


GORM multi-column fuzzy query and deletion mark conflict: How to avoid querying deleted records?
Solutions to conflict between GORM multi-column fuzzy query and soft deletion
When using GORM for database operations, multiple columns of fuzzy queries and soft deletion filtering are often required at the same time. If handled incorrectly, it may cause the query results to contain deleted records. This article will explain how to effectively avoid this situation.
Question: Suppose you need to fuzzy match username
and nickname
columns according to the keywords, and exclude records with is_del
of 1 (deleted). Using where
and or
methods directly to combine queries may result in errors.
Error example:
_db = _db.Where("username like ?", "%" keyword "%").Or("nickname like ?", "%" keyword "%")
The above code uses Or
method, resulting in that even if is_del
is 1, the record will be queryed as long as username
or nickname
matches the keyword.
Solution: Merge all the conditions into one Where
statement:
_db = _db.Where(" (username LIKE ? OR nickname LIKE ?) AND is_del = ?", "%" keyword "%", "%" keyword "%", 0)
The improved code combines the fuzzy matching conditions of username
and nickname
using brackets and concatenates with is_del = 0
using AND
conditions. In this way, only records that meet the fuzzy matching and undeletion conditions will be queried, effectively avoiding the incorrect check of soft deleted records.
Through this method, it is possible to ensure that GORM multi-column fuzzy query and soft deletion conditions take effect at the same time, thereby obtaining accurate query results. Remember to use brackets to ensure operator priority and avoid logical errors.
The above is the detailed content of GORM multi-column fuzzy query and deletion mark conflict: How to avoid querying deleted records?. For more information, please follow other related articles on the PHP Chinese website!

Hot AI Tools

Undresser.AI Undress
AI-powered app for creating realistic nude photos

AI Clothes Remover
Online AI tool for removing clothes from photos.

Undress AI Tool
Undress images for free

Clothoff.io
AI clothes remover

AI Hentai Generator
Generate AI Hentai for free.

Hot Article

Hot Tools

Notepad++7.3.1
Easy-to-use and free code editor

SublimeText3 Chinese version
Chinese version, very easy to use

Zend Studio 13.0.1
Powerful PHP integrated development environment

Dreamweaver CS6
Visual web development tools

SublimeText3 Mac version
God-level code editing software (SublimeText3)

Hot Topics



OpenSSL, as an open source library widely used in secure communications, provides encryption algorithms, keys and certificate management functions. However, there are some known security vulnerabilities in its historical version, some of which are extremely harmful. This article will focus on common vulnerabilities and response measures for OpenSSL in Debian systems. DebianOpenSSL known vulnerabilities: OpenSSL has experienced several serious vulnerabilities, such as: Heart Bleeding Vulnerability (CVE-2014-0160): This vulnerability affects OpenSSL 1.0.1 to 1.0.1f and 1.0.2 to 1.0.2 beta versions. An attacker can use this vulnerability to unauthorized read sensitive information on the server, including encryption keys, etc.

The article explains how to use the pprof tool for analyzing Go performance, including enabling profiling, collecting data, and identifying common bottlenecks like CPU and memory issues.Character count: 159

The article discusses writing unit tests in Go, covering best practices, mocking techniques, and tools for efficient test management.

The library used for floating-point number operation in Go language introduces how to ensure the accuracy is...

Queue threading problem in Go crawler Colly explores the problem of using the Colly crawler library in Go language, developers often encounter problems with threads and request queues. �...

Backend learning path: The exploration journey from front-end to back-end As a back-end beginner who transforms from front-end development, you already have the foundation of nodejs,...

The article discusses managing Go module dependencies via go.mod, covering specification, updates, and conflict resolution. It emphasizes best practices like semantic versioning and regular updates.

This article introduces a variety of methods and tools to monitor PostgreSQL databases under the Debian system, helping you to fully grasp database performance monitoring. 1. Use PostgreSQL to build-in monitoring view PostgreSQL itself provides multiple views for monitoring database activities: pg_stat_activity: displays database activities in real time, including connections, queries, transactions and other information. pg_stat_replication: Monitors replication status, especially suitable for stream replication clusters. pg_stat_database: Provides database statistics, such as database size, transaction commit/rollback times and other key indicators. 2. Use log analysis tool pgBadg
