#legacysql результаты поиска
SQL Tip Of The Day Use FOR XML PATH for Legacy String Concatenation Before STRING_AGG, this was the hack: SELECT ',' + name FROM Employees FOR XML PATH('') Still useful for SQL Server < 2017! Used this trick before? #SQLTips #LegacySQL #StringManipulation #TSQL
It seems that this query uses standard SQL rather than legacy. Since it is an injection, I cannot insert #legacySQL command at the beginning of the query which switches it to the legacy one instead of standard. So it seems it is impossible to use [] if the main query is standard.
LegacySQLでしか使えない関数は、LegacySQLを使い続ける方法しかないのかな、、 Radians関数とかそのままだと標準SQLでは使えない(共有UDF?で使えそうなことは発見) #BigQuery #LegacySQL
Not for me, I'm using REGEX_MATCH in #legacySQL, maybe I should change to using #standardSQL
Google is an engineering org, not a marketing org. Snowflake and BigQuery are very close to parity with performance and features today, but BigQuery really hobbled itself in early days with its #legacysql syntax
SQL Tip Of The Day Use FOR XML PATH for Legacy String Concatenation Before STRING_AGG, this was the hack: SELECT ',' + name FROM Employees FOR XML PATH('') Still useful for SQL Server < 2017! Used this trick before? #SQLTips #LegacySQL #StringManipulation #TSQL
It seems that this query uses standard SQL rather than legacy. Since it is an injection, I cannot insert #legacySQL command at the beginning of the query which switches it to the legacy one instead of standard. So it seems it is impossible to use [] if the main query is standard.
LegacySQLでしか使えない関数は、LegacySQLを使い続ける方法しかないのかな、、 Radians関数とかそのままだと標準SQLでは使えない(共有UDF?で使えそうなことは発見) #BigQuery #LegacySQL
Google is an engineering org, not a marketing org. Snowflake and BigQuery are very close to parity with performance and features today, but BigQuery really hobbled itself in early days with its #legacysql syntax
Not for me, I'm using REGEX_MATCH in #legacySQL, maybe I should change to using #standardSQL
Something went wrong.
Something went wrong.
United States Trends
- 1. Dodgers 716K posts
- 2. World Series 376K posts
- 3. Blue Jays 121K posts
- 4. Yamamoto 222K posts
- 5. Will Smith 50.9K posts
- 6. Miguel Rojas 43.5K posts
- 7. Yankees 16K posts
- 8. Kershaw 36.4K posts
- 9. Baseball 167K posts
- 10. Kendrick 18K posts
- 11. Dave Roberts 14.3K posts
- 12. Vladdy 22.6K posts
- 13. #Worlds2025 28.2K posts
- 14. Ohtani 89.5K posts
- 15. Carlos Manzo 279K posts
- 16. jungkook 359K posts
- 17. Jeff Hoffman 3,881 posts
- 18. Nike 38.1K posts
- 19. Cubs 7,777 posts
- 20. Mets 11.7K posts