Principal Data Scientist
Role details
Job location
Tech stack
Job description
United States, Ohio, Solon 31875 Solon Road (Show on map) Jun 12, 2026 As a Principal Data Scientist at Epicor, you will be the technical leader driving advanced analytics, machine learning, and AI strategy across our product ecosystem. You will guide data scientists and analytics engineers, shape the technical architecture of ML solutions, and ensure our analytics experiences are impactful, intuitive, and aligned with real customer use cases. You will be responsible for influencing product direction, introducing emerging technologies, and delivering highvalue models that scale across complex datasets and customer environments. We are seeking applicants with deep technical expertise, strong leadership instincts, and the ability to partner across teams to deliver meaningful business outcomes. What you will be doing:
- Provide technical leadership, mentorship, and industry expertise to data scientists and analytics engineers, guiding highcomplexity modeling and solution design.
- Lead the development of analytics product packages aligned with product roadmaps or customer contracts, ensuring the enduser experience maps to clear business use cases.
- Conduct research, perform advanced statistical and ML modeling, and drive the frontend analytics user experience for customerfacing solutions.
- Partner across crossfunctional analytics teams-including DW engineers, ETL engineers, data science engineers, data production teams, SMEs, and customers-to architect endtoend analytics solutions.
- Evaluate and integrate emerging analytics technologies, new data sources, and modern ML/AI approaches to keep Epicor's analytics offerings innovative and competitive.
- Develop and apply advanced models and algorithms to improve operations, enhance customer outcomes, and answer complex business questions.
- Mine and analyze large, complex, and unstructured datasets using sophisticated statistical methods to drive datainformed decisionmaking and product excellence.
- Collaborate with product operations leadership to ensure high availability, performance, and reliability of analytics solutions that meet or exceed contracted service levels.
Requirements
- 9+ years' experience building, deploying, and supporting largescale analytics, ML, or AI solutions.
- Advanced proficiency in Python, including expertise in building ML/AI models at scale.
- Experience with PyTorch, ML SDKs, and productiongrade machine learning frameworks.
- Strong background working with large datasets and architecting scalable data science solutions.
- Advanced analytical thinking, statistical and mathematical expertise, and skill in solving highly complex technical problems.
- Experience with SQL and/or Python for analytics, and exposure to database modeling and datawarehousing concepts.
- Experience with frontend analytics platforms such as MicroStrategy, Power BI, or Tableau.
- Experience implementing ML or data science routines in Python and/or R.
What could set you apart:
- Experience with GPUaccelerated ML or deep learning workflows.
- Experience writing, interpreting, or applying ML/AI whitepapers or research findings.
- Ability to influence and lead crossfunctional technical decisions across finance, professional services, engineering, and product teams.
- Experience with big data pipelines and distributed compute environments.
- Strong capability in advanced data visualization and highvolume BI tools such as Tableau or MicroStrategy.
Benefits & conditions
Competitive Pay & Benefits
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Health and Wellness: Comprehensive health and wellness benefits designed to support your overall well-being.
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Internal Mobility: Opportunities for mentorship, continuing education, and focused career goal setting, with 25% of positions filled internally.
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Career Development: Free LinkedIn Learning licenses for everyone, along with our Mentoring Program to boost your personal development.
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Education Support: Geographically specific programs to balance the cost of education with the benefits of continued learning and personal development.
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Inclusive Workplace: Collaborate with a diverse team in an inclusive, global workplace that fosters innovation and celebrates partnership.
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Work-Life Balance: Policies built on mutual trust and support, encouraging time off to rest, recharge, and reconnect.
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Global Mobility: Comprehensive support for international relocations and permanent residency processes.