Robotics & Artificial Intelligence
In deterministic computing, the system's output is determined solely by the input and a predefined set of rules or algorithms. This rigid system is highly structured but lacks adaptability to new data or real world complexities.
Mention any two limitations of deterministic computing.
Computing Evolution
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Answer
Two limitations of deterministic computing are:
- Rigidness – Deterministic computing is rigid since it is based on pre-programmed instructions and predefined algorithms. It is incapable of adjusting to new or changing data and learning from it.
- Lack of reasoning capability – Deterministic computing struggles with situations that need reasoning, judgement, and pattern identification.
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