Is there a big difference between navicat and datagrip?
Apr 24, 2024 pm 07:21 PMThe main differences between Navicat and DataGrip are: Supported databases: Navicat supports more than 30, while DataGrip focuses on JetBrains databases. Integration: DataGrip is tightly integrated with JetBrains tools, while Navicat has limited integration. Collaboration features: DataGrip offers code review and collaboration features, while Navicat does not.
Gap between Navicat and DataGrip
Navicat and DataGrip are both popular database managers for Design, develop and manage databases. While they all function similarly, they do have some key differences.
Supported databases
- Navicat: supports more than 30 databases, including MySQL, MariaDB, Oracle, SQL Server, etc.
- DataGrip: Designed for use with JetBrains databases and tools such as IntelliJ IDEA, PyCharm and WebStorm. It supports most popular databases, including MySQL, Postgres, Oracle, and SQL Server.
Integration
- Navicat: Limited integration with other development tools.
- DataGrip: Tightly integrated with the JetBrains ecosystem to work seamlessly with IntelliJ IDEA, PyCharm and other tools.
Collaboration features
- Navicat: Does not support code review or collaboration features.
- DataGrip: Provides code review, version control integration and multi-person editing capabilities.
Price
- Navicat: Subscription and one-time purchase options available. Subscriptions start at $19.95 per month or year. The price for a one-time purchase depends on the number of supported databases.
- DataGrip: Commercial and personal licenses available. Commercial licenses start at $199 per year and personal licenses start at $99 per year.
Other Differences
- User Interface: Navicat has a simple and intuitive interface, while DataGrip has a more modern and comprehensive interface.
- Features: DataGrip provides advanced features such as debugging, database reverse engineering, and UML support for modeling and architecture design.
- Performance: Navicat is generally considered to have better performance, especially when dealing with large databases.
Ultimately, the choice between Navicat and DataGrip depends on your specific needs and preferences.
- If you need to support multiple databases and limited integration, Navicat is a good choice.
- If you need tight integration with JetBrains tools, collaboration capabilities, and advanced features, DataGrip is the better choice.
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