Modern Analytics And The Future Of Quality And Performance Excellence

Post on 10-Feb-2017

120 Views

Category:

Education

0 Downloads

Preview:

Click to see full reader

Transcript

Modern Analytics And The Future Of Quality And

Performance Excellence

IBS GURGAON

INTRODUCTIONWhat is Analytics?

• Analytics is the use of data, information technology, statistical analysis, quantitative methods and other tools to help managers gain improved insight about their business operations and make better, fact-based decisions.

• Almost all organisations are using modern analytics to improve customer relationships, financial and marketing activities, supply chain.

Users Of Business Analytics-

• Banks- to predict and prevent credit fraud

• Manufactures- for production, planning purchasing and inventory management.

• Retailers- to recommend products to customers

• Pharmaceutical Firms- to get life saving drugs to market

• Business Man- to make business strategies

• Auditors

• Students

Tools Used For Business Analytics

MS Excel- It is a spreadsheet application developed by Microsoft. It features calculation, graphing tools, pivot tables and a macro programming language called visual basic.

SPSS- SPSS Modeller is a data mining software tool by SPSS Inc., an IBM company. It was originally named SPSS Clementine. It is a software used for Statistical Analysis.

R- It is a programming language and software environment for statistical computing and graphics. The R language is an open source tool and is widely used by the academia.

ORIGIN OF BUSINESS ANALYTICS

• The term was first used by H. P. Luhn in an article entitled “A Business Intelligence System,” published in an IBM research journal in 1958.

• Work done throughout this period was focused on technologies, standards, processes and tools to support the collection, storage rationalization and retrieval of data and the creation of reports.

• Statistical methods include the basic tools of description, exploration, estimation, and inference, as well as more advanced techniques like regression, forecasting, and data mining.

History-

• Technology did not advance to the point where it could be considered an agent of business analytics until well into the 20th century.

• It was with the 1958 publication of a landmark article on the subject, written by IBM computer scientist Hans Peter Luhn, that the potential of BI was recognized.

• With the advent of computers in the business world, companies finally had an alternative to storing data on paper.

• IBM’s invention of the hard disk in 1956 revolutionized data storage. Floppy discs, laser discs, and other storage technologies meant that just as more and more data was being created, so too were there more and more places to store it.

• As business intelligence became a commonly known phrase in the late 1990’s and early 2000’s, dozens of new vendors hit the market.

• Statistical methods include the basic tools of description, exploration, estimation, and inference, as well as more advanced techniques like regression, forecasting, and data mining.

• Many operation research and management system applications use modelling and optimization to find the best solutions and decision.

• Decision support systems (DSS) began to evolve in the 1960s by combining business intelligence concepts with OR/MS models to create analytical-based computer systems to support decision making

SCOPE OF MODERN ANALYTICS

Modern Analytics have 3 fundamental disciplines-

1. Business intelligence/ Information systems (BI/IS)

2. Quantitative methods/ Operations research

3. Statistics

Modern analytics is often characterized from three perspectives-

1. Descriptive analytics- The use of data to understand past and current performance and make informed decisions. Descriptive analytics summarizes data into meaningful charts and reports, for example, about budgets, sales, revenues, or cost.

2. Predictive analytics- Analyzing past performance in an effort to predict the future by examining historical data, detecting patterns or relationships in these data, and then extrapolating these relationships forward in time.

3. Prescriptive analytics- Using optimization to identify the best alternatives to minimize or maximize some objective. The mathematical and statistical techniques of predictive analytics can also be combined with optimization to make decisions that take into account the uncertainty in the data

• Modern analytics is often associated with “big data.” Big data providean opportunity for organizations to gain a competitive advantage—if the data can be understood and analyzed effectively to make better decisions.

• Big data come from many sources, and can be numerical, textual, and even audio and video data.

• Big data are captured using sensors, click streams from the Web, customer transactions, emails, tweets and social media, and other ways.

• Processes such as fraud detection must be analyzed quickly to have value.

ANALYTICS IN BALDRIGE & STRATEGIC MANAGEMENT

Today analytics driven environment to include more fact based decission as opposed to judgement and intitution.

These principles have been reflected in the Baldrige Criteria for many years. The 2015-2016 Baldrige Excellence Framework (Baldrige Performance Excellence Program 2015) notes the importance of data and analytics in the Core Value of Management by Fact.

Various research studies have discovered strong relationships between a company’s performance in terms of profitability, revenue, and shareholder return and its use of analytics.

Application of BaldrigeFor all organizations, turning data into knowledge and knowledge into useful strategic insights is the real challenge of big data. While the volume of data an organization must assimilate and use in decision making may vary widely, all organizations are faced with using data from different sources and of varying quality.

Various elements of the Baldrige Criteria explicitly address both descriptive and predictive analytics implicitly:

• Strategy considerations- How do you collect and analyze relevant data and develop information for your strategic planning process?

Performance projections- what are your performance projections for your short- and longer-term planning horizons?

• Performance measures. How do you use data and information to track daily operations and overall organizational performance?

• Future performance. How do you project your organization’s future performance?

ANALYTICS & THE QUALITY PROFESSION

• Extensive amount of activity surrounding analytics in business and academia, the quality profession appears to be lagging behind analytic trends.

• 70 percent of executives think they are incapable of leveraging what data are saying.

•More than 50 percent of organizations do not knowhow to make business decisions based on predictive Analytic• Only traditional tools such as fishbone and affinity diagrams for analysis.

• Data visualization represents one of the most effective tools for communicating analytic information.

• Following are the categories I. space and time, II. multivariate, III. text, graphIV. network

• Data visualizations are often summarized in “dashboards”and “scorecards” to report key performance measures.

• The use of dashboards has been reported by many Baldrige recipients

Data Visualisation-

• One of the most powerful methods of modern analytics is data and text mining.

• It is the extraction of hidden predictive information from large databases, is a powerful new technology with great potential to help companies focus on the most important information in their data warehouses.

• Data mining tools predict future trends and behaviors, allowing businesses to make proactive, knowledge-driven decisions.

• Data mining can be considered part descriptive and part prescriptive.

Data Mining-

Some common approaches in data mining

• Data exploration and reduction• Cluster analysis• Classification.• Discriminant analysis• Logistic regression.• Association• Cause-and-effect modeling

CONCLUSION• The amount of data that is generated in the business world is doubling every year. Therefore the demand for business analytics will grow in near future.

• By combining data, statistical analysis and predictive modelling, business analytics enables more accurate, objective and economical decision making.

• Business analytics is moving from looking at reports generated by a business intelligence (BI) system to an algorithm that will make decisions for you.

• Five trends that have changed the future of business analytics are-:

Cloud ComputingBig Data Social MediaMobilePredictive Analytics

Challenges For Business Analytics-

1. Depends on sufficient volume of high quality data.

2. Lack of understanding of how to use analytics, competing business priorities, insufficient analytical skills, difficulty in getting good data and sharing information.

3. In the past, business users relied on statisticians to analyze the data and to report the results.

4. The growing variety in data, organization’s need to determine the types of data they want to analyze.

5. Data warehousing requires a large storage capacity to store huge amount of data.

Advantages of Modern Analytics-

1. Improves the decision making process.

2. Responding to user needs for availability of data on timely basis

3. Sharing information with a wider audience.

4. Increase the quality of decision making.

THANK YOU

top related