Glean Enterprise Search: Preferred 1.9× vs ChatGPT
Glean Enterprise Search: Preferred 1.9× vs ChatGPT
Recopilar
12 feb 2026


¿No sabes por dónde empezar con la IA?
Evalúa preparación, riesgos y prioridades en menos de una hora.
¿No sabes por dónde empezar con la IA?
Evalúa preparación, riesgos y prioridades en menos de una hora.
➔ Descarga nuestro paquete gratuito de preparación para IA
Glean reports that in a recent enterprise search evaluation, human graders chose Glean’s answers as correct 1.9× more often than ChatGPT and 1.6× more often than Claude—when graders had a preference. The results highlight how permission-aware indexing and stronger enterprise context can improve answer accuracy in workplace environments.
Enterprise search is only useful if it’s right, permission-aware, and grounded in the context of how your organisation actually works. Glean has published new evaluation results suggesting its enterprise answers are preferred significantly more often than comparable outputs from ChatGPT company knowledge and Claude enterprise search.
In Glean’s evaluation, when human graders expressed a preference, they selected Glean’s response as correct 1.9× more often than ChatGPT and 1.6× more often than Claude (based on Glean’s win–loss ratio approach for correctness).
What the evaluation actually says (and what it doesn’t)
Glean’s headline numbers are compelling, but it’s important to read them precisely:
The ratios apply only in cases where graders had a preference (not every query necessarily produced a strong winner).
The evaluation is published by Glean, so it’s best treated as strong directional evidence—not the final word. You should still validate against your own data, access controls and use cases.
That said, the results align with what many organisations experience in practice: the hardest part of “AI search” isn’t the model—it’s the enterprise context layer.
Why enterprise context often decides the winner
Glean attributes its performance to how it builds and uses context, including:
indexed enterprise data for fast retrieval
an “Enterprise Graph” approach to relationships and signals
“enterprise memory” (via trace learning) to optimise tool use over time
Whether you agree with Glean’s framing or not, the underlying point is useful: good retrieval + permissions + relevance signals usually beats a generic assistant that’s missing your organisation’s structure.
Practical steps: how to validate “2× better” claims in your own organisation
If you’re considering Glean (or comparing it to ChatGPT/Claude enterprise offerings), here’s a simple way to sanity-check results quickly:
Pick 25–50 real internal questions people ask weekly (policies, project context, customer FAQs, onboarding, technical docs).
Run a blinded test: remove vendor names and ask evaluators to score correctness, citations/links, and whether the answer respects permissions.
Segment by use case: decision-making queries tend to behave differently from “find the doc” queries.
Track failure modes: hallucinations, stale docs, missing permissions, or overly generic responses.
This approach will tell you whether the “preference ratio” holds for your own knowledge base—where it matters.
Summary
Glean reports that human graders selected its answers as correct 1.9× more often than ChatGPT and 1.6× more often than Claude in a recent enterprise context evaluation—when graders had a preference. If your organisation is struggling with reliable, permission-aware knowledge discovery, it’s worth testing Glean alongside your existing enterprise AI tools using a controlled, internal benchmark.
Next steps: Explore the Glean page on Generation Digital and speak to us about evaluation frameworks, governance, and rollout planning.
FAQ
Q1: Why is Glean preferred over ChatGPT in this evaluation?
Glean reports that when graders had a preference, they chose Glean over ChatGPT 1.9× more often for correctness, which the paper links to stronger enterprise context construction.
Q2: How does Glean compare to Claude?
In the same evaluation, Glean reports it was chosen 1.6× more often than Claude when graders had a preference on correctness.
Q3: What makes enterprise search “good” in practice?
The key differentiators are typically permission-aware retrieval, relevance ranking, up-to-date indexing, and the ability to pull the right context fo
Glean reports that in a recent enterprise search evaluation, human graders chose Glean’s answers as correct 1.9× more often than ChatGPT and 1.6× more often than Claude—when graders had a preference. The results highlight how permission-aware indexing and stronger enterprise context can improve answer accuracy in workplace environments.
Enterprise search is only useful if it’s right, permission-aware, and grounded in the context of how your organisation actually works. Glean has published new evaluation results suggesting its enterprise answers are preferred significantly more often than comparable outputs from ChatGPT company knowledge and Claude enterprise search.
In Glean’s evaluation, when human graders expressed a preference, they selected Glean’s response as correct 1.9× more often than ChatGPT and 1.6× more often than Claude (based on Glean’s win–loss ratio approach for correctness).
What the evaluation actually says (and what it doesn’t)
Glean’s headline numbers are compelling, but it’s important to read them precisely:
The ratios apply only in cases where graders had a preference (not every query necessarily produced a strong winner).
The evaluation is published by Glean, so it’s best treated as strong directional evidence—not the final word. You should still validate against your own data, access controls and use cases.
That said, the results align with what many organisations experience in practice: the hardest part of “AI search” isn’t the model—it’s the enterprise context layer.
Why enterprise context often decides the winner
Glean attributes its performance to how it builds and uses context, including:
indexed enterprise data for fast retrieval
an “Enterprise Graph” approach to relationships and signals
“enterprise memory” (via trace learning) to optimise tool use over time
Whether you agree with Glean’s framing or not, the underlying point is useful: good retrieval + permissions + relevance signals usually beats a generic assistant that’s missing your organisation’s structure.
Practical steps: how to validate “2× better” claims in your own organisation
If you’re considering Glean (or comparing it to ChatGPT/Claude enterprise offerings), here’s a simple way to sanity-check results quickly:
Pick 25–50 real internal questions people ask weekly (policies, project context, customer FAQs, onboarding, technical docs).
Run a blinded test: remove vendor names and ask evaluators to score correctness, citations/links, and whether the answer respects permissions.
Segment by use case: decision-making queries tend to behave differently from “find the doc” queries.
Track failure modes: hallucinations, stale docs, missing permissions, or overly generic responses.
This approach will tell you whether the “preference ratio” holds for your own knowledge base—where it matters.
Summary
Glean reports that human graders selected its answers as correct 1.9× more often than ChatGPT and 1.6× more often than Claude in a recent enterprise context evaluation—when graders had a preference. If your organisation is struggling with reliable, permission-aware knowledge discovery, it’s worth testing Glean alongside your existing enterprise AI tools using a controlled, internal benchmark.
Next steps: Explore the Glean page on Generation Digital and speak to us about evaluation frameworks, governance, and rollout planning.
FAQ
Q1: Why is Glean preferred over ChatGPT in this evaluation?
Glean reports that when graders had a preference, they chose Glean over ChatGPT 1.9× more often for correctness, which the paper links to stronger enterprise context construction.
Q2: How does Glean compare to Claude?
In the same evaluation, Glean reports it was chosen 1.6× more often than Claude when graders had a preference on correctness.
Q3: What makes enterprise search “good” in practice?
The key differentiators are typically permission-aware retrieval, relevance ranking, up-to-date indexing, and the ability to pull the right context fo
Recibe noticias y consejos sobre IA cada semana en tu bandeja de entrada
Al suscribirte, das tu consentimiento para que Generation Digital almacene y procese tus datos de acuerdo con nuestra política de privacidad. Puedes leer la política completa en gend.co/privacy.
Próximos talleres y seminarios web


Claridad Operacional a Gran Escala - Asana
Webinar Virtual
Miércoles 25 de febrero de 2026
En línea


Trabaja con compañeros de equipo de IA - Asana
Taller Presencial
Jueves 26 de febrero de 2026
Londres, Reino Unido


De Idea a Prototipo: IA en Miro
Seminario Web Virtual
Miércoles 18 de febrero de 2026
En línea
Generación
Digital

Oficina en Reino Unido
Generation Digital Ltd
33 Queen St,
Londres
EC4R 1AP
Reino Unido
Oficina en Canadá
Generation Digital Americas Inc
181 Bay St., Suite 1800
Toronto, ON, M5J 2T9
Canadá
Oficina en EE. UU.
Generation Digital Américas Inc
77 Sands St,
Brooklyn, NY 11201,
Estados Unidos
Oficina de la UE
Software Generación Digital
Edificio Elgee
Dundalk
A91 X2R3
Irlanda
Oficina en Medio Oriente
6994 Alsharq 3890,
An Narjis,
Riad 13343,
Arabia Saudita
Número de la empresa: 256 9431 77 | Derechos de autor 2026 | Términos y Condiciones | Política de Privacidad
Generación
Digital

Oficina en Reino Unido
Generation Digital Ltd
33 Queen St,
Londres
EC4R 1AP
Reino Unido
Oficina en Canadá
Generation Digital Americas Inc
181 Bay St., Suite 1800
Toronto, ON, M5J 2T9
Canadá
Oficina en EE. UU.
Generation Digital Américas Inc
77 Sands St,
Brooklyn, NY 11201,
Estados Unidos
Oficina de la UE
Software Generación Digital
Edificio Elgee
Dundalk
A91 X2R3
Irlanda
Oficina en Medio Oriente
6994 Alsharq 3890,
An Narjis,
Riad 13343,
Arabia Saudita








