Table of content

How do our Solution Leads create impact with AI?
What does ‘creating impact with AI’ mean?
Bringing the story together

Table of content

Table of content

How do our Solution Leads create impact with AI?
What does ‘creating impact with AI’ mean?
Bringing the story together

How do our Solution Leads create impact with AI?

How do our Solution Leads create impact with AI?

02 Nov 2022

Discover how Superlinear’s AI Solution Leads drive meaningful impact for mission-driven organizations. Learn about their role in using AI as a catalyst for global progress in health, safety, and sustainability.

The main objective at Superlinear is that we want to make impact by helping mission-driven organizations so they can take the next step in their AI journey, and we can support them in accelerating progress in the world. We believe that AI is THE most vital catalyst technology to create a safer, healthier, more fulfilling, and more sustainable world. Just as electricity has automated manual work, AI will be the driver to automate tasks that require some logic or some intelligent perception of your process or your business context.

Now, I hear you thinking already: “Buzzword Bingo! Every services company is saying they want to bring value or want to make an impact”. And you are right, I think so too. But… How many companies have a role specifically designed to ensure that? I don't know many, and I'm happy to say that Superlinear is one of them. Today, I'd like to share how our Artificial Intelligence Solution Leads do that.

What does ‘creating impact with AI’ mean?

Before we go there, it is important to tell you what 'creating impact with AI' means for us. As we see it, there are two big aspects:

First of all, AI has a very big potential. Together with the fact that AI technology is very broad and understanding all possibilities it has is not straightforward, the technology is/has been hyped, and there is a big FOMO around it. Everyone feels the need to try it. We at Superlinear believe that AI should not be used just to use AI or because it is a cool technology (which it is!). We believe impact means that there should be a proper business case around it. An AI project thus should solve one (or more) business goals or challenges you have.

Secondly, once the business case has been verified, doing a Proof-of-Concept or feasibility study without any follow-up will not bring many advantages. Defining when a project is successful, how an end user wants to use it, how it will be integrated, how your team will further maintain or improve it and so on (yes, I could go on for a while more) from the start but also during the project is essential for the AI application to be successful, to know what you are working towards and to ensure the impact is being delivered as efficiently as possible.

Bringing the story together

These two factors are exactly what our Artificial Intelligence Solution Leads bring together! They not only understand what our clients want, but also why they want it and what the return is for what we deliver.

Even more, based on their experience in the AI field, they aim to understand clients' organizations and suggest use cases that allow them to take the next step forward. After that, they make sure AI projects are defined clearly together with our technical experts, all stakeholders are aligned, and they keep the end goal (that brings value!) in mind at all times during the project. And, above all of this, they are also just really amazing people to work with!

Feel like you could be part of this amazing team?

Good news! We are still looking for our next Solution Lead.
Apply now to start creating a real impact with AI.

Author:

Brecht Coghe

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© 2024 Superlinear. All rights reserved.

Locations

Brussels HQ

Central Gate

Cantersteen 47



1000 Brussels

Ghent

Planet Group Arena
Ottergemsesteenweg-Zuid 808 b300
9000 Gent

© 2024 Superlinear. All rights reserved.

Locations

Brussels HQ

Central Gate

Cantersteen 47



1000 Brussels

Ghent

Planet Group Arena
Ottergemsesteenweg-Zuid 808 b300
9000 Gent

© 2024 Superlinear. All rights reserved.