PyData Global 2022

Topaz Gilad

Topaz Gilad is an R&D manager specializing in AI, machine learning, and computer vision, leading production-oriented innovative research.
With experience in large companies as well as startups, in various industries, from space imaging and semiconductor microscopy to sports tech, wellness, beauty, and self-care industry, she has developed methodologies to scale up while improving quality, delivery, and teamwork.

Currently VP of AI and Algorithms at Voyage81, an innovation company that excels in computer vision deep learning algorithms in both RGB and hyper-spectral domains. Previously head of AI at Pixellot, a leading AI-automated sports production company.

Topaz is also an advocate for women in tech. When she is not building algorithmic teams, she enjoys painting.

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Sessions

12-03
08:00
30min
Bon Voyage! Leading machine learning research journeys with happy (into-production) endings
Topaz Gilad

Why is the process of transforming research into a “real world” product so full of question marks? We often know where the research journey starts but have uncertainty about how and WHEN it ends.

In this talk, I will share my own experience leading algorithmic teams through the cycle of research into the production of live-streaming AI products. I will also share how to mitigate between agile incremental delivery and giant leaps forward that require longer research. How understanding the minimum viable product (MVP) way of thinking can help not only managers but every developer. Learn to outline MVP for new AI capabilities, and move forward with production in mind, while always raising the quality standards. At the end of this session, you will get the boost you need to take the data-driven experimental mindset to the next level, spiced with methodologies you can adapt to development as well as research.

Talk Track I
12-03
17:30
30min
Classification Through Regression: Unlock the True Potential of Your Labels
Topaz Gilad

"Is a lion closer to being a giraffe or an elephant?"
It is not a question anyone asks.
So why address that classification problem the same as you would classification of age groups or medical condition severity?

The talk will walk you through a review of regression-based approaches for what may seem like classification problems. Unlock the true potential of your labels!

Talk Track I