Research, Data Analytics, and Business Intelligence Brazil

Modern Data Stack and Analytics Engineering Training Course

Modern data stack and analytics engineering is the discipline of turning raw, fragmented operational data into governed, reusable analytics assets that teams can trust. It involves ELT orchestration, dimensional and semantic modeling, data quality controls, and warehouse-native transformation in tools such as dbt, Apache Airflow, Snowflake, and BigQuery. It enables professionals to standardize metrics, reduce reporting drift, and deliver reliable data products faster, even as AI-assisted analytics, automation, and cloud-first collaboration raise the bar for speed and consistency. In many organizations, the gap is not data volume but data usability, and the cost of that gap shows up in inconsistent KPIs, manual reconciliation, and delayed decisions. This course is designed for analytics engineers, data engineers, BI developers, data platform analysts, and reporting leads who need to build dependable pipelines and publish analytics layers that leadership can act on. Modern data stack and analytics engineering is a practical approach to designing cloud warehouse transformations, model governance, and reusable metric definitions. It gives you a structured way to build dbt models, validate transformations, orchestrate refreshes, and produce a semantic layer, transformation spec, and analytics roadmap that supports better reporting discipline and stronger operational confidence.

Duration
5 Days
Duration
Certificate
Certificate
Included
Delivery
Instructor-Led
Delivery
Level
Intermediate
Level
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Classroom Training

In-person sessions at premier locations

Nairobi Kenya
Mon - Fri
5 Days
USD 1,800
Kigali Rwanda
Mon - Fri
5 Days
USD 2,100
Dubai United Arab Emirates (UAE)
Mon - Fri
5 Days
USD 4,600
Zanzibar Tanzania
Mon - Fri
5 Days
USD 2,900
Customized Content
Team Training
Flexible Dates

In-person training at our premier venues — pick a city and date that works for you.

Location Duration Fee Language
Nairobi, Kenya Mon - Fri (5 Days) USD 1,800 English See dates & reserve →
Kigali, Rwanda Mon - Fri (5 Days) USD 2,100 English See dates & reserve →
Dubai, United Arab Emirates (UAE) Mon - Fri (5 Days) USD 4,600 English See dates & reserve →
Zanzibar, Tanzania Mon - Fri (5 Days) USD 2,900 English See dates & reserve →
Abuja, Nigeria Mon - Fri (5 Days) USD 3,100 English See dates & reserve →
Addis Ababa, Ethiopia Mon - Fri (5 Days) USD 2,700 English See dates & reserve →
Mombasa, Kenya Mon - Fri (5 Days) USD 1,900 English See dates & reserve →
Cape Town, South Africa Mon - Fri (5 Days) USD 4,200 English See dates & reserve →
Johannesburg, South Africa Mon - Fri (5 Days) USD 3,800 English See dates & reserve →
Kampala, Uganda Mon - Fri (5 Days) USD 2,100 English See dates & reserve →
Pretoria, South Africa Mon - Fri (5 Days) USD 3,600 English See dates & reserve →
Lagos, Nigeria Mon - Fri (5 Days) USD 2,500 English See dates & reserve →
Arusha, Tanzania Mon - Fri (5 Days) USD 2,000 English See dates & reserve →
Dar es Salaam, Tanzania Mon - Fri (5 Days) USD 2,094 English See dates & reserve →
Accra, Ghana Mon - Fri (5 Days) USD 3,800 English See dates & reserve →
Bangalore, India Mon - Fri (5 Days) USD 4,600 English See dates & reserve →
Muscat, Oman Mon - Fri (5 Days) USD 4,800 English See dates & reserve →
Naivasha, Kenya Mon - Fri (5 Days) USD 1,900 English See dates & reserve →

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About the Course

Organizations now expect analytics that can be audited, refreshed predictably, and explained to finance, operations, and leadership without spreadsheet rework. That means you need to demonstrate capabilities in SQL transformation design, dbt model development, warehouse schema design, data quality testing, and pipeline orchestration, all within a governed framework that can stand up to changing source systems and rising AI-ready data expectations. A modern data stack and analytics engineering capability is no longer optional when teams depend on one version of the truth for revenue, operations, and performance reporting.

This course turns scattered knowledge into a working system for modern data stack and analytics engineering. You will practice ELT design, star schema modeling, dbt project structure, Airflow DAG logic, Great Expectations checks, warehouse deployment patterns, and metric documentation workflows. You will also be introduced to adjacent concepts such as reverse ETL, semantic layers, and event-driven data patterns so you can evaluate where they fit in your environment. In plain terms, this course teaches you how to design warehouse-first analytics pipelines, build maintainable dbt models, and validate data quality so your reporting layer stays reliable. The hands-on emphasis is on modeling, transformation, testing, and orchestration; the overview-level content introduces streaming, reverse ETL, and containerized deployment without claiming production engineering mastery in five days.

Many teams also operate under budget limits, mixed tool maturity, and competing reporting priorities, which means the right answer is rarely the most complex architecture. This course is built for professionals who need to deliver in real conditions, using practical patterns that fit typical cloud data warehouses, shared analytics teams, and cross-functional reporting demands. If you need modern data stack and analytics engineering skills that can be applied without overbuilding the stack, this course gives you that operating model.


Target Audience

This course is designed for professionals who already work with data and need to move from ad hoc analysis to governed analytics engineering in modern cloud environments.

  • Analytics Engineer responsible for dbt model design and metric consistency
  • Data Engineer building ELT pipelines for cloud warehouse transformations
  • BI Developer maintaining reliable dashboards and semantic definitions
  • Data Platform Analyst managing warehouse tables, tests, and refresh logic
  • Reporting Analyst reconciling KPI definitions across business teams
  • DataOps Engineer automating deployment, testing, and monitoring workflows
  • Analytics Manager overseeing transformation standards and reporting reliability
  • Head of Analytics aligning warehouse outputs with business performance needs
  • Business Intelligence Lead translating models into decision-ready data products
  • Data Governance Specialist checking lineage, quality, and metric control

Course Objectives

This course equips you to plan, build, and measure modern data stack and analytics engineering initiatives that improve reporting reliability, support governance, and strengthen data-driven decision-making.

  • Assess current warehouse readiness using the Medallion Architecture and dbt project structure.
  • Apply ELT transformation patterns to design maintainable SQL models for analytics use cases.
  • Build star schema and dimensional models that support consistent KPI reporting in Snowflake or BigQuery.
  • Create dbt tests, documentation, and modular models to improve transformation quality.
  • Evaluate pipeline reliability using Great Expectations checks and Airflow run status.
  • Navigate data governance requirements with lineage, metric definitions, and semantic layer controls.
  • Implement refresh and deployment workflows using Git-based version control and CI/CD practices.
  • Synthesize transformation results into a KPI dashboard, model catalog, and analytics roadmap.

Requirements & Prerequisites

Prerequisites required: working knowledge of SQL joins, aggregations, and window functions; basic familiarity with Python; and a practical understanding of reporting or warehouse-based analytics. Prior exposure to cloud data warehouses, Git, or dbt is helpful but not mandatory. A laptop is required for hands-on labs, and participants should be prepared to run browser-based tools and follow guided exercises using provided sample datasets.


Local Application and Business Return in Brazil

How participants can apply the training in local operating conditions, and the return their organisation can plan for.

How participants apply this

Participants in Brazil typically use this course to formalize how raw ERP, CRM, marketing, and operational data becomes trusted reporting tables and KPI layers. They build dbt models, add tests, and document metric definitions so different teams stop calculating the same number in different ways. They also learn how to separate ingestion, transformation, and presentation responsibilities, which makes support and change management easier in larger organizations. In day-to-day work, this improves how analysts collaborate with data engineers, finance teams, and BI developers when a metric changes or a dashboard breaks.

Expected ROI

Within 6–12 months, the most visible return is usually less time spent reconciling reports and more time spent analyzing the business. Teams can often release dashboard and metric changes faster because transformation logic is modular and tested instead of embedded in ad hoc scripts. Leaders also gain more confidence in recurring reports used for planning, performance reviews, and operational steering. The wider business benefit is fewer disagreements over the “right” number and fewer delays caused by manual data cleanup.

Training Methodology

This is a practical, outcome-driven course designed to turn modern data stack and analytics engineering aspiration into measurable action and credible reporting.

Methodology includes:

  • Hands-on SQL exercise using warehouse transformation metrics and sample fact tables.
  • Scenario simulation for delayed source feeds, broken dependencies, and failed dbt runs.
  • Diagnostic review using the dbt testing framework and Great Expectations checklist.
  • Stakeholder mapping for analytics owners, data engineers, BI users, and governance reviewers.
  • Case study analysis drawn from retail, financial services, SaaS, and manufacturing data stacks.
  • Group workshop producing a warehouse modeling blueprint under time and budget constraints.
  • Reflection exercise using benchmarked KPI drift, lineage gaps, and refresh latency evidence.

Upcoming Sessions

Next available dates worldwide

No international sessions scheduled

Certification

Recognized credentials that advance your career

Participants who complete the Modern Data Stack and Analytics Engineering Training Program earn a Trainingcred Certificate of Achievement, demonstrating professional competence and alignment with global standards in learning and development.

NITA Accredited

Accredited by the National Industrial Training Authority, ensuring programs meet nationally recognized standards of quality and relevance.

CPD Certified

Recognized by the CPD Certification Service, ensuring every program meets internationally benchmarked standards of professional excellence.

Why this course earns its place on your CV

Accredited training, practitioner trainers, and peers on the same career track — the three things real expertise is built on.

Effective Learning & Skill Development

  • Build expertise with structured, outcome-driven learning.
  • Equip individuals and teams with skills that grow with industry needs.
  • Reinforce learning through real-world scenarios, case studies and practical exercises.

Career Growth & Professional Advancement

  • Apply what you learn with a proven methodology that ensures lasting impact.
  • Develop immediately usable skills that translate directly into workplace success.
  • Gain the expertise needed for career advancement and leadership roles.

Training Optimization & Learning Excellence

  • Tailor training to industry-specific challenges and organizational goals.
  • Use data-driven insights and automation to enhance training effectiveness.
  • Evaluate progress and ensure long-term learning success.

Tools and platforms relevant to this field

Examples Brazil teams may encounter, and that may be featured in training where they support the confirmed course scope.

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These are field-relevant examples, not a promise that every tool will be covered. Exact coverage depends on the confirmed course scope, participant needs, and delivery format.

  • dbt Cloud dbt Labs
    Used to create version-controlled transformation logic, modular models, and tests inside a modern analytics engineering workflow.
  • Apache Airflow Apache Software Foundation
    Used to orchestrate refreshes and dependencies across ELT pipelines and warehouse transformations.
  • Snowflake Snowflake
    Used as a cloud data warehouse for scalable transformation, governed analytics layers, and shared business reporting.
  • BigQuery Google
    Used as a cloud warehouse for SQL-based transformation and analytics at scale.
  • Power BI Microsoft
    Used to publish trusted reporting layers and dashboards built from modeled warehouse data.

Real Results from Real Professionals

Thousands of professionals have transformed their careers through our training programs. Now, it's your turn.

Local market advisory

Course relevance for Brazil

A country-specific view of market pressure, regulatory context, and practical business return behind this training.

  • Market context
  • Regulatory fit
  • Business application

Why this course matters in Brazil

A market-specific advisory on the operating pressures this course helps teams address.

Modern data stack and analytics engineering matters in Brazil because many organizations are trying to turn fragmented operational data into governed, reusable metrics that leadership can trust. The biggest pressure points are reporting inconsistency, manual reconciliation across teams, and the need to move faster with cloud-based analytics while keeping definitions stable. This course is especially relevant for analytics engineering, data engineering, BI, and platform teams that own warehouse transformations, metric definitions, and dashboard reliability. It helps leaders decide whether the organization is ready to standardize its analytics layer, reduce reporting drift, and support faster operational decision-making.
Metrics standardization

Brazilian teams with multiple business units or reporting layers benefit from a shared semantic and modeling approach because it reduces KPI disputes and rework across finance, operations, and commercial reporting.

Warehouse-native transformation

Cloud warehouse transformation patterns are useful where teams already centralize data in platforms like Snowflake or BigQuery and need more controlled, versioned analytics logic instead of spreadsheet-heavy reconciliation.

Governed self-service analytics

The main business value is not more dashboards, but more trustworthy ones: reusable models, tests, and documented definitions let managers self-serve with less dependence on manual analyst intervention.

The timing is strong because Brazilian organizations are continuing to modernize analytics stacks while dealing with higher expectations for data governance, auditability, and faster reporting cycles. Teams that do not improve transformation discipline usually feel the cost first in finance, sales, and operations reporting, where inconsistent definitions quickly affect decisions.

Regulatory context in Brazil

The local regulators, laws, and frameworks shaping this discipline, with the curriculum mapped to what teams need to know.

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Regulators

  • ANPD Relevant because modern analytics stacks process personal and operational data, and data governance must align with Brazilian privacy and data-processing expectations.
  • CMN Relevant for financial-sector analytics environments where reporting, governance, and control expectations are shaped by financial regulation.
  • BCB Relevant for banks and payment institutions that use governed analytics layers for management information, risk, and regulatory reporting.
  • CVM Relevant for capital-markets organizations whose analytics and reporting processes must support controlled, auditable disclosures and internal decision-making.

Frameworks the course aligns with

  • 01 Lei Geral de Proteção de Dados Pessoais · 2018
  • 02 Lei de Acesso à Informação · 2011
  • 03 Lei Complementar nº 105 · 2001

Frequently Asked Questions

Got questions? We've gathered the answers to common queries to help you feel confident and informed.

It is most useful for analytics engineers, data engineers, BI developers, reporting leads, and data platform analysts. It also helps managers who oversee KPI governance or warehouse-based reporting because they need to understand how trusted metrics are built and maintained.

No single platform is required, but the concepts map well to warehouse-first environments such as Snowflake and BigQuery. The practical focus is on transformation design, testing, orchestration, and semantic consistency rather than on one vendor alone.

It reduces the gap between raw data and reliable decision-making by making transformations modular, tested, and reusable. That usually lowers reporting drift, reduces manual spreadsheet work, and improves the consistency of executive dashboards.

Traditional data engineering often focuses on moving data into systems; analytics engineering focuses on shaping that data into governed, analysis-ready models. In practice, the two roles overlap, but analytics engineering puts more emphasis on business logic, metric definitions, and the usability of the final data product.

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