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bediashpreet | 9 months ago
- High Performance = Less Bloat: As a software engineer, I value lean, minimal-dependency libraries. A performant framework means the authors have kept the underlying codebase lean and simple. For example: with Agno, the Agent is the base class and is 1 file, whereas with LangChain you'll get 5-7 layers of inheritance. Another example: when you install crewai, it installs the kubernetes library (along with half of pypi). Agno comes with a very small (i think <10 required dependencies).
- While inference is one part of the equation, parallel tool executions, async knowledge search and async memory updates improve the entire system's performance. Because we're focused on performance, you're guaranteed top of the line experience without thinking about it, its a core part of our philosophy.
- Milliseconds Matter: When deploying agents in production, you’re often instantiating one or even multiple agents per request (to limit data and resource access). At moderate scale, like 10,000 requests per minute, even small delays can impact user experience and resource usage.
- Scalability and Cost Efficiency: High-performance frameworks help reduce infrastructure costs, enabling smoother scaling as your user base grows.
I'm not sure why you would NOT want a performant library, sure inference is a part of it (which isn't in our control) but I'd definitely want to use libraries from engineers that value performance.
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