Senior Data Science Analyst

Integrated Resources, Inc

Richmond, VA

JOB DETAILS
JOB TYPE
Contractor
SKILLS
Alternative Energy, Amazon Web Services (AWS), Analysis Skills, Artificial Intelligence (AI), Asset Management, Best Practices, Billing, Capital Project, Cloud Architecture, Cloud Computing, Communication Skills, Computer Science, Continuous Deployment/Delivery, Continuous Integration, Cross-Functional, Customer Experience, Customer/Consumer Behavior, Data Analysis, Data Quality, Data Science, Data Sets, Decision Support, Demand Forecasting/Planning, Distribution Operations, Energy Efficiency, Finance, Forecasting, GCP (Good Clinical Practices), Information Technology & Information Systems, Leadership, Machine Learning, Mathematics, Mentoring, Microsoft Windows Azure, Natural Language Processing (NLP), Operational Support, Operations Management, Performance Analysis, Power BI, Predictive Modeling, Presentation/Verbal Skills, Product Lifecycle, Production Control, Production Support, Production Systems, Programming Methodologies, Python Programming/Scripting Language, R Programming Language, Regulatory Compliance, Regulatory Requirements, Reliability Analysis, Reporting Dashboards, Software Engineering, Source Code/Configuration Management (SCM), Statistical Modeling, Structured Data, Supervisory Control and Data Acquisition (SCADA), Technical Consulting, Test Automation, Unstructured Data, Use Cases, Writing Skills
LOCATION
Richmond, VA
POSTED
Today
Pre-Screen Questions - List these at the end of candidate resume 1. Do you have at least 5 years of hands on experience working as a Data Scientist using Python or R on production projects involving large, complex, high volume datasets? Yes/No - If yes, briefly describe the types of datasets and use cases. 2. Have you designed and deployed end to end data science solutionsfrom data acquisition and feature engineering through model deployment and post production monitoring? Yes/No - Must include real production deployment, not only experimentation. 3. Which of the following techniques have you applied in real world projects? Please select all that apply a. Time series forecasting b. Machine learning / statistical modeling c. Optimization d. Anomaly detection e. NLP or unstructured data analysis 4. Do you have hands on experience with MLOps practices such as model versioning, CI/CD pipelines, automated testing, and production monitoring (e.g., MLflow, Azure ML, Dataiku, or similar)? Yes/No - Briefly list tools used. 5. Have you regularly translated complex analytical results into clear, actionable insights for non technical stakeholders (business leaders or executives), including dashboards or visualizations? Yes/No - Brief example required. 6. Have you developed interactive with tools like RShiny, Power BI, Streamlit, Dash for business consumption? Yes/No - Brief example required, with tools used Required Emphasis on: Experience designing, developing, and deploying advanced analytics and machine learning solutions aligned to business objectives Expertise across machine learning, statistical modeling, forecasting, optimization, and anomaly detection, with real world application experience Develop end to end data science solutions, from data acquisition and feature engineering to model deployment and post production monitoring MUST have 5+ years of experience in Data Science using Python or R, with a strong focus on analyzing large, complex, and high-volume datasets Required Skills and Experience MUST have prior hands on experience as a Data Scientist on a project using Python or R Proven ability to translate complex analytical findings into clear, actionable insights for business leaders, engineers, operations teams, and executives Ability to create clear, interpretable visualizations that tell a compelling story, support decision making, and align with executive level messaging Demonstrated experience creating interactive dashboards, reports, and applications (e.g., RShiny, Power BI, Streamlit, Dash) for business consumption Strong experience working with structured, semi structured, and unstructured data (e.g., sensor/SCADA data, time series data, text, image Working knowledge of MLOps practices including model development lifecycle management, automated testing, CI/CD pipelines, version control, and deployment (e.g., MLflow, Dataiku, Azure ML, or similar tools) Strong understanding of model monitoring, including performance tracking, explainability, bias detection, model drift, and reproducibility in production environments Working knowledge of data engineering concepts, including data ingestion, transformation, feature engineering, and data quality controls Experience with cloud and modern analytics platforms (AWS, Azure, GCP, Snowflake, Databricks, or similar) is a strong plus Understanding of governance, security, and regulatory requirements for enterprise and utility data environments is preferred What soft skill requirements do you have (team fit and personality requirements)? Strong communication skills both verbal and written Ability to lead, collaborate, or work effectively in a variety of teams, including multi-disciplinary teams Nice to Have Skills: Understanding and/or Experience with data engineering is a plus Experience with cloud technologies(AWS, Azure, GCP, Snowflake) is big plus High Level Project Overview: This role serves as a technical consultant and senior individual contributor within ***s Enterprise Data Analytics team, delivering advanced analytics and data science solutions that support operational reliability, grid modernization, customer experience, and clean energy initiatives. Key responsibilities include: Partner with business units such as Generation, Transmission & Distribution, Grid Operations, Asset Management, Customer Operations, and Finance to identify high value data science use cases Design, build, and deploy predictive, prescriptive, and diagnostic models to support: Asset health and predictive maintenance Load forecasting and demand modeling Outage prediction, restoration optimization, and reliability analytics Grid resilience, renewable integration, and emissions reduction initiatives Customer behavior, billing, and energy efficiency programs Apply advanced techniques such as time series forecasting, survival analysis, optimization, clustering, NLP, and anomaly detection to utility scale data Develop end to end data science solutions, from data acquisition and feature engineering to model deployment and post production monitoring Support implementation of MLOps best practices to ensure scalable, reliable, and auditable analytics solutions in compliance with enterprise and regulatory standards Collaborate closely with data engineers, platform teams, and cloud architects to ensure models are production ready and performant Build reusable analytical frameworks and accelerators that improve time to value across the Enterprise Analytics portfolio Create intuitive visualizations, dashboards, and self-service analytics tools that empower stakeholders to explore insights independently Mentor junior data scientists and analysts, contributing to analytics standards, code quality, and best practices Support ***s commitment to safety, reliability, affordability, and clean energy transformation through responsible and ethical use of data and AI Required Years of Experience: MUST have 5+ years of experience in Data Science using Python or R, with a strong focus on analyzing large, complex, and high-volume datasets Education: Education: Bachelors or higher required Discipline: Computer Science, Information Systems, Mathematics Are there any specific companies/industries youd like to see in the candidates experience? High Preference for candidates that have previously worked with a large scale commercial utilities team but will review candidates who have a background with large scale capital projects for companies Preferred Interview Process Overview (High level): Teams Camera On

About the Company

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Integrated Resources, Inc