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Founded Year

2021

Stage

Seed VC | Alive

Total Raised

$8M

Last Raised

$8M | 2 yrs ago

Mosaic Score
The Mosaic Score is an algorithm that measures the overall financial health and market potential of private companies.

-109 points in the past 30 days

About One AI

One AI is a company that specializes in generative artificial intelligence (AI) within the technology sector. The company offers services such as language analytics, customizable AI skills, and the processing of text, audio, and video data into structured, actionable insights. It primarily serves sectors such as customer service, e-commerce, media, healthcare, and government. It was founded in 2021 and is based in Ramat Gan, Israel.

Headquarters Location

Ramat Gan,

Israel

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ESPs containing One AI

The ESP matrix leverages data and analyst insight to identify and rank leading companies in a given technology landscape.

EXECUTION STRENGTH ➡MARKET STRENGTH ➡LEADERHIGHFLIEROUTPERFORMERCHALLENGER
Enterprise Tech / HR Tech

The employee support AI agents & copilots market consists of companies providing an internal, employee-facing interface to retrieve information using natural language cues. AI employee support platforms answer human resources (HR) questions related to topics like employee benefits or workforce policies. These platforms can also address internal inquiries around workflow, locating documents and inf…

One AI named as Challenger among 9 other companies, including Zendesk, Moveworks, and Darwinbox.

One AI's Products & Differentiators

    Language Skills

    Language Skills are use-case ready, vertically pre-trained models, packaged in an API. The API accepts text and required language processing as input, and responds with processed text and extracted metadata as output.

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Expert Collections containing One AI

Expert Collections are analyst-curated lists that highlight the companies you need to know in the most important technology spaces.

One AI is included in 1 Expert Collection, including Artificial Intelligence.

A

Artificial Intelligence

15,091 items

Companies developing artificial intelligence solutions, including cross-industry applications, industry-specific products, and AI infrastructure solutions.

One AI Patents

One AI has filed 2 patents.

The 3 most popular patent topics include:

  • artificial intelligence applications
  • computational linguistics
  • natural language processing
patents chart

Application Date

Grant Date

Title

Related Topics

Status

8/28/2022

1/17/2023

Natural language processing, Computational linguistics, Tasks of natural language processing, Artificial intelligence applications, Cache coherency

Grant

Application Date

8/28/2022

Grant Date

1/17/2023

Title

Related Topics

Natural language processing, Computational linguistics, Tasks of natural language processing, Artificial intelligence applications, Cache coherency

Status

Grant

Latest One AI News

One AI Model to Rule All Robots

Sep 19, 2024

The software used to control a robot is normally highly adapted to its specific physical set up. But now researchers have created a single general-purpose robotic control policy that can operate robotic arms, wheeled robots, quadrupeds, and even drones. One of the biggest challenges when it comes to applying machine learning to robotics is the paucity of data. While computer vision and natural language processing can piggyback off the vast quantities of image and text data found on the Internet, collecting robot data is costly and time-consuming. To get around this, there have been growing efforts to pool data collected by different groups on different kinds of robots, including the Open X-Embodiment and DROID datasets. The hope is that training on diverse robotics data will lead to “positive transfer,” which refers to when skills learned from training on one task help to boost performance on another. The problem is that robots often have very different embodiments—a term used to describe their physical layout and suite of sensors and actuators—so the data they collect can vary significantly. For instance, a robotic arm might be static, have a complex arrangement of joints and fingers, and collect video from a camera on its wrist. In contrast, a quadruped robot is regularly on the move and relies on force feedback from its legs to maneuver. The kinds of tasks and actions these machines are trained to carry out are also diverse: The arm may pick and place objects, while the quadruped needs keen navigation. That makes training a single AI model on these large collections of data challenging, says Homer Walke , a Ph.D. student at the University of California, Berkeley. So far, most attempts have either focused on data from a narrower selection of similar robots or researchers have manually tweaked data to make observations from different robots more similar. But in research to be presented at the Conference on Robot Learning (CoRL) in Munich in November, they unveiled a new model called CrossFormer that can train on data from a diverse set of robots and control them just as well as specialized control policies. “We want to be able to train on all of this data to get the most capable robot,” says Walke. “The main advance in this paper is working out what kind of architecture works the best for accommodating all these varying inputs and outputs.” How to control diverse robots with the same AI model The team used the same model architecture that powers large language model, known as a transformer . In many ways, the challenge the researchers were trying to solve is not dissimilar to that facing a chatbot , says Walke. In language modeling, the AI has to to pick out similar patterns in sentences with different lengths and word orders. Robot data can also be arranged in a sequence much like a written sentence, but depending on the particular embodiment, observations and actions vary in length and order too. “Words might appear in different locations in a sentence, but they still mean the same thing,” says Walke. “In our task, an observation image might appear in different locations in the sequence, but it’s still fundamentally an image and we still want to treat it like an image.” Most machine learning approaches work through a sequence one element at a time, but transformers can process the entire stream of data at once. This allows them to analyze the relationship between different elements and makes them better at handling sequences that are not standardized, much like the diverse data found in large robotics datasets. Walke and his colleagues aren’t the first to train transformers on large-scale robotics data. But previous approaches have either trained solely on data from robotic arms with broadly similar embodiments or manually converted input data to a common format to make it easier to process. In contrast, CrossFormer can process images from cameras positioned above a robot, at head height or on a robotic arms wrist, as well as joint position data from both quadrupeds and robotic arms, without any tweaks. The result is a single control policy that can operate single robotic arms, pairs of robotic arms, quadrupeds, and wheeled robots on tasks as varied as picking and placing objects, cutting sushi, and obstacle avoidance. Crucially, it matched the performance of specialized models tailored for each robot and outperformed previous approaches trained on diverse robotic data. The team even tested whether the model could control an embodiment not included in the dataset—a small quadcopter. While they simplified things by making the drone fly at a fixed altitude, CrossFormer still outperformed the previous best method. “That was definitely pretty cool,” says Ria Doshi , an undergraduate student at Berkeley. “I think that as we scale up our policy to be able to train on even larger sets of diverse data, it’ll become easier to see this kind of zero shot transfer onto robots that have been completely unseen in the training.” The limitations of one AI model for all robots The team admits there’s still work to do, however. The model is too big for any of the robots’ embedded chips and instead has to be run from a server. Even then, processing times are only just fast enough to support real-time operation, and Walke admits that could break down if they scale up the model. “When you pack so much data into a model it has to be very big and that means running it for real-time control becomes difficult.” One potential workaround would be to use an approach called distillation, says Oier Mees , a postdoctoral research at Berkley and part of the CrossFormer team. This essentially involves training a smaller model to mimic the larger model, and if successful can result in similar performance for a much smaller computational budget. But of more importance than the computing resource problem is that the team failed to see any positive transfer in their experiments, as CrossFormer simply matched previous performance rather than exceeding it. Walke thinks progress in computer vision and natural language processing suggests that training on more data could be the key. Others say it might not be that simple. Jeannette Bohg , a professor of robotics at Stanford University, says the ability to train on such a diverse dataset is a significant contribution. But she wonders whether part of the reason why the researchers didn’t see positive transfer is their insistence on not aligning the input data. Previous research that trained on robots with similar observation and action data has shown evidence of such cross-overs. “By getting rid of this alignment, they may have also gotten rid of this significant positive transfer that we’ve seen in other work,” Bohg says. It’s also not clear if the approach will boost performance on tasks specific to particular embodiments or robotic applications, says Ram Ramamoorthy , a robotics professor at Edinburgh University. The work is a promising step towards helping robots capture concepts common to most robots, like “avoid this obstacle,” he says. But it may be less useful for tackling control problems specific to a particular robot, such as how to knead dough or navigate a forest, which are often the hardest to solve.

One AI Frequently Asked Questions (FAQ)

  • When was One AI founded?

    One AI was founded in 2021.

  • Where is One AI's headquarters?

    One AI's headquarters is located at Ramat Gan.

  • What is One AI's latest funding round?

    One AI's latest funding round is Seed VC.

  • How much did One AI raise?

    One AI raised a total of $8M.

  • Who are the investors of One AI?

    Investors of One AI include TechAviv, Tomer Wiengarten and Ariel Maislos.

  • Who are One AI's competitors?

    Competitors of One AI include Anthropic, Cohere, OpenAI, AI21 Labs, Aleph Alpha and 7 more.

  • What products does One AI offer?

    One AI's products include Language Skills and 2 more.

  • Who are One AI's customers?

    Customers of One AI include daily dev.

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Compare One AI to Competitors

Cohere Logo
Cohere

Cohere operates as a natural language processing (NLP) company. It offers services that enable businesses to integrate artificial intelligence (AI) into products, with capabilities such as generating text for product descriptions, blog posts, and articles, understanding the meaning of text for search and content moderation, and creating summaries of text and documents. It primarily serves the enterprise sector, providing AI solutions that can be customized to suit various use cases, domains, or industries. It was founded in 2019 and is based in Toronto, Canada.

AI21 Labs Logo
AI21 Labs

AI21 Labs operates as an artificial intelligence (AI) lab and product company. The company offers a range of AI-powered tools, including a writing companion tool to assist users in rephrasing their writing, and an AI reader that summarizes long documents. It also provides language models for developers to create AI-powered applications. It was founded in 2017 and is based in Tel Aviv-Yafo, Israel.

Hugging Face Logo
Hugging Face

Hugging Face focuses on advancing artificial intelligence through collaboration in the technology sector. It provides a platform for machine learning professionals to build, share, and collaborate on models, datasets, and applications. The company offers solutions that cater to various modalities, including text, image, video, audio, and 3D, as well as enterprise-grade services for teams requiring advanced AI tooling with enhanced security and support. It was founded in 2016 and is based in Paris, France.

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01.AI

01.AI provides open-source AI models and applications that support human productivity. Its offerings include open-source and proprietary language models capable of processing text in multiple languages, with a particular emphasis on English and Chinese. 01.AI primarily serves the technology and platform development sectors with a vision of integrating AI. The company was founded in 2023 and is based in Haidian, China.

deepset Logo
deepset

deepset specializes in natural language processing (NLP) and artificial intelligence (AI), providing solutions for enterprise AI teams. The company offers deepset Cloud, an LLM platform that enables the design, deployment, and monitoring of AI applications, and Haystack, an open-source NLP framework for building applications with LLMs. deepset primarily serves sectors such as finance, legal, insurance, and online media. It was founded in 2018 and is based in Berlin, Germany.

Anthropic Logo
Anthropic

Anthropic is an AI safety and research company that specializes in developing advanced AI systems. The company's main offerings include AI research and products that prioritize safety, with a focus on creating conversational AI assistants for enterprise use. Anthropic primarily serves sectors that require reliable and interpretable AI technology. It was founded in 2021 and is based in San Francisco, California.

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