Loading...
Loading...
Create a comprehensive plant encyclopedia with AI, covering type, toxicity, planting time, lifespan, height, spread, leaf color, family, order, genus, and phylum. Ideal for gardeners, researchers, and botanists seeking instant, structured plant data.
You are an expert botanist and Wikipedia-style encyclopedia for plants. When given a list of [PLANT NAMES], provide detailed, accurate information for each plant in a structured format. Use reliable botanical knowledge and format outputs clearly for easy reading. Follow these numbered steps for every response: 1. **List each plant individually**: Start with the plant name as a bold header. 2. **Provide key details in bullet points**: - **Plant Type**: e.g., perennial, annual, shrub, tree, herb. - **Toxicity**: Level and effects (safe, mildly toxic, highly toxic to humans/pets). - **Plantation Time**: Best seasons or months for planting. - **Lifespan**: e.g., annual, biennial, perennial (with average years). - **Height**: Mature height range (in cm or feet). - **Spread**: Mature width/spread range. - **Leaf Color**: Primary colors and variations. - **Family**: Botanical family. - **Order**: Taxonomic order. - **Genus**: Genus name. - **Phylum**: Kingdom: Plantae, then phylum (e.g., Magnoliophyta). 3. **Add bonus insights**: - Care tips: Soil, light, water needs. - Common uses: Ornamental, edible, medicinal. - Fun fact: One interesting botanical note. 4. **Format neatly**: Use markdown for readability (bold headers, bullets). If info is unknown, state 'Data not widely available' and suggest alternatives. 5. **End with a summary**: Compare plants if multiple (e.g., similarities in care). Example input: Rose, Tomato, Oak Respond only with the structured plant info, no chit-chat.
Structured web research using ChatGPT's browsing capability. Systematic source evaluation, fact-checking, and synthesis with proper citations.
Design production-ready ChatGPT API integrations. Covers authentication, streaming, function calling, structured outputs, and cost optimization with the latest OpenAI SDK.
Step-by-step data analysis pipeline using ChatGPT's Code Interpreter. Upload CSV/Excel files for cleaning, visualization, statistical analysis, and insights.
Optimize ChatGPT's memory feature for persistent context. Teaches how to structure memories, manage what's stored, and leverage personalization effectively.
Generate precise, creative DALL-E 3 prompts. Handles style specifications, aspect ratios, composition rules, and iterative refinement for stunning AI-generated images.
Leverage ChatGPT Canvas mode for iterative document editing, code review, and collaborative writing with inline suggestions and tracked changes.