At Graphic Packaging International, we produce the paper cup that held your coffee this morning, the basket that transported those bottles of craft beer you enjoyed last weekend, and the microwave tray that heated your gourmet meal last night. We're one of the largest manufacturers of paperboard and paper-based packaging for some of the world's most recognized brands of food, beverage, foodservice, household, personal care and pet products. Headquartered in Atlanta, Georgia, we are collaborative, diverse, innovative individuals who create inspired packaging while giving back to our communities. With over 25,000 employees working in more than 130 locations worldwide, we strive to be environmentally responsible in our industry and in the communities where we operate. We are committed to workplace diversity and offer compensation and benefits programs that are among the industry's best to reward the talented people who make our company successful. If this sounds like something you would like to be a part of, we'd love to hear from you.
The VP, Data Analytics & Business Intelligence for Graphic Packaging will set the strategic vision for modernizing our data analytics and Artificial Intelligence (AI) capabilities and execute the plan to achieve business goals, leveraging modern platforms, data products, and advanced analytics to improve safety, quality, throughput, reliability, and cost across industrial manufacturing operations, while also partnering to enable key digital operations platforms (public website, SharePoint, and low-code solutions) that support enterprise communication and productivity.
The successful candidate will inventory the current set of tools, technologies, and capabilities; partner with IT, OT, plant leadership, business leaders, and enterprise architecture to create a strategic vision to move from predominantly rear-view reporting to predictive and prescriptive analytics and AI-driven decision support. This leader will simplify the current BI & reporting footprint; build a modern, cloud-enabled data ecosystem that integrates ERP, MES, historian/time-series data, SCADA/IIoT, quality systems, maintenance/EAM, and supply chain data; and enable global self-service analytics and governed citizen data science where appropriate.
Key Responsibilities:
Key Competencies:
Education and Experience: