
Service
Data Analytics with PT Cloud Platform Indonesia (PT CPI)
Analytics should be fast, explainable, and trusted. We connect curated datasets to the tools your business teams already use—without shadow spreadsheets that bypass governance.
Turn cloud data into decisions with BigQuery, Looker, Metabase, DuckDB, and governed semantic layers—dashboards, self-serve BI, and executive reporting aligned to FinOps and compliance needs.
PT CPI designs analytics layers that sit on top of engineering-grade pipelines—not raw tables that only specialists can query safely. We implement semantic models in dbt and Looker (or Metabase and Superset where open tooling fits), with role-based access and row-level policies aligned to your IAM model.
For exploratory analysis and ad hoc workloads we use DuckDB and Polars where appropriate, always with clear boundaries between sandbox and production data. Executive dashboards tie operational metrics to cost and risk signals so leadership sees one narrative.
We partner with your FinOps practice to expose unit economics in BI—cost per product line, environment, or tenant—so analytics and finance share the same definitions, not competing spreadsheets.
Who this is for
Heads of analytics, finance controllers, product leaders, and regulated teams that need consistent KPIs across business units on GCP.
What we deliver
- Looker and Metabase dashboards on curated BigQuery datasets
- dbt semantic layers, metrics definitions, and documentation for self-serve BI
- DuckDB and SQL patterns for fast exploratory analysis with governance guardrails
- Executive KPI packs linked to FinOps and operational telemetry
How we engage
- Stakeholder interviews: decisions, metrics, data sources, and reporting cadence.
- Semantic model and dashboard design with access policies and refresh SLAs.
- Pilot dashboards with power users, then rollout with training and support materials.
- Governance rhythm: metric ownership, change control, and quarterly metric reviews.
Related documentation
Open PT Cloud Platform Indonesia documentation →Related services
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