWill we see new AI-driven biomarkers used to continuously manage biological systems?\n\nWhen AI medical advice is good enough and nearly free, do consumers start bypassing doctors entirely for routine health decisions?\n\nCan we build data consent infrastructure as simple as open-source licensing that makes mass participation frictionless?\n\nReach out to [Mark](https://www.linkedin.com/in/markjacobstein/)\n\n### Are smart devices finally smart enough?\n\nSmart devices promised to rewire how we live, and instead were clunky interfaces with marginal utility. With models small enough to run on-device, hardware can perceive, reason, and act locally.\n\nWho owns the platform layer when everything is ambient?\n\nIf on-device AI removes the cloud dependency, does that unlock new monetization or does it just make a commoditized hardware product slightly better?\n\nDoes the first mover define the protocol and data layer for everything that follows, or does each category fragment into its own silo?\n\nReach out to [Dylan](https://www.linkedin.com/in/dylanitzikowitz/)\n\n### In a world where work becomes optional, where does meaning come from?\n\nWork can provide structure, status, belonging, and motivation. Universal basic income can replace a paycheck and none of the rest. The hard problem isn’t money, but meaning. Assuming the struggle that accompanies a universal basic income, there will be a market for the provisioning of meaning itself.\n\nWhat provisions break when work, as we know it today, goes away?\n\nCan you create artificial arenas to provide meaning, like many simulation games already do?\n\nWhat is a secular, buildable version of religion?\n\nReach out to [Rohan](https://www.linkedin.com/in/rohan-choudhary-a273736/)\n\nInterested in SPC? [Apply to join us here.](https://www.southparkcommons.com/apply)", "url": "https://wpnews.pro/news/requests-for-curiosity-summer-2026", "canonical_source": "https://blog.southparkcommons.com/p/requests-for-curiosity-summer-2026", "published_at": "2026-06-17 16:21:11+00:00", "updated_at": "2026-06-24 20:22:34.751266+00:00", "lang": "en", "topics": ["artificial-intelligence", "ai-research", "ai-ethics", "ai-infrastructure", "ai-products"], "entities": ["South Park Commons", "Aditya Agarwal", "Danh Trang", "Evan Tana", "Arian Agrawal", "Thomas Friedman"], "alternates": {"html": "https://wpnews.pro/news/requests-for-curiosity-summer-2026", "markdown": "https://wpnews.pro/news/requests-for-curiosity-summer-2026.md", "text": "https://wpnews.pro/news/requests-for-curiosity-summer-2026.txt", "jsonld": "https://wpnews.pro/news/requests-for-curiosity-summer-2026.jsonld"}}