Manasvi Kapoor

220 posts

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Manasvi Kapoor

Manasvi Kapoor

@void_exception

Building @thezerodrive

Delhi Se unió Nisan 2024
57 Siguiendo28 Seguidores
Manasvi Kapoor retuiteado
4nzn
4nzn@paoloanzn·
we cracked it. the cch= signing system in claude code is fully reverse engineered - all credits for the work go to @ssslomp who did an amazing re work now any opensource client can let users actually use the anthropic subscription they already paid for. with whatever tool they want already merged into free-code. third party clients can generate valid cch= hashes now, no official binary needed the "native attestation layer" lasted about a day lol
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4nzn@paoloanzn

CAREFUL: anthropic built a signature system into claude code. every API request gets signed with a cch= hash thats computed in compiled zig code if you recompile the client yourself it just sends zeros instead. they can instantly tell its not legit right now you literally can't use your anthropic sub on ANY third party tool. only official claude code or pay for api credits separately currently decompiling the official binary to reverse this - would be huge for all third party clients like opencode, openclaw etc to fully bypass anthropic enforcement and actually use the tokens you're already paying for

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Manasvi Kapoor@void_exception·
Just migrated our stack from vercel to cloudflare Feels like a burden off the shoulders
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Célia
Célia@pariscestchiant·
i need someone to lend me $5,000,000 so i can buy helm(.)com our current domain is helmkit . com and im tired of people thinking its called helmkit it’s called helm i critically need a better domain name
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Manasvi Kapoor@void_exception·
@figma has so much potential to be such a great software both for designers and developers But for now, its just infuriating smtimes to use as a dev
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Célia
Célia@pariscestchiant·
spent 3 hours making a progress icon today ama
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Aurora Scharff
Aurora Scharff@aurorascharff·
What are you struggling with in Next.js right now? I work on Next.js developer experience at Vercel. Want to know what actually trips people up so I can help fix it and create content around it. Drop your pain points.
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Manasvi Kapoor@void_exception·
@chatgpt21 It's arguably that instead of getting spoilt there's a high chance the models themselves will get poisoned overtime inevitably with the test data
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Chris
Chris@chatgpt21·
WOW! Models preform HORRIBLY on ARC AGI 3 Gemini 3.1 pro 0.37% GPT 5.4 (High) 0.26% Opus 4.5 (Max) 0.25% I wonder how long It’ll take for this benchmark to be solved
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Manasvi Kapoor retuiteado
Daniel Hnyk
Daniel Hnyk@hnykda·
LiteLLM HAS BEEN COMPROMISED, DO NOT UPDATE. We just discovered that LiteLLM pypi release 1.82.8. It has been compromised, it contains litellm_init.pth with base64 encoded instructions to send all the credentials it can find to remote server + self-replicate. link below
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Célia
Célia@pariscestchiant·
so i’m just a crm entry to you after all huh?
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Manasvi Kapoor
Manasvi Kapoor@void_exception·
Okay assume is this way A model can understand what a word, a sentence or a paragraph means, but contextually It never actually see's the exact letters That's what tokenization does It converts words, sentences and even punctuations with context to each other as set of numbers proceedings.neurips.cc/paper_files/pa… Highly recommend this for a bit more information about how tokenization and attention mechanism works in LLMs It's a great read and will tell you why llms are inherently flawed for questions like "How many rs in strawberry", they never see the word strawberry as a word with letter but would probably see it as a sequence of numbers like 2948489393934947 with no correlation to the letter "r"
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Josh Hamilton
Josh Hamilton@nearbycoder·
@void_exception @opencode I was thinking the problem would have been fixed with this bullet point - Self-evolution - do a task > check results > fix mistakes > try again
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OpenCode
OpenCode@opencode·
MiniMax M2.7 available in Go - Better at complex tasks over M2.5 - Fast - give it a plan and it runs with it - Self-evolution - do a task > check results > fix mistakes > try again
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Josh Hamilton
Josh Hamilton@nearbycoder·
@opencode why are we back to these trivial problems with models?
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Ayushi☄️
Ayushi☄️@iyoushetwt·
Frontend has screenshots. Backend has… what? How do backend developers show proof of work?
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Manasvi Kapoor
Manasvi Kapoor@void_exception·
I’m leaving the AI Impact Summit with fewer questions about models and more questions about system ownership. The most interesting conversations this week weren’t about capability. They were about responsibility. Who owns the output of an AI system? Who audits it? Who is accountable when automation becomes decision-making? As AI moves from assistance to autonomy, the technical challenge changes. It’s no longer about making systems smarter. It’s about making them explainable, observable, and governable. That shift is subtle, but it’s massive. Because intelligence without accountability does not scale inside enterprises. What stood out most this week was the seriousness of teams thinking about this early. Not how to ship faster. But how to ship responsibly. The summit may be ending. But the real engineering challenge is just beginning. Building systems that can be trusted, not just admired. #ResponsibleAI #EngineeringLeadership #AIInfrastructure #FuturixAI
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Manasvi Kapoor
Manasvi Kapoor@void_exception·
The final two days of the AI Impact Summit were less about presentations and more about practical questions. The conversations shifted toward real deployment challenges. Documentation bottlenecks. Legacy systems. Integration into existing workflows without breaking stability. One thing became clear. AI adoption does not stall because models lack intelligence. It stalls because infrastructure struggles with reality. Across discussions with delegates, the recurring theme was operational friction. Static documents that slow down processes. Manual verification loops. Data locked inside PDFs and scanned records. Demonstrating intelligent OCR powered by Shivaay was less about showcasing capability and more about solving a concrete problem. Turning documents into structured, usable data inside real workflows. What stood out over these two days is that production AI is no longer experimental. It has to coexist with legacy environments, compliance requirements, and imperfect data. The next phase of AI will not reward the smartest model. It will reward systems that handle edge cases, drift, and scale without losing reliability. The summit conversations are ending. The architectural work is just beginning. #EngineeringLeadership #AIImpactSummit
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