Apache Kyuubi 1.7.1-rc0 Documentationto build and manage Data Lakehouse with pure SQL for both data processing, e.g. ETL, and online analytics processing(OLAP), e.g. BI. All workloads can be done on one platform, using one copy of data, with text) in your data lake in cloud storage or an on-prem HDFS cluster. Lakehouse formation and analytics Easily build an ACID table storage layer via Hudi, Iceberg, or/and Delta Lake. Logical data warehouse if could. Why do we need this feature? Apache Spark is a unified engine for large-scale data analytics. Using Spark to process data is like driving an all-wheel-drive hefty horsepower supercar. However0 码力 | 401 页 | 5.25 MB | 1 年前3
Apache Kyuubi 1.7.2-rc0 Documentationto build and manage Data Lakehouse with pure SQL for both data processing, e.g. ETL, and online analytics processing(OLAP), e.g. BI. All workloads can be done on one platform, using one copy of data, with text) in your data lake in cloud storage or an on-prem HDFS cluster. Lakehouse formation and analytics Easily build an ACID table storage layer via Hudi, Iceberg, or/and Delta Lake. Logical data warehouse if could. Why do we need this feature? Apache Spark is a unified engine for large-scale data analytics. Using Spark to process data is like driving an all-wheel-drive hefty horsepower supercar. However0 码力 | 405 页 | 5.26 MB | 1 年前3
Apache Kyuubi 1.7.2 Documentationto build and manage Data Lakehouse with pure SQL for both data processing, e.g. ETL, and online analytics processing(OLAP), e.g. BI. All workloads can be done on one platform, using one copy of data, with text) in your data lake in cloud storage or an on-prem HDFS cluster. Lakehouse formation and analytics Easily build an ACID table storage layer via Hudi, Iceberg, or/and Delta Lake. Logical data warehouse if could. Why do we need this feature? Apache Spark is a unified engine for large-scale data analytics. Using Spark to process data is like driving an all-wheel-drive hefty horsepower supercar. However0 码力 | 405 页 | 5.26 MB | 1 年前3
Apache Kyuubi 1.9.0-SNAPSHOT Documentationto build and manage Data Lakehouse with pure SQL for both data processing, e.g. ETL, and online analytics processing(OLAP), e.g. BI. All workloads can be done on one platform, using one copy of data, with text) in your data lake in cloud storage or an on-prem HDFS cluster. Lakehouse formation and analytics Easily build an ACID table storage layer via Hudi, Iceberg, Delta Lake or/and Paimon. Logical if could. Why do we need this feature? Apache Spark is a unified engine for large-scale data analytics. Using Spark to process data is like driving an all-wheel-drive hefty horsepower supercar. However0 码力 | 405 页 | 4.96 MB | 1 年前3
Apache Kyuubi 1.7.3 Documentationto build and manage Data Lakehouse with pure SQL for both data processing, e.g. ETL, and online analytics processing(OLAP), e.g. BI. All workloads can be done on one platform, using one copy of data, with text) in your data lake in cloud storage or an on-prem HDFS cluster. Lakehouse formation and analytics Easily build an ACID table storage layer via Hudi, Iceberg, or/and Delta Lake. Logical data warehouse if could. Why do we need this feature? Apache Spark is a unified engine for large-scale data analytics. Using Spark to process data is like driving an all-wheel-drive hefty horsepower supercar. However0 码力 | 405 页 | 5.26 MB | 1 年前3
Apache Kyuubi 1.8.0-rc0 Documentationto build and manage Data Lakehouse with pure SQL for both data processing, e.g. ETL, and online analytics processing(OLAP), e.g. BI. All workloads can be done on one platform, using one copy of data, with text) in your data lake in cloud storage or an on-prem HDFS cluster. Lakehouse formation and analytics Easily build an ACID table storage layer via Hudi, Iceberg, or/and Delta Lake. Logical data warehouse if could. Why do we need this feature? Apache Spark is a unified engine for large-scale data analytics. Using Spark to process data is like driving an all-wheel-drive hefty horsepower supercar. However0 码力 | 428 页 | 5.28 MB | 1 年前3
Apache Kyuubi 1.7.3-rc0 Documentationto build and manage Data Lakehouse with pure SQL for both data processing, e.g. ETL, and online analytics processing(OLAP), e.g. BI. All workloads can be done on one platform, using one copy of data, with text) in your data lake in cloud storage or an on-prem HDFS cluster. Lakehouse formation and analytics Easily build an ACID table storage layer via Hudi, Iceberg, or/and Delta Lake. Logical data warehouse if could. Why do we need this feature? Apache Spark is a unified engine for large-scale data analytics. Using Spark to process data is like driving an all-wheel-drive hefty horsepower supercar. However0 码力 | 405 页 | 5.26 MB | 1 年前3
Apache Kyuubi 1.8.1 Documentationto build and manage Data Lakehouse with pure SQL for both data processing, e.g. ETL, and online analytics processing(OLAP), e.g. BI. All workloads can be done on one platform, using one copy of data, with text) in your data lake in cloud storage or an on-prem HDFS cluster. Lakehouse formation and analytics Easily build an ACID table storage layer via Hudi, Iceberg, or/and Delta Lake. Logical data warehouse if could. Why do we need this feature? Apache Spark is a unified engine for large-scale data analytics. Using Spark to process data is like driving an all-wheel-drive hefty horsepower supercar. However0 码力 | 405 页 | 5.28 MB | 1 年前3
Apache Kyuubi 1.8.0-rc1 Documentationto build and manage Data Lakehouse with pure SQL for both data processing, e.g. ETL, and online analytics processing(OLAP), e.g. BI. All workloads can be done on one platform, using one copy of data, with text) in your data lake in cloud storage or an on-prem HDFS cluster. Lakehouse formation and analytics Easily build an ACID table storage layer via Hudi, Iceberg, or/and Delta Lake. Logical data warehouse if could. Why do we need this feature? Apache Spark is a unified engine for large-scale data analytics. Using Spark to process data is like driving an all-wheel-drive hefty horsepower supercar. However0 码力 | 429 页 | 5.28 MB | 1 年前3
Apache Kyuubi 1.8.0 Documentationto build and manage Data Lakehouse with pure SQL for both data processing, e.g. ETL, and online analytics processing(OLAP), e.g. BI. All workloads can be done on one platform, using one copy of data, with text) in your data lake in cloud storage or an on-prem HDFS cluster. Lakehouse formation and analytics Easily build an ACID table storage layer via Hudi, Iceberg, or/and Delta Lake. Logical data warehouse if could. Why do we need this feature? Apache Spark is a unified engine for large-scale data analytics. Using Spark to process data is like driving an all-wheel-drive hefty horsepower supercar. However0 码力 | 429 页 | 5.28 MB | 1 年前3
共 370 条
- 1
- 2
- 3
- 4
- 5
- 6
- 37













