Module 7

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Question English Answer English
transaction data
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booking a hotel, buying tickets, doing groceries
Transaction Processing Systems
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systems that record data on fundamental operations within the company; may be connected to government agencies, useful for management, used to support organisations from the inside; what happened with the customer's order? how many items are in stock?
Batch processing
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data is kept at temporary storage and processed as a single unit at a time; it enables companies to shift processing to time when computing resources are less busy; ex: money transfer between banks
Online Transaction Processing (OLTP)
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data is processed immediately in real-time; current state of the system is always reflected; webshops, hotel and airline booking
Decision Support Systems
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serve middle management and non routine decision-making; have analytical capability; what is the impact on production schedule if December sales doubled?
Executive Support Systems
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support senior management, non-routine decisions, requiring judgement, evaluation; incorporate data about external events as well as summarised information from internal MIS and DSS; ex: Digital dashboard with real-time view of financial performance
data warehouse
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collect and store data from several core transactional systems across the neat organization; data is consolidated, but can't be altered; they provide tools for querying and analysis; serves as organisational memory
data marts
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subsets of data stored in a data warehouse; contain highly focused portion of the organisation's data; designed to support work on a specific business challenge by a specific population of users
data lakes
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storage of all the data in a non-standardised fashion that may be used later on; ex: Casino with patterns identification and targeting most profitable customers
Online Analytical Processing (OLAP)
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transaction-level data stored in relational databases is aggregated and summarised; results of analysis are stored in special databases (data cubes); data cubes structure results across multiple dimensions (space, products, time period)
data mining
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the use of specific algorithms to identify hidden patterns in and to fit models to large data sets; more discovery driven; patterns discovered by DM: associations, clusters, sequences, relationships
associations
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occurrences linked to a single event
clusters
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a group of customers that share certain characteristics and behave in a similar way
relationships
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dependences
sequences
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time series
support
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the fraction of transactions that contain a certain set of items X
Confidence
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the fraction of transactions that contain Y among those transaction that contain X
Big Data
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data mining techniques help to conduct fast analyses on large data sets; increasing infusion of info technology into products, devices and our daily lives has led to collection of incredible amounts of data; Volume, Velocity, Variety and Veracity
Volume in Big Data
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the simple size of a dataset that needs to be processed
Velocity in Big Data
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the speed with which new data is generated and needs to be processed
Variety in Big Data
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the different formats and features of data that need to be processed (relational databases, documents, photos videos, spatial and temporal aspects)
Veracity in Big Data
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the reliability of the data
neural networks
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neural networks are usually black box methods, namely extremely hard to quantify the impact of a particular input variable on the outcome
hierarchy of data
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bit, byte, field, record, file
problems with traditional file environment
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data redundancy; program-data dependence; lack of flexibility; poor security; lack of data sharing and availability
DBMS
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Database Management Systems; it enables an organisation to centralise data, manage it efficiently and provide access to the stored data by application programs, acts as interface between application porgams and the data files; it reduces data redundancy
Relational DBMS
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represents data as two-dimensional tables -> SQL; operations: Select, Join, Project; tools for accessing and manipulating information also called manipulation language (SQL)
normalisation
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the process of creating small, stable yet flexible and adaptive data structures from complex groups of data
blockchain
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a distributed database technology that enables firms and organisations to create and verify transactions on a network nearly instantaneously without a central authority
blockchain networks
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it drastically reduces the costs of verifying users, validating transactions and the risks of storing and processing transaction information across thousands of firms
Business Intelligence Infrastructure
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data warehouse, data marts, Hadoop, in-memory computing; analytical platforms
Hadoop
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breaks the big data problem into sub-problems, distributes them among to thousand of inexpensive computer processing nodes and combines to a smaller data set
In-Memory Computing
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it relies on computer's main memory RAM, it makes it possible for very large sets of data to reside entirely in memory
Analytical Platforms
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include in-memmory systems and NoSQL databses
enterprise applications
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systems for linking the enterprise, span functional areas, execute business processes across the firm, include all level of management
4 enterprise applications
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enterprise systems; supply chain management, customer relationship management, knowledge management systems
enterprise systems
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based on a suite of integrated software modules and common central database; DB collects data from many divisions and departments in a firm and from a large number of key business processes in manufacturing; accounting&finance, sales&marketing and HR
value provided by ERP
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increasing operational efficiency; providing firm wide information to help managers make better decisions
Supply Chain Management Systems
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answer to the problems of supply chain complexity and scale; bullwhip effect; push-based and pull-based model
bullwhip effect
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information about demand for a product gets distorted as it possess from one entity to the next across supply chain; it can be tamed by reducing uncertainties and SCM can help with that
push-based model
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schedules based on forecasts of demand
pull-based model
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demand driven, build-to-order, customer orders trigger events in the supply chain
SCM provide value by
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enabling firms to streamline both their internal and external supply chain processes and provide management with more accurate info about what to produce, store and move; increases sales and reduces costs
Customer Relationship Management Systems
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capture and integrate customer data from all over the organisation, consolidate and distribute to various systems and customer touch points (email phone etc.); SFA, customer service, Marketing
SFA
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Sales Force Automation; helps sales staff increase productivity by focusing sales efforts on the most profitable customers
customer service in CRM
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they increase the effienicency of call centres, help desks and customer support staff
Marketing at CRM
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CRM provides capabilities for capturing prospect and customer data
Business Value of CRM
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increased customer satisfaction; reduced direct marketing costs; more effective marketing; lower costs for customer acquisition and retention
Types of decisions
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unstructured; structured; semistructured
unstructured decisions
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decision-maker must provide judgement and evaluation to solve a problem; novel, important and not routine decisions -> Senior Management; long-term goals
structured decisions
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repetitive, routine and involve definite procedures for handling them -> operational management; ex: restock inventory
semistructured decisions
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only part of a problem has a clear-cut answer provided by an accepted procedure -> Middle Management; design marketing plan or new website
Decision Making Process
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Intelligence (Problem discovery) -> Design (Solution discovery) -> Choice (choosing solution) -> Implementation (solution testing)
managerial roles
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interpersonal, informational, decisional
interpersonal role
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figurehead, leader, liaison; support systems: telepresence, social network, smartphones
informational role
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nerve center, disseminator, spokesperson; support systems: MIS, ESS, Texting, email, webinars, social networks
decisional role
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entrepreneur, disturbance handler, resource allocator, negotiator; support systems: business intelligence, DSS or none
Business Intelligence
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infrastructure for warehousing, integrating, reporting, analysing data that come from the business environment (big data)

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