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  • IndabaX Nigeria conference 2023: Breakout Sessions on Recommendation Systems, Dimension Reduction, and Model Explainability in Python
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IndabaX Nigeria conference 2023: Breakout Sessions on Recommendation Systems, Dimension Reduction, and Model Explainability in Python

  • 15th Jun, 2023 3:39pm
  • News Update

These sessions delve into topics such as "Recommendation Systems" by Olawale Abimbola, "Sufficient Dimension Reduction with Information Complexity" by Dr. Kabir Olorede, and "Interpreting Machine Learning Models: A Hands-on Exploration of Model Explainability in Python" by Abideen Bello. These sessions, led by experts in their respective fields, provided valuable insights into the realms of Recommendation Systems, Dimension Reduction, and Model Explainability in Phython.

Recommendation Systems by Olawale Abimbola.

Olawale Abimbola, a Machine Learning Engineer, Creative Advanced Technologies, Dubai. He conducted an engaging session on the intricacies of developing effective recommendation algorithms. Attendees gained a deeper understanding of the underlying principles and techniques involved in building recommendation systems across various industries. He further discussed the challenges associated with personalized recommendations and shared strategies for enhancing recommendation accuracy and relevance. Participants left the session equipped with practical knowledge to design and implement recommendation systems that cater to the unique needs and preferences of users.

Sufficient Dimension Reduction with Information Complexity by Dr. Kabir Olorede

Dr. Kabir Olorede, an Expert in AI, delivered an enlightening session on the concept of sufficient dimension reduction with information complexity. The session explored advanced techniques and methodologies for reducing the dimensionality of high-dimensional datasets while preserving relevant information. Dr. Olorede discussed the challenges of working with complex datasets and introduced cutting-edge approaches to achieve dimension reduction effectively. Participants gained valuable insights into the theoretical foundations and practical applications of sufficient dimension reduction, enabling them to tackle complex data analysis tasks with greater efficiency.

Interpreting Machine Learning Models: A Hands-on Exploration of Model Explainability in Python by Abideen Bello

Abideen Bello, an IT consultant, led an interactive session on interpreting machine learning models. He demonstrated various techniques and tools available in Python for model interpretability, enabling attendees to gain insights into feature importance, variable interactions, and decision boundaries. The session empowered participants to make informed decisions, validate models, and communicate results effectively.

The interactive nature of the sessions facilitated meaningful discussions and encouraged knowledge sharing among participants also the dynamic exchange of ideas and experiences enhanced the overall learning experience, enabling attendees to explore and apply the concepts discussed.

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