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Using Redis to analyze statistical data in PHP

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2023-05-15 22:33:151644browse

With the continuous development of Internet applications, data analysis and statistics have become an important part of application development. In web application development, in order to obtain real-time statistical data, it is often necessary to read data from numerous data sources and different application systems, and then analyze, summarize and display it. At this time, Redis, as a persistent in-memory database, provides an efficient solution for data analysis.

PHP, as a programming language widely used in web application development, is also widely used in Redis. The following will explore how to use Redis in PHP to analyze statistical data.

1. Features of Redis

Redis accesses data very quickly. It supports a variety of data structures (such as strings, hashes, lists, sets, ordered sets, etc.). For different types of data, you can choose different data structures for storage and processing.

Unlike many traditional databases, Redis uses memory very efficiently. Part of the data can be included in used data pages, and this data can be read by Redis from the backed-up data when needed.

Redis’s excellent performance and efficient storage mechanism make Redis an ideal choice for data statistical analysis.

2. General process of statistical data analysis

In web application development, the process of statistical data analysis usually includes the following steps:

  1. Get the original data

Get the raw data that needs to be analyzed. This data can come from multiple sources, such as web server logs, databases, and other data sources.

  1. Data Preprocessing

Preprocess raw data to simplify, clean and standardize it. The purpose of this step is to eliminate interference caused by differences in data sources, formats, etc., making the data easier to analyze.

  1. Data processing

Perform statistics and calculations on preprocessed data. This step can include basic mathematical operations such as counting, summing, and averaging, as well as more advanced statistical methods.

  1. Data visualization

Displays the processed data in the form of charts, reports, etc. to help users understand and analyze the data.

3. Use PHP and Redis for data analysis

  1. Get original data

You can get original data in many ways, such as reading from the database Fetch, get from API interface, etc. The following takes reading order information from the MySQL database as an example.

$conn = mysqli_connect($host, $user, $password, $database);

$sql = "SELECT * FROM orders";
$result = mysqli_query($conn, $sql);
$rows = mysqli_fetch_all($result, MYSQLI_ASSOC);
mysqli_free_result($result);
mysqli_close($conn);
  1. Data preprocessing

The purpose of data preprocessing is to eliminate noise and non-standard data in the original data. The following takes the analysis of order information as an example.

foreach ($rows as $row) {
    // 可根据需要进行不同的处理,如数字格式化、日期格式化等
    $processedData[] = [
        'orderId' => (int) $row['order_id'],
        'userId' => (int) $row['user_id'],
        'orderAmount' => (float) $row['order_amount'],
        'orderCreatedAt' => strtotime($row['order_created_at'])
    ];
}
  1. Data processing

In Redis, the design of the key (Key) is very important. A good key design can reduce unnecessary memory usage and improve operating performance. The following takes order information statistics as an example.

Order quantity statistics:

foreach ($processedData as $data) {
    $key = sprintf('order:%s:count', $data['userId']);

    $redis->incr($key);
}

Total order amount statistics:

foreach ($processedData as $data) {
    $key = sprintf('order:%s:amount', $data['userId']);

    $redis->incrbyfloat($key, $data['orderAmount']);
}

Order quantity and total amount statistics:

foreach ($processedData as $data) {
    $key = sprintf('order:%s', $data['userId']);

    $redis->hincrbyfloat($key, 'count', 1);
    $redis->hincrbyfloat($key, 'amount', $data['orderAmount']);
}
  1. Data visualization

Data visualization can be done in a variety of ways, such as drawing graphics, generating reports, etc. The following is an example of outputting statistical results on the console.

Order quantity statistics:

foreach ($processedData as $data) {
    $key = sprintf('order:%s:count', $data['userId']);

    echo sprintf('用户 %s:订单数量 %s' . PHP_EOL, $data['userId'], $redis->get($key));
}

Order quantity statistics:

foreach ($processedData as $data) {
    $key = sprintf('order:%s:amount', $data['userId']);

    echo sprintf('用户 %s:订单总金额 %s' . PHP_EOL, $data['userId'], $redis->get($key));
}

Order quantity and total amount statistics:

foreach ($processedData as $data) {
    $key = sprintf('order:%s', $data['userId']);

    $result = $redis->hgetall($key);

    echo sprintf('用户 %s:订单数量 %s,订单总金额 %s' . PHP_EOL, $data['userId'], $result['count'], $result['amount']);
}

4. Summary

Using Redis to perform statistical data analysis in PHP can effectively improve the performance and efficiency of data processing. Redis's efficient storage mechanism and multiple data structure capabilities can effectively meet the needs of real-time statistical analysis. At the same time, reasonable key design and data preprocessing can also make data analysis results more accurate and instructive.

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