


Technical ideas for implementing time series data search and aggregation using RiSearch PHP
RiSearch PHP Technical ideas for realizing time series data search and aggregation
Introduction:
With the development of the Internet, many application systems will generate a large number of time series Data, such as sensor data, log data, stock prices, etc. An important requirement for this data is to be able to search and aggregate it quickly and accurately. RiSearch is a full-text search engine based on Redis. In this article, we will discuss how to use RiSearch and PHP to implement the search and aggregation functions of time series data.
1. Install and configure RiSearch
First, we need to install Redis and RiSearch, and install the redis extension in PHP. This can be accomplished through the following steps:
- Install Redis: Please refer to the documentation on the Redis official website (https://redis.io/) to download and install Redis.
- Installing RiSearch: Please refer to the documentation on the RiSearch official website (https://github.com/RediSearch/RediSearch) to download and install RiSearch.
- Install the redis extension: Install the redis extension by running the
pecl install redis
command and add it to the PHP extension list.
2. Create a time series index
Before using RiSearch for search and aggregation, we need to create a time series index first. Suppose we have a logging system, and each log contains timestamp and content information. We can create a time series index through the following code:
<?php $redis = new Redis(); $redis->connect('127.0.0.1', 6379); $redis->rawCommand('FT.CREATE', 'logs', 'SCHEMA', 'timestamp', 'NUMERIC', 'content', 'TEXT'); // 将日志数据添加到索引中 $logs = array( array('timestamp' => 1615516800, 'content' => '这是第一条日志'), array('timestamp' => 1615603200, 'content' => '这是第二条日志'), // ... ); foreach ($logs as $log) { $redis->rawCommand('FT.ADD', 'logs', 'doc:'.$log['timestamp'], 1.0, 'FIELDS', 'timestamp', $log['timestamp'], 'content', $log['content']); } ?>
In the above code, we first create a time series index named "logs", and define two fields when creating it, namely " timestamp" (timestamp) and "content" (content). Then, we added each piece of log data to the index in chronological order.
3. Searching time series data
Using RiSearch to search time series can be very flexible and efficient. The following is a sample code to search log data based on time range:
<?php $redis = new Redis(); $redis->connect('127.0.0.1', 6379); $query = '@timestamp:[1615516800 1615603200]'; // 搜索2021-03-12到2021-03-13之间的日志 $result = $redis->rawCommand('FT.SEARCH', 'logs', $query, 'LIMIT', 0, 10); // 输出搜索结果 foreach ($result as $key => $value) { if ($key % 2 === 0) { echo '日志ID:'.$value." "; } else { echo '内容:'.$value." "; } } ?>
In the above code, we use the FT.SEARCH
command to search, specifying the index to search The name "logs" and the query statement "@timestamp:[1615516800 1615603200]" mean to search for logs between 2021-03-12 and 2021-03-13. By limiting the number of results and iterating over the output, we can get the search results.
4. Aggregation of time series data
In practical applications, we often need to aggregate time series data, such as calculating the average, maximum, minimum value, etc. within a certain time period. . RiSearch also provides corresponding aggregation functions. The following is a sample code to calculate the frequency of log content within a specific time range:
<?php $redis = new Redis(); $redis->connect('127.0.0.1', 6379); $query = '@timestamp:[1615516800 1615603200]'; // 搜索2021-03-12到2021-03-13之间的日志 $result = $redis->rawCommand('FT.AGGREGATE', 'logs', $query, 'LOAD', 1, 'GROUPBY', 1, '@content', 'REDUCE', 'COUNT', 0, 'AS', 'count'); // 输出聚合结果 foreach ($result as $item) { echo '内容:'.$item['@content'].',出现频率:'.$item['count']." "; } ?>
In the above code, we use FT.AGGREGATE The
command performs aggregation, specifying the index name "logs" to be aggregated, the query statement "@timestamp:[1615516800 1615603200]", and the aggregation method "COUNT", which means calculating the frequency of occurrence of each log content. By iterating over the results, we can get the aggregated results.
Summary:
Through the combination of RiSearch and PHP, we can easily implement the search and aggregation functions of time series data. By creating time series indexes, using FT.SEARCH for searching, and using FT.AGGREGATE for aggregation, we can quickly and accurately process large amounts of time series data to meet the needs of practical applications. It should be noted that this article only provides basic ideas and code examples. Actual use requires corresponding adjustments and optimizations based on specific needs.
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