I help businesses make their websites, content and brand signals easier for large language models to understand, summarise and associate with the right services.
LLM Optimisation Services
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Tel: 07784 293809
Search Focus
305 Wigan Road
Ashton-in-Makerfield
Wigan
WN4 9ST
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Want Your Business To Be Easier For AI Tools To Understand?
Let’s Talk & Improve Your LLM Visibility
I can help your website explain your services, expertise and trust signals more clearly for AI search tools, answer engines and users researching businesses through conversational search.
About My LLM Optimisation Services
LLM Optimisation, often shortened to LLMO, is about making your business easier for large language models to understand, interpret and connect with the right topics. It sits close to AEO and GEO, but the focus is more specific. Instead of only thinking about rankings or featured snippets, LLMO looks at how AI systems may interpret your content, describe your brand, compare your services and decide whether your website gives enough clear information to support a useful answer.
When someone asks an AI tool for advice, supplier recommendations, service comparisons or help choosing between options, the system needs clear source material. If your website is vague, thin, inconsistent or difficult to connect to a topic, your business may be ignored or misunderstood. LLMO helps reduce that ambiguity by improving your service explanations, entity signals, page structure, topical coverage, external proof and the way your content answers practical questions.
This is not a shortcut or a replacement for SEO. Your pages still need to be crawlable, useful, well structured and supported by strong internal links. LLMO adds another layer by asking whether your site gives AI systems enough reliable context to describe your business accurately. That means strengthening definitions, FAQs, service boundaries, case studies, location relevance, author or business signals, internal relationships between pages and content that explains not just what you do, but why you are relevant to the user’s problem.
My LLM Optimisation services can include LLM visibility audits, prompt-style query testing, entity mapping, content restructuring, service page improvements, FAQ expansion, citation-worthy content planning, third-party proof checks, internal linking, schema recommendations, local SEO support and wider digital marketing planning. The aim is to make your business clearer, more credible and easier to understand wherever people use AI-assisted search to research their options.
LLM Visibility Audits
Prompt Query Testing
Entity Clarity
AI-Readable Content
Trust Signal Reviews
Practical Improvement Plans
How I can help you
LLM Visibility Audit
An LLM visibility audit looks at whether your website gives language models enough clear information to understand your business. It reviews how your services are described, whether your pages answer useful questions, whether your brand is connected to the right topics and whether there is enough supporting proof to make your content feel reliable.
The audit is different from a standard technical SEO audit because it studies how your business may be interpreted in answer-led and conversational search journeys. It can show where your brand is vague, where pages lack useful explanation, where competitors appear stronger and where AI systems may not have enough context to include you.
An LLM visibility audit can include:
- AI-style prompt and query testing
- Brand and service description checks
- Entity, location and topic clarity review
- Content depth and answer quality checks
- Competitor mention observations
- Prioritised actions for clearer LLM understanding
The aim is to identify the gaps that make your business harder to describe, recommend or compare when users rely on AI-assisted search tools.
Entity & Brand Mapping
Large language models rely on patterns, context and relationships. If your website does not make the relationship between your brand, services, locations, people, proof and topics clear, the business can become harder to interpret. Entity mapping helps organise those signals so your site presents a more coherent picture.
I can review how your business is described across key pages and identify where the connections are weak. That might include unclear service naming, missing location context, thin about-page information, inconsistent terminology, weak internal links or important topics that are not properly explained anywhere on the website.
Entity and brand mapping can include:
- Brand, service and location relationship checks
- Topic cluster and supporting page planning
- People, author and expertise signal reviews
- Internal link recommendations
- Schema and structured data opportunities
- Gaps that make the business harder to classify
The goal is to help AI systems and search engines understand what your business should be associated with, rather than leaving that interpretation vague or incomplete.
Prompt Query Testing
People do not always use AI search in the same way they use Google. They ask broader questions, request comparisons, describe problems, ask for recommendations and expect a joined-up answer. Prompt query testing helps reveal whether your business appears, how it is described and which competitors are more visible for the types of questions your customers may ask.
This testing is not about pretending every AI result can be controlled. It is a way to find visibility gaps, weak topic associations and missing content signals. If AI tools consistently mention competitors but not your business, the next step is to look at what those competitors have that your website and wider brand presence may be missing.
Prompt query testing can include:
- Recommendation-style query checks
- Comparison and alternative prompt testing
- Service and location question reviews
- Brand description accuracy checks
- Competitor inclusion observations
- Content actions based on missing signals
The findings can then shape better pages, stronger answers, clearer service definitions and more useful supporting content.
AI-Readable Content
AI-readable content is not robotic content. It is clear, specific and well structured content that explains a topic properly. A page should define the service, answer practical questions, explain who it is for, show evidence where possible and connect related ideas in a way that is easy to follow. This helps users, search engines and language models understand the page more confidently.
I can rewrite or restructure pages so they include better service explanations, answer-led sections, FAQs, comparison points, examples, internal links and stronger supporting detail. This is particularly useful for service pages that currently sound thin, generic or too similar to competitors.
AI-readable content work can include:
- Clearer service definitions
- Question-led page sections
- Comparison and suitability content
- Expanded FAQs based on real buyer concerns
- Internal links to related pages
- Proof-led copy improvements
The aim is to make your pages more useful for people while giving language models better source material to interpret and summarise.
Trust & Source Signals
LLM Optimisation is not limited to your own pages. AI systems may also be influenced by reviews, business profiles, case studies, directory listings, articles, citations, brand mentions and other external signals. If the wider web says very little about your business, or says it inconsistently, your website has to work harder to establish credibility.
I can review the trust signals surrounding your brand and identify where more evidence may be needed. For some businesses, that means stronger reviews and case studies. For others, it may involve better directory profiles, clearer third-party descriptions, useful PR angles, supplier mentions or stronger author and expertise signals.
Trust signal work can include:
- Review and reputation signal checks
- Case study and proof recommendations
- Directory and profile consistency reviews
- Brand mention opportunities
- Author, team and expertise signal suggestions
- External sources that support credibility
The aim is to make your business easier to verify, not just easier to find.
What Else Can I Do?
AI Search Audit
An AI search audit reviews how your business appears when users ask AI-led tools the kinds of questions that could lead to an enquiry. It can highlight whether your brand is included, whether it is described accurately, which competitors appear more often and where your website lacks the information needed to support stronger visibility.
The audit can also review your website structure, service pages, FAQs, internal links, external proof and consistency across your wider web presence. The outcome is not a vague trend report. It is a set of practical content, SEO and trust-building actions.
Audit areas can include:
- Prompt query testing
- Brand description accuracy
- Service and location association checks
- Content and FAQ gap reviews
- Competitor comparison observations
- Action priorities for improving LLM visibility
The result is a clearer picture of how prepared your business is for AI-assisted search behaviour.
Google Ads data can help shape LLM Optimisation because it reveals the commercial language people use before they enquire. Search terms, landing page behaviour and conversion patterns can show which questions, objections and service phrases deserve clearer coverage on your website.
This is useful when paid search shows demand that your organic pages do not explain properly. If customers are searching for comparisons, costs, service types or problem-led phrases, that language can inform stronger AI-readable content.
Support can include:
- Search term observations
- Landing page answer checks
- High-intent query mapping
- Content ideas from PPC data
- SEO and PPC page alignment
- Conversion-led content recommendations
The aim is to use real search behaviour to improve the information your website gives to both users and AI systems.
Technical SEO For LLMO
Technical SEO still matters for LLM Optimisation because important content must be accessible, indexable and easy to interpret. If key pages are blocked, duplicated, slow, poorly linked or hidden inside awkward templates, search systems may have less reliable information to work with.
I can review technical issues that may weaken your AI-search readiness, including indexation problems, duplicated pages, weak canonicals, poor internal linking, missing schema, broken redirects and crawl waste. The goal is to make useful content easier to discover and connect.
This gives LLMO a stronger foundation. AI-readable content works best when the technical setup does not get in the way of crawling, understanding and attribution.
LLMO Reporting & Tracking
LLM Optimisation reporting needs to stay practical because AI-generated visibility is not always measured cleanly through standard ranking tools. Instead, reporting should track what can be observed and improved: page changes, content coverage, prompt testing, brand description accuracy, entity clarity, third-party proof and organic performance.
I can provide updates that show what has been improved, which pages have been strengthened, how AI-style query testing is changing and what should happen next. This keeps the work grounded rather than pretending there is a perfect single metric for every AI result.
Tracking can include:
- AI-style query testing notes
- Brand and service description accuracy
- Content coverage improvements
- Internal linking actions
- Third-party proof development
- Next-stage LLMO recommendations
The aim is to measure progress honestly while continuing to improve the signals that matter.
Microsoft Ads Search Insight
Microsoft Ads can provide another source of useful search behaviour, particularly for B2B, professional services and higher-consideration searches. It can reveal phrasing, comparison terms and customer concerns that may be useful for LLMO planning.
When a business already uses Microsoft Ads, the data can help identify service explanations, comparison pages or buyer questions that deserve more attention on the website.
Potential uses include:
- Search query pattern reviews
- Landing page question gaps
- Commercial intent checks
- Service comparison opportunities
This gives LLMO planning another signal from real users, rather than relying only on broad keyword tools or assumptions.
Meta Ads & Message Testing
Meta Ads can reveal which messages, objections and benefits make people pause, click or enquire. That information can support LLM Optimisation because it shows what a business should explain more clearly across service pages and supporting content.
If social campaigns mention guarantees, experience, specialist knowledge, local coverage or results, the website should evidence those claims properly. Otherwise, the wider brand story can feel disconnected.
Common uses include:
- Turning objections into FAQ sections
- Improving landing page explanations
- Using ad messages to shape service copy
- Adding proof around common claims
- Connecting awareness content to commercial pages
The aim is to make your messaging clearer and more consistent across search, social and AI-assisted discovery.
LLM Optimisation Packages
LLMO FOUNDATION
For smaller websites that need clearer service explanations, stronger entity signals and a practical starting point for AI search readiness.
- LLM visibility review
- Brand and service clarity checks
- AI-style prompt observations
- FAQ and answer gap review
- Entity signal recommendations
- Internal linking suggestions
- Monthly improvement notes
- Schema guidance where useful
- Priority content actions
- + Lots More…
AI SEARCH GROWTH
For businesses that need stronger page structure, clearer topical coverage, better trust signals and regular LLMO improvement work.
- Everything in the LLMO Foundation Plan
- Prompt query testing
- Entity and topic mapping
- AI-readable content recommendations
- Trust signal review
- Technical SEO alignment
- Content brief creation
- Competitor visibility observations
- Monthly LLMO action plan
- + Lots More…
ADVANCED LLMO
For competitive sectors, larger sites or brands that need deeper AI visibility testing, content systems and authority signal development.
- Everything in Foundation & AI Search Growth
- Advanced prompt testing sets
- Large-scale content gap planning
- Entity and brand authority strategy
- Digital PR and citation ideas
- GEO and AEO alignment
- Trust and source signal development
- Advanced reporting and prioritisation
- Ongoing AI visibility improvement
- + Lots More…
FAQs
Common questions from businesses looking at LLM Optimisation, AI search visibility, language model understanding and how LLMO works alongside SEO, AEO and GEO.
LLM Optimisation is the process of improving your website, content and brand signals so large language models can understand your business more clearly. It focuses on how AI systems interpret your services, expertise, locations, proof and relevance.
It does not replace SEO. It builds on SEO by making your information easier to summarise, compare and associate with the right user questions in AI-assisted search journeys.
LLMO stands for Large Language Model Optimisation, although many people simply call it LLM Optimisation. It relates to the way businesses prepare their content for AI systems that generate answers from patterns, sources and context.
The practical work can include clearer service pages, better FAQs, stronger entity signals, prompt testing, technical SEO, internal linking and wider trust-building around the brand.
SEO is mainly about improving visibility in search engines. LLMO is more focused on how AI tools may understand, describe, summarise or compare your business when users ask conversational questions.
They overlap heavily. A website still needs strong SEO foundations, but LLMO adds more emphasis on clarity, context, source quality, trust signals and answer-ready content.
AEO focuses on giving clear answers to specific questions, often for featured snippets, AI Overviews and answer-led search experiences. LLMO looks more broadly at how large language models understand your brand and connect it with the right topics.
AEO improves the answer quality of pages. LLMO also considers entity relationships, third-party proof, prompt testing, brand descriptions and whether your wider web presence supports accurate AI interpretation.
GEO focuses on visibility inside generative search results and AI-generated answers. LLMO is closely related, but it pays specific attention to how language models interpret your content, classify your business and respond to prompt-style searches.
In practice, the two often work together. GEO looks at inclusion in generated answers, while LLMO strengthens the information and signals that may help AI systems understand your business in the first place.
No. No LLMO service can guarantee that a specific AI tool will mention your business. AI systems change, results vary by prompt and many factors sit outside direct control.
The realistic goal is to improve the clarity, depth and trustworthiness of the information around your business so you become a stronger candidate when AI systems answer relevant questions.
LLM Optimisation matters because more people are using AI tools to research services, compare providers and ask for recommendations. If your business is not clearly explained online, AI systems may miss you or describe you poorly.
Improving your LLM visibility can also improve normal website quality. Clearer pages, stronger FAQs, better internal links and stronger proof signals help users as well as AI-assisted search systems.
The best starting points are usually your main service pages, location pages, about page, case studies, FAQs and any content that explains what you do or why someone should choose you.
These pages give AI systems the clearest source material about your business. If they are vague, thin or inconsistent, the wider understanding of your brand is weaker.
Yes. Local businesses can benefit from LLMO because people often ask AI tools for local recommendations, comparisons and practical advice. The business needs clear information about services, areas covered, proof, reviews and suitability.
Local LLMO can involve stronger service pages, location content, local FAQs, review signals, Google Business Profile alignment and clearer descriptions across external profiles.
Yes. Ecommerce websites can use LLMO to improve how AI systems understand products, categories, buying guides, comparisons, materials, sizing, compatibility and customer questions.
This can support category pages, product pages and advice content. The goal is to make product information clearer and more useful when shoppers research options through AI tools.
Prompt query testing means checking how AI tools respond to realistic questions that potential customers might ask. These prompts can include recommendations, comparisons, local searches, problem-led questions and service selection queries.
The results can show whether your business appears, how it is described, which competitors are mentioned and what information may be missing from your website or wider brand presence.
FAQs can help when they answer genuine questions clearly and specifically. They give language models and users concise information about services, problems, costs, suitability and next steps.
Weak FAQs do not add much value. The answers need to be useful, accurate and connected to real search behaviour rather than added as thin filler at the bottom of a page.
Schema can support LLMO by giving search systems structured information about your business, services, articles, products, FAQs, reviews and organisation details. It can help reinforce meaning when used correctly.
Schema is not enough by itself. It should support strong visible content, accurate business details and real proof rather than trying to fix vague or incomplete pages.
Blog posts can help LLMO when they answer useful questions and support the topics your business wants to be associated with. They can add depth around services, comparisons, processes, costs and customer concerns.
Random blog posts are less useful. The strongest content supports commercial pages, builds topical authority and gives AI systems clearer context about your expertise.
Reviews can help because they provide external evidence that your business is active, trusted and associated with specific services or locations. They can also support confidence when users compare providers.
Reviews should sit alongside other signals, such as clear service pages, case studies, local citations, consistent business information and useful content. One signal rarely does the whole job alone.
LLMO can support conversions because it usually improves clarity, structure and proof. If a page answers more questions, explains the service better and shows stronger trust signals, users are more likely to feel confident.
Even visitors from normal Google results can benefit from this work. A clearer page is useful whether the person arrives from search, social, ads or an AI-assisted research journey.
LLM Optimisation is usually gradual. Some improvements, such as rewriting pages or adding stronger FAQs, can be completed quickly, but broader AI visibility and brand understanding take longer to build.
The timescale depends on your current website quality, competition, brand footprint, content depth, trust signals and how much work is needed across your website and external profiles.
Yes. LLMO can sit alongside an existing SEO campaign. It often strengthens the campaign by improving answer quality, page structure, entity clarity and content depth.
It should not distract from technical SEO, internal linking, content strategy or authority building. The best approach is to combine LLMO with the SEO work that already supports visibility and enquiries.
LLMO can be measured through prompt testing, brand description accuracy, AI-style query observations, content coverage, organic visibility, third-party proof development and improvements to key pages.
There is no perfect single metric because AI answers can change and vary by tool. Reporting should focus on observable changes, practical improvements and whether the brand is becoming clearer and better supported.
LLM Optimisation is useful for businesses that rely on search visibility, reputation and online research before customers enquire. This can include local service businesses, ecommerce stores, professional firms, B2B companies and agencies.
It is especially useful where customers compare options, ask AI tools for recommendations or need enough trust before making contact. The clearer your business is online, the easier it is to be understood.
