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TradeFox

@tradefoxai

Prediction market aggregator and prime brokerage. Backed by @alliance and @CMT_Digital.

New York Katılım Şubat 2025
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TradeFox
TradeFox@tradefoxai·
We’ve added 100s of new smart money wallets, categorized by strategy and edge: - Trading bots - Bonding Soon Whales - High Win Rate Wizards - Hyped High Volume Market Makers - Manual Movers - Wall Street Wizards, - Insiders, Sports, Politics, Weather, etc Copy trade any of them in one click.
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PJ@Prithvir12·
Anyone have ideas on how to expedite iOS apps getting approved? It says 90% of apps are reviewed within 48 hours and the average review times are much lower on Runway But we're still stuck in "waiting for review"
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PJ@Prithvir12·
i've given codex full access to all my documents and folders
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PJ@Prithvir12·
the labor market is not ready for what codex is becoming today i gave codex an api key and it: > pulled 100k rows > figured out the endpoints > cleaned the data > answered questions that would’ve taken a $250k data scientist 2-3 business days > sanity checked it it did this in 2-3 minutes btw these were not simple sql queries messy questions where it was unclear what formula to use, what data was missing, and how to iterate based on prior experience working directly with me could see the unhobbling, CoT, and mechanistic interpretability all working in tandem absolutely fantastic 2026 is incredible
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PJ
PJ@Prithvir12·
everyone is salivating over spacex's s1 while 99% would benefit more from reading bending spoon's f-1 their path is more reproducible and less circumstantial
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PJ@Prithvir12·
10 point tldr on what actually happened 1. On March 31, Google Quantum AI published a 10x improvement to Shor's algorithm for elliptic curve crypto, demoed on secp256k1 (the curve behind Bitcoin/Ethereum signatures). 2. The optimizations were withheld and locked behind a zero-knowledge proof that demonstrates the improvement exists without revealing it. Google cited engagement with the US government. First known case of ZK-enforced academic censorship. 3. Streisand effect kicked in. French researcher André Schrottenloher independently rederived the main secret optimization two months later in "Optimized Point Addition Circuits for Elliptic Curve Discrete Logarithms." 4. Craig Gidney revealed he'd sat on the same optimization for a year under censorship pressure. 5. André missed several minor optimizations, suggesting more headroom remains in the circuit. 6. The ecdsa.fail challenge weaponizes the ZK verifier as an automated submission filter and reward function. It broke a Shor world record within hours and currently shows an 8.4% improvement over Google's circuit (measured as logical qubit count × Toffoli gate count). 7. AI autoresearch (Karpathy-style) lowered the barrier so far that amateurs, including a teenager, are landing valid optimizations. 8. Same day, neutral-atom startup Oratomic claimed just 10K physical qubits suffice to run Shor on secp256k1. The tech checks out btw. Google has now started its own neutral atom lab, pivoting from pure superconducting focus. 9. Neither paper gives qday timelines. Filling the gap: author puts qday-by-2032 at 50%, by-2030 at 10%. The US government's 2035 deadline (NSA→NIST) looks badly behind and will likely get pulled forward. 10. Migration target proposed for 2029 (aligned with Google, Cloudflare, Ethereum Foundation). The Ethereum path replaces BLS, KZG, and ECDSA with hash-based crypto via leanVM. Two $1M bounties open: - the Proximity Prize - the Poseidon Initiative
Justin Drake@drakefjustin

Today a crazy quantum story just got wilder. On March 31, the Google Quantum AI team published a landmark result on Shor's algorithm for elliptic curve cryptography. Technically, the paper was a bombshell: a dramatic 10x improvement over the state-of-the-art. As a stunt and wakeup call to the blockchain space, those optimisations were illustrated on secp256k1, the elliptic curve underlying Bitcoin and Ethereum signatures. But perhaps the most striking part of the paper was sociological, not technical. Instead of following standard academic process, the optimisations were kept secret, hidden behind a zero-knowledge (ZK) proof. Google's accompanying blog post mentions they "engaged with the U.S. government". The ZK proof demonstrates the existence of algorithmic improvements without leaking details. Academic censorship with ZK, a historic first! As a co-author of the Google paper I witnessed some of the context surrounding this censorship. To be honest, multiple aspects of that context don't sit well with me. As much as I believe the general public ought to know more, I am limited in my ability to whistleblow. Though let me be clear about one thing: the Google team's professionalism has been absolutely exemplary, and they deserve nothing but praise. Censorship has a way of backfiring. The Streisand effect, where an attempt to bury something only draws more attention to it, is exactly what's unfolding today. First, Google's key optimisation has been rediscovered by the French. And in a thrilling turn of events, a collaborative Shor-at-home challenge just launched. The initiative, available at ecdsa[.]fail, breached a new Shor world record in a matter of hours. Let's start with the rediscovery. Just two months after Google's paper, French quantum expert André Schrottenloher cracks the main secret optimisation. His paper, titled "Optimized Point Addition Circuits for Elliptic Curve Discrete Logarithms", landed on the arXiv today. Big congrats to André, who beat several other nerdsnipped experts to it. In a blog post also published today, Craig Gidney, the world expert on Shor optimisations, revealed that he'd been sitting on this very optimisation for a whole year under censorship pressure. Interestingly, André missed a handful of minor optimisations, both from Google's original publication and from improvements found since. It's plausible there's still plenty of juice left to squeeze out of Shor, and this is exactly what the ecdsa[.]fail challenge is about. The verifier program developed for the ZK proof does double duty, automatically filtering for valid submissions. Dozens of compounding small and micro improvements are rolling in. As of the time of writing there's an 8.4% improvement to Google's circuit, as measured by the product of logical qubit count and Toffoli gate count. Nice! The nerdsnipping ran deeper than anyone expected. Over the last few weeks it became clear it extended well beyond André and other quantum experts. Behind the scenes, a small army of amateurs quietly got to work. Inspired by Karpathy-style autoresearch, they turned AI on Shor. Ironically, the verifier program for the ZK proof makes an ideal reward function for AIs. The barrier to entry for this modern style of research is refreshingly low, with several non-experts, even a teenager, finding nice optimisations. Get in touch if you'd like to join a Telegram group with fellow autoresearchers :) Part 2: neutral atoms and qday The story doesn't end with Google. On the same day Google went public, a stealthy startup called Oratomic published its own Shor paper in a coordinated release. It made a splash, ultimately becoming the most upvoted paper on scirate[.]com, a website ranking arXiv papers. Oratomic's claim was wild. By building on Google's logical optimisations and applying custom physical optimisations for neutral atoms, they claimed just 10K physical qubits were sufficient to run Shor's algorithm on secp256k1. That number is mind-bogglingly low. Knowing essentially nothing about neutral atoms when Oratomic's paper landed, I was intrigued and decided to learn more about the tech. I fell straight down the rabbit hole and spent a couple hundred hours on the topic. I got a little obsessed and watched every YouTube video I could find and spoke to a bunch of experts. My conclusion? The tech is real, very real. Even Google recently decided to start a neutral atom lab, a notable pivot from their sole focus on superconducting qubits. If you care about qday, i.e. the day a quantum computer will break the first piece of cryptography in production, neutral atoms demand your attention. I shared some of my learnings on Shor and neutral atoms in a 30min talk at the ZKProof cryptography conference. You can find it on YouTube by searching "zkproof neutral atom". Here's an interesting observation about this duo of breakthrough papers: neither Google nor Oratomic say a word about what their results mean for qday. No timelines. Zero. Nada. That is especially baffling given that the whole point of whitehat quantum cryptanalysis is to inform qday estimations and help the general public make good decisions. So let me attempt to partially fill the silence, similarly to what Scott Aaronson did in his April 29 post. Given everything I know, including scary non-public information, I now put the odds of qday by 2032 at 50%. 10% by 2030. Anecdotally, the US government has its own date: 2035. Originating at the NSA and later adopted by NIST, it's when branches of the US government will be disallowed from using quantum-vulnerable cryptography. In plain language: with hindsight, that date is a joke and should be discounted entirely. I don't see how NIST avoids being forced to pull it forward by years. Part 3: post-quantum cryptography There are good reasons to sound the alarm today, but please do not panic. Rushing carelessly towards immature post-quantum cryptography is a recipe for disaster. IMO a good target date for migration is 2029, roughly 3.5 years out. 2029 happens to be the date selected by Google, Cloudflare, and the Ethereum Foundation. These days most of my time goes to safely migrating Ethereum towards post-quantum cryptography as part of the broader lean Ethereum effort. There's a lot to do. We need to rip out and replace BLS signatures at the consensus layer, KZG commitments at the data layer, and ECDSA signatures at the execution layer. The plan to get there is compelling, and is based on hash-based cryptography. Within the Ethereum Foundation we've developed a Swiss army knife called leanVM (github[.]com/leanEthereum/leanVM) powered by the magic of hash-based SNARKs. Thanks to truly exceptional work by Emile, Thomas, and others, its performance is derisked. Regarding security, leanVM is a jewel, a minimal zkVM crafted for end-to-end formal verification and maximum security. Want to help? There are two $1M initiatives. First, the Proximity Prize (proximityprize[.]org). Solve a long-standing mathematical conjecture in coding theory, improve hash-based SNARKs, and go home a millionaire. Second, the Poseidon Initiative (poseidon-initiative[.]info), offers $1M for breaking Poseidon, the SNARK-friendly hash function.

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TradeFox
TradeFox@tradefoxai·
Reminder: TradeFox will no longer be active after June 1. Please sell all positions, withdraw funds, and export your wallet from the Portfolio page. We've added a Sell All button to make this easy. We've also included instructions if you'd prefer to sell manually using your Polymarket API keys. After June 1, you'll still be able to export your wallet at home.privy.io
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PJ
PJ@Prithvir12·
the reason evals can’t distinguish between frontier models is the same reason a 100 iq person can’t reliably tell a 140 iq physicist from a 160 iq physicist. you need to be within one standard deviation of the frontier to measure it. the models outstripped us in december and the benchmark's just the last instrument still polite enough not to mention it.
Chamath Palihapitiya@chamath

This is increasingly true of the frontier models across a variety of evals. Has anyone provided a good answer as to why? “There is no single best model At the top of the leaderboard, Opus 4.7, GPT-5.5, and Sonnet 4.6 appear almost indistinguishable, separated by less than 0.3 percentage points overall. Read superficially, the result suggests convergence: three frontier systems reaching roughly the same level of capability.”

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PJ@Prithvir12·
LLMs are changing who starts companies, but not in the way you think. The obvious effect is people with less technical backgrounds can build software more easily. The more interesting effect is they’re pulling in people who were kept out by opportunity cost. Previously, my smart friends in banking, PE, hedge funds, and VC would have startup ideas, talk about them, maybe sketch them out, but rarely test them. Now a surprising number have side projects with real users and revenue because the threshold to try something has fallen so much. That seems like a much bigger deal than people realize
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PJ@Prithvir12·
Coase's Theorem and Jevon's Paradox in an AGI world Two laws are colliding in the labor market right now: Jevons' Paradox and Coase's Theorem. Everyone keeps debating the surface-level question, "will AI replace engineers?", and missing the actual structural shift underneath. Jevon: when you make a resource cheaper, total consumption goes up, not down. Cheaper coal means more coal burned. Cheaper light means more light consumed. Cheaper code means more code written. Coase: firms exist because transaction costs make it cheaper to coordinate inside a company than across a market. Lower those costs and firms shrink. AI is a transaction-cost solvent. Contracts, coordination, documentation, code review, translation, legal review, all the connective tissue that made the big firm necessary, is collapsing in cost. Stack them together and you get three predictions: 1. Total number of SWEs: increases 2. Total number of companies: increases 3. Employees per company: decreases This is exactly what we're seeing. Big tech is laying off engineers by the tens of thousands. Small companies, one-person companies, and zero-person companies, are scrambling to hire them. The headlines look contradictory. They aren't. They're the same phenomenon viewed from two ends of the distribution. The 10,000-person engineering org was a Coasean artifact. It existed because coordinating 10,000 humans inside one firm was cheaper than contracting 10,000 firms. Not anymore. AI is forcefully refactoring the org chart in real time. Expect more engineers, in more companies, at smaller headcounts. The median software company of 2030 will look less like Google and more like a guild: three people, twelve AI agents, one product, global reach. In the next post, I'll cover AGI's interaction with Baumol's cost disease. Hit the follow button so you don't miss it.
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PJ@Prithvir12·
ai founders pivoting to crypto will raise the median iq of both cohorts.
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PJ@Prithvir12·
the spacex s-1 is the perfect rorschach test for bifurcating marxist eschatologists from techno-optimist accelerationists.
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PJ@Prithvir12·
Seems like $SPCX is trading at a notable premium on implied valuation ($2.5T area) compared to current secondary markets ($1.5T) valuation of @SpaceX. Is this momentum on launch day or have @HyperliquidX and @tradexyz traders uncovered something?
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PJ@Prithvir12·
Moravec's Paradox from 1980 explains exactly what Griffin is watching unfold. Roboticist Hans Moravec asserted that what is hard for humans is easy for machines, and what is easy for humans is hard for machines. So, the skills we treat as elite, like abstract reasoning, financial modeling, and legal analysis, are evolutionarily recent. They sit on the surface of human cognition. Machines learn them in months. But the skills we treat as ordinary, like walking across a cluttered room, folding a towel, or knowing when something is "off" with a patient, rest on billions of years of sensorimotor evolution. They are so deeply wired into us we do not even register them as intelligence. Machines have wrestled with them for forty-five years and counting. Griffin's seven-figure analysts are being automated before his office cleaners. Moravec called this in 1980. We are simply watching the timeline arrive. White-collar work commanded a premium because that kind of thinking was rare among humans. Once machines can do it cheaply, the premium goes with it. Plan accordingly.
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TFTC@TFTC21

Ken Griffin went home on a Friday "fairly depressed" after watching AI agents at Citadel do work that used to take teams of PhDs in finance months to complete. Done in days. His words: "These are not mid-tier white collar jobs. These are extraordinarily high skilled jobs being automated by agentic AI." This is the head of one of the most successful hedge funds in history saying the people he pays seven figures to analyze markets and structure deals are being replaced by software that works in hours instead of months. Not theoretically. In his own office. Right now. The Coatue deck we covered earlier this week called agents "the biggest unlock" in AI. Griffin just confirmed it from the buy side. The shift from copilots to agents is not a future event. It is already happening at the highest levels of finance.

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PJ@Prithvir12·
If your ai bills are creeping into five or six figures a month, keep reading. I'll cover: 1. what's driving the increase in token costs 2. six techniques to reduce burn 3. metrics to track cost relative to output SWE is becoming compute allocation. Moving from Cursor to Claude Code or Codex is not enough. Here are a few things that actually move the number. 1. Prompt caching is the biggest lever. Cached input tokens are 90% cheaper. For agent loops, your system prompt and repo map stay stable across dozens of turns. If your cache hit rate is below 70%, you're lighting money on fire. 2. Context size is the cost function. A hard task in a small context is cheap. A trivial rename across a 200k token repo dump is expensive. This is why naive RAG often beats stuffing the whole monorepo in. You need to do real context curation with AST retrieval and symbol-level chunking. 3. Use sub-agents to keep your main context small. Use sub-agents to keep your main context small. When Claude Code spawns a sub-agent for something like running tests, that sub-agent does its work and only sends back the answer. The bloat stays contained. If you run everything in one big loop instead, every tool result piles up in the same context window and costs balloon fast. 4. Recursive review is dangerous. Generate, review, revise, re-review is four passes over overlapping context. If those passes aren't cache hitting, you've paid for the same tokens four times. Review on diffs, not full files. 5. Task wise Tool selection. Cursor wins on tight IDE work like debugging and small edits. Tab completion alone justifies the seat. Claude Code / Codex wins on multi-file features because sub-agents keep context clean. The arbitrage: Cursor on the $20 plan for bounded iteration, Codex or Claude Code on usage-based for architectural work. Don't pay premium rates for tab completion. 6. Chinese open source models. The weights are fine and you'll save costs. The risk is the inference provider seeing your prompts, which usually contain keys, internal architecture, and things you accidentally pasted. Self-host or use a vetted provider and the math often works for non-frontier workloads. Metrics to track: - cache hit rate - input output token ratio - tokens per merged PR - Cost per successful task, not cost per call
PJ@Prithvir12

frontier models are becoming veblen goods the marginal gain from “thinking-max” over “thinking-high” is tiny the marginal cost difference is not this is getting insane

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PJ@Prithvir12·
if you follow the trend lines: 1. pure software co token spend surpasses employee spend by 2027 2. agency / services firms by 2028 3. SMB back offices by 2029 4. regulated enterprises by 2030 AGI labs generate $1T in annualized revenue by 2031
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