Big Data Forum at Salt River Fields (the spring training field for the Arizona Diamondbacks). Krishnan Parasuraman discusses how companies are using big data and analytics to transform their business.
Big Data Journeys: Review of roadmaps taken by early adopters to achieve thei...Krishnan Parasuraman
Implementing a Big Data program can be a long and arduous journey. Each organization has its own unique business drivers and technical considerations that drive their big data adoption roadmaps. Whatever be your organization's specific big data driver - be it managing a rapid surge of data, implementing a new set of analytic capabilities, incorporating unstructured data as part of your enterprise data platform or accessing real time information for actionable intelligence - the approach and roadmap that you put in place to reach that end goal becomes all the more critical in a space where early success stories are relatively rare, skill sets are hard to find and technologies are still evolving.
In this session we will chronicle the journeys of four different organizations that were early adopters of big data. Each of them charted a different path to achieve their big data goals. We will look at what were the key drivers behind their respective approaches, what worked and what did not work for them.
Modern Integrated Data Environment - Whitepaper | QuboleVasu S
A whit-paper is about building a modern data platform for data driven organisations with using cloud data warehouse with modern data platform architecture
https://www.qubole.com/resources/white-papers/modern-integrated-data-environment
Building an Effective Data & Analytics Operating Model A Data Modernization G...Mark Hewitt
This is the age of analytics—information resulting from the systematic analysis of data.
Insights gained from applying data and analytics to business allows large and small organizations across diverse industries—be it healthcare, retail, manufacturing, financial, or others—to identify new opportunities, improve core processes, enable continuous learning and differentiation, remain competitive, and thrive in an increasingly challenging business environment.
The key to building a data-driven practice is a Data and Analytics Operating Model (D&AOM) which enables the organization to establish standards for data governance, controls for data flows (both within and outside the organization), and adoption of appropriate technological innovations.
Success measures of a data initiative may include:
• Creating a competitive advantage by fulfilling unmet needs,
• Driving adoption and engagement of the digital experience platform (DXP),
• Delivering industry standard data and metrics, and
• Reducing the lift on service teams.
This green paper lays out the framework for building and customizing an effective data and analytics operating model.
Accelerating Data-Driven Enterprise Transformation in Banking, Financial Serv...Denodo
Watch full webinar here: https://bit.ly/3c6v8K7
Banking, Financial Services and Insurance (BFSI) organizations are globally accelerating their digital journey, making rapid strides with their digitization efforts, and adding key capabilities to adapt and innovate in the new normal.
Many companies find digital transformation challenging as they rely on established systems that are often not only poorly integrated but also highly resistant to modernization without downtime. Hear how the BFSI industry is leveraging data virtualization that facilitates digital transformation via a modern data integration/data delivery approach to gain greater agility, flexibility, and efficiency.
In this session from Denodo, you will learn:
- Industry key trends and challenges driving the digital transformation mandate and platform modernization initiatives
- Key concepts of Data Virtualization, and how it can enable BFSI customers to develop critical capabilities for real-time / near real-time data integration
- Success Stories on organizations who already use data virtualization to differentiate themselves from the competition.
The last year has put a new lens on what speed to insights actually mean - day-old data became useless, and only in-the-moment-insights became relevant, pushing data and analytics teams to their breaking point. The results, everyone has fast forwarded in their transformation and modernization plans, and it's also made us look differently at dashboards and the type of information that we're getting the business. Join this live event and hear about the data teams ditching their dashboards to embrace modern cloud analytics.
ADV Slides: When and How Data Lakes Fit into a Modern Data ArchitectureDATAVERSITY
Whether to take data ingestion cycles off the ETL tool and the data warehouse or to facilitate competitive Data Science and building algorithms in the organization, the data lake – a place for unmodeled and vast data – will be provisioned widely in 2020.
Though it doesn’t have to be complicated, the data lake has a few key design points that are critical, and it does need to follow some principles for success. Avoid building the data swamp, but not the data lake! The tool ecosystem is building up around the data lake and soon many will have a robust lake and data warehouse. We will discuss policy to keep them straight, send data to its best platform, and keep users’ confidence up in their data platforms.
Data lakes will be built in cloud object storage. We’ll discuss the options there as well.
Get this data point for your data lake journey.
Big Data Journeys: Review of roadmaps taken by early adopters to achieve thei...Krishnan Parasuraman
Implementing a Big Data program can be a long and arduous journey. Each organization has its own unique business drivers and technical considerations that drive their big data adoption roadmaps. Whatever be your organization's specific big data driver - be it managing a rapid surge of data, implementing a new set of analytic capabilities, incorporating unstructured data as part of your enterprise data platform or accessing real time information for actionable intelligence - the approach and roadmap that you put in place to reach that end goal becomes all the more critical in a space where early success stories are relatively rare, skill sets are hard to find and technologies are still evolving.
In this session we will chronicle the journeys of four different organizations that were early adopters of big data. Each of them charted a different path to achieve their big data goals. We will look at what were the key drivers behind their respective approaches, what worked and what did not work for them.
Modern Integrated Data Environment - Whitepaper | QuboleVasu S
A whit-paper is about building a modern data platform for data driven organisations with using cloud data warehouse with modern data platform architecture
https://www.qubole.com/resources/white-papers/modern-integrated-data-environment
Building an Effective Data & Analytics Operating Model A Data Modernization G...Mark Hewitt
This is the age of analytics—information resulting from the systematic analysis of data.
Insights gained from applying data and analytics to business allows large and small organizations across diverse industries—be it healthcare, retail, manufacturing, financial, or others—to identify new opportunities, improve core processes, enable continuous learning and differentiation, remain competitive, and thrive in an increasingly challenging business environment.
The key to building a data-driven practice is a Data and Analytics Operating Model (D&AOM) which enables the organization to establish standards for data governance, controls for data flows (both within and outside the organization), and adoption of appropriate technological innovations.
Success measures of a data initiative may include:
• Creating a competitive advantage by fulfilling unmet needs,
• Driving adoption and engagement of the digital experience platform (DXP),
• Delivering industry standard data and metrics, and
• Reducing the lift on service teams.
This green paper lays out the framework for building and customizing an effective data and analytics operating model.
Accelerating Data-Driven Enterprise Transformation in Banking, Financial Serv...Denodo
Watch full webinar here: https://bit.ly/3c6v8K7
Banking, Financial Services and Insurance (BFSI) organizations are globally accelerating their digital journey, making rapid strides with their digitization efforts, and adding key capabilities to adapt and innovate in the new normal.
Many companies find digital transformation challenging as they rely on established systems that are often not only poorly integrated but also highly resistant to modernization without downtime. Hear how the BFSI industry is leveraging data virtualization that facilitates digital transformation via a modern data integration/data delivery approach to gain greater agility, flexibility, and efficiency.
In this session from Denodo, you will learn:
- Industry key trends and challenges driving the digital transformation mandate and platform modernization initiatives
- Key concepts of Data Virtualization, and how it can enable BFSI customers to develop critical capabilities for real-time / near real-time data integration
- Success Stories on organizations who already use data virtualization to differentiate themselves from the competition.
The last year has put a new lens on what speed to insights actually mean - day-old data became useless, and only in-the-moment-insights became relevant, pushing data and analytics teams to their breaking point. The results, everyone has fast forwarded in their transformation and modernization plans, and it's also made us look differently at dashboards and the type of information that we're getting the business. Join this live event and hear about the data teams ditching their dashboards to embrace modern cloud analytics.
ADV Slides: When and How Data Lakes Fit into a Modern Data ArchitectureDATAVERSITY
Whether to take data ingestion cycles off the ETL tool and the data warehouse or to facilitate competitive Data Science and building algorithms in the organization, the data lake – a place for unmodeled and vast data – will be provisioned widely in 2020.
Though it doesn’t have to be complicated, the data lake has a few key design points that are critical, and it does need to follow some principles for success. Avoid building the data swamp, but not the data lake! The tool ecosystem is building up around the data lake and soon many will have a robust lake and data warehouse. We will discuss policy to keep them straight, send data to its best platform, and keep users’ confidence up in their data platforms.
Data lakes will be built in cloud object storage. We’ll discuss the options there as well.
Get this data point for your data lake journey.
What Is My Enterprise Data Maturity 2021DATAVERSITY
Maturity frameworks have varying levels of Data Management maturity. Each level corresponds to not only increased data maturity but also increased organizational maturity and bottom-line ROI. There are recommended targets to achieve an effective information management program. The speaker’s maturity framework sequences the information management activities for your consideration. It is based on real client roadmaps. This webinar promises to offer a wealth of ideas for key quick wins to benefit the organization’s information management program.
Attendees can self-assess their current information management capabilities as we go through Data Strategy, organization, architecture, and technology, yielding an overall view of the current level of information management maturity.
This webinar provides a foundation for enhancing current data and analytic capabilities and updating the strategy and plans for the achievement of improved information management maturity, aligned with major initiatives.
Big Data Impact on Purchasing and SCM - PASIA World Conference DiscussionBill Kohnen
The volume, velocity and variety of data available is almost unthinkable. 90% of the world’s data is less than 2 years old, we are able analyze less than 5% of it and 80% of what people generally are looking at is less than 6 weeks old. Harnessing this data for effective decision making is a goal for organizations worldwide and has created a 50Billion dollar industry to provide tools and consulting.
Even before “Big Data” Purchasing groups were swimming in data and struggled to put it to effective use. The success of Strategic Sourcing methodology had the effect of also identifying and standardizing the types and format of information that can be used to drive improvement.
This discussion will connect how big data sources and methodology can be used to develop specific and relevant spend analytics. Also presented will be an illustration of how you can use data and tools you already have - to get immediate results and make you better prepared to evaluate the need for more powerful analytic tools.
Finally will conclude with comments on how Big Data along with other disruptive digital trends will create a new required skill sets for Purchasing and Supply Chain Professionals and are transform how operate all ready.
Complying with Cybersecurity Regulations for IBM i Servers and DataPrecisely
Multiple security regulations became effective across the globe in 2018, most notably the European Union’s General Data Protection Regulation (GDPR), and additional regulations are on their heels. The California Consumer Privacy Act, with its GDPR-like requirements, is just one of the regulations that requires planning and preparation today.
If you need to implement security policies for IBM i systems and data that will meet today’s compliance requirements and prepare you for those that are on the way, this webinar will help you get on the right track.
Rethink Your 2021 Data Management Strategy with Data Virtualization (ASEAN)Denodo
Watch full webinar here: https://bit.ly/2O2r3NP
In the last several decades, BI has evolved from large, monolithic implementations controlled by IT to orchestrated sets of smaller, more agile capabilities that include visual-based data discovery and governance. These new capabilities provide more democratic analytics accessibility that is increasingly being controlled by business users. However, given the rapid advancements in emerging technologies such as cloud and big data systems and the fast changing business requirements, creating a future-proof data management strategy is an incredibly complex task.
Catch this on demand session to understand:
- BI program modernization challenges
- What is data virtualization and why is its adoption growing so quickly?
- How data virtualization works and how it compares to alternative approaches to data integration
- How modern data virtualization can significantly increase agility while reducing costs
ADV Slides: The Data Needed to Evolve an Enterprise Artificial Intelligence S...DATAVERSITY
This webinar will focus on the promise AI holds for organizations in every industry and every size, and how to overcome some of the challenges today of how to prepare for AI in the organization and how to plan AI applications.
The foundation for AI is data. You must have enough data to analyze to build models. Your data determines the depth of AI you can achieve – for example, statistical modeling, machine learning, or deep learning – and its accuracy. The increased availability of data is the single biggest contributor to the uptake in AI where it is thriving. Indeed, data’s highest use in the organization soon will be training algorithms. AI is providing a powerful foundation for impending competitive advantage and business disruption.
The business models across industries around the world are becoming Customer Centric. Recent studies show that “knowing” customers based on internal as well as external data is one of the top priorities of business leaders. On the other hand various surveys also reveal that customers do not mind to share their semi-personal data for the benefit of differentiated service. In that context, the 360 degree view of customer – which was once thought to be a business process, master data management, data integration and data warehouse / business intelligence related problem has now entered into the whole new big world of BIG data including integration with unstructured data sources. Impact of big data on Customer Master Data Management is spread across - from Integration and linkage of unstructured or semi-structured data with structured master data that is maintained within enterprise; to analyze and visualization of the same to generate useful insight about the customers. There are various patterns to handle the challenges across the steps i.e. acquire, link, manage, analyze and distribute the enhanced customer data for differentiated product or services.
Digital Transformation: How to Build an Analytics-Driven CultureAlexander Loth
http://alexloth.com/2017/12/11/diversify-long-term-crypto-portfolio/
<- Follow-up blog post "How to diversify a Long-term Crypto Portfolio"!
Executive Talk, Frankfurt School of Finance & Management, 8 December 2017
Big Data Analytics Architecture PowerPoint Presentation SlidesSlideTeam
Presenting this set of slides with name - Big Data Analytics Architecture Powerpoint Presentation Slides. This PPT deck displays twenty six slides with in depth research. Our topic oriented Big Data Analytics Architecture Powerpoint Presentation Slides presentation deck is a helpful tool to plan, prepare, document and analyse the topic with a clear approach. We provide a ready to use deck with all sorts of relevant topics subtopics templates, charts and graphs, overviews, analysis templates. Outline all the important aspects without any hassle. It showcases of all kind of editable templates infographs for an inclusive and comprehensive Big Data Analytics Architecture Powerpoint Presentation Slides presentation. Professionals, managers, individual and team involved in any company organization from any field can use them as per requirement.
Data-driven Banking: Managing the Digital TransformationLindaWatson19
The digital revolution has arrived in banking. Evolving customer expectations, increasing cyber threats and growing volumes of data are just a few of the challenges faced by traditional financial institutions.
To ensure that Decision Management Systems are analytic and adaptive you must embed the results of data mining and predictive analytics in them. In this webinar you will learn what can be discovered using data mining and predictive analytic techniques and how this can be applied to the decision-making embedded in Decision Management Systems. The role of analytics in predicting risk, fraud and opportunity and the importance of continuous improvement and learning is also be covered.
Building Confidence in Big Data - IBM Smarter Business 2013 IBM Sverige
Success with big data comes down to confidence. Without confidence in the underlying data, decision makers may not trust and act on analytic insight. You need confidence in your data – that it’s correct, trusted, and protected through automated integration, visual context, and agile governance. You need confidence in your ability to accelerate time to value, with fast deployments of big data appliances. Learn how clients have succeeded with big data by building confidence in their data, ability to deploy, and skills. Presenter: David Corrigan, Big Data specialist, IBM. Mer från dagen på http://bit.ly/sb13se
Slides: Enterprise Architecture vs. Data ArchitectureDATAVERSITY
Enterprise Architecture (EA) provides a visual blueprint of the organization, and shows key interrelationships between data, process, applications, and more. By abstracting these assets in a graphical view, it’s possible to see key interrelationships, particularly as they relate to data and its business impact across the organization. Join us for a discussion on how data architecture is a key component of an overall enterprise architecture for enhanced business value and success.
Financial Markets Data & Analytics Led TransformationGianpaolo Zampol
How big data, advanced analytics and cognitive computing is disrupting traditional business and operating models in financial markets? New competitors, powered by social, mobile, analytics, and cloud computing, are making new business models emerging rapidly. Wealth Management, Corporate Banking and Transaction Banking & Payments are significant sources of growth in Financial Markets. How take advantage from those new technologies to face this new scenario?
Enterprises are faced by information overload. Big data appears as an opportunity, but has no relevance until enterprises can put it in context of their activities, processes, and organizations, Applying MDM principles to Big Data is therefore an opportunity that enterprises should target.
This presentation covers the following topics :
- what is MDM and Information Management
- what is Big Data and what are the use cases
- why and how Big Data can take advantage of MDM ? why and how MDM can take advantage of Big Data ?
How to Create and Manage a Successful Analytics OrganizationDATAVERSITY
For the last few years, analytics, data science and data management have achieved tremendous exposure on all the media channels. Big Data has become a major topic of discussion, catalyzing attention among the C-Level executives and driving investments and projects inside the enterprise. However, it is really interesting that just a selected group of business has created successful data teams and has mastered the skills to manage it. What we have seen is that most companies still do not know how to create, implement and manage a data and analytics organization. Above all, if data has become an strategic asset and is being considered the new oil for the 21st century economy, what your strategy to handle it ? This webinar will help to bring some concepts and ideas to enlighten your path to create and manage an analytics organization, providing some real life examples on companies which did it.
What Is My Enterprise Data Maturity 2021DATAVERSITY
Maturity frameworks have varying levels of Data Management maturity. Each level corresponds to not only increased data maturity but also increased organizational maturity and bottom-line ROI. There are recommended targets to achieve an effective information management program. The speaker’s maturity framework sequences the information management activities for your consideration. It is based on real client roadmaps. This webinar promises to offer a wealth of ideas for key quick wins to benefit the organization’s information management program.
Attendees can self-assess their current information management capabilities as we go through Data Strategy, organization, architecture, and technology, yielding an overall view of the current level of information management maturity.
This webinar provides a foundation for enhancing current data and analytic capabilities and updating the strategy and plans for the achievement of improved information management maturity, aligned with major initiatives.
Big Data Impact on Purchasing and SCM - PASIA World Conference DiscussionBill Kohnen
The volume, velocity and variety of data available is almost unthinkable. 90% of the world’s data is less than 2 years old, we are able analyze less than 5% of it and 80% of what people generally are looking at is less than 6 weeks old. Harnessing this data for effective decision making is a goal for organizations worldwide and has created a 50Billion dollar industry to provide tools and consulting.
Even before “Big Data” Purchasing groups were swimming in data and struggled to put it to effective use. The success of Strategic Sourcing methodology had the effect of also identifying and standardizing the types and format of information that can be used to drive improvement.
This discussion will connect how big data sources and methodology can be used to develop specific and relevant spend analytics. Also presented will be an illustration of how you can use data and tools you already have - to get immediate results and make you better prepared to evaluate the need for more powerful analytic tools.
Finally will conclude with comments on how Big Data along with other disruptive digital trends will create a new required skill sets for Purchasing and Supply Chain Professionals and are transform how operate all ready.
Complying with Cybersecurity Regulations for IBM i Servers and DataPrecisely
Multiple security regulations became effective across the globe in 2018, most notably the European Union’s General Data Protection Regulation (GDPR), and additional regulations are on their heels. The California Consumer Privacy Act, with its GDPR-like requirements, is just one of the regulations that requires planning and preparation today.
If you need to implement security policies for IBM i systems and data that will meet today’s compliance requirements and prepare you for those that are on the way, this webinar will help you get on the right track.
Rethink Your 2021 Data Management Strategy with Data Virtualization (ASEAN)Denodo
Watch full webinar here: https://bit.ly/2O2r3NP
In the last several decades, BI has evolved from large, monolithic implementations controlled by IT to orchestrated sets of smaller, more agile capabilities that include visual-based data discovery and governance. These new capabilities provide more democratic analytics accessibility that is increasingly being controlled by business users. However, given the rapid advancements in emerging technologies such as cloud and big data systems and the fast changing business requirements, creating a future-proof data management strategy is an incredibly complex task.
Catch this on demand session to understand:
- BI program modernization challenges
- What is data virtualization and why is its adoption growing so quickly?
- How data virtualization works and how it compares to alternative approaches to data integration
- How modern data virtualization can significantly increase agility while reducing costs
ADV Slides: The Data Needed to Evolve an Enterprise Artificial Intelligence S...DATAVERSITY
This webinar will focus on the promise AI holds for organizations in every industry and every size, and how to overcome some of the challenges today of how to prepare for AI in the organization and how to plan AI applications.
The foundation for AI is data. You must have enough data to analyze to build models. Your data determines the depth of AI you can achieve – for example, statistical modeling, machine learning, or deep learning – and its accuracy. The increased availability of data is the single biggest contributor to the uptake in AI where it is thriving. Indeed, data’s highest use in the organization soon will be training algorithms. AI is providing a powerful foundation for impending competitive advantage and business disruption.
The business models across industries around the world are becoming Customer Centric. Recent studies show that “knowing” customers based on internal as well as external data is one of the top priorities of business leaders. On the other hand various surveys also reveal that customers do not mind to share their semi-personal data for the benefit of differentiated service. In that context, the 360 degree view of customer – which was once thought to be a business process, master data management, data integration and data warehouse / business intelligence related problem has now entered into the whole new big world of BIG data including integration with unstructured data sources. Impact of big data on Customer Master Data Management is spread across - from Integration and linkage of unstructured or semi-structured data with structured master data that is maintained within enterprise; to analyze and visualization of the same to generate useful insight about the customers. There are various patterns to handle the challenges across the steps i.e. acquire, link, manage, analyze and distribute the enhanced customer data for differentiated product or services.
Digital Transformation: How to Build an Analytics-Driven CultureAlexander Loth
http://alexloth.com/2017/12/11/diversify-long-term-crypto-portfolio/
<- Follow-up blog post "How to diversify a Long-term Crypto Portfolio"!
Executive Talk, Frankfurt School of Finance & Management, 8 December 2017
Big Data Analytics Architecture PowerPoint Presentation SlidesSlideTeam
Presenting this set of slides with name - Big Data Analytics Architecture Powerpoint Presentation Slides. This PPT deck displays twenty six slides with in depth research. Our topic oriented Big Data Analytics Architecture Powerpoint Presentation Slides presentation deck is a helpful tool to plan, prepare, document and analyse the topic with a clear approach. We provide a ready to use deck with all sorts of relevant topics subtopics templates, charts and graphs, overviews, analysis templates. Outline all the important aspects without any hassle. It showcases of all kind of editable templates infographs for an inclusive and comprehensive Big Data Analytics Architecture Powerpoint Presentation Slides presentation. Professionals, managers, individual and team involved in any company organization from any field can use them as per requirement.
Data-driven Banking: Managing the Digital TransformationLindaWatson19
The digital revolution has arrived in banking. Evolving customer expectations, increasing cyber threats and growing volumes of data are just a few of the challenges faced by traditional financial institutions.
To ensure that Decision Management Systems are analytic and adaptive you must embed the results of data mining and predictive analytics in them. In this webinar you will learn what can be discovered using data mining and predictive analytic techniques and how this can be applied to the decision-making embedded in Decision Management Systems. The role of analytics in predicting risk, fraud and opportunity and the importance of continuous improvement and learning is also be covered.
Building Confidence in Big Data - IBM Smarter Business 2013 IBM Sverige
Success with big data comes down to confidence. Without confidence in the underlying data, decision makers may not trust and act on analytic insight. You need confidence in your data – that it’s correct, trusted, and protected through automated integration, visual context, and agile governance. You need confidence in your ability to accelerate time to value, with fast deployments of big data appliances. Learn how clients have succeeded with big data by building confidence in their data, ability to deploy, and skills. Presenter: David Corrigan, Big Data specialist, IBM. Mer från dagen på http://bit.ly/sb13se
Slides: Enterprise Architecture vs. Data ArchitectureDATAVERSITY
Enterprise Architecture (EA) provides a visual blueprint of the organization, and shows key interrelationships between data, process, applications, and more. By abstracting these assets in a graphical view, it’s possible to see key interrelationships, particularly as they relate to data and its business impact across the organization. Join us for a discussion on how data architecture is a key component of an overall enterprise architecture for enhanced business value and success.
Financial Markets Data & Analytics Led TransformationGianpaolo Zampol
How big data, advanced analytics and cognitive computing is disrupting traditional business and operating models in financial markets? New competitors, powered by social, mobile, analytics, and cloud computing, are making new business models emerging rapidly. Wealth Management, Corporate Banking and Transaction Banking & Payments are significant sources of growth in Financial Markets. How take advantage from those new technologies to face this new scenario?
Enterprises are faced by information overload. Big data appears as an opportunity, but has no relevance until enterprises can put it in context of their activities, processes, and organizations, Applying MDM principles to Big Data is therefore an opportunity that enterprises should target.
This presentation covers the following topics :
- what is MDM and Information Management
- what is Big Data and what are the use cases
- why and how Big Data can take advantage of MDM ? why and how MDM can take advantage of Big Data ?
How to Create and Manage a Successful Analytics OrganizationDATAVERSITY
For the last few years, analytics, data science and data management have achieved tremendous exposure on all the media channels. Big Data has become a major topic of discussion, catalyzing attention among the C-Level executives and driving investments and projects inside the enterprise. However, it is really interesting that just a selected group of business has created successful data teams and has mastered the skills to manage it. What we have seen is that most companies still do not know how to create, implement and manage a data and analytics organization. Above all, if data has become an strategic asset and is being considered the new oil for the 21st century economy, what your strategy to handle it ? This webinar will help to bring some concepts and ideas to enlighten your path to create and manage an analytics organization, providing some real life examples on companies which did it.
What is Business intelligence
Core Capabilities of Business Intelligence
Elements of Business Intelligence
Why Companies opt for Business Intelligence
Benefits of Business Intelligence
User of Business Intelligence
Reports of Business Intelligence
Business Application in Extended Enterprise
Business Analytics
Golden Rules for Business Intelligence
5 Stages of Business Intelligence
As the strategic importance of data has increased, new approaches to customer analytics have emerged as well. As customer interactions with companies grow and diversify, the need to integrate data faster and deliver real-time insights is critical. This presentation explores the underlying trends driving companies to become more data-driven and invest in customer analytics. And, it outlines three types of approaches to capturing, managing, analyzing, and activating customer knowledge and insights.
Presentation about BigData from a German Webcast: http://business-services.heise.de/it-management/big-data/beitrag/big-data-technologie-einsatzgebiete-datenschutz-160.html?source=IBM_12_2013_IT_Conn
Gain New Insights by Analyzing Machine Logs using Machine Data Analytics and BigInsights.
Half of Fortune 500 companies experience more than 80 hours of system down time annually. Spread evenly over a year, that amounts to approximately 13 minutes every day. As a consumer, the thought of online bank operations being inaccessible so frequently is disturbing. As a business owner, when systems go down, all processes come to a stop. Work in progress is destroyed and failure to meet SLA’s and contractual obligations can result in expensive fees, adverse publicity, and loss of current and potential future customers. Ultimately the inability to provide a reliable and stable system results in loss of $$$’s. While the failure of these systems is inevitable, the ability to timely predict failures and intercept them before they occur is now a requirement.
A possible solution to the problem can be found is in the huge volumes of diagnostic big data generated at hardware, firmware, middleware, application, storage and management layers indicating failures or errors. Machine analysis and understanding of this data is becoming an important part of debugging, performance analysis, root cause analysis and business analysis. In addition to preventing outages, machine data analysis can also provide insights for fraud detection, customer retention and other important use cases.
Enterprise Analytics: Serving Big Data Projects for HealthcareDATA360US
Andrew Rosenberg's Presentation on "Enterprise Analytics: Serving Big Data Projects for Healthcare" at DATA 360 Healthcare Informatics Conference - March 5th, 2015
The Data Operating System: Changing the Digital Trajectory of HealthcareHealth Catalyst
In 1989, John Reed, the CEO of Citibank and the early pioneer for ATMs, said, “I can see a future in which the data and information that is exchanged in our transactions are worth more than the transactions themselves.” We are at an interesting digital nexus in healthcare. Few of us would argue against the notion that data and digital health will play a bigger and bigger role in the future. But, are we on the right track to deliver on that future? It required $30B in federal incentive money to subsidize the uptake of Electronic Health Records (EHRs). You could argue that the federal incentives stimulated the first major step towards the digitization of health, but few physicians would celebrate its value in comparison to its expense. As the healthcare market consolidates through mergers and acquisitions (M&A), patching disparate EHRs and other information systems together becomes even more important, and challenging. An organization is not integrated until its data is integrated, but costly forklift replacements of these transaction information systems and consolidating them with a single EHR solution is not a viable financial solution.
how i managed to Develop a Analytics story for services about 4 years back. Contains
Maturity Model, Business Potential, Services Structures Areas that analytics can be applied to
20150108 create time stamp
Discussion Forum data, sourced from sites like Reddit and other social media platforms, as well other sources of textual information, provides tremendous opportunity for insight and innovation. This presentation focuses on how an analysis of unstructured data can be used to innovate in Life/Health Science organizations
The Data Operating System: Changing the Digital Trajectory of HealthcareDale Sanders
This is the next evolution in health information exchanges and data warehouses, specifically designed to support analytics, transaction processing, and third party application development, in one platform, the Data Operating System.
Discovering Big Data in the Fog: Why Catalogs MatterEric Kavanagh
The Briefing Room with Dr. Robin Bloor and Waterline Data
Good enterprise data can drive positive business outcomes. But if that data isn’t organized and accessible, information workers are left with an incomplete picture. Knowing the location, lineage and permissions of data across the enterprise can lead to more accurate and insightful searches, and ultimately, knowledge discovery.
Register for this episode of The Briefing Room to learn from veteran Analyst Dr. Robin Bloor as he discusses how the success of big data projects relies on understanding your data. He’ll be briefed by Todd Goldman and Mohan Sadashiva of Waterline Data, who will explain how their solution can facilitate discovery via automation and crowd sourcing. They’ll demonstrate how combining the value of tribal knowledge with rationalized data can enable self-service analytics, improve data governance, and reduce data redundancy.
What is the impact of Big Data on Analytics from a Data Science perspective.
Presented at the Big Data and Analytics Summit 2014, Nasscom by Mamatha Upadhyaya.
Extracting Big Value From Big Data in Digital Media - An Executive Webcast wi...Krishnan Parasuraman
As the amount and variety of business data continues to grow at incredible rates, more organizations are beginning to pay attention to the potential business impact found in digital media. In fact, Aberdeen's research shows that 61% of organizations consider digital media to be a critical part of their Big Data initiatives. However, fewer than one in five of these organizations currently have the tools to efficiently manage this type of information. This means that leading digital media firms - including advertisers, marketing service providers, content publishers and more - are finding themselves in the middle of an incredible opportunity.
Much has been made of the solutions to efficiently manage the growing volume, increased variety, and faster velocity of business data, but for these firms it is just as important to consider how to use this data to deliver the most value - to deliver the right message to the right person at the right time... for the right price. This webinar will provide research findings on the state of Big Data, and a discussion of the tools, techniques and talent used to boost marketing effectiveness, optimize ad campaigns and drive strong customer acquisition and retention.
Automated Trading Summit 2012, Amsterdam
Big Data impacts the way we think about managing, processing and analyzing marketing data. It is the foundational element for building Digital Marketing solutions such as Audience Optimization, Channel Optimization, Content Optimization and Yield Optimization.
Recent research and studies provides some fascinating insights into how
(a) CMO's view Big Data as their biggest areas of "under-preparedness",
(b) Organizations view Advanced Analytics as a competitive advantage and
(c) Digital Marketers view Big Data as an enabling platform for all their future initiatives
Today’s marketers are working feverishly to capitalize on the potential of highly insightful, yet unstructured, information being generated online. This coupled with the demands of real-time, rules-driven, audience-centered marketing represents a fundamental paradigm shift in how marketing is done. While the term “big data” may be fairly new, the concept is familiar to data-driven marketers who for years have been trying to run complex analytics across a deluge of structured and unstructured data flowing in from point-of-sale systems, web sites, social media, email campaigns, newsletters and many other online and offline sources.
A new study produced by strategic consulting firm Winterberry Group in conjunction with the Interactive Advertising Bureau (IAB) and sponsored by IBM, reveals top investment priorities, high impact data use cases and barriers to adoption pertaining to big data in marketing and digital media.
During this one hour webinar, we will present some of the key findings from our study which had contributions from over 175 advertising and marketing thought leaders. You will learn about the high priority use cases for today’s digital marketers, the underlying big data challenges and how some of the leaders are gearing up to address them with specific solutions.
Audience Optimization
Channel Optimization
Advertising Yield Optimization
Content Optimization & Ad Targeting
Hadoop World 2011: Building Scalable Data Platforms ; Hadoop & Netezza Deploy...Krishnan Parasuraman
Hadoop has rapidly emerged as a viable platform for Big Data analytics. Many experts believe Hadoop will subsume many of the data warehousing tasks presently done by traditional relational systems. In this presentation, you will learn about the similarities and differences of Hadoop and parallel data warehouses, and typical best practices. Edmunds will discuss how they increased delivery speed, reduced risk, and achieved faster reporting by combining ELT and ETL. For example, Edmunds ingests raw data into Hadoop and HBase then reprocesses the raw data in Netezza. You will also learn how Edmunds uses prototyping to work on nearly raw data with the company’s Analytics Team using Netezza.
Hadoop is rapidly emerging as a viable platform for big data analytics. Thanks to early adoption by organizations like Yahoo and Facebook, and an active open source community, we have seen significant innovation around this platform. With support of relational constructs and a SQL-like query interface, many experts believe that Hadoop will subsume some of the data warehousing tasks at some point in the future. Even though Hadoop and parallel databases have some architectural similarities, they are designed to solve different problems. In this presentation, you will get introduced to Hadoop architecture, its salient differences from Netezza and typical use cases. You will learn about common co-existence deployment models that have been put into practice by Netezza's customers who have leveraged benefits from both these technologies. You will also understand Netezza's current support for Hadoop and future strategy.
Encryption in Microsoft 365 - ExpertsLive Netherlands 2024Albert Hoitingh
In this session I delve into the encryption technology used in Microsoft 365 and Microsoft Purview. Including the concepts of Customer Key and Double Key Encryption.
DevOps and Testing slides at DASA ConnectKari Kakkonen
My and Rik Marselis slides at 30.5.2024 DASA Connect conference. We discuss about what is testing, then what is agile testing and finally what is Testing in DevOps. Finally we had lovely workshop with the participants trying to find out different ways to think about quality and testing in different parts of the DevOps infinity loop.
State of ICS and IoT Cyber Threat Landscape Report 2024 previewPrayukth K V
The IoT and OT threat landscape report has been prepared by the Threat Research Team at Sectrio using data from Sectrio, cyber threat intelligence farming facilities spread across over 85 cities around the world. In addition, Sectrio also runs AI-based advanced threat and payload engagement facilities that serve as sinks to attract and engage sophisticated threat actors, and newer malware including new variants and latent threats that are at an earlier stage of development.
The latest edition of the OT/ICS and IoT security Threat Landscape Report 2024 also covers:
State of global ICS asset and network exposure
Sectoral targets and attacks as well as the cost of ransom
Global APT activity, AI usage, actor and tactic profiles, and implications
Rise in volumes of AI-powered cyberattacks
Major cyber events in 2024
Malware and malicious payload trends
Cyberattack types and targets
Vulnerability exploit attempts on CVEs
Attacks on counties – USA
Expansion of bot farms – how, where, and why
In-depth analysis of the cyber threat landscape across North America, South America, Europe, APAC, and the Middle East
Why are attacks on smart factories rising?
Cyber risk predictions
Axis of attacks – Europe
Systemic attacks in the Middle East
Download the full report from here:
https://sectrio.com/resources/ot-threat-landscape-reports/sectrio-releases-ot-ics-and-iot-security-threat-landscape-report-2024/
Generating a custom Ruby SDK for your web service or Rails API using Smithyg2nightmarescribd
Have you ever wanted a Ruby client API to communicate with your web service? Smithy is a protocol-agnostic language for defining services and SDKs. Smithy Ruby is an implementation of Smithy that generates a Ruby SDK using a Smithy model. In this talk, we will explore Smithy and Smithy Ruby to learn how to generate custom feature-rich SDKs that can communicate with any web service, such as a Rails JSON API.
JMeter webinar - integration with InfluxDB and GrafanaRTTS
Watch this recorded webinar about real-time monitoring of application performance. See how to integrate Apache JMeter, the open-source leader in performance testing, with InfluxDB, the open-source time-series database, and Grafana, the open-source analytics and visualization application.
In this webinar, we will review the benefits of leveraging InfluxDB and Grafana when executing load tests and demonstrate how these tools are used to visualize performance metrics.
Length: 30 minutes
Session Overview
-------------------------------------------
During this webinar, we will cover the following topics while demonstrating the integrations of JMeter, InfluxDB and Grafana:
- What out-of-the-box solutions are available for real-time monitoring JMeter tests?
- What are the benefits of integrating InfluxDB and Grafana into the load testing stack?
- Which features are provided by Grafana?
- Demonstration of InfluxDB and Grafana using a practice web application
To view the webinar recording, go to:
https://www.rttsweb.com/jmeter-integration-webinar
The Art of the Pitch: WordPress Relationships and SalesLaura Byrne
Clients don’t know what they don’t know. What web solutions are right for them? How does WordPress come into the picture? How do you make sure you understand scope and timeline? What do you do if sometime changes?
All these questions and more will be explored as we talk about matching clients’ needs with what your agency offers without pulling teeth or pulling your hair out. Practical tips, and strategies for successful relationship building that leads to closing the deal.
GraphRAG is All You need? LLM & Knowledge GraphGuy Korland
Guy Korland, CEO and Co-founder of FalkorDB, will review two articles on the integration of language models with knowledge graphs.
1. Unifying Large Language Models and Knowledge Graphs: A Roadmap.
https://arxiv.org/abs/2306.08302
2. Microsoft Research's GraphRAG paper and a review paper on various uses of knowledge graphs:
https://www.microsoft.com/en-us/research/blog/graphrag-unlocking-llm-discovery-on-narrative-private-data/
Key Trends Shaping the Future of Infrastructure.pdfCheryl Hung
Keynote at DIGIT West Expo, Glasgow on 29 May 2024.
Cheryl Hung, ochery.com
Sr Director, Infrastructure Ecosystem, Arm.
The key trends across hardware, cloud and open-source; exploring how these areas are likely to mature and develop over the short and long-term, and then considering how organisations can position themselves to adapt and thrive.
Kubernetes & AI - Beauty and the Beast !?! @KCD Istanbul 2024Tobias Schneck
As AI technology is pushing into IT I was wondering myself, as an “infrastructure container kubernetes guy”, how get this fancy AI technology get managed from an infrastructure operational view? Is it possible to apply our lovely cloud native principals as well? What benefit’s both technologies could bring to each other?
Let me take this questions and provide you a short journey through existing deployment models and use cases for AI software. On practical examples, we discuss what cloud/on-premise strategy we may need for applying it to our own infrastructure to get it to work from an enterprise perspective. I want to give an overview about infrastructure requirements and technologies, what could be beneficial or limiting your AI use cases in an enterprise environment. An interactive Demo will give you some insides, what approaches I got already working for real.
Epistemic Interaction - tuning interfaces to provide information for AI supportAlan Dix
Paper presented at SYNERGY workshop at AVI 2024, Genoa, Italy. 3rd June 2024
https://alandix.com/academic/papers/synergy2024-epistemic/
As machine learning integrates deeper into human-computer interactions, the concept of epistemic interaction emerges, aiming to refine these interactions to enhance system adaptability. This approach encourages minor, intentional adjustments in user behaviour to enrich the data available for system learning. This paper introduces epistemic interaction within the context of human-system communication, illustrating how deliberate interaction design can improve system understanding and adaptation. Through concrete examples, we demonstrate the potential of epistemic interaction to significantly advance human-computer interaction by leveraging intuitive human communication strategies to inform system design and functionality, offering a novel pathway for enriching user-system engagements.
Neuro-symbolic is not enough, we need neuro-*semantic*Frank van Harmelen
Neuro-symbolic (NeSy) AI is on the rise. However, simply machine learning on just any symbolic structure is not sufficient to really harvest the gains of NeSy. These will only be gained when the symbolic structures have an actual semantics. I give an operational definition of semantics as “predictable inference”.
All of this illustrated with link prediction over knowledge graphs, but the argument is general.
Neuro-symbolic is not enough, we need neuro-*semantic*
Big Data Forum - Phoenix
1. IBM Big Data Forum
Salt River Fields, Phoenix, Arizona
16 May 2013
Krishnan Parasuraman
2. Talking Points
What is Big Data?1
What is the relationship between Big Data
and Analytics?
2
What does a Big Data Platform look like?3
What are the different entry points into Big Data?4
What is IBM’s strategy in Big Data?5
3. The number of organizations who see analytics as a
competitive advantage is growing.
2010 2011 2012
63%
4. IBM IBV/MIT Sloan Management Review Study 2011
Copyright Massachusetts Institute of Technology 2011
Studies show that organizations competing on
analytics substantially outperform their peers
1.6xRevenue
Growth 2.0x EBITDA
Growth2.5x Stock Price
Appreciation
4
6. Big Data Analytics Use Cases
Call Centers
Voice-to-text mining for understanding
customer sentiment
Healthcare
Genomics Analytics
Medical Record Analytics
E Commerce / Retail
Clickstream analytics
Analyze online behavior and buying patterns
Oil and Gas / Energy
Geospatial Analysis
Windmill placements
7. The Analytics Continuum…in Healthcare
Transaction
reporting
• Evidence-based medicine
• Personalized healthcare
• Dynamic fraud detection
• Patient, member behavior
• Enterprise-wide data
• Enterprise analytics
• Clinical outcomes reporting
• Unified data sources
• Clinical data repositories
• Departmental data marts
• Dashboards
• Spreadsheets
• Separate data sources
• Manual collation of data
• Basic reporting
Data integration
Data warehouse
Clinical
analytics
Advanced
analytics
• What are the key health indicators across my patient population?
• What are our quality scores ?
• What is the total cost of care?
• What is our productivity and resource utilization?
8. The Analytics Continuum…in Healthcare
Transaction
reporting
• Evidence-based medicine
• Personalized healthcare
• Dynamic fraud detection
• Patient, member behavior
• Enterprise-wide data
• Enterprise analytics
• Clinical outcomes reporting
• Unified data sources
• Clinical data repositories
• Departmental data marts
• Dashboards
• Spreadsheets
• Separate data sources
• Manual collation of data
• Basic reporting
Data integration
Data warehouse
Clinical
analytics
Advanced
analytics
• What are the main predictors for readmission?
• What patients are most at risk for a bad outcome?
• What patients require intervention for me to provide best care?
• What care programs lead to the best outcome for this patient?
9.
10.
11. So How many of these guys do you need to run
your analytics program?
13. Business Users
Define what they want to analyze
IT Builds solutions
Traditional Model
IT Creates Big Data Platform
Big Data Model
Exploratory Analysis
14. How does this change your enterprise data
architecture?
19. Big Data Challenges Have Diverse Requirements
Manage and analyze
unstructured data3
Hadoop File System / MapReduce
Text Analytics
Analyze data in real time4 Stream Computing
Discover, explore and
navigate big data sources
Federated Discovery, Search and Navigation1
Extreme Performance –
run analytics closer to data2
Massively Parallel Processing
Analytic Engines
Rich library of analytical
functions and tools5
In-Database Analytics Libraries
Big Data visualization
Integrate and govern all
data sources
6
Integration, Data
Quality, Security, Lifecycle
Management, MDM
20. Each of these Use Cases Combine Multiple
Technologies
Pre-processing
Ingest and analyze unstructured data types
and convert to structured data
Combine structured and unstructured analysis
Augment data warehouse with additional external
sources, such as social media
Combine high velocity and historical analysis
Analyze and react to data in motion; adjust models
with deep historical analysis
Reuse structured data for exploratory analysis
Experimentation and ad-hoc analysis with structured
data
21. Big data adoption
When segmented into four groups based on current levels of big data activity, respondents showed significant consistency in
organizational behaviors Total respondents n = 1061
Totals do not equal 100% due to rounding
Organizations are adopting big data in phases
22. Solutions
IBM Big Data Platform
Analytics and Decision Management
Big Data Infrastructure
The IBM Big Data Platform
23. Solutions
IBM Big Data Platform
Analytics and Decision Management
Big Data Infrastructure
Delivers deep insight
with advanced in-
database analytics &
operational analytics
PureData for
Analytics – expert
integrated systems to
make advanced
analytics faster
&simpler
Data
Warehouse
Data
Warehouse
The IBM Big Data Platform
24. Solutions
IBM Big Data Platform
Analytics and Decision Management
Big Data Infrastructure
Stream
Computing
Data
Warehouse
Analyze streaming data
and large data bursts
for real-time insights
InfoSphere Streams
– software enabling
continuous analysis of
massive volumes of
streaming data with
sub-millisecond
response times
Stream
Computing
The IBM Big Data Platform
25. Solutions
IBM Big Data Platform
Analytics and Decision Management
Big Data Infrastructure
Hadoop
System
Stream
Computing
Data
Warehouse
Cost-effectively analyze
Petabytes of
unstructured and
structured data
InfoSphere
BigInsights --
enterprise-grade
Hadoop system
enhanced with
advanced text
analytics, data
visualization, tools, &
performance features
for analyzing massive
volumes of structured
and unstructured
data.
Hadoop
System
The IBM Big Data Platform
26. Solutions
IBM Big Data Platform
Analytics and Decision Management
Big Data Infrastructure
Information Integration & Governance
Hadoop
System
Stream
Computing
Data
Warehouse
Govern data quality and
manage the information
lifecycle
InfoSphere Information
Server –Cleanses data,
monitors quality and
integrates big data with
existing systems
InfoSphere Optim –
manages business
information throughout its
lifecycle
InfoSphere Master
Data Management –
manages and maintains
trusted views of master
and reference data
InfoSphere Guardium–
real-time database
security and monitoring
Information Integration & Governance
The IBM Big Data Platform
27. Solutions
IBM Big Data Platform
Analytics and Decision Management
Big Data Infrastructure
Accelerators
Information Integration & Governance
Hadoop
System
Stream
Computing
Data
Warehouse
Speed time to value
with analytic and
application accelerators
Analytic
Accelerators – text
analytics, geospatial,
time-series, data
mining
Application
Accelerators –
financial services,
machine data, social
data, Telco event data
Industry Models
- comprehensive data
models based on
deep expertise and
industry best practice
Accelerators
The IBM Big Data Platform
28. Solutions
IBM Big Data Platform
Analytics and Decision Management
Big Data Infrastructure
Accelerators
Information Integration & Governance
Hadoop
System
Stream
Computing
Data
Warehouse
Systems
Management
Application
Development
Visualization
& Discovery
Discover, understand,
search, and navigate
federated sources of
big data
InfoSphere Data
Explorer – Discovery
and navigation
software that provides
real-time access and
fusion of big data with
rich and varied data
from enterprise
applications for
greater insight
Visualization
& Discovery
The IBM Big Data Platform