Model Fine-Tuning

This collection explores advanced techniques in refining machine learning models, specifically focusing on the fine-tuning of large language models and other algorithms. The content includes studies on applications ranging from health care predictions and sentiment analysis to enhancing marketing analytics. It covers key strategies such as data augmentation, prompt engineering, and retrieval-augmented generation, demonstrating how these methods can significantly improve model performance across various tasks and sectors.

Fine_Tuning_of_Large Language Models.pptx
How Fireworks AI Achieves 1TB_s+ Throughput for Model Deployment Across Multi-Cloud GPU Infrastructure.pdf
Cyberbullying Detection using Robustly Optimized BERT Pre-training Approach (RoBERTa)
FINE-TUNING OF SMALL/MEDIUM LLMS FOR BUSINESS QA ON STRUCTURED DATA
 
Curriculum: Generative AI for Enterprise Deployment
Training "Prompt Engineering" - Comprendre comment l'IA répond à nos prompts
8 LLM Surveys https://tinyurl.com/bdz8e6fp
L'IA générative dans l'expertise judiciaire
L' I.A. générative dans L'Expertise Judiciaire
Machine Learning Lectures - Optimization - part 2.pdf
Fine-tuning bidirectional encoder representations from transformers for the X social media personality detection
Strid-CNN: moving filters with convolution neural network for multi-class pneumonia classification
Understanding LLMs: Legends, Layers & Magic
Evaluating Prompt-Learning-Based API Review Classification Through Pre-Trained Models
Deep Learning for Natural Language Processing_FDP on 16 June 2025 MITS.pptx
Object Detection Model for African Informal Transportation Modes
AI/ML Infra Meetup | Building Production Platform for Large-Scale Recommendation Applications
AI/ML Infra Meetup | How Uber Optimizes LLM Training and Finetune
第97回 Machine Learning 15minutes! Graniteをファインチューニング するInstructLabのご紹介
Fine-Tuning with GPT-4o POC SVG image Generation