Trojan Technologies, a Veralto company, plays a vital role in making the various stages of the water treatment process more effective and efficient. Our products and services have applications across municipal wastewater, drinking water, environmental contaminant treatment, and residential water treatment, along with ultra-purification of water used in food and beverage manufacturing, pharmaceutical processing, and semiconductor applications. Trojan Technologies is proud to be part of the Water Quality segment of Veralto (NYSE: VLTO), a $5B global leader dedicated to ensuring access to clean water, safe food and medicine, and trusted essential goods. When you join Veralto’s vibrant global network of 17,000 associates, you join a unique culture and work environment where purpose meets possibility: where the work you do has an everyday impact on the resources and essentials we all rely on, and where you’ll have valuable opportunities to deepen your skillset, pursue your ambitions, and grow your career.
Data Analytics Specialist
Location
Canada
Posted
7 days ago
Salary
C$72K - C$92K / year
Seniority
Mid Level
Job Description
Data Analytics Specialist
Trojan Technologies
Role Description The Data Analytics Specialist is responsible for collecting, analyzing, and interpreting data that drives informed decisions for our digital products. In this role, you'll: - Build and maintain data visualization tools. - Contribute to data governance practices. - Help translate complex datasets into clear, decision-ready insights. - Work closely with data engineers, software developers, and cross-functional leaders. - Deliver consistent, trusted reporting on digital product KPIs. - Contribute to a well-governed data environment. This position is part of the Data Engineering & Analytics team located in Canada and will be remote (Hours will be EST Time zone). Ability to travel to London, Ontario, Canada a few times per year for onsite team meetings/events. A typical day will look like: - Analyze structured and unstructured data including customer interactions, UV system operations, and service opportunities. - Develop and maintain dashboards, visualizations, and reports using tools such as Power BI. - Collaborate with data engineers, software developers, and technical team members. - Coordinate cross-functional data insight initiatives. - Design and maintain data libraries, documentation, and metadata structures. - Ensure data integrity, version control, and access permissions. - Support team members and stakeholders in accessing data efficiently. - Identify opportunities to streamline data workflows and improve data accessibility. Qualifications - Bachelor's degree in Data Science, Computer Science, Information Science, Analytics, or a related field, or equivalent practical experience. - Experience in data analysis and reporting using SQL, statistics, and data visualization tools such as Power BI and Snowflake or equivalent. - Demonstrated experience developing dashboards, data documentation, AI agents, and SQL queries. - Experience working with structured and unstructured data, including time-series data cleansing, processing, and validation. - Experience managing data in platforms such as SharePoint, Confluence, or equivalent database environments. Requirements - Must be available for a final in-person interview and, if selected, a 30-day immersion program onsite. Benefits - Flexible working hours. - Professional onboarding and training options. - Powerful team looking forward to working with you. - Career coaching and development opportunities. - Health benefits. - Paid time off. - Health insurance. - RSP to eligible employees.
Related Guides
Related Categories
Related Job Pages
More Analytics Engineer Jobs
Product Analytics Engineer
Twin HealthTwin Health invented the Whole Body Digital Twin™ to help reverse and prevent chronic metabolic diseases.
• Partner with Product Managers, Care Team leads, and Area owners to translate business goals into measurable hypotheses and actionable insights that drive product enhancements and member outcomes • Design and evaluate experiments (A/B tests and beyond) to validate product hypotheses and guide iteration • Partner with Product and ML teams to measure the impact of new features, workflows, and personalization systems • Build and maintain robust dbt models, dashboards, and self-serve analytics tools using Snowflake, dbt, and BI platforms • Define, monitor, and communicate KPIs across product areas — member engagement, CGM utilization, Care Team effectiveness, and more • Collaborate with Data Engineers to ensure the analytical layer is built on a reliable, well-structured data foundation • Build data pipelines for analytics and insight generation using Python, dbt, and Snowflake • Develop and implement data validation and monitoring strategies to ensure ongoing data integrity • Communicate findings clearly and effectively to both technical and non-technical stakeholders • Create and maintain technical documentation including data models, metric definitions, and data dictionaries • Contribute to the continuous improvement of data analytics processes and best practices • Other duties as assigned
• Develop and maintain data pipelines for ingestion, transformation, and provisioning of information; • Design and optimize data engineering processes to ensure data quality, reliability, and performance; • Build data models for analytics and decision-making; • Develop queries and advanced analyses to generate business insights; • Work on integrating data from multiple sources and systems; • Support the development and maintenance of dashboards and strategic KPIs; • Ensure data governance, traceability, and quality; • Collaborate with business, analytics, and technology teams to address analytical needs.
Analytics Engineer
CoinbaseA digital currency exchange, Coinbase is used by consumers, merchants, and traders to buy and sell cryptocurrencies, such as Bitcoin, Ethereum, and Litecoin. Fo
• Own end-to-end development of production-grade data models and pipelines • Build data quality checks, data contracts, validation logic, and monitoring • Partner with upstream engineering teams to fix data gaps • Support live regulatory exams, audits, and ad hoc regulator requests • Automate recurring manual workflows into scalable pipelines and self-serve tooling
• Develop and maintain data ingestion and transformation pipelines; • Work with Lakehouse architectures; • Work in GCP and Databricks environments; • Create and evolve data structures in BigQuery and Delta Lake; • Support the definition and application of dimensional and relational modeling (Star Schema, Snowflake, etc.); • Ensure data quality, consistency, and security; • Support performance and cloud cost monitoring activities; • Collaborate with business units and data teams.



