{
  "SPDXID": "SPDXRef-DOCUMENT",
  "name": "python3-numpy-f2py-1.1.24.3-3.oe2403.aarch64.rpm",
  "spdxVersion": "SPDX-2.2",
  "creationInfo": {
    "created": "2026-05-14T14:17:38.370562542Z",
    "creators": [
      "openeuler_creator"
    ]
  },
  "dataLicense": "CC0-1.0",
  "documentNamespace": "https://sbom.openEuler.org/python3-numpy-f2py-1.1.24.3-3.oe2403.aarch64.rpm",
  "packages": [
    {
      "SPDXID": "SPDXRef-rpm-python3-devel-3.11.6",
      "name": "python3-devel",
      "checksums": [
        {
          "algorithm": "SHA256",
          "checksumValue": "84a25cf120158a0279ce0673f68808beff2534a254e425884a481fc6e356da26"
        }
      ],
      "description": "This package contains the header files and configuration needed to develop\npython3 modules.",
      "downloadLocation": "NOASSERTION",
      "externalRefs": [
        {
          "referenceCategory": "PACKAGE_MANAGER",
          "referenceLocator": "pkg:rpm/python3-devel@3.11.6-2.oe2403?arch=aarch64&epoch=0&upstream=python3-3.11.6-2.oe2403.src.rpm",
          "referenceType": "purl"
        }
      ],
      "filesAnalyzed": false,
      "homepage": "https://www.python.org/",
      "sourceInfo": "acquired package info from repodata DB: repodata/6a4762c6f9f76cc1a4c44e432c97d08c2803b6e0e96a0a4bdf1aec71664120f2-primary.sqlite.bz2",
      "summary": "Libraries and header files needed for Python development",
      "supplier": "Organization: http://openeuler.org",
      "versionInfo": "0:3.11.6-2.oe2403"
    },
    {
      "SPDXID": "SPDXRef-rpm-python3-numpy-1.24.3",
      "name": "python3-numpy",
      "checksums": [
        {
          "algorithm": "SHA256",
          "checksumValue": "736a5ee9b509a8d4a2cd75166698ea8b18d3c140e111ab0afdae683393c90271"
        }
      ],
      "description": "NumPy is the fundamental package for scientific computing with Python. It contains among other things:\na powerful N-dimensional array object\nsophisticated (broadcasting) functions\ntools for integrating C/C++ and Fortran code\nuseful linear algebra, Fourier transform, and random number capabilities\nBesides its obvious scientific uses, NumPy can also be used as an efficient multi-dimensional container of generic data. Arbitrary data-types can be defined. This allows NumPy to seamlessly and speedily integrate with a wide variety of databases.",
      "downloadLocation": "NOASSERTION",
      "externalRefs": [
        {
          "referenceCategory": "PACKAGE_MANAGER",
          "referenceLocator": "pkg:rpm/python3-numpy@1.24.3-3.oe2403?arch=aarch64&epoch=1&upstream=numpy-1.24.3-3.oe2403.src.rpm",
          "referenceType": "purl"
        }
      ],
      "filesAnalyzed": false,
      "homepage": "http://www.numpy.org/",
      "sourceInfo": "acquired package info from repodata DB: repodata/6a4762c6f9f76cc1a4c44e432c97d08c2803b6e0e96a0a4bdf1aec71664120f2-primary.sqlite.bz2",
      "summary": "A fast multidimensional array facility for Python",
      "supplier": "Organization: http://openeuler.org",
      "versionInfo": "1:1.24.3-3.oe2403"
    }
  ],
  "relationships": [
    {
      "spdxElementId": "SPDXRef-rpm-python3-numpy-f2py-1.24.3",
      "relationshipType": "DEPENDS_ON",
      "relatedSpdxElement": "SPDXRef-rpm-python3-devel-3.11.6"
    },
    {
      "spdxElementId": "SPDXRef-rpm-python3-numpy-f2py-1.24.3",
      "relationshipType": "DEPENDS_ON",
      "relatedSpdxElement": "SPDXRef-rpm-python3-numpy-1.24.3"
    }
  ]
}
