Data Scientist
Global Connect Technologies
About the role
We are seeking a hands-on Data Scientist (CSW) to develop analytics and machine learning solutions using large and complex datasets. This role emphasizes data analysis, feature engineering, and model development, with a strong focus on delivering practical, production-ready insights.
The ideal candidate will collaborate closely with engineering and product teams, as well as a senior PhD-level Lead Data Scientist, to design and implement scalable analytical solutions.
Experience in utility or energy data (electric, gas, water, AMI, IoT, or time-series data) is highly desirable. Alternatively, candidates with strong experience in demography are also encouraged to apply.
Key Responsibilities
- Analyze large datasets to identify patterns, trends, and anomalies.
- Develop, validate, and optimize statistical and machine learning models.
- Deliver actionable insights to support product, operational, and engineering decisions.
- Collaborate with engineering teams to support deployment and operationalization of models.
- Perform data cleaning, preprocessing, and feature engineering.
- Design and evaluate experiments as needed.
- Translate business and operational challenges into analytical solutions.
- Communicate findings effectively to both technical and non-technical stakeholders.
- Maintain clear documentation and ensure knowledge transfer to internal teams.
- Follow best practices in development, including version control and reproducibility.
Required Qualifications
- Proven experience in data science or advanced analytics roles.
- Strong proficiency in Python (e.g., pandas, NumPy, scikit-learn).
- Solid foundation in statistics and machine learning concepts.
- Experience working with SQL and structured datasets.
- Ability to work independently and quickly adapt in a CSW (Contingent Staff Worker) environment.
Preferred Qualifications
- Experience with utility, energy, or industrial datasets (electric, gas, water, AMI, IoT).
- Background in demography or population analytics.
- Experience with time-series analysis and anomaly detection.
- Familiarity with big data platforms (e.g., Spark, Databricks, or cloud-based data systems).
- Experience deploying or supporting models in production or near-production environments.
Skills
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