Questions
Here are some questions to review what we have learned in the chapter:
- Which one of the following is not true about machine learning?
- Supervised learning needs labeled data to train models.
- Unsupervised learning tries to find outliers in data.
- The agent in reinforced learning interacts with the environment to learn.
- Reinforced learning is superior to others at detecting patterns in data.
- Which one of the following is not a step in the tinyML pipeline?
- Data collection and pre-processing
- Training the model on an IoT device
- Optimizing the model for deployment
- Running inference on an IoT device
- Which technique makes an ML model small enough to fit into the memory of an IoT device?
- Training
- Quantization
- Overfitting
- Validation
- With TFLM, we can:
- Optimize a TensorFlow model...