Computer-Science-A-level-Ocr
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3-3-networks8 主题
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3-2-databases7 主题
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3-1-compression-encryption-and-hashing4 主题
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2-5-object-oriented-languages7 主题
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2-4-types-of-programming-language4 主题
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2-3-software-development5 主题
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2-2-applications-generation6 主题
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2-1-systems-software8 主题
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1-3-input-output-and-storage2 主题
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1-2-types-of-processor3 主题
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1-1-structure-and-function-of-the-processor1 主题
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structuring-your-responses3 主题
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the-exam-papers2 主题
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8-2-algorithms-for-the-main-data-structures4 主题
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8-1-algorithms10 主题
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7-2-computational-methods11 主题
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7-1-programming-techniques14 主题
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capturing-selecting-managing-and-exchanging-data
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entity-relationship-diagrams
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data-normalisation
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relational-databases
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hashing
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symmetric-vs-asymmetric-encryption
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run-length-encoding-and-dictionary-coding
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lossy-and-lossless-compression
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polymorphism-oop
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encapsulation-oop
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inheritance-oop
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attributes-oop
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methods-oop
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objects-oop
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capturing-selecting-managing-and-exchanging-data
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6-5-thinking-concurrently2 主题
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6-4-thinking-logically2 主题
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6-3-thinking-procedurally3 主题
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6-2-thinking-ahead1 主题
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6-1-thinking-abstractly3 主题
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5-2-moral-and-ethical-issues9 主题
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5-1-computing-related-legislation4 主题
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4-3-boolean-algebra5 主题
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4-2-data-structures10 主题
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4-1-data-types9 主题
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3-4-web-technologies16 主题
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environmental-effects
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automated-decision-making
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computers-in-the-workforce
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layout-colour-paradigms-and-character-sets
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piracy-and-offensive-communications
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analysing-personal-information
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monitoring-behaviour
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censorship-and-the-internet
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artificial-intelligence
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the-regulation-of-investigatory-powers-act-2000
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the-copyright-design-and-patents-act-1988
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the-computer-misuse-act-1990
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the-data-protection-act-1998
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adder-circuits
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flip-flop-circuits
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simplifying-boolean-algebra
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environmental-effects
data-mining
Data Mining
What is data mining?
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In A Level Computer Science, data mining is when large quantities of data are turned into useful information so that patterns can be found
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It can be used to search for relationships and facts that are probably not immediately obvious to people
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It will extract valuable insights from large sets of data using algorithms and statistical methods
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Data mining is used in many fields, including retail, healthcare, and finance, to make informed decisions
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The diagram below shows useful business insights that can be gained from data collected by an online grocery business

How data mining can be used to generate insights
|
Benefits |
Drawbacks |
|---|---|
|
Data mining can be used to identify patterns and trends that may not be immediately obvious to humans. |
It requires very powerful computers with a lot of processing power. |
|
It can help organisations make better future predictions. |
Inaccurate data can produce inaccurate results. |
|
Organisations can ensure demand is met during busy periods to stay ahead of local competition. |
Although it may spot patterns and trends, it may not explain the reasons why these exist. |
Example uses of data mining
Retail industry
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Data mining algorithms can be used to analyse purchase history and browsing behaviour to provide customised product suggestions
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Online retailers like Amazon use purchase data to suggest items for customers based on past activity
Healthcare industry
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Data from healthcare records and other sources can be analysed to predict disease outbreaks or patient admissions
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Hospitals use data mining to anticipate flu cases in the coming winter, enabling better resource allocation
Finance and banking
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Machine learning models trained on historical data can be used to identify suspicious activities among millions of transactions
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Credit card companies use data mining algorithms to flag potentially fraudulent transactions in real-time
Automotive industry
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Data collected from vehicle sensors can be used to predict when a part is likely to fail, enabling more proactive maintenance
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Manufacturers like Tesla collect data from electric cars to anticipate when a battery or other components may fail
Entertainment and media
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Data mining helps understand viewer preferences and behaviour, enabling better content recommendations
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Streaming services like Netflix use data mining to target new shows and movies to specific audiences based on their previous viewing history
Complexities in data mining
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Data mining requires knowledge of complex algorithms for data sorting, pattern recognition, and anomaly detection
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Running data mining algorithms within a company requires significant maintenance and expertise
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Companies must be careful with customer data and must ensure all mining follows the General Data Protection Regulation (GDPR)
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Specialist data engineers and data scientists are in short supply in industry
Responses