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Stephen 52 Yahoo Com Gmail Com Mail Com 2020 21 Txt (2027)

# 6. Year detection (1900-2030) years = [n for n in numbers if 1900 <= n <= 2030] features['years_found'] = years

# 2. Name detection (if first token looks like a name) if tokens and tokens[0].isalpha() and tokens[0][0].isupper(): features['has_name'] = True features['first_token_is_name'] = tokens[0] else: features['has_name'] = False stephen 52 yahoo com gmail com mail com 2020 21 txt

return features features = extract_deep_features("stephen 52 yahoo com gmail com mail com 2020 21 txt") Step 3 – Output the deep features for k, v in features.items(): print(f"{k}: {v}") Output example: Numbers numbers = [int(t) for t in tokens if t

# 3. Numbers numbers = [int(t) for t in tokens if t.isdigit()] features['numbers_found'] = numbers features['num_count'] = len(numbers) if numbers: features['num_sum'] = sum(numbers) features['num_avg'] = sum(numbers)/len(numbers) = n &lt

"stephen 52 yahoo com gmail com mail com 2020 21 txt" A deep feature in machine learning or data processing typically means extracting meaningful, higher-level attributes from raw input — going beyond simple keyword extraction into inferred patterns, relationships, or embeddings.

# 5. Possible email construction (name + domain) if features['has_name'] and found_domains: possible_emails = [f"{features['first_token_is_name']}@{d}.com" for d in found_domains] features['possible_emails'] = possible_emails

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