Sunita Parbhu (sunitap.eth)

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Sunita Parbhu (sunitap.eth)

Sunita Parbhu (sunitap.eth)

@sparbhu

Legaltech Founder/CEO. Seed investor & product advisor. @protocollabs, @nfx, @CVKeyProject, @hbs. Fitness, Family, Tea.

San Francisco, CA Katılım Nisan 2009
427 Takip Edilen291 Takipçiler
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Alfred Wahlforss
Alfred Wahlforss@itsalfredw·
Today, Listen crossed $100M in funding. Building is easy now. Knowing what to build isn't. Our AI finds and talks to your users so you don't have to guess. See how Sweetgreen, Microsoft, and Replit use it:
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Phil Trubey
Phil Trubey@PTrubey·
This morning at NeurIPS, Rich Sutton reminded us that we need continual learning to reach AGI. This afternoon, Ali Behrouz presented a Google poster paper, Nested Learning, which provides new ideas on the path to continual learning. I recorded the 40 minute talk as it might be useful for some researchers in the audience. For the rest of us, I subscribe to Andrej Karpathy's suspicion that it will take a 5-10 papers like this to move us to AGI from where we are now, just like it took about 10 papers to move from 2012's AlexNet to ChatGPT. At the very end, I ask Ali how far along to continual learning this represents. Full paper link below, as well as a YouTube link. ps. sorry about the first 2 minutes of bad audio since there were 2 idiots standing beside me have a conversation right in front of this presenter in a rather packed poster presentation. Honestly, tamp down your egos guys and show come common courtesy!
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Mehul
Mehul@fadnavismehul·
@realmadhuguru Can you elaborate more on pixels -> evals -> hill climb ? I'm a product analyst and am realising I really love building products so considering exploring a more PM type role I know what to do to improve on the others (mostly need to build and develop intuition I suppose)
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Madhu Guru
Madhu Guru@realmadhuguru·
Same pattern is emerging for AI PMs. AI product building is a far less mature discipline than AI research. To build an AI native product, a PM needs mastery of the following - vision, opinionated UX design - model intuition to extract max value - ability to go from pixels -> evals -> hill climb - understanding of agentic flows - tools, context, safety guardrails - deep user understanding - lot more than previously because of the nature of agents Unlike traditional software, LLMs offer infinite use cases with infinite failure modes. It takes skill to craft products that strike the balance between exposing LLM versatility while building a focused product with high quality. I estimate < 75 PMs globally have this depth. The evidence is the number of truly AI-native products today. And my scar tissue from hiring. It is a rare, but learnable skillset. Only way is to build, build, build.
Aditya Agarwal@adityaag

Why are AI researchers so hard to find? Why are they so highly paid? To try to answer this, let’s rewind back to something from the Carnegie Mellon PhD program. At Carnegie Mellon's PhD program, there's a legendary oral exam question that's deceptively simple: "What happens when you type google.com into a browser?" It's a masterpiece of pedagogical design. You can spend hours traversing the stack—from keypress interrupts to browser event loops, DNS resolution to TCP handshakes, TLS negotiation to HTTP parsing, CDN routing to datacenter load balancing, all the way down to electrons moving through silicon. The beauty is its fractal nature. Each layer reveals another universe of complexity. A strong engineer can navigate these depths, moving fluidly between abstraction levels. Now consider the equivalent question for our current moment: "What happens when you type a prompt into GPT-5?" I estimate fewer than 500 people globally can answer this with comparable depth. Think about what comprehensive understanding requires: transformer architecture internals, attention mechanisms at scale, distributed training orchestration across thousands of GPUs, RLHF implementation details, constitutional AI approaches, inference optimization, quantization trade-offs, not to mention the labyrinthine data pipelines and evaluation frameworks. Unlike traditional systems—which evolved over decades with extensive documentation, courses, and industry knowledge transfer—the modern LLM stack emerged in just a few years within a handful of organizations. The field is simultaneously too new and too vertically integrated. The people who truly understand these systems end-to-end are essentially the early engineers at a small set of frontier labs: OpenAI, Anthropic, DeepMind, Meta's FAIR, and a few others. This explains the talent market dynamics. When the total addressable pool of people who can architect and debug these systems is smaller than a single Bay Area high school, the economics become inevitable.

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Sunita Parbhu (sunitap.eth)
@fadnavismehul @realmadhuguru 3. If gen AI, it is non-deterministic. You need to evaluate if it is effective. Establish your evaluation methods, including dataset consisting of high volume and edge cases, ground truth, find errors, set acceptance criteria for launch.
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Sunita Parbhu (sunitap.eth)
@fadnavismehul @realmadhuguru pixels -> evals -> hill climb 1. Prototype your flow to solve the problem 2. Decide where in the flow AI will be used, if at all, and if AI, is it gen AI? Don't apply gen AI to everything, as it is expensive.
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Sunita Parbhu (sunitap.eth)
@bqueener Agreed. People are ecstatic to have a user interface that works they way they do. No more tabs, screens, navigation, training videos. Less customer support. Probably a lot of UX around prompt writing, prompt saving, prompt sharing in B2B.
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Brett Queener
Brett Queener@bqueener·
Is the industry ready for a world where most of a software product's user interface will be a prompt or a recommendation? I don't think so.
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Peter Yang
Peter Yang@petergyang·
What’s the best way to recover some energy in the afternoon other than drinking caffeine?
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Lotus
Lotus@lotus_web3·
🚀We're thrilled to announce Lotus v1.23.3 and the official launch of the new Lotus Slasher🔪 & Lotus Disputer🗣️ services in partnership with our friends at @StorSwift! 🔐These key services maintain network integrity, prevent bad actors, and reward active participants! 💰️ ...
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Illia (root.near) (🇺🇦, ⋈)
Illia (root.near) (🇺🇦, ⋈)@ilblackdragon·
I’ve shared #NEARIsTheBOS with builders, partners, and Web3 newcomers since last month's launch. The Blockchain Operating System feature everyone is excited about is FastAuth: 5-second, one-time onboarding to a Web3 account with no crypto, no wallet, no seed phrase, no exchanges.
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Sunita Parbhu (sunitap.eth)
Yield Alliance - LVVA Ecosystem@OpenCustody

Qredo 🤝 @cryptoeconlab Qredo is thrilled to join forces with CryptoEconLab, the powerhouse in cryptoeconomic services from @protocollabs! Together, we're taking Qredo Network to new heights with a revolutionary new tokenomics framework, set to launch in the coming weeks🚀📈 Read all about it!👇 qre.do/CryptoEconLab

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