Deep Dive: Enterprise Data Integration Simplified with Azure Data Factory | Data Exposed Live

%3CLINGO-SUB%20id%3D%22lingo-sub-2059079%22%20slang%3D%22en-US%22%3EDeep%20Dive%3A%20Enterprise%20Data%20Integration%20Simplified%20with%20Azure%20Data%20Factory%20%7C%20Data%20Exposed%20Live%3C%2FLINGO-SUB%3E%3CLINGO-BODY%20id%3D%22lingo-body-2059079%22%20slang%3D%22en-US%22%3E%3CP%3E%3CSPAN%20style%3D%22font-size%3A%2011.0pt%3B%20font-family%3A%20'Calibri'%2Csans-serif%3B%20mso-fareast-font-family%3A%20Calibri%3B%20mso-fareast-theme-font%3A%20minor-latin%3B%20mso-ansi-language%3A%20EN-US%3B%20mso-fareast-language%3A%20EN-US%3B%20mso-bidi-language%3A%20AR-SA%3B%22%3EPerformance%20tuning%20ETL%20jobs%20in%20a%20cloud%20service%20presents%20a%20series%20of%20challenges%20that%20differ%20significantly%20from%20traditional%20legacy%20ETL%20processes.%20In%20this%20episode%20of%20Data%20Exposed%20Live%2C%20we%20will%20dive%20into%20Cloud%20ETL%20performance%20tuning%20data%20flows%20and%20pipelines%20in%20Azure%20Data%20Factory%20and%20Synapse%20in%20Data%20Lake%2C%20Azure%20SQL%20DB%2C%20and%20SQL%20Pools%20scenarios.%20%3C%2FSPAN%3E%3C%2FP%3E%0A%3CP%3E%3CSPAN%20style%3D%22font-size%3A%2011.0pt%3B%20font-family%3A%20'Calibri'%2Csans-serif%3B%20mso-fareast-font-family%3A%20Calibri%3B%20mso-fareast-theme-font%3A%20minor-latin%3B%20mso-ansi-language%3A%20EN-US%3B%20mso-fareast-language%3A%20EN-US%3B%20mso-bidi-language%3A%20AR-SA%3B%22%3ETo%20check%20out%20even%20more%20Data%20Exposed%20Live%20episodes%2C%20see%20our%20playlist%3A%20%3CA%20href%3D%22https%3A%2F%2Faka.ms%2Fdataexposedlive%22%20target%3D%22_blank%22%20rel%3D%22noopener%20noreferrer%22%3Ehttps%3A%2F%2Faka.ms%2Fdataexposedlive%3C%2FA%3E%20%3C%2FSPAN%3E%3C%2FP%3E%0A%3CP%3E%3CSPAN%20style%3D%22font-size%3A%2011.0pt%3B%20font-family%3A%20'Calibri'%2Csans-serif%3B%20mso-fareast-font-family%3A%20Calibri%3B%20mso-fareast-theme-font%3A%20minor-latin%3B%20mso-ansi-language%3A%20EN-US%3B%20mso-fareast-language%3A%20EN-US%3B%20mso-bidi-language%3A%20AR-SA%3B%22%3ESubscribe%20to%20our%20YouTube%20channel%3A%26nbsp%3B%3CA%20href%3D%22https%3A%2F%2Faka.ms%2Fmsazuresqlyt%22%20target%3D%22_blank%22%20rel%3D%22noopener%20noreferrer%22%3Ehttps%3A%2F%2Faka.ms%2Fmsazuresqlyt%3C%2FA%3E%20%3C%2FSPAN%3E%3C%2FP%3E%0A%3CP%3E%3CSPAN%20style%3D%22font-size%3A%2011.0pt%3B%20font-family%3A%20'Calibri'%2Csans-serif%3B%20mso-fareast-font-family%3A%20Calibri%3B%20mso-fareast-theme-font%3A%20minor-latin%3B%20mso-ansi-language%3A%20EN-US%3B%20mso-fareast-language%3A%20EN-US%3B%20mso-bidi-language%3A%20AR-SA%3B%22%3EFollow%20us%20on%20Twitter%3A%26nbsp%3B%3CA%20href%3D%22https%3A%2F%2Faka.ms%2Fazuresqltw%22%20target%3D%22_blank%22%20rel%3D%22noopener%20noreferrer%22%3Ehttps%3A%2F%2Faka.ms%2Fazuresqltw%3C%2FA%3E%3C%2FSPAN%3E%3C%2FP%3E%3C%2FLINGO-BODY%3E%3CLINGO-LABS%20id%3D%22lingo-labs-2059079%22%20slang%3D%22en-US%22%3E%3CLINGO-LABEL%3EAzure%3C%2FLINGO-LABEL%3E%3CLINGO-LABEL%3EProductivity%3C%2FLINGO-LABEL%3E%3C%2FLINGO-LABS%3E
Microsoft

Performance tuning ETL jobs in a cloud service presents a series of challenges that differ significantly from traditional legacy ETL processes. In this episode of Data Exposed Live, we will dive into Cloud ETL performance tuning data flows and pipelines in Azure Data Factory and Synapse in Data Lake, Azure SQL DB, and SQL Pools scenarios.

To check out even more Data Exposed Live episodes, see our playlist: https://aka.ms/dataexposedlive

Subscribe to our YouTube channel: https://aka.ms/msazuresqlyt

Follow us on Twitter: https://aka.ms/azuresqltw

0 Replies

Session Resources