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Beginnt 28 June 2026 07:54

Endet 28 June 2026

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Advanced Techniques and Applications in Prompt Engineering

Master advanced prompt engineering techniques for AI models like GPT, DALL-E, and BERT, covering A/B testing, multilingual design, bias reduction, and ethical considerations for real-world applications.
via Coursera

2947 Kurse


12 weeks, 1 hour a week

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Übersicht

Enhance your skills in prompt engineering with advanced strategies and ethical considerations. This course dives deep into application-specific approaches, offering the tools to optimize and personalize prompts for cutting-edge AI models like OpenAI's GPT, DALL-E, and more.

You will explore advanced topics such as iterative improvement, bias reduction, and ethical prompt design, which are essential for building reliable AI systems. The course focuses on the practical application of advanced techniques, including A/B testing, multilingual prompt design, and multimodal AI models.

Real-world examples and quizzes will ensure learners can immediately apply these strategies to domains like education, coding, and entertainment. What sets this course apart is its ability to merge advanced theory with hands-on exercises, allowing learners to adapt and innovate in the field of prompt engineering.

Critical thinking and ethical awareness are at the core of prompt creation, making this course ideal for anyone working with advanced AI systems. Ideal for professionals seeking to specialize in AI prompt engineering, this course benefits those with a foundational understanding of AI and prompt design.

Learners will develop advanced techniques and gain the confidence to tackle more complex AI-driven projects. This course is part two of a three-course Specialization designed to provide a comprehensive learning pathway in this subject area.

While it delivers standalone value and practical skills, learners seeking a more integrated and in-depth progression may benefit from completing the full Specialization. Copyright © 2024 by John Wiley & Sons, Inc.

All rights reserved. Published by John Wiley & Sons, Inc., Hoboken, New Jersey.

Published simultaneously in Canada. Used by arrangement with John Wiley & Sons, Inc.

Lehrplan

  • Application-Specific Prompt Engineering
  • This module examines how prompt engineering can be tailored for specific applications, including creative writing, education, software development, and entertainment. Learners will discover practical strategies for designing effective prompts and consider ethical implications when guiding AI in diverse domains.
  • Advanced Topics in Prompt Engineering
  • This module delves into advanced strategies for prompt engineering, including integrating user feedback, optimizing prompts through A/B testing, and designing prompts for multilingual and multimodal AI systems. Learners will gain practical skills to enhance AI adaptability and effectiveness across diverse contexts.
  • Prompt Engineering with OpenAI ChatGPT
  • This module introduces learners to effective prompt engineering techniques for leveraging OpenAI's ChatGPT models in content creation. Participants will explore practical applications, ethical considerations, and strategies for maximizing the capabilities of both GPT-3 and GPT-4 in real-world scenarios.
  • Exploring Prompts with ChatGPT
  • This module introduces learners to effective prompt strategies for interacting with ChatGPT, emphasizing contextual understanding, tone management, and ethical considerations. Through real-world examples, learners will discover how to leverage ChatGPT for content creation and educational support. The module also highlights the transformative impact of AI-powered conversational agents.
  • Getting Creative with DALL-E
  • This module introduces learners to DALL-E's innovative approach to generating images from text prompts, delving into the underlying processes of tokenization and embedding. Learners will examine real-world examples, discuss ethical considerations, and explore the future potential of AI-generated dynamic artwork. By the end, participants will gain a foundational understanding of how creative AI models like DALL-E operate and their implications for responsible use.
  • Text Synthesis with CTRL
  • This module introduces learners to Salesforce's Conditional Transformer Language Model (CTRL), focusing on its unique approach to prompt design and content generation. Learners will examine how control codes influence text synthesis, explore practical applications, and consider the ethical implications and limitations of using CTRL in real-world scenarios.
  • Learning Languages with T2T (Tensor2Tensor)
  • This module introduces the Tensor2Tensor (T2T) framework, highlighting its role in natural language processing and deep learning. Learners will explore prompt design, multitask learning, and the adaptability of T2T for various NLP tasks, as well as critically assess its strengths and limitations.
  • Building Blocks with BERT
  • This module introduces learners to BERT, a transformative model in natural language processing, and explores its applications in tasks such as sentiment analysis and named entity recognition. Learners will examine real-world use cases and gain insight into both the strengths and limitations of BERT in practical NLP scenarios.
  • Voice Synthesis with Tacotron
  • This module introduces learners to Tacotron, a neural text-to-speech system, highlighting its architecture, practical applications, and current limitations. Learners will gain insights into how Tacotron enables humanlike voice synthesis and the challenges faced in deploying it in real-world scenarios.
  • Transformers in Music with MuseNet
  • This module introduces learners to MuseNet, an advanced AI model for music generation, highlighting its capabilities in genre blending, prompt effectiveness, and real-world applications. Learners will examine MuseNet's creative outputs, explore its limitations, and discuss the ethical considerations of AI-generated music. The module also considers future directions for AI in the music industry.
  • Generating Images with BigGAN
  • This module introduces learners to BigGAN, a powerful generative adversarial network for high-resolution image creation. You will explore its practical applications in art and design, examine computational and ethical challenges, and consider future advancements in model efficiency and accessibility.
  • Creating Code with Codex
  • This module introduces learners to AI-powered coding tools, focusing on Codex and its transformative impact on software development. You will explore practical use cases, such as rapid prototyping, examine current limitations, and consider future integration with development environments. By the end, you'll understand both the opportunities and challenges of leveraging AI for code generation.

Unterrichtet von

Wiley Skills Network


Fachgebiete

Artificial Intelligence