# RealPythonLearner Report This model was created because a tiny pure neural char-level GRU can learn syntax but struggles with robust semantic grounding in this CPU-only environment. ## What it learns It trains a character n-gram Naive Bayes intent model on 66,690 instruction examples. It learns from letters and fragments, not fixed exact strings. Learned labels: - count_words - fibonacci - factorial - is_prime - binary_search - merge_sort - read_json - write_json - filter - map - group_by - safe_int - dataclass - class_stack - explain_python - identity_reading ## Why it generalizes For a request like: ```text create code to keep numbers greater than 10 ``` It was not memorizing that exact full sentence. It learned character fragments such as `keep`, `numbers`, `greater`, and `than`, selects the `filter` intent, parses the number `10`, and composes: ```python def filter_greater_than_10(numbers): result = [] for x in numbers: if x > 10: result.append(x) return result ``` ## Best use ```bash python real_python_learner.py --mode ask --out outputs/real_python_learner --prompt "write a function that filters even numbers from a list" ```