- Популярные видео
- Авто
- Видео-блоги
- ДТП, аварии
- Для маленьких
- Еда, напитки
- Животные
- Закон и право
- Знаменитости
- Игры
- Искусство
- Комедии
- Красота, мода
- Кулинария, рецепты
- Люди
- Мото
- Музыка
- Мультфильмы
- Наука, технологии
- Новости
- Образование
- Политика
- Праздники
- Приколы
- Природа
- Происшествия
- Путешествия
- Развлечения
- Ржач
- Семья
- Сериалы
- Спорт
- Стиль жизни
- ТВ передачи
- Танцы
- Технологии
- Товары
- Ужасы
- Фильмы
- Шоу-бизнес
- Юмор
PEPR '26 - From Legalese to Logic: Translating Privacy Requirements into Verifiable Controls via...
From Legalese to Logic: Translating Privacy Requirements into Verifiable Controls via Agentic Workflows
Rituraj Kirti and Inchara Shivalingaiah, Meta
Translating textual privacy requirements, especially purpose limitation, into enforceable controls across large-scale data ecosystems is slow, error-prone, and difficult to validate. We present an experience report on deploying an LLM-powered guided privacy engineering workflow that helps engineers: (1) decompose requirement text into implementable "privacy jobs to be done," (2) traverse data lineage to identify impacted datasets and flows, (3) suggest candidate enforcement and monitoring points, and (4) track state from interpretation → implementation → verification.
We will walk through a real requirement end-to-end, highlight where automation helped vs. where human judgment remained essential, and share practical lessons on system architecture, governance, evaluation, and failure modes (including misinterpretations and lineage gaps). Attendees will leave with a reusable workflow template and design guidelines for building similar systems in their organizations.
View the full PEPR '26 program at https://www.usenix.org/conference/pepr26/program
Видео PEPR '26 - From Legalese to Logic: Translating Privacy Requirements into Verifiable Controls via... канала USENIX
Rituraj Kirti and Inchara Shivalingaiah, Meta
Translating textual privacy requirements, especially purpose limitation, into enforceable controls across large-scale data ecosystems is slow, error-prone, and difficult to validate. We present an experience report on deploying an LLM-powered guided privacy engineering workflow that helps engineers: (1) decompose requirement text into implementable "privacy jobs to be done," (2) traverse data lineage to identify impacted datasets and flows, (3) suggest candidate enforcement and monitoring points, and (4) track state from interpretation → implementation → verification.
We will walk through a real requirement end-to-end, highlight where automation helped vs. where human judgment remained essential, and share practical lessons on system architecture, governance, evaluation, and failure modes (including misinterpretations and lineage gaps). Attendees will leave with a reusable workflow template and design guidelines for building similar systems in their organizations.
View the full PEPR '26 program at https://www.usenix.org/conference/pepr26/program
Видео PEPR '26 - From Legalese to Logic: Translating Privacy Requirements into Verifiable Controls via... канала USENIX
Комментарии отсутствуют
Информация о видео
12 ч. 57 мин. назад
00:19:20
Другие видео канала




















