Women Leaders in Data Science: Top Influentials from the Industry
The thriving industry of Data Science is continuously evolving with the technological advancements in Machine Learning and Artificial intelligence. This has opened up whole new avenues for Data Scientists worldwide. Professionals who can handle Big Data and have the necessary knowledge required for understanding, analysing and processing data are in high demand in the job market. However, there is one important thing that also needs to be addressed is the raging problem caused by the gender gap in this sector.
As per the statistical report from the Boston Consulting Group, only 15 to 22 per cent of the Data Science-related professional roles are occupied by women. Women in the professional work sectors often get demotivated due to sometimes being subjected to gender bias that leads to lesser pay and little to no growth opportunities. However, despite all odds, quite a few notable women have excelled in this field and have become the role models that the female population needs to look up to. These incredible women have broken barriers and have worked their way to the top of the ladder in this field of Data Science.
Their hard work, drive to survive in a male-dominated industry, as well as their journey to the pinnacle of their success in Data Science, has motivated young women and students all over the world to not shirk away from their passions out of fear, but to take up the challenge and emerge victoriously.
Let us have a look at these amazing women who have paved an easier way for women to pursue this field.
Daphne Koller is a Machine Learning pioneer. She is the founder and CEO of Insitro and trying to bridge the gap between biomedicine and machine learning. At insitro, she aims to address both these challenges and help address an important societal problem: design novel, safe, and effective therapies that help more people, faster, and at a lower cost.
Animashree (Anima) Anandkumar is a Bren professor at the Caltech CMS department and a director of machine learning research at NVIDIA. Her research spans both theoretical and practical aspects of large-scale machine learning. In particular, she has spearheaded research in unsupervised AI, deep learning, optimization and tensor methods. Previously, she was a principal scientist at Amazon Web Service, where she has enabled machine learning on the cloud infrastructure.
Prof. Maria Fasli
Prof. Maria Fasli is the first UNESCO Chair in Data Science and analytics and also the director of the Institute for Analytics and Data Science at the University of Essex. As a female professional in the Data Science field, she emphasises the importance of data for advocating equality and sustainable development.
Emily Glassberg Sands
Emily is the Data Science Head at Coursera. She aims to build a better learning platform by incorporating data-driven products and decisions. She has a PhD from Harvard University in Economics and has received numerous impressive awards and honours from Harvard. She runs her own podcast called DataHack Radio.
Cathy O’Neil is a professor, mathematician, Data Scientist as well as a hedge-fund analyst. She founded ORCAA, which is an algorithmic auditing company and she also wrote the book ‘Weapons of Math Destruction’ and articles in The Guardian, Bloomberg. She is also a TED talk speaker where she addresses the dangers and the challenges faced by big data.
Monica Rogati was the previous VP of Data at Jawbone and a Senior Data Scientist at LinkedIn. She is an independent AI and Data Science advisor now and aims to help companies both strategically and technically benefit the most from their data. She is also working currently at Stanford University as a guest lecturer.
Danai Koutra received the 2020 Association for Computing Machinery’s SIGKDD Rising Star Award. She has been promoted to Associate professor at the University of Michigan and enjoys teaching Computer Science and Engineering. Her research on large-scale data mining about scalable and interpretable methods for multi-network analysis and network summarisation has garnered considerable recognition. She is also an Associate Director for the Michigan Institute for Data Science and an Amazon Scholar.
Kate is the founder of DATAcated and she has been focussing on everything and anything related to Data Visualisation. She has authored 4 books on different topics related to Data Visualisation. So, yes! She is your go-to person when you wish to excel and become a pro on Data Visualisation.
Medb Corcoran is currently leading Accenture Labs in Ireland, where she is responsible for the centre’s artificial intelligence R&D and also for creating new concepts and prototypes with the help of applied R&D projects. She is also a member of the advisory board of the master’s in business analytics in UCD where she helps in shaping the new bachelor’s degree in Data Science at DCU.
Mathangi has 17+ years of proven track record in building world-class data science solutions and products. She has overall 20 patent grants in the area of intuitive customer experience and user profiles. She has recently published a book with Apress, Springer – “Practical Natural Language Processing with Python”. She is currently working as CDO at CredAvenue.
Rachel is a co-founder of fast.ai and a professor of practice at the Queensland University of Technology. She has contributed to the Data Science Industry immensely by developing world-class content and courses on Deep Learning.
Sarah Nooravi is a Senior Data Scientist at Operam. She has garnered quite a big name as a personality in LinkedIn as a person popular for helping people out when it comes to the field of Data Science. Sarah is a regular LinkedIn user where she very often posts content for helping budding Data Scientists and enthusiasts of Data Science on how to make it big in this field. She is a warm and welcoming person who is always available for providing any advice or insights and answer questions.
Sharvari Gujja is the current director of bioinformatics at the advanced artificial intelligence laboratory in Genuity Science. Having been a bioinformatician before, she has worked her way to the top by making significant contributions to numerous high-grade scientific publications, in the research of Cell Stem Cell, Nature Metabolism and many more. She and her team at Genuity Science focus on the application of domain-specific and proprietary AI algorithms for revealing causal dependencies and novel patterns for understanding disease at an advanced biological level.
Naomi Hanlon is a Data Scientist and is currently a Senior Data Scientist at Liberty IT and has a degree in mathematics and bioinformatics. She uses her exceptional analytical thinking and problem-solving skills in working with R for data analysis and visualisation to handle large datasets.
Fei Fei Li
Fei Fei Li is currently working as a professor at Stanford University and teaching computer science. She has co-founded ai4allorg which is a nonprofit educating the next generation of AI technologists, thinkers, and leaders. She has worked with Google formerly and is an inspiration to all Data Science enthusiasts.
Cassie Kozyrkov is currently working as the Chief Decision Scientist at Google and is well-known as a Data Science-related speaker. She has written down and shared her articulate thoughts related to this field. She has a podcast episode on DataHack Radio where she has elaborated on her life in Google and how she achieved her current position from being a Statistician.
Needless to say, women have the power to achieve anything and the aforementioned females who have emerged victorious in the cutthroat field of Data Science are prime examples of this statement. In the professional world of STEM, it is harder for women to survive considering how much of a male-dominated and male-oriented field it is, but most certainly not impossible. These important women leaders in Data Science indeed should be looked up to. Their hard work, determination and success have indeed motivated young students to actually pursue or consider pursuing a career in this field.
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