Job Description: Data Modeler
Position Overview:
We are seeking a highly skilled and experienced Data Modeler to join our team remotely. As a Data Modeler you will be responsible for designing implementing and maintaining data models to support our organizations data infrastructure. The ideal candidate should have extensive experience in data modeling particularly in cloudbased environments with a strong proficiency in Azure Data Lake and Databricks.
Responsibilities:
1. Design and develop data models to meet the organizations requirements for data storage retrieval and analysis.
2. Collaborate with stakeholders to understand business needs and translate them into effective data models.
3. Implement and maintain data modeling best practices and standards.
4. Work closely with data engineers and architects to ensure seamless integration of data models into the overall data architecture.
5. Optimize data models for performance scalability and efficiency.
6. Perform data profiling and analysis to identify data quality issues and recommend solutions.
7. Provide guidance and support to junior team members on data modeling techniques and best practices.
8. Stay updated on emerging technologies and trends in data modeling and data management.
Requirements:
1. Bachelors degree in Computer Science Information Systems or a related field.
2. Proven experience as a Data Modeler with at least 7 years of relevant work experience.
3. Strong proficiency in data modeling concepts and techniques.
4. Handson experience with Azure Data Lake and Databricks.
5. Familiarity with cloudbased data platforms and services (e.g. Azure AWS Google Cloud Platform).
6. Excellent analytical and problemsolving skills.
7. Ability to communicate effectively with technical and nontechnical stakeholders.
8. Experience working in an Agile development environment is a plus.
9. Certifications in data modeling or cloud technologies are desirable.
Location: Remote
Work Hours: 8 hours per day
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