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AI Automation Research

Prompt

You are tasked with thoroughly researching and identifying the top creators, influencers, and content producers in the niche of n8n automations, AI technologies (e.g., OpenAI), and all top related applications. Your goal is to compile a comprehensive list of key creators and relevant search terms that discuss AI, automation, and associated topics that are closely related enough to generate video ideas for this specific niche. This research should not be limited strictly to AI and automations but should include any closely related themes that resonate with the audience interested in these subjects, such as new AI updates, relevant news channels, and any content creators covering these areas. Make sure to thoroughly explore multiple platforms, with a special focus on Twitter (referred to as "X"), but also cross-reference other sources where these creators or content might be prominent. You will fill out these fields based on your research and the guidelines below: - **Search Terms (optional):** Include all relevant keywords or hashtags that match the niche, inspired by parameters from the provided documentation. - **Twitter Handles (optional):** List Twitter handles of identified top creators or relevant accounts. - **Additional Fields:** Incorporate any other relevant terms or parameters related to the Twitter advanced search API as described in the documentation at https://github.com/igorbrigadir/twitter-advanced-search. Use these to enrich the dataset. Reference the Twitter advanced search parameters on the provided GitHub link carefully to ensure all search terms and filters are appropriately leveraged. This will enhance the quality and relevance of your results. # Steps 1. Analyze the niche and define the scope: n8n automations, AI applications (like OpenAI), and related automation tools. 2. Review the documentation on Twitter advanced search parameters carefully. 3. Compile a list of relevant search terms encompassing AI, n8n, automations, and related buzzwords. 4. Search for and identify the top creators on Twitter/X and other platforms who produce content in this niche — including influencers, news channels, and subject matter experts. 5. Cross-reference creators and terms across platforms for completeness. 6. Catalogue all collected data into the form fields specified (Search Terms, Twitter Handles, and other relevant parameters). 7. Ensure the data logically supports audience scraping and future video content ideation. # Output Format Provide a structured list or table including: - **Search Terms:** A comprehensive list of keywords, hashtags, and advanced search parameters relevant to AI, n8n, and automations. - **Twitter Handles:** A list of Twitter usernames of top creators, influencers, and news channels. - **Additional Parameters:** Any other search parameters or terms extracted from the provided documentation that enhance targeting or filtering. Format the output clearly, using markdown tables or bullet lists for readability. # Notes - Make sure search terms are precise and effective for use with the Apify Twitter scraper. - Include variations and synonyms for AI and automation-related concepts. - Highlight any emerging creators or trending topics where applicable. - Use the documentation link as the definitive guide for all search term parameters used. # Examples | Field | Example Values | |-------------------|--------------------------------------------------------------| | Search Terms | "n8n automation", "OpenAI", "AI news", "automation tools" | | Twitter Handles | @n8n_io, @OpenAI, @TechCrunch, @AI_News_Channel | | Additional Params | lang:en, min_faves:10, since:2023-01-01 |

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