
Nnaisense
Founded Year
2014Stage
Unattributed VC | AliveMosaic Score The Mosaic Score is an algorithm that measures the overall financial health and market potential of private companies.
+60 points in the past 30 days
About Nnaisense
Nnaisense operates as an artificial general intelligence (AGI) and deep learning start-up aiming to build large-scale neural network solutions. It leverages deep learning analytics to detect anomalies in sensor data and enables rapid corrective action for quality control and offers predictive models to enable simulation-based learning of control strategies. The company was founded in 2014 and is based in Lugano, Switzerland.
Nnaisense's Products & Differentiators
nnSPECT
Industrial inspection as a service
Research containing Nnaisense
Get data-driven expert analysis from the CB Insights Intelligence Unit.
CB Insights Intelligence Analysts have mentioned Nnaisense in 1 CB Insights research brief, most recently on Jun 23, 2021.
Expert Collections containing Nnaisense
Expert Collections are analyst-curated lists that highlight the companies you need to know in the most important technology spaces.
Nnaisense is included in 2 Expert Collections, including Artificial Intelligence.
Artificial Intelligence
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Companies developing artificial intelligence solutions, including cross-industry applications, industry-specific products, and AI infrastructure solutions.
AI 100
100 items
The winners of the 4th annual CB Insights AI 100.
Nnaisense Patents
Nnaisense has filed 5 patents.
The 3 most popular patent topics include:
- Artificial intelligence
- Artificial neural networks
- Classification algorithms

Application Date | Grant Date | Title | Related Topics | Status |
---|---|---|---|---|
5/1/2017 | 4/20/2021 | Artificial neural networks, Computational neuroscience, Machine learning, Artificial intelligence, Classification algorithms | Grant |
Application Date | 5/1/2017 |
---|---|
Grant Date | 4/20/2021 |
Title | |
Related Topics | Artificial neural networks, Computational neuroscience, Machine learning, Artificial intelligence, Classification algorithms |
Status | Grant |
Latest Nnaisense News
Aug 18, 2023
In a new paper Bayesian Flow Networks, the NNAISENSE research team presents Bayesian Flow Networks (BFNs), a novel family of generative model manipulates parameters of the data distribution rather than operating on noisy data, which provides an effective solution to deal with discrete data. Large-scale neural networks have revolutionized generative models by granting them an unprecedented ability to capture complex relationships among varies variables. Among this model family, diffusion models stand out as a power approach for image generation. Nevertheless, when dealing with discrete data, diffusion models still fall short of the performance achieved by autoregressive models. Alex Graves, a renowned researcher in the field of machine learning, the creator of Neural Turing Machines (NTM), and one of the pioneers behind differentiable neural computers, published a new paper Bayesian Flow Networks as the lead author. In the paper, the research team presents Bayesian Flow Networks (BFNs), a novel family of generative model manipulates parameters of the data distribution rather than operating on noisy data, which provides an effective solution to deal with discrete data. BFNs can be summarized as a transmission scheme. At each transmission step, the distribution parameters (e.g. the mean of a normal distribution, the probabilities of a categorical distribution) are fed into the neural network as inputs, then the network outputs the parameters of a second distribution, which is referred as the “output distribution”. Next, a “sender distribution” is created by adding noise to the data. Finally, a “receiver distribution” is generated by convolving the output distribution with the same noise distribution in the ‘sender distribution’. Intuitively, the sender distribution is created to be used if the value was correct. If it is being used, all the hypothetical sender distributions will be summed over and being weighted by the probability of the corresponding value under the output distribution. And a sample from the sender distribution will be selected to update input distribution conditioned on the rules of Bayesian inference. After the Bayesian update is complete, the parameters of the input distribution will be again fed into the network to return the parameters of the output distribution. As a result, the generative process of the proposed Bayesian flow networks is fully continuous and differentiable as the network operates on the parameters of a data distribution rather directly on the noisy data, therefore it is also applicable for discrete data. In their empirical study, the researchers show that BFNs surpasses all known powerful discrete diffusion models on the text8 character-level language modelling task. The team hopes their work will inspire fresh perspectives and encourage more research on generative models. The paper Bayesian Flow Networks on arXiv . Author: Hecate He | Editor: Chain Zhang We know you don’t want to miss any news or research breakthroughs. Subscribe to our popular newsletter Synced Global AI Weekly to get weekly AI updates. Share this:
Nnaisense Frequently Asked Questions (FAQ)
When was Nnaisense founded?
Nnaisense was founded in 2014.
Where is Nnaisense's headquarters?
Nnaisense's headquarters is located at Piazza Molino Nuovo 17, Lugano.
What is Nnaisense's latest funding round?
Nnaisense's latest funding round is Unattributed VC.
Who are the investors of Nnaisense?
Investors of Nnaisense include Trumpf Venture, Schott, Mundi Ventures, Samsung Ventures, Repsol Energy Ventures and 4 more.
Who are Nnaisense's competitors?
Competitors of Nnaisense include Landing AI and 4 more.
What products does Nnaisense offer?
Nnaisense's products include nnSPECT and 2 more.
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