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Conclusion: One of the misconceptions in business intelligence (BI) is that the goal is to capture and report upon all available data. This misses an essential business maxim: data is only useful when it is applied deliberately and with a clear goal in mind.
Too often, an organisation’s focus on BI quickly moves from aspirational principles of ‘being a data-driven business’ to discussions of technology architecture and data governance. However, it is dangerous to focus on simply hoarding data in the hope it will be useful in the future. What extracts value from data are steps taken after collection. And to define those steps, an organisation must first define the purpose to which the data will be applied.
IBRS has identified four increasingly sophisticated business models for how data can be applied: business reporting, data visualisation, key performance dashboard and predictive decision support.
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Conclusion: A common pitfall experienced by service-orientated organisations is the disconnect between its digital efforts and its marketing program. In good practice, marketing efforts should underpin your digital strategy. This can be achieved by unifying marketing’s focus on customer and staff engagement, communications and promotion with the leveraging of digital channels to conduct these activities.
Conclusion: As Australia’s use of consultancy services continues to grow, so too does the need for businesses to obtain value from these engagements quickly and effectively. Key to obtaining this value is the organisation’s ability to easily and rapidly provide consultants and contractors with the specific context of your business, your customers and your unique challenges.
By providing the organisational context quickly, you can mitigate time, scope and budget creep, improve the quality of outputs developed by consultants and ensure that consequent plans are actionable and genuinely valuable for your business.
However, the ability to provide the needed organisational context quickly and effectively to consultants remains a common organisational challenge, and therefore a pitfall for successful vendor engagement. This paper covers how you can overcome this pitfall.
Conclusion: Dropbox’s announcement of a new interface may seem trivial, but its repositioning of ‘folders’ heralds the next disruptive phase of information management. By changing folders from being an approach for hierarchical organisation of information to being a ‘digital workspace’ for collaboration, Dropbox is leading the charge to drop the ‘paper metaphor’ in favour of collaboration. The impact on traditional information management lifecycles and information management will be both significant and challenging.
Conclusion: While the current artificial intelligence (AI) initiatives are data-driven, there are instances whereby the current data is insufficient to predict the future. For example, answering the following questions might be challenging if the available data is only of a historical nature irrelevant for forecasting purposes:
The purpose of this note is to provide a framework that can be used to derive sales principles to answer the above questions. The same approach can be used to derive other business processes principles such as procurement, customer service and client complaints tracking.
"Acknowledging the limits of machine learning during AI-enabled transformation" IBRS, 2019-01-06 22:29:52
"Analytics artificial intelligence maturity model" IBRS, 2018-12-03 09:44:43
"Machine learning will displace “extract, transform and load” in business intelligence and data integration" IBRS, 2018-02-01 10:03:37
Conclusion: Artificial intelligence technologies are available in various places such as robotic process automation (RPA), virtual agents and analytics. The purpose of this paper is to provide an AI maturity model in the analytics space. The proposed maturity model can be applied to any type of industry. It provides a roadmap to help improve business performance in the following areas:
Conclusion: Automation is understood to facilitate repetitive but essentially simple tasks. In conjunction with general purpose machine intelligence, virtual personal assistants and technologies leveraging artificial intelligence, automation will expand into more operational roles.
As the technologies improve, the potential applications will expand and play a larger marketing role.
Conclusion: Organisations continue to emphasise their competitive differentiation based on the data they hold, and the insights gained from analysing this valuable resource. The rate at which organisations are shifting from traditional process-based to insight-oriented differentiation is being further accelerated by the adoption of Cloud-based data analytics services.
The combined result is an increasing portion of enterprise project activity that can be classified as extract, transform and load (ETL).
Despite ETL being the mainstay of data integration for decades, the cost of specialised skills and significant manual effort expended on integrating disparate data sources is now coming into sharp focus. In response, organisations are rightly seeking lower-cost solutions for data integration.
Although ETL exists in the form of at least one tool in almost every enterprise, the cost of ETL as a proportion of data analytics projects means organisations must decrease reliance on traditional ETL tools in favour of automated solutions that exploit machine learning techniques to reduce the need for ETL developers.
IBRS iQ is a database of Client inquiries and is designed to get you talking to our Advisors about these topics in the context of your organisation in order to provide tailored advice for your needs.
Conclusion: The return on investment in big data and associated analytics projects has been generally positive. It is more likely that returns over the longer term will grow too, provided strategic aims are established. The promise of big data hinges on information analysis, and therefore organisations must be clear as to use and application of the insight.
Conclusion: Machines are becoming increasingly proficient at tasks that, in the past, required human intelligence. Virtually all human domain expertise can be encoded in digital data with the right knowledge engineering tools. The bottleneck in understanding between humans and software is shaped by the ambiguities inherent in human communication, not by the challenge of developing machine intelligence. To benefit from big data, organisations need to articulate knowledge in the language of data, i.e. in a format that is not only understandable by humans but also actionable by machines.
Data scientists are in hot demand. In December 2012 the Harvard Business Review featured an article titled “Data Scientist: The Sexiest Job of the 21st Century”. International online job boards and LinkedIn have many thousands of openings asking for big data skills, and a growing number of openings for data scientists. What is all the hype about?
Conclusion: Cloud infrastructure and platforms have started to alter the landscape of data storage and data processing. Software as a Service (SaaS) Customer Relationship Management (CRM) functionality such as Salesforce.com is considered best of breed, and even traditional vendors such as SAP are transitioning customers to SaaS solutions. The recent disclosure of global Cloud data mining by the US National Security Agency (NSA) has further fuelled concerns about industrial espionage in Europe and has significantly raised citizen awareness with respect to privacy and data custodianship. Any realistic attempt to address these concerns requires radical changes in data architectures and legislation.
Conclusion: Government agencies are slow in implementing open public sector information in line with freedom of information requirements. Agencies are challenged in terms of awareness of related government policies, in terms of cross-disciplinary collaboration, and in terms of obtaining funding for open data initiatives. The implications are not limited to government, but also affect the ability of Australian businesses to develop innovative products that derive value from Big Data in the public domain.
Many organisations are seeing growing demandand discussion around mobility and mobile ap-plications, in particular in the Networks Group.In theory, mobility can enable significant businessinnovation and optimisation of business process-es. However, few organisations have been able toclarify the benefits of mobility in terms that arealigned to their organisational goals and visionsstatements. This challenge is exacerbated by therapid innovation and changes underway in themobility market.
What is needed to address these problems is aconsistent, repeatable process that embeds mo-bility into the organisation’s overall IT Strategy.At the same time, mobility needs to be treatedslightly differently to many traditional projectsof work, as most mobility initiatives are smaller,with shorter deliver times, than large system de-ployments, but of often intimately interconnectedwith, and enabled by, the traditional larger backend systems.
To meet this challenge, IBRS developed its Mobil-ity Strategy Methodology, which provides a formalframework and process.
Conclusion: The maturity of information management practices in an organisation has a direct effect on the ability to achieve business goals related to supply chain optimisation, the quality of financial decisions, productivity, and quality of service. The exponential growth of unstructured information is no replacement for structured information. Quite the opposite: a stream of unstructured Big Data can only be turned into tangible value once it is channelled through a distillery that extracts highly structured information accessible to human decision makers, and that can be used to provide a service to the public or to drive a commercial business model. The transformation of unstructured data into knowledge and actionable insights involves several stages of distillation, the quality of which determine the overall performance of the organisation.
Conclusion: There are many links between the story of data warehousing and the story of SAP adoption, going all the way back to 1997, when SAP started developing a “Reporting Server”. Over the following decade SAP firmed up its dominant position as a provider of Enterprise Resource Planning functionality, creating countless business intelligence initiatives in the wake of SAP ERP implementation projects. Up to 80% of data warehouses have become white elephants, some completely abandoned, and others have been subjected to one or more resuscitation attempts. Big data can either be the last nail in the coffin, or it can be the vaccine that turns the colour of the data warehousing elephant into a healthy grey.
Conclusion: Unless you have a definition of the key data items for your enterprise, you will not be able to manage your data effectively. Astute CIOs have an understanding of the key data items that their organisation relies on for effective decision-making.
An enterprise data model documents the data in your organisation. It is a key enterprise architecture asset that enables more effective data management as well as offering the CIO the ability to reduce duplication and provide a higher level of service to the organisation.
Conclusion: Location, or geospatial information, is a central but significantly under-utilised element of the volume of data created and leveraged by organisations. Location information is simply presented and leveraged as text, e.g. an address. But location information is not just about where an asset or activity is located, but rather, where it is located in relation to other assets or activity. That relationship is best presented visually.
Conclusion: Pattern-based and repeatable processes, such as gathering operational data, validating data, and assessing data quality, offer potential for automation. The Web and software-as-a-service technologies offer powerful tools that facilitate automation beyond the simple mechanical pumping of data from one system to the next. Operational management tasks that focus on administration and control can and should be automated, so that managers have time to think about the organisation as a system, and can focus on continuous improvement.
Conclusion: A competency centre for Business Intelligence (BI) must have an active mandate and involvement from the senior executive to sustain optimised delivery of the organisational BI strategy. This leadership is a key factor in the ability to successfully deliver the initial benefits of the competency centre within a three month development period, establishing long term benefits.
Conclusion: The implementation of, and ongoing investment in Business Intelligence (BI) solutions have regularly failed to meet organisational expectations, both in terms of business outcomes and cost1. Further highlighting this, the most recent Gartner predictions for 2012 highlight that by 2015, more than 85% of Fortune 500 companies will have failed to effectively exploit Big Data (and by extension BI) to achieve competitive advantage2. As an outcome, consideration of the establishment of a BI Competency Centre is relevant for a large number of organisations who wish to improve outcomes of BI within their organisation. The establishment of the centre of excellence can align resources, focus capabilities and ensure education of projects and processes are shared across the organisation.
Conclusion: Over the last decade, the volume of data that governments and private corporations collect from citizens has been eclipsed by the data produced by individuals, as photos, videos, and messages on online social platforms, and also the data produced by large scale networks of sensors that monitor traffic, weather, and industrial systems. Web users are increasingly recognising the risks of handing over data-mining rights to a very small group of organisations, whist getting very little in return. The pressure is on to develop robust solutions that not only deliver value, but also address concerns about data ownership, privacy, and the threat of data theft and abuse.
Conclusion: The implementation of Business Intelligence is critical to the optimised operation of even the most basic business functions. When executed well it provides quantifiable competitive advantage for private sector organisations, and improved service delivery outcomes for the public sector.
IT has a significant opportunity to enhance its business relevance by ensuring that Business Intelligence best practice is active and transparent across the organisation. Organisations without a comprehensive investment and capability in Business Intelligence will struggle to complete and will operate below their potential.
Conclusion: IBRS has identified three broad approaches to Microsoft Office upgrades. In this research, we examine the benefits and challenges of each approach, and key considerations for planning. Organisations with more than 750 seats should avoid ad hoc Office deployments and take time to get their migration strategy in place, or risk creating a “demand feedback loop” that will result in higher costs and dissatisfaction with the IT department.
Conclusion: Business intelligence has traditionally served as an after-the-fact reporting and analysis capability that drifts weeks or months behind current events. Modern enterprises demand timelier access to integrated information. This demand cannot be met by conventional business intelligence approaches and requires a variety of new techniques targeted at the immediacy of the information required.
Conclusion: We are living in the Knowledge Age, and the operations of many organisations are critically dependent on the use of software-intensive systems. The value of operational data is well recognised, and the power struggle between the Internet superpowers such as Google, Amazon, and Facebook is largely about control over data. Knowledge however, is much more than raw data, and can be defined as the capability to transform data into valuable products and services. Today vast amounts of knowledge are expressed in the form of program source code and related data structure definitions. Most of this knowledge is not nearly as easily accessible and modifiable as we would like it to be. Techniques for knowledge reconstruction are becoming highly relevant, and organisations are well advised to up-skill Enterprise Architects and Business Analysts in this new discipline.
Conclusion: Operational data is the heart of a business in the information age. Without operational data the organisation would cease to function, irrespective of the software and hardware infrastructure that is in place. Hence the quality of data is a logical starting point for identifying opportunities to improve business operations. When used in combination with top-down value chain analysis, a quality assessment and categorisation of data can be used to identify essential system functionality, to identify pockets of obsolete functionality, and to discover sets of unreliable or redundant data.
Conclusion: Automated software and system testing will never be the testing silver bullet. One of its components though, the automated generation of test data, is one of the powerful weapons in the software testing arsenal1 and its deployment can provide a strategic advantage in the testing battle. The key is when and how to automate test data generation and which of its features are most effective when deployed. Two of its most useful benefits are reducing risks by protecting personal details and lowering costs by significantly reducing the numbers of tests required.
Conclusion:Organisations are drowning in complexity and information overload. At the same time, saving costs is at the top of the agenda. The only realistic path forward lies in tackling complexity head-on by deploying analytical techniques that help identify spurious complexity and confirm intrinsic complexity. Subsequently spurious complexity can be removed by surgical intervention, one step at a time.
Recently Wired magazine featured an interview with the CEO of Facebook where Mark Zuckerberg claims that Facebook does not regard other online networking platforms as competition, but that Google is the real competitor.
Conclusion:Privacy and data protection laws in Australia and NZ hold organisations, rather than their subcontractors, responsible for the activities of their subcontractors. Before committing to outsourcing any corporate data to a cloud computing vendor any organisation must ensure that all relevant legal constraints are agreed and in place so as to avoid any subsequent litigation. Ensuring and monitoring this may not be easy.
Conclusion: In our experience many Business Intelligence (BI) initiatives end up well short of their original objectives. But all is not lost. Sometimes it helps to learn from the experiences of others. For those:
This research paper examines some case studies and examples which reference breakthrough approaches and reflect the sometimes arduous travails involved in dealing with the many challenges presented by BI projects.
Conclusion: To gain insight into C-level executive intentions with information management, Accenture carried out a global survey2 in 2007. Whilst the majority of respondents had well-developed views on the power of Business Intelligence (BI) as a strategic differentiator, the report unearthed an underlying frustration in achieving their vision of an organisation-wide BI capability. This echoes our experiences in the ANZ market in which we observe many CIOs struggling to bring their complete BI visions to reality.
Conclusion: In 2008, corporate databases reached unprecedented sizes. Yet despite the abundance and diversity of data, many organisations remain challenged by Business Intelligence (BI) initiatives. They buy on vendor promise, but many have difficulty fulfilling it. Against this backdrop, and in a confusing post-acquisition market, BI vendors continue to release increasingly sophisticated and capable products.
Conclusion: Building a business case for Unified Communications is currently more of an art than a science. Traditional Return on Investment (ROI) models are now inapplicable unless arbitrary values are placed on intangible benefits. However, the difficulty of building a business case for UC does not mean that there is none – just that we need to view (and measure) UC’s benefits in accordance with the stage of maturity of the technology’s adoption. Paradoxically, as UC evolves past its current human-to-human model over the next decade, we will be able to switch back to using formal ROI models.
Conclusion: Too often corporate decision making is not a rational and well structured process.. The team charged with making the decision often accumulates a lot of information, probably biased by their own values, then goes into a room and emerges with a decision. This approach is a poor basis for making complex or important decisions
Conclusion: BI technology platforms have been available in various guises for over two decades. Indeed, certain BI terms, such as ‘drill down’ have become embedded into business parlance.
The technology itself is mature and capable and many organisations have harnessed it to their advantage. However, some of our recent dealings with both IT and business executives reveal an underlying dissatisfaction with their BI implementations. Complaints include costly implementations, poor acceptance of the technology, particularly by middle management, and concerns with data quality and integrity.
Conclusion: Due to their scale of operation and the massive databases they need to manage, Australia’s major banks often act as a bellwether for other IT users. This is certainly the case at present as a number of banks commit to Master Data Management (MDM) in an effort to bring their management reporting into order.
Conclusion: Knowledge Management (KM) is often thought of as a dark art. It’s not. Many organisations can benefit in tangible ways (e.g. quick access to a problem database in a Help Desk context) by harvesting the knowledge that already exists within them.
The last article on KM concerned explicit knowledge management, being knowledge that has already been articulated in some form within an organisation. This article is focused on tacit or implicit knowledge which is concerned with the experiences of individuals.
Conclusion: With the increasing sophistication of application software, it seems inconceivable in 2005 for any organisation to have data quality problems. Yet it is a problem that does occur more frequently than many recognise.
Conclusion: Understanding the future would obviously give everyone a real competitive edge, or at the very least reduce wastage and efforts in the wrong direction. Forecasting is intended to reduce risk but the quality of forecasts is the key to getting something useful from them. That statement may seem simplistic but many forecasts do not use standard methodologies, or even methodologies that are clear to an outside observer. For anyone using forecasts to build plans and investments, the forecast should meet two conditions:
Use a clear and transparent methodology with data that is verifiable and from known sources, and:
A forecast model that contains more than one outcome, because a range of possible outcomes within the confines of the forecast, may be more realistic given the variable forces operating in a market.
Unless a forecast meets the two conditions outlined above, what ought to be a powerful instrument with which to organise strategy, is just a scrap of paper.
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