apache / phoenix-omid
Mirror of Apache Omid Incubator
☆88Updated 2 weeks ago
Alternatives and similar repositories for phoenix-omid:
Users that are interested in phoenix-omid are comparing it to the libraries listed below
- Mirror of Apache Tephra (Incubating)☆32Updated 2 years ago
- Mirror of Apache crail (Incubating)☆150Updated 2 years ago
- ☆63Updated 8 months ago
- ☆84Updated this week
- Port of TPC-H dbgen to Java☆50Updated 6 months ago
- ☆56Updated 4 years ago
- Serializable ACID transactions on streaming data☆24Updated 2 years ago
- Serializable ACID transactions on streaming data☆156Updated 5 years ago
- Discovery Server☆54Updated 11 months ago
- Berkeley DB Java Edition☆55Updated 3 years ago
- Splash, a flexible Spark shuffle manager that supports user-defined storage backends for shuffle data storage and exchange☆127Updated 4 months ago
- Java bindings for pmemkv☆29Updated 2 years ago
- Spark Shuffle Optimization with RDMA+AEP☆30Updated last year
- Star Schema Benchmark dbgen☆124Updated last year
- JDBC driver that converts any INSERT, UPDATE and DELETE statements into append-only INSERTs. Instead of updating rows in-place it inserts…☆80Updated 8 years ago
- Apache datasketches☆95Updated 2 years ago
- Self regulation and auto-tuning for distributed system☆65Updated last year
- Scalable NameNode RPC Proxy for HDFS Federation☆86Updated 9 years ago
- ☆35Updated 10 months ago
- Cache File System optimized for columnar formats and object stores☆182Updated 2 years ago
- Mirror of Apache Twill☆69Updated 5 years ago
- Java binding to Apache DataFusion☆76Updated last week
- ☆47Updated 3 years ago
- The preview version of a spillable state backend for Apache Flink☆39Updated 4 years ago
- Thoughts on things I find interesting.☆17Updated 4 months ago
- The main Project☆20Updated 8 years ago
- Apache Calcite Tutorial☆33Updated 8 years ago
- A playground for experimenting ideas that may apply to Spark SQL/Catalyst☆140Updated 6 years ago
- Java implementation of TPC-C benchmark☆38Updated 8 years ago
- Spark* plug-in for accelerating Spark* SQL performance by using cache and index at SQL data source layer.☆37Updated 2 years ago