Leading Enterprise Data Teams // Sol Rashidi // MLOps Podcast #227
Skills:
Data Literacy70%
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MLOps podcast #227 with Sol Rashidi, CEO & Co-Founder of ExecutiveAI, Leading Enterprise Data Teams.
// Abstract
In the dynamic landscape of MLOps and data leadership, Sol shares invaluable insights on building successful teams and driving impactful projects. In this podcast episode, Sol delves into the importance of prioritizing relationships, introduces a pragmatic "Wrong Use Cases Formula" to streamline project prioritization, and emphasizes the critical role of effective communication in data leadership. Her wealth of experience and practical advice provide a roadmap for navigating the complexities of MLOps and leading data-driven initiatives to success.
// Bio
With eight (8) patents granted, 21 filed, and received awards that include:
"Top 100 AI People" 2023
"The Top 75 Innovators of 2023"
"Top 65 Most Influential Women in 2023"
"Forbes AI Maverick of the 21st Century" 2022
“Top 10 Global Women in AI & Data”, 2023
"Top AI 100 Award", 2023
“50 Most Powerful Women in Tech”, 2022
“Global 100 Power List” - 2021, 2022, 2023
“Top 20 CDOs Globally” - 2022
"Chief Analytics Officer of the Year" - 2022
"Isomer Innovators of the Year" - 2021, 2022, 2023
"Top 100 Innovators in Data & Analytics” - 2020, 2021, 2022, 2023
"Top 100 Women in Business" - 2022
Sol is an energetic business executive and a goal-oriented technologist, skilled at coupling her technical acumen with story-telling abilities to articulate business value with both startups and Fortune 100's who are leaning into data, AI, and technology as a competitive advantage while wanting to preserve the legacy in which they were founded upon. Sol has served as a C-Suite member across several Fortune 100 & Fortune 500 companies including:
Chief Analytics Officer - Estee Lauder
Chief Data
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