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Scans codebases for privacy risks, generates DPIA documentation, tracks data subject rights requests. Use for GDPR compliance assessments, privacy audits, data protection planning, DPIA generation, and data subject rights management.",{"claudeCode":487},"alirezarezvani/claude-skills","gdpr-dsgvo-expert","https://github.com/alirezarezvani/claude-skills",{"basePath":491,"githubOwner":492,"githubRepo":493,"locale":266,"slug":488,"type":255},"ra-qm-team/skills/gdpr-dsgvo-expert","alirezarezvani","claude-skills",{"evaluate":495,"extract":501},{"promptVersionExtension":214,"promptVersionScoring":215,"score":218,"tags":496,"targetMarket":276,"tier":227},[497,498,225,499,224,500,443],"gdpr","dsgvo","privacy","documentation",{"commitSha":278},{"parentExtensionId":503,"repoId":504},"k17c1bwyjkg950q3ft43gvpadh86nyng","kd7ff9s1w43mfyy1n7hf87816186m6px",[224,225,500,498,497,499,443],{"evaluatedAt":507,"extractAt":508,"updatedAt":507},1778686181462,1778675056600,{"_creationTime":510,"_id":511,"community":512,"display":513,"identity":519,"providers":524,"relations":532,"tags":535,"workflow":536},1778696595410.5698,"k171sdysmt658g1cdd7hgt8p8h86nms7",{"reviewCount":8},{"description":514,"installMethods":515,"name":517,"sourceUrl":518},"End-of-session ritual that audits changes, runs quality checks, captures learnings, and produces a session summary. Use when saying \"wrap up\", \"done for the day\", \"finish coding\", or ending a coding session.",{"claudeCode":516},"rohitg00/pro-workflow","Wrap-Up Ritual","https://github.com/rohitg00/pro-workflow",{"basePath":520,"githubOwner":521,"githubRepo":522,"locale":266,"slug":523,"type":255},"skills/wrap-up","rohitg00","pro-workflow","wrap-up",{"evaluate":525,"extract":531},{"promptVersionExtension":214,"promptVersionScoring":215,"score":218,"tags":526,"targetMarket":276,"tier":227},[527,226,528,223,529,530],"workflow","productivity","knowledge-base","code-quality",{"commitSha":278,"license":246},{"parentExtensionId":533,"repoId":534},"k17fxtjcfh5gvxdrhv2dmgn1t986mdhv","kd7am4e918eq98hrd9s31jm4vs86nn0b",[530,529,226,223,528,527],{"evaluatedAt":537,"extractAt":538,"updatedAt":537},1778697164619,1778696595410,{"_creationTime":540,"_id":541,"community":542,"display":543,"identity":547,"providers":549,"relations":557,"tags":558,"workflow":559},1778696691708.2983,"k17c6tkghtgnr7jnsh6gf5mf9h86nk00",{"reviewCount":8},{"description":544,"installMethods":545,"name":546,"sourceUrl":460},"Implement persistent memory patterns for AI agents using AgentDB. Includes session memory, long-term storage, pattern learning, and context management. Use when building stateful agents, chat systems, or intelligent assistants.",{"claudeCode":458},"agentdb-memory-patterns",{"basePath":548,"githubOwner":463,"githubRepo":464,"locale":266,"slug":546,"type":255},".claude/skills/agentdb-memory-patterns",{"evaluate":550,"extract":556},{"promptVersionExtension":214,"promptVersionScoring":215,"score":551,"tags":552,"targetMarket":276,"tier":227},99,[222,553,223,554,470,555],"agent","database","nodejs",{"commitSha":278},{"repoId":475},[553,222,554,223,555,470],{"evaluatedAt":560,"extractAt":479,"updatedAt":560},1778698807267,{"_creationTime":562,"_id":563,"community":564,"display":565,"identity":571,"providers":576,"relations":584,"tags":587,"workflow":588},1778691104676.0042,"k17c25w174y6873nhdh566etts86mv7m",{"reviewCount":8},{"description":566,"installMethods":567,"name":569,"sourceUrl":570},"Transform images with resize, crop, smart crop, upscale, remove background, and 20+ operations.",{"claudeCode":568},"iterationlayer/skills","Image Transformation API","https://github.com/iterationlayer/skills",{"basePath":572,"githubOwner":573,"githubRepo":574,"locale":266,"slug":575,"type":255},"skills/image-transformation-api","iterationlayer","skills","image-transformation-api",{"evaluate":577,"extract":583},{"promptVersionExtension":214,"promptVersionScoring":215,"score":218,"tags":578,"targetMarket":276,"tier":227},[579,580,581,582,222],"image","transformation","editing","api",{"commitSha":278,"license":246},{"parentExtensionId":585,"repoId":586},"k1721s0xmp59902ybtpakrrffn86n10s","kd76p4g2qmtrkgx99cnab3683d86n4g8",[222,582,581,579,580],{"evaluatedAt":589,"extractAt":590,"updatedAt":589},1778693613399,1778691104676]