Great perspective. Many people think building an AI agent is just about connecting an LLM to a few tools, but production systems are much more complex. Reliability, context management, error handling, security, latency, and cost optimization often become bigger challenges than the AI model itself.
I've noticed that many agentic AI projects perform well in demos but struggle in real-world environments because they lack proper architecture, monitoring, and human oversight. As AI adoption grows, understanding software engineering principles becomes just as important as understanding AI models.
The future belongs to developers who can combine AI capabilities with strong system design and problem-solving skills.
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