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[Update: Rolling out] WhatsApp adds end-to-end encryption for Android cloud backups – 9to5Google

After being hinted at and after testing in previous beta builds, WhatsApp has confirmed that end-to-end encryption for cloud backups is set to roll out soon.

[Update 10/11]: After being officially announced, WhatsApps long-awaited encrypted backups are now beginning to roll out with the latest beta update for the Android and iOS apps. As the original post (below) notes, youll need to choose between a password or 64-bit key. Losing either will result in your backup being lost be that on Android or iOS.

Spotted by WABetaInfo, the option is said to be available as of v2.21.21.5 of WhatsApp for Android. However, after updating were not yet seeing the option when heading to Settings > Chats > Chat backup. This hints that the feature is not yet widely available but likely coming very soon to most users of the messaging platform.

When you do enable the feature, the backups are encrypted before upload. Which is why a cloud-based key or a password is required to recover when you sign in to a new device. The latest beta update should be rolling out right now via the Google Play Store provided that you are enrolled.

Original article posted 09/10 below

Announced in a Facebook Engineering blog post, end-to-end encryption has been missing from cloud backups despite the fact that the messages in chat gained the added security layer way back in 2016. The current implementation has relied heavily on iCloud and Google Drive for cloud backup storage, but security was only offered with 2FA when restoring on your device.

If you are a WhatsApp user, Facebook confirmed that end-to-end encryption for your future cloud backups will begin rolling out in the coming weeks. WhatsApp says that once the feature is enabled, neither WhatsApp nor the backup service provider will be able to access your backups or the encryption key used for backups:

People can already back up their WhatsApp message history via cloud-based services like Google Drive and iCloud. WhatsApp does not have access to these backups, and they are secured by the individual cloud-based storage services.

But now, if people choose to enable end-to-end encrypted (E2EE) backups once available, neither WhatsApp nor the backup service provider will be able to access their backup or their backup encryption key.

You will be able to choose between two options, either manually storing the 64-digit encryption key or setting a password:

This should make cloud backups and the backup process much more secure with WhatsApp, but it is worth noting that end-to-end encryption still doesnt guarantee 100% security for your data. Its also important to note that should you choose to use a 64-digit encryption key and lose the key, you will lose access to your backup. However, you can change or reset your password if you forget it.

Multi-device support has recently rolled out, but its worth noting that encrypted backups will only be available on your main or primary device. You can read the full white paper on WhatsApp and the end-to-end encrypted cloud backups here.

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[Update: Rolling out] WhatsApp adds end-to-end encryption for Android cloud backups - 9to5Google

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Homomorphic Encryption Market New Coming Industry to Witness Great Growth Opportunities in Coming Years From 2021 to 2027: Microsoft (US), IBM…

An overview of the Homomorphic Encryption Market will help you provide scope and definitions, key findings, growth drivers, and a variety of dynamics.

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Growth Opportunities: Analysis of various applications in the Homomorphic Encryption market and growth opportunities in the region.

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Analysis of fierce competition in the industry based on Porters Five Forces,SWOT Analysis, and PESTLE Analysis.

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Homomorphic Encryption Market New Coming Industry to Witness Great Growth Opportunities in Coming Years From 2021 to 2027: Microsoft (US), IBM...

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SmartKargo Incorporates EDIfly Advanced Aviation Messaging At No Cost for Customers of its E-Commerce Logistics Solution – Yahoo Finance

SmartKargo has now embedded EDIfly into its end-to-end e-commerce solution to support free encrypted messaging for its airline clients.

CAMBRIDGE, Mass., Oct. 12, 2021 /PRNewswire-PRWeb/ -- SmartKargo has now embedded EDIfly into its end-to-end e-commerce solution to support free encrypted messaging for its airline clients. Air Asia Cargo, a cornerstone customer of SmartKargo, recently implemented the EDI-messaging solution with its ground handling partners in Indonesia. Air Asia is the leading low-cost carrier in Asia and a leading integrated logistics provider facilitating the movement of goods and e-commerce packages, through its Teleport cargo subsidiary, across Southeast Asia and beyond.

The EDIfly messaging platform is the signature tool of Luxembourg-based Innovative Software. Innovative Software SARL recently joined the IATA EPIC Platform and has now added logistics.cloud to support encrypted connectivity options through its low-cost EDIfly messaging technology based on open-source components. The platforms are facilitating exchanges for a growing number of partners in ground handling and warehouse management, airline trucking, forwarding, logistics, cargo community systems, or even some governments.

"EDIfly enables our airline customers like Air Asia to securely exchange operational messages with their logistics partners, which is so vital in the fulfillment of e-commerce transactions," said Milind Tavshikar, CEO of SmartKargo. "SmartKargo is pleased to provide the advanced benefits of EDIfly SM messaging at no cost to customers of our e-commerce solution."

The implementation of EDIfly is simple for SmartKargo's customers of SmartKargo's platform, as EDIfly relies on the same addresses already in use by legacy aviation messaging providers such as SITA, ARINC, Cargo-Community-Systems, and others. EDIfly SM also adds value to these exchanges with instant proof of delivery through a digital signature. This means comprehensive process control for business partners and a secured exchange not available with other traditional means, including email.

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"In addition to the significant cost reduction over alternative messaging methods, EDIfly provides Air Asia with the utmost in data security for our messaging, and it is based on IATA standards," said Javed Malik, title, AirAsia.

SmartKargo's customers now benefit from complete tracking without the volume-related pricing typically incurred. EDIfly is the only solution today that can be GDPR and PCI/DSS compliant with certifiable encryption end-to-end, including into the application of the customer.

"EDIfly uniquely allows seamless integration and allows for self-administration capabilities," said Ingo Ressler, Chief Commercial Officer at EDIfly. "In addition, the messaging provides full transparency on performance and message delivery, and guarantees the delivery order through end-to-end sequencing of messages."

For more information, please visit http://www.smartkargo.com or http://www.edifly.com.

About SmartKargo SmartKargo delivers advanced digital technology to facilitate the efficient digital transformation of an airline's cargo business. With deep expertise in air cargo, technology, and e-commerce, SmartKargo empowers airlines to open new revenue streams through e-commerce package shipping and delivery, as recently featured in Forbes. The company is headquartered in Cambridge, Massachusetts (in what The New York Times called "the most innovative square mile on the planet"), with key offices in India, the Philippines, Brazil, and Canada. Learn more at http://www.smartkargo.com or on our social media at Linkedin, Twitter, or Instagram.

About EDIfly EDIfly, a product of Innovative Software SARL, provides innovative software for seamless integrated messaging in aviation and logistics since 2010. The company provides banking-like data security, superior rule-based message routing + monitoring based on IATA standards. EDIfly uses standard RSA/AES encryption and obtains a real-time non-repudiation proof-of-delivery from the receiving address. Innovative Software SARL has partnered with industry initiatives including IATA EPIC and logistics.cloud to support low-cost connectivity options through its EDIfly messaging technology based on open-source components. EDIfly promotes seamless migration away from legacy and fixed-link connectivity using the existing addressing Type B, Type X, Cargo: XML, PIMA schema, etc., while supporting high-level encryption to exchanges without applications changes. For more information contact http://www.edifly.com.

Media Contact

Jennifer Pemberton, SmartKargo, 214-701-8655, jen@smartkargo.com

SOURCE SmartKargo

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No outages, no data leaks: The new WhatsApp killer built on the blockchain creates privacy-focused encrypted messenger – Cointelegraph

Oxen is a privacy-focused platform built on top of a proof-of-stake (PoS) network. It has also built a secure and anonymous messaging platform Session.

The companys chief technical officer Kee Jefferys talked to Cointelegraph about its platform, its technology and how important privacy and data protection are for the end-user.

1. Hello! Tell us about Oxen and Session.

OXEN is a private, stakeable cryptocurrency. The Oxen coin(OXEN) has brought a lot of innovation to the CryptoNote space (CN), including instant transactions and a large-scale PoS system. However, the real magic is the service node network. Its powering a whole range of decentralized privacy applications all incentivized by OXEN.

So far, our shining star is Session.

Session is an encrypted messenger that takes an uncompromising stance on preserving user privacy. No phone numbers, email addresses, or any identifying information are needed to sign up for Session. The messenger lets people benefit from the best bits of blockchain without needing to run a node, hold any cryptocurrency, or even being familiar with what blockchain is. Because of that, its already getting mainstream adoption, and Session currently has over 200,000 active users. The app is available for free on iOS, Android, Mac, Windows and Linux.

2. Whats wrong with messaging giants like Messenger and WhatsApp?

Messenger and WhatsApp are both owned by Facebook, a company known for aggregating user data to be sold for profit to advertising companies at the expense of the end users privacy, putting very little energy into maximizing privacy and security for users.

So heres what we know about Facebook Messenger and WhatsApp:

WhatsApp and Facebook Messenger are the most popular messaging applications in the world, which technically means that encrypted messaging applications are the most popular form of communication. However, there is uncertainty about WhatsApps end-to-end encryption implementation because their closed source code makes it impossible to verify the quality of their encryption.

In addition to this, the centralized servers used by WhatsApp give them a central point of failure. Apps like Session that are built on a decentralized network can be more resilient to attacks and have less downtime.

3. How does Session plan to get ahead in this competitive space?

A primary focus early on for Session was to reach out to journalists, activists and NGOs to test the app and provide feedback.

Now, the encrypted platform is used all the way from Boston to Baghdad by well over 200,000 people across more than 200 countries. Activists, journalists and human rights defenders rely on Session to be able to communicate safely and effectively and continue doing their pivotal work. Users are able to have conversations with their friends and family without worrying whether their conversation is secure.

4. Why is anonymity in messaging so important?

Anonymity is privacy, and privacy, according to the United Nations, is a human right everyone should be entitled to see Article 12 of the UNs Declaration on Human Rights.

Around the world, people are persecuted for their opinions, beliefs and conversations. And even if its not your job, anyone posting on social media these days can be a whistleblower, activist, or revolutionary. That opens a lot of people up to being targeted and makes anonymity a huge issue for every single person on the internet.

5. How many people currently use Session?

Session has been downloaded over 500,000 times and currently has over 200,000 monthly active users, according to recent estimations. Due to the decentralized nature of Session, were unable to see the exact number of users we have. Apps like WhatsApp and Telegram have access to more accurate information regarding user numbers and activity.

6. What are the premium paid features that Session is planning to offer?

We strongly believe that the apps core functionality a hardcore private messenger should remain free. Secure messaging is an incredibly difficult challenge to solve, and the monetization features we add should improve the apps user experience and not restrict it behind a paywall.

That said, some of the paid features that Session may offer in the future:

All decentralized core components of Session are free. Some additional features and services that would consume OPTF resources to provide or put additional strain on the Oxen network will be included among Sessions premium features.

Sessions monetization strategy includes premium features that can be used to buy back and burn OXEN from the open market, adding additional deflationary pressure to the OXEN cryptocurrency.

7. Is it possible to migrate from other platforms to Session?

Community groups from other apps can easily shift from, lets say, the centralized Telegram to decentralized Session. However, there is no means of porting users directly from Telegram to Session.

The platforms open groups facilitate real-time group chats with an unlimited number of users, while the closed group feature where users can chat with up to 100 people with the same metadata protections as Sessions one-on-one conversations.

8. What are Sessions plans for the coming 12 months?

Our main objectives for the next 12 months are to increase the number of users and improve the monetization model. Were planning to add user-generated sticker packs, increase file size limits, remote device wiping, local message editing and more.

The biggest upgrade on the horizon is Lokinet integration, which will bring lower latency communication and better, non-Apple/Google-like push notifications as well as onion-routed voice and video calls.

Disclaimer. Cointelegraph does not endorse any content or product on this page. While we aim at providing you all important information that we could obtain, readers should do their own research before taking any actions related to the company and carry full responsibility for their decisions, nor this article can be considered as an investment advice.

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Google DeepMind AI: Heres how it can bring a revolution in weather forecasting – Yahoo Singapore News

Google DeepMind AI: Here's how it can bring a revolution in weather forecasting

Googles DeepMind AI has a brand new way to predict weather forecasts with the highest accuracy. Get ready to say goodbye to the regular way of weather forecasting.

All about weather forecasting

For us, checking the weather is as simple as opening our phones or asking Siri or Alexa. However, the science of weather forecasting is not that simple. Meteorologists across the world have been trying hard to come up with high-accuracy predictions. After all, its not just predicting when and where it will be sunny, raining, or cloudy. It also includes long-term predictions of the climate and affects policy and conservation greatly. Meteorologists predict the weather by casting, i.e., hourly. casting is harder as it is susceptible to several variable factors.

Great work from our team DeepMind. Understanding and predicting weather has been a topic that has intrigued and challenged humanity. Great to see learning-based AI systems making progress in this important area, tweeted Pushmeet Kohli, a research lead at the firm.

More on DeepMind AI

According to Googles DeepMind AI, using a machine learning AI makes the task easier. With the help of AI, researchers can predict rainfall location and the possibility for the next 90 minutes. The system developed by Google and UKs meteorological office is an expert at predicting short-term weather changes. Moreover, DeepMind has immense experience with neural networks and investigating how proteins fold. Our teams research and build safe AI systems. Were committed to solving intelligence, to advance science and benefit humanity, states DeepMinds official website.

Additionally, the new research published in Nature describes how the new prediction model DGMR or Deep Generative Model of Rainfall can predict changes within 90 minutes. Sing a systematic evaluation by more than 50 expert meteorologists, we show that our generative model ranked first for its accuracy and usefulness in 89% of cases against two competitive methods., stated the researchers in the study. DGMR uses the computational capacity of the neural network and picks out the uncertainty in machine learning. Hence, DeepMind AI can give the most reliable and accurate weather predictions.

This article Google DeepMind AI: Heres how it can bring a revolution in weather forecasting appeared first on BreezyScroll.

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Now AI Tells You If It Will Pour In The Next Two Hours – Analytics India Magazine

Alphabet Inc.s AI subsidiary DeepMind has developed a deep-learning tool called DGMR (Deep Generative Models of Rain) for forecasting rain up to two hours ahead of time. It teamed up with the Met Office (UKs national weather service) and claims that this can be an important step in the science of precipitation nowcasting.

The company has made the data used for training available on GitHub with a pre-trained model for the UK. The report of the study has been published in the journal Nature.

To train and evaluate the nowcasting models in the UK, the research used:

The World Meteorological Organisation defines nowcasting as a weather forecasting method in the short term of up to two hours. Weather prediction capabilities such as this can have a tremendous impact in sectors where weather plays a vital role in decision making.

Due to technological advancements in weather forecasting capabilities, high-resolution radar data is now available at high frequency (as frequent as every five minutes at one km resolution).

Advanced deep learning methods already exist in nowcasting. But they come with their own set of challenges. Without constraints, it can produce blurry nowcasts at longer lead times, often causing inaccurate predictions on medium-to-heavy rain events.

DeepMind trained their AI on radar data and analysed the past 20 minutes of observed radar, followed by making predictions for the upcoming 90 minutes.

Often other such methods have given poor performance on medium to heavy rain events, but DeepMinds tool put its attention on medium to heavy rain events. This is important as it is usually heavy rains that seriously impact the economy and the people.

DeepMind uses deep generative models (DGMs), which essentially learn probability distributions of data and allow for easy generation of samples from their learned distributions. They have the property to simulate many samples from the conditional distribution of future radar given learning from past radar. What makes DGMs such a powerful tool is their ability to learn from observational data as well as represent uncertainty across multiple spatial and temporal scales.

Image Source: DeepMind | Comparison of DGMR with radar data and other two forecasting techniques (PySTEPS and UNet) for heavy rainfall over the eastern US in April 2019

Image Source: DeepMind

Google, which acquired DeepMind in 2014, has been conducting different forms of research in precipitation forecasting recently. In 2020, it presented MetNet: A Neural Weather Model for Precipitation Forecasting. It is a DNN (deep neural network) capable of predicting future precipitation at one km resolution over 2-minute intervals at timescales up to 8 hours into the future. Here, the inputs to the network are sourced automatically from radar stations and satellite networks without the need for human annotation. The output that we get from this is a probability distribution that we can use to infer the most likely precipitation rates. This, of course, comes with associated uncertainties in each geographical region.

Just a few months before bringing out this research, DeepMind came out with another one titled, Machine Learning for Precipitation Nowcasting from Radar Images. This research looked into the development of machine learning models for precipitation forecasting too. It made highly localised physics-free predictions that apply to the immediate future, Google said. This research focusing on 0-6 hour forecasts was able to generate forecasts that have a 1km resolution with a total latency of 5-10 minutes.

Though challenges still remain and research in this area is still in its nascent stage, machine learning integrated with environmental science can have a crucial impact on decision making in the always-dynamic climate in todays world.

Sreejani Bhattacharyya is a journalist with a postgraduate degree in economics. When not writing, she is found reading on geopolitics, economy and philosophy. She can be reached at [emailprotected]

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Global Blockchain Technology in Healthcare Market (2021 to 2026) – Featuring Accenture, Capgemini and DeepMind Health Among Others -…

DUBLIN--(BUSINESS WIRE)--The "Global Blockchain Technology in Healthcare Market (2021-2026) by Application, End-Use, Geography, Competitive Analysis and the Impact of Covid-19 with Ansoff Analysis" report has been added to ResearchAndMarkets.com's offering.

The Global Blockchain Technology in Healthcare Market is estimated to be USD 12.45 Bn in 2021 and is expected to reach USD 55.83 Bn by 2026, growing at a CAGR of 35%.

The major factor contributing to the growth of the market is the increasing focus to improve the patient's engagement and deliver patient-centric care. In addition, the increasing penetration of high-speed network technologies initiating blockchain as a service and reducing the risk of the counterfeited drugs factors contributing to the growth of the market. The factors hindering the market are technical challenges pertaining to scalability and lack of awareness in emerging countries. The rising government initiative, emerging investment, and partnership across the industry for integrating blockchain in the healthcare sector are anticipated to create lucrative opportunities.

Recent Developments

1. Cleveland Clinic, IBM, Aetna, and Anthem have partnered to form a blockchain health firm, called Avaneer Health. - 9th June 2021

2. Aetna, Anthem, Health Care Service Corporation (HCSC), PNC Bank, and IBM announced a new collaboration, to design and create a network using blockchain technology and to improve transparency and interoperability in the healthcare industry. The aim is to create an inclusive blockchain network that can benefit multiple members of the healthcare ecosystem in a highly secure and shared environment. - 24th January 2019

Competitive Quadrant

The report includes Competitive Quadrant, a proprietary tool to analyse and evaluate the position of companies based on their Industry Position score and Market Performance score. The tool uses various factors for categorizing the players into four categories. Some of these factors considered for analysis are financial performance over the last 3 years, growth strategies, innovation score, new product launches, investments, growth in market share, etc.

Why buy this report?

Market Dynamics

Drivers

Restraints

Opportunities

Challenges

Companies Mentioned

For more information about this report visit https://www.researchandmarkets.com/r/x7xyc8

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Global Blockchain Technology in Healthcare Market (2021 to 2026) - Featuring Accenture, Capgemini and DeepMind Health Among Others -...

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10 Most Popular Google AI Projects that Everyone Should Know – Analytics Insight

Google is an absolute giant in the IT world. It creates various software tools for almost any imaginable area of activity, existing today. Every complex problem today, now has a solution provided by Google, be it a smart voice helper or an intelligent shopping list. The tech industry has now become more exciting than ever. In this article, we talk about the essential Google AI projects that we should know about to understand their relevance and features.

TensorFlow: It is undoubtedly the most popular Google AI It is a free and open platform for machine learning implementations. It not only allows robust and independent ML production but also provides research powers for experimental purposes, and enables simple and high-level layers for model creation. The data and tools processed through TensorFlow can be accessed at any time and from any location.

Dopamine: It is a platform for prototyping reinforcement learning algorithms. Reinforcement learning algorithms are concerned with how a certain software agent behaves in a given situation. It is a TensorFlow-based platform that enables users to freely experiment with reinforcement learning algorithms. Its dependable and adaptable, therefore, attempting to create new things will be simple and enjoyable.

Google Open Source: Open Source is one of the most attractive philosophies of the current century because nobody likes secured and secret coding. Google stimulates the creation of unique and useful projects with this tool. Code-In challenges, competition, and widespread popularization are some of the few features and facilities provided by Google Open Source.

AdaNet: AdaNet is a TensorFlow-based system that enables the automated learning of high-level models with little interaction from an expert. It learns the structure of a neural network using its AdaNet algorithm and gives learning guarantees. The most important feature of this network is that it provides a framework for enhancing ensemble learning to obtain more advanced models.

Magenta: It is one of those rare applications that portrays the influence of artificial intelligence in creative fields. It focuses on generating art and music by using deep learning and reinforcement learning. Magenta focuses on developing solutions and simplifying complex problems for artists and musicians.

Kuberflow:Kuberflow is among the most significant Google AI It is a machine learning toolkit that focuses on simplifying machine learning deployment. The Kuberflow users can deploy open-source and top-notch machine learning systems. This project has a thriving community of developers and professionals where users can share questions, their work, and discuss other related topics.

DeepMind Lab: Googles DeepMind Lab provides a three-dimensional platform for researching and developing machine learning and AI systems. Its simple API allows the users to experiment with various AI architectures. This platform leverages DeepMind Lab to train and develop learning agents. It includes a variety of puzzles with deep reinforcement learning.

Bullet Physics:Bullet Physics is one of Google AIs most special initiatives. It is a software development kit that focuses on body dynamics, collisions, and interactions between rigid and soft bodies. This Python package utilizes machine learning, physical simulations, and the Physics Bullet SDK also includes robotics technology.

Cloud AI: Cloud AI works in large systems. It gives an ability to interact with more advanced technologies, not just basic ML solutions. Cloud AI has collaborated with other successful projects of Google, like Cloud ML, which is a set of machine learning tools for specific operations.

CoLaboratory: It is very demonstrative and supports various add-ons and instruments. It is excellent for remote computing and can open access for the developing files. Similar to other Google documents, it provides an opportunity to work in different files at the same time.

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How this company is using data-driven drug discovery to fight disease – The Globe and Mail

Cyclica harnesses AI and machine learning, along with a vast library of global human genome discovery, to model potential protein interactions and drastically speed up the drug discovery process.

Peter Power/The Globe and Mail

It can take, on average, more than a decade and about $1-billion for a new pharmaceutical drug to make its way from the lab to the prescription pad.

Just five in 5,000 drugs that enter preclinical testing advance to human clinical trials. From there, only about one in five of those drugs is approved for human use, according to a review by the California Biomedical Research Association.

There are many reasons why it takes so long and costs so much money, says Naheed Kurji, president and chief executive officer of Toronto-based Cyclica Inc., an artificial intelligence (AI)-driven biotech drug discovery platform. When you take a drug, and you place it into a complex biological system like a human or an animal, its interacting with upwards of 300 proteins. And those other proteins are not known, initially. Theyre oftentimes undesirable and they can lead to side effects.

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These side effects are one of the main reasons only one in 5,000 potential drugs ever makes it to a medicine cabinet.

Cyclica harnesses AI and machine learning, along with a vast library of global human genome discovery, to model potential protein interactions and drastically speed up the drug discovery process.

We are building the biotech pipeline of the future, Mr. Kurji says.

The seed of Cyclica was planted in 2011 at an MBA business case competition at the University of Torontos Rotman School of Management, presented by company co-founder Jason Mitakidis.

The proposal won the competition hands down, says Mr. Kurji, who was in the audience that day. Cyclica launched in 2013. Mr. Kurji joined shortly after as co-founder and chief financial officer and became president and CEO when Mr. Mitakidis left the company in 2016.

From humble beginnings in a basement office with a small team of co-op students, today Cyclica has more than 70 employees and advisers at its headquarters in Toronto, a team in the U.S. and another in the United Kingdom. The company has consultants all over the world and partnerships with biotech players in Brazil, Singapore, Korea, China, the U.S., Europe, the U.K., India and Australia, among others.

Disease is most often a malfunctioning of a biological protein in the human body. Computational techniques have been used for decades to pinpoint these biological drivers of disease, the malfunctioning proteins, and then find a molecular key that could be turned into medicine to address the malfunction. But those earlier efforts were limited.

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The techniques that they were using were too slow, they were too expensive and the quality of the predictions just were not that high, Mr. Kurji says.

Then three things happened that drastically changed the landscape, he says: First, the Human Genome Project produced reams of data on genetics and the genome. Second, the cloud made available unprecedented computational horsepower. And third, AI and machine learning began to take hold.

A field of about 15 companies in the space when Cyclica launched has grown to more than 400 worldwide today.

Cyclica has two platforms powered by the Google Cloud: Ligand Design and Ligand Express.

The underlying technology of these platforms is an AI-driven database of all publicly available known protein structures, as well as third-party proprietary data that Cyclica has acquired. Recently, the company integrated Google Deep Minds Alpha Fold 2 protein structure database, as well.

After pinpointing the malfunctioning protein that is the root cause of disease, the next step in drug development is to identify a molecule that will bind with that protein to address the malfunction.

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Cyclicas platforms can investigate molecules by matching them against all the proteins in the human body, explains Andreas Windemuth, the companys chief scientific officer.

Traditionally, this research takes a target-based approach, examining the molecule for the one function it is hoped to affect.

What our platform does is really provides a panoramic view of the molecule, he says.

Cyclicas database makes available approximately 85 per cent of the human proteome collection of all human proteins as well as other species.

Were sort of packaging all the knowledge about the drug-protein binding into our AI model and that can then be applied for discovering drugs, Dr. Windemuth says.

The AI system keeps getting better over time as more data are added, adds Stephen MacKinnon, Cyclicas vice-president of research and development, and it operates much faster than other forms of prediction.

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Thats what allows us to extrapolate those predictions to many, many more proteins not just predict for that one target protein in the tunnel, but for all the proteins in the cell, Dr. MacKinnon explains.

Cyclica co-founder and CEO Naheed Kurji in his home office in Toronto on Sept. 30.

Peter Power/The Globe and Mail

In short, Cyclicas Ai-driven platforms can test thousands of proteins and millions of molecules in a fraction of the time.

Dr. Windemuth says the hope is that by speeding up and streamlining the drug discovery process, development costs will decrease and, ultimately, the cost of drugs to consumers will go down as well.

Every month [in development] is worth many millions of dollars and the failure rate is enormous, he says. We can make it faster, and we can reduce the failure rate.

Cyclica has switched gears from its initial focus of licensing its technology to the pharmaceutical industry. The company now sometimes partners with early-stage biotech companies working on a specific disease, becoming investors and using their technology to advance drug development, or with academic groups looking to commercialize their research.

But the primary focus is their own drug discovery pipeline.

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We recognized that to capture the value that our platform was creating, we wouldnt do that through just revenue-generating deals with Big Pharma. We had to ideate, create and invent our own drug discovery pipeline, Mr. Kurji says.

The company recently collaborated with researchers at the university formerly known as Ryerson, the University of Toronto and the Vector Institute to explore existing drugs that might be repurposed to treat symptoms of COVID-19. The results, which identified a drug currently used to treat lung cancer, are currently being submitted for peer review.

Over the past three years, Cyclica has created about eight companies and has more than 80 programs in its portfolio. None is in the clinical phase yet, Mr. Kurji says.

Theres no AI and drug discovery company that has a drug that has gone through the clinical [phase] to market approval. Its still too soon, he says. In a space thats only eight years old but theres been a substantial amount of progress across the industry.

CDKL5 Deficiency Disorder (CDD) is a rare genetic condition that affects one in every 40,000 to 60,000 children born.

A genetic form of epilepsy, CDD affects mostly girls and it can have devastating symptoms that include the onset of severe seizures as early as a week after birth.

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It is honestly devastating for the child because it stops all the developmental process, says Cleber Trujillo, the lead senior neuroscientist at Stemonix, a subsidiary of Vyant Bio Inc., a biotech drug discovery company based in New Jersey. They can be really frequent, several times per day, these seizures.

The disorder is caused by a mutation in the CDKL5, or cyclin-dependent kinase-like 5, which is the gene responsible for creating a protein necessary for normal brain development and function. The exact reason for the mutation is unknown and there is no treatment or cure.

Cyclica and Vyant Bio recently announced a strategic collaboration to use Cyclicas AI-driven platform to identify potential pathways to the treatment of the disorder.

Vyant has exceptionally good models for the disease activity, Dr. MacKinnon says. And Cyclica has an AI-driven database of global human genome information that helps researchers such as Vyant Bio to identify and model potential target proteins that can be used to build a drug to treat the disorder.

This really exemplifies partnership, as the researchers coming to us have a good sense of the biology, have these good models for how a disease exists in a cell and we work together to come up with drugs or drug candidates, that will likely have these effects on the systems that theyre looking to achieve for therapeutic outcomes, Dr. MacKinnon says.

The aim is to find target molecules, Dr. Trujillo explains, and then search or screen for compounds that can interact with the target to improve the cells biology.

Cyclicas biotech pipeline means researchers dont start from scratch when looking for proteomes that could potentially work, he says.

Its really hard to find a drug from billions of different possibilities, Dr. Trujillo says. They can create a list that we think are the top candidates.

If we can, in collaboration [with Cyclica], narrow down and join efforts on the biology side or the modelling side, with their expertise, I feel that we can accelerate and make better models and find better compounds.

CDD is a rare disorder but one that is becoming more prevalent, owing largely to a better understanding of the disorder and better screening, he says.

The disorder significantly shortens the lives of sufferers, Dr. Trujillo says, whether from the disease itself or the severe seizures that can cause massive neurological damage.

Its devastating for the family and caregivers, also, he says.

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What if the universe had no beginning? – Livescience.com

In the beginning, there was well, maybe there was no beginning. Perhaps our universe has always existed and a new theory of quantum gravity reveals how that could work.

"Reality has so many things that most people would associate with sci-fi or even fantasy," said Bruno Bento, a physicist who studies the nature of time at the University of Liverpool in the U.K.

In his work, he employed a new theory of quantum gravity, called causal set theory, in which space and time are broken down into discrete chunks of space-time. At some level, there's a fundamental unit of space-time, according to this theory.

Bento and his collaborators used this causal-set approach to explore the beginning of the universe. They found that it's possible that the universe had no beginning that it has always existed into the infinite past and only recently evolved into what we call the Big Bang.

Related: Big Bang to civilization: 10 amazing origin events

Quantum gravity is perhaps the most frustrating problem facing modern physics. We have two extraordinarily effective theories of the universe: quantum physics and general relativity. Quantum physics has produced a successful description of three of the four fundamental forces of nature (electromagnetism, the weak force and the strong force) down to microscopic scales. General relativity, on the other hand, is the most powerful and complete description of gravity ever devised.

But for all its strengths, general relativity is incomplete. In at least two specific places in the universe, the math of general relativity simply breaks down, failing to produce reliable results: in the centers of black holes and at the beginning of the universe. These regions are called "singularities," which are spots in space-time where our current laws of physics crumble, and they are mathematical warning signs that the theory of general relativity is tripping over itself. Within both of these singularities, gravity becomes incredibly strong at very tiny length scales.

Related: 8 ways you can see Einstein's theory of relativity in real life

As such, to solve the mysteries of the singularities, physicists need a microscopic description of strong gravity, also called a quantum theory of gravity. There are lots of contenders out there, including string theory and loop quantum gravity.

And there's another approach that completely rewrites our understanding of space and time.

In all current theories of physics, space and time are continuous. They form a smooth fabric that underlies all of reality. In such a continuous space-time, two points can be as close to each other in space as possible, and two events can occur as close in time to each other as possible.

"Reality has so many things that most people would associate with sci-fi or even fantasy."

But another approach, called causal set theory, reimagines space-time as a series of discrete chunks, or space-time "atoms." This theory would place strict limits on how close events can be in space and time, since they can't be any closer than the size of the "atom."

Related: Can we stop time?

For instance, if you're looking at your screen reading this, everything seems smooth and continuous. But if you were to look at the same screen through a magnifying glass, you might see the pixels that divide up the space, and you'd find that it's impossible to bring two images on your screen closer than a single pixel.

This theory of physics excited Bento. "I was thrilled to find this theory, which not only tries to go as fundamental as possible being an approach to quantum gravity and actually rethinking the notion of space-time itself but which also gives a central role to time and what it physically means for time to pass, how physical your past really is and whether the future exists already or not," Bento told Live Science.

Causal set theory has important implications for the nature of time.

"A huge part of the causal set philosophy is that the passage of time is something physical, that it should not be attributed to some emergent sort of illusion or to something that happens inside our brains that makes us think time passes; this passing is, in itself, a manifestation of the physical theory," Bento said. "So, in causal set theory, a causal set will grow one 'atom' at a time and get bigger and bigger."

The causal set approach neatly removes the problem of the Big Bang singularity because, in the theory, singularities can't exist. It's impossible for matter to compress down to infinitely tiny points they can get no smaller than the size of a space-time atom.

So without a Big Bang singularity, what does the beginning of our universe look like? That's where Bento and his collaborator, Stav Zalel, a graduate student at Imperial College London, picked up the thread, exploring what causal set theory has to say about the initial moments of the universe. Their work appears in a paper published Sept. 24 to the preprint database arXiv. (The paper has yet to be published in a peer-reviewed scientific journal.)

The paper examined "whether a beginning must exist in the causal set approach," Bento said. "In the original causal set formulation and dynamics, classically speaking, a causal set grows from nothing into the universe we see today. In our work instead, there would be no Big Bang as a beginning, as the causal set would be infinite to the past, and so there's always something before."

Their work implies that the universe may have had no beginning that it has simply always existed. What we perceive as the Big Bang may have been just a particular moment in the evolution of this always-existing causal set, not a true beginning.

There's still a lot of work to be done, however. It's not clear yet if this no-beginning causal approach can allow for physical theories that we can work with to describe the complex evolution of the universe during the Big Bang.

"One can still ask whetherthis [causal set approach] can be interpreted in a 'reasonable' way, or what such dynamics physically means in a broader sense, but we showed that a framework is indeed possible," Bento said. "So at least mathematically, this can be done."

In other words, it's a beginning.

Originally published on Live Science.

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