Build Successful Data Strategy: 5 Mistakes To Avoid

Elfao
4 min readJul 16, 2022
Photo by Mark Fletcher-Brown on Unsplash

I worked for different companies for my last 5 years as a Data Scientist and I saw data science project fail and other success.
Here I will explain the reasons why promising projects never saw the light of day in production and how we can avoid this kind of failure.

I. Having the wrong guy as Manager & Tech lead

I saw that a lot of times. Having a data manager or a data tech-lead who have proven their skills on others fields like developments is the big mistake because:

  • He don’t understand machine learning
    He don’t understand how machine learning works and when the company will introduce him a new need that the team should resolve he can’t say if it’s doable or not and he will bequeath this responsibility to his team. They will have to assist to different meets to understand the need and explains the best way to do it. This will create a feeling of doing more than their scope and it is which leads to a feeling of misunderstanding.
    Furthermore, he will not be capable to make decision when the team member does not agree on a technical choice.
  • He never deploys a machine learning model
    This emplies that he doesn’t know how the team should interact with the whole chain:
    - What is the role of data scientist
    - What is the role of…

--

--

Elfao

Data scientist with 4 years experience. I worked in different field like Marketing digital, Consulting and currently I work for a start-up in finance.