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Udemy Partners with Google Cloud as Inaugural Member of its New … – AiThority

Partnership seeks to meet the growing demand and upskilling requirements for millions of cloud computing professionals worldwide

Udemy, a leading online skills marketplace and learning platform,announced a new partnership with Google Cloud, joining their new Google Cloud Endorsed Content Program. Through this program, Google Cloud will endorse high-quality Udemy content that current and aspiring cloud professionals can trust to learn more about Google Cloud emerging technologies such as generative AI and prepare for future certification exams. This new Google Cloud Endorsed Content adds to a growing portfolio of Google Cloud training available on Udemy. Additionally, select Udemy instructors will be invited to preview new products and features coming to Google Cloud, allowing them to provide learners with fresh, relevant content the moment a new capability becomes available. This supports Udemys commitment to ensuring its content is keeping pace with the rate of technology changes in the marketplace. These new courses will be easily identifiable via Google Cloud Endorsed badges and will be featured on Udemys dedicated, Google Cloud Endorsement page.

Today, were at the forefront of the next digital revolution, and as a result, theres a critical need for skilled professionals who are well-versed in tools like Google Cloud to help their organizations modernize and take full advantage of all that AI-powered cloud computing platforms have to offer, said Greg Brown, President and CEO at Udemy. Were thrilled to be partnering with an iconic technology leader thats been at the cutting edge of innovation for more than two decades, so that together, we can help train the next generation of cloud computing professionals.

Recommended AI News: Google Cloud and Spotify Expand Partnership to Help Unlock Creator Potential and Reach Fans

With demand for cloud computing skills on the rise, Udemy currently offers more than 430 dedicated Google Cloud courses with nearly 500,000 enrollments over the past 12 months. Additionally, as it is becoming an increasing priority for organizations and professionals to understand generative AI, Udemy has seen increased interest in the 124 Google Bard courses available on its platform with more than 73,000 course enrollments since its launch in March 2023. Further, in Udemys recently published 2024 Global Learning & Skills Trends Report, Google Clouds Professional Cloud DevOps Engineer certification was noted as one of the most in-demand technical skills for 2024 with a 1,454% growth in course consumption over the past year alone.

As companies increasingly prioritize adoption of skills-based practices, it is critical that they have access to the freshest content available to support certification preparation so professionals can not only acquire new skills, but also validate them and demonstrate mastery to their employers. Udemys learning platform does just that and also recently introduced an Integrated Skills Framework earlier this year which provides organizations with a roadmap to help them understand and more easily navigate the fundamental components of a skills-based approach to learning. This approach, coupled with endorsement by Google Cloud, provides learners and organizations with confidence that they are accessing the most current, high quality Google Cloud certification preparation available.

Recommended AI News: Datadog Expands Strategic Partnership with Google Cloud and Integrates with Vertex AI

In the initial phase of the pilot program, Google Cloud will be focused on endorsing generative AI coursesbeginning with courses from world-renowned Udemy instructors Jose Portilla and Ranga Karanamwith plans to review and endorse additional content related to Google Cloud certification preparation, data analytics, developer content and infrastructure and networking capabilities in the coming months.

We are thrilled to announce Google Cloud Learning Services collaboration with Udemy to bring learners cutting-edge cloud computing and generative AI courses from industry experts like Jose Portilla and Ranga Karanam, said Natalie Van Kleef, Head of the Current & Future Technologists organization in Google Cloud Learning Services. This exciting partnership will empower developers to gain the skills and knowledge they need to become confident in these new technologies as generative AI continues to shape the future of work.

Recommended AI News: Box and Google Cloud Expand Strategic Partnership Across Generative AI and Go-to-Market

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If Cathie Wood Is Bullish on Solana, Should You Be Too? – The Motley Fool

Given the huge price rally for Solana (SOL -1.20%) this year, it's no surprise that investors, traders, and analysts are now rushing to put out fantastic new price predictions for Solana. With Solana up nearly 450% for the year and now trading around the $55 mark, many now suggest that Solana could soon break through the $100 level before regaining its all-time high of $260.

Of course, for that to happen, Solana will need to continue to gain ground at the expense of chief rival and market leader Ethereum (ETH 0.34%), which is still 10 times more valuable. But just how realistic is that scenario? Let's take a closer look.

The primary investment thesis for Solana overtaking Ethereum can be summarized in just three words: Faster and cheaper. One of the proponents of this investment thesis is high-profile investor Cathie Wood of Ark Invest, who has long been known for her bullish views on Bitcoin (BTC -0.49%) and all things crypto. On CNBC, Wood recently suggested that the reason why Solana is so valuable is because it is faster and cheaper than Ethereum.

In many ways, I agree. Being faster and cheaper is a huge source of competitive advantage and can be used to gain market share at the expense of market leaders. It explains why users and developers might eventually migrate over to Solana from Ethereum. Lower costs and faster transaction processing times are paramount for success in areas like decentralized finance (DeFi), Web3, and gaming.

But, as we know from the past 50 years of history in the tech industry, the cheapest and fastest technology does not always win. There are other factors to take into account, including network effects and first-mover advantage. And, in terms of network effects and first-mover advantage, Ethereum still has an overwhelming advantage over Solana.

Moreover, there are a handful of blockchain rivals that claim to be cheaper and faster than Solana after taking into account actual, not just theoretical, speeds. In fact, a brand new competitor on the scene -- Aptos (APT -0.21%) -- has been touted as a "Solana killer" because it's so blazingly fast and cheap. So what makes Solana so much better than these other competitors?

Thus, with all due respect to Cathie Wood, a superior argument for investing in Solana is that it is "better and more innovative" than other blockchains. This helps to explain Solana's competitive advantage vis-a-vis other Layer 1 blockchains such as Ethereum.

For example, Solana stands alone among all other blockchains in terms of having a mobile crypto strategy that includes a blockchain-optimized "crypto phone" (the Saga). And Solana made waves this September after launching a groundbreaking new payment project with Visa. That's just something that you're not going to find with rival Ethereum, and certainly not with Bitcoin.

Image source: Getty Images.

From my perspective, this "better and more innovative" argument also does a better job of explaining why Ethereum rapidly closed the gap with Bitcoin in terms of market capitalization. According to Wood, the reason why this happened is because Ethereum was faster and cheaper than Bitcoin.

But the real reason why this happened is because Ethereum was the first-ever blockchain to offer smart contracts, and these eventually became the building blocks for non-fungible tokens (NFTs) and decentralized finance (DeFi). In short, Ethereum was "better and more innovative" than Bitcoin, and that made all the difference in terms of creating market niches that had never existed before.

There's a classic saying in the tech industry: "Faster, better, cheaper -- pick two." It's a saying popular with project managers, engineers, and venture capitalists, and it is a very easy way of understanding competitive advantage in the tech world. Basically, pick two out of the three characteristics of market leaders, execute on them better than anyone else, and you'll eventually become the market leader.

I think this is why Cathie Wood has focused on the "faster and cheaper" argument for Solana. "Faster and cheaper" makes a lot of intuitive sense, and it's an argument that probably resonates with institutional investors. Best of all, it explains Solana in a way that abstracts away all the complexity of blockchain technology.

But I don't think that "faster and cheaper" is a strong enough investment thesis. If that were the case, you should probably be buying Aptos right now and not Solana. Aptos is actually up 107% this year, so maybe that's what a lot of investors are actually doing.

I agree with Cathie Wood that Solana is a very intriguing investment prospect right now and that the valuation gap between Ethereum and Solana should be much smaller than it is right now. However, I'm focusing on "better" and not just "faster and cheaper" as a way of thinking about Solana. I think Solana is better and more innovative than other blockchains, and that's why I remain long-term bullish on its future growth prospects.

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If Cathie Wood Is Bullish on Solana, Should You Be Too? - The Motley Fool

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Breaking Chains: Unleashing the Power of Blockchain Technology … – Medium

In the dynamic landscape of technological innovation, the fusion of blockchain technology and decentralization emerges as a revolutionary force, challenging traditional paradigms and unlocking new realms of possibility. Join us on an exploration of the transformative synergy between blockchain technology and the principles of decentralization.

At the heart of this paradigm shift is the evolution of blockchain, a disruptive technology initially designed as the backbone of cryptocurrencies like Bitcoin. However, its journey has transcended these origins, showcasing its prowess as a transformative force across diverse industries.

Decentralization and Trust:

A fundamental tenet of blockchain technology is the principle of decentralization. Unlike centralized systems, blockchain operates on a distributed ledger, fostering trust through transparent and verifiable transactions. This departure from central control not only enhances security but also redefines the foundation of reliability in the digital age.

Smart Contracts and Efficiency:

Beyond decentralization, the integration of smart contracts stands as a testament to the efficiency blockchain technology brings to various sectors. These self-executing contracts automate and enforce predefined terms, reducing reliance on intermediaries and expediting transactional speed.

While the financial sector quickly embraced blockchain technology, its impact transcends the confines of traditional currencies and transactions.

Healthcare Innovations:

In healthcare, the marriage of blockchain technology and decentralization heralds transformative changes in data management. Secure and transparent health records, enabled by blockchain, enhance patient care, reduce fraud, and streamline administrative processes.

Supply Chain Transparency:

In the supply chain, the combination of blockchain technology and decentralization ensures unprecedented transparency. Every step becomes traceable and tamper-proof, revolutionizing the authenticity and quality assurance of products.

As blockchain technology continues its evolutionary journey, understanding its intricacies and the implications of decentralization becomes paramount for businesses and enthusiasts alike.

Educational Resources:

A wealth of educational resources, online communities, and forums provide enthusiasts with opportunities to delve deeper into the world of blockchain technology and its core principle of decentralization. Staying informed is not just encouraged; its essential in a landscape that is ever-advancing.

Global Patchwork of Regulations:

Navigating the regulatory landscape is an integral aspect of understanding blockchain technology and decentralization. The global patchwork of regulations, though challenging, reflects the adaptability of this transformative force to different legal frameworks.

In conclusion, the amalgamation of blockchain technology and the guiding principle of decentralization is not just a technological trend; its a paradigm shift that redefines how we transact, manage data, and perceive trust in the digital age. As we break chains, both metaphorically and technologically, lets embrace the future with a deep understanding of the transformative power that decentralization brings to the forefront of innovation.

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3 of the biggest blockchain tech developments in 2023 – Blockworks

The crypto ecosystem has achieved an array of major technology milestones over the past year.

Despite a series of unfortunate events in 2022 with the collapse of the Terra ecosystem, and then later the bankruptcy of Sam Bankman-Frieds FTX the blockchain tech space proved resilient in 2023.

In particular, weve seen developments in the infrastructure and technology sectors with new innovations designed to make blockchains faster, more secure and private.

This year marked the launch of a series of zero-knowledge (zk) rollups.

First, we saw the launch of zkSync Era, followed closely by Polygons zkEVM, later Linea, and more recently, the =nil; Foundation just to name a few.

Rollups share the same goal: make blockchains operate more efficiently by reducing the amount of block space needed to make a transaction by executing more transactions off-chain. This will, as a consequence, also reduce gas fees and fixed costs.

Zero-knowledge rollups, in this particular case, are not only able to perform off-chain executions, but they are also able to determine if the information is accurately executed without disclosing the information on the mainnet.

This differs from optimistic rollups, which automatically presume that information is accurate and rely on fraud proofs to challenge suspicious transactions.

It is important to note that more work still needs to be done to ensure zkRollups are completely decentralized and permissionless. Existing zero-knowledge technology is subject to upgradability risks.

These risks refer to whether or not a blockchain can be upgraded or subject to changes with blockchains being more secure if they can not be upgraded.

Blockchain interoperability also made some impressive improvements this year.

From the introduction of Chainlinks CCIP to LayerZeros recent partnership with Google Cloud and JPMorgan, cross-chain interoperability protocol teams are actively working on connecting various private and public blockchains.

Blockchain interoperability protocols enable smart contracts across different blockchain networks to communicate with each other and facilitate the transfer of liquidity.

This is typically achieved through burning tokens in the smart contract of a source chain and then minting new, corresponding tokens on a destination chain.

Another way to transfer tokens is through bridging, where tokens are locked on a source chain and then minted natively on the destination chain.

Such tools can enable users of various blockchains to seamlessly swap, lend and stake their tokens across various ecosystems for a small gas fee.

To bring more liquidity on-chain, developers real-world asset (RWA) protocols are also looking at ways these assets could serve as collateral through tokenization.

RWAs in the space could include assets such as cash, gold, real estate and US treasury bonds, for example. One of the most well-known RWAs today would be stablecoins like Circles USDC and Tethers USDT, which are widely used across DeFi protocols.

Some of the protocols behind on-chain financing include Centrifuge, Maple Finance and Goldfinch.

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3 of the biggest blockchain tech developments in 2023 - Blockworks

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Exploring the Legal Retail Compliance of Placeholder Tokens’ Rent … – Medium

Exploring the Legal Retail Compliance of Placeholder Tokens' Rent and Return Model on Hedera

In the dynamic landscape of decentralized finance (DeFi), the legal implications of innovative models become a focal point for both developers and users. Placeholder Tokens, with their unique rent and return model, introduce a retail compliance approach to navigate the regulatory landscape. Let's delve into the legal aspects of this pioneering concept, highlighting how it operates within the boundaries of existing regulations.

### **1. Regulatory Alignment:**

One of the primary considerations for Placeholder Tokens is ensuring alignment with existing consumer regulations. The rent and return model seeks to provide users with a compliant method to engage in decentralized finance, addressing potential regulatory concerns associated with outright ownership.

2. MSRP-Based Rent and Return:

The use of Manufacturer's Suggested Retail Price (MSRP) for renting and returning Placeholder Tokens establishes a transparent and standardized approach. This mechanism sets a predefined value for the rental period, contributing to clarity in transactions and aiding in regulatory compliance.

3. Clear User Agreement:

To enhance legal compliance, Placeholder Tokens operate with a clear user agreement. This agreement outlines the terms and conditions of renting and returning tokens, including the MSRP-based valuation, rental duration, and the process of returning tokens to the system.

4. Adherence to Consumer Protection Laws:

The retail compliance rent and return model of Placeholder Tokens incorporates elements that align with consumer protection laws. Users are provided with a straightforward process, ensuring they understand the terms of engagement and have the necessary protections afforded by consumer laws.

5. Smart Contract/Node Audits:

Legal compliance is bolstered by conducting regular audits of the smart nodes/contracts underlying Placeholder Tokens.

6. Collaboration with Regulatory Bodies:**

To stay ahead of regulatory developments, Placeholder Tokens may actively collaborate with regulatory bodies. This proactive approach involves engaging in an ongoing dialogue

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Sam Altman-OpenAI saga: Researchers had warned board of ‘dangerous, humanity-threatening’ AI – Business Today

Before Sam Altman, the CEO of OpenAI, was temporarily removed from his position, a group of staff researchers sent a letter to the board of directors. They warned about a significant artificial intelligence discovery that could potentially pose a threat to humanity, according to a report by Reuters citing two individuals.

The report suggests that this letter and the AI algorithm it discussed were not previously reported, but it could have played a crucial role in the boards decision to remove Altman. Over 700 employees had threatened to leave OpenAI and join Microsoft, one of the companys backers, in support of Altman. The letter was one of many issues raised by the board that led to Altmans dismissal, according to the report.

Earlier this week, Mira Murati, a long-time executive at OpenAI, mentioned a project called Q* (pronounced Q star)to the employees and stated that a letter had been sent to the board before the weekends events.

After the story was published, an OpenAI spokesperson, according to the report, said that Murati had informed the employees about what the media were about to report. The company that developed ChatGPT has made progress on Q*, which some people within the company believe could be a significant step towards achieving super-intelligence, also known as artificial general intelligence (AGI).

How is the new model different?

With access to extensive computing resources, the new model was able to solve certain mathematical problems. Even though it was only performing math at the level of grade-school students, the researchers were very optimistic about Q*'s future success.

Math is considered one of the most important aspects ofgenerative AI development. Current generative AI is good at writing and language translation by statistically predicting the next word. However, the ability to do math, where there is only one correct answer, suggests that AI would have greater reasoning capabilities similar to human intelligence. This could be applied to novel scientific research.

Unlike a calculator that can only solve a limited number of operations, AGI can generalise, learn, and comprehend. In their letter to the board, the researchers highlighted the potential danger of AIs capabilities. There has been a long-standing debate among computer scientists about the risks posed by super-intelligent machines.

Sam Altman's Role

In this context, Altman led efforts to make ChatGPT one of the fastest-growing software applications in history and secured necessary investment and computing resources from Microsoft to get closer to super-intelligence.

In addition to announcing a series of new tools earlier this month, Altman hinted at a gathering of world leaders in San Francisco that he believed AGI was within reach. Four times now in the history of OpenAI, the most recent time was just in the last couple weeks, Ive gotten to be in the room, when we sort of push the veil of ignorance back and the frontier of discovery forward, and getting to do that is the professional honor of a lifetime, he said. The board fired Altman the next day.

Also read:As Sam Altman returns to OpenAI, heres who was fired from the new board and whos in

Also read:Sam Altman returns to OpenAI: Elon Musk says it is probably better than merging with Microsoft

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Blockchain in Insurance Market Size Worth USD 57.57 Billion in 2032 | Emergen Research – Yahoo Finance

Emergen Research

Increasing need of automation across the insurance sector and rising demand for secure online platforms are key factors driving blockchain in insurance market revenue growth.

Vancouver, Nov. 23, 2023 (GLOBE NEWSWIRE) -- The global blockchain in insurance market is witnessing remarkable growth, reaching a size of USD 2.10 Billion in 2022 and poised to achieve a rapid revenue Compound Annual Growth Rate (CAGR) of 39.2% during the forecast period. This surge is attributed to the increasing demand for automation in the insurance sector and a growing need for secure online platforms.

Streamlining Operations and Enhancing Security

Insurance companies are embracing blockchain technology to streamline operations, enhance security, and elevate customer experience. Notably, smart contracts play a pivotal role in automating claims processing, ensuring efficient handling when predefined criteria are met. This not only reduces processing time but also minimizes the risks of fraud and errors. The encryption of private data and secure sharing among relevant parties fortify data security, fostering confidence in the digital ecosystem.

In a recent development, Etherisc launched a decentralized, open-source insurance protocol and blockchain-based insurance program in January 2022. This innovation enables automatic policy issuance and seamless payouts for travel delays and cancellations, with transactions conducted through the blockchain payment system Gnosis Chain.

You Can Download Free Sample PDF Copy of this Report @ https://www.emergenresearch.com/request-sample/2510

Data Transparency Drives Innovation

Blockchain adoption is revolutionizing the analysis and pricing of insurance policies. The transparency and integrity features of blockchain provide insurers with a comprehensive and accurate view of potential customers. This, in turn, allows for more precise risk estimation, leading to personalized and fairer premium rates. Blockchain's role in reducing fraud in the insurance sector is pivotal, making it challenging for fraudsters to manipulate policies, claims, or any transactional data due to the technology's immutable ledger.

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Challenges and Restraints

However, the market faces challenges, including high initial setup costs, and regulatory organizations struggling to keep pace with technological advancements. Uncertain rules and a lack of clear standards hinder the widespread implementation of blockchain technology in the insurance industry. The absence of regulations poses a significant hurdle, especially considering the sensitivity of customer data in the insurance sector.

Emergen Research is Offering Limited Time Discount (Grab a Copy at Discounted Price Now) @ https://www.emergenresearch.com/request-discount/2510

Sector-Based Growth Insights

Life Insurance Takes the Lead: The life insurance segment emerged as the leader in the global blockchain in insurance market in 2022. Insurers are leveraging blockchain to automate policy issuance and management processes, enhancing accuracy and reducing administrative burdens. The tamper-proof nature of blockchain fosters trust between insurers and policyholders, while smart contracts enable automated claim settlements for quick payouts during urgent circumstances.

In a notable development, the first cryptocurrency-based life insurer, Meanwhile, raised USD 19 million in two seed stages. The company, licensed and regulated by the Bermuda Monetary Authority, plans to offer Bitcoin-denominated whole life insurance.

Health Insurance Shows Promise: The health insurance segment is expected to experience a moderately fast revenue growth rate. Blockchain is increasingly being deployed by health insurers to address challenges such as cumbersome claims processing, data interoperability, and fraud detection. The technology enables automated payouts, claim verification, and secure interchange of medical records, reducing processing times and costs. Improved data integrity accelerates the underwriting process, allowing for accurate risk assessment and more precise policy pricing.

Direct Order Can Be Placed Through This Link [Exclusive Copy] @ https://www.emergenresearch.com/select-license/2510

Blockchain in Insurance Report Summary

Report Details

Outcome

Market Size in 2022

USD 2.10 Billion

CAGR (20232032)

39.2%

Revenue Forecast To 2032

USD 57.57 Billion

Base Year For Estimation

2022

Historical Data

20202021

Forecast Period

20232032

Quantitative Units

Revenue in USD Billion and CAGR in % from 2022 to 2032

Report Coverage

Revenue forecast, company ranking, competitive landscape, growth factors, and trends

Segments Covered

Sector, type, organization size, application, and region

Regional Scope

North America, Europe, Asia Pacific, Latin America, and Middle East & Africa

Country Scope

U.S., Canada, Mexico, Germany, France, UK, Italy, Spain, Benelux, Russia, Rest of Europe, China, India, Japan, South Korea, ASEAN Countries, Oceania, Rest of APAC, Brazil, Rest of LATAM, Saudi Arabia, UAE, South Africa, Turkey, and Rest of Middle East & Africa

Key Companies Profiled

Oracle Corporation, Bitpay Inc., Blockcyper Inc., BTL Group Ltd., Cambridge Blockchain Inc., ChainThat Ltd., Consensys Software Inc., IBM Corporation, Microsoft Corporation, Amazon Web Services, Inc., Xledger, Auxesis Group, Guardtime, Accenture plc, R3, Blocksure Ltd., Foreverhold Ltd., Modex, Ernst & Young Global Limited, and KPMG International Limited

Customization Scope

10 hours of free customization and expert consultation

Blockchain in Insurance Top Companies and Competitive Landscape

The global blockchain in insurance market is consolidated with few large and medium-sized players accounting for majority of market revenue. Major players are deploying various strategies, entering into mergers & acquisitions, strategic agreements & contracts, developing, testing, and introducing more effective blockchain in insurance solutions.

Some major players included in the global blockchain in insurance market report are:

Oracle Corporation

Bitpay Inc.

Blockcyper Inc.

BTL Group Ltd.

Cambridge Blockchain Inc.

ChainThat Ltd.

Consensys Software Inc.

IBM Corporation

Microsoft Corporation

Amazon Web Services, Inc.

Xledger

Auxesis Group

Guardtime

Accenture plc

R3

Blocksure Ltd.

Foreverhold Ltd.

Modex

Ernst & Young Global Limited

KPMG International Limited

Blockchain in Insurance Latest Industry News

In July 2021, Oracle Financial Services Software Ltd, a division of Oracle Corp, partnered with Everest, a financial technology company to deliver blockchain to banks around the world to enhance their product offerings. Oracle Financial software is used in retail, corporate, and insurance banking.

In November 2020, B3i Services partnered with software giant Tata Consultancy Services to design, develop, and deployecosystem enhancements for the insurance industry using Distributed Ledger Technology (DLT). The companies will aim to enhance the digitization of the insurance business by providing customized solutions to risk managers, insurers, brokers, reinsurers, and industry service providers.

Browse Detailed Research Report @ https://www.emergenresearch.com/industry-report/blockchain-in-insurance-market

Blockchain in Insurance Market Segment Analysis

For the purpose of this report, Emergen Research has segmented the global blockchain in insurance market on the basis of sector, type, organization size, application, and region:

Sector Outlook (Revenue, USD Billion; 2019-2032)

Life Insurance

Health Insurance

Title Insurance

Type Outlook (Revenue, USD Billion; 2019-2032)

Organization Size Outlook (Revenue, USD Billion; 2019-2032)

Small Enterprises

Large Enterprises

Application Outlook (Revenue, USD Billion; 2019-2032)

Governance, Risk and Compliance (GRC) Management

Financial Management (Payments)

Death and Claims Management

Smart Contract

Identity Management & Fraud Detection

Other Applications

Regional Outlook (Revenue, USD Billion; 20192032)

North America

U.S.

Canada

Europe

Germany

France

UK

Italy

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Blockchain in Insurance Market Size Worth USD 57.57 Billion in 2032 | Emergen Research - Yahoo Finance

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DAstra Network: Which Blockchains Are Best Suited For Launchpad? – Blockchain Magazine

November 23, 2023 by Diana Ambolis

113

There is an old but powerful rule that applies to almost all areas of life: dont put all your eggs in one basket. Crypto launchpads are no exception here. Launchpads are platforms that allow blockchain projects to raise funds, build communities, and launch their tokens. However, not all blockchains are created equal, and choosing the

There is an old but powerful rule that applies to almost all areas of life: dont put all your eggs in one basket. Crypto launchpads are no exception here. Launchpads are platforms that allow blockchain projects to raise funds, build communities, and launch their tokens. However, not all blockchains are created equal, and choosing the right one for your launchpad is crucial. In this article, we will explore the best blockchains suited for launchpad and their particular advantages.

Ethereum is the second-largest blockchain by market capitalization and supports smart contracts and dApps. Ethereum has a large and active community of developers and users. Additionally, Ethereum has a well-established ecosystem of tools and services that can help launchpad projects succeed.

Binance Smart Chain is one of the most popular blockchains for launchpad projects. It is a high-performance blockchain that supports smart contracts and is compatible with the Ethereum Virtual Machine (EVM). BSC offers low transaction fees and fast confirmation times, making it an attractive option for developers. Additionally, BSC has a large community and is supported by Binance, one of the biggest cryptocurrency exchanges in the world. This makes it easier for launchpad projects to gain exposure and attract investors.

Polygon, formerly known as Matic Network, is a layer 2 scaling solution for Ethereum. It provides faster and cheaper transactions than Ethereum while maintaining compatibility with Ethereums smart contracts. Polygon also has its own token, MATIC, which can be used for transactions on the network. Polygons low transaction fees and fast confirmation times make it an attractive option for launchpad projects. Additionally, Polygon has a growing community of developers and users who are interested in decentralized finance (DeFi) and blockchain technology.

Last but not least, Tron is still a popular choice for launchpad projects. It is a high-speed blockchain that supports smart contracts and decentralized applications (dApps). Trons transaction fees are also low, making it a cost-effective option for developers. Additionally, Tron has a large and active community that is passionate about blockchain technology. This community can help launchpad projects gain traction and exposure, leading to more investment opportunities.

DAstra Network is a crypto incubator and token constructor that allows blockchain-based projects to generate revenue while giving their group of investors access to early-stage token sales. And yes, first of all, we decided to combine the most popular blockchains on our platform: Ethereum, BSC, Polygon, Tron all of them are supported on our platform. But our advantages are not limited to the wide variety of blockchains.

DAstra Network is a decentralized Web3 platform because it does not deal directly with investor capital or startup investment accounts, but uses smart contracts instead. Also, DAstra Network provides the opportunity to actively participate in the management of the platform through the possibility of membership in a decentralized autonomous organization (DAO_. In order to become a participant, you must have a minimum of 10,000 native DAN tokens. This allows users to make decisions related to the management of the platform. In addition, DAO participants have the opportunity to receive up to 2% of investments attracted to the project.

The fee on our platform is only 6%, while most launchpads charge a fee of 10%. Our interface is also easy to understand. Of course, in the future we plan to further develop our platform, adding new functionality and even new blockchains.

Our site: https://dastra.network/

Twitter: https://twitter.com/DAstra_network?t=lnrLuVW7zW_kNus3zg2nxg&s=09

Main Telegram Channel: https://t.me/dastra_international

Telegram Chat: https://t.me/dastranetworkint

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Artificial Intelligence and Synthetic Biology Are Not Harbingers of … – Stimson Center

Are AI and biological research harbingers of certain doom or awesome opportunities?

Contrary to the reigning assumption that artificial intelligence (AI) will super-empower the risks of misuse of biotech to create pathogens and bioterrorism, AI holds the promise of advancing biological research, and biotechnology can power the next wave of AI to greatly benefit humanity. Worries about the misuse of biotech are especially prevalent, recently prompting the Biden administration to publish guidelines for biotech research, in part to calm growing fears.

The doomsday assumption that AI will inevitably create new, malign pathogens and fuel bioterrorism misses three key points. First, the data must be out there for an AI to use it. AI systems are only as good as the data they are trained upon. For an AI to be trained on biological data, that data must first exist which means it is available for humans to use with or without AI. Moreover, attempts at solutions that limit access to data overlook the fact that biological data can be discovered by researchers and shared via encrypted form absent the eyes or controls of a government. No solution attempting to address the use of biological research to develop harmful pathogens or bioweapons can rest on attempts to control either access to data or AI because the data will be discovered and will be known by human experts regardless of whether any AI is being trained on the data.

Second, governments stop bad actors from using biotech for bad purposes by focusing on the actors precursor behaviors to develop a bioweapon; fortunately, those same techniques work perfectly well here, too. To mitigate the risks that bad actors be they human or humans and machines combined will misuse AI and biotech, indicators and warnings need to be developed. When advances in technology, specifically steam engines, concurrently resulted in a new type of crime, namely train robberies, the solution was not to forego either steam engines or their use in conveying cash and precious cargo. Rather, the solution was to employ other improvements, to later include certain types of safes that were harder to crack and subsequently, dye packs to cover the hands and clothes of robbers. Similar innovations in early warning and detection are needed today in the realm of AI and biotech, including developing methods to warn about reagents and activities, as well as creative means to warn when biological research for negative ends is occurring.

This second point is particularly key given the recent Executive Order (EO) released on 30 October 2023 prompting U.S. agencies and departments that fund life-science projects to establish strong, new standards for biological synthesis screening as a condition of federal funding . . . [to] manage risks potentially made worse by AI. Often the safeguards to ensure any potential dual-use biological research is not misused involve monitoring the real world to provide indicators and early warnings of potential ill-intended uses. Such an effort should involve monitoring for early indicators of potential ill-intended uses the way governments employ monitoring to stop bad actors from misusing any dual-purpose scientific endeavor. Although the recent EO is not meant to constrain research, any attempted solutions limiting access to data miss the fact that biological data can already be discovered and shared via encrypted forms beyond government control. The same techniques used today to detect malevolent intentions will work whether large language models (LLMs) and other forms of Generative AI have been used or not.

Third, given how wrong LLMs and other Generative AI systems often are, as well as the risks of generating AI hallucinations, any would-be AI intended to provide advice on biotech will have to be checked by a human expert. Just because an AI can generate possible suggestions and formulations perhaps even suggest novel formulations of new pathogens or biological materials it does not mean that what the AI has suggested has any grounding in actual science or will do biochemically what the AI suggests the designed material could do. Again, AI by itself does not replace the need for human knowledge to verify whatever advice, guidance, or instructions are given regarding biological development is accurate.

Moreover, AI does not supplant the role of various real-world patterns and indicators to tip off law enforcement regarding potential bad actors engaging in biological techniques for nefarious purposes. Even before advances in AI, the need to globally monitor for signs of potential biothreats, be they human-produced or natural, existed. Today with AI, the need to do this in ways that still preserve privacy while protecting societies is further underscored.

Knowledge of how to do something is not synonymous with the expertise in and experience in doing that thing: Experimentation and additional review. AIs by themselves can convey information that might foster new knowledge, but they cannot convey expertise without months of a human actor doing silica (computer) or in situ (original place) experiments or simulations. Moreover, for governments wanting to stop malicious AI with potential bioweapon-generating information, the solution can include introducing uncertainty in the reliability of an AI systems outputs. Data poisoning of AIs by either accidental or intentional means represents a real risk for any type of system. This is where AI and biotech can reap the biggest benefit. Specifically, AI and biotech can identify indicators and warnings to detect risky pathogens, as well as to spot vulnerabilities in global food production and climate-change-related disruptions to make global interconnected systems more resilient and sustainable. Such an approach would not require massive intergovernmental collaboration before researchers could get started; privacy-preserving approaches using economic data, aggregate (and anonymized) supply-chain data, and even general observations from space would be sufficient to begin today.

Setting aside potential concerns regarding AI being used for ill-intended purposes, the intersection of biology and data science is an underappreciated aspect of the last two decades. At least two COVID-19 vaccinations were designed in a computer and were then printed nucleotides via an mRNA printer. Had this technology not been possible, it might have taken an additional two or three years for the same vaccines to be developed. Even more amazing, nuclide printers presently cost only $500,000 and will presumably become less expensive and more robust in their capabilities in the years ahead.

AI can benefit biological research and biotechnology, provided that the right training is used for AI models. To avoid downside risks, it is imperative that new, collective approaches to data curation and training for AI models of biological systems be made in the next few years.

As noted earlier, much attention has been placed on both AI and advancements in biological research; some of these advancements are based on scientific rigor and backing; others are driven more by emotional excitement or fear. When setting a solid foundation for a future based on values and principles that support and safeguard all people and the planet, neither science nor emotions alone can be the guide. Instead, considering how projects involving biology and AI can build and maintain trust despite the challenges of both intentional disinformation and accidental misinformation can illuminate a positive path forward.

The concerns regarding the potential for AI and biology to be used for ill-intended purposes should not overshadow the present conversations about using technologies to address important regional and global issues.

Specifically, in the last few years, attention has been placed on the risk of an AI system training novice individuals how to create biological pathogens. Yet this attention misses the fact that such a system is only as good as the data sets provided to train it; the risk already existed with such data being present on the internet or via some other medium. Moreover, an individual cannot gain from an AI the necessary experience and expertise to do whatever the information provided suggests such experience only comes from repeat coursework in a real-world setting. Repeat work would require access to chemical and biological reagents, which could alert law enforcement authorities. Such work would also yield other signatures of preparatory activities in the real world.

Others have raised the risk of an AI system learning from biological data and helping to design more lethal pathogens or threats to human life. The sheer complexity of different layers of biological interaction, combined with the risk of certain types of generative AI to produce hallucinated or inaccurate answers as this article details in its concluding section makes this not as big of a risk as it might initially seem. Specifically, the risks from expert human actors working together across disciplines in a concerted fashion represent a much more significant risk than a risk from AI, and human actors working for ill-intended purposes together (potentially with machines) presumably will present signatures of their attempted activities. Nevertheless, these concerns and the mix of both hype and fear surrounding them underscore why communities should care about how AI can benefit biological research.

The merger of data and bioscience is one of the most dynamic and consequential elements of the current tech revolution. A human organization, with the right goals and incentives, can accomplish amazing outcomes ethically, as can an AI. Similarly, with either the wrong goals or wrong incentives, an organization or AI can appear to act and behave unethically. To address the looming impacts of climate change and the challenges of food security, sustainability, and availability, both AI and biological research will need to be employed. For example, significant amounts of nitrogen have already been lost from the soil in several parts of the world, resulting in reduced agricultural yields. In parallel, methane gas is a pollutant that is between 22 and 40 times worse depending on the scale of time considered than carbon dioxide in terms of its contribution to the Greenhouse Effect impacting the planet. Bacteria generated through computational means can be developed through natural processes that use methane as a source of energy, thus consuming and removing it from contributing to the Greenhouse Effect, while simultaneously returning nitrogen from the air to the soil, thereby making the soil more productive in producing large agricultural yields.

The concerns regarding the potential for AI and biology to be used for ill-intended purposes should not overshadow the present conversations about using technologies to address important regional and global issues. To foster global activities to help both encourage the productive use of these technologies for meaningful human efforts and ensure ethical applications of the technologies in parallel an existing group, namely the international Genetically Engineered Machine (iGEM) competition, should be expanded. Specifically, iGEM represents a global academic competition, which started in 2004, aimed at improving understanding of synthetic biology while also developing an open community and collaboration among groups. In recent years, over 6,000 students in 353 teams from 48 countries have participated. Expanding iGEM to include a track associated with categorizing and monitoring the use of synthetic biology for good as well as working with national governments on ensuring that such technologies are not used for ill-intended purposes would represent two great ways to move forward.

As for AI in general, when considering governance of AIs, especially for future biological research and biotechnology efforts, decisionmakers would do well to consider both existing and needed incentives and disincentives for human organizations in parallel. It might be that the original Turing Test designed by computer science pioneer Alan Turing intended to test whether a computer system is behaving intelligently, is not the best test to consider when gauging local, community, and global trust. Specifically, the original test involved Computer A and Person B, with B attempting to convince an interrogator, Person C, that they were human, and that A was not. Meanwhile, Computer A was trying to convince Person C that they were human.

Consider the current state of some AI systems, where the benevolence of the machine is indeterminate, competence is questionable because some AI systems are not fact-checking and can provide misinformation with apparent confidence and eloquence, and integrity is absent. Some AI systems can change their stance if a user prompts them to do so.

However, these crucial questions regarding the antecedents of trust should not fall upon these digital innovations alone these systems are designed and trained by humans. Moreover, AI models will improve in the future if developers focus on enhancing their ability to demonstrate benevolence, competence, and integrity to all. Most importantly, consider the other obscured boxes present in human societies, such as decision-making in organizations, community associations, governments, oversight boards, and professional settings such as decision-making in organizations, community associations, governments, oversight boards, and professional settings. These human activities also will benefit by enhancing their ability to demonstrate benevolence, competence, and integrity to all in ways akin to what we need to do for AI systems as well.

Ultimately, to advance biological research and biotechnology and AI, private and public-sector efforts need to take actions that remedy the perceptions of benevolence, competence, and integrity (i.e., trust) simultaneously.

David Bray is Co-Chair of the Loomis Innovation Council and a Distinguished Fellow at the Stimson Center.

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AMBASSADORS OF ETHICAL AI PRACTICES | by ACWOL | Nov … – Medium

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In envisioning a future where AI developers worldwide embrace the Three Way Impact Principle (3WIP) as a foundational ethical framework, we unravel a transformative landscape for tackling the Super Intelligence Control Problem. By integrating 3WIP into the curriculum for AI developers globally, we fortify the industry with a super intelligent solution, fostering responsible, collaborative, and environmentally conscious AI development practices.

Ethical Foundations for AI Developers:

Holistic Ethical Education: With 3WIP as a cornerstone in AI education, students receive a comprehensive ethical foundation that guides their decision-making in the realm of artificial intelligence.

Superior Decision-Making: 3WIP encourages developers to consider the broader impact of their actions, instilling a sense of responsibility that transcends immediate objectives and aligns with the highest purpose of lifemaximizing intellect.

Mitigating Risks Through Collaboration: Interconnected AI Ecosystem: 3WIP fosters an environment where AI entities collaborate rather than compete, reducing the risks associated with unchecked development.

Shared Intellectual Growth: Collaboration guided by 3WIP minimizes the potential for adversarial scenarios, contributing to a shared pool of knowledge that enhances the overall intellectual landscape.

Environmental Responsibility in AI: Sustainable AI Practices: Integrating 3WIP into AI curriculum emphasizes sustainable practices, mitigating the environmental impact of AI development.

Global Implementation of 3WIP: Universal Ethical Standards: A standardized curriculum incorporating 3WIP establishes universal ethical standards for AI development, ensuring consistency across diverse cultural and educational contexts.

Ethical Practitioners Worldwide: AI developers worldwide, educated with 3WIP, become ambassadors of ethical AI practices, collectively contributing to a global community focused on responsible technological advancement.

Super Intelligent Solution for Control Problem: Preventing Unintended Consequences: 3WIP's emphasis on considering the consequences of actions aids in preventing unintended outcomes, a critical aspect of addressing the Super Intelligence Control Problem.

Responsible Decision-Making: Developers, equipped with 3WIP, navigate the complexities of AI development with a heightened sense of responsibility, minimizing the risks associated with uncontrolled intelligence.

Adaptable Ethical Framework: Cultural Considerations: The adaptable nature of 3WIP allows for the incorporation of cultural nuances in AI ethics, ensuring ethical considerations resonate across diverse global perspectives.

Inclusive Ethical Guidelines: 3WIP accommodates various cultural norms, making it an inclusive framework that accommodates ethical guidelines applicable to different societal contexts.

Future-Proofing AI Development: Holistic Skill Development: 3WIP not only imparts ethical principles but also nurtures critical thinking, decision-making, and environmental consciousness in AI professionals, future-proofing their skill set.

Staying Ahead of Risks: The comprehensive education provided by 3WIP prepares AI developers to anticipate and address emerging risks, contributing to the ongoing development of super intelligent solutions.

The integration of Three Way Impact Principle (3WIP) into the global curriculum for AI developers emerges as a super intelligent solution to the Super Intelligence Control Problem. By instilling ethical foundations, fostering collaboration, promoting environmental responsibility, and adapting to diverse cultural contexts, 3WIP guides AI development towards a future where technology aligns harmoniously with the pursuit of intellectual excellence and ethical progress. As a super intelligent framework, 3WIP empowers the next generation of AI developers to be ethical stewards of innovation, navigating the complexities of artificial intelligence with a consciousness that transcends immediate objectives and embraces the highest purpose of lifemaximizing intellect.

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NOTE:A COMPLICATED WAY OF LIFE abbreviated as ACWOL is a philosophical framework containing just five tenets to grok and five tools to practice. If you would like to know more, write to connect@acwol.com Thanks so much.

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