Close the gap between scientific exploration and market evaluation
Unlock efficiency in supplementation development.
Our tool streamlines the research process by bridging the gap between scientific discovery and market-readiness assessment.
Streamline your product development
-
Streamline scientific research and market-readiness assessment with the data you need to propel your new supplementation initiatives from idea to execution.
-
Get concise, data-based, and trustworthy insights, ensuring your decisions are well-informed at every step
-
Experience a seamless workflow, by eliminating process fragmentation, eradicating delays, and optimising your product strategy
What we offer
Scientific information evaluation
Market-readiness assessment
Our tool processes and evaluates scientific literature, claims, research, and other similar information sources to help you extract valuable insights.
Our tool also helps you evaluate market-readiness and adoption by analysing things such as market trends, popularity, and media sentiment.
Streamlined
process
The whole process is streamlined and simplified, helping your R&D, marketing, sales, and other teams collaborate efficiently.
Adaptable to diverse cases
Seamlessly integrate our tool into your setup, whether you're part of a larger organisation with established R&D, marketing, and sales teams, or a smaller business, lacking diverse structure.
What we know is important
Our tool can help your team shorten the research phase of your development process by up to 30%, bringing down the cost, streamlining your workflow, and reducing project overhead.
Development time
A typical development process for nutraceuticals usually spans between 12 to 24 months from concept to market launch.
Cost
The average cost of bringing a new dietary ingredient to market in the U.S. ranges from $1.3 million to $4.7 million.
Regulatory compliance
The cost for submitting a new dietary ingredient notification to the FDA can range from $100,000 to $500,000, including preparation, submission, and supporting data generation.