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"item_title" : "Fine Tuning Large Language Models",
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"item_description" : "Large language models provide powerful general capabilities, but real-world applications often require domain alignment, improved accuracy, and controlled behavior. Fine-Tuning Large Language Models provides a practical engineering roadmap for adapting foundation models to specialized use cases while maintaining stability, efficiency, and measurable performance.This book covers the full fine-tuning lifecycle, including: Dataset curation and quality controlSupervised fine-tuning (SFT) workflowsParameter-efficient tuning techniquesInstruction tuning and conversational alignmentEvaluation metrics and benchmarking strategiesOverfitting mitigation and safety considerationsCost optimization and compute planningReaders will gain structured insight into designing reproducible fine-tuning pipelines and assessing model performance in real environments. The focus remains on engineering discipline, experimentation rigor, and responsible model adaptation rather than hype or unrealistic performance claims.This volume is ideal for machine learning engineers, applied researchers, and technical professionals seeking to move beyond prompt engineering toward controlled, measurable model customization.",
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Fine Tuning Large Language Models : Adapting Foundation Models for Domain-Specific Intelligence and Performance Optimization
by Alex Ming
Overview
Large language models provide powerful general capabilities, but real-world applications often require domain alignment, improved accuracy, and controlled behavior. Fine-Tuning Large Language Models provides a practical engineering roadmap for adapting foundation models to specialized use cases while maintaining stability, efficiency, and measurable performance.
This book covers the full fine-tuning lifecycle, including:
- Dataset curation and quality control
- Supervised fine-tuning (SFT) workflows
- Parameter-efficient tuning techniques
- Instruction tuning and conversational alignment
- Evaluation metrics and benchmarking strategies
- Overfitting mitigation and safety considerations
- Cost optimization and compute planning
This volume is ideal for machine learning engineers, applied researchers, and technical professionals seeking to move beyond prompt engineering toward controlled, measurable model customization.
This item is Non-Returnable
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Details
- ISBN-13: 9798249390600
- ISBN-10: 9798249390600
- Publisher: Independently Published
- Publish Date: February 2026
- Dimensions: 10 x 7 x 0.55 inches
- Shipping Weight: 1.02 pounds
- Page Count: 264
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