The Value of the Lakehouse: How T-Mobile Articulated the Benefit of a Modern Data Platform

Databricks
27 Jul 202328:08

Summary

TLDRThe T-Mobile team discusses their data strategy, focusing on updating their data platform to gain non-technical leadership support. They articulate their strategy through four pillars: data latency, mobility, performance, and economies of scale. The team migrated from Azure Data Warehouse to a lake house architecture, addressing concerns about time, cost, impact, and security. The migration resulted in reduced latency, increased data mobility, predictable performance, and significant cost savings, setting a foundation for future data strategy simplification.

Takeaways

  • 📝 The presentation discusses the data strategy and lake house journey of T-Mobile's procurement and supply chain division, highlighting the importance of aligning data strategy with business needs.
  • 💵 Ellen Schultz and Robert Thompson lead the Data Solutions and Analytics team within T-Mobile's Finance department, focusing on supporting back-office operations with data solutions.
  • 📄 The team identified four key pain points in their data operations: data latency, data mobility, performance issues, and high cloud spend, which informed their data strategy.
  • 📈 They articulated a data strategy with four pillars: low latency data, high data mobility, predictable performance, and economies of scale, aiming to address the identified pain points.
  • 💲 The shift from Azure Data Warehouse to a lake house architecture was driven by the need to scale out instead of up, improve data mobility, and reduce costs.
  • 📱 The migration to the lake house architecture resulted in significant improvements: a 75% reduction in data refresh times, a 30% increase in data connections, a 60% reduction in query failure rates, and a 50% decrease in Azure spend.
  • 💵 The team managed stakeholder concerns by outlining the benefits of the migration, ensuring minimal user impact, and leveraging Azure Active Directory groups for security.
  • 💳 The success of the lake house architecture has led to its adoption across T-Mobile, with a focus on shared governance tools and standardized ADF templates for data management.
  • 📗 The team learned that real-time data provision is often limited by source systems rather than their lake house capabilities, emphasizing the need for robust data models for governance.
  • 📵 Moving forward, the team is focusing on simplifying the lake house by introducing a data model, unifying the compute experience, and encouraging a global perspective on data usage across different business units.

Q & A

  • What was the main goal of updating T-Mobile's data platform?

    -The main goal was to articulate the value of updating their data platform to senior leadership, particularly non-technical leaders, to gain their buy-in for the change.

  • How did T-Mobile's data team map their data strategy to business units' pain points?

    -They derived their strategy from direct feedback received from the business units, focusing on four key pillars: data latency, data mobility, performance, and economies of scale.

  • What was the role of the data team within T-Mobile's Finance department?

    -The data team, led by Ellen Schultz, was part of the procurement and supply chain group within Finance, supporting a back-office heavy business unit.

  • What were the pain points experienced by the procurement and supply chain group before the lake house implementation?

    -The pain points included latency in data, performance issues with queries, high cloud spend, and the need for more data mobility.

  • How did the data team translate the pain points into a data strategy?

    -They aggregated the feedback into four pillars of data strategy: data latency, data mobility, performance, and economies of scale, which they then used to map out their strategy.

  • What was the significance of the lake house architecture for T-Mobile?

    -The lake house architecture addressed the identified pain points by providing a solution that allowed for workload isolation, data mobility, predictable performance, and scalable economics.

  • What were the metrics used by T-Mobile to measure the success of their data strategy?

    -The metrics included refresh cadence, ETL processing time, data mobility connections, data availability, query failure rate, and infrastructure spend.

  • What was the outcome of migrating to the lake house architecture?

    -T-Mobile saw significant improvements in data refresh cadence, data mobility, performance, and cost savings, with a reduction in Azure spend by $120k a month.

  • How did T-Mobile manage concerns from senior leadership about the migration?

    -They addressed concerns about time, cost, impact, and security by providing clear plans, showing incremental benefits, and using Azure Active Directory groups for security.

  • What are the current focuses for T-Mobile's data team after the migration to the lake house?

    -The current focuses include simplifying the data in the lake house, introducing a data model, unifying the compute experience, and driving towards a shared lake house architecture across the enterprise.

  • What challenges did T-Mobile face in getting users to adopt the new lake house architecture?

    -Old habits and a siloed approach to data management were challenges, with users hesitant to switch and a focus on local needs over global data perspectives.

Outlines

plate

Dieser Bereich ist nur für Premium-Benutzer verfügbar. Bitte führen Sie ein Upgrade durch, um auf diesen Abschnitt zuzugreifen.

Upgrade durchführen

Mindmap

plate

Dieser Bereich ist nur für Premium-Benutzer verfügbar. Bitte führen Sie ein Upgrade durch, um auf diesen Abschnitt zuzugreifen.

Upgrade durchführen

Keywords

plate

Dieser Bereich ist nur für Premium-Benutzer verfügbar. Bitte führen Sie ein Upgrade durch, um auf diesen Abschnitt zuzugreifen.

Upgrade durchführen

Highlights

plate

Dieser Bereich ist nur für Premium-Benutzer verfügbar. Bitte führen Sie ein Upgrade durch, um auf diesen Abschnitt zuzugreifen.

Upgrade durchführen

Transcripts

plate

Dieser Bereich ist nur für Premium-Benutzer verfügbar. Bitte führen Sie ein Upgrade durch, um auf diesen Abschnitt zuzugreifen.

Upgrade durchführen
Rate This

5.0 / 5 (0 votes)

Ähnliche Tags
Data StrategyT-MobileLake HouseData PlatformBusiness Unit5G TargetsETL ProcessingData MobilityCost ContainmentCloud MigrationData Governance
Benötigen Sie eine Zusammenfassung auf Englisch?