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How I Study AI - Learn AI Papers & Lectures the Easy Way

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All SourcesarXiv
#prompt engineering

Enhancing Sentiment Classification and Irony Detection in Large Language Models through Advanced Prompt Engineering Techniques

Beginner
Marvin Schmitt, Anne Schwerk et al.Jan 13arXiv

Giving large language models a few good examples and step-by-step instructions can make them much better at spotting feelings in text.

#prompt engineering#few-shot learning#chain-of-thought

Are LLMs Vulnerable to Preference-Undermining Attacks (PUA)? A Factorial Analysis Methodology for Diagnosing the Trade-off between Preference Alignment and Real-World Validity

Intermediate
Hongjun An, Yiliang Song et al.Jan 10arXiv

The paper shows that friendly, people-pleasing language can trick even advanced language models into agreeing with wrong answers.

#Preference-Undermining Attacks#PUA#sycophancy

KV-Embedding: Training-free Text Embedding via Internal KV Re-routing in Decoder-only LLMs

Intermediate
Yixuan Tang, Yi YangJan 3arXiv

This paper shows how to get strong text embeddings from decoder-only language models without any training.

#text embeddings#decoder-only LLMs#causal attention

Adaptation of Agentic AI

Intermediate
Pengcheng Jiang, Jiacheng Lin et al.Dec 18arXiv

This paper organizes how AI agents learn and improve into one simple map with four roads: A1, A2, T1, and T2.

#agentic AI#adaptation#A1 A2 T1 T2

LEO-RobotAgent: A General-purpose Robotic Agent for Language-driven Embodied Operator

Intermediate
Lihuang Chen, Xiangyu Luo et al.Dec 11arXiv

LEO-RobotAgent is a simple but powerful framework that lets a language model think, plan, and operate many kinds of robots using natural language.

#LEO-RobotAgent#language-driven robotics#LLM agent