Archive for the ‘Artificial Intelligence’ Category

Mintlify Uses Artificial Intelligence To Address Software Documentation Challenges, Raises $2.8 Million – Tech Times

Mintlify, which automates software documentation tasks announced that it raised $2.8 million in a seed round led by Bain Capital Ventures. The startup developing software's CEO Han Wang said that the proceeds will go to product development and double their staff. Currently, Mintlify is a three-person team.

The New York-based software company was founded in 2021 by Han Wang and Hahnbee Lee. Both are software engineers and their profession drove them to build Mintlify.

Both Wang and Lee's experiences in software development involved working with documentation that wasn't always high quality or complete.

"We've worked as software engineers at companies in all stages ranging from startups to big tech and found that they all suffer from bad documentation if it even existed at all," Wang said.

He also added that documentation is crucial to engineers and those that are working on new codebases.

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With that, Mintlify is established to address documentation challenges with auto-generating documentation. The software reads code and creates docs to explain it using technologies, such as Natural Language Processing (NLP) and web scraping.

This only shows that generating documentation from code is possible with the help of Artificial Intelligence (AI).

However, Mintlify isn't the first one to do this. In fact, the software company already has a few competitors that are taking similar approaches.

Still, Wang assures that their software delivers higher-quality results and they don't force developers to host documentation on a cloud service.

"Mintlify's mission is to solve documentation rot by developing continuous documentation into a standard practice for software teams," Wang said.

Aside from document generation, the software also scans for stale documentation and detects how users engage with the documentation. These help improve its readability. The software that will not store code and ensures all user data at rest and in transit are encrypted.

The platform is free for developers and can be integrated with existing systems.

Since its launch in January, Mintlify continues to grow with 6,000 active accounts. With this, they are looking to offering a premium that is aimed at enterprise customers.

It has also received good feedback from developers and people who have texted the software. For many, it saves a lot of time and keystrokes from writing docstrings from scratch and it would be useful for reading and understanding undocumented code by ghosts.

They also noted that the global pandemic's impact on the work environment has even made it more important to have high-quality documentation for more efficient product development. And this is exactly what Mintlify is doing as they expand into workflow automation that addresses documentation challenges.

Related article:Top 5 Best Bot Platforms Software for Better Customer Support

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Written by April Fowell

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Mintlify Uses Artificial Intelligence To Address Software Documentation Challenges, Raises $2.8 Million - Tech Times

Lessons from Europe: Deployment of Artificial Intelligence in the Public Sphere – Wilson Center

The application of AI has been largely a private sector phenomenon. The public sector has advanced regulatory questions, especially in Europe, but struggled to find its own role in how to use AI to improve society and well-being of its citizens. The Wilson Center invites you to take a critical look at the use of AI in public service, examining the societal implications across sectors: environmental sustainability, finance, and health. Where are the biases in the design, data, and application of AI and what is needed to ensure its ethical use? How can governments utilize AI to create more equitable societies? How can AI be used by governments to engage citizens and better meet societal needs? The webinar aims to engage in a dialogue between research and policy, inviting perspectives from Finland and the United States.

This webinar has been organized in coordination with the Finnish-American Research & Innovation Accelerator.

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Lessons from Europe: Deployment of Artificial Intelligence in the Public Sphere - Wilson Center

Median Technologies Launches Imaging Lab, Spearheading the Integration of iBiopsy Artificial Intelligence Technologies Into iCRO Imaging Services for…

SOPHIA ANTIPOLIS, France--(BUSINESS WIRE)--Regulatory News:

Median Technologies (Paris:ALMDT) announces that the company is expanding its portfolio of services with Imaging Lab, a new entity whose mission is to leverage AI, data mining, and radiomics technologies to exploit imaging data from clinical trials in oncology.

The creation of Imaging Lab materializes the convergence of iCRO's activities for image management in the development of new oncologic drugs and iBiopsy's activities for the development of software as medical device targeting early diagnosis of cancers, especially lung cancer.

"We are seeing a paradigm shift of pharmaceutical companies towards new drug candidates targeting patients with early-stage cancers," said Fredrik Brag, CEO and founder of Median Technologies. "The synergy between our iCRO and iBiopsy businesses is perfect to respond to this change: iBiopsy develops software as medical device, integrating AI technologies, which allow the diagnosis of diseases at a very early stage, when patients are still asymptomatic. At the same time, iCRO has extensive knowledge of image processing and its management in clinical trials. The cross-fertilization of our two businesses will enable us to leverage imaging data in conjunction with other clinical information in an unparalleled way and provide biopharmaceutical companies with tools for Go/No-Go decisions in trials," adds Fredrik Brag.

Imaging Lab will provide new answers in four areas that determine the success of clinical trials: selection of patients included in trials, especially inclusion of patients diagnosed at early stages of disease thanks to AI technologies, prediction of response to therapy, measurement of disease progression, and evaluation of the safety of drug candidates. The goal is to optimize development plans, including facilitating Go/No-Go decisions to increase the success rate of clinical trials. This rate is especially low in oncology, generating an average development cost of $2.8 billion to take a new molecule to market, compared with an average of $1 billion per new molecule brought to market for other therapeutic areas1.

"Our experience of image management in clinical trials has shown that trial data is vastly underutilized. We can extract much more information from images through the widescale use of data mining, AI, and radiomics and use these technologies to better support our customers and biopharmaceutical partners in their clinical developments," says Nicolas Dano, COO iCRO of Median Technologies.

The Imaging Lab team will be present from June 4-6 (exhibition dates) at the ASCO Annual Conference in Chicago , Medians booth #2098, Exhibit Hall A, to meet the pharmaceutical community.

About Median Technologies: Median Technologies provides innovative imaging solutions and services to advance healthcare for everyone. We harness the power of medical images by using the most advanced Artificial Intelligence technologies, to increase the accuracy of diagnosis and treatment of many cancers and other metabolic diseases at their earliest stages and provide insights into novel therapies for patients. Our iCRO solutions for medical image analysis and management in oncology trials and iBiopsy, our AI-powered software as medical device help biopharmaceutical companies and clinicians to bring new treatments and diagnose patients earlier and more accurately. This is how we are helping to create a healthier world.

Founded in 2002, based in Sophia-Antipolis, France, with a subsidiary in the US and another one in Shanghai, Median has received the label Innovative company by the BPI and is listed on Euronext Growth market (Paris). FR0011049824 ticker: ALMDT. Median is eligible for the French SME equity savings plan scheme (PEA-PME), is part of the Enternext PEA-PME 150 index and has been awarded the Euronext European Rising Tech label. For more information: http://www.mediantechnologies.com

1 https://www.biopharmadive.com/news/new-drug-cost-research-development-market-jama-study/573381/

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Median Technologies Launches Imaging Lab, Spearheading the Integration of iBiopsy Artificial Intelligence Technologies Into iCRO Imaging Services for...

Farmers Increasing Their Crop Yield with Artificial Intelligence – Farmers Review Africa

The demand for agricultural products is surging in countries such as Brazil, India, the U.S., and China due to the rapid urbanization, surging disposable income, and changing consumption patterns of the booming population. On account of the soaring demand, these countries are leveraging artificial intelligence (AI) to increase their overall agricultural productivity. Owing to this reason, the AI in agriculture market is expected to progress at a robust CAGR of 24.8% during 20202030. According to P&S Intelligence, at this rate, the value of the market will rise from $852.2 million in 2019 to $8,379.5 million by 2030.

In recent years, the usage of smart sensors has increased tremendously in agriculture, as they enable farmers to map their fields accurately and apply crop treatment products to the areas that need them. Moreover, the development of several operation-specific sensors, including airflow sensors, location sensors, weather sensors, and soil moisture sensors, is assisting farmers in monitoring and optimizing their yields. Additionally, technology companies are developing smart sensors that are adaptable to the altering environmental conditions.

Additionally, the agrarian community is deploying drones in large numbers to monitor the growth and health of crops. Farmers use drones to scan the soil health, estimate the yield data, draft irrigation schedules, and apply fertilizers. Besides, the increasing support from the government has led to the widescale adoption of drones for modernizing agricultural practices. For example, in January 2019, the government of Maharashtra, India, partnered with the World Economic Forum (WEF) to enhance the agricultural yield by gathering insights about the farms through drones.

How Are AI-Powered Smart Sensors Improving Agricultural Practices?

Further, AI is being used in the agriculture sector to monitor the livestock in real-time. The utilization of AI solutions, such as facial recognition and image classification integrated with feeding patterns and condition score, enables dairy farms to individually monitor all the behavioral aspects of a herd. Moreover, farmers are using machine vision to recognize facial features and hide patterns, record the behavior and body temperature, and monitor the food and water intake of the livestock.

North America witnesses large-scale deployment of the AI technology in agricultural activities owing to the early adoption of computer vision and machine learning (ML) for soil management, precision farming, greenhouse management, and livestock management. Moreover, the increasing adoption of the internet of things (IoT) technology bolstered with computer vision will promote the application of AI solutions by the farming community. Besides, the existence of numerous technology vendors and sensor manufacturers in the region promotes the usage of the AI technologies in the agricultural space.

Furthermore, the Asia-Pacific (APAC) region is expected to adopt AI-enabled agricultural solutions at the fastest pace in the coming years. The high adoption rate of AI in China, Australia, India, and Japan will contribute significantly to the APAC AI in agriculture market in the future. Moreover, the entry of the Alibaba Group in the agricultural solution business, with its AI technology, will increase the penetration of these solutions in the Chinese agricultural industry. Additionally, India is utilizing such solutions due to the escalating effort by multinational companies (MNCs) and the government to spread awareness regarding data sciences and farm analytics among farmers.

Thus, the growing need to increase the crop yield and improve livestock management will fuel the adoption of AI-enabled solutions in the agricultural space.

Source: P&S Intelligence

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Farmers Increasing Their Crop Yield with Artificial Intelligence - Farmers Review Africa

Opinion: The Long, Uncertain Road to Artificial General Intelligence – Undark Magazine

Last month, DeepMind, a subsidiary of technology giant Alphabet, set Silicon Valley abuzz when it announced Gato, perhaps the most versatile artificial intelligence model in existence. Billed as a generalist agent, Gato can perform over 600 different tasks. It can drive a robot, caption images, identify objects in pictures, and more. It is probably the most advanced AI system on the planet that isnt dedicated to a singular function. And, to some computing experts, it is evidence that the industry is on the verge of reaching a long-awaited, much-hyped milestone: Artificial General Intelligence.

Unlike ordinary AI, Artificial General Intelligence wouldnt require giant troves of data to learn a task. Whereas ordinary artificial intelligence has to be pre-trained or programmed to solve a specific set of problems, a general intelligence can learn through intuition and experience.

An AGI would in theory be capable of learning anything that a human can, if given the same access to information. Basically, if you put an AGI on a chip and then put that chip into a robot, the robot could learn to play tennis the same way you or I do: by swinging a racket around and getting a feel for the game. That doesnt necessarily mean the robot would be sentient or capable of cognition. It wouldnt have thoughts or emotions, itd just be really good at learning to do new tasks without human aid.

This would be huge for humanity. Think about everything you could accomplish if you had a machine with the intellectual capacity of a human and the loyalty of a trusted canine companion a machine that could be physically adapted to suit any purpose. Thats the promise of AGI. Its C-3PO without the emotions, Lt. Commander Data without the curiosity, and Rosey the Robot without the personality. In the hands of the right developers, it could epitomize the idea of human-centered AI.

But how close, really, is the dream of AGI? And does Gato actually move us closer to it?

For a certain group of scientists and developers (Ill call this group the Scaling-Uber-Alles crowd, adopting a term coined by world-renowned AI expert Gary Marcus) Gato and similar systems based on transformer models of deep learning have already given us the blueprint for building AGI. Essentially, these transformers use humongous databases and billions or trillions of adjustable parameters to predict what will happen next in a sequence.

The Scaling-Uber-Alles crowd, which includes notable names such as OpenAIs Ilya Sutskever and the University of Texas at Austins Alex Dimakis, believes that transformers will inevitably lead to AGI; all that remains is to make them bigger and faster. As Nando de Freitas, a member of the team that created Gato, recently tweeted: Its all about scale now! The Game is Over! Its about making these models bigger, safer, compute efficient, faster at sampling, smarter memory De Freitas and company understand that theyll have to create new algorithms and architectures to support this growth, but they also seem to believe that an AGI will emerge on its own if we keep making models like Gato bigger.

Call me old-fashioned, but when a developer tells me their plan is to wait for an AGI to magically emerge from the miasma of big data like a mudfish from primordial soup, I tend to think theyre skipping a few steps. Apparently, Im not alone. A host of pundits and scientists, including Marcus, have argued that something fundamental is missing from the grandiose plans to build Gato-like AI into full-fledged generally intelligent machines.

If you put an AGI on a chip and then put that chip into a robot, the robot could learn to play tennis the same way you or I do: by swinging a racket around and getting a feel for the game.

I recently explained my thinking in a trilogy of essays for The Next Webs Neural vertical, where Im an editor. In short, a key premise of AGI is that it should be able to obtain its own data. But deep learning models, such as transformer AIs, are little more than machines designed to make inferences relative to the databases that have already been supplied to them. Theyre librarians and, as such, they are only as good as their training libraries.

A general intelligence could theoretically figure things out even if it had a tiny database. It would intuit the methodology to accomplish its task based on nothing more than its ability to choose which external data was and wasnt important, like a human deciding where to place their attention.

Gato is cool and theres nothing quite like it. But, essentially, it is a clever package that arguably presents the illusion of a general AI through the expert use of big data. Its giant database, for example, probably contains datasets built on the entire contents of websites such as Reddit and Wikipedia. Its amazing that humans have managed to do so much with simple algorithms just by forcing them to parse more data.

In fact, Gato is such an impressive way to fake general intelligence, it makes me wonder if we might be barking up the wrong tree. Many of the tasks Gato is capable of today were once believed to be something only an AGI could do. It feels like the more we accomplish with regular AI, the harder the challenge of building a general agent appears to be.

Call me old fashioned, but when a developer tells me their plan is to wait for an AGI to magically emerge from the miasma of big data like a mudfish from primordial soup, I tend to think theyre skipping a few steps.

For those reasons, Im skeptical that deep learning alone is the path to AGI. I believe well need more than bigger databases and additional parameters to tweak. Well need an entirely new conceptual approach to machine learning.

I do think that humanity will eventually succeed in the quest to build AGI. My best guess is that we will knock on AGIs door sometime around the early-to-mid 2100s, and that, when we do, well find that it looks quite different from what the scientists at DeepMind are envisioning.

But the beautiful thing about science is that you have to show your work, and, right now, DeepMind is doing just that. Its got every opportunity to prove me and the other naysayers wrong.

I truly, deeply hope it succeeds.

Tristan Greene is a futurist who believes in the power of human-centered technology. Hes currently the editor of The Next Webs futurism vertical, Neural.

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Opinion: The Long, Uncertain Road to Artificial General Intelligence - Undark Magazine