Show HN: ModelRunner – open source, speech-enabled data management platform
📰 Hacker News · Etienne68
Learn about ModelRunner, an open-source speech-enabled data management platform that automates boring project parts, and how to use it to streamline your workflow
Action Steps
- Explore the ModelRunner GitHub repository to learn more about its features and capabilities
- Run the ModelRunner platform to test its speech-enabled data management functionality
- Configure ModelRunner to interpret models at runtime and understand natural language queries
- Use ModelRunner to automate the creation of master data management screens for your project
- Integrate ModelRunner with your existing workflow to streamline your development process
Who Needs to Know This
Developers and data scientists can benefit from using ModelRunner to quickly create master data management screens and automate repetitive tasks, freeing up time for more interesting and complex projects
Key Insight
💡 ModelRunner can help developers and data scientists automate repetitive tasks and focus on more interesting and complex projects
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🚀 Introducing ModelRunner, an open-source speech-enabled data management platform that automates boring project parts! 🤖💻
Key Takeaways
Learn about ModelRunner, an open-source speech-enabled data management platform that automates boring project parts, and how to use it to streamline your workflow
Full Article
Warning: this whole post is a blatant plug for my Open Source project https://github.com/etiennesillon/ModelRunner There is lot of discussion around no code platforms and why developers don’t like them. My view is that they can be very useful to quickly get through the boring parts of a project, like creating master data management screens for example. So I’ve built my own version which interprets models at run time and, it turns out, understands natural language queries too! Hi, my name is Etienne, I love coding and I’ve been doing it for a few decades now so I’d rather focus on code that keeps me interested. Unfortunately, I find that there is always a lot to code before I get to the interesting stuff. So, like every other half-decent programmer, I’ve always tried to automate as much as possible and build reusable libraries by adding levels of indirection and parameters. I’ve been doing this for so long now that my code has become ‘hyper’ parameterised, so much so
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