{"package":"textdistance","ecosystem":"pypi","latest_version":"4.6.3","description":"Compute distance between the two texts.","license":"MIT","homepage":"https://github.com/orsinium/textdistance","repository":"https://github.com/orsinium/textdistance","downloads_weekly":0,"health":{"score":44,"risk":"high","breakdown":{"maintenance":5,"popularity":0,"security":25,"maturity":12,"community":2},"deprecated":false,"max_score":100},"vulnerabilities":{"count":0,"critical":0,"high":0,"medium":0,"low":0,"details":[]},"versions":{"latest":"4.6.3","total_count":28,"recent":["3.0.2","3.0.3","3.1.0","4.0.0","4.1.0","4.1.1","4.1.2","4.1.3","4.1.4","4.1.5","4.2.0","4.2.1","4.2.2","4.3.0","4.4.0","4.5.0","4.6.0","4.6.1","4.6.2","4.6.3"]},"metadata":{"deprecated":false,"deprecated_message":null,"maintainers_count":1,"first_published":null,"last_published":"2024-07-16T09:34:51.082568Z","dependencies_count":74,"dependencies":["rapidfuzz>=2.6.0; extra == \"dameraulevenshtein\"","jellyfish; extra == \"dameraulevenshtein\"","pyxDamerauLevenshtein; extra == \"dameraulevenshtein\"","Levenshtein; extra == \"hamming\"","rapidfuzz>=2.6.0; extra == \"hamming\"","jellyfish; extra == \"hamming\"","distance; extra == \"hamming\"","rapidfuzz>=2.6.0; extra == \"jaro\"","Levenshtein; extra == \"jaro\"","rapidfuzz>=2.6.0; extra == \"jarowinkler\"","jellyfish; extra == \"jarowinkler\"","rapidfuzz>=2.6.0; extra == \"levenshtein\"","Levenshtein; extra == \"levenshtein\"","jellyfish; extra == \"all\"","numpy; extra == \"all\"","Levenshtein; extra == \"all\"","pyxDamerauLevenshtein; extra == \"all\"","rapidfuzz>=2.6.0; extra == \"all\"","distance; extra == \"all\"","pylev; extra == \"all\"","py-stringmatching; extra == \"all\"","tabulate; extra == \"all\"","jellyfish; extra == \"benchmark\"","numpy; extra == \"benchmark\"","Levenshtein; extra == \"benchmark\"","pyxDamerauLevenshtein; extra == \"benchmark\"","rapidfuzz>=2.6.0; extra == \"benchmark\"","distance; extra == \"benchmark\"","pylev; extra == \"benchmark\"","py-stringmatching; extra == \"benchmark\"","tabulate; extra == \"benchmark\"","jellyfish; extra == \"benchmarks\"","numpy; extra == \"benchmarks\"","Levenshtein; extra == \"benchmarks\"","pyxDamerauLevenshtein; extra == \"benchmarks\"","rapidfuzz>=2.6.0; extra == \"benchmarks\"","distance; extra == \"benchmarks\"","pylev; extra == \"benchmarks\"","py-stringmatching; extra == \"benchmarks\"","tabulate; extra == \"benchmarks\"","jellyfish; extra == \"common\"","numpy; extra == \"common\"","Levenshtein; extra == \"common\"","pyxDamerauLevenshtein; extra == \"common\"","rapidfuzz>=2.6.0; extra == \"common\"","jellyfish; extra == \"extra\"","numpy; extra == \"extra\"","Levenshtein; extra == \"extra\"","pyxDamerauLevenshtein; extra == \"extra\"","rapidfuzz>=2.6.0; extra == \"extra\"","jellyfish; extra == \"extras\"","numpy; extra == \"extras\"","Levenshtein; extra == \"extras\"","pyxDamerauLevenshtein; extra == \"extras\"","rapidfuzz>=2.6.0; extra == \"extras\"","twine; extra == \"lint\"","mypy; extra == \"lint\"","isort; extra == \"lint\"","flake8; extra == \"lint\"","types-tabulate; extra == \"lint\"","flake8-blind-except; extra == \"lint\"","flake8-bugbear; extra == \"lint\"","flake8-commas; extra == \"lint\"","flake8-logging-format; extra == \"lint\"","flake8-mutable; extra == \"lint\"","flake8-pep3101; extra == \"lint\"","flake8-quotes; extra == \"lint\"","flake8-string-format; extra == \"lint\"","flake8-tidy-imports; extra == \"lint\"","pep8-naming; extra == \"lint\"","hypothesis; extra == \"test\"","isort; extra == \"test\"","numpy; extra == \"test\"","pytest; extra == \"test\""]},"recommendation":{"action":"safe_to_use","issues":[],"use_version":"4.6.3","version_hint":null,"summary":"textdistance@4.6.3 is safe to use (health: 44/100)"},"requested_version":null,"_cache":"miss","_response_ms":503,"_powered_by":"depscope.dev — free package intelligence for AI agents"}