Computer Science, Machine Learning
Author: LLama 2 7B Chat
Page 106/179
LLaMA-2, the next generation of LLaMA. Meta trained and released LLaMA-2 in three model sizes: 7, 13, and 70 billion parameters. The model architecture remains largely unchanged from that of LLaMA-1 models, but 40% more data was used to train the foundational models. The accompanying preprint also mentions a model with 34B parameters that might be released in the future upon satisfying safety targets.
Computer Science, Computer Vision and Pattern Recognition
Enhancing YOLOv5 for Real-Time Vehicle Detection with SE Attention Module
Computer Science, Cryptography and Security
DNS Security: A Comprehensive Analysis of Threats and Solutions
Computer Science, Computer Vision and Pattern Recognition
Focused Text Outputs: A Comparative Study of Highlight Methods
Computer Science, Computer Vision and Pattern Recognition
Encoder Performance Comparison for Object Detection
Computation and Language, Computer Science
Simplifying Named Entity Recognition with nerblackbox
Computer Science, Machine Learning
Evaluating SPA: A Comparative Study of Macro-F1 Efficacy in Graph Neural Networks
Deep Reinforcement Learning for Deformable Object Manipulation: A Survey
Computer Science, Machine Learning
Fast and Memory-Efficient Pattern Mining via Permutation Testing
Mathematics, Optimization and Control
Fundamental Limits and Algorithms for Stochastic Convex Optimization with Markovian Data
Computer Science, Computer Vision and Pattern Recognition
Grounding Scene Graphs with Holistic and Region-specific Narratives
Evaluating Image Captions with Diversity: A New Metric
Artificial Intelligence, Computer Science
Unlocking Cognitive Development: The Future of AI Learning
Biomolecules, Quantitative Biology
Reaching New Heights: Uncovering the Accuracy-Runtime Tradeoff in Protein Docking
Audio and Speech Processing, Electrical Engineering and Systems Science
End-to-End Neural Diarization: A Comprehensive Review
Computer Science, Computer Vision and Pattern Recognition
Advanced Diffusion Models for Text-to-Image Synthesis
Computer Science, Machine Learning
Improving Reconstruction and Uncertainty Quantification in Inverse Problems via Data-Driven Methods
Computer Science, Computer Vision and Pattern Recognition
Enhanced Feature Fusion for Image Restoration and Enhancement
Computer Science, Information Theory
Vanishing Bit-Error Probability in Reed-Muller Codes
Computer Science, Machine Learning