Usamos cookies para mejorar su experiencia. De acuerdo con la nueva directiva de privacidad, requerimos concuerde con el uso de cookies. Entérese de más.
Paga en Oxxo, Tiendas de Conveniencia, Transferencia SPEI o Depósito, PayPal, Kueski Pay a crédito y Mercado pago. Compra en línea sólo en 
"file_name": "Natsamrat Marathi Natak 23.pdf", "title": "Natsamrat", "language": "Marathi", "author": "V.V. Shirwadkar (Kusumagraj)", "genre": "Tragedy / Drama", "act_scene": "Act 2, Scene 3", "key_dialogues": [ "नाटक संपले की नट संपतो...", "ही माझी मुलगी मला हाकलून देतेय?" ], "characters_present": ["Natsamrat", "Kaveri", "Bhai", "Nama"], "themes": ["Aging artist", "Family neglect", "Pride and fall"]
features = "page_count": len(pdf.pages), "total_characters": len(text), "contains_natsamrat_dialogue": "नटसम्राट" in text, "contains_act2": "अंक दुसरा" in text or "Act 2" in text, "approx_lines": len(text.split("\n")), "file_name": pdf_path.split("/")[-1] Natsamrat Marathi Natak 23.pdf
If you need to programmatically extract a feature (e.g., page count, text length, presence of certain dialogues): "file_name": "Natsamrat Marathi Natak 23
Since you didn’t specify the technical context (e.g., Python script, ML dataset, search index, or content summary), I’ll provide the : 1. Feature for a Search / Document Retrieval System If you’re building a search index, a good feature for this PDF would be: Shirwadkar, popularly known as Kusumagraj)
import pdfplumber def extract_features(pdf_path): with pdfplumber.open(pdf_path) as pdf: text = "".join([page.extract_text() or "" for page in pdf.pages])
It sounds like you want to create or extract a good feature (likely a data feature, preview, metadata summary, or a descriptive highlight) from the file – which is probably a PDF of the famous Marathi play Natsamrat (by V.V. Shirwadkar, popularly known as Kusumagraj).
return features print(extract_features("Natsamrat Marathi Natak 23.pdf")) 3. Feature for a Machine Learning Dataset (e.g., play classification) If you’re building a dataset of Marathi plays, a good feature row would be: