Dmitry Petrov: DataOps & ML automation with DVC
Data Fest Online 2020 https://fest.ai/2020/
ML REPA Track https://ods.ai/tracks/ml-repa-df2020
Recently, automation in software development has reached an unprecedented level of adoption. Infrastructure as code (IaC) principles, supported by tools like Terraform, Puppet, and Ansible, have become a mainstream approach to automating software building, testing, and deployment. In contrast, data science and machine learning projects frequently involve many manual steps, including data transfer and processing, model training and evaluation, and provisioning resources like cloud compute and storage. Each manual step lowers the overall reproducibility of a project and creates another hurdle to productionizing a project.
Видео Dmitry Petrov: DataOps & ML automation with DVC канала ODS AI Global
ML REPA Track https://ods.ai/tracks/ml-repa-df2020
Recently, automation in software development has reached an unprecedented level of adoption. Infrastructure as code (IaC) principles, supported by tools like Terraform, Puppet, and Ansible, have become a mainstream approach to automating software building, testing, and deployment. In contrast, data science and machine learning projects frequently involve many manual steps, including data transfer and processing, model training and evaluation, and provisioning resources like cloud compute and storage. Each manual step lowers the overall reproducibility of a project and creates another hurdle to productionizing a project.
Видео Dmitry Petrov: DataOps & ML automation with DVC канала ODS AI Global
Показать
Комментарии отсутствуют
Информация о видео
Другие видео канала
DATA FEST 6 / Black stage / 10 мая 2019ML puzzler Boosting — Данила СавенковEghbal Rahimkina, Ser-Huang Poon: ML for Realised Volatility ForecastingRoman Schutski: Graphical models for tensor networks and machine learningEmbeddings for Graph Classification — Евгений БурнаевPyData Puzzlers – Пётр ЕрмаковНейробайесовское восстановление пропущенных данных — Иванов ОлегRL for the Adaptive Speed Regulation on a Metallurgical Picking LineDenis Vorotinsev: AutoGraph. Graphs Meet AutoMLПицца аля-semi-supervised — Артур КузинУправление наличностью в банкоматах и офисах — Александр УльяновVadim Safronov: Business Transformation as Graph ProblemsДавай останемся друзьями - как устроен раздел Возможно Вы Знакомы в Одноклассниках – Евгений МалютинНаука и бизнес в одном FLACONе, возгонка цифровой экономики — Константин ВоронцовGene Kogan | Machine learning for creativityTensorboard alternatives – Illarion KhlestovDeep Learning - more questions than answers — Дмитрий ВетровГибридный диалоговый бот — Мария ВихреваIntroducing Smelter: движок для инференса – Андрей ВолодинСуровая действительность товарных рекомендаций бытовой техники – Владимир Литвинюк