Remove Automation Remove BERT Remove Prompt Engineering
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10 Best Prompt Engineering Courses

Unite.AI

In the ever-evolving landscape of artificial intelligence, the art of prompt engineering has emerged as a pivotal skill set for professionals and enthusiasts alike. Prompt engineering, essentially, is the craft of designing inputs that guide these AI systems to produce the most accurate, relevant, and creative outputs.

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Evaluate large language models for your machine translation tasks on AWS

AWS Machine Learning Blog

Localization relies on both automation and humans-in-the-loop in a process called Machine Translation Post Editing (MTPE). The solution proposed in this post relies on LLMs context learning capabilities and prompt engineering. One of LLMs most fascinating strengths is their inherent ability to understand context.

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Build an automated insight extraction framework for customer feedback analysis with Amazon Bedrock and Amazon QuickSight

AWS Machine Learning Blog

Advantages of adopting generative approaches for NLP tasks For customer feedback analysis, you might wonder if traditional NLP classifiers such as BERT or fastText would suffice. Operational efficiency Uses prompt engineering, reducing the need for extensive fine-tuning when new categories are introduced.

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Generative AI use cases for the enterprise

IBM Journey to AI blog

Automate tedious, repetitive tasks. The quality of outputs depends heavily on training data, adjusting the model’s parameters and prompt engineering, so responsible data sourcing and bias mitigation are crucial. The result will be unusable if a user prompts the model to write a factual news article.

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How To Train Your LLM Efficiently? Best Practices for Small-Scale Implementation

Marktechpost

Fortunately, we can make the task more accessible through automated model selection methods like neural architecture search (NAS) and hyperparameter optimization. While pre-training a model like BERT from scratch is possible, using an existing model like bert-large-cased · Hugging Face is often more practical, except for specialized cases.

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Top ChatGPT Books to Read in 2024

Marktechpost

It provides codes for working with various models, such as GPT-4, BERT, T5, etc., The author teaches how we can save time and money and automate repititive tasks using today’s technology. The Art of Prompt Engineering with ChatGPT This book teaches the art of working with ChatGPT with the help of prompt engineering.

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LLM-as-judge for enterprises: evaluate model alignment at scale

Snorkel AI

Data scientists and SMEs use this ground truth to guide iterations on the LLM-as-judge prompt template. The team may embed some of the SMEs labels and explanations directly in the template as a form of prompt engineering known as few shot learning. Ensure more consistent, automated, and reproducible AI output assessments.

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