Our AI Impact

 for the health of people

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 Our AI Impact

 for the health of planet

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 Our AI Impact

 for the health of business

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FOR THE HEALTH OF PEOPLE: EQUITY
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“The work [with Synaptiq] is unprecedented in its scale and potential impact,” Mortenson Center’s Managing Director Laura MacDonald MacDonald said. “It ties together our center’s strengths in impact evaluation and sensor deployment to generate evidence that informs development tools, policy, and practice.” 
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    ⇲ Implement & Scale
    DATA STRATEGY
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    A startup in digital health trained a risk model to open up a robust, precise, and scalable processing pipeline so providers could move faster, and patients could move with confidence after spinal surgery. 
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      PREDICTIVE ANALYTICS
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      Thwart errors, relieve in-take form exhaustion, and build a more accurate data picture for patients in chronic pain? Those who prefer the natural albeit comprehensive path to health and wellness said: sign me up. 
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        MACHINE VISION
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        Using a dynamic machine vision solution for detecting plaques in the carotid artery and providing care teams with rapid answers, saves lives with early disease detection and monitoring. 
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          INTELLIGENT AUTOMATION
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          This global law firm needed to be fast, adaptive, and provide unrivaled client service under pressure, intelligent automation did just that plus it made time for what matters most: meaningful human interactions. 
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            Mushrooms, Goats, and Machine Learning: What do they all have in common? You may never know unless you get started exploring the fundamentals of Machine Learning with Dr. Tim Oates, Synaptiq's Chief Data Scientist. You can read and visualize his new book in Python, tinker with inputs, and practice machine learning techniques for free. 

            Start Chapter 1 Now ⇢ 

             

              How Should My Company Prioritize AIQ™ Capabilities?

               

                 

                 

                 

                Start With Your AIQ Score

                  6 min read

                  Top 5 Tips for a Successful AI Engagement

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                  The stakes are high: how to ensure impactful results for your business

                   

                  Over the years, we have worked with more than 50 clients in 20-plus sectors worldwide, ranging from construction to law to healthcare, and more. Some companies are pre-internet businesses that have been in existence practically since America was founded; others are hot new startups with tech-savvy young entrepreneurs. 

                  But the common theme is that our clients are eager to leverage the latest AI technology to make people’s lives better – whether it is by speeding up immigration law processing documents, ensuring health and safety on construction sites, or catching concerns early on ultrasounds that the human eye might otherwise miss – our clients want to make a big impact. They also feel like the stakes are high, and they have a significant amount of pressure on them – internally and externally – to succeed. 

                  Here, we have compiled our time-tested “Top 5” must-haves for a successful AI engagement with a service provider.

                   

                  1. Establish a Real Partnership

                  Our most successful engagements are when we have a real partnership with our clients. We have seen again and again that when clients see us as a trusted thought partner and advisor, they are able to share ideas, concerns, and criticism. They are able to be open and creative with us, while providing us with prepared data before and during our engagement to feed the models or platforms we build for them. With these clients, they are more like partners, and we are talking to them on a more strategic level about digitizing their respective companies. 

                   

                  2. Know what your team can do

                  Many clients are very experienced technology-wise, and others are not technologists at all. Having a very clear and honest understanding of your team’s internal technical capabilities is key. Typically, your team brings the domain and application experience, and we bring the data engineering and AI expertise. Give your trusted services provider partner the freedom to do what they do best.

                   

                  3. Be Able to Hear “Bad News”

                  Sometimes during the engagement, the project will hit a snag with data that is unexpected – perhaps the amount and quality of client data is not sufficient to build the solution we want. It’s never fun delivering this type of news. And, sometimes we don’t “see” the problem until we are deep into the data of the organization. But as your trusted partner, we will move mountains to solve the root problem, get you back on track, and get you to where you need to be. And what we need from you, our client, is hearing us, being ok with bad news, and working with us to put our heads together to find solutions quickly.

                   

                  4. Assemble a Great Internal Team

                  Who you assign to this project – and especially who is managing your service provider relationship – is one of the most important decisions you will make. From an organizational perspective, you need someone to serve as Project Manager, but this does not necessarily need to be a full-time role. It should be someone who is strong at communicating internally and externally, coordinating schedules, and is collaborative about addressing any issues that may arise. 

                  Another key person for this team is someone who really knows your technology architecture, where data lives in it, and how best to access it. This technical person may be a liaison to a larger technical team that is at the appropriate level to be able to make decisions, but also able to bring decisions back to the larger team, to make sure we are in line with their expectations. The third “must have” player on this team is a subject matter expert; they may not be very technical, but they are deeply embedded in the business of the organization: they understand the business model, business processes, and all the domain terminology and underpinnings to work closely with us and guide us as we dig deep into the data.

                  Finally, this team should include the sponsor of the project. This is someone who is on (or just below) the executive team. This person is an evangelist for the project, communicating regularly on the trials and tribulations of the effort. Part of this role is to over-communicate and educate the executive team on what projects like this really take to succeed. There should be real-time communication with the service provider (via Slack or Microsoft Teams for example), but also plugging in updates on this project to regular internal standing meetings is recommended. Of course, much of this depends on the internal culture of the company, but ideally, this individual should want to bring the rest of the company along in this journey, in a balanced way.

                   

                  5. Understand AI is a Science Experiment

                  At the end of the day, it is important to remind yourself and each other that these types of engagements are science experiments. So much is “unknown” at the outset – but if goals are achieved, the results can have huge potential impact. This is where the “art and science” of where business strategy and artificial intelligence come into play – and much of it involves ensuring that the science “experiment” itself is set up correctly in the first place: the more the client can share examples of their data earlier, the more we can stress-test to ensure the viability, and the higher the chance that we can prove their hypothesis is correct. 

                  The Scientific method is defined as “an empirical method of acquiring knowledge that has characterized the development of science for centuries.” It involves observation, applying rigorous skepticism about what is observed. It also involves formulating hypotheses based on such observations, experimental and measurement-based testing of deductions drawn from the hypotheses, and refinement of the hypotheses based on the experimental findings. 

                  Internally, the AI project should be positioned as something that you will learn from now, and for the future. Sometimes “success” is knowing that this type of approach will not work with your organization’s data, and you need to find another approach. The learning process itself – specifically, whether we are able to prove the hypothesis or not – is enormously valuable, as your team will gain the experience in AI to take advantage of it in the future.

                   

                  Conclusion

                  If all of these “tips for success” could be condensed into just one word it would be communication. The relationship between a service provider and client is built on trust, and that, as they say, is a two-way street. Frequently we try to look at as much data as possible during the sales process to mitigate the stress of any potential surprises down the road but this is not always possible. The “Proof of Concept” engagements that begin with data strategy frequently help set us on the right course so expectations are clear on both sides. It’s not always a “sure thing” but we walk into the engagement feeling strong about our understanding of the state of the organization and its data. 

                  From a technical perspective, before we begin any project, we share a “delivery checklist” with our clients, which includes specific questions about the following: business problem to solve, POC vs production model and audience, training data, live data, computing environment, acceptance criteria, and timelines. One critical issue that frequently surfaces in this questionnaire is that the training data available is not representative of the data the client is actually going to use in a live system. Addressing this – and fixing this early on – will save a lot of time and pain. So, as you are building your all-star internal team, make sure you have the right people thinking about your company data – even as early as during the vendor selection process!

                  We wish you the best of luck in your engagement, and hopefully, you have found these tips for success helpful as you begin your journey.

                   

                  How Synaptiq Can Help

                  Synaptiq focuses on the humankind of AI; building a better world as we lean into an age of human and machine interaction. We believe solving serious challenges, making real impact and saving lives is worth every waking moment. So we collaborate and make thoughtful considerations across disciplines examining past, present and future models of merit. Whether history, science, math, nature, human behavior; they all inform the data and ideas that help us find answers to world-class riddles.

                  We keep our AI on people because AI is how we do it, humanity is why we do it.

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