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Enverus

Enverus, founded in 1999, is a leading energy-focused SaaS company that provides comprehensive data and analytics solutions across the energy sector. The company emphasizes a cultu

Principal Data Scientist

Data ScientistData ScientistFull TimeRemoteLeadTeam 1,800Since 1999

Location

United States

Posted

52 days ago

Salary

0

Seniority

Lead

Job Description

Principal Data Scientist

Enverus

Role Description We are currently seeking a Principal Data Scientist for Enverus Power and Renewables, who will create measurable customer value. You will partner closely with Product Management and Engineering to define and execute short- and long-term data roadmaps, applying advanced statistical, machine learning, and data engineering techniques across multiple product areas. - Strategic Data Analysis: Lead strategic data analysis initiatives, leveraging advanced statistical techniques, predictive modeling, and machine learning algorithms to uncover valuable insights. Analyze complex data sets to identify patterns, trends, and correlations that inform product strategy, optimization, and innovation. - Product Strategy Alignment: Collaborate closely with product managers, executives, and stakeholders to align data analysis efforts with the overall product strategy. Provide strategic guidance and insights to drive product roadmap prioritization, feature development, and market positioning. - Business Impact Assessment: Assess the impact of product initiatives on key performance metrics, customer satisfaction, and business outcomes. Conduct rigorous analysis to measure the effectiveness of product changes, identify causal relationships, and provide recommendations for continuous improvement. - Data Governance and Infrastructure: Oversee data governance processes, ensuring data integrity, security, and compliance. Collaborate with data engineering and IT teams to optimize data collection, storage, and retrieval processes. Drive improvements in data infrastructure and data management practices. - Thought Leadership and Innovation: Stay at the forefront of data analysis methodologies, tools, and industry trends. Champion innovative approaches to data analysis, experiment design, and modeling techniques. Act as a thought leader in the field of data analytics, influencing the organization's data-driven culture. - Stakeholder Collaboration: Collaborate closely with cross-functional teams, including product managers, engineers, data scientists, and executives, to provide insights and recommendations. Influence decision-making processes by effectively communicating complex data insights and demonstrating the value of data-driven strategies. - Team Leadership and Mentorship: Provide leadership and mentorship to the data analytics team. Foster a culture of continuous learning, collaboration, and growth. Guide and mentor junior analysts, helping them develop their analytical skills and business acumen. Qualifications - Expertise in advanced data analysis techniques, including statistical modeling, predictive analytics, and machine learning. - Proficiency in programming languages such as Python, and strong SQL skills for data extraction and manipulation. - Strong leadership and influencing skills to effectively collaborate with cross-functional teams, influence decision-making processes, and drive organizational change. - Ability to inspire and mentor a team of data analysts. - Extensive experience in data manipulation, data querying, and database management. - Familiarity with data warehousing concepts and data integration processes. - Strong critical thinking and problem-solving abilities to tackle complex business challenges. - Demonstrated ability to think strategically and envision the future of data analytics in the organization. - Excellent collaboration and relationship-building skills to establish strong partnerships with product managers, executives, and stakeholders. - In-depth knowledge of data governance best practices, data security, and regulatory compliance. Requirements - Bachelor's degree from a three or four-year college or university. - 4-6 years of relevant work experience. Benefits - Medical - Dental - Vision - Income Protection (disability, life/AD&D, critical illness, accident) - Employee Assistance Program (EAP) - Healthcare Spending Account (HSA), Commuter - Lifestyle & Wellbeing Program - Pet Insurance

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