A 5-Step AISO Action Plan for Improving AI Visibility
NONoah MoscoviciA 5-Step AISO Action Plan for Improving AI Visibility
From Data Overload to Action Plan
For many SEO and Content Managers, the current landscape of AI search feels like a familiar problem with a new name. You have access to data showing your brand is underperforming in AI-generated answers. You see competitors being cited by ChatGPT, Google AI Overviews, and Perplexity for key topics, while your brand is nowhere to be found. The data confirms the problem, but it doesn't provide a clear process to fix it.
This gap between insight and execution is where AI visibility is won or lost. Simply monitoring your AI share of voice is not a strategy. To secure your brand’s place in the new search paradigm, you need a repeatable framework for moving from diagnosis to measurable improvement.
This five-step AI Search Optimization (AISO) Action Plan provides that framework. It is a structured, practical workflow designed to help you diagnose visibility issues, prioritize your efforts for maximum impact, and execute the technical and content changes required to become an authoritative source for AI. This is the process that separates brands who are consistently mentioned by AI from those who are ignored.
Step 1: Diagnose the Root Cause
Before you can fix a problem, you must understand its origin. Poor visibility in AI answers almost always stems from one of three areas: Technical Health, Content Gaps, or Competitor Actions. A thorough diagnosis involves investigating all three.
- Technical Health Issues: These are problems with how AI crawlers and Retrieval-Augmented Generation (RAG) systems access, parse, and understand your website. If an AI model can't effectively process your content, it can't recommend it. Examples include missing or incorrect schema markup that fails to define what your content is about, a confusing internal linking structure that obscures topical relationships, or critical content being rendered in a way that is non-indexable by crawlers. A robust AISO platform can automatically flag these foundational issues.
- Content Gaps: This occurs when your content lacks the specific information, depth, or structure that AI models seek to answer a user's query. For instance, if a user asks about the 'best sustainable running shoes,' and your competitors are cited for their detailed pages on materials sourcing and manufacturing processes, your brand will be ignored if your site only mentions sustainability superficially on a product page. Identifying these gaps requires analyzing the topics where AI models prefer your competitors.
- Competitor Actions: Sometimes, your visibility issue is not about a weakness on your part, but a strength on a competitor's. A competitor may have recently published a highly authoritative, well-structured, and fact-based pillar page that has become the primary source for AI on a valuable topic. Understanding what content AI models are citing is critical to building a strategy to compete.
Diagnosing these issues systematically is the foundation of any successful AISO strategy. The goal is to move beyond guessing and pinpoint the exact reasons for underperformance, as outlined in the AISO Action Center framework.
Step 2: Prioritize Opportunities with an Impact/Effort Matrix
Once you have a list of technical issues, content gaps, and competitor threats, the next challenge is deciding where to start. Attempting to fix everything at once leads to wasted resources and diluted focus. The most effective teams use a prioritization matrix to build a strategic backlog for their AISO sprints.
An impact/effort matrix is a simple but powerful tool for organizing tasks. As described by project management experts at Atlassian, it involves plotting each identified task on a four-quadrant grid based on its potential impact on AI visibility and the effort required to complete it.
- High Impact / Low Effort (Quick Wins): These are the top priorities. Tasks in this quadrant offer the greatest return for the least amount of work. Example: Fixing a critical schema error across all blog posts that prevents AI from understanding your content's authorship and publication date.
- High Impact / High Effort (Major Projects): These are significant initiatives that can transform your AI visibility but require substantial resources. Example: Creating a new, comprehensive pillar page with original research to challenge a competitor's dominance on a core topic.
- Low Impact / Low Effort (Fill-ins): These are minor tasks that can be completed when resources are available but shouldn't distract from more important work. Example: Updating the metadata on a few older, low-traffic articles.
- Low Impact / High Effort (Time Sinks): These tasks should be avoided. They consume significant resources for minimal gain. Example: A complete redesign of a low-authority section of your website that is rarely cited by AI.
Using this matrix helps you create a prioritized backlog of AISO tasks. This ensures your team's limited time and budget are allocated to the actions most likely to drive meaningful results, turning a long list of problems into an actionable roadmap.
Step 3: Create and Refine Citation-Worthy Content
With a prioritized backlog, you can begin executing content-related tasks. The goal is not just to create content, but to create 'citation-worthy' content. AI models do not consume entire pages; they break them down into passages or 'chunks' for retrieval. To be cited, your content must be optimized for this chunk-level retrieval.
This means each section of your content should function as a self-contained, factual, and clear answer to a potential question. This aligns with Google's guidance on creating helpful, reliable, people-first content, which is rewarded by both traditional search algorithms and AI models.
Follow these best practices to improve citation-worthiness:
- Structure for Synthesis: Start each section with a clear topic sentence that summarizes the main point. Use headings and subheadings to create a logical hierarchy that is easy for both users and AI to parse.
- Use Factual, Non-Promotional Language: AI models are designed to provide objective answers. Ground your claims in verifiable facts, data, and expert opinions. Overly promotional or subjective language is less likely to be trusted or cited.
- Cite Your Sources: Just as you would in an academic paper, link out to authoritative sources, studies, or experts to support your statements. This signals trustworthiness to the AI.
- Build Topical Breadth and Depth: Address a topic from multiple angles to answer the primary query and related follow-up questions. This positions your content as a comprehensive resource, increasing its value to the AI's retrieval system.
For a more detailed guide on structuring your pages, you can review our complete process for how to optimize content for AI search and RAG systems.
Step 4: Implement Technical Fixes for AI Crawlers
Parallel to content creation, your team must execute the technical tasks from your prioritized backlog. These fixes are crucial for ensuring AI crawlers can find, access, and correctly interpret your content. This process typically involves creating clear, well-defined 'tickets' for a development team or implementing changes directly within your CMS.
Key technical fixes often fall into these categories:
- Crawlability and Accessibility: Ensure your site has a clean robots.txt file, an up-to-date XML sitemap, and no incorrect noindex tags that would prevent AI crawlers from accessing important content.
- Logical Site Structure: A well-organized site with a clear hierarchy and logical internal linking helps AI models understand the relationship between different pieces of content and identify your most authoritative pages on a given topic.
- Structured Data (Schema Markup): This is one of the most powerful technical levers for AISO. Implementing schema from sources like schema.org provides an explicit, machine-readable description of your content. Using types like Article, Author, and Organization helps AI models verify facts and assign authority, as recommended by Google's own structured data guidelines.
- Content Parsability: Ensure your content is rendered in clean HTML without code that could obstruct a crawler's ability to extract text. Complex JavaScript rendering or content locked inside images can make your information invisible to AI.
These technical elements form the foundation upon which your content sits. For a complete list of items to check, use our Technical SEO Checklist for AI as a primary resource for your development tickets.
Step 5: Measure the Uplift and Prove ROI
The final step of the cycle is to measure the results of your actions. Without measurement, you cannot prove the ROI of your AISO efforts or refine your strategy over time. It is critical to recognize that traditional SEO metrics like keyword rankings and click-through rates are insufficient for the AI search era. As noted by industry publications like Search Engine Land, we need a new set of KPIs.
Modern AISO measurement focuses on your brand's presence and perception inside the AI models. Key metrics to track include:
- AI Share of Voice: This measures your brand's mention frequency for a set of key topics compared to your competitors. An increase in your share of voice is a direct indicator of improved visibility.
- Citation Frequency and Quality: Track not only how often you are cited but also the context of those citations. Are you being mentioned as a primary source, a supporting point, or just in passing?
- Message Resonance: Analyze whether the AI's summary of your brand or products aligns with your key messaging. This metric helps you understand if the AI correctly perceives your value proposition.
Tracking these metrics demonstrates the direct impact of your technical fixes and content updates on your brand's authority in AI. For a complete overview of the new measurement landscape, refer to the AISO Measurement Framework and our guide to AI Visibility KPIs for CMOs.
Operationalize Your AISO with Searchify
This 5-step action plan provides a powerful, repeatable workflow for any team serious about improving their AI visibility. It transforms AISO from a reactive, confusing task into a structured, strategic process. However, executing this framework manually is resource-intensive, requiring significant time for analysis, project management, and reporting.
This is precisely why the Searchify platform was built. Our technology is designed to operationalize this exact framework, automating the most time-consuming steps and empowering your team to focus on execution.
Searchify's Action Center automatically diagnoses technical and content issues and surfaces competitor-driven opportunities, effectively automating Steps 1 and 2. It generates a prioritized list of tasks based on an impact/effort model, giving you an instant backlog. The platform's detailed recommendations guide your content and development teams through Steps 3 and 4, while our analytics dashboards handle Step 5, tracking your AI Share of Voice, citation frequency, and other critical AISO KPIs.
You can learn more about using the Searchify Action Center to streamline this entire process.
Stop guessing and start acting. Book a demo to see how Searchify can turn this 5-step plan into your competitive advantage.