Navigate Change
Senior AZURE Data Engineer/Analyst
Location
Brazil
Posted
8 days ago
Salary
0
Seniority
Senior
Job Description
Senior AZURE Data Engineer/Analyst
CI&T
• Azure Data Engineering: Design and maintain data pipelines and solutions using Azure Data Factory, Azure Synapse Analytics, Azure Databricks, and Azure Data Lake, ensuring end-to-end reliability, scalability, and performance. • Analytics & Visualization: Build dashboards and analytical reports in Power BI and Tableau, translating infrastructure metrics, application performance data, and business KPIs into concrete, actionable recommendations. • Data Modeling & Integration: Develop data modeling, data mining, and integration processes across on-premises and cloud sources, creating reliable datasets to support analytical models and dashboards. • Queries & Large-Scale Processing: Write complex SQL and Kusto queries, as well as scripts and REST API calls for large-scale data collection and processing. • Cloud Cost Management: Operate with cost awareness in managing cloud compute and storage resources, proposing optimizations that balance performance and efficiency. • Technical Reference: Guide application and business teams on data usage and interpretation, proactively promoting best practices in data engineering, modeling, and BI tooling. • Agile Collaboration: Work within Agile/Scrum methodologies using project management tools such as Jira, with the ability to prioritize deliverables and manage tasks autonomously across onsite and offshore teams.
Job Requirements
- Advanced English (C1 or above), reading, writing, and spoken communication with onsite and offshore stakeholders independently
- IT experience, with experience in Business Intelligence, Data Engineering, or Analytics
- Strong command of the Azure platform, specifically Azure Data Factory, Azure Synapse Analytics, Azure Databricks, and Azure Data Lake
- Proven experience building analytical models and dashboards in Power BI and Tableau
- Excellent proficiency in complex SQL and Kusto queries
- Experience with Agile/Scrum methodologies and project management tools such as Jira
- Strong analytical mindset and results-oriented profile, with the ability to correlate complex metrics and communicate business impact to both technical and non-technical audiences
- Nice to Have
- Experience with ETL tools, especially Talend and Azure Data Factory
- Knowledge of data modeling with Native HANA, TDV, or advanced SQL Scripting
- Familiarity with Microsoft Fabric
- BI or Azure cloud certifications, especially Azure PL-300
- Domain knowledge in Logistics and SAP
Benefits
- Health and dental insurance
- Meal and food allowance
- Childcare assistance
- Extended paternity leave
- Partnership with gyms and health and wellness professionals via Wellhub (Gympass) TotalPass;
- Profit Sharing and Results Participation (PLR);
- Life insurance
- Continuous learning platform (CI&T University);
- Discount club
- Free online platform dedicated to physical, mental, and overall well-being
- Pregnancy and responsible parenting course
- Partnerships with online learning platforms
- Language learning platform
- And many more!
Related Guides
Related Categories
Related Job Pages
More Analytics Engineer Jobs
Data and Analytics Specialist, I
Grupo BoticárioCriamos oportunidades para a beleza transformar a vida das pessoas, e assim transformar o mundo ao nosso redor.
• Lead the migration and structuring of data from the Credit, Collections and Fraud Prevention areas to Google Cloud Platform (GCP) • Build refined tables and automate processes using the various tools available in GCP • Oversee system integration projects focused on process automation and data structuring • Generate new insights from data analysis and communicate findings clearly to business stakeholders • Monitor the performance of Collections & Fraud (C&F) ML models through automated data processes • Create innovative processes using GenAI and Predictive AI within the Directorate
• Design, build, and own end-to-end data solutions for Core products. • Establish and scale analytics foundations by implementing data pipelines. • Oversee the design and development of interactive analytical experiences. • Mentor and support the growth of junior team members through coaching.
Senior Analytics Engineer – Marketing
PaddleWe’re the only complete payments infrastructure provider for SaaS companies.
• drive significant business impact by shaping our data infrastructure • developing robust data models • promoting best practices in analytics engineering • collaborate closely with the Marketing team • ensure that funnels are being tracked and surfaced in our data models • evaluate Marketing campaigns using accurate data • create trusted, self-serve datasets • proactively identify and resolve data quality issues • add comprehensive metadata to datasets • partner with Marketing stakeholders to translate business questions into robust data products • enable Marketing teams to confidently use Omni and core GTM datasets • activate data from Snowflake into operational tools
Senior Engineer, Platform Analytics
PluralsightWe’re the technology workforce development company that helps individuals and organizations transform with tech skills.
• Build and operate the data pipelines that feed Platform Analytics — event ingestion and entity/reference ingestion into Snowflake — to a high standard of reliability and quality. • Build and operate the traditional data-engineering ELT to create a reliable source of truth in the data warehouse. • Contribute to the data models, curating and modeling source-system data into trusted, conformed datasets and applying dimensional modeling and engineering best practices. • Support production performance, reliability, and cost — performance tuning, monitoring and alerting, and resource management. • Help evolve the platform toward its target-state architecture, implementing the design and providing architectural and scale recommendations. • Lead the development lifecycle for your work — implementation, testing, and deployment — collaborating with the team to deliver and maintain the platform. • Help mentor junior engineers and contribute to team standards for code quality and ways of working. • Use AI coding tools productively in daily engineering work — accelerating development, testing, and debugging.




