ycliper

Популярное

Музыка Кино и Анимация Автомобили Животные Спорт Путешествия Игры Юмор

Интересные видео

2025 Сериалы Трейлеры Новости Как сделать Видеоуроки Diy своими руками

Топ запросов

смотреть а4 schoolboy runaway турецкий сериал смотреть мультфильмы эдисон
Скачать

Airflow SubDAGs & TaskGroups Concept | Parallel Processing | Nested TaskGroups | k2analytics.co.in

Автор: Rajesh Jakhotia

Загружено: 2022-09-17

Просмотров: 8765

Описание: Connect with us on Whatsapp: + 91 8939694874
Website Blog: https://k2analytics.co.in/blog
Write to me at: [email protected]

Data Engineering with Airflow Content:
1) Getting started with Airflow
2) Creating a Simple ETL DAG using DummyOperator
3) Creating a Simple ETL DAG using PythonOperator
4) Using XCOMs for Cross-Communication between Tasks
5) Passing DataFrame Object from Extract to Transform to Load Function
6) Connections and Hooks, airflow.hooks.postgres_hook, PostgresHook (pip install apache-airflow-providers-postgres)
7) SubDAGs, TaskGroups, Parallel Processing

Airflow is a platform to programmatically author, schedule, and monitor workflows.

Use Airflow to author workflows as Directed Acyclic Graphs (DAGs) of tasks. The Airflow scheduler executes your tasks on an array of workers while following the specified dependencies. Rich command line utilities make performing complex surgeries on DAGs a snap. The rich user interface makes it easy to visualize pipelines running in production, monitor progress, and troubleshoot issues when needed.

Dynamic: Airflow pipelines are configuration as code (Python), allowing for dynamic pipeline generation. This allows for writing code that instantiates pipelines dynamically.

Extensible: Easily define your own operators, executors and extend the library so that it fits the level of abstraction that suits your environment.

Elegant: Airflow pipelines are lean and explicit. Parameterizing your scripts is built into the core of Airflow using the powerful Jinja templating engine.

Scalable: Airflow has a modular architecture and uses a message queue to orchestrate an arbitrary number of workers. Airflow is ready to scale to infinity.

Challenges handled by Airflow:
Failures: retry if failure happens(how many times? how often?)
Monitoring: success or failure status, how long does the process runs?
Dependencies: Data dependencies: upstream data is missing
Execution dependencies: job 2 runs after job 1 is finished.
Scalability: There is no centralized scheduler between different cron machines
Deployment: deploy new changes constantly
Process historic data: backfill/rerun historic data

Connect with us on Whatsapp : + 91 8939694874
Website Blog: https://k2analytics.co.in/blog
Write to me at : [email protected]

Не удается загрузить Youtube-плеер. Проверьте блокировку Youtube в вашей сети.
Повторяем попытку...
Airflow SubDAGs & TaskGroups Concept | Parallel Processing | Nested TaskGroups | k2analytics.co.in

Поделиться в:

Доступные форматы для скачивания:

Скачать видео

  • Информация по загрузке:

Скачать аудио

Похожие видео

Airflow Variables

Airflow Variables

Harnessing future technologies: approaches, methodologies and tools | Landing.Jobs

Harnessing future technologies: approaches, methodologies and tools | Landing.Jobs

Learn Apache Airflow with Python in 1 hour | Apache Airflow 101 | Apache Airflow Zero to Hero

Learn Apache Airflow with Python in 1 hour | Apache Airflow 101 | Apache Airflow Zero to Hero

ВВЕДЕНИЕ В AIRFLOW / ПОНЯТИЕ DAG'а / НАСТРОЙКА DAG'а В AIRFLOW

ВВЕДЕНИЕ В AIRFLOW / ПОНЯТИЕ DAG'а / НАСТРОЙКА DAG'а В AIRFLOW

Apache Airflow | Data Engineering | Data Pipelines | Data Workflow / ETL using Apache Airflow and Python / PySpark

Apache Airflow | Data Engineering | Data Pipelines | Data Workflow / ETL using Apache Airflow and Python / PySpark

Apache Airflow: от установки до составного DAG за 72 минуты

Apache Airflow: от установки до составного DAG за 72 минуты

Don't Use Apache Airflow

Don't Use Apache Airflow

Airflow XComs Explained | Cross-Communication between Tasks using XCOMS | k2analytics.co.in

Airflow XComs Explained | Cross-Communication between Tasks using XCOMS | k2analytics.co.in

Bhavani Ravi - Apache Airflow in Production - Bad vs Best Practices

Bhavani Ravi - Apache Airflow in Production - Bad vs Best Practices

Learn Apache Airflow in 10 Minutes | High-Paying Skills for Data Engineers

Learn Apache Airflow in 10 Minutes | High-Paying Skills for Data Engineers

УДИВИТЕЛЬНЫЙ ЦИФРОВОЙ ЦИРК - Серия 8: апраышдакв

УДИВИТЕЛЬНЫЙ ЦИФРОВОЙ ЦИРК - Серия 8: апраышдакв

Почему AI генерит мусор — и как заставить его писать нормальный код

Почему AI генерит мусор — и как заставить его писать нормальный код

Зависимости Airflow DAG: наборы данных, TriggerDAGRunOperator и ExternalTaskSensor

Зависимости Airflow DAG: наборы данных, TriggerDAGRunOperator и ExternalTaskSensor

How to Run Apache Airflow in Production! Best Practices for Running Apache Airflow at Scale!

How to Run Apache Airflow in Production! Best Practices for Running Apache Airflow at Scale!

Getting Started to Building Data Pipelines in Airflow | Data Engineering | ETL | k2analytics.co.in

Getting Started to Building Data Pipelines in Airflow | Data Engineering | ETL | k2analytics.co.in

Kubernetes — Простым Языком на Понятном Примере

Kubernetes — Простым Языком на Понятном Примере

Deep dive in to the Airflow scheduler

Deep dive in to the Airflow scheduler

Apache Airflow One Shot- Building End To End ETL Pipeline Using AirFlow And Astro

Apache Airflow One Shot- Building End To End ETL Pipeline Using AirFlow And Astro

Airflow 101: Essential Tips For Beginners

Airflow 101: Essential Tips For Beginners

Airflow XCom for Beginners - All you have to know in 10 mins

Airflow XCom for Beginners - All you have to know in 10 mins

© 2025 ycliper. Все права защищены.



  • Контакты
  • О нас
  • Политика конфиденциальности



Контакты для правообладателей: [email protected]