Ijeoma Onuosa

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Ijeoma Onuosa

Ijeoma Onuosa

@CapitalBanker

Builder, FinTech since 2016. Nonbank treasury. EECS x ORFE x Economics @UMich Mortgages, Portfolio Mgmt, RegTech, World history 🚜🛢️🌾🌽 #JPY #VXX #QQQ 🇺🇸

San Diego, California انضم Nisan 2009
1.3K يتبع982 المتابعون
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Ijeoma Onuosa
Ijeoma Onuosa@CapitalBanker·
In the beginning... there was work 🙏🏾
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Deedy
Deedy@deedydas·
What do the smartest kids in the world do when they grow up? I did the largest study of ~18,000 International Olympiad medalists (IMO, IOI and IPhO) over the last 25yrs, arguably the sharpest analytical minds of the world in high school, to see where they ended up and traced ~50% of them. Founders of ~20 unicorns and ~7 decacorns and ~10 billionaires: OpenAI, Cursor, Stripe, Databricks, Perplexity, Ethereum, Cognition, Hyperliquid, Fireworks, Modal, Quora, Parallel, Cartesia, Wispr Most kids went to MIT, a whopping 12% of them, followed by Cambridge (7%) and Sharif (3%)! The career paths they chose (of those who graduated) were: — 36% Academia (professors) — 26% Other — 22% in Software / Tech — 12% in Quant / Finance — 5% Founders! The biggest employer was Google, by far, at 6%. Others interesting tidbits were: — 47 of them work at Jane Street (#3) — 38 at OpenAI (#5) — 15 at Anthropic — 8 at Cognition — 6 at Isomorphic Labs Olympiaders were 1500x more likely to be billionaires and 4000x more likely to be unicorn founders than the average person!
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Alif Hossain
Alif Hossain@alifcoder·
People are quietly making $5k–$20k/month with Claude. Not by being smarter. By using better prompts. 📘 The Ultimate Claude Prompt Handbook — 1,500+ proven prompts for freelancing, content, copywriting, digital products, and online income. Plug and profit. Normally $179 → FREE for 48 hrs. Like + RT + comment 'Handbook' and I'll DM it. Follow me so the DM goes through.
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Nicolas Boucher
Nicolas Boucher@BoucherNicolas·
FREE AI Finance Courses (60 resources, zero cost) 👉 Comment "AI" and I will send all 4 courses to you for free I am limiting this drop to the first 100 comments so make sure to be quick This is the biggest free AI Finance pack I have ever released 4 complete courses, 60 hand-picked resources, worth $2,000+ Most finance pros are stuck choosing between ChatGPT, Copilot and Claude And then they pick one tool and miss what the others are great at So I built 4 separate courses Each one curated with the best videos, cheat sheets and playbooks for that specific tool Inside the bundle, you will find: 📗 Free AI Finance Course (15 resources) - AI Roadmap for Finance teams - 6 real AI use cases for Finance - Prompting & Data-prep guide - The fast close playbook - 300 AI Tips (ChatGPT + Claude + Copilot) 📘 Free ChatGPT Course (15 resources) - How to Master ChatGPT in Accounting - Top 100 ChatGPT Tips - 5 ways to use ChatGPT in FP&A - Create custom GPTs for Finance - ChatGPT for Finance: 9 Power Moves 📕 Free Copilot Course (15 resources) - BEST way to use Copilot as a Finance Pro - Copilot in Excel: 5 INSANE use cases - Top 100 Copilot Tips - How to Edit with Copilot in Excel - How this CFO saves 2+ hours every day 📙 Free Claude Course (15 resources) - Top 100 Claude Tips - Claude in Excel to build financial models - Claude Voice Mode for Finance - Claude Cowork for long automation tasks - Claude Finance Playbook I have seen finance teams spend weeks watching random YouTube videos trying to figure out which AI tool to use and how to use it This bundle saves you that work 60 resources, sorted by tool, ready to go Companies pay me $10,000+ for workshops where I teach this exact content I am giving the foundations away for free so you can start today BONUS: When you comment, I will also send your free seat to my upcoming AI Finance Masterclass 👉 Comment "AI" and I will send your link to download all 4 courses ♻️ Repost to help a finance pro who is still doing things the old way
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Alif Hossain
Alif Hossain@alifcoder·
Finance analysts earn $95k–$250k/year. The ones using Claude AI close work 3x faster. 📘 Claude AI for Finance Professionals — 120+ institutional-grade prompts for equity research, DCF, fixed income, portfolio strategy, earnings analysis, and IB workflows. Excel models included. Normally $189 → 100% FREE for 48 hrs Like + RT + comment 'Ebook' Must Follow me so I can DM you.
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Boring_Business
Boring_Business@BoringBiz_·
This chart has been getting passed around a lot as a topic of conversation but it’s really not that surprising Anthropic targeted software engineering and coding as their core market. Those people tend to skew higher income Is it just not that simple or am I missing something?
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Marc Porter Magee 🎓
Marc Porter Magee 🎓@marcportermagee·
Nigeria’s education system is impressively terrible
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Samay
Samay@Samaytwt·
Unpopular opinion: "AI makes everyone a developer" is true the same way "cameras makes everyone a photographer"
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Valeriy M., PhD, MBA, CQF
Valeriy M., PhD, MBA, CQF@predict_addict·
So apparently there are claims that DeepSeek “distilled” Western AI. Let’s set the record straight. At this point in time, China 🇨🇳 has distilled European trains, Russian fighter jets and other military technologies, Soviet math to turbo‑charge its STEM development. Likewise, Germany distilled the entire Industrial Revolution from the UK. And the USA has been distilling for over a century—starting with European math and science, the Manhattan Project, the complete distillation of Nazi Germany’s rocket program into NASA, Russian Sikorsky helicopters, and even the Kalman filter distilled from a USSR AI conference. Distillation is just what rising powers do. Call it borrowing, call it inspiration, call it standing on the shoulders of giants—but don’t pretend it’s a scandal when the shoes fit everyone.
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Aman
Aman@Amank1412·
US AI labs: "China will never catch up!" The US AI lab:
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Maria Watson
Maria Watson@maria_wats8492·
Claude Sonnet 4.6 is the smartest Al right now. But 90% of people prompt it like ChatGPT. That's why I made the Claude Mastery Guide: → How Claude thinks differently → Prompts built for Claude → 2000+ Al Prompts Comment " Claude " and I'll DM it free.
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Paul Graham
Paul Graham@paulg·
There's never been an investment like the investment in railroads. (This graph has a log scale!)
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UBC UGANDA
UBC UGANDA@ubctvuganda·
Aliko Dangote: I applaud President Museveni for his bold decision to ban the export of unprocessed minerals. I also want to commit to the two presidents here that, with their support for the refinery, we will build a similar one in East Africa like the one we have in Nigeria.
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Zain Shah
Zain Shah@zan2434·
Imagine every pixel on your screen, streamed live directly from a model. No HTML, no layout engine, no code. Just exactly what you want to see. @eddiejiao_obj, @drewocarr and I built a prototype to see how this could actually work, and set out to make it real. We're calling it Flipbook. (1/5)
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World of Science
World of Science@Science_TechTV·
Quantum Computer Microchip under Microscope.
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Mike Futia
Mike Futia@mikefutia·
Claude Code + ChatGPT Images 2.0 is f*cking cracked 🤯 I rebuilt my static ad system inside Claude Code on the new ChatGPT Images 2.0 model. One brand name + one URL = 40 production-ready static ads. All inside Claude Code. Perfect for DTC brands and agencies who need high-volume ad creative without briefing a designer or spending hours in Canva. If you're finding winning ad concepts on Meta and manually recreating them one at a time — copying prompts, pasting product details, tweaking aspect ratios, downloading, organizing... This system eliminates the entire loop: → Give Claude a brand name and URL → It researches the brand's fonts, colors, packaging, and photography style → Builds a Brand DNA document from scratch → Fills in 40 proven ad templates (headline, us vs them, testimonial, UGC, review cards, stat callouts) with brand-specific details → Fires every prompt to ChatGPT Images 2.0 with your product photos as reference → Downloads finished ads into organized folders with an HTML gallery No manual prompt filling. No Canva templates. No copy-pasting between tools. What you get: → 40 ad formats filled with your exact brand colors, fonts, and copy → Text that actually renders correctly (the new model handles dense copy, logos, and multi-language callouts cleanly) → Product photos passed as reference so the model matches your real packaging → A reusable system — new brand, new folder, same pipeline Built 100% in Claude Code with ChatGPT Images 2.0. I put together a DIY playbook showing the exact architecture so you can build this yourself in Claude Code. Want it for free? > Like this post > Comment "CHAT" And I'll send it over (must be following so I can DM)
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Michael Burry Stock Tracker ♟
Michael Burry Stock Tracker ♟@burrytracker·
If Sam Bankman-Fried did nothing illegal, he might have been the best VC in history What SBF bought vs. what it's worth today: • Cursor: ~$200K → ~$3B (+1,499,900%) • Anthropic: ~$499M → $82.3B (+16,400%) • SpaceX: ~$200M → ~$15B (+7,400%) • Solana: ~$189M → $5.1B (+2,600%) • Robinhood: $612.5M → $4.9B (+700%) • Genesis Digital: $1.17B → $3.5B (+200%) Had he done nothing wrong, he'd have an estimated worth of $114,000,000,000 today Instead he's tweeting from Federal Correctional Institution
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elvis
elvis@omarsar0·
We are entering an extremely exciting era for open-weight models. Kimi K2.6 now feels like a top agentic model. I took it for a spin via @FireworksAI_HQ fast inference APIs. Kimi K2.6 has impressive agentic capabilities, design skills, and the ability to synthesize large amounts of information. I built a little Skill that produces survey papers on any AI research topic you want. (see example in the clip) You can use the skill to tell your agent to generate a survey on whatever topic and watch it go to work. The artifact was fully generated by @Kimi_Moonshot's Kimi K2.6. It's cheap and fast. Next step for me is to explore ways to continue integrating the capabilities of these models on use cases like automating my LLM knowledge bases and augmenting my agent memory capabilities. Stay tuned for more.
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CG
CG@cgtwts·
> be Yann LeCun > spend years building JEPA at Meta > company focuses on LLaMA instead > his idea stays complicated and unused > robotics plans get dropped > decides to leave and start AMI Labs > builds a much simpler version from scratch > trains it on normal hardware in just a few hours > removes all the complicated tricks and keeps it simple Results: -uses 200x less data than similar systems -makes decisions 50x faster -runs on a single GPU instead of massive clusters -simple to train -understands movement, objects, and space -can tell when something is physically impossible -learns how the real world works without being explicitly taught.
Aakash Gupta@aakashgupta

Earlier this year Yann LeCun left Meta because Mark Zuckerberg wouldn't bet the company on JEPA. Last week his group dropped the first JEPA that actually trains end-to-end from raw pixels. 15 million parameters. Single GPU. A few hours. The timing is not a coincidence. For four years Meta has been the house that JEPA built. LeCun published the original paper from FAIR in 2022. I-JEPA and V-JEPA came out of his lab. The architecture was supposed to be the escape hatch from LLMs, the path to robots that actually learn physics instead of hallucinating about it. Every version shipped fragile. Stop-gradients. Exponential moving averages. Frozen pretrained encoders. Six or seven loss terms that had to be hand-tuned or the model collapsed into garbage representations. Meta kept funding LLMs. Llama shipped. Llama scaled. Llama got beat by Qwen and DeepSeek. Zuck spent $14 billion to buy ScaleAI and install Alexandr Wang. The FAIR robotics group was dissolved. LeCun's research kept winning papers and losing the product roadmap. He left, started AMI Labs, and said publicly that LLMs were a dead end. Now the paper. LeWorldModel. One regularizer replaces the entire pile of heuristics. Project the latent embeddings onto random directions, run a normality test, penalize deviation from Gaussian. The model cannot collapse because collapsed embeddings fail the test by construction. Hyperparameter search went from O(n^6) polynomial to O(log n) logarithmic. Six tunable knobs became one. The downstream numbers are what should scare the robotics capex class. 200 times fewer tokens per observation than DINO-WM. Planning time drops from 47 seconds to 0.98 seconds per cycle. 48x faster at matching or beating foundation-model performance on Push-T and 3D cube control. The latent space probes cleanly for agent position, block velocity, end-effector pose. It correctly flags physically impossible events as surprising. It learned physics without being told physics existed. Figure AI is valued at $39 billion. Tesla Optimus is mass-producing. World Labs raised $230 million to sell generative world models. Everyone in humanoid robotics is burning capital on foundation-model pipelines that plan in 47 seconds per cycle. LeCun's group just showed you can do it with 15 million parameters on a single GPU in a few hours. This is the Xerox PARC pattern running again. Meta had the next architecture. Meta had the scientist. Meta dissolved the robotics team, passed on the productization, and watched the exit. Three months later the lab that was supposed to be Meta's publishes the result that resets the robotics cost structure. The paper is worth more than Alexandr Wang.

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