What are the responsibilities and job description for the Data Modeler position at Jobs via Dice?
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About GSPANN
Headquartered in Milpitas, California (U.S.A.), GSPANN provides consulting and IT services to global clients, ranging from mid-size to Fortune 500 companies. With our experience in retail, high-technology, and manufacturing, we help our clients to transform and deliver business value by optimizing their IT capabilities, practices, and operations. Counting on our ten offices, including four global delivery centers, and approximately 1400 employees globally, we offer the intimacy of a boutique consultancy with capabilities of a large IT services firm
Senior Data Modeler
Location-Orlando, FL(Hybrid)
Job Type-Long Term Contract
About GSPANN
Headquartered in Milpitas, California (U.S.A.), GSPANN provides consulting and IT services to global clients, ranging from mid-size to Fortune 500 companies. With our experience in retail, high-technology, and manufacturing, we help our clients to transform and deliver business value by optimizing their IT capabilities, practices, and operations. Counting on our ten offices, including four global delivery centers, and approximately 1400 employees globally, we offer the intimacy of a boutique consultancy with capabilities of a large IT services firm
Senior Data Modeler
Location-Orlando, FL(Hybrid)
Job Type-Long Term Contract
- Erwin, Data Warehouse, Retail, SCM, SQL, Oracle and any Data Engineering experience Bigdata, Pyspark/Spark is a plus Analyzing and translating business needs into long-term solution data models. Evaluating existing data systems. Working with the development team to create conceptual data models and data flows. Developing best practices for data coding to ensure consistency within the system. Reviewing modifications of existing systems for cross-compatibility. Implementing data strategies and developing physical data models. Updating and optimizing local and metadata models. Evaluating implemented data systems for variances, discrepancies, and efficiency. Troubleshooting and optimizing data systems.