Data Management (DP IB Business Management)
Revision Note
Big Data
Big data refers to large volumes of data that inundate businesses on a day-to-day basis
Businesses have more opportunities than ever before to gather vast amounts of data
Big data can be used to understand customers better, make informed strategic decisions and offer more personalised services that meet customer needs
New Ways Businesses Collect Big Data
E-commerce | Social media |
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Internet of Things (IoT) | Logistics |
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Customer Loyalty Programmes
Customer loyalty programmes are a way to gather large amounts of data on spending habits and behaviour of customers
Financial and transactional data includes information about payment methods and details of products purchased
Interaction data relates to how customers engage with surveys, feedback on in-store and online shopping experiences and CCTV data such as queue monitoring or number plate recognition
Marketing data includes customer interaction with online marketing such as the opening of marketing emails and interaction with adverts while browsing the internet
In return for allowing access to this amount of data loyalty schemes often offer discounts or reward points that can be very attractive to customers
Customers feel connected to a business that rewards them and are more likely to remain loyal over time
Loyal customers frequently recommend the business to others and provide meaningful feedback
Promotional costs may be reduced as there is less of an urgent need to attract new customers
Loyalty schemes help a business to differentiate itself from rivals and allow for greater personalisation of promotional activity
Loyalty programs have several drawbacks
Operating loyalty schemes can be expensive - especially for businesses with limited resources
Customers may come to expect discounts which could devalue a businesses products
Customers may be disinterested by too many loyalty programs
Storing customer data for loyalty programs raises concerns about privacy and data security
Exam Tip
Not all loyalty schemes are powered by technology
Businesses may reward customers with stamps each time they spend money with them, rewarding their loyalty with free or discounted products
However they are unable to access the volume of data possible with IT-based systems and, therefore, these forms of loyalty card should only be considered as a marketing tactic
Digital Taylorism
Digital Taylorism involves using technology to carefully monitor workers' use of the tools and techniques for completing their work tasks
In 2022, 80% of large US corporations in the United States had their employees under regular surveillance
Examples include Amazon, FedEx and Deliveroo
Pay and other financial rewards are linked to achieving performance targets
In some cases workers may receive sanctions based on data collected automatically
In 2020 Amazon workers complained of facing disciplinary action for taking toilet breaks during their shifts
Technological innovations have made it much easier for managers to quickly and cheaply collect, process, evaluate and act upon vast amounts of employee performance information
In logistics computer systems control vehicle fleets and employees
Sensors track location, timing, driving and other aspects of performance
Complex algorithms and analytics software instruct truck drivers which routes to take as well as expected schedules
In retail employee performance data can be gathered from programs running in the background of the computerised cash register
Keystrokes can be logged, audio/video can be recorded and time taken to serve customers can be continuously collected
Benefits of Using data to Monitor Employee Performance
Benefit | Explanation |
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Coordination & control |
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Training & staff development |
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Employee engagement & rewards |
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Less management time required |
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Exam Tip
Consider how you would feel if your work were closely monitored through the use of technology
This is an excellent topic to include your own opinions and experiences - both positive and negative
Using Data to make Decisions
Data mining
Data mining occurs when raw data is extracted from large data sets and converted into useful information
This information is used to make data-driven decisions that reduce risk and help a business to increase revenue, reduce costs and improve customer relations
Diagram: the common uses of data mining
Marketing Planning
Identify successful marketing strategies
Determine market segments
Sales Forecasting
Identify sales trends
Set revenue budgets based on past performance
Consumer Profiling
Connect purchasing habits with demographic data
Target promotions that appeal to specific groups of customers
Personalising loyalty rewards
Compare success of previous loyalty rewards
Target rewards that appeal to specific groups of customers
Market research
Predict future customer preferences based on past consumption
Identifying purchasing patterns
Compare products bought at particular locations, times and combinations with other goods
Tailor product availability
Research & Development
Allocate future spending on R&D based on extrapolation of past trends
Production Planning
Identify supply chain disruptions
Prioritise availability of products based on past demand
Criticisms of Data Mining
Criticism | Explanation |
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Invasion of privacy |
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Data breaches |
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Discrimination |
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Evaluating the Impact of Technology on Decision Making and Stakeholders
Technology has had a significant impact on business decision-making and stakeholders in recent years
Technology provides tools for data analysis which improves efficiency and communication
Innovation is driven by technological advances and provides a competitive advantage
Employees may benefit from these advancements through improved workplace experiences
Positive Impacts of Technology on Business Decision Making and Stakeholders
Impact | Explanation |
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Data-driven decision making |
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Efficiency & productivity |
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Communication & collaboration |
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Customer experience |
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Innovation & adaptability |
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Supply chain management |
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Legal, ethical and practical concerns
Data Security & Privacy | Ethical Use of Data | Employee Training & Adaptation |
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Data Quality and Accuracy | Dependency & Reliability | Environmental Impact |
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