+{"componentChunkName":"component---src-templates-blog-list-tsx","path":"/blog","result":{"data":{"allMdx":{"edges":[{"node":{"id":"68c18feb-38d8-5a32-9418-c1f386e380ee","frontmatter":{"title":"Using Marquez to Visualize dbt Models","author":"Ross Turk","description":"Each time dbt runs it generates a trove of metadata about datasets and the work it performs with them. In this post, I’d like to show you how to harvest this metadata and put it to good use.","date":"21 September 2021","image":{"publicURL":"/static/c25bcf7fc9107747cdae027757c65286/image.svg","childImageSharp":null}},"fields":{"slug":"/blog/dbt-with-marquez/"}}},{"node":{"id":"ffc17f0e-a37c-56b5-abff-464e17cf2341","frontmatter":{"title":"Introducing OpenLineage 0.1.0","author":"Julien Le Dem","description":"We are pleased to announce the initial release of OpenLineage. This release includes the core specification, data model, clients, and integrations with common data tools.","date":"03 September 2021","image":{"publicURL":"/static/8d3e8ba19568854f4889ad380b2ed531/image.svg","childImageSharp":null}},"fields":{"slug":"/blog/0.1-release/"}}},{"node":{"id":"ddcc5394-389e-5f82-af41-2b89ec3b59b9","frontmatter":{"title":"Expecting Great Quality with OpenLineage Facets","author":"Michael Collado","description":"Good data is paramount to making good decisions- but how can you trust the quality of your data and its dependencies?","date":"12 August 2021","image":{"publicURL":"/static/5619f3fcfa021646e37fdf891782cdcd/image.svg","childImageSharp":null}},"fields":{"slug":"/blog/dataquality_expectations_facet/"}}},{"node":{"id":"5e9d1d63-a9ba-5b48-a7dd-f7199d393393","frontmatter":{"title":"Extending OpenLineage with Facets","author":"Julien Le Dem","description":"Facets are a self-contained definition of one aspect of a job, dataset, or run at the time the event happened. They make the OpenLineage model extensible.","date":"27 July 2021","image":{"publicURL":"/static/a751eb924fa24f628a8fbcba8b6ae3f4/image.svg","childImageSharp":null}},"fields":{"slug":"/blog/extending-with-facets/"}}},{"node":{"id":"57fcbdfc-7fa1-50fb-8e46-309358d1e079","frontmatter":{"title":"OpenLineage joins the LF AI & Data Foundation","author":"Julien Le Dem","description":"Becoming a LF AI & Data project ensures that OpenLineage can never belong to a company, or even a group of developers; it belongs to us all.","date":"22 July 2021","image":{"publicURL":"/static/5c669c7f8dc99f8c82deb7df2456735b/image.svg","childImageSharp":null}},"fields":{"slug":"/blog/joining-lfai/"}}},{"node":{"id":"ba00d92a-0dfe-5143-be88-4e98b5f8058d","frontmatter":{"title":"Exploring Lineage History via the Marquez API","author":"Michael Collado","description":"Taking advantage of recent changes to the Marquez API, this post shows how to diagnose job failures and explore the impact of code changes on downstream dependents.","date":"08 July 2021","image":{"publicURL":"/static/7fa9cf5cb4a7ee6c2ed8a7ecf38db0c5/image.svg","childImageSharp":null}},"fields":{"slug":"/blog/explore-lineage-api/"}}},{"node":{"id":"c8fda3cb-2e8c-575f-847f-aec238d64b53","frontmatter":{"title":"Backfilling Airflow DAGs using Marquez","author":"Willy Lulciuc","description":"In this blog post, we'll discuss how lineage metadata can be used to automatically backfill DAGs with complex upstream and downstream dependencies.","date":"30 June 2021","image":{"publicURL":"/static/807ce55173f1e9826dd4f023e9884fc0/image.svg","childImageSharp":null}},"fields":{"slug":"/blog/backfilling-airflow-dags-using-marquez/"}}},{"node":{"id":"297b5617-122d-5fea-a0c9-76dce1d5c5f4","frontmatter":{"title":"How OpenLineage takes inspiration from OpenTelemetry","author":"Julien Le Dem","description":"The data world and the service world have many similarities but also a few crucial differences.","date":"20 June 2021","image":{"publicURL":"/static/2c2ed255132045784fe157e961f32ba5/image.svg","childImageSharp":null}},"fields":{"slug":"/blog/openlineage-takes-inspiration-from-opentelemetry/"}}}]}},"pageContext":{"limit":10,"skip":0,"numPages":1,"currentPage":1}},"staticQueryHashes":["1139857438","1946588481","2083862410","2213455283","2418326273","3067102388"]}
0 commit comments