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loaderchips

11 karmajoined vor 2 Jahren

Submissions

Show HN: Motif Atlas – recurring patterns behind complex systems

nikitph.github.io
9 points·by loaderchips·vor 15 Tagen·2 comments

Show HN: Threshold Concepts in CS – ideas that permanently change how you think

github.com
3 points·by loaderchips·letzten Monat·0 comments

Show HN: Reward Is Not Reinforcement Until Admitted

github.com
1 points·by loaderchips·vor 2 Monaten·0 comments

Show HN: YieldOS-Lite – A simulator for LLM inference control-plane governance

github.com
2 points·by loaderchips·vor 2 Monaten·0 comments

[untitled]

1 points·by loaderchips·vor 2 Monaten·0 comments

[untitled]

1 points·by loaderchips·vor 6 Monaten·0 comments

Generative Intuition

nikitph.medium.com
2 points·by loaderchips·vor 6 Monaten·0 comments

Why “negative vectors” can't delete data in FAISS – but weighted kernels can

github.com
21 points·by loaderchips·vor 7 Monaten·4 comments

Transformers Must Hallucinate

medium.com
3 points·by loaderchips·vor 7 Monaten·0 comments

comments

loaderchips
·vor 4 Tagen·discuss
I Have always found that acronyms are not the problem. They are necessary. However they become a problem when a lot of people start shoehorning them as attention targets instead of using them naturally in flow.
loaderchips
·vor 4 Tagen·discuss
dont pay any attention to the negative comments. u have done a good project.
loaderchips
·vor 10 Tagen·discuss
I like claude but they are not making it easy to keep that emotion. I am not sure if i will be their customer for long
loaderchips
·vor 15 Tagen·discuss
can u be more specific please
loaderchips
·letzten Monat·discuss
Mcp works because it exposes primitives to agentic Loop and makes dynamic calls possible which would otherwise require very elaborate deterministic algorithms. I like to think of every mcp tool as a co-ordinate Axis. The more you have the more complex paths your agentic loops can traverse. So while that protocol is a wrapper and can surely go extinct something better with similar abstraction will show up
loaderchips
·vor 2 Monaten·discuss
It's beautiful how the human mind can take something very obvious but overlooked and make it into this fantastic innovation. Fab stuff.
loaderchips
·vor 4 Monaten·discuss
Very well put. I love Claude but anthtopic as a company sucks.
loaderchips
·vor 6 Monaten·discuss
TL;DR

The Problem: When your AI fails, "the algorithm did it" won't fly. Insurance, courts, and regulators need a human name. The Pattern: Ships got captains. Bridges got licensed engineers. Planes got pilots. Medicine got attending physicians. Same reason: you can't punish "the team." The Solution: System Liability Engineer (SLE) = one person who understands the system, has veto power, signs their name, and faces career consequences if it causes serious harm. The Timeline: Insurance exclusions already at 28%. Courts asking "who was responsible?" by 2026. Mandatory by 2030. You can get ahead or get dragged. The Litmus Test: Ask them: "If this system causes serious harm, are you prepared to explain it publicly and accept being fired?" If not "yes," they're not SLE. Why It Works: AI can fake text, images, and code. It can't fake: years building reputation, a specific human body signing documents, finite career at stake, real legal consequences. What To Do: Name one person SLE for your highest-stakes AI system this week. Give them veto power in writing. Have them map "who gets hurt, how badly." That's it—you're 80% there. The Real Reason: When making truth-claims costs nothing, only institutions grounded in irreversible human cost survive. The SLE is that cost.
loaderchips
·vor 7 Monaten·discuss
Thank you for the thoughtful comment. Your questions are valid given the title, which I used to make the post more accessible to a general HN audience. To clarify: the core distinction here is not kernelization vs kNN, but field evaluation vs point selection (or selection vs superposition as retrieval semantics). The kernel is just a concrete example.

FAISS implements selection (argmax ⟨q,v⟩), so vectors are discrete atoms and deletion must be structural. The weighted formulation represents a field: vectors act as sources whose influence superposes into a potential. Retrieval evaluates that field (or follows its gradient), not a point identity. In this regime, deletion is algebraic (append -v for cancellation), evaluation is sparse/local, and no index rebuild is required.

The paper goes into this in more detail.
loaderchips
·vor 9 Monaten·discuss
not sure why i m getting downvoted. Would love to have a technical discussion on the validity of my suggestions.
loaderchips
·vor 9 Monaten·discuss
Great work guys, how about we replace the global encoder with a Mamba (state-space) vision backbone to eliminate the O(n²) attention bottleneck, enabling linear-complexity encoding of high-resolution documents. Pair this with a non-autoregressive (Non-AR) decoder—such as Mask-Predict or iterative refinement—that generates all output tokens in parallel instead of sequentially. Together, this creates a fully parallelizable vision-to-text pipeline, The combination addresses both major bottlenecks in DeepSeek-OCR.