9 Introduction to Database Replay
You can use Database Replay to capture a workload on the production system and replay it on a test system with the exact timing, concurrency, and transaction characteristics of the original workload. This enables you to test the effects of a system change without affecting the production system.
Database Replay supports workload capture on a system running Oracle Database 10g Release 2 and newer releases. In order to capture a workload on a system running Oracle Database 10g Release 2, the database version must be 10.2.0.4 or higher. Workload replay is only supported on systems running Oracle Database 11g Release 1 and newer releases.
Note:
To use the workload capture feature on a system running Oracle9i Database or an earlier version of Oracle Database 10g, refer to My Oracle Support note ID 560977.1 at the URL below for information about the required patches, or contact Oracle Support for more information:
Analyzing the effect of system changes using Database Replay involves the following steps, as illustrated in Figure 9-1:
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On the production system, capture the workload into capture files, as described in "Workload Capture".
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Copy the capture files to the test system and preprocess them, as described in "Workload Preprocessing".
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On the test system, replay the preprocessed files, as described in "Workload Replay".
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Using the reports generated by Database Replay, perform detailed analysis of both the workload capture and workload replay, as described in "Analysis and Reporting".
9.1 Workload Capture
The first step in using Database Replay is to capture the production workload. Capturing a workload involves recording all requests made by external clients to Oracle Database.
When workload capture is enabled, all external client requests directed to Oracle Database are tracked and stored in binary files—called capture files—on the file system. You can specify the location where the capture files will be stored. Once workload capture begins, all external database calls are written to the capture files. The capture files contain all relevant information about the client request, such as SQL text, bind values, and transaction information. Background activities and database scheduler jobs are not captured. These capture files are platform independent and can be transported to another system.
See Also:
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Capturing a Database Workload for information about how to capture a workload on the production system
9.2 Workload Preprocessing
See Also:
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Preprocessing a Database Workload for information about how to preprocess a captured workload
9.3 Workload Replay
Database Replay uses a client program called the replay client to re-create all external client requests recorded during workload capture. Depending on the captured workload, you may need one or more replay clients to properly replay the workload. A calibration tool is provided to help determine the number of replay clients needed for a particular workload. Because the entire workload is replayed—including DML and SQL queries—the data in the replay system should be as logically similar to the data in the capture system as possible. This will minimize replay divergence and enable a more reliable analysis of the replay.
See Also:
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Replaying a Database Workload for information about how to replay a preprocessed workload on the test system
9.4 Analysis and Reporting
Once the workload is replayed, in-depth reporting is provided for you to perform detailed analysis of both workload capture and replay.
The workload capture report and workload replay report provide basic information about the workload capture and replay, such as errors encountered during replay and data divergence in rows returned by DML or SQL queries. A comparison of several statistics—such as database time, average active sessions, and user calls—between the workload capture and the workload replay is also provided.
The replay compare period report can be used to perform a high-level comparison of one workload replay to its capture or to another replay of the same capture. A divergence summary with an analysis of whether any data divergence occurred and if there were any significant performance changes is also provided. Furthermore, Automatic Database Diagnostic Monitor (ADDM) findings are incorporated into these reports.
For advanced analysis, Automatic Workload Repository (AWR) reports are available to enable detailed comparison of performance statistics between the workload capture and the workload replay. The information available in these reports is very detailed, and some differences between the workload capture and replay can be expected. Furthermore, Workload Intelligence operates on data recorded during a workload capture to create a model that describes the workload. This model can be used to identify significant patterns in templates that are executed as part of the workload. For each pattern, you can view important statistics, such as the number of executions of a given pattern and the database time consumed by the pattern during its execution.
The SQL Performance Analyzer report can be used to compare a SQL tuning set from a workload capture to another SQL tuning set from a workload replay, or two SQL tuning sets from two workload replays. Comparing SQL tuning sets with Database Replay provides more information than SQL Performance Analyzer test-execute because it considers and shows all execution plans for each SQL statement, while SQL Performance Analyzer test-execute generates only one execution plan per SQL statement for each SQL trial. Moreover, the SQL statements are executed in a more authentic environment because Database Replay captures all bind values and reproduces dynamic session state such as PL/SQL package state more accurately. It is recommended that you run SQL Performance Analyzer test-execute first as a sanity test to ensure SQL statements have not regressed and the test system is set up properly before using Database Replay to perform load and currency testing.
Besides using replay divergence information to analyze replay characteristics of a given system change, you should also use an application-level validation procedure to assess the system change. Consider developing a script to assess the overall success of the replay. For example, if 10,000 orders are processed during workload capture, you should validate that a similar number of orders are also processed during replay.
After the replay analysis is complete, you can restore the database to its original state at the time of workload capture and repeat workload replay to test other changes to the system.
See Also:
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Analyzing Captured and Replayed Workloads for information about how to analyze data and performance divergence using Database Replay reports