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AWS enables Parcel Perform to fine-tune Amazon Nova models for 50% cost reduction

AWS has detailed how Parcel Perform, an e-commerce logistics company, successfully fine-tuned Amazon Nova models to improve email data extraction. By leveraging Amazon SageMaker AI and Parameter-Efficient Fine-Tuning (PEFT) with Low-Rank Adaptation (LoRA), Parcel Perform achieved up to 94.77% extraction accuracy, a significant improvement over their baseline. This fine-tuning process also reduced inference latency by over 30% and cut costs by 50%, enabling them to move the solution into production for more efficient operations. AI

IMPACT Demonstrates how fine-tuning cloud-based LLMs can significantly improve accuracy and reduce costs for specialized data extraction tasks.

RANK_REASON Article describes a specific company's use of a cloud provider's AI tools for a specific task, not a new model release or core research.

Read on AWS Machine Learning Blog →

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AWS enables Parcel Perform to fine-tune Amazon Nova models for 50% cost reduction

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  1. AWS Machine Learning Blog TIER_1 Română(RO) · Le Vy ·

    Fine-tune Amazon Nova models for accurate email data extraction

    In this post, you'll learn how fine-tuning Amazon Nova models using Amazon SageMaker AI addresses these specific issues by teaching the models to recognize your exact data patterns, distinguish between similar fields, and process information more efficiently—achieving up to 94.77…