بياناتك موجودة. الآن اجعلها قابلة للاستخدام.
Data Without a Platform Is Just Storage
Every organization generates data. The ERP records every transaction. The CRM logs every customer interaction. The mobile application tracks every user session. The production system generates operational metrics every second. But data sitting in disconnected operational systems is not a business asset — it is a liability. It is inaccessible to the people making decisions, inconsistent across systems, and impossible to audit.
A data management platform changes that. It creates a structured layer between raw data and business decisions: pipelines that move data reliably, a warehouse that stores it in an analytically queryable form, a visualization layer that turns queries into insights, and governance mechanisms that ensure the data is trustworthy.
We build data platforms on GCP's native data services — BigQuery as the primary warehouse, Looker and Looker Studio for visualization, Dataflow and Cloud Composer for pipeline orchestration, and Data Catalog and Dataplex for governance.
Our Five Data Management Services
Data Transformation & ETL — Building the pipelines that extract data from source systems, transform it to the target schema, and load it reliably into the data warehouse or data lake. Batch, streaming, and CDC-based approaches depending on the latency requirements.
Data Visualization — Designing and implementing the reporting and dashboard layer: semantic models in Looker, dashboards in Looker Studio, and visualization standards that translate business questions into consistent, maintainable reports.
Data Warehouse Architecture — Designing the BigQuery environment: dataset structure, table partitioning and clustering, schema design for analytical queries, access control architecture, and cost management for warehouse operations.
Data Quality — Implementing the validation, monitoring, and alerting layer that ensures the data moving through the platform is accurate, complete, and consistent — before it reaches the visualization layer and informs business decisions.
Data Catalog — Building the metadata and discoverability layer using GCP Data Catalog and Dataplex: asset registration, tagging, lineage tracking, and the governance model that makes data discoverable and auditable across the organization.
- معمارية BigQuery: هيكل مجموعة البيانات والتقسيم والتجميع والتحكم بالوصول
- تطوير خطوط أنابيب ETL/ELT: دُفعي وبث ومستند إلى CDC
- تطوير نماذج تحويل بيانات dbt
- تطوير Cloud Composer (Airflow) DAG وتنسيق خط الأنابيب
- تطوير النموذج الدلالي (LookML) في Looker
- تصميم وتطبيق لوحات تحكم Looker Studio وLooker
- إطار جودة البيانات: قواعد التحقق والمراقبة والتنبيه
- تسجيل أصول Data Catalog والوسوم وتتبع الأصل
- حوكمة بيانات Dataplex وتكوين منطقة البيانات
- إدارة تكاليف مستودع البيانات: تحسين الاستعلامات وإدارة الفتحات
- معمارية بحيرة البيانات: تنظيم Cloud Storage والتقسيم ودورة الحياة
- استيعاب البيانات في الوقت الفعلي: Pub/Sub وخطوط أنابيب بث Dataflow