Capability
15 artifacts provide this capability.
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Find the best match →via “prompt-engineering-technique-aggregation”
A curated list of Generative AI tools, works, models, and references
Unique: Treats prompt engineering as a first-class capability with dedicated resources and subcategories, rather than burying it within LLM documentation. Recognizes that prompt design is a critical skill for LLM application development, separate from model selection or fine-tuning
vs others: More comprehensive than single-model documentation (OpenAI's prompt engineering guide) by covering techniques across multiple models, but less interactive than specialized platforms (Prompt.com, PromptBase) which provide prompt marketplaces and community sharing
via “comprehensive prompt engineering resource”
🐙 Guides, papers, lessons, notebooks and resources for prompt engineering, context engineering, RAG, and AI Agents.
Unique: This guide uniquely combines static documentation with interactive notebooks and research references, making it a versatile learning tool.
vs others: Unlike other resources, this guide offers a structured approach to mastering prompt engineering with a focus on practical applications and advanced techniques.
via “prompt engineering with structured instruction design”
本项目是一个面向小白开发者的大模型应用开发教程,在线阅读地址:https://datawhalechina.github.io/llm-universe/
Unique: Provides executable prompt engineering examples showing before/after comparisons of instruction quality, demonstrating how specific design choices (role definition, context framing, output format) improve response quality; includes Chinese language prompt examples for non-English applications
vs others: More practical than theoretical prompt engineering papers because it shows runnable examples; more comprehensive than single-technique tutorials because it covers multiple instruction patterns; more accessible than research papers because it uses beginner-friendly language and Jupyter notebooks
via “prompt-engineering-workflow-methodology-reference”
This repository contains a hand-curated resources for Prompt Engineering with a focus on Generative Pre-trained Transformer (GPT), ChatGPT, PaLM etc
Unique: Provides structured workflow methodology for prompt engineering rather than isolated technique tips, documenting the iterative design-test-refine cycle with evaluation frameworks
vs others: More systematic than scattered blog posts because it provides end-to-end workflow; more practical than academic papers because it focuses on actionable methodology rather than theoretical foundations
via “system prompt and instruction generation”
Assistant for creating GPT-based assistants.
Unique: Integrates prompt engineering best practices (role clarity, output formatting, constraint specification) into the generation process itself, rather than producing raw text that requires manual refinement. The builder suggests structural improvements and validates that prompts include necessary elements like tone definition and output format specification.
vs others: More comprehensive than simple prompt templates because it generates context-specific prompts tailored to the user's domain, while more practical than hiring prompt engineers by automating the synthesis of best practices into coherent instructions.
GPT-4.1 Mini is a mid-sized model delivering performance competitive with GPT-4o at substantially lower latency and cost. It retains a 1 million token context window and scores 45.1% on hard...
Unique: Learns instruction-following patterns from diverse task examples during training, enabling generalization to novel instructions without task-specific fine-tuning, and supporting complex nested instructions through attention-based instruction tracking
vs others: More flexible instruction following than models trained on narrow task distributions, and supports more complex multi-step instructions than simpler models like GPT-3.5 Turbo
via “comprehensive prompt design framework”
Guide and resources for prompt engineering.
Unique: The guide emphasizes an iterative and modular approach to prompt design, which is less common in other resources that may focus solely on static examples.
vs others: More comprehensive and structured than most prompt engineering resources, which often lack depth in practical application.
via “instruction-following-with-system-prompts”
Granite-4.0-H-Micro is a 3B parameter from the Granite 4 family of models. These models are the latest in a series of models released by IBM. They are fine-tuned for long...
Unique: Granite 4.0 Micro's fine-tuning includes explicit instruction-following optimization using IBM's proprietary instruction dataset focused on enterprise and technical tasks, improving adherence to complex multi-step instructions compared to base models without specialized instruction tuning.
vs others: More reliable instruction-following than generic 3B models due to enterprise-focused training; comparable to Llama 2 Instruct for instruction adherence but with lower inference cost and smaller model size.
via “agent prompt engineering and instruction design”
A book about building AI agents with tools, memory, planning, and multi-agent systems.
Unique: Treats prompt engineering as a systematic discipline with patterns for role definition, constraint encoding, and output formatting rather than ad-hoc trial-and-error
vs others: More agent-focused than generic prompt engineering guides because it addresses multi-step reasoning, tool use, and error recovery in prompts
via “prompt-technique-learning”
via “systematic-prompt-engineering-instruction”
via “prompt engineering technique examples”
via “structured-prompt-engineering-curriculum”
via “agent prompt and instruction management”
via “prompt-engineering-abstraction”
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