\n","children":[{"type":"text","text":""}]},{"type":"p","children":[{"type":"text","text":"You can now represent RKGS data graphically in the RelationalAI console, by using the rich graphics available through Vega and Vega-Lite. Both formats use "},{"type":"a","url":"https://www.json.org/json-en.html","title":null,"children":[{"type":"text","text":"the JSON format"}]},{"type":"text","text":" to describe visualizations such as bar charts, area charts, line charts, circular charts, scatter plots, and geographic maps. You can incorporate any valid Vega or Vega-Lite code directly into a cell. The results display directly in the RelationalAI console."}]},{"type":"mdxJsxFlowElement","name":"ImgFig","children":[{"type":"text","text":""}],"props":{"src":"/blog/representing-data-graphically-with-vega-and-vega-lite/vega-example.png","width":"80%","alt":"vega-example"}},{"type":"p","children":[{"type":"text","text":"You can draw on the detailed examples of "},{"type":"a","url":"https://vega.github.io/vega/examples/","title":null,"children":[{"type":"text","text":"Vega"}]},{"type":"text","text":" and "},{"type":"a","url":"https://vega.github.io/vega-lite/examples/","title":null,"children":[{"type":"text","text":"Vega Lite"}]},{"type":"text","text":" to begin representing data graphically within the RelationalAI console."}]}],"_content_source":{"queryId":"src/content/resources/representing-data-graphically-with-vega-and-vega-lite.mdx","path":["resource","body"]}},"_content_source":{"queryId":"src/content/resources/representing-data-graphically-with-vega-and-vega-lite.mdx","path":["resource"]}}},"errors":null,"query":"\n query resource($relativePath: String!) {\n resource(relativePath: $relativePath) {\n ... on Document {\n _sys {\n filename\n basename\n breadcrumbs\n path\n relativePath\n extension\n }\n id\n }\n ...ResourceParts\n }\n}\n \n fragment ResourceParts on Resource {\n __typename\n title\n description\n date\n image\n categories\n authors {\n __typename\n name\n link\n }\n seo {\n __typename\n keywords\n description\n image\n image_alt\n canonical_url\n author\n published\n modified\n language\n robots\n site_name\n content_type\n }\n body\n}\n ","variables":{"relativePath":"representing-data-graphically-with-vega-and-vega-lite.mdx"}},"src/content/meta/meta.md":{"data":{"meta":{"_sys":{"filename":"meta","basename":"meta.md","breadcrumbs":["meta"],"path":"src/content/meta/meta.md","relativePath":"meta.md","extension":".md"},"id":"src/content/meta/meta.md","__typename":"Meta","banner":{"__typename":"MetaBanner","enabled":true,"content":{"type":"root","children":[{"type":"p","children":[{"type":"text","text":"Check out "},{"type":"a","url":"/resources/highlights-of-relationalai-at-snowflake-data-cloud-summit-2024","title":"SF summit highlights","children":[{"type":"text","text":"highlights"}]},{"type":"text","text":" of RelationalAI at "},{"type":"text","text":"Snowflake's Data Cloud Summit 2024!","bold":true}]}],"_content_source":{"queryId":"src/content/meta/meta.md","path":["meta","banner","content"]}},"_content_source":{"queryId":"src/content/meta/meta.md","path":["meta","banner"]}},"header":{"__typename":"MetaHeader","links":[{"__typename":"MetaHeaderLinks","text":"Product","url":"/product","style":"default","_content_source":{"queryId":"src/content/meta/meta.md","path":["meta","header","links",0]}},{"__typename":"MetaHeaderLinks","text":"Company","url":"/company","style":"default","_content_source":{"queryId":"src/content/meta/meta.md","path":["meta","header","links",1]}},{"__typename":"MetaHeaderLinks","text":"Docs","url":"/docs","style":"default","_content_source":{"queryId":"src/content/meta/meta.md","path":["meta","header","links",2]}},{"__typename":"MetaHeaderLinks","text":"Resources","url":"/resources/all/1","style":"default","_content_source":{"queryId":"src/content/meta/meta.md","path":["meta","header","links",3]}},{"__typename":"MetaHeaderLinks","text":"Get Started","url":"/get-started","style":"cta","_content_source":{"queryId":"src/content/meta/meta.md","path":["meta","header","links",4]}}],"_content_source":{"queryId":"src/content/meta/meta.md","path":["meta","header"]}},"footer":{"__typename":"MetaFooter","sections":[{"__typename":"MetaFooterSections","name":"Product","links":[{"__typename":"MetaFooterSectionsLinks","text":"Overview","url":"/product","_content_source":{"queryId":"src/content/meta/meta.md","path":["meta","footer","sections",0,"links",0]}},{"__typename":"MetaFooterSectionsLinks","text":"Use Cases","url":"/product#for-problems-that-matter","_content_source":{"queryId":"src/content/meta/meta.md","path":["meta","footer","sections",0,"links",1]}},{"__typename":"MetaFooterSectionsLinks","text":"Capabilities","url":"/product#a-new-toolset","_content_source":{"queryId":"src/content/meta/meta.md","path":["meta","footer","sections",0,"links",2]}}],"_content_source":{"queryId":"src/content/meta/meta.md","path":["meta","footer","sections",0]}},{"__typename":"MetaFooterSections","name":"Resources","links":[{"__typename":"MetaFooterSectionsLinks","text":"Documentation","url":"/docs/getting_started","_content_source":{"queryId":"src/content/meta/meta.md","path":["meta","footer","sections",1,"links",0]}},{"__typename":"MetaFooterSectionsLinks","text":"News","url":"/resources/news/1","_content_source":{"queryId":"src/content/meta/meta.md","path":["meta","footer","sections",1,"links",1]}},{"__typename":"MetaFooterSectionsLinks","text":"Research","url":"/resources/research/1","_content_source":{"queryId":"src/content/meta/meta.md","path":["meta","footer","sections",1,"links",2]}},{"__typename":"MetaFooterSectionsLinks","text":"Releases","url":"/resources/releases/1","_content_source":{"queryId":"src/content/meta/meta.md","path":["meta","footer","sections",1,"links",3]}}],"_content_source":{"queryId":"src/content/meta/meta.md","path":["meta","footer","sections",1]}},{"__typename":"MetaFooterSections","name":"About Us","links":[{"__typename":"MetaFooterSectionsLinks","text":"Our Company","url":"/company","_content_source":{"queryId":"src/content/meta/meta.md","path":["meta","footer","sections",2,"links",0]}},{"__typename":"MetaFooterSectionsLinks","text":"Contact Us","url":"/get-started","_content_source":{"queryId":"src/content/meta/meta.md","path":["meta","footer","sections",2,"links",1]}},{"__typename":"MetaFooterSectionsLinks","text":"Careers","url":"/careers","_content_source":{"queryId":"src/content/meta/meta.md","path":["meta","footer","sections",2,"links",2]}},{"__typename":"MetaFooterSectionsLinks","text":"Legal","url":"/legal","_content_source":{"queryId":"src/content/meta/meta.md","path":["meta","footer","sections",2,"links",3]}},{"__typename":"MetaFooterSectionsLinks","text":"GDPR","url":"/gdpr","_content_source":{"queryId":"src/content/meta/meta.md","path":["meta","footer","sections",2,"links",4]}},{"__typename":"MetaFooterSectionsLinks","text":"Security & Trust","url":"https://trust.relational.ai/","_content_source":{"queryId":"src/content/meta/meta.md","path":["meta","footer","sections",2,"links",5]}}],"_content_source":{"queryId":"src/content/meta/meta.md","path":["meta","footer","sections",2]}}],"socials":[{"__typename":"MetaFooterSocials","text":"GitHub","url":"https://github.com/RelationalAI","icon":"https://assets.tina.io/91d76337-e55d-4722-acb5-3106adb895b6/img/logos/github.png","_content_source":{"queryId":"src/content/meta/meta.md","path":["meta","footer","socials",0]}},{"__typename":"MetaFooterSocials","text":"LinkedIn","url":"https://www.linkedin.com/company/relationalai/about","icon":"https://assets.tina.io/91d76337-e55d-4722-acb5-3106adb895b6/img/logos/linkedin.png","_content_source":{"queryId":"src/content/meta/meta.md","path":["meta","footer","socials",1]}},{"__typename":"MetaFooterSocials","text":"Twitter","url":"https://twitter.com/relationalai","icon":"https://assets.tina.io/91d76337-e55d-4722-acb5-3106adb895b6/img/logos/twitter.png","_content_source":{"queryId":"src/content/meta/meta.md","path":["meta","footer","socials",2]}}],"_content_source":{"queryId":"src/content/meta/meta.md","path":["meta","footer"]}},"_content_source":{"queryId":"src/content/meta/meta.md","path":["meta"]}}},"errors":null,"query":"\n query meta($relativePath: String!) {\n meta(relativePath: $relativePath) {\n ... on Document {\n _sys {\n filename\n basename\n breadcrumbs\n path\n relativePath\n extension\n }\n id\n }\n ...MetaParts\n }\n}\n \n fragment MetaParts on Meta {\n __typename\n banner {\n __typename\n enabled\n content\n }\n header {\n __typename\n links {\n __typename\n text\n url\n style\n }\n }\n footer {\n __typename\n sections {\n __typename\n name\n links {\n __typename\n text\n url\n }\n }\n socials {\n __typename\n text\n url\n icon\n }\n }\n}\n ","variables":{"relativePath":"./meta.md"}}};
globalThis.tina_info = tina;
})();
Representing Data Graphically with Vega and Vega-Lite · RelationalAI
Check out highlights of RelationalAI at Snowflake's Data Cloud Summit 2024!
Representing Data Graphically with Vega and Vega-Lite
You can now represent RKGS data graphically in the RelationalAI console, by using the rich graphics available through Vega and Vega-Lite. Both formats use the JSON format to describe visualizations such as bar charts, area charts, line charts, circular charts, scatter plots, and geographic maps. You can incorporate any valid Vega or Vega-Lite code directly into a cell. The results display directly in the RelationalAI console.
You can draw on the detailed examples of Vega and Vega Lite to begin representing data graphically within the RelationalAI console.