In addition to physical database design choices, there are several application opportunities that benefit tactical query performance. The main areas of interest are multistatement requests and macros.
Multistatement Requests Multistatement requests are a database feature in which multiple SQL statements are bundled together and treated as a single parsing and recovery unit, as illustrated by the following graphic:
Because they are run in parallel, these single-AMP multistatement requests are processed with great efficiency. Multistatement requests are application-independent and can improve performance in a variety of ways. They are particularly useful in improving response times for the combined statements.
The benefits of multistatement requests include the following:
Communication overhead is reduced
One parser-optimization process is performed instead of several
Greater inter-request parallelism is possible
Coding Multistatement Requests Multistatement requests are application-independent, but their behavior can be different depending on whether they are specified as an implicit transaction or as part of an explicit transaction and whether they are submitted in Teradata or ANSI/ISO session mode.
Vantage treats multistatement requests as single implicit transactions in Teradata session mode when no open BEGIN TRANSACTION statement precedes them.
With the exception of multistatement INSERT requests, Vantage treats multistatement requests as single recovery units only if they are executed either as implicit transactions in Teradata session mode, or in ANSI/ISO session mode. Depending on any errors generated by the statements in the transaction, either the entire transaction or only the erring request is rolled back. For example, in Teradata session mode within an explicit transaction, Vantage rolls the entire transaction back to the BEGIN TRANSACTION statement, so in this case, the complete transaction is the recovery unit.
If several UPDATE requests are specified within one multistatement request inside an explicit transaction in Teradata session mode, and one of them fails, then all are rolled back. The fewer UPDATE statements in the multistatement request, the lower the impact of the rollback. However, the more statements included in the request, the higher the degree of parallelism among them.
The rollback issue for UPDATE requests is not true for multistatement INSERT requests, where the statement independence feature can frequently enable multistatement INSERT requests to roll back only the statements that fail within an explicit transaction or multistatement request and not the entire transaction or request.
Statement independence supports the following multistatement INSERT data error types:
Column-level CHECK constraint violations
Data translation errors
Duplicate row errors for SET tables
Primary index uniqueness violations
Referential integrity violations
Secondary index uniqueness violations
Statement independence is not enabled for multistatement INSERT requests into tables defined with the following options:
Triggers
Hash indexes
Join indexes
See the information about INSERT and INSERT SELECT in Teradata Vantageā¢ - SQL Data Manipulation Language , B035-1146 for more information about statement independence. Note that various client data loading utilities also support statement independence. Consult the appropriate Teradata Tools and Utilities documentation for information about which load utilities and APIs support statement independence and what level of support they offer for the feature.
ACCESS Locking and Multistatement Requests If you want each statement in a multistatement request to use row hash-level ACCESS locking, specify the LOCKING ROW FOR ACCESS modifier preceding each individual SELECT statement in the multistatement request. See Coding Multistatement Requests for additional details about how Vantage handles transactions, particularly those containing multistatement requests.
Macros and Tactical Queries You automatically get a multistatement request without coding it if you write multiple SQL statements within a macro because macros are always performed as a single request. The macro code can also specify parameters that are replaced by data each time the macro is performed. The most common way of substituting for the parameters is to specify a USING request modifier (see Teradata Vantageā¢ - SQL Data Manipulation Language , B035-1146 ).
Macros are usually more efficient for repetitive queries than single DML statements. Unlike procedures, macros are not designed to return parameters to the requestor: they return only the answer set for the SQL statements they contain.
Macros have the following advantages:
Network and channel traffic are reduced.
Execution plans can be cached, reducing parsing engine overhead.
They ensure the efficient performance of their component SQL statements.
Reusable database components save client resources.
They can be used to force data integrity and locking modifiers.
They can be used to enforce security.
Cached Plans Caching of repeatable requests in the Request-to-Step Cache reduces performance time because parsing and optimizing do not need to be done when cached requests are repeated. For subsecond queries, cached plans significantly reduce the query time and enhance throughput. The following figure is a high-level flow chart for the request-to-steps cache that resides in each parsing engine on a Teradata system.
For macros to be considered for caching,
Vantage know that the SQL text they contain is repeatable. All of the following attributes must be identical each time the request is sent to the Teradata platform:
Host, workstation, or LAN type
Default database name
National character set
Request text
Parameter variables in the macro support repeatability. These parameters must be specified in both the SQL code itself and in the USING request modifier that precedes the EXEC statement that invokes the macro.
The following picture illustrates the conditions required for caching the SQL statements for a macro. In this example, the request is made using BTEQ from a mainframe client across a block multiplexor channel. Note that the SQL code is in a request parcel, while the data values are transmitted in a data parcel. Both a request and a data parcel must be transmitted for the SQL to be cached immediately.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==
B8c+p+eyb9npnd2IOzsDs6GAf3DThdqPOmPuxUg5VJ4FvYufRYbnD4bCYz3hnq6trvOtgc6DZKF7
PRxIq28DE/uZGGimVBoaPBz1FuemRqZ7y0M9EwPrvmRhK7KWKO1sBeJbyc2V5ODo4FGwY7Q7H/DP
Z1Y9Q5u7ocDUwlIsMHEQ9YcOnBPzQW/76Rq3J6AZgc6USsPOy7GD2cvZ0Ymuo/m+tny2YzxamR0B
nVhbHvFXAsm+3fl4ofdguXMU/HbqPJBu24wrrcLQDWkyBjcjGKtjhfIc/kuajJlyqRSJZwP+jbNu
ugicgtJOajviC8/0XHqGxp1t6kB8/nLPeOhy8+AQL4HxnNS6Wm9/eaO0647PBvyRZTwt6uDAjz1b
kaZQXwf4WTAP+ztPtLq72hWnWsXNSA1HF8NnJV6rB6Xdi8oqp9XYYddSqjPEbLXcsw7jkXnDnYj0
to6esVsdaGort7cUiqxWS5cHvhbXYcvSjtoqaEZtOJAMDA9wWu1qbunpP+5ltxrZ3AkkV8YWmWNt
Shah61/rfHZ2iTXcwHhzYYbbavvUTGSWh+HV0s5RaAq26katwtGQSG5aD7dGK+3gl5GCbmr7Woak
Vhfa26kFFVnpHs+hVsH+OkxoW92F23N37XBJbVjTat9+dDV94me2ute5Msdttdt/vNyutor2DTG1
Tnep3Ocps1td6N6LbJzOeFmtltuHNoOcVqOnoBl3+1hmnD3cyOZmINkbmGO22pQ86W5ZOg/Ns1oN
JHd3k2qrcG60U9t6lp+N8VpNBca9B2vsVscDo+0ZV/cmq1U4N5Vm77DU8Gani9o8w3ORwR3camLn
LKlpdWsgMNPdGYStduhancgU5C3bDWkaPdyZ7a0Up9Wu5u6zdHKP12o8MNux28tqFTRTbpq86Bu5
V5pbQg3TrS73t4e5rU5nlsMBTqvbnYHlfXcTalWm0ORwpycyc9tbbhez1bX2/Am31eXTxYNDVquI
rUW2xwNr08UBNpJnwq2ryZGBQXarxakmbqtr++NNFdQqaIYx3PnA+vB0nN3q7FBif29xd5fZ6u78
2SSrVUihYcP3NqPpJAfJOz2B3XKuk93q3L3i+XxvT5jZ6v5kZx61iviNfril1mWPk9Pq5mogkT2f
YrbaM9fZ5BzZ7UyAVvsu1FZhM4hCXe5370vDPQy7qc3j3ppJdaBWQ+1DrgntWGcCBx19o7BVr47z
7N+7aAtO7a+AZkDDgyUdyyu0DUqtVoY91FidgPm7catjm8FJLVH0lsqrQ07Yqk9tFTYjUajJTnm4
sQrVqqd/oqkLtzocnO6k6KK3GJk7QK2GW/pi09pWW0ql1CH0tocNB+jhlkYzBXkZTzlpahy91zcm
tdq36KMw3FTIHKxgfpdJ7XfRIkd0YrVtr9BHFVDfbi4Gz9d4b0+BYNh6yX0L903HaLyNUwDMQ5sn
JslYmXuZbuptV09wX+55+ayHfps/bdqQtyerQPfCZN8O9+c9oY6lA/7b09ReO/WWQFpX82iobeuI
+/MZT344xH97OH/cz30LmplvOjqc4BTomWibGFgt47fH7Re91M9XPdn+e9LbYFMf/fZwajmvII1R
YC3ukeVPxtv11kO/k/92J943SL3VIO2gda+7hfvze5WF4gT37dlaaGyR+xY0c36WHNrjFQCdWOyP
ct9OhSJDG9y3R/nD5RkDpLU52yZ3Ong/b0uMzh5muG+nQsNNQQOkjTpDLe4+zs+jE4HEYIc86j5X
P/XWs7JYHpbexnwD1FvQzMrBeMcor8BpR8uwLCqz3g5vjcyTbyPeJUkpDLcsemKdHbFAun07psrQ
B605pL9JyltyP2qgvIUqLVAzjjk7p3o3gWZ8bwX+44PPkk5vfCkG/1kHZK+3Bf0MkU7PLCY2UoOp
pTGZiJaaQu2DC50Scwi2kgxjqDncjvRMrAwB5Y3YVf7Znnw70DQ3LpEyhNWo4wFF6W/2ZwcP3YDO
NSWgPtSpId1kq56B0Mkip9Wu5ubVYm5bIwuQDUc2t7itApZ0L8htNZA8nlvmtgqagVz0iD3cyGaa
bDWy3EK02jM3tky0mm5ra1ZbLTefZpaUVsNoQWuQPHTRcq4MdzynadW9yW0VYHgwxG0VLgGoWqgN
U8OFqsUep9XNXf5Ym5LliFYW0DaMVAtuq1C1OGW3OuD0cVtFonpypp07XCSncFuFQsqKZl4zvXL7
6C9pJqC2FttKnwsUde9dnudNy3U1X+wlNuapcrIxRVM0eiqtPol0jIGB74x6CHORuoMPXOcQQUuE
3W0oeVmS6Ezb8ohModVf+rPNfV71n6GiK70imQQghYJ4HSq6B4pKlS5Ux1DvRMs91Imh3vHtOCBi
qQRsOqzSKInYgC4MJVqlf7yzBakFJFzLLajdAYMbLOIiGoshIoBj/tNMvFX5Z4lSPCTT17xSPg6b
GSeJ3cHUsNzp1QXwtQ1KrJcdMoKwRiARZwKHC23wCkcNGknsB6aira3oH7gy10kFgdWns95Jbp+w
DH3ZDlbwrDfUPhyYVM07lDURIT60ezk2TSFeh3X4j9R3rLovIrsAPch2p8AI0T+mc7jchIoQxhTm
NDYrI+zgjhDKxKvGcyghTWAaC6yFaoQvsipyNLi2YMfYvaRZbSJrvr9TRb0s2VS9vsZ3Lsx3EGRr
ItgHEtNWLTtIpQIAX6Gxrd6pKvGlpUJuigqBZkCP9hLa+Q1XOyOJnckSiUO5x3BuNGhsw4SIjb69
hIJhTne8CS/+R0IfttMyt+dmp5Oi42bbE1kdmYPbpLenMiNWBhceXluZNcP1+HSbRDqXOJ2Je0TG
lVnwtUlLQLfmE6CZtQJcAowpszQkqC1uEJ1QSCFFbA7cbaCDG3E2ndn0FoOplvYJAdxwEYPZWjzA
xY3/tOAZlFeQsqCR9YiN5iCrKjQasdq0G7BDLwakktzdh2ialQ2Yatq4NJzN5qB3NeiF/2x7lIMK
2aSqXR6ATLoS08azKv0DplS1fusXCBghpIeynKavbX5R6RbRNzCayjizY0Pjh2XeMEeQzaay6tdJ
ZwbT4tFPS3rcmOmh0XAIkW5pn/WUuUKCsShJmbtBeSDjbFcMORVzkhmIHIc4maCEW4pTCQtV6XEt
1dazKbB8oe6p8GKDblWGpzjcc35J6o5Rn2RZAHeLL+sp0yc0h70t1BxqNAJJ0DDSCDRzmG8VnUPq
sJiFr/GF85pXhMSkYW3L+XqtL8BgqKqUU9xqats0VnIsIs1E4LOItP1S3ZCmpW7WkVYkl9tBd0mn
3VaGmPRIZmtWJOcJK9riEo+mjW2cOgWkb7Tj2duzMtxUv+05tnHRIqpOyytNOhhmIGg4OD1jCUG6
7mwi62CNCBoqK5yar0hgtgYFDbbQOGFOHkR6gs5vRLVAfk9M6AEcjUBntFJnFT1BSDMjAJTq7uHw
0ZMJaPPeZq0XrK2x9Ed8Oqqax5fUKkO75UMfYQcHf03ChZ8wNqbQLUgWEBp9QEQUMX8QZETZJVq3
BNwtWRwR05r5fWo2tQsIk4LdSqvAxpNX2pIhKZi0QgqYI1TsAmCQ7VUiXod1vfSg4zfU4uVJ+vcm
4bHiuugIsbmbO43xSjCxWx4Xt3xwVHdos9ktn4brhi/2TtdZOYTwxdvs3BUh7RvmZg+39J75tZt9
it7sTDVOb4tiGFPA4m2q1egwRRly8RLQ9khY5zif0gr3HIOBxNZMqEZwur3mwSHJpm9x1lRrNjKE
DAenLrWcmh6XahcwsoWAxXARqmVI0oKe0jHaKoxE51PwjHmThRiKrZnixsw6SBEFWe3XS50QQV0C
CCKIgsYkoRWzRy6RmK01d4PFIGJ/NBezpykxm7VvBNDXt9hq3B2KL2LJhs0aw8Or3e3my0KAL04j
pGlZY1WDcxsPDiLNdBNP6xii1eWOF3RxmuaFVQ3JqeWBfOugISkYXm2NVkkKSFlgWsf82LgxF3MB
drScj7ugxcRceN7VjpxCiHGBZ/SK0CuFghsQRir4CqLLgjSpage+sUwfZVbN/jaWUTN1stKCjvG2
oBUKDTeP6BEHtV61cwMnz5gNCix8VItW0wxTB5JWKuJtRVYtqgDFqKjWcw5UC1ogkl+nNV7IrE1z
ysgXOYTOOWAcg9ellURjyJvW+HgC2gXE7GQx5CVbJfvR6Z6wtpDP4kkhF5v3Mh0ImwJzQxyaG1K3
8plbR93KZx5CjapJvIgB3IxcGGNTUnENxbyN1ZqpG2G8B7XVjbqtUtStOgEKGrQtUTcuFQCTVwfq
BmpB1E1gpZlXZE7dsDhoWlEdTnFRRQYnSt4xl3IQ5GfuIO2ksfRsYqWRJ5Bs2UXyI5N9HYFGpLOq
w2eMo9yqPLrgkboQPVIkNvYpbgzs+HljMil6MgGrWnMK+QsIyPwx1aGCVZVEbAQozlotGrc6N3Dy
KJ+pasgDrEUv9RMrzUJF5l4VVC0sBxhUEUfzttgd2aeJe1hsKK/TtZnavWj/NCP+CEboofkjeNYp
sIM0Z9J8/phqWuL6HIgrhRvr9ZP+11nMkbnSRPjjuiUFXGuEJKd256JK6Z+aObmZmiuipP/q2Bqq
yIr0z2NrqKKapX9YC5c54iM8S/xx58JoP7KZI6Xi0vxxX3/qDJ9ZdjTkCVCAGgl6eamuHdzx70NH
ZYNpIbHJkQ/IvbTB3eSqJi2+zzesC8EG5ocNoX0uQsQR0oQ2u7kCCmbTxxWHWW5wbNtdDKB0zS+2
LAQMxKhbgsuCvcloNhXzdSLFg+JUMR+/05bUuNDYRvrSwEt1RMA1Ttsx/gkCwibTDY67ZA7LdXTt
hbUJHv+YnP3AqsIt/dMzdTGmAKR1i9mheQcL2gndF9EDcFV8TXpT54vFXRZCfSKWhdav05JbrMrg
hqKzeabiIU2CFJEfKp84O/OL+07v2l7C2Tka3oNBfAlL4XzGsXzIwb8e4XzGsXwUsak+nM84lk8S
bmsP5zOO5WvUhi5WH85nHMvXSIUuVh3OZxzLB5qpTzifcSxfIxW6WHU4n3EsH9w3dQnnM47lw1Sg
DuF8+nJkLJ+keNQezmfsgK0/96wynI9ygKZYONtmE4eeLElj5Vgr8PEjkZDSQrI1kW6x+2TsnAUk
RtV30CRuK0n7t1oySJEHknFaNjZFFU8B3o4jCUAbtFQlqiiDFANVKp4alTtT2CFuHZp1y/BjGzx0
CUSkIZPqvcxafVYV18uL1G86xBZDf6f1EarmByrsTmvoMkS8YZ/89MFK1Yg3M3SZ7Bvj+D2h4D15
0SqOypx1m6A9uauwE256K4SrlZCLCde/BJmbhQzEAubmRJX+JRQV2OxstmSUZ6NZ71/Cdrg0C7uz
7F/CUqNg2F2tli0YKOc30ggs4IbvX0JrKcqC5igqCeNAMXOdp0i5JRwE9Yc+h6ELs+UuQihSyUYi
stiacqyb0sMw309T8YESjXtNNc0yYyCNDW1cAzHAl4GngYChTWNoREvgrKdIWVTAzw==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==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==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==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==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==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==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==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==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==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The data values are passed from the application to the macro code where they are then processed. Their format depends on the programming conventions for the application. For example, in BTEQ you must use the .IMPORT FILE = command when you perform the macro, and the import file specified in the command contains records with the data values to be passed to the macro. The values in the file are positionally associated, from left to right, with the parameters in the USING request modifier.