Casebook on Data Protection is a collection of 144 decisions of the European Court of Human Rights (ECTHR) and the Court of Justice of the European Union (CJEU) on data protection and privacy. The facts and decisions are summarised and featured to the extent that they relate to the field of data protection and/or privacy. The book is divided into 14 chapters to wit: Introduction; Definitions; Relationship with other rights; Principles of Data Protection; Exceptions and Derogation; Employment Data; Sensitive Data; Transfer of Data to a Foreign Country; Liability of Data Controllers; Data Subject’s Rights; Data Breach; Remedies; Data Property Rights and Supervisory Authority. Its appendices contain Nigeria Data Protection Regulation and its draft implementation framework.
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