Maha Sarhan
joined April 30, 2025
  • How should teams approach building real-world applications using OpenAI models in 2026?

    I’m exploring how organizations can practically adopt OpenAI models for production use cases such as analytics, automation, customer support, and decision-making. With rapid changes in model capabilities, costs, governance, and integration patterns, what are the recommended best practices for: Choosing the right OpenAI model for different use cases Ensuring data privacy and responsible AI usage(Read More)

    I’m exploring how organizations can practically adopt OpenAI models for production use cases such as analytics, automation, customer support, and decision-making.

    With rapid changes in model capabilities, costs, governance, and integration patterns, what are the recommended best practices for:

    • Choosing the right OpenAI model for different use cases

    • Ensuring data privacy and responsible AI usage

    • Integrating OpenAI with existing data and BI systems

    • Scaling from experimentation to production

    Looking for perspectives from teams that have already implemented OpenAI in real-world workflows, along with lessons learned and pitfalls to avoid.

  • How to address feature correlation and multicollinearity during exploratory data analysis?

    What techniques do you use to detect and address feature correlation and multicollinearity during exploratory data analysis (EDA) to ensure model performance and interpretability?

    What techniques do you use to detect and address feature correlation and multicollinearity during exploratory data analysis (EDA) to ensure model performance and interpretability?

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