Hey Hackers,

NExTNet Inc. has been nominated in HackerNoon's annual Startup of the Year awards in San Francisco, USA.

Please vote for us here.

Read more about us below to understand why we deserve your vote.

Are you also participating in SOTY 2023? If so, click here to fill out this interview.

Meet NExTNet Inc.

NExTNet is a Venture-backed Silicon Valley-based Enterprise software startup developing Generative AI technologies for mission-critical applications in biotech and pharma. Our mission is to organize and integrate the world's biomedical knowledge and make it accessible. Imagine NExTNet = Oracle x Palantir. Meet our team here.

My Role

In late 2017, I founded Mekonos, a fast-growing biotechnology platform company developing ground-breaking silicon chip technologies to accelerate the development of personalized medicine. Imagine Nvidia for biotech. I founded NExTNet in late 2020 frustrated by the extremely high technical barrier to accessing the scattered knowledge buried within mountains of multi-modal and disparate biomedical data and information. Our goal is to democratize access to the world's biomedical knowledge to accelerate drug discovery and development. There are more than 23,500 diseases known to mankind, of which ~3% have some form of cure or treatment.

How We're Disrupting the ‘Intersection of AI and Biomedical Industry

Roughly 95% of the world’s data have been generated in the last 5-10 years. The emergence of high-resolution, multi-modal biomedical data (10s of millions of scientific publications, patents, grants, sequencing data, gene and protein expression, drug compounds, biochemical pathways, diseases, imaging, etc.) at scale has resulted in an enormous amount of human knowledge scattered across data silos. Querying all that knowledge has become remarkably complex.

At NExTNet, we use our proprietary Large Language Models stack to mine for associations between scientific content in text (e.g., published literature, clinical trial record, patents) and other public and proprietary databases (gene sequencing, protein expression, diseases, pathways, pathogens, drugs, imaging...) and semantically link them into the world's fastest-growing scientific semantic web. The technical barrier to query and access such scattered knowledge is scarily high: an average researcher would need to have extensive knowledge of the command-line interface by mastering myriads of R libraries, learning a whole suite of Python packages or architecting complex queries using languages such as SQL, SPARQL, etc.

NExTNet's cloud-native platform allows these researchers and scientists to ask and answer complex questions in simple natural language without having to master coding, querying languages, or arcane statistics. Our commercial and technological breakthrough is enabling scientists to identify patterns hidden deep within disparate and multi-modal datasets, ranging from scientific papers and clinical trial reports to gene sequencing and protein expression atlases -- so that they can quickly find leads buried in mountains of information via our Graphical User Interface (GUI). We are disrupting the intersection of Language and Generative Artificial Intelligence and the Biomedical industry.

Standing Out from The Crowd

Knowledge discovery for life sciences R&D is an embryonically developing market. The key problem in biomedicine today:

At NExTNet, our 10x value increase over competitors is our state-of-the-art Generative AI pipeline not only reads 10s of millions of scientific text (full-length peer-reviewed publications, abstracts, patents, grants etc.) but also analyzes a massive corpus of molecular databases (genes, proteins, and pathways) and mines for hidden associations and patterns across these disparate data (public domain and proprietary). Our competitors are just limited to text mining without expanding into other modalities of data.


Our Predictions/Thoughts on the Drug Discovery and Development/ Biomedical Research Industry in 2023

What word defines the state of the ‘intersection of AI and Biomedical Industry’ in 2023?

Language AI

Why we decided to participate in HackerNoon's Startup of the Year awards

We got invited! :)

Final Thoughts

Biomedical knowledge is immense and growing quickly. The publicly available knowledge is disconnected - it is impossible to identify patterns/associations hidden deep within such disconnected knowledge. A company's internal knowledge is disconnected from it too. This presents a significant challenge for scientists in the biomedical industry because they:

At NExTNet, we are building the best-in-class Generative/Language AI stack to enable scientists to identify patterns hidden deep within disparate and multi-modal datasets, ranging from scientific papers and clinical trial reports to gene sequencing and protein expression atlases -- so that they can quickly find leads buried in mountains of information.

Start your biomedical knowledge discovery journey by signing up for free right here.