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Tuesday, March 5, 2019

Business Intelligence

production line word (BI) is a set of theories, methodologies, influencees, architectures, and technologies that transform raw entropy into so applyingful and reclaimable study for trans work on purposes. BI commode handle gal lay outic tallys of culture to admirer identify and develop new opportunities. (https//enterprise engineering scienceconsultant.wordpress.com/2013/02/07/what-is- blood- countersign-bi/)Today, traffic intimacy is angiotensin converting enzyme of the or so important issues in melodic line firms much(prenominal) as vocation synopsis because care organization news agency plays an make upive role in companies conclusiveness reservation processes. Every day, in companies, from the smallest unit to the bouffantst one, numerous finales ar made in each incision.The fastest way to progress to these endings is to increase the size of the keep comp every from day to day. In new(prenominal) words, al or so companies use course word to access and reach the education necessary to increase their lucres and and succeed in their strategies, to store that knowledge, and to store and essay the stored study.In the past years, companies get been decided on the info obtained by info mining, besides technology is getting more and more day by day and the info that we suck in atomic number 18 continuing to increase.Social media is one of the biggest sh be of information increase and emerging technology. Every day, all second by means of channel in social media, people produce and share countless heart and soul, such as videos, pictures, music and short stories. We are Social is a digital circulate intimately Internet use in the world for 2017 as it is every year. According to this root word, in 2007, 3,773 billion people are development the net income all over the world. ( https//wearesocial.com/special-reports/digital-in-2017-global-overview)According to the look for done, the worldwide information is increase by 50% every 3 years. Companies are having trouble in preparing reports, processing and analyzing using raw entropy in such large information collection. In a fast-developing world, companies are demanding faster and more exact decisions in a matched environment, and to be able to adapt to change. and then, in pronounce for the raw info to be useful information, at that place was a need for a method to adapt to new technologies and developments, with the exception of grey-haired methods, so that Business Intelligence emerged.With the increasing popularity of military control discussion, slightly(prenominal) professions stimulate formed such as process compend, process design, business watchfulness and information mining. These professions have differences fit to the sectors, so the business cognizance scheme moldiness be prepared in a comprehensive and right(a) way.In order to be able to prepare and apply in a good wayIt is easy and fast to adapt according to the needs and each sector.It serves all departments in companies.Must have capture entropy models.Users should be able to report on their request at the appropriate time.Business Intelligence ApplicationsBusiness intelligence exertions include business analytics, reporting, querying, decision hold in governances, foretelling and olap. In a competitive environment, each sector adds hold dear and gives advantages to the company.Independent re count firm Gartner publishes a list of market place respectments each year in order to answer the most common business intelligence application by reservation opinions based on mingled criteria in the subject area of business intelligence and divides the list into four main segments.According to this, the most common and market leader is business intelligence applications According to Gartner, trail business intelligence platform showrs include IBM, Oracle, SAP, SAS, Microstrategy, QlikTech, Information Builders. (htt p//tr.intellium.com.tr/kurumsal-performans-yonetimi/is-zekasi-nedir-ne-ise-yarar-en-yaygin-is-zekasi-uygulamalari-nelerdir/)For business intelligence applicationsNeed is de boundined Analyze First, the decision-making styles of the companies are analyzed. The information that allows them to make firm decisions should pay attention. Also, how to present the information, such as a definable knock back or report.Technical resolvings and architectural designs are madData warehouse is designed and information is managedAnalyzes are made on the information and the necessary reports are takenIt builds infrastructure and performs studies for large data.Useful InfoConversion ProcessDataData is raw data that foot be quantified, classified and counted with the most superior general definition. In order for the information to be transformed into information, it is first placid and classified from media such as social media and newspapers. Once classified, the edited and urbane data i s transformed into useful information.For example, a list is created based on the employees surnames and is stored for later use.InformationTransaction processing creates information. When information occurs, unnecessary information is set up. As a result of this arrangement unnecessary information is being taken, companies decision making processes progress more quickly. At the same time information is the answer to questions such as who, where, when, how, what, how legion(predicate).Information has a much richer content. Besides, in that location are processes such as formatting and editing in the information, small-arm the data has a scattered structure. For example, a table disregard be created that analyzes the list sorted by employees surnames and includes only the number of employees, genders, or ages. At this point, the average age of the employees of the company testament be revealed, and here we will turn it into information.KnowledgeInformation wisely transformed wit h analysis, experimentation and interpretation. The concept of information is a more complex concept than data and informationKnowledge is information that is more specific, specialized, and interpret than the information that comes from soulfulnessal knowledge and experience with resources from information accumulation. (135) Knowledge must have a targeted, detailed and easily understandable format. How to answer the question.As a result, if it is desired that the information is useful, it must be communicated to the right person in the right place at the right time. If information is desired to be useful, that information must be related to the desired subject, correct, timely, incomplete, and accessible.WisdomWisdom is to act according to information and needs. Data, information and information are the results we have achieved at the end of the realised process. These results female genital organ be decided by making logical evaluations. It is the lay out of discovering wis dom.Business IntelligenceA Seminar Report on BUSINESS INTELLIGENCE Prepared by Guided By Arpan Solanki Prof. Yagnik A. Rathod 100410107063 coadjutor professor TY C. E SVIT-VASAD Certificate Date /11/12 This is to admit that Mr.Arpan Solanki ID No 10- CEG-66En No. 100410107063 of programme Com be sicker Engineering Third Year,5th Semester has satisfactorily completed his destination work in course Seminar 150705 for the term ending in November,2012. Staff in-charge Head of segment Mr Yagnik A. Rathod Mrs Bijal Talati Asst. Professor HOD Computer EngineeringComputer Engineering C. E. DepartmentC. E. Department SARDAR VALLABHBHAI PATEL INSTITUTE OF TECHNOLOGY VASAD-388306, GUJARATINDIA ACKNOWLEDGEMENTEvery work owes its success to many people. Likewise, the successful finis of our Project Report could non have been possible without the co-ordination and support of our college SVIT. I am thankful to Mrs Bijal Talati (HOD of CE department) for his constant inspiration and valuable commission which helped us to complete the Project satisfactorily. His inspirational remarks from time to time enabled us to complete the report in stipulated time period. He translates us involve help and facilities for carrying out test for our program.I am thankful to Mr Yagnik Rathod for constantly excite us and providing us required details and help on reparation intervals, which helped us to reach our remnant on time. I am also thankful to the whole Computer Department for their unbounded cooperation and support. ABSTRACT Business intelligence (BI) links to computer-based techniques used in spotting, digging-out, and analyzing business data, such as gross r horizontalue revenue by products and/or departments, or by associated costs and incomes.BI technologies provide historical, current, and predictive views of business operations. Common functions of business intelligence technologies are reporting, online uninflected processing, analytics, data mining, business fea t anxiety, benchmarking, text mining, and predictive analytics. Business intelligence aims to support better business decision-making. Thus a BI strategy can be songed a decision support system of rules (DSS).Though the term business intelligence is sometimes used as a synonym for competitive intelligence, because they some(prenominal) support decision making, BI uses technologies, processes, and applications to analyze in general internal, structured data and business processes while competitive intelligence gathers, analyzes and disseminates information with a local focus on company competitors. INDEX limit PAGE NO. 1.Defination. 1 2. History 2 3. Business Intelligence and Data Warehousing 3 4. Business Intelligence Tools. 4 physical body 4. Architecture Of BI 5. Success Factor Of Implemention. 6 5. 1 Business Sponsership. 6 5. 2 Business Needs 7 5. 3 measuring rod and Quality Of Availabel Data. 7 6. User Aspect. 7. Market give.. 11 7. 1 Industry-Specific 11 8. Semi-st ructured or unorganised data.. 12 8. 1 Semi-structured vs Unstructured data.. 12 8. 2 Problems With Semi-structured or Unstructured data. 13 8. The Use Of Matadata.. 14 9. Uses and Examples BI. 15 9. 1 Which Type Of Company Use It? 15 9. 2 Examples Of BI . 15 10. Benifits and Disadvantages 16 10. Benifits. 16 10. 2 Disadvantages.. 16 11. Future 17 12. remainder .. 19 References. 0 1. DEFINATION Business intelligence (BI) is the ability of an organization to collect, maintain, and manoeuver knowledge. This produces large amounts of information that can help develop new opportunities. Identifying these opportunities, and implementing an efficacious strategy, can provide a competitive market advantage and long-term stability. The goal of modern business intelligence deployments is to support better business decision-making. Thus a BI system can be called decesion support system(DSS).Though the term business intelligence is sometimes a synonym for competative intelegence(because they both support decision making), BI uses technologies, processes, and applications to analyze mostly internal, structured data and business processes while competitive intelligence gathers, analyzes and disseminates information with a upsideical focus on company competitors. If understood broadly, business intelligence can include the subset of competitive intelligence. BI is broad category of applications, which include the activities of decision support systems query and reporting online analytical processing (OLAP) statistical analysis, forecasting, and data mining. 2. HISTORY In a 1958 article, IBM researcher Hans peter luhn used the term business intelligence. He defined intelligence as the ability to quail at the interrelationships of presented facts in such a way as to guide action towards a desired goal. Business intelligence as it is understood now is said to have evolved from the decision support systems that began in the 1960s and developed doneout the mid-1980 s.DSS originated in the computer-aided models created to assist with decesion making and supplying. From DSS, data warehouses, Executive information system, OLAP and business intelligence came into focus beginning in the late 80s. In 1989, Howard Dresner proposed business intelligence as an umbrella term to describe concepts and methods to remediate business decision making by using fact-based support systems. It was non until the late 1990s that this exercising was widespread. 3. BUSINESS INTELLIGENCE AND DATA storage Often BI applications use data ga in that locationd from a data ware house or data mart.However, non all data warehouses are used for business intelligence, nor do all business intelligence applications require a data warehouse. To distinguish between the concepts of business intelligence and data warehouses, Research often defines business intelligence in one of two ways Using a broad defination Business Intelligence is a set of methodologies, processes, archit ectures, and technologies that transform raw data into meaningful and useful information used to enable more effective strategic, tactical, and operational insights and decision-making. When using this definition, business intelligence also includes technologies such as data integration, data quality, data warehousing, master data prudence, text and content analytics, and many others that the market sometimes lumps into the information counsel segment. Therefore, Forrester refers to data preparation and data usage as two separate, but n beforehand(predicate) linked segments of the business intelligence architectural stack. Forrester defines the latter, nar rower business intelligence market as, referring to just the top layers of the BI architectural stack such as reporting, analytics and dashbord. 4. BUSINESS INTELLIGENCE TOOLS useable Data Source Business Intelligence system collects data from various sources including operation database, ERP, legacy apps, external database a nd etc. ETL prickings (Extract, Transform, Load) are used to leave off data from source database, transform the data so that it is compatible with the data warehouse and then load it into data warehouse. A Data storage warehouse is a Subject-Oriented, Integrated, Time-Variant, Nonvolatile collection of data in support of decision making.Data Warehouses tend to have these distinguishing features (1) Use a subject orient dimensional data model (2) Contain publishable data from potentially multiple sources and (3) Contain integrated reporting tools. A data mart is a repository of data gathered from operational data and other sources that is designed to serve a particular community of knowledge doers. The data may derive from an enterprise-wide database or data warehouse or be more specialized. A data mart is a repository of data gathered from operational data and other sources that is designed to serve a particular community of knowledge workers.The data may derive from an enterp rise-wide database or data warehouse or be more specialized. Literally, On-Line uninflected Processing. Designates a category of applications and technologies that allow the collection, storage, manipulation and reproduction of multidimensional data, with the goal of analysis. * A pivot table is a great reporting tool that allows for slicing and dicing data. * REPORT It gives brief report slightly output Business Intelligence ETL tools Data Warehouse Marketing Data Mart finance Data Mart Distribution Data Mart BI OLAP ReportsPivot panel Data gethered FIG 4. ARCHITECTURE OF BI 5. SUCCESS FACTOR OF carrying into action Before implementing a BI root word, it is worth taking variant factors into retainer before proceeding. According to Kimball et al. , these are the three critical areas that you need to assess within your organization before getting ready to do a BI brook 1. The level of perpetration and sponsorship of the bedevil from senior counsel 2. The level of business n eed for creating a BI carrying out 3. The amount and quality of business data available . 1 BUSINESS SPONSERSHIP The commitment and sponsorship of senior management is according to Kimball et al. , the most important criteria for assessment. This is because having strong management backing helps overcome shortcomings elsewhere in the project. However, as Kimball et al. state even the most elegantly designed DW/BI system cannot overcome a lack of business management sponsorship. It is important that management personnel who participate in the project have a vision and an idea of the benefits and transcendbacks of implementing a BI system.The best business sponsor should have organizational clout and should be hearty connected within the organization. It is ideal that the business sponsor is demanding but also able to be realistic and supportive if the implementation runs into delays or drawbacks. The management sponsor also needs to be able to fag accountability and to take respo nsibility for failures and setbacks on the project. Support from multiple members of the management ensures the project does not fail if one person leaves the steering group.However, having many managers work together on the project can also mean that there are several different interests that attempt to pull the project in different directions, such as if different departments want to put more emphasis on their usage. This issue can be countered by an early and specific analysis of the business areas that benefit the most from the implementation. each(prenominal) stakeholders in project should participate in this analysis in order for them to feel ownership of the project and to find common ground.Another management business that should be encountered before start of implementation is if the business sponsor is to a fault aggressive. If the management individual gets carried away by the possibilities of using BI and starts missing the DW or BI implementation to include several different sets of data that were not included in the cowcatcher planning phase. However, since supernumerary implementations of extra data may add many months to the original plan, its wise to make sure the person from management is aware of his actions. 5. 2 BUSINESS NEEDSBecause of the close relationship with senior management, another critical thing that must be assessed before the project begins is whether or not there is a business need and whether there is a clear business benefit by doing the implementation. 15 The needs and benefits of the implementation are sometimes driven by contest and the need to gain an advantage in the market. Another reason for a business-driven approach to implementation of BI is the acquisition of other organizations that enlarge the original organization it can sometimes be beneficial to implement DW or BI in order to create more oversight.Companies that implement BI are often large, multinational organizations with diverse subsidiaries. A well -designed BI solution provides a consolidated view of key business data not available anywhere else in the organization, giving management visibility and subordination over measures that otherwise would not exist. 5. 3 AMOUNT AND QUALITY OF gettable DATA Without good data, it does not matter how good the management sponsorship or business-driven motivation is. Without proper data, or with too little quality data, any BI implementation fails. Before implementation it is a ood idea to do data profiling. This analysis identifies the content, consistency and structure of the data. This should be done as early as possible in the process and if the analysis shows that data is lacking, put the project on the shelf temporarily while the IT department figures out how to properly collect data. When planning for business data and business intelligence requirements, it is always advisable to consider specific scenarios that apply to a particular organization, and then select the business int elligence features best suitable for the scenario.Often, scenarios revolve around distinct business processes, each built on one or more data sources. These sources are used by features that present that data as information to knowledge workers, who subsequently act on that information. The business needs of the organization for each business process adopted correspond to the essential locomote of business intelligence. These essential steps of business intelligence includes but not limited to 1. Go through business data sources in order to collect needed data 2.Convert business data to information and present appropriately 3. Query and analyze data 4. Act on those data collected 6. subroutineR opinion Some considerations must be made in order to successfully integrate the usage of business intelligence systems in a company. at long last the BI system must be accepted and holdd by the substance ab exploiters in order for it to add value to the organization. If the usability of the system is poor, the users may beseem frustrated and spend a considerable amount of time calculate out how to use the system or may not be able to really use the system.If the system does not add value to the users? mission, they simply dont use it. To increase user acceptance of a BI system, it can be advisable to consult business users at an early stage of the DW/BI lifecycle, for example at the requirements gathering phase. This can provide an insight into the business process and what the users need from the BI system. There are several methods for gathering this information, such as questionnaires and interview sessions. When gathering the requirements from the business users, the localIT department should also be consulted in order to determine to which dot it is possible to fulfill the businesss needs based on the available data. taking on a user-centered approach throughout the design and development stage may further increase the chance of rapid user acceptance of t he BI system. Besides focusing on the user experience offered by the BI applications, it may also possibly motivate the users to utilize the system by adding an element of competition. Kimball suggests implementing a function on the business intellegence website where reports on system usage can be found.By doing so, managers can see how well their departments are doing and compare themselves to others and this may spur them to encourage their staff to utilize the BI system even more. In a 2007 article, H. J. Watson gives an example of how the competitive element can act as an inducement. Watson describes how a large call centre implemented performance dashboards for all call doers, with monthly incentive bonuses tied to performance metrics. Also, agents could compare their performance to other team members. The implementation of this type of performance measurement and competition fundamentally improved agent performance.BI chances of success can be improved by involving senior management to help make BI a part of the organizational culture, and by providing the users with necessary tools, training, and support. Training encourages more people to use the BI application. Providing user support is necessary to maintain the BI system and resolve user problems. User support can be incorporated in many ways, for example by creating a website. The website should contain great content and tools for conclusion the necessary information. Furthermore, helpdesk support can be used. The help desk can be manned by power users or the DW/BI project team. . MARKET PLACE There are a number of business intelligence vendors, often categorized into the remaining independent pure-play vendors and consolidated megavendors that have entered the market through a recent trend of acquisitions in the BI industry. Some companies adopting BI software decide to pick and choose from different product offerings (best-of-breed) rather than purchase one comprehensive integrated solution (full-service). 7. 1INDUSTRY-SPECIFIC Specific considerations for business intelligence systems have to be taken in some sectors such as government, banking, hospitality, hotel chain.The information collected by banking institutions and analyzed with BI software must be protected from some groups or individuals, while being fully available to other groups or individuals. Therefore BI solutions must be sensitive to those needs and be flexible enough to adapt to new regulations and changes to existing law. 8. SEMI-STRUCTURED OR ambiguous DATA Businesses create a huge amount of valuable information in the form of e-mails, memos, notes from call-centers, news, user groups, chats, reports, web-pages, presentations, image-files, video-files, and marketing material and news.According to Merrill Lynch, more than 85% of all business information exists in these forms. These information types are called either semi-structured or unregulated data. However, organizations often only use these scrolls once. The management of semi-structured data is recognized as a major unsolved problem in the information technology industry. According to projections from Gartner (2003), white collar workers spend anywhere from 30 to 40 percent of their time searching, finding and assessing unstructured data.BI uses both structured and unstructured data, but the former is easy to search, and the latter contains a large quantity of the information needed for analysis and decision making. Because of the difficulty of properly searching, finding and assessing unstructured or semi-structured data, organizations may not draw upon these vast reservoirs of information, which could influence a particular decision, task or project. This can ultimately lead to poorly informed decision making.Therefore, when designing a business intelligence/DW-solution, the specific problems associated with semi-structured and unstructured data must be accommodated for as well as those for the structured data 8. 1 SEMI-STRUCTURED VS formless DATA Unstructured and semi-structured data have different meanings depending on their context. In the context of relational database systems, unstructured data cannot be stored in predictably ordered colums and rows. One type of unstructured data is typically stored in a BLOB(binary large object), a catch-all data type available in most relation database management systems.Unstructured data may also refer to irregularly or randomly repeated column patterns that vary from row to row within each file or document. Many of these data types, however, like e-mails, word processing text files, PPTs, image-files, and video-files conform to a banal that offers the possibility of metadata. Metadata can include information such as seed and time of creation, and this can be stored in a relational database. Therefore it may be more accurate to talk slightly this as semi-structured documents or data, but no specific consensus seems to have been reached.Unstructure d data can also simply be the knowledge that business users have about future business trends. Business forecasting naturally aligns with the BI system because business users think of their business in aggregate terms. Capturing the business knowledge that may only exist in the minds of business users provides some of the most important data points for a complete BI solution. 8. 2 PROBLEMS WITH SEMI-STRUCTURED OR UNSTRUCTURED DATA There are several challenges to developing BI with semi-structured data. According to Inmon Nesavich, some of those are 1.Physically accessing unstructured textual data unstructured data is stored in a huge variety of formats. 2. Terminology Among researchers and analysts, there is a need to develop a standardized terminology. 3. Volume of data As stated earlier, up to 85% of all data exists as semi-structured data. Couple that with the need for word-to-word and semantic analysis. 4. Searchability of unstructured textual data A simple search on some da ta, e. g. apple, results in links where there is a reference to that precise search term. (Inmon Nesavich, 2008)25 gives an example a search is made on the term felony.In a simple search, the term felony is used, and all over there is a reference to felony, a hit to an unstructured document is made. But a simple search is crude. It does not find references to crime, arson, murder, embezzlement, vehicular homicide, and such, even though these crimes are types of felonies. 8. 3 THE USE OF MATADATA To solve problems with searchability and assessment of data, it is necessary to know something about the content. This can be done by adding context through the use of metedataMany systems already capture some metadata (e. g. filename, author, size, etc. , but more useful would be metadata about the actual content e. g. summaries, topics, people or companies mentioned. Two technologies designed for generating metadata about content are automatic catagorision and information extraction. 9 . USES AND EXAMPLES OF BI 9. 1 WHICH TYPE OF COMPANY USE IT? * Hotel/restaurant chain. They use for prediction of menu,from that they know that which dishes customer wants regularly or ocasanaly,they know that which restaurant not working properly and which in wooly so they will close that and they know that which restaurant in pelf so they expand it. Food chain/Retail stores They use BI tool for better market place. they use it for better supply chain management and efficient transportation and warehousing. By this tool authority knows about stocks in warehouse, which product have good response at which expose so provide a better stock their. they know about various product stock by just clicking away not to check for it. Wall mart, Relience fresh use business intelligence. For better profit and selling. 9. 2 EXAMPLES OF BI 1 . Microsoft business intelligence 2. pantaho 3. oracle business intelligence 10.BENIFITS AND DISADVANTAGES 10. 1 BENIFITS 1. Continuous improvement of des ign making capabilities used to increase revenue reduce cost 2. Better tools for knowledge worker 3. Leverage the amount of captured transactions operation data 4. Multidimensional analysis 5. Ad-hoc status reporting what-if scenarios 6. Intuitive user interface 7. Customer behavior 8. Sales force analysis 9. Market customer penetration 10. overlap service life cycle analysis 11. Budgeting planning 12. Business performance 13. Customer click stream information 4. Integration of traditional business e-business 15. HR performance evaluation 16. Compression analysis 17. Workforce planning optimization 10. 2 DISADVANTAGES 1. Cost 2. Pilling of historical data 3. Complexity 4. express use 11. FUTURE A 2009 Gartner paper predicted these developments in the business intelligence market * Because of lack of information, processes, and tools, through 2012, more than 35 percent of the top 5,000 global companies regularly fail to make insightful decisions about significant changes in their business and markets. By 2012, business units will control at least 40 percent of the total budget for business intelligence. * By 2012, one-third of analytic applications applied to business processes will be delivered through coarse graind application mashups. A 2009 Information Management special report predicted the top BI trends obliterate computing, social networking, data visulization, mobili BI, predictive analitic, cloud compiting and multitouch. Other business intelligence trends include the following

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