https://store-images.s-microsoft.com/image/apps.25.0c430c50-cae3-41f4-b8a2-70afe88f2348.0e636d1a-3d63-4e71-920c-bc8d1023cc32.15ce382e-b991-478a-8477-d307b0c0f3cc

Olive Data Ingestion Framework

Abzooba Inc

Olive Data Ingestion Framework

Abzooba Inc

Olive Data Ingestion Framework (ODIF) - cloud agnostic data ingestion framework

Olive Data Ingestion Framework (ODIF), is a data ingestion tool which can connect to any source and sink to make data ingestion/transfer faster and easier. ODIF built with a cloud agnostic approach with no pre-installation of cluster and can be deployed with minimal resource footprint. It provides a user friendly web interface which helps user in, data source registration, job config, job runs and monitoring. ODIF guiding principles - Cloud Native Design - Platform Agnostic - Dynamic Compute - API Driven - IaaC (Infrastructure as a Code) ODIF Features - Reusable connectors : Once created connectors can be used as source as well as sink. - RDBMS Source : Provide feature to select multiple databases, tables, as well as, feature to select complete dataset or particular dataset with where clause. - Split Job : Job gets split based on dataset size when input source is large, which accelerate ingestion. - File Format : Support csv, txt, parquet and json file format at sink. - Load Type : Feature support incremental load for regular ingestion and full load for historical or one time load. - UI & REST API : Support web interface as well as REST APIs. - Job Scheduling : Job can be schedule and can run on given time interval. - Livy Support : Support Livy on static cluster. - Cluster Type : ODIF use cloud and platform agnostic approach, hence can be run on static as well as on-demand cluster (AWS,Azure,GCP)