95% of People STILL Prompt ChatGPT-5 Wrong
Understanding the Changes in GPT-5
Introduction to User Experience with GPT-5
- After the launch of ChatGPT-5, many users reported a decline in output quality despite unchanged prompting techniques.
- The core issue lies in OpenAI's fundamental changes to GPT-5's architecture, which affects how previous prompts perform.
Key Updates in GPT-5
Model Consolidation
- OpenAI has consolidated models from multiple options to just three: GPT-5, GPT-5 Thinking Mini, and GPT-5 Thinking.
- This consolidation introduced an "invisible router" that determines which model processes user requests, leading to inconsistent results based on prompt submission.
Improved Instruction Following
- While GPT-5 excels at following explicit instructions due to its training for AI agents, it struggles with vague or poorly constructed prompts.
Tips for Optimizing Outputs with GPT-5
Tip 1: Router Nudge Phrases
- Adding specific phrases at the end of prompts can influence the invisible router to select a higher reasoning model.
- Example: Using "think hard about this" can trigger deeper reasoning compared to vague terms like "important."
Pro Tip for Effective Phrasing
- Three effective nudge phrases identified are:
- "Think hard about this"
- "Think deeply about this"
- "Think carefully"
Additional Resources for Mastering Prompt Engineering
HubSpot’s Free Playbook Recommendation
- For those serious about mastering these techniques, HubSpot offers a free playbook on prompt engineering that emphasizes building systems over one-off prompts.
Verbosity Control Techniques
Tip 2: Controlling Output Length
- Users can control output length by using specific phrases that adjust verbosity settings within the invisible router.
Understanding AI Prompt Optimization
The Importance of Context in Team Communication
- Teams require more than just numerical data; they need context to understand the implications and actions required.
- A concise explanation, ideally 3 to 5 paragraphs, can effectively convey necessary details without overwhelming the audience.
- High verbosity outputs are beneficial for comprehensive documents like project briefs or research summaries.
Project Brief Example: Overhauling AI Strategy
- An example project involves a complete overhaul of Apple's AI strategy, emphasizing the need for detailed breakdowns (600 to 800 words).
- GPT-5 is noted for its improved handling of specific word counts compared to previous models.
Utilizing OpenAI's Prompt Optimizer Tool
- Many users are unaware that OpenAI offers a prompt optimizer tool that enhances prompts for GPT-5.
- The tool provides optimized prompts and allows users to review changes, helping them learn how to write better prompts themselves.
Key Improvements from the Optimizer Tool
- The optimizer consistently adds structure by breaking down complex prompts into distinct sections.
- It eliminates vagueness by ensuring all arguments are based on provided achievements.
- Error handling is enhanced as it reminds users to clarify contradictions or missing information in their prompts.
Free Workaround for Prompt Optimization
- A free alternative involves using a meta prompt with ChatGPT, allowing users to improve their initial prompts effectively.
- This method leverages GPT-5’s ability to critique and enhance its own instructions.
Structuring Prompts with XML Tags
Creating an XML Sandwich
- Using XML tags helps organize instructions clearly, which is crucial given GPT-5's precision in following structured commands.
- Instead of presenting unstructured text, labeling components (e.g., background information, task description, output format) improves comprehension and outcomes.
Practical Application of Structured Prompts
- For instance, instead of dumping all information at once when preparing for an interview, one should clearly define tasks and provide relevant background separately.
The Perfection Loop: Iterative Improvement
Leveraging Self-Critique in GPT Models
- OpenAI suggests utilizing GPT's self-critiquing capabilities by instructing it to create its own definition of excellence before generating responses.
Examples of Iterative Processes
- Market Analysis Report:
- Before drafting, develop an internal rubric for what constitutes a high-quality report and refine until it meets top standards.
- Quarterly Business Review Presentation:
- Create criteria for a perfect QBR outline and iterate until achieving optimal results.
Universal Perfection Loop and Its Applications
Understanding the Universal Perfection Loop
- The universal perfection loop is a method that allows pacing to the end of any prompt, facilitating structured completion of tasks.
- It is particularly effective for complex "zero to one" tasks, such as creating finished documents from scratch or writing production-ready code.