2 Intermediate Data Analysts required for Data Analysis, Data Cleaning, Data management....throughout the organization.
S.i. Systems
Toronto, ON-
Number of positions available : 1
- Salary To be discussed
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Contract job
- Published since 2 weeks ago
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Starting date : 1 position to fill as soon as possible
Description
Our GTA based, manufacturing Client requires the services of 2 Intermediate Data Analysts for Data Analysis, Data Cleaning, Data management....throughout the organization.
Responsibilities and Duties
Data Analysis:
· Collect, analyze, interpret, and transform complex data sets using tools such as Excel, SQL, Python, Snowflake, and Microsoft Fabric.
· Develop reusable analytical frameworks and data visualizations that provide actionable insights for business and technical stakeholders.
· Identify root causes of data discrepancies and quality issues and support the establishment of Standard Corrective Operating Procedures (SCOP) and Standard Operating Procedures (SOP).
· Apply advanced analytical and problem‑solving skills to evaluate large, complex datasets and business questions.
· Write structured, efficient SQL (or equivalent) queries to extract, analyze, and validate data from large enterprise data sets.
· Leverage AI and automation capabilities to enhance analytics efficiency, accelerate insights, and support scalable analytical processes.
Data Quality:
· Collaborate closely with cross‑functional stakeholders across IT, Operations, Marketing, Finance, Legal, and Executive Leadership to define data requirements and ensure data quality, accuracy, consistency, and usability.
· Participate in the design, implementation, and continuous improvement of automated data quality checks and data observability frameworks.
· Manage and respond to ad hoc data quality investigations and remediation requests.
· Monitor, analyze, and report on quantitative and qualitative indicators of data quality performance on a regular basis, including Trifecta and DNA dashboards.
· Support continuous improvement of data quality standards and controls to enable reliable analytics and AI‑driven use cases.
Data Management & Documentation:
· Gather, organize, and integrate data from multiple enterprise sources into structured, governed databases and data platforms.
· Support data governance, data cataloging, and metadata management practices using Microsoft Purview or similar tools.
· Create and maintain comprehensive documentation for data flows, source‑to‑target mappings, analyses, discoveries, business rules, and technical dependencies to support operationalization and downstream analytics, IT, and AI initiatives.
· Ensure data assets are discoverable, well‑documented, and aligned with governance standards to support enterprise reporting and advanced analytics.
MUST HAVE:
· 2-4+ years of experience in Business Intelligence Engineering, Data Engineering, Data Analysis, Data Science, or a closely related field, with demonstrated exposure to enterprise data environments.
· Proven ability to manage and deliver multiple workstreams simultaneously, identify critical-path activities, and prioritize high-impact actions and deliverables.
• Strong proficiency in SQL, with the ability to write structured, efficient queries against large, complex datasets.
• Experience analyzing, transforming, and validating data using tools such as Excel, Python, Snowflake, Microsoft Fabric, or comparable platforms.
• Ability to independently break down large datasets and synthesize insights from multiple structured and semi-structured data sources.
• Experience using data visualization tools to create actionable insights, dashboards, and reusable analytical frameworks.
• Foundational understanding of IT systems, data architectures, data pipelines, and data integration concepts in an enterprise environment.
• Practical understanding of how AI and automation can be leveraged to enhance analytics, improve efficiency, and support scalable data quality and observability practices.
• Knowledge of data governance concepts, including data quality, metadata management, data lineage, and documentation best practices.
• Experience supporting or contributing to data quality frameworks, automated data checks, and data observability initiatives.
• Familiarity with metadata management and data catalog tools such as Microsoft Purview or similar platforms is an asset.
• Ability to translate governance standards and data requirements into operational and analytical outcomes.
Disclaimer:AI may be used in evaluating candidates.
This posting is for an existing vacancy.
Requirements
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