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Transforming businesses through cutting-edge digital innovation and unparalleled IT consulting services.
Data Scientist / AI Engineer – Analytics & AI Enablement
Location
United States
Posted
177 days ago
Salary
0
Seniority
Senior
Job Description
Data Scientist / AI Engineer – Analytics & AI Enablement
Genesis Digital Solutions
• Collaborate closely with Data Engineers and business stakeholders to define and validate curated datasets optimized for analytics and AI use cases. • Specify and document data requirements, feature definitions, and aggregation logic for downstream analytical and machine learning applications. • Validate data completeness, consistency, and statistical soundness of serving-layer datasets. • Provide continuous feedback to data engineering teams on data model usability, performance, and analytical fitness. • Perform exploratory data analysis (EDA) to identify patterns, anomalies, and data quality issues. • Build and test baseline machine learning models and analytical prototypes using curated datasets. • Contribute to the design and implementation of lightweight ML pipelines (training, evaluation, inference) aligned with platform standards. • Ensure features and models are reproducible, versioned, and prepared for future operationalization in production environments.
Job Requirements
- 3 to 5 years of experience in Data Science, Applied AI, or Analytics Engineering roles.
- Strong proficiency in Python for data analysis and modeling (e.g. pandas, numpy, scikit-learn or equivalent).
- Solid SQL skills for working with large-scale analytical datasets.
- Experience collaborating with Data Engineers in data lakehouse or data warehouse architectures.
- Familiarity with Azure-based analytics and machine learning platforms (e.g. Databricks, Synapse, Azure ML).
- Awareness of data quality, governance, and privacy considerations in analytical workflows.
- Strong analytical mindset with attention to data validity, assumptions, and statistical robustness.
- Ability to translate business and product questions into clear data and feature requirements.
- Strong communication skills and a collaborative working style with technical and non-technical stakeholders.
- English level B2 or higher (mandatory).
Benefits
- A workplace that values innovation and personal growth.
- Opportunities to work on high-impact projects.
- Remote work model with flexible hours.
- Support for professional development, including training and certifications.
- Health and life insurance.
- 25 days of annual leave.
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