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A new role in data science: The data science architect


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Rise of the data science architect

I believe there is a new role in data that businesses need to start taking into account, that of the data science architect.

What is a data science architect? It is a mix between a data scientist and a data engineerData science is (according to wikipedia):

Data science is an interdisciplinary field about processes and systems to extract knowledge or insights from data in various forms, either structured or unstructured,[1][2] which is a continuation of some of the data analysis fields such as statisticsmachine learningdata mining, and predictive analytics,[3] similar to Knowledge Discovery in Databases (KDD).

The role of a data engineer is

data engineer is a worker whose primary job responsibilities involve preparing data for analytical or operational uses. The specific tasks handled by data engineers can vary from organization to organization but typically include building data pipelines to pull together information from different source systems; integrating, consolidating and cleansing data; and structuring it for use in individual analytics applications.
As you can see below, data engineers need to have a broad range of technical data skills. Given much of this is based on databases, learning to use SQL and non-SQL databases is a key foundational skill which they can then build on.

 

The data science architect (DSA) sits in between the two. The DSA deals with the design of the data collection, storage and analysis processes, while taking into account time and cost trade-offs and business requirements.

Some example problems are:

1) What variables should be stored?

This is mostly an early stage company problem which I have already discussed in my article about data science strategy.

2) What issues might arise regarding data quality?

Should additional measures be taken in order to ensure that the appropriate data is in place? What these measures can be and at what stage of the architecture (e.g. a data firewall, or filling missing values during the analysis).

3) What are the different options for a database, and which suits the company the best at this and at future stages?

Is it more important to go for a solution that makes storage easy, but it is is more difficult to query, or a relational database might be a better choice?

4) Are there any concerns regarding the choice of a database, programming language, the data being collected and different technologies?

E.g. A particular type of analysis might be easier to do with a library that exists only in R. However, there might not be anyone in the company that can use R, so a second best has to be found in Python. The DSA needs to decide on the best way to adapt and move forward.

data science architect

So, what does a data science architect do?

So, a DSA starts by analysing a company’s needs having the end goal in mind: using data to generate value. From that goal, the DSA designs the architecture and the analytics pipelines while taking into account appropriate time frames, and costs.

The DSA is a more relevant role for startups, since all startups that deal with data will have to make these decisions.

Now someone might argue that the DSA is not so much a separate role as it is a separate function within a data scientists repertoire. I think this could be right, but it is still important to stress out the existence of this function. A data scientist is valuable when the data is already in place. A data engineer does not have the appropriate skills and knowledge to design the architecture in a way that maximises value for the long run. A data science architect enters the scene in the early stage and then paves the way for the other two.

How to set up the right data strategy

What Makes a Data Scientist Successful?

Understanding how to best structure your data strategy, and the roles within an organisation is not an easy task, but a data science architect can be of great a

ssistance. I have written in other articles about the importance of a data strategy and a data-driven culture. Make sure to get in touch if you have any questions!

Do you want to become data scientist?

Do you want to become a data scientist and pursue a lucrative career with a high salary, working from anywhere in the world? I have developed a unique course based on my 10+ years of teaching experience in this area. The course offers the following:

  • Learn all the basics of data science (value $10k+)
  • Get premium mentoring (value at $1k/hour)
  • We apply to jobs for you and we help you land a job, by preparing you for interviews (value at $50k+ per year)
  • We provide a satisfaction guarantee!

If you want to learn more book a call with my team now or get in touch.


Wanna become a data scientist within 3 months, and get a job? Then you need to check this out !