BellurbisDataAI

Phase 1: Platform Modernization – Data Platform

Establish trusted, scalable, governed data foundation.​

Client Initiatives:

  • Cloud Data Migration → Migrate legacy EDWs/databases to Snowflake, BigQuery, Redshift, Synapse, Oracle Cloud.​
  • Data Lakehouse Adoption → Unify structured + unstructured data (Databricks, Microsoft Fabric, BigLake).
  • Governance & Compliance Setup → Deploy catalog + lineage (Purview, Collibra, Alation).​
  • Self-Service BI → Expand Power BI, Tableau, Looker across business units.

Engagement Model:​

  • Cloud migration accelerators.​
  • Governance frameworks.​
  • Self-service BI enablement.​
  • Training for business analysts.​

Client Value Outcomes:​

  • Elimination of data silos → single source of truth across business units.​
  • Lower infrastructure costs by moving from legacy on-prem to cloud.​
  • Faster reporting cycles (days → hours) with centralised BI dashboards.​
  • Stronger compliance & audit readiness (CDR, GDPR, ESG).​
  • Empowered business teams with self-service analytics.​

Phase 2: AI Experimentation

Move from dashboards to predictive + generative AI pilots.​ ​

Client Initiatives:

  • Data Quality & Trust – Deploy AI-assisted DataOps (duplicate detection, anomaly detection)​
  • Natural Language Analytics​ – Enable Copilots (Power BI Copilot, AWS Q, Google Duet AI, Snowflake Cortex)
  • Targeted AI Pilots (Top 2–3 Use Cases)​ – Customer churn prediction (retail, telco, banking)
  • Cashflow forecasting (finance, SMBs) – AI knowledge assistant (HR, legal, operations)​
  • Embed AI Insights into Workflows​ – Integrate into CRM, ERP, email, Teams/Slack.​

Engagement Model:​

  • Use case discovery workshops.
  • Proof-of-concept builds (2–3 weeks each).​
  • ROI measurement frameworks.
  • Governance + AI ethics guardrails..​

Client Value Outcomes:​

  • Faster decision-making with AI copilots (plain English → instant insights).​
  • Early proof of ROI from targeted AI pilots (e.g., churn reduction, cashflow forecasting).
  • Reduced dependency on IT teams for analytics (democratization of insights).
  • Predictive capabilities replace reactive reporting (anticipate issues before they occur).
  • Integration of insights into workflows (CRM, ERP, Teams/Slack) → better adoption.​

Phase 3: AI at Scale

AI becomes embedded across enterprise functions​.

Client Initiatives:

  • Operationalise AI (MLOps + AI Ops) – Automated pipelines for training, deployment, monitoring.​
  • Cost + performance tracking – Enterprise-Wide AI Use Cases​
  • Personalization engines (retail, finance) – Predictive maintenance (manufacturing, mining).
  • ESG reporting automation (cross-industry) – AI copilots for knowledge workers (legal, marketing, HR).​
  • Data Marketplace / Sharing​ – Internal + external secure data sharing (Snowflake Marketplace, AWS Data Exchange).​

Engagement Model:​

  • Build AI accelerators per industry vertical.​
  • Offer managed AI Ops/FinOps services.​
  • Partner with hyperscalers (AWS, MS, GCP, Snowflake, Oracle).​
  • Deliver outcome-based AI programs.​

Client Value Outcomes:​

  • Measurable revenue uplift via personalised customer engagement.
  • Reduced operational costs through predictive maintenance & AI Ops automation.​
  • Increased agility → faster time-to-market for new products/services.​
  • ESG compliance automated → reduced manual overhead and risk.​
  • Data & AI monetisation via secure marketplaces and ecosystem sharing.​
  • Competitive differentiation as AI is embedded into every business workflow.​
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