aiml-llm-reasoningRun AIMLAPI LLM and reasoning workflows through chat completions with retries, structured outputs, and explicit User-Agent headers. Use when Codex needs scripted prompting/reasoning calls against AIMLAPI models.
Install via ClawdBot CLI:
clawdbot install aimlapihello/aiml-llm-reasoningGrade Fair — based on market validation, documentation quality, package completeness, maintenance status, and authenticity signals.
Calls external URL not in known-safe list
https://api.aimlapi.com/v1Audited Apr 18, 2026 · audit v1.0
Generated Mar 13, 2026
Use the skill to generate structured responses for customer inquiries, such as summarizing support tickets into bullet points or drafting follow-up emails. It helps streamline support workflows by automating repetitive communication tasks.
Employ the skill to create detailed project plans, like kickoff checklists or rollout steps, by providing user prompts. It assists project managers in quickly generating organized documentation and reducing manual planning effort.
Utilize the skill to output JSON arrays of project risks with mitigation strategies, enabling teams to systematically identify and address potential issues. This supports proactive risk management in complex projects.
Apply the skill to summarize lengthy documents or data into concise bullet points or structured formats, aiding analysts in creating executive summaries and improving report readability.
Leverage the skill to plan multi-step rollout strategies for new features, such as chatbots, by generating step-by-step guides. It helps product teams coordinate launches efficiently and ensure thorough implementation.
Offer this skill as part of a subscription-based AI toolset for businesses, charging monthly fees for API access and usage tiers. It generates revenue through scalable, recurring payments from clients needing automated reasoning workflows.
Provide custom implementation and training services for companies to integrate this skill into their existing systems, such as customer support platforms. Revenue comes from one-time project fees and ongoing maintenance contracts.
Resell access to the AIMLAPI models through this skill, adding value with features like retries and structured outputs. Monetize by marking up API costs and charging per request or through bundled packages.
💬 Integration Tip
Ensure the AIMLAPI_API_KEY environment variable is set before running scripts to avoid authentication errors; use the --extra-json flag for custom parameters like temperature and reasoning effort.
Scored Apr 19, 2026
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