-
SNC Scandic Coin: поєднання реальних активів та цифрової функціональності
-
Sinner demolishes Popyrin to stroll into Italian Open last 16
-
Dua Lipa sues Samsung in US over use of her likeness on TV box
-
White House press gala shooting suspect pleads not guilty
-
England women's great Mead to leave Arsenal at the end of the season
-
NATO 'could never be more important than today': Canada FM
-
Boycotters Spain, Ireland, Slovenia will not show Eurovision
-
Oil rises, stocks mixed on US-Iran deadlock
-
Tens of millions risk hunger as Hormuz standoff blocks fertiliser, UN official says
-
Beatles to open first London museum on site of last gig
-
Lewis-Skelly says leaders Arsenal know 'job is not yet done'
-
Boycotting Spain, Ireland, Slovenia will not show Eurovision
-
Every goalie 'illegally blocked' says West Ham's Hermansen after Arsenal agony
-
Thai police arrest 9 in largest ivory seizure in decade
-
Hantavirus: confirmed cases by nationality
-
US, French evacuees from hantavirus ship test positive
-
China seeks 'more stability' as it confirms Trump-Xi meet
-
Man City boss Guardiola backs Marmoush to play big role in run-in
-
Philippine lawmakers vote to impeach VP Sara Duterte
-
No end to deadlock as Iran, US reject talks terms
-
Iran hangs 'elite student' on espionage charges: NGOs
-
Party's over: China tells fans to end birthday blowouts for sport idols
-
Australia to quarantine six people from hantavirus ship
-
Groundbreaking: 'Controlled' quakes triggered under Swiss Alps
-
Nazi-looted portrait found in home of Dutch SS leader's family: art sleuth
-
US citizen from hantavirus ship tests positive
-
Hantavirus outbreak renews painful memories for Patagonian village
-
Myanmar complains over pariah treatment in ASEAN bloc
-
Domestic dominance not enough, Barca's ambition is European glory
-
Oil soars as Trump rejects Iran's terms
-
Spurs star Wembanyama ejected for elbowing Wolves' Reid
-
In India, heat-triggered insurance offers 'some relief'
-
Under-threat UK PM Starmer to attempt reset after disastrous polls
-
The first 48-team World Cup -- more opportunities, less jeopardy?
-
Can ChatGPT be charged in a murder? Florida wants to find out
-
Is risk-averse Hollywood running scared of Cannes critics?
-
Thailand's ex-PM Thaksin released from prison
-
Focus, longevity: Scheffler-McIlroy rivalry sparks mutual admiration
-
Middle East conflicts a danger for whales off S.Africa: study
-
Climate risks fuel insurance costs, squeezing US households even inland
-
Microsoft boss to testify on his role in OpenAI's founding
-
Iran war 'not over,' uranium must be removed: Netanyahu
-
Renovated Istanbul Greek Orthodox school to be inaugurated, but not reopened: patriarchate
-
Aminona Capital Partners Closed Second Latam Real Estate Fund
-
Frame Security Launches with $50M to Build the Future of Human Security
-
Norwegian rookie Reitan wins PGA Truist Championship
-
Knicks sweep past 76ers into NBA Eastern Conference finals
-
'I'll never forget this day': Barca's Flick after Liga triumph
-
Aussie Herbert wins LIV Golf Virginia title
-
Le Garrec guides La Rochelle past Racing in Top 14
Context Management Powers Production-Ready AI Analytics at Enterprise Scale
GoodData delivers governed semantics, grounded knowledge, guided behavior, and full observability for reliable AI analytics.
SAN FRANCISCO, CALIFORNIA / ACCESS Newswire / March 11, 2026 / GoodData today introduced Context Management, a governed contextual layer designed to enable production-ready enterprise AI analytics and agents.
As organizations deploy AI assistants, copilots, and autonomous agents, they encounter a structural gap: AI lacks enforced business context, governance, and observability. AI pilots demonstrate potential, but moving AI into production exposes the deeper challenge of ensuring answers are consistent, safe, and explainable at scale.
Without semantics and traceability, answers shift depending on phrasing. Business rules are applied inconsistently. When outputs change, teams can't explain why. For enterprises, this erodes trust and slows adoption.
Many AI analytics platforms rely on prompts, inferred metadata, or loosely integrated document search. Context is suggested, not enforced.
GoodData's Context Management addresses these structural gaps by providing an analytics foundation with a governed contextual layer purpose-built for AI systems. It creates a single access point to structured and unstructured data, business knowledge, policies, and instructions, ensuring AI operates within defined boundaries.
By formalizing how context is defined, governed, and observed, Context Management improves answer quality, strengthens safety controls, and makes AI behavior transparent in production environments.
The Five Pillars of GoodData's Context Management
Context Management manages meaning, governance, grounding, guidance, and observability, making AI analytics accurate, safe, and explainable in production environments.
These pillars define the structural requirements for enterprise AI: enabling high-quality responses within reliable systems.
Data Semantics: Defines metrics, dimensions, and business logic once in a deterministic semantic model. Agents, dashboards, and APIs use the same definitions, so numbers never change based on how a question is asked.
Governance: Applies enterprise-grade controls to data access, usage policies, and agent behavior. AI operates within defined boundaries by default, preventing misuse, leakage, and unsafe actions.
Knowledge Grounding: Grounds every response in structured analytics and governed enterprise content. Answers are traceable to their sources, reducing hallucinations and increasing reliability.
AI Guidance: Provides business instructions, analytical intent, and memory that define how AI should behave, ensuring consistent terminology, priorities, and explanations across users and workflows.
Observability: Tracks prompts, inputs, outputs, and costs end-to-end. Understand what context was used, what changed, and why results evolved, making AI analytics transparent and auditable.
A Governed Foundation for Enterprise AI Teams
Built on GoodData's composable, embeddable architecture, Context Management integrates with modern data stacks and developer workflows. It supports structured and unstructured data, enables multitenant deployments, and applies governance across assistants, agents, dashboards, and embedded applications.
"AI pilots are easy. Production-ready AI is hard," said Peter Fedorocko, Field CTO at GoodData. "Enterprises need answers that are consistent, governed, and explainable. Context Management ensures agentic AI analytics is grounded in the same semantic definitions, business rules, and knowledge that teams rely on every day."
For analytics engineers, this means deterministic metrics defined as code and reused consistently across AI and analytics. For enterprise data leaders, it means AI operating within governance boundaries by default. For product and AI teams, it means production-ready agents embedded securely into customer-facing applications.
A Trusted Foundation for Production-Ready AI
Context Management extends GoodData's AI-native platform with a governed contextual layer designed for agentic analytics in production.
As organizations move from experimentation to operational AI, the need for enforced semantics, grounded knowledge, and decision observability becomes foundational. Context Management provides that foundation.
With this release, GoodData extends its existing analytics infrastructure with the contextual and governed controls required for enterprise AI systems, where assistants, copilots, and autonomous agents operate with shared meaning, governance, and full transparency.
About GoodData
GoodData is an AI-native decision intelligence platform built to help enterprises turn trusted data into confident action. Designed for governed, scalable analytics, GoodData enables organizations to operationalize insights, automate decisions, and embed intelligence directly into products and business workflows.
With a composable architecture and a governed semantic layer at its core, GoodData ensures AI-powered analytics are transparent, auditable, and aligned with how enterprises define and trust their data. Organizations use GoodData to move from insight to impact faster, while maintaining enterprise-grade security, governance, and performance.
GoodData serves over 123,000 of the world's leading companies and 3.9 million users, helping enterprises close the gap between data and decision-making.
For more information, visit GoodData's website and follow GoodData on LinkedIn, YouTube, and Medium.
© 2026 GoodData Corporation. All rights reserved. GoodData is a registered trademark of GoodData Corporation in the United States and other jurisdictions. Other names and brands may be claimed as the property of others.
GoodData Contact:
[email protected]
+1 415-200-0186
SOURCE: GoodData Corporation
View the original press release on ACCESS Newswire
F.Carias--PC