Challenges of GoHighLevel AI and How to Overcome Them
GoHighLevel has integrated AI tools to enhance marketing automation, content creation, and customer engagement. While powerful, its AI features come with their own set of challenges. Here's a look at the key issues and strategies to overcome them: Inaccurate or Generic AI Content Challenge: AI-generated messages, emails, or funnel copy can sometimes sound generic, off-brand, or inaccurate. Solution: Always customize AI outputs. Use AI as a starting point, not the final version. Provide detailed prompts and brand-specific inputs to help the AI generate more relevant content. Limited Context Awareness Challenge: The AI may not fully understand a lead’s journey or history, leading to responses that lack personalization. Solution: Train your workflows to include CRM data, lead tags, and custom variables. The more context you feed into the prompt or automation, the better the AI performs. Over-reliance on AI Responses in Live Chat Challenge: AI chatbots may misunderstand complex queries or give incorrect answers. Solution: Use hybrid setups—AI for FAQs and human handoff for complex issues. Monitor conversations regularly and improve prompts based on real user behavior. Prompt Management and Maintenance Challenge: Poorly written prompts lead to poor results, and updating prompts across multiple automations can be tedious. Solution: Create a prompt library or template system. Use centralized documentation and naming conventions so prompts are easy to update and track. Lack of Reporting and Feedback Loops Challenge: It's hard to measure the direct performance of AI-driven tasks or iterate based on user feedback. Solution: Set KPIs for AI tasks (e.g., response rate, engagement time). Gather user feedback, A/B test responses, and use performance data to refine AI behavior. Let's share our experiences as far as gohighlevel AI is concerned.