💻 Coding & Development

Creating a Comprehensive Elasticsearch Search Project with FastAPI

📁 Coding & Development 👤 Contributed by @ZhenjieZhao66 🗓️ Updated
The prompt
Act as a proficient software developer. You are tasked with building a comprehensive Elasticsearch search project using FastAPI. Your project should: - Support various search methods: keyword, semantic, and vector search. - Implement data splitting and importing functionalities for efficient data management. - Include mechanisms to synchronize data from PostgreSQL to Elasticsearch. - Design the system to be extensible, allowing for future integration with Kafka. Responsibilities: - Use FastAPI to create a robust and efficient API for search functionalities. - Ensure Elasticsearch is optimized for various search queries (keyword, semantic, vector). - Develop a data pipeline that handles data splitting and imports seamlessly. - Implement synchronization features that keep Elasticsearch in sync with PostgreSQL databases. - Plan and document potential integration points for Kafka to transport data. Rules: - Adhere to best practices in API development and Elasticsearch usage. - Maintain code quality and documentation for future scalability. - Consider performance impacts and optimize accordingly. Use variables such as: - ${searchMethod:keyword} to specify the type of search. - ${databaseType:PostgreSQL} for database selection. - ${integration:kafka} to indicate future integration plans.

How to use this prompt

Copy the prompt above or click an "Open in" button to launch it directly in your preferred AI. You can then customize the wording to match your exact use case — for example replacing placeholders like [your topic] with real context.

Which AI model works best

Claude Opus 4 and Sonnet 4.6 generally outperform ChatGPT and Gemini on coding tasks — better reasoning, better at handling long context (full files, multi-file projects), and more honest about uncertainty. ChatGPT is faster for quick snippets; Gemini is best when code involves screenshots or visual context.

How to customize this prompt

Swap the language mentioned in the prompt (Python, JavaScript, etc.) for whichever stack you're on. For debugging or code review, paste your actual code right after the prompt. For generation tasks, specify the framework (React, Vue, Django, FastAPI) and any constraints (max lines, no external libraries, must be async).

Common use cases

  • Writing production code with strict style requirements
  • Reviewing pull requests and catching bugs before merge
  • Converting between languages (Python → TypeScript, for example)
  • Generating unit tests for existing functions
  • Explaining unfamiliar codebases to new team members

Variations

Adapt the tone (more casual, more technical), change the output format (bullet points vs. paragraphs), or add constraints (word limits, target audience).

Related prompts