麻豆原创 Data Management Archives - 麻豆原创 Africa News Center News & Information About 麻豆原创 Wed, 27 Sep 2023 18:10:21 +0000 en-ZA hourly 1 https://wordpress.org/?v=6.9.4 One Data Platform: The Bridge to the Full Promise of Data-Centric Businesses /africa/2021/01/one-data-platform-the-bridge-to-the-full-promise-of-data-centric-businesses/ Wed, 27 Jan 2021 12:05:29 +0000 /africa/?p=141736 Businesses are defined not just by the objectives achieved and innovations delivered ahead of the competition, but how well they harness data to make them...

The post One Data Platform: The Bridge to the Full Promise of Data-Centric Businesses appeared first on 麻豆原创 Africa News Center.

]]>
Businesses are defined not just by the objectives achieved and innovations delivered ahead of the competition, but how well they harness data to make them happen. But first, this intelligence must be organized and managed with a strong digital backbone. What’s needed is one data platform.

Most organizations have spent the last several years deploying new technologies in a legacy infrastructure to deliver high-demand capabilities such as personalized experiences, process automation, and predictive maintenance.

While these digital investments fulfill well-defined business needs, they rarely lead to a data architecture that is simplified enough to accelerate future innovation and help ensure the integrity of every artificial intelligence (AI) model. Unfortunately, current market dynamics are not compatible with companies that cannot pivot, adapt, and respond to change quickly.

Businesses must align their processes with customer experiences and analyze those connections for deep insights that lead to confident, trusted decisions and actions. Only then can organizations drive continuous innovation.

Achieving such an interconnected landscape of systems, processes, and data requires an agile digital backbone infused with intelligence to redefine and create new business models and processes in a more dynamic fashion. And a majority of executives seem to be getting the message: 65 percent of organizations surveyed by听听indicated plans for aggressive modernization of legacy systems with extensive new technology platform investments through 2023.

Setting the Foundation for Real-Time Data Organization and Access

Searching for a platform that can quickly organize data and enable access is easier said than done. It’s true that a wide variety of platform technologies promise to consolidate and harmonize data into one architecture. However, those that are comprehensive and scalable enough to support requirements that range from basic analytics to sophisticated data intelligence and algorithms provide the foundation businesses need to become genuinely data centric. This approach is what we call “one data platform.”

The one data platform approach integrates heterogeneous solution components into a cohesive fit-for-purpose data management environment. This design delivers business-centric platform services that converge with common systems and leverage cloud concepts 鈥 all while lowering IT costs.

The platform’s architecture groups technologies into four decipherable layers: data analytics, data integration, data ingestion pipelines, and source systems. This tactic is not meant to provide a one-size-fits-all structure. Instead, it should encourage IT architects to consider the distinct functions of each layer to create an environment that scales with the business as market dynamics and customer expectations evolve.

Layer #1: Data Analytics听

Users can choose to leverage standardized dashboards with guided navigation and storytelling or customize their view for ad hoc analysis.

The data science behind this layer turns information mining into new information models that can be extended with enterprise-scale data. Furthermore, organizations can blend and manage Big Data from multiple sources and apply statistical methods, algorithms, and analytic engines to tease out relevant, in-the-moment insights that help improve the bottom line.

Layer #2: Data Integration听

As a data integration hub, this layer moves the needle on data-driven business transformation by getting data assets out from siloed sources, exposing them for different applications and systems to consume, and accelerating opportunities for self-service analytics.

Within this layer, a multi-node production system enables mission-critical data warehousing functions for several business domains and across divisions. A near-line storage solution is also available for archiving and accessing massive data volumes cost effectively.

Meanwhile, containerized data systems increase the computing power by providing self-contained modular technical areas that cater to specific business domains and requirements, such as country-specific reporting. Ingested data sets are then confined within a container, allowing analytical data models to be flexibly and independently deployed.

Layer #3: Data Ingestion Pipelines听

This layer provides transformation, filtering, and integrated data type mapping capabilities. It enables agile data delivery and feeds insights into business processes through continuous data provisioning across a wide range of sources. More importantly, streaming data can be handled to support use cases that require real-time data management 鈥 from capture and processing to analysis, reporting, and decision-making.

Layer #4: Source Systems

This area houses the entire ecosystem of existing technology. Internal and external packaged applications, homegrown solutions, systems of record, and enterprise data repositories are brought together to create a centralized intelligence core that accurately reflects every stakeholder’s needs.

Smoothing the Road to a Hybrid, Multi-Cloud Landscape

In addition to reassessing the harmonization of their IT architecture, organizations are upgrading their global data center strategy as the pace of change continues to accelerate. With the assistance of , many 麻豆原创 customers have even taken steps toward fully transitioning their data platform to public and private cloud infrastructures to rapidly deploy the latest data-driven innovations at scale.

For example, some of our customers consider cloud-based infrastructure as a service (IaaS). An IaaS strategy enables organizations to replace on-premise infrastructure with elastic pay-per-use infrastructure that can scale up or down rapidly on demand. Efforts related to this transformation help businesses adapt to broader analytical requirements and manage rising data volumes while avoiding significant capital expenditure investments and lowering operating costs.

The target infrastructure design includes integration enablement and connectivity within and across clouds to support cross-application analytical requirements. In broad terms, migration planning considers factors such as:

  • Migration approaches for various 麻豆原创 and third-party solutions
  • Scalability, stability, performance, reliability, and cost reduction
  • Compliance and security
  • Testing and validation strategies
  • Monitoring and operations
  • Application lifecycle management
  • Alignment of the IT organizational structure to the new IaaS engagement model

Another option that other 麻豆原创 customers pick is a software-as-a-service (SaaS) strategy focused on pushing their transformation into a data-driven enterprise even further. In this case, executives are interested in expanding their data warehousing capabilities to realize more business benefits from the cloud with relative ease and without creating large-scale disruptions often associated with uprooting the mission-critical enterprise data backbone.

Co-deployment of a听听and existing digital assets such as a听听may appear plausible because the solutions address very different, yet mission-critical, problems. The cloud-based data warehouse solution consumes data from the business warehouse solution and other source systems with an abstraction or semantic layer, reducing IT complexity and applying much-needed governance and security.

When coupled with cloud data management and virtualization technology, the cloud-based data warehousing solution is well-positioned to provide opportunities for self-service analytics. From this perspective, it is sensible to hedge that the solution can evolve to provision user-facing and domain-based analytical services at an enterprise scale, even with a well-established business warehousing system.

Amplifying Business Value with Flexibility and Scalability

The urgency around innovating data-driven business models, processes, and products and services is not going away anytime soon. So why not strategically respond to that demand with a flexible, scalable, and structured data platform that can distill value from massive volumes of data?

For many 麻豆原创 customers, taking this step is the key to hedging against uncertainty and driving business outcomes that better secure their foothold, profitability, and longer-term viability.

Explore how听 can help your company reveal its true potential as a data-centric business with the one data platform approach.

Christine Lucea is a business enterprise principal consultant in Customer Success at 麻豆原创.

This article first appeared on the 麻豆原创 Global News Center

The post One Data Platform: The Bridge to the Full Promise of Data-Centric Businesses appeared first on 麻豆原创 Africa News Center.

]]>
Independent Research Firm Names 麻豆原创 a Leader in Data Management for Analytics /africa/2020/02/independent-research-firm-names-sap-a-leader-in-data-management-for-analytics/ Tue, 18 Feb 2020 12:12:16 +0000 /africa/?p=140297 WALLDORF 鈥斕 麻豆原创 SE (NYSE: 麻豆原创) today announced that it has been named a leader in 鈥淭he Forrester Wave™: Data Management for Analytics, Q1 2020.鈥...

The post Independent Research Firm Names 麻豆原创 a Leader in Data Management for Analytics appeared first on 麻豆原创 Africa News Center.

]]>
WALLDORF (NYSE: 麻豆原创) today announced that it has been named a leader in 鈥淭he Forrester Wave™: Data Management for Analytics, Q1 2020.鈥 Forrester Research Inc. evaluated 14 vendors and gave 麻豆原创 the highest score in the Strategy and Market Presence categories.

The data management solutions from 麻豆原创, including 麻豆原创 HANA, 麻豆原创 BW/4HANA and 麻豆原创 Data Hub, scored five out of five in 16 of the 25 evaluation criteria Forrester applied in the research study.

In the report, Forrester states: 鈥溌槎乖 focuses on real-time analytics, security, and integration. Enterprises use 麻豆原创 HANA for in-memory data marts and 麻豆原创 BW/4HANA data warehouse implementations that integrate with multiple data sources, including other data warehouses like 麻豆原创 IQ. In addition, 麻豆原创 Data Warehouse Cloud, announced in May 2019, offers companies an analytical and persona-driven data-warehouse-as-a-service designed for business and IT. 麻豆原创 Data Warehouse Cloud focuses on orchestrating various data sources and maintaining security, trust, and semantic information to accelerate business-critical insights. It offers instant access to application data via prebuilt adapters. . . . Reference customers like 麻豆原创鈥檚 performance, data integration, data modeling, and storage processing capabilities. . . .鈥

The report observed: 鈥溌槎乖粹檚 key differentiators are its shared-nothing, distributed in-memory data platform for real-time analytics; optimized data streaming and query processing; integrated data services layer; advanced compression; and security.鈥

麻豆原创 helps Ferrara introduce its diverse portfolio of brands, such as SweeTARTS and Red Hots, to new generations.

鈥淔errara is a tech-savvy, sweet snacking powerhouse with a passion for sharing delight by creating some of the most iconic sweet snacks,鈥 said George Lesko, Ferrara vice president and CIO. 鈥淥ver the last few years, we have added many well-known brands to our portfolio. As we continue to grow, our in-memory data warehouse powered by 麻豆原创 HANA has really improved our data governance and analytics. From our supply chain to sales to distribution, now we can see what鈥檚 happening across the company in real time.鈥

麻豆原创 unites data and analytics to drive real business value.

鈥淲e believe this ranking as a leader further validates that 麻豆原创 is in a unique position to bring data and analytics closer together than ever before and enable customers to realize the full potential of their data,鈥 said Gerrit Kazmaier, 麻豆原创 HANA & Analytics executive vice president. 鈥淏ased on our 麻豆原创 HANA in-memory technology, we enable our customers to securely connect to any data source, eliminating the need for unnecessary data movement. With our broad portfolio of data management and analytics solutions, including the latest 麻豆原创 Data Warehouse Cloud, customers can now combine this with cloud elasticity to give more people access to data, simplifying data landscapes, improving security and reducing costs.鈥

麻豆原创 HANA has more than 32,000 customers.

.

For more information, see “麻豆原创鈥檚 Data Management for Analytics Portfolio a Leader in Recent Evaluation.”

Visit the . Follow 麻豆原创 on Twitter at .

Media Contact:
Scott Malinowski, +1 (781) 852-3822,听scott.malinowski@sap.com, ET
麻豆原创 麻豆原创 Room; press@sap.com

Any statements contained in this document that are not historical facts are forward-looking statements as defined in the U.S. Private Securities Litigation Reform Act of 1995. Words such as 鈥渁nticipate,鈥 鈥渂elieve,鈥 鈥渆stimate,鈥 鈥渆xpect,鈥 鈥渇orecast,鈥 鈥渋ntend,鈥 鈥渕ay,鈥 鈥減lan,鈥 鈥減roject,鈥 鈥減redict,鈥 鈥渟hould鈥 and 鈥渨ill鈥 and similar expressions as they relate to 麻豆原创 are intended to identify such forward-looking statements. 麻豆原创 undertakes no obligation to publicly update or revise any forward-looking statements. All forward-looking statements are subject to various risks and uncertainties that could cause actual results to differ materially from expectations. The factors that could affect 麻豆原创’s future financial results are discussed more fully in 麻豆原创’s filings with the U.S. Securities and Exchange Commission (“SEC”), including 麻豆原创’s most recent Annual Report on Form 20-F filed with the SEC. Readers are cautioned not to place undue reliance on these forward-looking statements, which speak only as of their dates.
漏 2020 麻豆原创 SE. All rights reserved.
麻豆原创 and other 麻豆原创 products and services mentioned herein as well as their respective logos are trademarks or registered trademarks of 麻豆原创 SE in Germany and other countries. Please see for additional trademark information and notices.

This article first appeared on the 麻豆原创 News Center.

The post Independent Research Firm Names 麻豆原创 a Leader in Data Management for Analytics appeared first on 麻豆原创 Africa News Center.

]]>