QuantumBlack Voices cover logo

Meet Viktoriia Oliinyk: Data Scientist

33m · QuantumBlack Voices · 11 May 23:00

Today we're talking to Viktoriia Oliinyk, a data scientist in our London office. We talk about Viktoriia's path to data science, and one of her recent projects at QuantumBlack.

We then do a deep-dive on the topic of fairness, and why every data scientist has a responsibility to identify and mitigate societal bias found in historical data. Viktoriia is also incredibly passionate about promoting the representation of women in data science and STEM industries, and we talk about the work she and QuantumBlack are doing to improve that representation.

See www.mckinsey.com/privacy-policy for privacy information

The episode Meet Viktoriia Oliinyk: Data Scientist from the podcast QuantumBlack Voices has a duration of 33:44. It was first published 11 May 23:00. The cover art and the content belong to their respective owners.

More episodes from QuantumBlack Voices

Meet Jiri Klein: Data Engineer


Read more >
   Listen to the podcast (duration: 40:56) >   Today we're talking to Jiri Klein, one of our data engineers in London. Jiri details his journey to data engineering, from his early passion in mathematics, to mechanical engineering and forensic data analysis. At each step, Jiri describes the skills he learned that have contributed to his current career in data engineering. Jiri provides a deep-dive on the role of a data engineer, and we go on to talk about how the role has changed as the industry has evolved from one-off analytics insights, to mature machine-learning products providing ongoing recommendations.

See www.mckinsey.com/privacy-policy for privacy information

Meet Farah Shair: Data Engineer


Read more >
   Listen to the podcast (duration: 28:14) >   Today we're talking to Farah Shair, a data engineer from our London office. Farah's story is fabulous inspiration for chasing your passions, and not being afraid to change direction to do so. Farah's journey from biochemisty, to theatre marketing, to data engineering demonstrates how a diverse background can generate a broad spectrum of transferrable skills. We talk about the remit of a data engineer at QuantumBlack, and discuss how her past experiences have supported her throughout her career and how everyone should be encouraged to harness both their strengths and personality at work. 

See www.mckinsey.com/privacy-policy for privacy information

Meet Viktoriia Oliinyk: Data Scientist

Today we're talking to Viktoriia Oliinyk, a data scientist in our London office. We talk about Viktoriia's path to data science, and one of her recent projects at QuantumBlack.

We then do a deep-dive on the topic of fairness, and why every data scientist has a responsibility to identify and mitigate societal bias found in historical data. Viktoriia is also incredibly passionate about promoting the representation of women in data science and STEM industries, and we talk about the work she and QuantumBlack are doing to improve that representation.

See www.mckinsey.com/privacy-policy for privacy information

Meet Virjinia Alexieva: Product Manager

Today we're talking to Virjinia Alexieva. If you’re interested in the discipline of product management, you should listen to this episode. We talk about the importance of autonomy when building products, and the role leadership can play to make that a reality.

We do a deep-dive on the product Virjinia is building in QuantumBlack Labs, and discuss how OKRs keep our teams on track in a highly autonomous environment. Virjinia has aspirations to build her own company, and explains why the culture in QuantumBlack Labs and the support of McKinsey & Company creates a perfect testing ground for her to grow as a product manager.

See www.mckinsey.com/privacy-policy for privacy information

Meet Philip Pilgerstorfer: Data Scientist

Today we're talking to Philip Pilgerstorfer. We talk about his path from econometrics to data science, the importance of correlation versus causation, and how MLOps is unlocking machine learning at scale.

Philip's belief is that "machine learning is eating the world". This might sound a little scary at first, but further reinforces why we need practitioners like Philip who can unpack this complex discipline, and shine a light on both its potential impact, as well as its limitations. Philip also gives us a deep dive on a real-world machine learning use case, and leverages this example to explain core concepts like causation and model deployment at scale.

See www.mckinsey.com/privacy-policy for privacy information

Every Podcast » QuantumBlack Voices » Meet Viktoriia Oliinyk: Data Scientist