EnneaQ is a personality assessment tool that combines the wisdom of the Enneagram with the scientific rigor of the Five-Factor Model (FFM), often represented by the acronym OCEAN. At the heart of the Enneagram are nine distinct personality types, each offering a unique perspective on the world, shaped by its own set of motivations, fears, and interpersonal styles. While widely used for personal and spiritual development, offering profound insights into human behavior, it's important to note that research on the Enneagram's validity is ongoing1. The FFM, also known as the Big Five (OCEAN), is a well-established model of personality with strong scientific support and cross-cultural validity2. EnneaQ integrates these two models to provide a comprehensive and nuanced understanding of your personality.
Your privacy is our priority. This overview explains how EnneaQ works, the methods used for analysis, and how we prioritize the security and confidentiality of your data. Rest assured that your responses are completely private and will never be shared with anyone without your explicit permission. We do not sell your data and are committed to maintaining the highest standards of data privacy and security.
EnneaQ takes a unique approach to personality assessment. Instead of relying on traditional multiple-choice questions, we use realistic scenarios to help you discover your likely Enneagram type and gain deeper insights into your OCEAN traits. This offers several key advantages:
This scenario-based methodology allows EnneaQ to offer a more engaging, insightful, and personalized assessment experience, leading to a deeper understanding of your personality and potential for growth.
EnneaQ uses advanced AI algorithms to analyze your responses to the scenarios, each carefully categorized under Emotional Intelligence, Cultural Intelligence, Leadership Intelligence, or Situational Awareness. Here's how this process works:
Ongoing Exploration: After your initial assessment, you can continue to explore your personality by responding to additional scenarios. Each new scenario provides more data for the AI to analyze, further enhancing the accuracy of your Enneagram type and wing predictions and offering deeper insights into your personality dynamics.
EnneaQ is your guide to developing a strong internal compass. We go beyond simply identifying your Enneagram type and OCEAN traits, providing personalized insights that illuminate your unique biases and potential blind spots. Through AI analysis, we reveal the gaps between your self-perceived traits and how those traits manifest in your actions, fostering a deeper understanding of yourself and highlighting areas for potential growth.
This deeper understanding allows you to consciously orient yourself in any situation, ensuring your decisions are grounded in objectivity, not unconscious assumptions. You gain the ability to accurately assess information, consider diverse viewpoints, and ultimately make choices aligned with your values. This heightened self-awareness enhances your emotional, cultural, and leadership intelligence, paving the way for more fulfilling relationships and greater self-understanding.
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Widiger, T. A., & Crego, C. (2019). The Five Factor Model of personality structure: An update. World Psychiatry, 18(3), 271-272. ↩
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Christian, M. S., Edwards, B. D., & Bradley, J. C. (2010). Situational judgment tests: Constructs assessed and a meta-analysis of their criterion-related validities Personnel Psychology, 63(1), 83-117. ↩
Zhong, Q., Ding, L., Liu, J., Du, B., & Tao, D. (2023). Sentiment analysis in the era of large language models: A reality check. arXiv preprint arXiv:2302.10198. ↩