Role: Data Scientist (2 Openings)
Rate: €400 per day
Contract Type: 3-month rolling contract (project expected to run for 18–24 months)
Work Arrangement: Fully remote
Interview Rounds: Two stages
Project Overview:
You'll be contributing to a large-scale energy trading and risk management (ETRM) initiative. The focus is on developing and deploying advanced machine learning solutions to support forecasting, analytics, and automation goals.
Essential Skills & Experience:
- Strong background in time-series forecasting using models like Prophet, ARIMA, SARIMA, XGBoost, Random Forest, ElasticNet, Ridge, Lasso, and Linear Regression.
- Hands-on experience with Python machine learning libraries including scikit-learn, sktime, and darts.
- In-depth understanding of time-series feature engineering, including creation of lag variables, rolling window metrics, Fourier transforms, and approaches to seasonality.
- Capable of optimizing and fine-tuning deployed predictive models for enhanced accuracy and stability.
- Practical experience using Azure Machine Learning SDK (both v1 and v2), particularly for:
- Managing assets (data, models, environments)
- Creating and debugging ML pipelines for feature engineering, training, and deployment
- Scheduling jobs and deploying endpoints
Additional Skills (Nice to Have):
- Familiarity with unsupervised learning techniques such as K-Means clustering.
- Experience designing and building scalable data solutions using cloud-native tools like Azure Data Factory, Azure Databricks, Azure Data Lake, and Azure Key Vault.
- Ability to create and maintain resilient data pipelines for ETL processes, logging, and transformation using Azure Data Factory.
- Skilled in large-scale data manipulation and analysis using PySpark and Python.
- Collaborates effectively with product and engineering teams to translate business goals into data-driven solutions.
- Experience setting up CI/CD pipelines within Azure DevOps for machine learning and data infrastructure.
- Committed to data engineering best practices including governance, security, and performance tuning.
- Stays updated with modern data technologies and methodologies, constantly pushing to evolve existing frameworks.
Apply now or reach out to Odin Lawton.