Africa-focused technology, digital and innovation ecosystem insight and commentary.
…
continue reading
The Data Flowcast द्वारा प्रदान की गई सामग्री. एपिसोड, ग्राफिक्स और पॉडकास्ट विवरण सहित सभी पॉडकास्ट सामग्री The Data Flowcast या उनके पॉडकास्ट प्लेटफ़ॉर्म पार्टनर द्वारा सीधे अपलोड और प्रदान की जाती है। यदि आपको लगता है कि कोई आपकी अनुमति के बिना आपके कॉपीराइट किए गए कार्य का उपयोग कर रहा है, तो आप यहां बताई गई प्रक्रिया का पालन कर सकते हैं https://hi.player.fm/legal।
Player FM - पॉडकास्ट ऐप
Player FM ऐप के साथ ऑफ़लाइन जाएं!
Player FM ऐप के साथ ऑफ़लाइन जाएं!
Mastering Data Orchestration with Airflow at M Science with Ben Tallman
MP3•एपिसोड होम
Manage episode 436415190 series 2053958
The Data Flowcast द्वारा प्रदान की गई सामग्री. एपिसोड, ग्राफिक्स और पॉडकास्ट विवरण सहित सभी पॉडकास्ट सामग्री The Data Flowcast या उनके पॉडकास्ट प्लेटफ़ॉर्म पार्टनर द्वारा सीधे अपलोड और प्रदान की जाती है। यदि आपको लगता है कि कोई आपकी अनुमति के बिना आपके कॉपीराइट किए गए कार्य का उपयोग कर रहा है, तो आप यहां बताई गई प्रक्रिया का पालन कर सकते हैं https://hi.player.fm/legal।
Mastering the flow of data is essential for driving innovation and efficiency in today’s competitive landscape. In this episode, we explore the evolution of data orchestration and the pivotal role of Apache Airflow in modern data workflows. Ben Tallman, Chief Technology Officer at M Science, joins us and shares his extensive experience with Airflow, detailing its early adoption, evolution and the profound impact it has had on data engineering practices. His insights reveal how leveraging Airflow can streamline complex data processes, enhance observability and ultimately drive business success. Key Takeaways: (02:31) Benjamin’s journey with Airflow and its early adoption. (05:36) The transition from legacy schedulers to Airflow at Apigee and later Google. (08:52) The challenges and benefits of running production-grade Airflow instances. (10:46) How Airflow facilitates the management of large-scale data at M Science. (11:56) The importance of reducing time to value for customers using data products. (13:32) Airflow’s role in ensuring observability and reliability in data workflows. (17:00) Managing petabytes of data and billions of records efficiently. (19:08) Integration of various data sources and ensuring data product quality. (20:04) Leveraging Airflow for data observability and reducing time to value. (22:04) Benjamin’s vision for the future development of Airflow, including audit trails for variables. Resources Mentioned: Ben Tallman - https://www.linkedin.com/in/btallman/ M Science - https://www.linkedin.com/company/m-science-llc/ Apache Airflow - https://airflow.apache.org/ Astronomer - https://www.astronomer.io/ Databricks - https://databricks.com/ Snowflake - https://www.snowflake.com/ Thanks for listening to The Data Flowcast: Mastering Airflow for Data Engineering & AI. If you enjoyed this episode, please leave a 5-star review to help get the word out about the show. And be sure to subscribe so you never miss any of the insightful conversations. #AI #Automation #Airflow #MachineLearning
…
continue reading
31 एपिसोडस
Mastering Data Orchestration with Airflow at M Science with Ben Tallman
The Data Flowcast: Mastering Airflow for Data Engineering & AI
MP3•एपिसोड होम
Manage episode 436415190 series 2053958
The Data Flowcast द्वारा प्रदान की गई सामग्री. एपिसोड, ग्राफिक्स और पॉडकास्ट विवरण सहित सभी पॉडकास्ट सामग्री The Data Flowcast या उनके पॉडकास्ट प्लेटफ़ॉर्म पार्टनर द्वारा सीधे अपलोड और प्रदान की जाती है। यदि आपको लगता है कि कोई आपकी अनुमति के बिना आपके कॉपीराइट किए गए कार्य का उपयोग कर रहा है, तो आप यहां बताई गई प्रक्रिया का पालन कर सकते हैं https://hi.player.fm/legal।
Mastering the flow of data is essential for driving innovation and efficiency in today’s competitive landscape. In this episode, we explore the evolution of data orchestration and the pivotal role of Apache Airflow in modern data workflows. Ben Tallman, Chief Technology Officer at M Science, joins us and shares his extensive experience with Airflow, detailing its early adoption, evolution and the profound impact it has had on data engineering practices. His insights reveal how leveraging Airflow can streamline complex data processes, enhance observability and ultimately drive business success. Key Takeaways: (02:31) Benjamin’s journey with Airflow and its early adoption. (05:36) The transition from legacy schedulers to Airflow at Apigee and later Google. (08:52) The challenges and benefits of running production-grade Airflow instances. (10:46) How Airflow facilitates the management of large-scale data at M Science. (11:56) The importance of reducing time to value for customers using data products. (13:32) Airflow’s role in ensuring observability and reliability in data workflows. (17:00) Managing petabytes of data and billions of records efficiently. (19:08) Integration of various data sources and ensuring data product quality. (20:04) Leveraging Airflow for data observability and reducing time to value. (22:04) Benjamin’s vision for the future development of Airflow, including audit trails for variables. Resources Mentioned: Ben Tallman - https://www.linkedin.com/in/btallman/ M Science - https://www.linkedin.com/company/m-science-llc/ Apache Airflow - https://airflow.apache.org/ Astronomer - https://www.astronomer.io/ Databricks - https://databricks.com/ Snowflake - https://www.snowflake.com/ Thanks for listening to The Data Flowcast: Mastering Airflow for Data Engineering & AI. If you enjoyed this episode, please leave a 5-star review to help get the word out about the show. And be sure to subscribe so you never miss any of the insightful conversations. #AI #Automation #Airflow #MachineLearning
…
continue reading
31 एपिसोडस
Todos los episodios
×प्लेयर एफएम में आपका स्वागत है!
प्लेयर एफएम वेब को स्कैन कर रहा है उच्च गुणवत्ता वाले पॉडकास्ट आप के आनंद लेंने के लिए अभी। यह सबसे अच्छा पॉडकास्ट एप्प है और यह Android, iPhone और वेब पर काम करता है। उपकरणों में सदस्यता को सिंक करने के लिए साइनअप करें।