name: "Loss Functions" number: 5 description: "Essential loss functions for neural network training objectives" learning_objectives: - "Implement MSE, CrossEntropy, and BinaryCrossEntropy loss functions" - "Understand numerical stability in loss computation" - "Match loss functions to problem types (regression vs classification)" - "Build production-ready loss functions with batch processing" prerequisites: - "02_tensor" difficulty: "⭐⭐⭐" time_estimate: "2-3 hours" exports: - "MeanSquaredError" - "CrossEntropyLoss" - "BinaryCrossEntropyLoss" key_concepts: - "Training objectives and optimization" - "Numerical stability in loss computation" - "Regression vs classification loss functions" - "Batch processing for scalable training"