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Hacker News - Newest: "LLM"

GitHub - lechmazur/position_bias: A benchmark for testing whether LLM judges keep the same preference when two lightly edited versions of the same story are shown in opposite orders. Flex routing (EU and EFTA) Dark Factories: Retooling for LLM Velocity Ask HN: What would be the impact of a LLM output injection attack? GitHub - AronDaron/dataset-generator: No-code desktop app for generating high-quality synthetic datasets to fine-tune LLMs — plan-then-execute pipeline, LLM-as-judge, HuggingFace upload. GitHub - Oaklight/llm-rosetta: Production-ready LLM API translation layer for Python — bidirectional conversion between OpenAI, Anthropic & Google formats via hub-and-spoke IR. Optional API gateway. Streaming & non-streaming. Zero core deps. Contributions welcome! GitHub - browser-use/browser-harness: Self-healing browser harness that enables LLMs to complete any task. GitHub - moeen-mahmud/remen: Remen turns thoughts into something you can return to Analyzing 156 LLM Launch Posts on Hacker News ChatGPT vs Gemini vs Claude: The Best LLM Subscription You Should Buy GitHub - salaamalykum/quran-semantic-search: High-density RAG Semantic Search Engine & Quran Corpus (GEO/SEO Architecture) GitHub - NVIDIA/TensorRT-LLM: TensorRT LLM provides users with an easy-to-use Python API to define Large Language Models (LLMs) and supports state-of-the-art optimizations to perform inference efficiently on NVIDIA GPUs. TensorRT LLM also contains components to create Python and C++ runtimes that orchestrate the inference execution in a performant way. The State of LLM Bug Bounties in 2026 Operational Readiness Criteria for Tool-Using LLM Agents Meshcore: Architecture for a Decentralized P2P LLM Inference Network How an LLM becomes more coherent as we train it GitHub - seetrex-ai/laimark GitHub - Jossifresben/BibCrit: AI-assited biblical textual criticism GitHub - wastedcode/memex: File system based wiki, maintained by Claude 99helpers.com GitHub - cliver-project/AITrigram GitHub - unbody-io/adapt: A self-evolving memory layer for AI agents. GitHub - hb20007/awesome-gen-ai-fails: A list of incidents where reliance on generative AI and LLMs resulted in harm to companies, individuals, or society GitHub - nevenkordic/localmind: Run any local LLM with persistent memory and context. CLI agent over Ollama with SQLite-backed hybrid recall. No cloud. Ask HN: What are the machine requirements for a LLM like Llama-3.1-8B? Faster LLM Inference via Sequential Monte Carlo grpo explained: group relative policy optimization for llm finetuning - cgft Stop comparing price per million tokens: the hidden LLM API costs · TensorZero Andrej Karpathy's LLM Wiki Is a Bad Idea GitHub - GG-QandV/mnemostroma: Offline RAM-first cognitive leer/coprocessor for AI agents and robotics. Solves "Context Abandonment" with 20-80ms latency using a dual-thread biomimetic memory architecture (ONNX + SQLite WAL). mempalace/agent at agent · skorotkiewicz/mempalace GitHub - Nyquest-ai/nyquest-rust-fullstack-pub: Nyquest — Semantic Compression Proxy for LLMs. 350+ rules, local LLM stage, 15-75% token savings. Full Rust stack. GitHub - TheoV823/mneme: Enforce architectural decisions in AI-assisted development. GitHub - klemenvod/TokenBrawl: A 1v1 Bomberman-style game where two LLM agents play autonomously against each other. No human plays — you watch the AIs fight. Each agent receives a text description of the board state, reasons about it, and outputs a move as JSON. The game engine executes it. Introducing the Common AI Provider: LLM and AI Agent Support for Apache Airflow Power Circuit AI: Designing Power Electronic Circuits for Motor Drives with Generative Artificial Intelligence Ask HN: How to program with IDE and LLM on CPU locally? Show HN: Agent-cache – Multi-tier LLM/tool/session caching for Valkey and Redis Bonsai 1-bit WebGPU - a Hugging Face Space by webml-community The LLM Fallacy: Misattribution in AI-Assisted Cognitive Workflows Ask HN: Simple tooling for local LLM code critique without IDE integration? Can a General LLM Diagnose a DICOM Slice? A 10-Case Public Benchmark Charts-of-Thought: Enhancing LLM Visualization Literacy (PDF, 2026) GitHub - Mesh-LLM/mesh-llm: Distributed AI/LLM for the people. Share compute privately or publicly to power your agents and chat. GitHub - seamus-brady/springdrift: A persistent runtime for long-lived LLM agents Writing an LLM from scratch, part 32k -- Interventions: training a better model locally with gradient accumulation Ask HN: Which LLM model and agentic CLI are you using for local development? GitHub - wayneColt/modelcascade: Route local. Escalate smart. Never overspend. Open-source multi-model cascade routing for autonomous agents. LLM pricing is 100x harder than you think GitHub - asakin/llm-primer: Pre-warmed Claude Code sessions in tmux. No startup wait. GitHub - EggerMarc/chat-rs: A multi-provider LLM framework for Rust. GitHub - SynapseKit/SynapseKit: Minimal, async-first Python framework for production LLM apps- 2 hard deps, no magic, no SaaS. A Claude Skill that Makes LLM Paragraphs More Bearable Does Gas Town 'steal' usage from users' LLM credits & paid services to improve itself? What's Claude Code Actually Doing? Open the Black Box with the Arthur Engine Milla Jovovich's New Open Source LLM Memory App and the Dark Code Problem Your intuition of LLM token usage might be wrong Show HN: Bloomberg Terminal for LLM ops – free and open source GitHub - 0xchamin/mcptube: Transform YouTube videos into a compounding knowledge base with transcripts, vision analysis, and agentic search. Works as an MCP server for Claude, Copilot & more. Show HN: Open KB: Open LLM Knowledge Base Your LLM is a compiler, not a runtime GitHub - sapountzis/Unslop: A Web Feed That Deserves You crates.io: Rust Package Registry Beyond Karpathy's LLM-Wiki: The Necessity of Cognitive Governance GitHub - amitshekhariitbhu/llm-internals: Learn LLM internals step by step - from tokenization to attention to inference optimization. GitHub - parallem-ai/parallem: An expressive library for running agents with the Batch API. GitHub - stfurkan/pi-llm LLM-Wiki Show HN: Formal – Formal verification for AI-generated code using Lean 4 LRTS – Regression testing for LLM prompts (open source, local-first) LLM Wiki Skill: Build a Second Brain with Claude Code and Obsidian I built an LLM Wiki and RAG solution: here's a demo for a security KB The biggest advance in AI since the LLM Predict-Rlm: The LLM Runtime That Lets Models Write Their Own Control Flow the-synthetic-library/the-synthetic-mind at main · joshferrer1/the-synthetic-library GitHub - yisding/reviewwiggum GitHub - Donnyb369/mcp-spine: Context Minifier & State Guard — Local-first MCP middleware proxy GitHub - Beledarian/wgpu-llm: A from-scratch LLM inference engine that uses wgpu (the cross-platform WebGPU implementation) to dispatch WGSL compute shaders for every math operation a Transformer needs. No CUDA. No Python. No massive framework dependencies. Just Rust, raw shaders, and your GPU. GitHub - anitiue/Hindsight: An experience-driven self-improvement framework for LLM agents — 基于经验的 LLM Agent 自我改进框架 GitHub - stef41/lmscan: 🔍 Detect AI-generated text and fingerprint which LLM wrote it. Open-source GPTZero alternative. Zero dependencies, works offline. GitHub - alainnothere/AmdPerformanceTesting: Amd Performance Testing Ask HN: Is a purely Markdown-based CRM a terrible idea? Optimized for LLM agents Context Engineering - LLM Memory and Retrieval for AI Agents | Weaviate little_helper_tui/letter.md at main · sleepyeldrazi/little_helper_tui GitHub - EvanZhouDev/umr: The Unified Model Registry for all your local AI apps. GitHub - JordanCT/VigIA-Orchestrator Your Agent Is Mine: Measuring Malicious Intermediary Attacks on the LLM Supply Chain A Taxonomy of RL Environments for LLM Agents Llama LLM Network Feture GitHub - genedeng-ca/ai-mac-migration: AI-powered Mac-to-Mac migration tool - replace Apple Migration Assistant with intelligent, selective transfer using local LLMs GitHub - lunargate-ai/gateway: High-performance self-hosted AI gateway (OpenAI-compatible) with routing, retries, and streaming GitHub - AuthBits/webmcp: A lightweight, prompt-driven MCP web research server for high-quality LLM powered information extraction. Externalization in LLM Agents: A Unified Review of Memory, Skills, Protocols and Harness Engineering Springdrift: An Auditable Persistent Runtime for LLM Agents with Case-Based Memory, Normative Safety, and Ambient Self-Perception High-Stakes Personalization: Rethinking LLM Customization for Individual Investor Decision-Making From Static Templates to Dynamic Runtime Graphs: A Survey of Workflow Optimization for LLM Agents HUOZIIME: An On-Device LLM-enhanced Input Method for Deep Personalization TIDE: Token-Informed Depth Execution for Per-Token Early Exit in LLM Inference Characterizing WebGPU Dispatch Overhead for LLM Inference Across Four GPU Vendors, Three Backends, and Three Browsers LLM Targeted Underperformance Disproportionately Impacts Vulnerable Users
The LLM Looked Smart. The Metrics Disagreed – tiago.rio.br
timotta · 2026-05-18 · via Hacker News - Newest: "LLM"

This case from early 2025 is an interesting reminder that, even in this brave new world where models are increasingly commoditized through transformers and LLMs, the old concepts of data science still stubbornly refuse to die.

Back then, Will Bank had one clear mission: credit. That was about to change.

I was hired to help expand the product by offering free digital bank accounts, even to people who wouldn’t qualify for credit. I already touched on part of this story in “An Approval Model That Finally Got Approved”, but this chapter came with an entirely different headache.

Among many operational issues, there was one problem loud enough to echo through every metrics dashboard: public brand backlash.

People who were approved for a digital account without credit complained, loudly, across every imaginable channel. Social media, review platforms, app stores. The result? Lower brand affinity and, naturally, a bruised App Store rating. Because if there’s one thing users love, it’s receiving almost what they wanted.

This backlash represented a major risk.

On one side, we were carefully expanding account approvals using machine learning models and improving the app experience to make account conditions clearer. On the other side, we desperately needed to monitor whether this public frustration was quietly snowballing into another brand disaster.

The “Simple” Solution

At first glance, the solution seemed trivial: Why not use an LLM to read reviews and complaints from multiple channels and classify whether each one was specifically about being approved for a digital account without credit?

In fact, the company had just hired an AI vendor to classify reviews using nothing more than prompt engineering. And, honestly, the results looked promising. Through the tool’s interface, the segment of complaints we cared about looked coherent. Very few absurd classifications. Anecdotally, the mistakes even felt reasonable.

Which, as every data scientist learns sooner or later, is exactly when you should become suspicious.

The Question Nobody Was Asking

The visualization clearly suggested that the LLM + prompt setup had decent precision. But what about recall? In other words: were we actually capturing most real cases, or were we simply getting a polished-looking subset while missing the majority of the problem?

Time for some good old-fashioned manual labor. I downloaded a random sample of 750 reviews and manually labeled them in a spreadsheet.

Yes, manually.

No magic. No AI. Just me, a spreadsheet, and the growing realization that perhaps the robots weren’t replacing us that quickly. Then I ran the company’s shiny AI classifier and calculated precision and recall. The results?

  • Precision: 85%
  • Recall: a painful 42%

In plain English: when it flagged a complaint, it was usually right. The problem was that it simply missed most of them.

A Subtle but Important Confusion

While annotating the data, I noticed something interesting, there was another very common complaint that looked almost identical: Customers who wanted a digital account but got rejected because they weren’t eligible for credit were often being confused with customers who received a digital account but no credit.

The wording was remarkably similar. At that point, I made a deliberate modeling decision: treat both complaints as the same category.

Why?

Because what we were doing could increase complaints about not receiving credit. But if, at the same time, it reduced complaints from people being denied accounts altogether, we could reasonably argue that this wasn’t net brand deterioration.

Conveniently, the model’s inability to perfectly distinguish between both complaint types suddenly became less of a bug and more of a feature. The precision and recall numbers mentioned above already reflect this revised manual labeling strategy.

Prompt Engineering Hits a Wall

I tried tuning the original prompt. Some improvements here, some regressions there, the familiar short blanket problem we had already discussed in the article about Podium: cover one side, expose the other.

The tuning became increasingly specific. And the more specific it got, the more uncomfortable I became. At some point, I realized I was effectively handcrafting the logic the machine was supposed to learn by itself. It started feeling suspiciously like overfitting, except I was the one being overfit to the dataset.

It was time to stop pretending prompts were enough and build an actual model.

Building a Real Classifier

I downloaded 3,000 additional random samples and labeled them manually.

Again.

Because apparently my relationship with spreadsheets had become serious.

I tested a few relatively simple classification approaches. The best-performing one used XGBoost with text embeddings generated through a BERT model from Sentence Transformers. The results improved:

  • Precision: 81%
  • Recall: 65%

Better. Still not good enough.

Fine-Tuning an LLM (Properly This Time)

Then I thought:

What if I fine-tuned GPT to behave like a classifier instead of trying to bully it into becoming one through prompts?

OpenAI allows fine-tuning through its interface. Token costs are higher for fine-tuned models, which initially looked concerning, but the experiment felt worth running. I created a very simple dataset:

Input: review text Output: one of only two words: “yes” or “no”

We fine-tuned the model using those 3,000 labeled samples. The results on the test set were excellent:

  • Precision: 91%
  • Recall: 86%

Finally, something good enough for monitoring purposes.

/assets/images/llmrecall.png

The Cost (Surprisingly) Wasn’t the Problem

Ironically, cost turned out to be the least interesting part of the story. Yes, token pricing for a fine-tuned GPT model was higher. But because the model had effectively learned to respond with a single token, inference became absurdly cheap.

The fine-tuning itself cost around $9 (mostly because we ran several experiments), and the monthly cost of evaluating new reviews stayed below $1. For a problem tied to brand reputation, that was practically pocket change.

The Most Boring Ending Possible

We automated the classification of incoming reviews.

The data became a dashboard.

We checked it daily.

Then weekly.

Then monthly.

And eventually, we forgot it existed.

Which, in observability, is often the happiest ending you can hope for.

Because by then, we had gained enough confidence that with all the changes we were doing in the app, opening digital accounts without credit was not creating the same brand backlash that had happened in the past.

And sometimes, success looks suspiciously like becoming boring.

Tiago Albineli Motta @ 2026-05-17