Welcome!

Linux Containers Authors: Liz McMillan, Elizabeth White, Yeshim Deniz, Zakia Bouachraoui, Carmen Gonzalez

Related Topics: @DXWorldExpo, Java IoT, Microservices Expo, Linux Containers, @CloudExpo, SDN Journal

@DXWorldExpo: Article

How to Beat the Curve When You're Behind in Big Data

Data management is undergoing a major shift as more and more enterprises are discovering the benefits of Big Data

Data management is undergoing a major shift as more and more enterprises are discovering the benefits of Big Data and venturing headfirst into a dynamic new era of innovation and data explosion. Today, there are more opportunities for businesses to gain insights from valuable data than ever before, but they must embrace change to do so.

Organizations across the world are embracing this change and beginning to implement Big Data programs. However, with an overwhelming array of moving pieces to consider, some remain puzzled as to where to start. Well, here's some valuable advice on beating the curve and finally gaining traction in the realm of Big Data.

Determine a Starting Point
According to the International Data Corporation (IDC), data is growing by 60 percent annually. Today's enterprises are inundated with data, easily gathering terabytes of information from social media sites, cell phone signals, sensors, online transactions, and so on. With so much information circling around you, it can be difficult understanding where to start, so it's necessary to define opportunities, have ROI projections and goals, and establish the end-goal for your organization.

Find and Discover Data
Different industries receive different kinds of data, which must be located and analyzed to enjoy the full benefits of having a big data program. A good first step is to use the data that you already have or control to validate or invalidate a hunch that you may have. With big data in your corner, you can have unparalleled access to a vast array of data streams to help you evaluate trends, choose product lines, understand consumer shopping habits, and much more.

Expect Experimentation
When venturing into the endless possibilities of big data, you must plan for variability and be prepared to unlearn some traditional data management practices. Since you will be working with new data sources and technologies, you shouldn't be surprised if you find yourself learning as you go and constantly refining your approach to gaining new market insights. Thus, your big data project will need to be staffed by individuals who understand big data and thrive in dynamic environments.

Put Together the Right Team with the Right Skills
Not long ago, database administrators, or DBAs, were the only people managing data, but there are far more hands in the data management pot today. From analytics and data management interns to data scientists and CMOs, data now touches every facet of an organization. Having the right people with the right skillsets is just as important for a big data program as having the right technologies. It's become increasingly important for organizations to have designated data scientist teams, which work directly with CIOs to help them extract as much business value from their data as possible.

Bottom Line
If you're reading this, more than likely your organization is preparing to take the big data plunge. Regardless of whether you invest in an onsite Apache Hadoop system or take advantage of advanced big data software and cloud services to mine data across the Web, it's important to understand your goals and ease your way into the vast and profitable world of big data. Once there, you'll have plenty of time to enjoy the view from atop the summit of success.

More Stories By Drew Hendricks

Drew Hendricks is a writer, as well as a tech, social media and environmental enthusiast, living in San Francisco. He is a contributing writer at Forbes, Technorati and The Huffington Post.

IoT & Smart Cities Stories
As you know, enterprise IT conversation over the past year have often centered upon the open-source Kubernetes container orchestration system. In fact, Kubernetes has emerged as the key technology -- and even primary platform -- of cloud migrations for a wide variety of organizations. Kubernetes is critical to forward-looking enterprises that continue to push their IT infrastructures toward maximum functionality, scalability, and flexibility. As they do so, IT professionals are also embr...
At CloudEXPO Silicon Valley, June 24-26, 2019, Digital Transformation (DX) is a major focus with expanded DevOpsSUMMIT and FinTechEXPO programs within the DXWorldEXPO agenda. Successful transformation requires a laser focus on being data-driven and on using all the tools available that enable transformation if they plan to survive over the long term. A total of 88% of Fortune 500 companies from a generation ago are now out of business. Only 12% still survive. Similar percentages are found throug...
At CloudEXPO Silicon Valley, June 24-26, 2019, Digital Transformation (DX) is a major focus with expanded DevOpsSUMMIT and FinTechEXPO programs within the DXWorldEXPO agenda. Successful transformation requires a laser focus on being data-driven and on using all the tools available that enable transformation if they plan to survive over the long term. A total of 88% of Fortune 500 companies from a generation ago are now out of business. Only 12% still survive. Similar percentages are found throug...
Atmosera delivers modern cloud services that maximize the advantages of cloud-based infrastructures. Offering private, hybrid, and public cloud solutions, Atmosera works closely with customers to engineer, deploy, and operate cloud architectures with advanced services that deliver strategic business outcomes. Atmosera's expertise simplifies the process of cloud transformation and our 20+ years of experience managing complex IT environments provides our customers with the confidence and trust tha...
AI and machine learning disruption for Enterprises started happening in the areas such as IT operations management (ITOPs) and Cloud management and SaaS apps. In 2019 CIOs will see disruptive solutions for Cloud & Devops, AI/ML driven IT Ops and Cloud Ops. Customers want AI-driven multi-cloud operations for monitoring, detection, prevention of disruptions. Disruptions cause revenue loss, unhappy users, impacts brand reputation etc.
As you know, enterprise IT conversation over the past year have often centered upon the open-source Kubernetes container orchestration system. In fact, Kubernetes has emerged as the key technology -- and even primary platform -- of cloud migrations for a wide variety of organizations. Kubernetes is critical to forward-looking enterprises that continue to push their IT infrastructures toward maximum functionality, scalability, and flexibility.
The Japan External Trade Organization (JETRO) is a non-profit organization that provides business support services to companies expanding to Japan. With the support of JETRO's dedicated staff, clients can incorporate their business; receive visa, immigration, and HR support; find dedicated office space; identify local government subsidies; get tailored market studies; and more.
Today's workforce is trading their cubicles and corporate desktops in favor of an any-location, any-device work style. And as digital natives make up more and more of the modern workforce, the appetite for user-friendly, cloud-based services grows. The center of work is shifting to the user and to the cloud. But managing a proliferation of SaaS, web, and mobile apps running on any number of clouds and devices is unwieldy and increases security risks. Steve Wilson, Citrix Vice President of Cloud,...
When Enterprises started adopting Hadoop-based Big Data environments over the last ten years, they were mainly on-premise deployments. Organizations would spin up and manage large Hadoop clusters, where they would funnel exabytes or petabytes of unstructured data.However, over the last few years the economics of maintaining this enormous infrastructure compared with the elastic scalability of viable cloud options has changed this equation. The growth of cloud storage, cloud-managed big data e...
Artificial intelligence, machine learning, neural networks. We're in the midst of a wave of excitement around AI such as hasn't been seen for a few decades. But those previous periods of inflated expectations led to troughs of disappointment. This time is (mostly) different. Applications of AI such as predictive analytics are already decreasing costs and improving reliability of industrial machinery. Pattern recognition can equal or exceed the ability of human experts in some domains. It's devel...