Employer Active
Responsibilities:
Data Collection: Gathering and compiling data from internal and external sources, ensuring its accuracy and completeness.
Data Cleaning and Preprocessing: Identifying and resolving data quality issues, performing data transformations, and preparing data for analysis.
Data Analysis: Applying statistical methods and analytical techniques to examine data sets, uncover patterns, correlations, and trends, and extracting meaningful insights.
Data Visualization: Creating visual representations, such as charts, graphs, and dashboards, to present data findings in a clear and concise manner, facilitating understanding and decision-making.
Reporting: Preparing reports and presentations summarizing data analysis results, highlighting key findings, and providing actionable recommendations.
Collaborating with Stakeholders: Working closely with teams across the organization to understand their data needs, address specific business questions, and provide data-driven insights to support decision-making processes.
Data Governance and Security: Ensuring data integrity, privacy, and compliance with relevant regulations and policies throughout the data analysis process.
Qualifications:
Strong Analytical Skills: Proficiency in using analytical tools and techniques to manipulate and analyze complex data sets effectively.
Statistical Knowledge: Understanding of statistical concepts and methods, such as hypothesis testing, regression analysis, and data modeling.
Data Manipulation and Programming: Proficiency in data manipulation using programming languages like Python or R, as well as experience with SQL for database querying.
Data Visualization: Familiarity with data visualization tools like Tableau, Power BI, or Excel to create compelling visualizations for data communication.
Domain Knowledge: Depending on the industry, having knowledge of relevant business domains, such as finance, marketing, healthcare, or e-commerce, can be beneficial.
Problem-Solving Abilities: Strong critical thinking and problem-solving skills to identify data-related challenges, develop appropriate analytical approaches, and derive actionable insights.
Communication Skills: Excellent verbal and written communication skills to effectively convey complex data findings to both technical and non-technical stakeholders.
Attention to Detail: A meticulous approach to data analysis, ensuring accuracy, and paying attention to small details that may impact the results.
Continuous Learning: A mindset of continuous learning and keeping up-to-date with new tools, techniques, and industry trends in data analytics.
Full Time