{"count":51965,"next":"https://ports.macports.org/api/v1/ports/?format=json&ordering=-updated_at&page=166","previous":"https://ports.macports.org/api/v1/ports/?format=json&ordering=-updated_at&page=164","results":[{"name":"py-sentry-sdk","portdir":"python/py-sentry-sdk","version":"2.51.0","license":"MIT","platforms":"any","epoch":0,"replaced_by":null,"homepage":"https://github.com/getsentry/sentry-python","description":"Sentry SDK for Python","long_description":"This is the next line of the Python SDK for Sentry, intended to replace the raven package on PyPI.","active":true,"categories":["python"],"maintainers":[{"name":"judaew","github":"judaew","ports_count":655}],"variants":[],"dependencies":[{"type":"build","ports":["clang-18"]},{"type":"lib","ports":["py314-sentry-sdk"]}],"depends_on":[]},{"name":"py314-sentipy","portdir":"python/py-sentipy","version":"2.1.0","license":"MIT","platforms":"{darwin any}","epoch":0,"replaced_by":null,"homepage":"https://docs.sentimentinvestor.com/python/","description":"A python wrapper for the Sentiment Investor API","long_description":"A python wrapper for the Sentiment Investor API. This package can be used to easily access trending stocks and individual ticker data from the sentimentinvestor.com website.","active":true,"categories":["python"],"maintainers":[{"name":"harensdeveloper","github":"harens","ports_count":41}],"variants":[],"dependencies":[{"type":"build","ports":["py314-poetry-core","clang-18","py314-build","py314-installer"]},{"type":"lib","ports":["python314"]},{"type":"run","ports":["py314-requests","py314-websocket-client","py314-beartype"]}],"depends_on":[{"type":"lib","ports":["py-sentipy"]}]},{"name":"py313-sentinels","portdir":"python/py-sentinels","version":"1.1.1","license":"BSD","platforms":"{darwin any}","epoch":0,"replaced_by":null,"homepage":"https://pypi.org/project/sentinels","description":"Various objects to denote special meanings in python","long_description":"Various objects to denote special meanings in python","active":true,"categories":["devel","python"],"maintainers":[],"variants":[],"dependencies":[{"type":"build","ports":["clang-18","py313-build","py313-installer","py313-hatchling","py313-hatch-vcs"]},{"type":"lib","ports":["python313"]}],"depends_on":[{"type":"lib","ports":["py313-mongomock","py-sentinels"]}]},{"name":"py312-sentinels","portdir":"python/py-sentinels","version":"1.1.1","license":"BSD","platforms":"{darwin any}","epoch":0,"replaced_by":null,"homepage":"https://pypi.org/project/sentinels","description":"Various objects to denote special meanings in python","long_description":"Various objects to denote special meanings in python","active":true,"categories":["devel","python"],"maintainers":[],"variants":[],"dependencies":[{"type":"build","ports":["py312-build","py312-installer","py312-hatchling","py312-hatch-vcs","clang-18"]},{"type":"lib","ports":["python312"]}],"depends_on":[{"type":"lib","ports":["py312-mongomock"]}]},{"name":"py311-sentinels","portdir":"python/py-sentinels","version":"1.1.1","license":"BSD","platforms":"{darwin any}","epoch":0,"replaced_by":null,"homepage":"https://pypi.org/project/sentinels","description":"Various objects to denote special meanings in python","long_description":"Various objects to denote special meanings in python","active":true,"categories":["devel","python"],"maintainers":[],"variants":[],"dependencies":[{"type":"build","ports":["py311-build","py311-installer","py311-hatchling","py311-hatch-vcs","clang-18"]},{"type":"lib","ports":["python311"]}],"depends_on":[{"type":"lib","ports":["py311-mongomock"]}]},{"name":"py310-sentinels","portdir":"python/py-sentinels","version":"1.1.1","license":"BSD","platforms":"{darwin any}","epoch":0,"replaced_by":null,"homepage":"https://pypi.org/project/sentinels","description":"Various objects to denote special meanings in python","long_description":"Various objects to denote special meanings in python","active":true,"categories":["devel","python"],"maintainers":[],"variants":[],"dependencies":[{"type":"build","ports":["py310-build","py310-hatchling","py310-hatch-vcs","py310-installer","clang-18"]},{"type":"lib","ports":["python310"]}],"depends_on":[{"type":"lib","ports":["py310-mongomock"]}]},{"name":"py-sentipy","portdir":"python/py-sentipy","version":"2.1.0","license":"MIT","platforms":"any","epoch":0,"replaced_by":null,"homepage":"https://docs.sentimentinvestor.com/python/","description":"A python wrapper for the Sentiment Investor API","long_description":"A python wrapper for the Sentiment Investor API. This package can be used to easily access trending stocks and individual ticker data from the sentimentinvestor.com website.","active":true,"categories":["python"],"maintainers":[{"name":"harensdeveloper","github":"harens","ports_count":41}],"variants":[],"dependencies":[{"type":"build","ports":["clang-18"]},{"type":"lib","ports":["py314-sentipy"]}],"depends_on":[]},{"name":"py-sentinels","portdir":"python/py-sentinels","version":"1.1.1","license":"BSD","platforms":"any","epoch":0,"replaced_by":null,"homepage":"https://pypi.org/project/sentinels","description":"Various objects to denote special meanings in python","long_description":"Various objects to denote special meanings in python","active":true,"categories":["devel","python"],"maintainers":[],"variants":[],"dependencies":[{"type":"build","ports":["clang-18"]},{"type":"lib","ports":["py313-sentinels"]}],"depends_on":[]},{"name":"py314-sentencepiece","portdir":"python/py-sentencepiece","version":"0.2.1","license":"Apache-2","platforms":"darwin","epoch":0,"replaced_by":null,"homepage":"https://github.com/google/sentencepiece","description":"Python wrapper for sentencepiece","long_description":"SentencePiece is an unsupervised text tokenizer and detokenizer mainly for Neural Network-based text generation systems where the vocabulary size is predetermined prior to the neural model training. SentencePiece implements subword units (e.g., byte-pair-encoding (BPE) [Sennrich et al.]) and unigram language model [Kudo.]) with the extension of direct training from raw sentences. SentencePiece allows us to make a purely end-to-end system that does not depend on language-specific pre/postprocessing.","active":true,"categories":["textproc","python"],"maintainers":[],"variants":["universal"],"dependencies":[{"type":"build","ports":["py314-installer","py314-setuptools","py314-wheel","pkgconfig","clang-20","py314-build"]},{"type":"lib","ports":["protobuf3-cpp","sentencepiece","python314"]},{"type":"test","ports":["py314-pytest"]}],"depends_on":[{"type":"lib","ports":["py314-audiocraft","py-sentencepiece"]}]},{"name":"py313-sentencepiece","portdir":"python/py-sentencepiece","version":"0.2.1","license":"Apache-2","platforms":"darwin","epoch":0,"replaced_by":null,"homepage":"https://github.com/google/sentencepiece","description":"Python wrapper for sentencepiece","long_description":"SentencePiece is an unsupervised text tokenizer and detokenizer mainly for Neural Network-based text generation systems where the vocabulary size is predetermined prior to the neural model training. SentencePiece implements subword units (e.g., byte-pair-encoding (BPE) [Sennrich et al.]) and unigram language model [Kudo.]) with the extension of direct training from raw sentences. SentencePiece allows us to make a purely end-to-end system that does not depend on language-specific pre/postprocessing.","active":true,"categories":["textproc","python"],"maintainers":[],"variants":["universal"],"dependencies":[{"type":"build","ports":["py313-setuptools","py313-wheel","clang-20","pkgconfig","py313-build","py313-installer"]},{"type":"lib","ports":["protobuf3-cpp","sentencepiece","python313"]},{"type":"test","ports":["py313-pytest"]}],"depends_on":[{"type":"lib","ports":["py313-audiocraft"]}]},{"name":"py312-sentencepiece","portdir":"python/py-sentencepiece","version":"0.2.1","license":"Apache-2","platforms":"darwin","epoch":0,"replaced_by":null,"homepage":"https://github.com/google/sentencepiece","description":"Python wrapper for sentencepiece","long_description":"SentencePiece is an unsupervised text tokenizer and detokenizer mainly for Neural Network-based text generation systems where the vocabulary size is predetermined prior to the neural model training. SentencePiece implements subword units (e.g., byte-pair-encoding (BPE) [Sennrich et al.]) and unigram language model [Kudo.]) with the extension of direct training from raw sentences. SentencePiece allows us to make a purely end-to-end system that does not depend on language-specific pre/postprocessing.","active":true,"categories":["textproc","python"],"maintainers":[],"variants":["universal"],"dependencies":[{"type":"build","ports":["py312-setuptools","py312-wheel","clang-20","pkgconfig","py312-build","py312-installer"]},{"type":"lib","ports":["protobuf3-cpp","sentencepiece","python312"]},{"type":"test","ports":["py312-pytest"]}],"depends_on":[{"type":"run","ports":["py312-bpemb"]}]},{"name":"py311-sentencepiece","portdir":"python/py-sentencepiece","version":"0.2.1","license":"Apache-2","platforms":"darwin","epoch":0,"replaced_by":null,"homepage":"https://github.com/google/sentencepiece","description":"Python wrapper for sentencepiece","long_description":"SentencePiece is an unsupervised text tokenizer and detokenizer mainly for Neural Network-based text generation systems where the vocabulary size is predetermined prior to the neural model training. SentencePiece implements subword units (e.g., byte-pair-encoding (BPE) [Sennrich et al.]) and unigram language model [Kudo.]) with the extension of direct training from raw sentences. SentencePiece allows us to make a purely end-to-end system that does not depend on language-specific pre/postprocessing.","active":true,"categories":["textproc","python"],"maintainers":[],"variants":["universal"],"dependencies":[{"type":"build","ports":["py311-setuptools","py311-wheel","clang-20","pkgconfig","py311-build","py311-installer"]},{"type":"lib","ports":["protobuf3-cpp","sentencepiece","python311"]},{"type":"test","ports":["py311-pytest"]}],"depends_on":[{"type":"run","ports":["py311-bpemb"]}]},{"name":"py310-sentencepiece","portdir":"python/py-sentencepiece","version":"0.2.1","license":"Apache-2","platforms":"darwin","epoch":0,"replaced_by":null,"homepage":"https://github.com/google/sentencepiece","description":"Python wrapper for sentencepiece","long_description":"SentencePiece is an unsupervised text tokenizer and detokenizer mainly for Neural Network-based text generation systems where the vocabulary size is predetermined prior to the neural model training. SentencePiece implements subword units (e.g., byte-pair-encoding (BPE) [Sennrich et al.]) and unigram language model [Kudo.]) with the extension of direct training from raw sentences. SentencePiece allows us to make a purely end-to-end system that does not depend on language-specific pre/postprocessing.","active":true,"categories":["textproc","python"],"maintainers":[],"variants":["universal"],"dependencies":[{"type":"build","ports":["py310-build","py310-installer","clang-20","pkgconfig","py310-setuptools","py310-wheel"]},{"type":"lib","ports":["protobuf3-cpp","sentencepiece","python310"]},{"type":"test","ports":["py310-pytest"]}],"depends_on":[{"type":"run","ports":["py310-allennlp","py310-bpemb"]}]},{"name":"py314-sentence-transformers","portdir":"python/py-sentence-transformers","version":"5.3.0","license":"Apache-2","platforms":"{darwin any}","epoch":0,"replaced_by":null,"homepage":"https://www.sbert.net","description":"Sentence Embeddings using BERT / RoBERTa / XLM-R","long_description":"This framework provides an easy method to compute dense vector representations for sentences, paragraphs, and images. The models are based on transformer networks like BERT / RoBERTa / XLM-RoBERTa etc. and achieve state-of-the-art performance in various task. Text is embedding in vector space such that similar text is close and can efficiently be found using cosine similarity. We provide an increasing number of state-of-the-art pretrained models for more than 100 languages, fine-tuned for various use-cases. Further, this framework allows an easy fine-tuning of custom embeddings models, to achieve maximal performance on your specific task.","active":true,"categories":["textproc","python"],"maintainers":[],"variants":[],"dependencies":[{"type":"build","ports":["clang-18","py314-build","py314-installer","py314-setuptools","py314-wheel"]},{"type":"lib","ports":["python314"]},{"type":"run","ports":["py314-pytorch","py314-transformers","py314-huggingface_hub","py314-numpy","py314-scipy","py314-tqdm","py314-typing_extensions","py314-scikit-learn"]},{"type":"test","ports":["py314-pytest"]}],"depends_on":[{"type":"lib","ports":["py-sentence-transformers"]}]},{"name":"py313-sentence-transformers","portdir":"python/py-sentence-transformers","version":"5.3.0","license":"Apache-2","platforms":"{darwin any}","epoch":0,"replaced_by":null,"homepage":"https://www.sbert.net","description":"Sentence Embeddings using BERT / RoBERTa / XLM-R","long_description":"This framework provides an easy method to compute dense vector representations for sentences, paragraphs, and images. The models are based on transformer networks like BERT / RoBERTa / XLM-RoBERTa etc. and achieve state-of-the-art performance in various task. Text is embedding in vector space such that similar text is close and can efficiently be found using cosine similarity. We provide an increasing number of state-of-the-art pretrained models for more than 100 languages, fine-tuned for various use-cases. Further, this framework allows an easy fine-tuning of custom embeddings models, to achieve maximal performance on your specific task.","active":true,"categories":["textproc","python"],"maintainers":[],"variants":[],"dependencies":[{"type":"build","ports":["clang-18","py313-build","py313-installer","py313-setuptools","py313-wheel"]},{"type":"lib","ports":["python313"]},{"type":"run","ports":["py313-pytorch","py313-transformers","py313-huggingface_hub","py313-typing_extensions","py313-numpy","py313-tqdm","py313-scipy","py313-scikit-learn"]},{"type":"test","ports":["py313-pytest"]}],"depends_on":[]},{"name":"py312-sentence-transformers","portdir":"python/py-sentence-transformers","version":"5.3.0","license":"Apache-2","platforms":"{darwin any}","epoch":0,"replaced_by":null,"homepage":"https://www.sbert.net","description":"Sentence Embeddings using BERT / RoBERTa / XLM-R","long_description":"This framework provides an easy method to compute dense vector representations for sentences, paragraphs, and images. The models are based on transformer networks like BERT / RoBERTa / XLM-RoBERTa etc. and achieve state-of-the-art performance in various task. Text is embedding in vector space such that similar text is close and can efficiently be found using cosine similarity. We provide an increasing number of state-of-the-art pretrained models for more than 100 languages, fine-tuned for various use-cases. Further, this framework allows an easy fine-tuning of custom embeddings models, to achieve maximal performance on your specific task.","active":true,"categories":["textproc","python"],"maintainers":[],"variants":[],"dependencies":[{"type":"build","ports":["py312-build","py312-installer","py312-setuptools","py312-wheel","clang-18"]},{"type":"lib","ports":["python312"]},{"type":"run","ports":["py312-pytorch","py312-transformers","py312-huggingface_hub","py312-typing_extensions","py312-numpy","py312-tqdm","py312-scipy","py312-scikit-learn"]},{"type":"test","ports":["py312-pytest"]}],"depends_on":[]},{"name":"py311-sentence-transformers","portdir":"python/py-sentence-transformers","version":"5.3.0","license":"Apache-2","platforms":"{darwin any}","epoch":0,"replaced_by":null,"homepage":"https://www.sbert.net","description":"Sentence Embeddings using BERT / RoBERTa / XLM-R","long_description":"This framework provides an easy method to compute dense vector representations for sentences, paragraphs, and images. The models are based on transformer networks like BERT / RoBERTa / XLM-RoBERTa etc. and achieve state-of-the-art performance in various task. Text is embedding in vector space such that similar text is close and can efficiently be found using cosine similarity. We provide an increasing number of state-of-the-art pretrained models for more than 100 languages, fine-tuned for various use-cases. Further, this framework allows an easy fine-tuning of custom embeddings models, to achieve maximal performance on your specific task.","active":true,"categories":["textproc","python"],"maintainers":[],"variants":[],"dependencies":[{"type":"build","ports":["py311-build","py311-installer","py311-setuptools","py311-wheel","clang-18"]},{"type":"lib","ports":["python311"]},{"type":"run","ports":["py311-huggingface_hub","py311-transformers","py311-pytorch","py311-typing_extensions","py311-numpy","py311-scikit-learn","py311-scipy","py311-tqdm"]},{"type":"test","ports":["py311-pytest"]}],"depends_on":[]},{"name":"py310-sentence-transformers","portdir":"python/py-sentence-transformers","version":"5.3.0","license":"Apache-2","platforms":"{darwin any}","epoch":0,"replaced_by":null,"homepage":"https://www.sbert.net","description":"Sentence Embeddings using BERT / RoBERTa / XLM-R","long_description":"This framework provides an easy method to compute dense vector representations for sentences, paragraphs, and images. The models are based on transformer networks like BERT / RoBERTa / XLM-RoBERTa etc. and achieve state-of-the-art performance in various task. Text is embedding in vector space such that similar text is close and can efficiently be found using cosine similarity. We provide an increasing number of state-of-the-art pretrained models for more than 100 languages, fine-tuned for various use-cases. Further, this framework allows an easy fine-tuning of custom embeddings models, to achieve maximal performance on your specific task.","active":true,"categories":["textproc","python"],"maintainers":[],"variants":[],"dependencies":[{"type":"build","ports":["py310-setuptools","py310-wheel","py310-build","py310-installer","clang-18"]},{"type":"lib","ports":["python310"]},{"type":"run","ports":["py310-pytorch","py310-transformers","py310-huggingface_hub","py310-typing_extensions","py310-numpy","py310-scipy","py310-tqdm","py310-scikit-learn"]},{"type":"test","ports":["py310-pytest"]}],"depends_on":[]},{"name":"py-sentencepiece","portdir":"python/py-sentencepiece","version":"0.2.1","license":"Apache-2","platforms":"any","epoch":0,"replaced_by":null,"homepage":"https://github.com/google/sentencepiece","description":"Python wrapper for sentencepiece","long_description":"SentencePiece is an unsupervised text tokenizer and detokenizer mainly for Neural Network-based text generation systems where the vocabulary size is predetermined prior to the neural model training. SentencePiece implements subword units (e.g., byte-pair-encoding (BPE) [Sennrich et al.]) and unigram language model [Kudo.]) with the extension of direct training from raw sentences. SentencePiece allows us to make a purely end-to-end system that does not depend on language-specific pre/postprocessing.","active":true,"categories":["textproc","python"],"maintainers":[],"variants":[],"dependencies":[{"type":"build","ports":["clang-18"]},{"type":"lib","ports":["py314-sentencepiece"]}],"depends_on":[]},{"name":"py-sentence-transformers","portdir":"python/py-sentence-transformers","version":"5.3.0","license":"Apache-2","platforms":"any","epoch":0,"replaced_by":null,"homepage":"https://www.sbert.net","description":"Sentence Embeddings using BERT / RoBERTa / XLM-R","long_description":"This framework provides an easy method to compute dense vector representations for sentences, paragraphs, and images. The models are based on transformer networks like BERT / RoBERTa / XLM-RoBERTa etc. and achieve state-of-the-art performance in various task. Text is embedding in vector space such that similar text is close and can efficiently be found using cosine similarity. We provide an increasing number of state-of-the-art pretrained models for more than 100 languages, fine-tuned for various use-cases. Further, this framework allows an easy fine-tuning of custom embeddings models, to achieve maximal performance on your specific task.","active":true,"categories":["textproc","python"],"maintainers":[],"variants":[],"dependencies":[{"type":"build","ports":["clang-18"]},{"type":"lib","ports":["py314-sentence-transformers"]}],"depends_on":[]},{"name":"py314-send2trash","portdir":"python/py-send2trash","version":"1.8.3","license":"BSD","platforms":"{darwin any}","epoch":0,"replaced_by":null,"homepage":"https://github.com/arsenetar/send2trash","description":"Send file to trash natively under Mac OS X, Windows and Linux.","long_description":"Send file to trash natively under Mac OS X, Windows and Linux.","active":true,"categories":["devel","python"],"maintainers":[{"name":"stromnov","github":"stromnov","ports_count":2896}],"variants":[],"dependencies":[{"type":"build","ports":["clang-18","py314-build","py314-installer","py314-setuptools","py314-wheel"]},{"type":"lib","ports":["python314"]}],"depends_on":[{"type":"lib","ports":["py314-jupyter_server","py-send2trash"]}]},{"name":"py313-send2trash","portdir":"python/py-send2trash","version":"1.8.3","license":"BSD","platforms":"{darwin any}","epoch":0,"replaced_by":null,"homepage":"https://github.com/arsenetar/send2trash","description":"Send file to trash natively under Mac OS X, Windows and Linux.","long_description":"Send file to trash natively under Mac OS X, Windows and Linux.","active":true,"categories":["devel","python"],"maintainers":[{"name":"stromnov","github":"stromnov","ports_count":2896}],"variants":[],"dependencies":[{"type":"build","ports":["clang-18","py313-build","py313-installer","py313-setuptools","py313-wheel"]},{"type":"lib","ports":["python313"]}],"depends_on":[{"type":"lib","ports":["py313-jupyter_server"]}]},{"name":"py312-send2trash","portdir":"python/py-send2trash","version":"1.8.3","license":"BSD","platforms":"{darwin any}","epoch":0,"replaced_by":null,"homepage":"https://github.com/arsenetar/send2trash","description":"Send file to trash natively under Mac OS X, Windows and Linux.","long_description":"Send file to trash natively under Mac OS X, Windows and Linux.","active":true,"categories":["devel","python"],"maintainers":[{"name":"stromnov","github":"stromnov","ports_count":2896}],"variants":[],"dependencies":[{"type":"build","ports":["py312-build","py312-installer","py312-setuptools","py312-wheel","clang-18"]},{"type":"lib","ports":["python312"]}],"depends_on":[{"type":"lib","ports":["py312-jupyter_server","py312-nbclassic"]}]},{"name":"py311-send2trash","portdir":"python/py-send2trash","version":"1.8.3","license":"BSD","platforms":"{darwin any}","epoch":0,"replaced_by":null,"homepage":"https://github.com/arsenetar/send2trash","description":"Send file to trash natively under Mac OS X, Windows and Linux.","long_description":"Send file to trash natively under Mac OS X, Windows and Linux.","active":true,"categories":["devel","python"],"maintainers":[{"name":"stromnov","github":"stromnov","ports_count":2896}],"variants":[],"dependencies":[{"type":"build","ports":["py311-build","py311-installer","py311-setuptools","py311-wheel","clang-18"]},{"type":"lib","ports":["python311"]}],"depends_on":[{"type":"lib","ports":["py311-jupyter_server","py311-nbclassic"]}]},{"name":"py310-send2trash","portdir":"python/py-send2trash","version":"1.8.3","license":"BSD","platforms":"{darwin any}","epoch":0,"replaced_by":null,"homepage":"https://github.com/arsenetar/send2trash","description":"Send file to trash natively under Mac OS X, Windows and Linux.","long_description":"Send file to trash natively under Mac OS X, Windows and Linux.","active":true,"categories":["devel","python"],"maintainers":[{"name":"stromnov","github":"stromnov","ports_count":2896}],"variants":[],"dependencies":[{"type":"build","ports":["py310-setuptools","py310-wheel","py310-build","py310-installer","clang-18"]},{"type":"lib","ports":["python310"]}],"depends_on":[{"type":"lib","ports":["py310-jupyter_server","py310-nbclassic"]}]},{"name":"py314-semver","portdir":"python/py-semver","version":"3.0.4","license":"BSD","platforms":"{darwin any}","epoch":0,"replaced_by":null,"homepage":"https://github.com/k-bx/python-semver","description":"Python helper for Semantic Versioning","long_description":"Python helper for Semantic Versioning","active":true,"categories":["python"],"maintainers":[{"name":"karan.sheth","github":"korusuke","ports_count":64}],"variants":[],"dependencies":[{"type":"build","ports":["py314-setuptools_scm","clang-18","py314-build","py314-installer","py314-setuptools","py314-wheel"]},{"type":"lib","ports":["python314"]},{"type":"test","ports":["py314-pytest"]}],"depends_on":[{"type":"lib","ports":["py314-changelog-chug","py314-pydantic-extra-types","py-semver","py314-upt-rubygems"]}]},{"name":"py313-semver","portdir":"python/py-semver","version":"3.0.4","license":"BSD","platforms":"{darwin any}","epoch":0,"replaced_by":null,"homepage":"https://github.com/k-bx/python-semver","description":"Python helper for Semantic Versioning","long_description":"Python helper for Semantic Versioning","active":true,"categories":["python"],"maintainers":[{"name":"karan.sheth","github":"korusuke","ports_count":64}],"variants":[],"dependencies":[{"type":"build","ports":["py313-setuptools_scm","clang-18","py313-build","py313-installer","py313-setuptools","py313-wheel"]},{"type":"lib","ports":["python313"]},{"type":"test","ports":["py313-pytest"]}],"depends_on":[{"type":"lib","ports":["py313-changelog-chug","py313-pydantic-extra-types","py313-upt-rubygems"]}]},{"name":"py312-semver","portdir":"python/py-semver","version":"3.0.4","license":"BSD","platforms":"{darwin any}","epoch":0,"replaced_by":null,"homepage":"https://github.com/k-bx/python-semver","description":"Python helper for Semantic Versioning","long_description":"Python helper for Semantic Versioning","active":true,"categories":["python"],"maintainers":[{"name":"karan.sheth","github":"korusuke","ports_count":64}],"variants":[],"dependencies":[{"type":"build","ports":["clang-18","py312-build","py312-installer","py312-setuptools","py312-wheel","py312-setuptools_scm"]},{"type":"lib","ports":["python312"]},{"type":"test","ports":["py312-pytest"]}],"depends_on":[{"type":"lib","ports":["py312-changelog-chug","py312-pydantic-extra-types","py312-upt-rubygems"]}]},{"name":"py311-semver","portdir":"python/py-semver","version":"3.0.4","license":"BSD","platforms":"{darwin any}","epoch":0,"replaced_by":null,"homepage":"https://github.com/k-bx/python-semver","description":"Python helper for Semantic Versioning","long_description":"Python helper for Semantic Versioning","active":true,"categories":["python"],"maintainers":[{"name":"karan.sheth","github":"korusuke","ports_count":64}],"variants":[],"dependencies":[{"type":"build","ports":["clang-18","py311-build","py311-installer","py311-setuptools","py311-wheel","py311-setuptools_scm"]},{"type":"lib","ports":["python311"]},{"type":"test","ports":["py311-pytest"]}],"depends_on":[{"type":"lib","ports":["py311-pydantic-extra-types","py311-upt-rubygems"]}]},{"name":"py310-semver","portdir":"python/py-semver","version":"3.0.4","license":"BSD","platforms":"{darwin any}","epoch":0,"replaced_by":null,"homepage":"https://github.com/k-bx/python-semver","description":"Python helper for Semantic Versioning","long_description":"Python helper for Semantic Versioning","active":true,"categories":["python"],"maintainers":[{"name":"karan.sheth","github":"korusuke","ports_count":64}],"variants":[],"dependencies":[{"type":"build","ports":["clang-18","py310-setuptools","py310-setuptools_scm","py310-wheel","py310-build","py310-installer"]},{"type":"lib","ports":["python310"]},{"type":"test","ports":["py310-pytest"]}],"depends_on":[{"type":"lib","ports":["py310-pymc3","py310-pydantic-extra-types","py310-upt-rubygems"]}]},{"name":"py-send2trash","portdir":"python/py-send2trash","version":"1.8.3","license":"BSD","platforms":"any","epoch":0,"replaced_by":null,"homepage":"https://github.com/arsenetar/send2trash","description":"Send file to trash natively under Mac OS X, Windows and Linux.","long_description":"Send file to trash natively under Mac OS X, Windows and Linux.","active":true,"categories":["devel","python"],"maintainers":[{"name":"stromnov","github":"stromnov","ports_count":2896}],"variants":[],"dependencies":[{"type":"build","ports":["clang-18"]},{"type":"lib","ports":["py314-send2trash"]}],"depends_on":[]},{"name":"py-semver","portdir":"python/py-semver","version":"3.0.4","license":"BSD","platforms":"any","epoch":0,"replaced_by":null,"homepage":"https://github.com/k-bx/python-semver","description":"Python helper for Semantic Versioning","long_description":"Python helper for Semantic Versioning","active":true,"categories":["python"],"maintainers":[{"name":"karan.sheth","github":"korusuke","ports_count":64}],"variants":[],"dependencies":[{"type":"build","ports":["clang-18"]},{"type":"lib","ports":["py314-semver"]}],"depends_on":[]},{"name":"py314-semantic_version","portdir":"python/py-semantic_version","version":"2.10.0","license":"Apache-2","platforms":"{darwin any}","epoch":0,"replaced_by":null,"homepage":"https://github.com/rbarrois/python-semanticversion","description":"A library implementing the 'SemVer' scheme.","long_description":"This small python library provides a few tools to handle SemVer in Python. It follows strictly the 2.0.0 version of the SemVer scheme.","active":true,"categories":["python"],"maintainers":[],"variants":[],"dependencies":[{"type":"build","ports":["clang-18","py314-build","py314-installer","py314-setuptools","py314-wheel"]},{"type":"lib","ports":["python314"]}],"depends_on":[{"type":"lib","ports":["platformio","py314-asdf","py314-gradio","py-semantic_version"]},{"type":"run","ports":["py314-setuptools-rust"]}]},{"name":"py313-semantic_version","portdir":"python/py-semantic_version","version":"2.10.0","license":"Apache-2","platforms":"{darwin any}","epoch":0,"replaced_by":null,"homepage":"https://github.com/rbarrois/python-semanticversion","description":"A library implementing the 'SemVer' scheme.","long_description":"This small python library provides a few tools to handle SemVer in Python. It follows strictly the 2.0.0 version of the SemVer scheme.","active":true,"categories":["python"],"maintainers":[],"variants":[],"dependencies":[{"type":"build","ports":["clang-18","py313-build","py313-installer","py313-setuptools","py313-wheel"]},{"type":"lib","ports":["python313"]}],"depends_on":[{"type":"lib","ports":["py313-asdf","py313-gradio"]},{"type":"run","ports":["py313-setuptools-rust"]}]},{"name":"py312-semantic_version","portdir":"python/py-semantic_version","version":"2.10.0","license":"Apache-2","platforms":"{darwin any}","epoch":0,"replaced_by":null,"homepage":"https://github.com/rbarrois/python-semanticversion","description":"A library implementing the 'SemVer' scheme.","long_description":"This small python library provides a few tools to handle SemVer in Python. It follows strictly the 2.0.0 version of the SemVer scheme.","active":true,"categories":["python"],"maintainers":[],"variants":[],"dependencies":[{"type":"build","ports":["py312-build","py312-installer","py312-setuptools","py312-wheel","clang-18"]},{"type":"lib","ports":["python312"]}],"depends_on":[{"type":"lib","ports":["py312-asdf"]},{"type":"run","ports":["py312-setuptools-rust"]}]},{"name":"py311-semantic_version","portdir":"python/py-semantic_version","version":"2.10.0","license":"Apache-2","platforms":"{darwin any}","epoch":0,"replaced_by":null,"homepage":"https://github.com/rbarrois/python-semanticversion","description":"A library implementing the 'SemVer' scheme.","long_description":"This small python library provides a few tools to handle SemVer in Python. It follows strictly the 2.0.0 version of the SemVer scheme.","active":true,"categories":["python"],"maintainers":[],"variants":[],"dependencies":[{"type":"build","ports":["py311-build","py311-installer","py311-setuptools","py311-wheel","clang-18"]},{"type":"lib","ports":["python311"]}],"depends_on":[{"type":"lib","ports":["py311-asdf"]},{"type":"run","ports":["py311-setuptools-rust"]}]},{"name":"py310-semantic_version","portdir":"python/py-semantic_version","version":"2.10.0","license":"Apache-2","platforms":"{darwin any}","epoch":0,"replaced_by":null,"homepage":"https://github.com/rbarrois/python-semanticversion","description":"A library implementing the 'SemVer' scheme.","long_description":"This small python library provides a few tools to handle SemVer in Python. It follows strictly the 2.0.0 version of the SemVer scheme.","active":true,"categories":["python"],"maintainers":[],"variants":[],"dependencies":[{"type":"build","ports":["py310-setuptools","py310-wheel","py310-build","py310-installer","clang-18"]},{"type":"lib","ports":["python310"]}],"depends_on":[{"type":"lib","ports":["py310-asdf"]},{"type":"run","ports":["py310-setuptools-rust"]}]},{"name":"py314-selenium","portdir":"python/py-selenium","version":"4.38.0","license":"Apache-2","platforms":"{darwin any}","epoch":0,"replaced_by":null,"homepage":"https://www.seleniumhq.org/","description":"Python language bindings for Selenium WebDriver","long_description":"The selenium package is used to automate web browser interaction from Python. Several browsers/drivers are supported (Firefox, Chrome, Internet Explorer), as well as the Remote protocol.","active":true,"categories":["python"],"maintainers":[{"name":"dstrubbe","github":"dstrubbe","ports_count":38}],"variants":[],"dependencies":[{"type":"build","ports":["clang-18","py314-build","py314-installer"]},{"type":"lib","ports":["python314"]},{"type":"run","ports":["py314-urllib3","py314-websocket-client"]}],"depends_on":[{"type":"lib","ports":["py314-robotframework-seleniumlibrary","py-selenium"]},{"type":"test","ports":["py314-requests-oauthlib"]}]},{"name":"py313-selenium","portdir":"python/py-selenium","version":"4.38.0","license":"Apache-2","platforms":"{darwin any}","epoch":0,"replaced_by":null,"homepage":"https://www.seleniumhq.org/","description":"Python language bindings for Selenium WebDriver","long_description":"The selenium package is used to automate web browser interaction from Python. Several browsers/drivers are supported (Firefox, Chrome, Internet Explorer), as well as the Remote protocol.","active":true,"categories":["python"],"maintainers":[{"name":"dstrubbe","github":"dstrubbe","ports_count":38}],"variants":[],"dependencies":[{"type":"build","ports":["clang-18","py313-build","py313-installer"]},{"type":"lib","ports":["python313"]},{"type":"run","ports":["py313-urllib3","py313-websocket-client"]}],"depends_on":[{"type":"lib","ports":["py313-robotframework-seleniumlibrary","py313-undetected-chromedriver"]},{"type":"test","ports":["py313-requests-oauthlib"]}]},{"name":"py312-selenium","portdir":"python/py-selenium","version":"4.38.0","license":"Apache-2","platforms":"{darwin any}","epoch":0,"replaced_by":null,"homepage":"https://www.seleniumhq.org/","description":"Python language bindings for Selenium WebDriver","long_description":"The selenium package is used to automate web browser interaction from Python. Several browsers/drivers are supported (Firefox, Chrome, Internet Explorer), as well as the Remote protocol.","active":true,"categories":["python"],"maintainers":[{"name":"dstrubbe","github":"dstrubbe","ports_count":38}],"variants":[],"dependencies":[{"type":"build","ports":["py312-build","py312-installer","clang-18"]},{"type":"lib","ports":["python312"]},{"type":"run","ports":["py312-urllib3","py312-websocket-client"]}],"depends_on":[{"type":"lib","ports":["py312-undetected-chromedriver"]},{"type":"test","ports":["py312-requests-oauthlib"]}]},{"name":"py311-selenium","portdir":"python/py-selenium","version":"4.38.0","license":"Apache-2","platforms":"{darwin any}","epoch":0,"replaced_by":null,"homepage":"https://www.seleniumhq.org/","description":"Python language bindings for Selenium WebDriver","long_description":"The selenium package is used to automate web browser interaction from Python. Several browsers/drivers are supported (Firefox, Chrome, Internet Explorer), as well as the Remote protocol.","active":true,"categories":["python"],"maintainers":[{"name":"dstrubbe","github":"dstrubbe","ports_count":38}],"variants":[],"dependencies":[{"type":"build","ports":["py311-build","py311-installer","clang-18"]},{"type":"lib","ports":["python311"]},{"type":"run","ports":["py311-urllib3","py311-websocket-client"]}],"depends_on":[{"type":"lib","ports":["py311-undetected-chromedriver"]},{"type":"test","ports":["py311-requests-oauthlib"]}]},{"name":"py310-selenium","portdir":"python/py-selenium","version":"4.38.0","license":"Apache-2","platforms":"{darwin any}","epoch":0,"replaced_by":null,"homepage":"https://www.seleniumhq.org/","description":"Python language bindings for Selenium WebDriver","long_description":"The selenium package is used to automate web browser interaction from Python. Several browsers/drivers are supported (Firefox, Chrome, Internet Explorer), as well as the Remote protocol.","active":true,"categories":["python"],"maintainers":[{"name":"dstrubbe","github":"dstrubbe","ports_count":38}],"variants":[],"dependencies":[{"type":"build","ports":["py310-build","py310-installer","clang-18"]},{"type":"lib","ports":["python310"]},{"type":"run","ports":["py310-urllib3","py310-websocket-client"]}],"depends_on":[{"type":"lib","ports":["py310-undetected-chromedriver"]},{"type":"test","ports":["py310-requests-oauthlib"]}]},{"name":"py-semantic_version","portdir":"python/py-semantic_version","version":"2.10.0","license":"Apache-2","platforms":"any","epoch":0,"replaced_by":null,"homepage":"https://github.com/rbarrois/python-semanticversion","description":"A library implementing the 'SemVer' scheme.","long_description":"This small python library provides a few tools to handle SemVer in Python. It follows strictly the 2.0.0 version of the SemVer scheme.","active":true,"categories":["python"],"maintainers":[],"variants":[],"dependencies":[{"type":"build","ports":["clang-18"]},{"type":"lib","ports":["py314-semantic_version"]}],"depends_on":[]},{"name":"py-selenium","portdir":"python/py-selenium","version":"4.38.0","license":"Apache-2","platforms":"any","epoch":0,"replaced_by":null,"homepage":"https://www.seleniumhq.org/","description":"Python language bindings for Selenium WebDriver","long_description":"The selenium package is used to automate web browser interaction from Python. Several browsers/drivers are supported (Firefox, Chrome, Internet Explorer), as well as the Remote protocol.","active":true,"categories":["python"],"maintainers":[{"name":"dstrubbe","github":"dstrubbe","ports_count":38}],"variants":[],"dependencies":[{"type":"build","ports":["clang-18"]},{"type":"lib","ports":["py314-selenium"]}],"depends_on":[]},{"name":"py314-segregation","portdir":"python/py-segregation","version":"2.5.4","license":"BSD","platforms":"{darwin any}","epoch":0,"replaced_by":null,"homepage":"https://pysal.org/segregation/","description":"Segregation Measurement, Inferential Statistics and Decomposition Analysis","long_description":"The PySAL segregation package provides a suite of tools for measuring segregation over time and space.","active":true,"categories":["python","gis"],"maintainers":[],"variants":[],"dependencies":[{"type":"build","ports":["clang-18","py314-setuptools_scm","py314-wheel","py314-setuptools","py314-installer","py314-build"]},{"type":"lib","ports":["python314"]},{"type":"run","ports":["py314-pyproj","py314-geopandas","py314-libpysal","py314-scikit-learn","py314-seaborn","py314-mapclassify","py314-numba","py314-joblib","py314-pandas","py314-matplotlib","py314-tqdm","py314-numpy","py314-deprecation"]}],"depends_on":[{"type":"lib","ports":["py-segregation"]}]},{"name":"py313-segregation","portdir":"python/py-segregation","version":"2.5.4","license":"BSD","platforms":"{darwin any}","epoch":0,"replaced_by":null,"homepage":"https://pysal.org/segregation/","description":"Segregation Measurement, Inferential Statistics and Decomposition Analysis","long_description":"The PySAL segregation package provides a suite of tools for measuring segregation over time and space.","active":true,"categories":["python","gis"],"maintainers":[],"variants":[],"dependencies":[{"type":"build","ports":["clang-18","py313-setuptools_scm","py313-wheel","py313-setuptools","py313-installer","py313-build"]},{"type":"lib","ports":["python313"]},{"type":"run","ports":["py313-pandas","py313-geopandas","py313-scikit-learn","py313-seaborn","py313-libpysal","py313-mapclassify","py313-numba","py313-joblib","py313-deprecation","py313-matplotlib","py313-pyproj","py313-tqdm","py313-numpy"]}],"depends_on":[{"type":"lib","ports":["py313-pysal"]}]},{"name":"py312-segregation","portdir":"python/py-segregation","version":"2.5.4","license":"BSD","platforms":"{darwin any}","epoch":0,"replaced_by":null,"homepage":"https://pysal.org/segregation/","description":"Segregation Measurement, Inferential Statistics and Decomposition Analysis","long_description":"The PySAL segregation package provides a suite of tools for measuring segregation over time and space.","active":true,"categories":["python","gis"],"maintainers":[],"variants":[],"dependencies":[{"type":"build","ports":["py312-build","clang-18","py312-setuptools_scm","py312-wheel","py312-setuptools","py312-installer"]},{"type":"lib","ports":["python312"]},{"type":"run","ports":["py312-seaborn","py312-geopandas","py312-numba","py312-joblib","py312-scikit-learn","py312-libpysal","py312-mapclassify","py312-pyproj","py312-matplotlib","py312-tqdm","py312-pandas","py312-deprecation","py312-numpy"]}],"depends_on":[{"type":"lib","ports":["py312-pysal"]}]},{"name":"py311-segregation","portdir":"python/py-segregation","version":"2.5.4","license":"BSD","platforms":"{darwin any}","epoch":0,"replaced_by":null,"homepage":"https://pysal.org/segregation/","description":"Segregation Measurement, Inferential Statistics and Decomposition Analysis","long_description":"The PySAL segregation package provides a suite of tools for measuring segregation over time and space.","active":true,"categories":["python","gis"],"maintainers":[],"variants":[],"dependencies":[{"type":"build","ports":["py311-build","clang-18","py311-setuptools_scm","py311-wheel","py311-setuptools","py311-installer"]},{"type":"lib","ports":["python311"]},{"type":"run","ports":["py311-scikit-learn","py311-tqdm","py311-mapclassify","py311-geopandas","py311-seaborn","py311-numba","py311-libpysal","py311-joblib","py311-matplotlib","py311-pandas","py311-deprecation","py311-pyproj","py311-numpy"]}],"depends_on":[{"type":"lib","ports":["py311-pysal"]}]},{"name":"py310-segregation","portdir":"python/py-segregation","version":"2.5.4","license":"BSD","platforms":"{darwin any}","epoch":0,"replaced_by":null,"homepage":"https://pysal.org/segregation/","description":"Segregation Measurement, Inferential Statistics and Decomposition Analysis","long_description":"The PySAL segregation package provides a suite of tools for measuring segregation over time and space.","active":true,"categories":["python","gis"],"maintainers":[],"variants":[],"dependencies":[{"type":"build","ports":["py310-setuptools","clang-18","py310-installer","py310-build","py310-wheel","py310-setuptools_scm"]},{"type":"lib","ports":["python310"]},{"type":"run","ports":["py310-scikit-learn","py310-pyproj","py310-seaborn","py310-numba","py310-geopandas","py310-mapclassify","py310-libpysal","py310-joblib","py310-tqdm","py310-matplotlib","py310-pandas","py310-numpy","py310-deprecation"]}],"depends_on":[{"type":"lib","ports":["py310-pysal"]}]},{"name":"py313-segno","portdir":"python/py-segno","version":"1.6.6","license":"BSD","platforms":"{darwin any}","epoch":0,"replaced_by":null,"homepage":"https://segno.readthedocs.io/en/latest/","description":"Python QR Code and Micro QR Code encoder","long_description":"Python QR Code and Micro QR Code encoder. This package implements ISO/IEC 18004:2015(E) 'QR Code bar code symbology specification' and produces QR Codes and Micro QR Codes with nearly no effort. It supports the Structured Append mode which splits a message across several QR codes.","active":true,"categories":["python"],"maintainers":[{"name":"harens","github":"harens","ports_count":166}],"variants":[],"dependencies":[{"type":"build","ports":["clang-18","py313-build","py313-flit_core","py313-installer"]},{"type":"lib","ports":["python313"]}],"depends_on":[{"type":"lib","ports":["py-segno"]}]}]}