{
    "componentChunkName": "component---src-templates-categories-template-js",
    "path": "/category/net/",
    "result": {"data":{"allMdx":{"totalCount":2,"edges":[{"node":{"excerpt":".NET 8 Console App for tasting wine using ML.NET with C# Explore Artificial Intelligence and Machine Learning This is a console application using…","fields":{"slug":"/posts/2023-05-09-ml-dot-net-tasting-wine/"},"frontmatter":{"title":".NET 8 Machine Learning used for tasting wine","date":"16-March-2026"},"body":"var _excluded = [\"components\"];\nfunction _extends() { return _extends = Object.assign ? Object.assign.bind() : function (n) { for (var e = 1; e < arguments.length; e++) { var t = arguments[e]; for (var r in t) ({}).hasOwnProperty.call(t, r) && (n[r] = t[r]); } return n; }, _extends.apply(null, arguments); }\nfunction _objectWithoutProperties(e, t) { if (null == e) return {}; var o, r, i = _objectWithoutPropertiesLoose(e, t); if (Object.getOwnPropertySymbols) { var s = Object.getOwnPropertySymbols(e); for (r = 0; r < s.length; r++) o = s[r], t.includes(o) || {}.propertyIsEnumerable.call(e, o) && (i[o] = e[o]); } return i; }\nfunction _objectWithoutPropertiesLoose(r, e) { if (null == r) return {}; var t = {}; for (var n in r) if ({}.hasOwnProperty.call(r, n)) { if (e.includes(n)) continue; t[n] = r[n]; } return t; }\n/* @jsxRuntime classic */\n/* @jsx mdx */\n\nvar _frontmatter = {\n  \"title\": \".NET 8 Machine Learning used for tasting wine\",\n  \"date\": \"2026-03-16T00:00:00.000Z\",\n  \"published\": true,\n  \"categories\": [\".NET\", \"ML.NET\", \"C#\", \"AI\", \"Machine Learning\"],\n  \"tags\": [\"machine-learning\", \"ml-dot-net\", \"c#\", \"ai\", \"machine-learning\"]\n};\nvar layoutProps = {\n  _frontmatter: _frontmatter\n};\nvar MDXLayout = \"wrapper\";\nreturn function MDXContent(_ref) {\n  var components = _ref.components,\n    props = _objectWithoutProperties(_ref, _excluded);\n  return mdx(MDXLayout, _extends({}, layoutProps, props, {\n    components: components,\n    mdxType: \"MDXLayout\"\n  }), mdx(\"p\", null, \".NET 8 Console App for tasting wine using ML.NET with C#\"), mdx(\"p\", null, \"Explore Artificial Intelligence and Machine Learning\"), mdx(\"p\", null, \"This is a console application using Microsoft\\u2019s Machine Learning framework ML.NET for tasting wine\"), mdx(\"p\", null, \"FastTree regression used to train the Model\"), mdx(\"a\", {\n    href: \"https://github.com/persteenolsen/dotnet-8-wine-ml\",\n    target: \"_blank\"\n  }, \"The code at GitHub\"));\n}\n;\nMDXContent.isMDXComponent = true;"}},{"node":{"excerpt":".NET 8 Console App to predict the global temperature using ML.NET with C# Explore Artificial Intelligence and Machine Learning This is a console…","fields":{"slug":"/posts/2023-05-10-ml-dot-net-predict-temperaturer/"},"frontmatter":{"title":".NET 8 Machine Learning to predict global temperature","date":"11-January-2025"},"body":"var _excluded = [\"components\"];\nfunction _extends() { return _extends = Object.assign ? Object.assign.bind() : function (n) { for (var e = 1; e < arguments.length; e++) { var t = arguments[e]; for (var r in t) ({}).hasOwnProperty.call(t, r) && (n[r] = t[r]); } return n; }, _extends.apply(null, arguments); }\nfunction _objectWithoutProperties(e, t) { if (null == e) return {}; var o, r, i = _objectWithoutPropertiesLoose(e, t); if (Object.getOwnPropertySymbols) { var s = Object.getOwnPropertySymbols(e); for (r = 0; r < s.length; r++) o = s[r], t.includes(o) || {}.propertyIsEnumerable.call(e, o) && (i[o] = e[o]); } return i; }\nfunction _objectWithoutPropertiesLoose(r, e) { if (null == r) return {}; var t = {}; for (var n in r) if ({}.hasOwnProperty.call(r, n)) { if (e.includes(n)) continue; t[n] = r[n]; } return t; }\n/* @jsxRuntime classic */\n/* @jsx mdx */\n\nvar _frontmatter = {\n  \"title\": \".NET 8 Machine Learning to predict global temperature\",\n  \"date\": \"2025-01-11T00:00:00.000Z\",\n  \"published\": true,\n  \"categories\": [\".NET\", \"ML.NET\", \"C#\", \"AI\", \"Machine Learning\"],\n  \"tags\": [\"machine-learning\", \"ml-dot-net\", \"c#\", \"ai\", \"machine-learning\"]\n};\nvar layoutProps = {\n  _frontmatter: _frontmatter\n};\nvar MDXLayout = \"wrapper\";\nreturn function MDXContent(_ref) {\n  var components = _ref.components,\n    props = _objectWithoutProperties(_ref, _excluded);\n  return mdx(MDXLayout, _extends({}, layoutProps, props, {\n    components: components,\n    mdxType: \"MDXLayout\"\n  }), mdx(\"p\", null, \".NET 8 Console App to predict the global temperature using ML.NET with C#\"), mdx(\"p\", null, \"Explore Artificial Intelligence and Machine Learning\"), mdx(\"p\", null, \"This is a console application using Microsoft\\u2019s Machine Learning framework ML.NET to predict the global temperatures\"), mdx(\"p\", null, \"Singular Spectrum Analysis (SSA) model for univariate time-series forecasting using\\nthe method \\\"ForecastBySsa\\\" of the class \\\"TimeSeriesCatalog\\\" for training the Model\"), mdx(\"a\", {\n    href: \"https://github.com/persteenolsen/dotnet-8-global-temperature-ml\",\n    target: \"_blank\"\n  }, \"The code at GitHub\"));\n}\n;\nMDXContent.isMDXComponent = true;"}}]}},"pageContext":{"category":".NET"}},
    "staticQueryHashes": ["4278130389"]}