Gartner Expert

Carlie Idoine

VP Analyst

Carlie Idoine is a Research Director for Business Analytics and Data Science for Gartner for IT Leaders. Ms. Idoine is an accomplished IT professional with more than 25 years of experience in both business analytics and data science. She provides a unique blend of business and industry knowledge, leading successful efforts to integrate new technologies into effective business solutions. Her experience includes design, implementation and communication of an enterprise analytics strategy and comprehensive analytics program, evaluating and managing the enterprise analytics and data science software portfolio, business needs analysis, analytic tool and process support, custom business analytic and data science solution analysis, design and development, training development and instruction, and application of advanced analytics to complex business problems.

Roles and responsibility



Chief Data Officer

Chief Analytics Officer

Data Scientist

Business Analyst

Previous experience

Prior to joining Gartner, Ms. Idoine was the BI consultant and domain expert for the Business Intelligence Development Services Team within the Enterprise Architecture Organization at Progressive Insurance. Her responsibilities included planning and implementing a BI strategy, including BICC development, BI and analytics tool portfolio management, and planning and support of the organization, process and tools related to BI and analytics.

Professional background

Progressive Insurance

IT Systems Analyst Consultant

Roadway Express

Sr. Operations Research Consultant

Areas of coverage

Data and Analytics Leaders

Data Management Solutions

Analytics, BI and Data Science Solutions

Data and Analytics Programs and Practices


B.B.A., Computer Science/Management Science, Kent State University

Read More Read Less

Top Issues That I Help Clients Address

1Evaluate business analytics and data science/machine learning tools and vendors including strengths, weaknesses, comparisons

2Define business analytics and data science/machine learning trends, including technology, organization and process

3Build and support an organization and architecture for analytics and data science/machine learning

4Leverage and support self-service analytics and citizen data scientists

5Develop and implement an analytics strategy and get started with data science/machine learning