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📊 Formal Semantics

Logic, Model Theory, Compositional Meaning, Type Theory

A Hacker’s Guide to Bitcoin: Exploring Bitcoin by Command Line - Part 1
bitcoin.org·1h·
Discuss: DEV
🍎Macos
How enterprise leaders should prepare for the quantum future
nordot.app·5h
🎲Bayesian Cognition
NemoPresetExt another update.
github.com·3h·
Discuss: r/SillyTavernAI
🔍Content discovery
Classification of Average Crystalline Topological Superconductors through a Generalized Real-Space Construction
arxiv.org·1d
🧮Information theory
☀️ AI Agent Weather Bot – V2.0 Release Notes + Reflections
alexcorradi.bearblog.dev·1d
🤖AI
Living with LLMs
matiasklemola.com·1d·
Discuss: Hacker News, r/programming
🎨Computational Creativity
The Hidden Behavior of C# Records
dev.to·1d·
Discuss: DEV
✅Productivity
ff4ERA: A new Fuzzy Framework for Ethical Risk Assessment in AI
arxiv.org·1d
🎲Bayesian Cognition
MetaExplainer: A Framework to Generate Multi-Type User-Centered Explanations for AI Systems
arxiv.org·2d
🔄Transformers
Taming Eventual Consistency-Applying Principles of Structured Concurrency to Distributed Systems
dev.to·1d·
Discuss: DEV
📝NLP
UTF-16 to UTF-8 in Javascript
dev.to·1d·
Discuss: DEV
📡Information Theory
AI-Based Measurement of Innovation: Mapping Expert Insight into Large Language Model Applications
arxiv.org·1d
🎨Computational Creativity
Cognitive Loop via In-Situ Optimization: Self-Adaptive Reasoning for Science
arxiv.org·16h
🎲Bayesian Cognition
7 Upcoming JavaScript Features to Watch in 2025 🚀
dev.to·3d·
Discuss: DEV
📝NLP
FROM MILITARY TYPIST TO FULL-TIME SOFTWARE ENGINEER: HOW I BECAME A DEVELOPER
dev.to·3h·
Discuss: DEV
📝NLP
Patho-AgenticRAG: Towards Multimodal Agentic Retrieval-Augmented Generation for Pathology VLMs via Reinforcement Learning
arxiv.org·1d
📝NLP
Molecular Processes as Quantum Information Resources
arxiv.org·1d
🧮Information theory
Getting out of the Big-Muddy: Escalation of Commitment in LLMs
arxiv.org·1d
🎲Bayesian Cognition
Register Anything: Estimating "Corresponding Prompts" for Segment Anything Model
arxiv.org·1d
🎲Bayesian Cognition
Learning more efficiently
reddit.com·1d·
Discuss: r/AskProgramming
✅Productivity
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