Project Preparation with AI: From Idea to Documentation
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Read this article: https://vibecode.morecil.ru/en/kak-pisat-kod-s-ii/%D0%BF%D0%BE%D0%B4%D0%B3%D0%BE%D1%82%D0%BE%D0%B2%D0%BA%D0%B0-%D0%BF%D1%80%D0%BE%D0%B5%D0%BA%D1%82%D0%B0-%D1%81-%D0%BF%D0%BE%D0%BC%D0%BE%D1%89%D1%8C%D1%8E-%D0%B8%D0%B8-%D0%BE%D1%82-%D0%B8%D0%B4%D0%B5%D0%B8-%D0%B4%D0%BE-%D0%B4%D0%BE%D0%BA%D1%83%D0%BC%D0%B5%D0%BD%D1%82%D0%B0%D1%86%D0%B8%D0%B8-1/
Work in my current project context.
Create an implementation plan for this stack:
1) what to change
2) which files to edit
3) risks and typical mistakes
4) how to verify everything works
If there are options, provide "quick" and "production-ready". How to use
- Copy this prompt and send it to your AI chat.
- Attach your project or open the repository folder in the AI tool.
- Ask for file-level changes, risks, and a quick verification checklist.
The most important stage: Preparation of the project
** Target of the phase** Ensure the exact match of the generated code to the original design, minimize the number of iterations and prevent uncontrolled proliferation of functionality.
Problem in the absence of training
- Build an online store leads to a typical solution based on the most frequent patterns in AI training data.
- AI applies “standard” stack and architecture, ignoring the limitations of the project.
- Result: 5-15 iterations of refinements, loss of time, deviation from MVP, decreased motivation.
Solution: Automated training through AI In 2026, the entire stage of analysis and documentation can be delegated to AI offline. One request provides:
- market and niche analysis
- comparison
- target audience definition
- mVP specification
- ready-made Markdown documents
Recommended start request (template)
Task: fully autonomous preparation of the project "[short name]".
Follow the following steps:
1. Niche analysis:
- market volume (global / RF / CIS, forecast for 2026-2030)
Key trends and growth drivers
Seasonality, risks, barriers to entry
2. Competitive analysis:
5-8 major players (local + global)
strengths, weaknesses, unique features
UX/UI features that can be taken/improved
3. Target audience:
Demography, psychography, pain, solvency
4. MVP specification:
- mandatory pages/screens
- must-have functions
Explicit exclusions (what not to do in v1)
5. Technical limitations and preferences:
Priority of the mobile version
- allowable stack (or wishes)
- budget/time frame
6. Generate files in Markdown format:
- PROJECT.md (the structure according to the template below)
- Competitors. md
FEATURES.md (templates for 3-5 key features)
AGENTS.md (AI Rules: Code Style, Prohibitions, Limits)
PROJECT.md format:
## [Name of the project]
## Description
...
## Target audience
...
MVP functionality
...
## Exceptions v1
...
## Technical requirements
...
Structure of basic documents (recommended set)
docs/PROJECT.md– the main document of the projectdocs/COMPETITORS.md– Market and Competitor Analysisdocs/FEATURES.md- Feature specifications (one per section)docs/AGENTS.md- Code generation rules (limitations, style, prohibitions)docs/ARCHITECTURE.md- directory and stack structure (generated later)README.md- Start and Environment Instructions
The process after receiving documents from AI
- Read and make clarifications (for example: “remove registration”, “add support for the Russian language in prints”).
- Ask the AI to update the files for clarifications.
- Save to the repository in the
docs/folder.code
Context: PROJECT.md and AGENTS.md attached. [Inserting content or linking files] Task:.
**Results of the automated approach**
- Reducing iterations from 8-15 to 1-3 per feature
- Fixing MVP borders to prevent scope creep
- Full Context for AI → Generating Code Corresponding to Design
- The ability to return to the project in months without losing knowledge
**Withdrawal**
Project preparation (analysis + documentation) is a stage that can be almost fully automated in 2026.
This gives the maximum ROI from using AI: less time for refinements, more time for implementation and iteration in essence.