I have a log table that gets processed every night. Processing will be done on data that was logged yesterday. Once the processing is complete I want to delete the data for that day. At the same time, I have new data coming into the table for the current day. I partitioned the table based on day of week. My hope was that I could delete data and insert data at the same time without contention. There could be as many as 3 million rows of data a day being processed. I have searched for information but haven't found anything to confirm my assumption.
I don't want to have the hassles of writing a job that adds partitions and drop partitions as I have seen in other examples. I was hoping to implement a solution using seven partions. eg.
CREATE TABLE `professional_scoring_log` ( `professional_id` int(11) NOT NULL, `score_date` date NOT NULL, `scoring_category_attribute_id` int(11) NOT NULL, `displayable_score` decimal(7,3) NOT NULL, `created_at` datetime NOT NULL, PRIMARY KEY (`professional_id`,`score_date`,`scoring_category_attribute_id`), ) ENGINE=InnoDB DEFAULT CHARSET=utf8 /*!50100 PARTITION BY RANGE (DAYOFWEEK(`score_date`)) (PARTITION Sun VALUES LESS THAN (2) ENGINE = InnoDB, PARTITION Mon VALUES LESS THAN (3) ENGINE = InnoDB, PARTITION Tue VALUES LESS THAN (4) ENGINE = InnoDB, PARTITION Wed VALUES LESS THAN (5) ENGINE = InnoDB, PARTITION Thu VALUES LESS THAN (6) ENGINE = InnoDB, PARTITION Fri VALUES LESS THAN (7) ENGINE = InnoDB, PARTITION Sat VALUES LESS THAN (8) ENGINE = InnoDB) */
When my job that processes yesterday's data is complete, it would delete all records where score_date = current_date-1. At any one time, I am likely only going to have data in one or two partitions, depending on time of day.
Are there any holes in my assumptions?