


When I first started leading a data science team, my first thought was to review the roadmap with the team and come up with a revised roadmap for the team and the company in matters related to data science.
However, as I started interfacing with the team members of the data science team, one thing that came up repeatedly was that despite shipping some ‘good’ machine learning models, the adoption of those models among business stakeholder teams was almost zero. As per the team, there was just no enthusiasm for any machine learning models. In the last year alone, the team developed a propensity model, booking projection curve, demand forecasting, etc.
This situation is quite common in many companies. Data science teams come up with models and deploy them, only to find a tepid response from the corresponding business teams. In this article, I will review my findings of what leads to low adoption and how we can change so that we increase adoption among business stakeholder teams.
Back to my story —Being from growth product management, understanding friction in product adoption has been my favorite problem to solve. In fact, the mental models that I used to solve growth problems, have been my go-to models to solve some ‘wicked’ problems in life. The adoption of data science models by internal stakeholders seemed like a great problem to tackle. All I needed was to treat the business stakeholders as the users of our product and the model that the team was developing as the product features. It proved to be significantly more difficult than I thought but an interesting experience nevertheless.
The first task that I took was to do a qualitative study and understand the friction behind the adoption. To gain a deeper understanding, the team and I did interviews with all business stakeholders and their team members. What I learned from the exercise can be summarized below:
Most of these findings are true for other companies as well, which is why it is not surprising that most data science projects fail to see the light.
With all these insights, the team started working on identifying possible solutions. It all boiled down to these steps that each data science team can adopt to increase alignment of stakeholders:
My team and I are on a learning journey every single day through this challenge but the more I understand the more fascinating this problem space looks. Do reach out to me on Linkedin and let me know how you solved the adoption problem in your company.
Read our other articles on Product Leadership, Product Growth, Pricing & Monetization strategy, and AI/ML here.
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So, we put together a few photography portfolio websites that you can use yourself — whether you want to keep them the way they are or completely customize them to your liking.
Here are 12 photography portfolio templates you can use with Webflow to create your own personal platform for showing off your work.
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When I first started leading a data science team, my first thought was to review the roadmap with the team and come up with a revised roadmap for the team and the company in matters related to data science.
However, as I started interfacing with the team members of the data science team, one thing that came up repeatedly was that despite shipping some ‘good’ machine learning models, the adoption of those models among business stakeholder teams was almost zero. As per the team, there was just no enthusiasm for any machine learning models. In the last year alone, the team developed a propensity model, booking projection curve, demand forecasting, etc.
This situation is quite common in many companies. Data science teams come up with models and deploy them, only to find a tepid response from the corresponding business teams. In this article, I will review my findings of what leads to low adoption and how we can change so that we increase adoption among business stakeholder teams.
Back to my story —Being from growth product management, understanding friction in product adoption has been my favorite problem to solve. In fact, the mental models that I used to solve growth problems, have been my go-to models to solve some ‘wicked’ problems in life. The adoption of data science models by internal stakeholders seemed like a great problem to tackle. All I needed was to treat the business stakeholders as the users of our product and the model that the team was developing as the product features. It proved to be significantly more difficult than I thought but an interesting experience nevertheless.
The first task that I took was to do a qualitative study and understand the friction behind the adoption. To gain a deeper understanding, the team and I did interviews with all business stakeholders and their team members. What I learned from the exercise can be summarized below:
Most of these findings are true for other companies as well, which is why it is not surprising that most data science projects fail to see the light.
With all these insights, the team started working on identifying possible solutions. It all boiled down to these steps that each data science team can adopt to increase alignment of stakeholders:
My team and I are on a learning journey every single day through this challenge but the more I understand the more fascinating this problem space looks. Do reach out to me on Linkedin and let me know how you solved the adoption problem in your company.
Read our other articles on Product Leadership, Product Growth, Pricing & Monetization strategy, and AI/ML here.