Senior Data Scientist (Pricing and Decision Support)

Aggreko, LLC
Glasgow
4 days ago
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Senior Analyst (Pricing and Decision Support) page is loaded## Senior Analyst (Pricing and Decision Support)locations: Glasgowtime type: Full timeposted on: Heute ausgeschriebenjob requisition id: JR17655We're a global leader in providing energy solutions that help businesses grow and communities thrive. We work as a team and we’re proud of the difference we make to customers, to local communities, and towards a sustainable future for the world.We are looking for a hands-on, commercially aware Senior Analyst to support both thePricing strandand broaderDecision Supportinitiatives within our Insights & Analytics team. This role is ideal for someone with solid experience in pricing analytics and commercial insight who enjoys working independently, coding their own work, and turning data into actionable stories.* Competitive pay range on target earnings based on skills and experience* Opportunity to work in a fast-paced, agile, and cross-functional environment* Access to advanced analytics tools and technologies* Career growth opportunities within a global energy leader* Collaborative and inclusive work culture focused on innovation and sustainabilityWhat you’ll do:* Analyse pricing data to develop and refine pricing models and strategies* Provide commercial insights through segmentation and trend analysis* Collaborate with cross-functional teams to support pricing decisions and business initiatives* Develop and maintain dashboards and visualizations using Power BI, Tableau, or similar tools* Use advanced coding skills in Python or R for data analysis and visualization* Manipulate and report data using SQL and Excel to support pricing analyticsYou’ll have the following skills and experience:* Relevant experience in pricing analytics, commercial insight, or business intelligence* Strong understanding of pricing strategy and commercial metrics* Advanced coding skills in Python (pandas, seaborn, plotly, matplotlib) or R (tidyverse)* Proficiency with Power BI, Tableau, or similar visualization tools* Solid SQL and Excel skills for data manipulation and reporting* Experience with pricing models, segmentation, and trend analysisFind out more and apply now.Bring your energy. Grow your career.#LI-MJ1Equal employment opportunityWe welcome people from different backgrounds and cultures, and respect people’s unique skills, attitudes and experiences. We encourage everyone to be themselves at work because we know that’s how we do our best, for each other, for our customers, for the communities where we work, and for our careers.We are an equal opportunity employer. If you apply for a role at Aggreko, we will consider your application based on your qualifications and experience, and not on your race, colour, ethnicity, religion, sex, sexual orientation, gender identity, national origin, disability, or veteran status.
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