Data Scientist in Duluth

Energy Jobline
Duluth, United States of America
2 days ago

Role details

Contract type
Permanent contract
Employment type
Full-time (> 32 hours)
Working hours
Regular working hours
Languages
English
Experience level
Senior

Job location

Duluth, United States of America

Tech stack

Artificial Intelligence
Amazon Web Services (AWS)
Data analysis
Big Data
Distributed Computing Environment
Distributed Systems
Python
Machine Learning
Operational Databases
Data Streaming
Management of Software Versions
Feature Engineering
Sql Optimization
Model Validation
PySpark
Information Technology
Amazon Web Services (AWS)
Machine Learning Operations
Stream Processing
Data Pipelines
Software Library

Requirements

You'll play a key role in establishing the organization's reusable machine learning framework, building scalable data pipelines, deploying models into production, and enabling future AI initiatives across the business. The ideal candidate combines deep data science expertise with strong machine learning engineering and MLOps experience, taking models from concept through production while building repeatable, automated workflows., * 5+ years of experience designing and delivering production machine learning or advanced analytics solutions. \n

  • Demonstrated success deploying machine learning models into production environments. \n

  • Strong experience building scalable machine learning pipelines and production data workflows. \n

  • Hands-on experience with AWS SageMaker, AWS Glue, and related AWS analytics services. \n

  • Strong production experience with PySpark and distributed data processing. \n

  • Experience building or supporting MLOps practices, including model deployment, monitoring, automation, versioning, and lifecycle management. \n

  • Experience processing large-scale datasets using distributed computing technologies. \n

  • Experience supporting streaming or near real-time data processing environments. \n

  • Strong Python programming skills utilizing modern machine learning libraries. \n

  • Advanced SQL proficiency. \n

  • Strong understanding of feature engineering, model evaluation, experimentation, and production optimization. \n

  • Experience collaborating closely with software engineers to integrate machine learning solutions into production applications. \n

  • Excellent analytical, problem-solving, and communication skills with the ability to translate business problems into scalable technical solutions. \n, Success in this role requires an engineering mindset, strong business curiosity, and the ability to build scalable, production-ready machine learning solutions that deliver measurable business value. Candidates whose experience is primarily centered on reporting, dashboards, or ad hoc analytics will likely not be the best fit., Bachelor's or Master's degree in Computer Science, Data Science, Statistics, Mathematics, Engineering, or another quantitative discipline, or an equivalent combination of education and practical experience.

Benefits & conditions

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  • Design, build, deploy, and operationalize production-grade machine learning solutions using AWS services. \n

  • Develop scalable, repeatable machine learning pipelines supporting model training, validation, deployment, monitoring, and lifecycle management. \n

  • Build anomaly detection and predictive analytics models capable of supporting near real-time decision making. \n

  • Engineer robust, production-scale data pipelines using AWS Glue, PySpark, SQL, and cloud- technologies. \n

  • Process and analyze large-scale streaming IoT data. \n

  • Perform feature engineering, model experimentation, evaluation, and performance optimization for production environments. \n

  • Deploy machine learning models using AWS SageMaker and implement monitoring, retraining, automation, and governance throughout the ML lifecycle. \n

  • Collaborate with Product Management and software engineering teams to translate business challenges into scalable machine learning solutions. \n

  • Design solutions that emphasize automation, repeatability, reliability, and operational excellence. \n

  • Participate in architecture discussions, code reviews, and Agile development activities. \n

  • Evaluate emerging machine learning technologies and AWS capabilities to continuously improve platform performance and scalability. \n

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  • Experience with ClickHouse or other high-performance analytical databases. \n

  • Experience building production solutions using streaming data technologies. \n

  • Experience with anomaly detection, predictive maintenance, forecasting, or other advanced machine learning techniques. \n

  • Experience working with large-scale IoT or time-series datasets. \n

  • Background in utilities, industrial IoT, manufacturing, or other data-intensive operational environments. \n

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What Will Make You Successful

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We're looking for someone who enjoys solving complex engineering challenges-not simply building models in notebooks. The ideal candidate has experience taking machine learning solutions from concept through production, understands how to operationalize models at scale, and enjoys building reusable frameworks that enable future AI initiatives.

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