Architecture Path · Platform Skills · Step 3

Serverless Data Architect

1,025 words5 min read

Design modern, serverless data platforms across the major clouds and lakehouse engines. Learn the architecture patterns, the lakehouse, streaming and change-data-capture, and the cost discipline that make a platform scalable and AI-ready, the platform depth an enterprise architect must be able to direct.

8
Modules
40
Chapters
Lakehouse
+ Serverless
Capstone
Reference architecture
The journey

Eight modules, one arc

The eight modules build cumulatively toward a real capstone. Watch the work move, and the value compound, at every stage.

M01-02CloudServerless blocksM03-04LakehouseStorage & tablesM05MovementStreaming & CDCM06AI-readyServing & MLM07-08DesignArchitecture + FinOpsLegacy platformServerless lakehouse

Each module builds the capability the next one depends on, ending in a portfolio-ready capstone.

Outcomes

What you'll be able to do

Choose serverless well

Know when serverless and managed services beat running your own infrastructure.

Design a lakehouse

Architect a lakehouse with open table formats and clear layers.

Move data in real time

Apply streaming and change-data-capture patterns correctly.

Serve AI and analytics

Design the serving and feature layers that AI and analytics consume.

Architect across clouds

Reason about Snowflake, Databricks, BigQuery, and Delta Lake trade-offs.

Govern cost

Apply FinOps so a serverless platform improves economics rather than inflating them.

Curriculum

8 modules, 40 chapters, ending in a capstone

Eight modules of five chapters each, sequenced so the material builds cumulatively to a real, portfolio-ready capstone. Expand any module for its focus and lessons.

01 Serverless and the Modern Data Platform

Understand the serverless model and why it reshaped data platforms.

  1. What serverless means for data, and its trade-offs
  2. Managed services versus self-managed infrastructure
  3. The building blocks: storage, compute, orchestration, catalog
  4. Elasticity, separation of storage and compute, and cost
  5. Assessing a workload for a serverless fit
02 Cloud Platform Foundations

Work fluently with the managed data services of the major clouds.

  1. Object storage as the foundation of the platform
  2. Serverless compute and query engines
  3. Identity, access, and security in the cloud
  4. Orchestration and event-driven data workflows
  5. Comparing the equivalent services across clouds
03 The Lakehouse Architecture

Design a lakehouse that unifies lake flexibility with warehouse reliability.

  1. Why the lakehouse emerged: lake plus warehouse
  2. Open table formats: Delta, Iceberg, and Hudi
  3. Medallion layers: bronze, silver, and gold
  4. ACID, time travel, and schema evolution on the lake
  5. Designing the layers for a real subject area
04 Warehouses and Query Engines

Use serverless warehouses and engines for fast, governed analytics.

  1. Snowflake, BigQuery, and Databricks SQL at a glance
  2. Modeling and performance in a serverless warehouse
  3. Workload isolation and concurrency
  4. Governance, sharing, and access in the warehouse
  5. Choosing an engine for a given analytical need
05 Streaming and Change Data Capture

Bring data in continuously and keep the platform fresh.

  1. Batch versus streaming, and when each fits
  2. Streaming ingestion patterns on serverless platforms
  3. Change-data-capture from operational systems
  4. Exactly-once, ordering, and late data
  5. Designing a near-real-time ingestion path
06 Serving Analytics and AI

Design the layers that analytics, BI, and AI consume.

  1. Serving layers for BI and self-service analytics
  2. Feature stores and data for machine learning
  3. Vector and semantic-search data for AI applications
  4. APIs and reverse-ETL for operational consumption
  5. Designing an AI-ready serving layer
07 Reliability, Security and FinOps

Make the platform dependable, secure, and cost-disciplined.

  1. Reliability and observability for serverless data
  2. Security, encryption, and access across the platform
  3. FinOps: cost visibility and avoiding the cloud blowout
  4. Guardrails, budgets, and cost attribution
  5. Right-sizing a serverless workload for cost and speed
08 Capstone: Design a Serverless Data PlatformCapstone

Produce a defensible reference architecture for a serverless lakehouse platform.

  1. Gather requirements and constraints for a scenario
  2. Design the lakehouse, ingestion, and serving layers
  3. Choose clouds and engines with justified trade-offs
  4. Add reliability, security, and a FinOps plan
  5. Capstone: present a serverless reference architecture as a portfolio artifact
Who it's for

Built for Architects and engineers designing modern serverless data platforms

Data architects

Architects designing serverless, lakehouse-based target platforms.

Platform and data engineers

Engineers building on managed and serverless cloud services.

Cloud and solution architects

Architects extending into the data-platform domain.

Technical leads

Leads who must choose platforms and defend the choice.

Program formats

How you learn

Self-paced

Work through it at your own pace, with lifetime access to every module and the capstone.

Mentor-led cohort

A guided cohort with live sessions, reviews, and a peer group working the same path.

Private corporate

A closed cohort for your team, tailored to your platforms, domains, and priorities.

Portfolio-building

Every module produces an artifact; the capstone assembles them into a portfolio deliverable.

For teams

Bring it to your team

Run Serverless Data Architect as a private, closed cohort tailored to your platforms, domains, and priorities, as part of building the architecture capability your organization needs.

FAQ

Serverless Data Architect - answered

Who is Serverless Data Architect for?

Data architects, platform and data engineers, cloud and solution architects, and technical leads designing modern serverless, lakehouse-based data platforms.

How does this relate to Cloud & Data Platforms?

This program is the architecture-and-design view of serverless platforms and sits within the architecture path; the Cloud & Data Platforms track goes deeper on hands-on, engine-by-engine skills. They are complementary, and cross-linked.

Is it tied to one cloud?

No. It teaches patterns across Snowflake, Databricks, BigQuery, and Delta Lake so you can architect and choose deliberately rather than by default.

What is the capstone?

A defensible serverless reference architecture for a scenario: lakehouse layers, ingestion, serving, cloud and engine choices, reliability, security, and FinOps, as a portfolio artifact.

Do I need deep coding skills?

You should be comfortable with data and the cloud. The emphasis is architecture and design decisions rather than implementation in a single language.

Self-paced or cohort?

Both, plus private corporate cohorts tailored to your cloud and platforms.

Take the next step on the path

Enrol, enquire, or explore the full IC-to-Head of Data Architecture path.