Data Engineering team in aiOla will:
Build Data Tools for aiOla:
-
Develop infrastructure and tools to execute data-based processes
-
Buid M.V.P: Move, Validate, Process: a tool to execute customer-oriented data pipeline
-
Support (and development) of data pipelines oriented by customer needs (a.ka. Content Pack)
Build DaLs (Data Access Layers) to support the aiOla model – both real-time and analytics.
Build Data Pipelines and Process:
-
Developing data pipelines oriented by-product needs (e.g. ai_monitoring)
-
Building a data lake compound of product and customer data (single tenant-oriented)
-
Building one centralized data lake (multi-tenant oriented)
Own oiOla data model:
-
Owning and maintaining the aiOla data model
-
Defining the physical aiOla data model and storage architecture
-
Data-related developments (e.g. data migration)
Maintain and govern Data quality:
-
Developing data testing abilities
-
Integrating data quality in all data pipelines
Be Data Evangelists:
-
Leading the examination of new data tools
-
Domain experts
-
Supporting aiOla needs by providing suitable data tools