OpenText는 수십 년간의 전문 지식을 통해 데이터를 활용하고, 사람과 프로세스를 연결하며, 신뢰할 수 있는 AI를 강화합니다
기업 전체의 데이터를 매끄럽게 통합하여 정보 단절을 없애고, 협업을 강화하며, 리스크를 최소화하세요
데이터를 AI가 활용 가능하고 구조화되고, 접근 가능한, 최적화된 정보로 변환하세요
규제 및 준수 요구 사항을 충족하고 정보의 수명 주기 전반에 걸쳐 보호하세요
OpenText는 사람들이 콘텐츠를 관리하고, 작업을 자동화하며, AI를 사용하고, 협업하여 생산성을 높일 수 있도록 지원합니다
전 세계 수천 개의 기업이 OpenText의 혁신적인 솔루션으로 성공을 거두고 있는 방법을 확인해 보세요
직원은 OpenText의 가장 큰 자산으로, OpenText 브랜드와 가치의 생명입니다.
OpenText가 사회적 목표를 발전시키고 긍정적인 변화를 가속화하기 위해 어떤 노력을 하고 있는지 알아보세요
디지털 혁신을 이루기 최적인 솔루션과 전문성을 갖춘 OpenText 파트너를 만나보세요
새로운 방식으로 정보 보기
비즈니스, 데이터 및 목표를 파악하는 AI
더 빠른 의사 결정을 만나보세요. 안전한 개인 AI 비서가 업무를 시작할 준비가 되었습니다.
공급망을 위한 생성형 AI로 더 나은 인사이트를 얻어보세요.
AI 콘텐츠 관리 및 지능형 AI 콘텐츠 어시스턴트를 통해 효율적으로 작업하세요.
더 빠른 앱 제공, 개발 및 자동화된 소프트웨어 테스트를 만나보세요.
고객 성공을 위해 고객 커뮤니케이션과 경험을 개선해 보세요.
사용자, 서비스 상담원 및 IT 직원이 필요한 답을 찾을 수 있도록 권한을 부여하세요.
새로운 방식으로 정보 보기
비즈니스, 데이터 및 목표를 파악하는 AI
더 빠른 의사 결정을 만나보세요. 안전한 개인 AI 비서가 업무를 시작할 준비가 되었습니다.
공급망을 위한 생성형 AI로 더 나은 인사이트를 얻어보세요.
AI 콘텐츠 관리 및 지능형 AI 콘텐츠 어시스턴트를 통해 효율적으로 작업하세요.
더 빠른 앱 제공, 개발 및 자동화된 소프트웨어 테스트를 만나보세요.
고객 성공을 위해 고객 커뮤니케이션과 경험을 개선해 보세요.
사용자, 서비스 상담원 및 IT 직원이 필요한 답을 찾을 수 있도록 권한을 부여하세요.
한 번만 연결하면 안전한 B2B 통합 플랫폼으로 모든 대상과 연결할 수 있습니다.
AI가 활용 가능한 콘텐츠 관리 솔루션으로 지식 재구성
기업 보호를 위한 통합 사이버 보안 솔루션
AI 기반 DevOps 자동화, 테스트 및 품질을 통해 더 나은 소프트웨어를 더 빠르게 제공
잊을 수 없는 고객 경험으로 대화 재창조
IT 운영의 비용과 복잡성을 줄이기 위해 필요한 명확성 확보
검증된 OpenText 정보 관리 기술을 사용하여 맞춤형 애플리케이션 구축
사용자 정의 애플리케이션 및 워크플로를 지원하는 실시간 정보 흐름을 제공하는 OpenText Cloud API를 사용하여 원하는 방식으로 구축
안전한 정보 관리가 신뢰할 수 있는 AI를 만나다
데이터와 AI의 신뢰를 높이는 통합 데이터 프레임워크
데이터 언어로 에이전트를 구축, 배포 및 반복할 수 있는 공간
AI를 강화하기 위해 데이터 수집 및 메타데이터 태그 지정 자동화를 지원하는 도구 세트
거버넌스를 사전 예방적이고 지속 가능하게 만드는 서비스 및 API 제품군
AI 여정을 도와주는 전문 서비스 전문가
새로운 방식으로 정보 보기
비즈니스, 데이터 및 목표를 파악하는 AI
더 빠른 의사 결정을 만나보세요. 안전한 개인 AI 비서가 업무를 시작할 준비가 되었습니다.
공급망을 위한 생성형 AI로 더 나은 인사이트를 얻어보세요.
AI 콘텐츠 관리 및 지능형 AI 콘텐츠 어시스턴트를 통해 효율적으로 작업하세요.
더 빠른 앱 제공, 개발 및 자동화된 소프트웨어 테스트를 만나보세요.
고객 성공을 위해 고객 커뮤니케이션과 경험을 개선해 보세요.
사용자, 서비스 상담원 및 IT 직원이 필요한 답을 찾을 수 있도록 권한을 부여하세요.
OpenText는 주요 클라우드 인프라 제공업체와 협력하여 어디서나 OpenText 솔루션을 실행할 수 있는 유연성을 제공합니다
OpenText는 최고의 엔터프라이즈 앱 제공업체와 협력하여 비정형 데이터를 활용함으로써 더 나은 비즈니스 인사이트를 제공합니다
Philips HealthcareGlobal health technology leader improves maintenance of lifesaving devices and reduces downtime with OpenText™ Analytics Database (Vertica Analytics Platform)


Philips Healthcare faced significant challenges with the maintenance of its advanced medical imaging systems, like MRI and CT scanners. These machines are essential for patient diagnosis and treatment, requiring high availability to ensure optimal clinical performance and predictable costs. However, unplanned downtime due to maintenance issues not only disrupted healthcare services but also posed a financial burden on healthcare providers.
Mauro Barbieri, principal architect service at Philips Healthcare, explained, “Just one of our sophisticated MRI scanners will log a million events and deliver 200,000 sensor readings every day, based on tens of thousands of data elements. Due to the complexity and the highly regulated environment in which medical devices operate, they have a long development time. And although a wealth of data is captured, this was not designed to support predictive maintenance, as who knew 20-30 years ago that IoT would be a thing and that we would use artificial intelligence to predict failures? To change our approach, we needed to integrate many data sources and create predictive models.”
Recognizing the need for a more reliable and efficient service model, Philips Healthcare set out to shift from a reactive to a proactive maintenance approach. This transition required the integration of vast amounts of sensor data from medical devices, advanced analytics, and machine learning models to predict and prevent potential failures before they could impact service availability. The challenge was not only technical but also operational, as it involved rethinking existing processes and ensuring that predictive maintenance could be seamlessly incorporated into clinical workflows without disrupting patient care.

Our OpenText Analytics Database-powered predictive maintenance system, built on vast amounts of data and advanced AI models, allows us to detect and address potential issues before they impact clinical operations. This improves the reliability of our equipment and enhances patient outcomes and satisfaction.
Philips Healthcare leveraged OpenText™ Analytics Database to develop a predictive maintenance system that uses AI-driven analytics to minimize equipment downtime, ensuring high availability and uninterrupted patient care.
Analyze petabytes of data in no time with an AI-driven analytics database
Leveraging OpenText Analytics Database, Philips Healthcare implemented a sophisticated predictive maintenance platform that leverages advanced AI and machine learning algorithms. The AI-driven platform analyzes vast amounts of data collected from various medical devices to predict potential system failures before they occur. By utilizing AI, Philips Healthcare can process complex datasets efficiently and identify patterns that indicate imminent issues, allowing them to take preventive action well in advance.
Barbieri explained, “By leveraging predictive analytics, we can reduce unplanned downtime significantly, ensuring that our critical medical imaging systems remain available for patient care. This proactive approach is essential in delivering reliable and efficient healthcare services.”
Philips Healthcare integrated data from over 200 different sources, including real-time logs, error reports, and performance metrics from its medical devices. This amounted to six trillion rows of data, including 10 years of valuable historical data. This is centralized in a comprehensive data warehouse, where one and a half petabytes of information are continuously monitored and updated. The predictive models use this data to detect anomalies and potential issues early, ensuring that any signs of failure are addressed proactively, reducing the likelihood of equipment downtime.
Barbieri commented, “Our devices generate massive amounts of data daily. By centralizing and analyzing this data with OpenText Analytics Database, we can detect even the smallest anomalies, allowing us to intervene before a minor issue becomes a major problem.”
Patient care is the absolute priority, so to minimize disruptions to clinical workflows, Philips Healthcare has modelled multiple failure modes for key components of MRI scanners and CT machines. It has designed its service actions to be non-intrusive and scheduled proactively. The predictive maintenance platform generates alerts based on the data analysis, which are then reviewed by a remote monitoring team. These alerts guide maintenance activity scheduling to times that are least disruptive to clinical operations, ensuring that the equipment remains operational and available when needed most.
After initial implementation, the OpenText Analytics Database platform grew in popularity within the company and soon scaled globally to cover many countries. Its built-in flexibility allowed for the necessary regional compliance adaptations. For instance, China runs a separate version to ensure that customers’ data stays within its national borders.

Our devices generate massive amounts of data daily. By centralizing and analyzing this data with OpenText Analytics Database, we can detect even the smallest anomalies, allowing us to intervene before a minor issue becomes a major problem.
Philips Healthcare deployed OpenText Analytics Database in just eight months. The organization achieved a 30 percent reduction in equipment downtime, enhanced service efficiency, and improved overall patient care outcomes.
Millions of medical system log files are processed daily by OpenText Analytics Database. This directly supports Philips Healthcare’s predictive maintenance and has led to a 30 percent reduction in equipment downtime. This improvement ensures that critical medical imaging systems are more reliably available for patient care, reducing delays in diagnosis and treatment.
Barbieri commented: "Our OpenText Analytics Database-powered predictive maintenance system, built on vast amounts of data and advanced AI models, allows us to detect and address potential issues before they impact clinical operations. This improves the reliability of our equipment and enhances patient outcomes and satisfaction."
The new OpenText Analytics Database-driven system has led to 50 percent of CT service cases being diagnosed and resolved entirely remotely. For the remaining cases where an on-site visit is required, the system enabled an 84 percent first-time fix rate for equipment issues, meaning that most problems are resolved on the first service visit. In a typical hospital setting, this amounts to 136 hours of extra operational device availability per year. This efficiency reduces operational costs and minimizes disruptions to clinical workflows, directly and positively impacting Philips Healthcare’s customers and their patients.
Peter Sharpe, chief executive at Cobalt Imaging, one of Philips Healthcare’s customers, explained, "Remote service provides us with an engineer online all the time. They tell us when we’ve got a fault before we know we’ve got a fault. And not only that, but they can also fix the fault before we knew we had a fault. And that’s impressive."
With over 20 percent of issues being detected proactively before customers notice them, Philips Healthcare has enhanced its service reliability and customer satisfaction. Full data observability ensures precise monitoring, resulting in more accurate maintenance actions; essential when managing medical equipment. The proactive approach prevents potential disruptions and ensures that equipment is maintained without impacting patient care.
"Thanks to the predictive maintenance system, we’ve significantly reduced downtime, ensuring that our imaging systems are always ready to support patient care. We have more uptime on the scanner and are potentially able to see more patients, boosting our service satisfaction," attested David McCafferty, superintendent radiographer at New Stobhill Hospital in Glasgow.
Barbieri concluded, “We are in the business of improving people’s health and wellbeing through meaningful innovation. Preventing unplanned downtime for crucial medical devices means more patients can benefit faster. Leveraging OpenText Analytics Database, we achieve this with 24/7 proactive monitoring to ensure that all the components in our infrastructure are fully observable. We support hundreds of different data types, and our data quality is continuously improving which in turn enhances our service and our customers’ experience.”