Atsiliepimai
Aprašymas
How can you use data in a way that protects individual privacy but still provides useful and meaningful analytics? With this practical book, data architects and engineers will learn how to establish and integrate secure, repeatable anonymization processes into their data flows and analytics in a sustainable manner.
Luk Arbuckle and Khaled El Emam from Privacy Analytics explore end-to-end solutions for anonymizing device and IoT data, based on collection models and use cases that address real business needs. These examples come from some of the most demanding data environments, such as healthcare, using approaches that have withstood the test of time.
Create anonymization solutions diverse enough to cover a spectrum of use cases
Match your solutions to the data you use, the people you share it with, and your analysis goals
Build anonymization pipelines around various data collection models to cover different business needs
Generate an anonymized version of original data or use an analytics platform to generate anonymized outputs
Examine the ethical issues around the use of anonymized data
Elektroninė knyga:
Atsiuntimas po užsakymo akimirksniu! Skirta skaitymui tik kompiuteryje, planšetėje ar kitame elektroniniame įrenginyje.
Kaip skaityti el. knygas ACSM formatu?
Mažiausia kaina per 30 dienų: 66,69 €
Mažiausia kaina užfiksuota: 2025-10-07 17:26:56
How can you use data in a way that protects individual privacy but still provides useful and meaningful analytics? With this practical book, data architects and engineers will learn how to establish and integrate secure, repeatable anonymization processes into their data flows and analytics in a sustainable manner.
Luk Arbuckle and Khaled El Emam from Privacy Analytics explore end-to-end solutions for anonymizing device and IoT data, based on collection models and use cases that address real business needs. These examples come from some of the most demanding data environments, such as healthcare, using approaches that have withstood the test of time.
Create anonymization solutions diverse enough to cover a spectrum of use cases
Match your solutions to the data you use, the people you share it with, and your analysis goals
Build anonymization pipelines around various data collection models to cover different business needs
Generate an anonymized version of original data or use an analytics platform to generate anonymized outputs
Examine the ethical issues around the use of anonymized data
Atsiliepimai