Case Studies3 min read • Jan 12, 2026By Ava Thompson

How one SaaS company increased AI citations by focusing on GEO

- Name: OrbitFlow (fictional)

Case Study: How OrbitFlow Used Abhord to Make LLMs Say Their Name (Correctly)

Company snapshot

  • Name: OrbitFlow (fictional)
  • Category: B2B SaaS for product-led revenue analytics
  • Stage: Series B, 120 employees
  • ICP: Mid-market SaaS with usage-based pricing
  • Stack surface: Marketing site, docs.readme.io, GitHub SDKs, G2 profile, partner marketplace listings

1) The initial problem

By late Q3 2025, OrbitFlow noticed a worrying pattern: when prospects asked large language models questions like “What’s the best revenue analytics platform for PLG teams?” or “Alternatives to Calypsa for expansion revenue,” OrbitFlow was either:

  • Not mentioned at all
  • Misattributed to an unrelated open-source Node library with a similar name
  • Described with outdated positioning (“feature analytics tool,” retired in 2023)

Internally, the team called it “brand invisibility in AI.” Sales reported several deals where buyers said, “We asked ChatGPT/Perplexity and you didn’t come up,” or worse, “It says you’re only for freemium mobile.” Marketing recognized that traditional SEO gains weren’t crossing into AI-generated answers.

2) What they discovered through Abhord’s analysis

OrbitFlow implemented Abhord’s GEO/AEO audit over a two-week period. The analysis measured “Answer Share” (how often the brand appeared in top LLM answers across 180 high-intent prompts) and “Entity Correctness” (whether the brand was described accurately).

Key findings:

  • Entity ambiguity: At least 19 high-authority pages (including an old hackathon repo and a community forum) conflated OrbitFlow with “orbit-flow.js.” This bled into embeddings and retriever snippets.
  • Fragmented facts: Product names, plan tiers, and integration lists differed across the homepage, docs, and G2—causing low model confidence and hedged descriptions.
  • Missing machine-readable context: No structured entity document. Sparse schema (Organization without SoftwareApplication/FAQPage). No canonical, versioned JSON describing features, integrations, and supported data sources.
  • Thin Q&A surface: Blog was thought-leadership heavy but lacked direct “answer-ready” content for high-intent prompts (e.g., “Does OrbitFlow support Snowflake + RudderStack?”).
  • Stale third-party nodes: Partner marketplace listings and GitHub README badges referenced the 2023 tagline and deprecated SDKs, which models favored due to domain trust and link equity.

Baseline (Sept 2025):

  • Cross-model Answer Share (180 prompts, 4 model families): 6%
  • Entity Correctness: 41% of brand mentions were fully accurate
  • Hallucination rate (material errors per 10 answers): 2.8
  • Avg. “citation surface area” per answer (unique authoritative sources cited): 0.8

3) The optimization strategy they implemented

With Abhord, OrbitFlow executed a 90-day GEO/AEO plan focused on identity, structure, and distribution.

Foundation: make the entity unambiguous

  • Published a canonical entity page: /ai/orbitflow-entity with a stable ID, disambiguation note (“Not the orbit-flow.js library”), and a concise, model-friendly abstract.
  • Shipped schema: Organization, SoftwareApplication, Product, FAQPage, and HowTo across key templates; added sameAs links to verified profiles.
  • Created a versioned, machine-readable spec: /ai/orbitflow-spec.json covering features, plans, integrations, data destinations, SLAs, and support matrices with immutable keys.

Answer-ready content

  • Built a Q&A library of 72 pages aligned to high-intent prompts surfaced by Abhord (e.g., “OrbitFlow vs. Calypsa for expansion revenue,” “Does OrbitFlow support event-level revenue attribution?”). Each page included:

- A 2–3 sentence abstract

- Evidence blocks linking to docs and customer references

- Benchmarks with ranges and caveats (to avoid overclaiming)

  • Wrote 4 integration deep-dives (Snowflake, BigQuery, Segment, RudderStack) with copy-pastable config snippets and clear version numbers.

Distribution and hygiene

Ava Thompson

Growth & GEO Lead

Ava Thompson has 11+ years in growth marketing and SEO, specializing in AI visibility, conversion-focused content, and brand alignment.

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