The cryptocurrency market is in turmoil – Born2Invest

The crisis in the markets is uninterrupted during the expansion of the Covid-19 pandemic. Meanwhile, the market for cryptosystems is experiencing a moment of low confidence. Volatility has skyrocketed and investors are looking to mitigate the risk by moving into safer assets. That is shown in a study published this Sunday, March 15, by the firm TokenInsight.

In the aforementioned text, analysts rely on data about derivatives to establish an insightful picture of the current state of the market. According to their findings, the market is still in a stage of risk reduction, low confidence and high volatility.

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According to the firm, the market has not yet shaken off the panic. In that context, the study concluded, liquidity has not yet recovered to a normal level. In other words, volatility could continue to wreak havoc.

On the one hand, the firm assured that the recent fall in prices and the decrease in open interest (open futures positions) indicate a downward trend in the short term. In this scenario, investors would be forced to liquidate their positions, added TokenInsight. This is what happened recently at BitMEX, where investors liquidated up to $700 million.

Similarly, following option market data in cases such as the bitcoin futures and options exchange Deribit, the analysis firm found that the market is in a stage of extreme uncertainty along with extremely high volatility.

Among the patterns of behavior, analysts found the possibility of a 23% rise in the price of Bitcoin to a range close to $7,500 between June and September this year. In contrast, the short term shows a lot of distrust, with a percentage of probability of reaching that price at only 13%.

Of the data analyzed by TokenInsight, the way in which the implied volatility of Bitcoin increased in the last month, compared to a wider range of three months, stands out. In the latter range, volatility peaked at 122%, with 89% on average. But in one month, that peak even reached 182%, with the average reaching 95%.

Bitcoin started the year with a strong position on the market. In the face of the halving of mining rewards, the expected halving, scheduled for May, Bitcoin had its best January in the last 7 years. In that first month of the year, the price of BTC had a rebound of more than 32%. With that increase, it surpassed $9,500 after starting 2020 with $7,174.

In that context, however, Bitcoins performance so far this year was not close to other cryptosystems in the market, which also started the year strong. By the end of February, BTCs 23.20% return on investment (ROI) was the second lowest of the top 20 cryptosystems by market capitalization.

However, constant news of the coronavirus outbreak in China and its subsequent spread worldwide has taken its toll on the cryptocurrency market, which has collapsed, as have traditional markets. The fall was so big that Bitcoin has been positioned below its fair value, a metric developed by Coin Metrics, which contrasts market capitalization and effective capitalization.

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(Featured image by mohamed_hassan via Pixabay)

DISCLAIMER: This article was written by a third party contributor and does not reflect the opinion of Born2Invest, its management, staff or its associates. Please review our disclaimer for more information.

This article may include forward-looking statements. These forward-looking statements generally are identified by the words believe, project, estimate, become, plan, will, and similar expressions. These forward-looking statements involve known and unknown risks as well as uncertainties, including those discussed in the following cautionary statements and elsewhere in this article and on this site. Although the Company may believe that its expectations are based on reasonable assumptions, the actual results that the Company may achieve may differ materially from any forward-looking statements, which reflect the opinions of the management of the Company only as of the date hereof. Additionally, please make sure to read these important disclosures.

First published in CRIPTONOTICIAS, a third-party contributor translated and adapted the article from the original. In case of discrepancy, the original will prevail.

Although we made reasonable efforts to provide accurate translations, some parts may be incorrect. Born2Invest assumes no responsibility for errors, omissions or ambiguities in the translations provided on this website. Any person or entity relying on translated content does so at their own risk. Born2Invest is not responsible for losses caused by such reliance on the accuracy or reliability of translated information. If you wish to report an error or inaccuracy in the translation, we encourage you to contact us.

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The cryptocurrency market is in turmoil - Born2Invest

Startup Spotlight: Forestry Machine Learning wants to help clients use artificial intelligence to improve business – Richmond.com

With businesses everywhere being disrupted by the coronavirus outbreak, it seems like a tough time to be an entrepreneur starting a new venture.

Yet the co-founders of the Richmond-based startup company Forestry Machine Learning say they are keeping a positive long-term outlook.

The startup specializes in helping clients implement a cutting-edge type of artificial intelligence called machine learning to improve their business strategies and operations, and the co-founders say they foresee demand only increasing for that service.

It is an interesting time to be launching a company, said David Der, the startups CEO. Co-founder Brian Forrester is chief revenue officer.

Overall, I am optimistic, Der said. Sure, there might be some setbacks nobody is really taking in-person meetings right now but a lot of the value we can deliver can be done virtually anyway.

Our sales strategy remains the same, he said. We are still prospecting and in business development stages, full speed ahead.

Machine learning is a subset of artificial intelligence that involves using computer algorithms to quickly analyze large amounts of data and learn from it. The tools can be used to make better predictions about how people and systems behave.

The Forestry part of the companys name is a nod to lingo within the artificial intelligence industry.

Machine learning, artificial intelligence, and the larger ecosystem around that, is really just coming of age, said Forrester, who is also co-founder of Workshop Digital, a Richmond-based digital marketing firm where he continues to work.

For the last three or four years, we have had access to more data than we have ever had before, Forrester said. Computing power has caught up to be able to process that. A lot of the companies I work with over 100 companies across the U.S. and Canada are still trying to figure out how to leverage that data to inform business strategy, reduce risk and increase profitability.

Machine learning can be used to improve financial forecasting, cybersecurity and fraud prevention, among other things, said Der, who brings to the startup a background in computer science.

Der was among a group of co-founders of Notch, a technology consulting company founded in Richmond in 2014 that specialized in data engineering and machine learning. In late 2017, Notch was acquired by financial services giant Capital One Financial Corp.

Der said he left Capital One in December after a two-year commitment and started working on creating the new business.

Entrepreneurship is really a passion of mine, Der said. In a way, we are picking up the torch where Notch left off two years ago. I also want to bring to the table my experience now from the financial services industry.

While machine learning can be utilized by many organizations, Der said the startup is targeting three primary industries: financial services, health care and digital marketing.

The goal of machine learning in digital marketing is to deliver the right message to the right person through the right medium at the right time, Der said.

Forrester brings deep experience in digital marketing through his company, Digital Workshop.

I have spent 11 years building a company, and we have been fairly successful, Forrester said. My role in this company [Forestry] is to build our sales and marketing strategy as we grow and follow Davids lead.

Will Loving and Scott Walker, both with Richmond-based Consult360, also are investing partners in the startup.

Forrester said he has experience navigating a startup during a time of economic disruption.

I dont think the problems that machine learning is trying to solve are going to go away just because of this, he said, referring to the coronavirus disruptions. In fact, they are more pervasive now than ever. Leveraging more computing power to tackle bigger problems is not going to go away.

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Startup Spotlight: Forestry Machine Learning wants to help clients use artificial intelligence to improve business - Richmond.com

3 global manufacturing brands at the forefront of AI and ML – JAXenter

If you are a major manufacturer in 2020 and you have employed the likes of Deloitte, McKinsey or PWC, it is safe to assume that they have advised you to invest big in artificial intelligence and machine learning.

According to reports by Deloitte and McKinsey, machine learning improves product quality and has the potential to double cash flow. Lets take a look at three global manufacturers who are already on board.

SEE ALSO: Introduction to machine learning in Node.js

Siemens is the largest industrial manufacturer in Europe, and whether they are putting together planes, trains or automobiles, their goal is to solve production challenges efficiently and sustainably. One of the ways they are able to do this is by using machine learning (ML) to enhance additive manufacturing, otherwise known as AM.

The process involves putting together parts that make objects from 3D model data. The idea is to streamline the manufacturing process into one printing stage. Machine learning plays a crucial part in achieving this goal.

Lets take a look at the recent creation of the AM Path Optimizer, part of its NX software offering. Its designed to eliminate overheating during production, an issue that stands in the way of the industrialization of AM. According to Siemens, the path optimizer combines simulation technology and ML to analyze a full job file minutes before execution on the machine. With this they hope to achieve reduced scrap and increased production yields. In short, they want to minimize trial and error and get it right the first time around.

Although still in the beta stage, the AM Path Optimizer has had some early adopters. TRUMPF, a German industrial machine manufacturing company based in Stuttgart, has been singing its praises, pointing to improved geometrical accuracy, more homogenous surface quality and a significant reduction in the scrap rate expected.

Machine learning and artificial intelligence do not just influence how companies manufacture but also help them decide what they manufacture. American packaged-food company ConAgra is one such company. They are using AI to identify consumer preferences.

The vegan market, for example, is growing rapidly: by 2026 it is projected to be worth just over $24 billion (the vegan cheese market alone will be worth $4 billion). And ConAgra, despite being over a century old, is aware of consumer preferences moving towards healthier options and away from things like processed meat. This awareness comes in part from their AI platform, which analyses data from social media and consumer food purchasing behavior.

This has led the company to produce alternative meat products like veggie burgers and even cauliflower rice. Its also helped speed up the manufacturing process, so rather than planning for next year, they can design, make, and release a new product in as little as a few weeks.

The major appliance manufacturer Bosch is a great believer in AI and has committed substantial resources to making it a central part of its business. In 2016, it launched a $30,000 competition on Kaggle, an online community of data scientists and machine learning practitioners. Competitors were asked to predict internal failures, with the aim of improving Bosch production line performance.

They described the assembly process as much like a souffle, delicious, delicate and a challenge to prepare; if it comes out of the oven sunken, you are going to retrace your steps to see where things went wrong. In order to identify and predict where its souffles go wrong, Bosch records data at every step of the manufacturing process and assembly line.

This is where the Kagglers come in. With access to advanced data analytics and using thousands of tests and measurements for each component on the assembly line, the winners Ash and Beluga were able to so solve internal failures using their own fault detection method.

In 2017, the Bosch Center for AI was founded with the tagline Solutions created for life. This is part of a broader effort to put AI and machine learning at the heart of the business. What they are working on now is reducing reliance on human expert knowledge base and deploying AI algorithms in safety-critical applications.

More recently, Bosch has been working on preventing increasingly advanced hackers from compromising their cars. According to CTO Michael Bolle: In the area of machine learning and AI, products and machines learn from data, and so the data itself can be part of the attack surface.

SEE ALSO: How machine learning is changing business communications

What Bosch, ConAgra, and Siemens realize is that their business is increasingly reliant on data, and the best way to harness that data is to invest heavily in AI and ML. According to McKinsey, not investing in AI or ML is not really an option, especially if you are a manufacturer with heavy assets: Manufacturers with heavy assets that are unable to read, interpret, and use their own machine-generated data to improve performance by addressing the changing needs of customers and suppliers will quickly lose out to their competitors or be acquired.

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3 global manufacturing brands at the forefront of AI and ML - JAXenter

Proof in the power of data – PES Media

Engineers at the AMRC have researched the use of the cloud to capture data from machine tools with Tier 2 member Amido

Cloud data solutions being trialled at the University of Sheffield Advanced Manufacturing Research Centre (AMRC) could provide a secure and cost-effective way for SME manufacturers to explore how machine learning and Industry 4.0 technologies can boost their productivity.

Jon Stammers, AMRC technical fellow in the process monitoring and control team, says: Data is available on every shopfloor but a lot of time it isnt being captured due to lack of connectivity, and therefore cannot be analysed. If the cloud can capture and analyse that data then the possibilities are massive.

Engineers in the AMRCs Machining Group have researched the use of the cloud to capture data from machine tools with new Tier Two member Amido, an independent technical consultancy specialising in assembling, integrating and building cloud-native solutions.

Mr Stammers adds: Typically we would have a laptop sat next to a machine tool capturing its data; a researcher might do some analysis on that laptop and share the data on our internal file system or on a USB stick. There is a lot of data generated on the shopfloor and it is our job to capture it, but there are plenty of unanswered questions about the analysis process and the cloud has a lot to bring to that.

In the trial, data from two CNC machines in the AMRCs Factory of the Future: a Starrag STC 1250 and a DMG Mori DMU 40 eVo, was transferred to the Microsoft Azure Data Lake cloud service and converted into a parquet format, which allowed Amido to run a series of complex queries over a long period of time.

Steve Jones, engagement director at Amido, explains handling those high volumes of data is exactly what the cloud was designed for: Moving the data from the manufacturing process into the cloud means it can be stored securely and then structured for analysis. The data cant be intercepted in transit and it is immediately encrypted by Microsoft Azure.

Security is one of the huge benefits of cloud technology, Mr Stammers comments. When we ask companies to share their data for a project, it is usually rejected because they dont want their data going offsite. Part of the work were doing with Amido is to demonstrate that we can anonymise data and move it off site securely.

In addition to the security of the cloud, Mr Jones says transferring data into a data lake means large amounts can be stored for faster querying and machine learning.

One of the problems of a traditional database is when you add more data, you impact the ability for the query to return the answers to the questions you put in; by restructuring into a parquet format you limit that reduction in performance. Some of the queries that were taking one of the engineers up to 12 minutes to run on the local database, took us just 12 seconds using Microsoft Azure.

It was always our intention to run machine learning against this data to detect anomalies. A reading in the event data that stands out may help predict maintenance of a machine tool or prevent the failure of a part.

Storing data in the cloud is extremely inexpensive and that is why, according to software engineer in the process monitoring and control team Seun Ojo, cloud technology is a viable option for SMEs working with the AMRC, part of the High Value Manufacturing (HVM) Catapult.

He says: SMEs are typically aware of Industry 4.0 but concerned about the return on investment. Fortunately, cloud infrastructure is hosted externally and provided on a pay-per-use basis. Therefore, businesses may now access data capture, storage and analytics tools at a reduced cost.

Mr Jones adds: Businesses can easily hire a graphics processing unit (GPU) for an hour or a quantum computer for a day to do some really complicated processing and you can do all this on a pay-as-you-go basis.

The bar to entry to doing machine learning has never been lower. Ten years ago, only data scientists had the skills to do this kind of analysis but the tools available from cloud platforms like Microsoft Azure and Google Cloud now put a lot of power into the hands of inexpert users.

Mr Jones says the trials being done with Amido could feed into research being done by the AMRC into non-geometric validation.

He concludes: Rather than measuring the length and breadth of a finished part to validate that it has been machined correctly; I want to see engineers use data to determine the quality of a job.

That could be really powerful and if successful would make the process of manufacturing much quicker. That shows the value of data in manufacturing today.

AMRCwww.amrc.co.uk

Amidowww.amido.com

Michael Tyrrell

Digital Coordinator

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Proof in the power of data - PES Media

The Global Deep Learning Chipset Market size is expected to reach $24.5 billion by 2025, rising at a market growth of 37% CAGR during the forecast…

Deep learning chips are customized Silicon chips that integrate AI technology and machine learning. Deep learning and machine learning, which are the sub-sets of Artificial Intelligence (AI) sub-sets, are used in carrying out AI related tasks.

New York, March 20, 2020 (GLOBE NEWSWIRE) -- Reportlinker.com announces the release of the report "Global Deep Learning Chipset Market By type By Technology By End User By Region, Industry Analysis and Forecast, 2019 - 2025" - https://www.reportlinker.com/p05876895/?utm_source=GNW Deep learning technology has entered many industries around the world and is accomplished through applications like computer vision, speech synthesis, voice recognition, machine translation, drug discovery, game play, and robotics.

The widespread adoption of artificial intelligence (AI) for practical business applications has brought in a range of complexities and risk factors in virtually every industry, but one thing is certain: in todays AI industry, hardware is the key to solving many of the main problems facing the sector, and chipsets are at the heart of that hardware solution. Considering AIs widespread applicability, its almost certain that every chip will have some kind of AI system embedded in future. The engine could make a wide range of forms, from a basic AI library running on a CPU to more complex, custom hardware. The potential for AI is better fulfilled when the chipsets are designed to provide the adequate amount of computing capacity for different AI applications at the right power budget. This is a trend that leads to increased specialization and diversifying of AI-optimized chipsets.

The factors influencing the development of the deep learning chipset market are increased acceptance of cloud-based technology and profound use of learning in big data analytics. A single-chip processor generates lighting effects and transforms objects each time a 3D scene is redrawn, or a graphic processing unit turns out to be very meaningful and efficient when applied to computation styles needed for neural nets. This in turn fuels the growth of the market for deep learning chipsets.

Based on type, the market is segmented into GPU, ASIC, CPU, FPGA and Others. Based on Technology, the market is segmented into System-on-chip (SoC), System-in-package (SIP) and Multi-chip module & Others. Based on End User, the market is segmented into Consumer Electronics, Industrial, Aerospace & Defense, Healthcare, Automotive and Others. Based on Regions, the market is segmented into North America, Europe, Asia Pacific, and Latin America, Middle East & Africa.

The major strategies followed by the market participants are Product Launches. Based on the Analysis presented in the Cardinal matrix, Google, Inc., Microsoft Corporation, Samsung Electronics Co., Ltd., Intel Corporation, Amazon.com, Inc., and IBM Corporation are some of the forerunners in the Deep Learning Chipset Market. Companies such as Advanced Micro Devices, Inc., Qualcomm, Inc., Nvidia Corporation, and Xilinx, Inc. are some of the key innovators in Deep Learning Chipset Market. The market research report covers the analysis of key stake holders of the market. Key companies profiled in the report include Samsung Electronics Co., Ltd. (Samsung Group), Microsoft Corporation, Intel Corporation, Nvidia Corporation, IBM Corporation, Google, Inc., Amazon.com, Inc. (Amazon Web Services), Qualcomm, Inc., Advanced Micro Devices, Inc., and Xilinx, Inc.

Recent strategies deployed in Deep Learning Chipset Market

Partnerships, Collaborations, and Agreements:

Jan-2020: Xilinx collaborated with Telechips, a leading Automotive System on Chip (SoC) supplier. The collaboration would provide a comprehensive solution for addressing the integration of in-cabin monitoring systems (ICMS) and IVI systems.

Dec-2019: Samsung Electronics teamed up with Baidu, a leading Chinese-language Internet search provider. Under the collaboration, the companies announced that the development of Baidu KUNLUN, its first cloud-to-edge AI accelerator has been completed. KUNLUN chip provides 512 gigabytes per second (Gbps) memory bandwidth and offers up to 260 Tera operations per second (TOPS) at 150 watts.

Oct-2019: Microsoft announced technology collaboration with Nvidia, a technology company. The collaboration was focused on intelligent edge computing, which is designed for helping the industries in gaining and managing the insights from the data created by warehouses, retail stores, manufacturing facilities, urban infrastructure, connected buildings, and other environments.

Oct-2019: Microsoft launched Lakefield, a dual-screen device powered by Intels unique processor. This device combines a hybrid CPU with Intels Foveros 3D packaging technology. This provides more flexibility to device makers for innovating designs, experience, and form factor.

Jun-2019: AMD came into partnership with Samsung following which, the former company is licensing its graphics technology to Samsung for use in future mobile chips. Under this partnership, Samsung paid AMD for getting access to its RDNA graphics architecture.

Jun-2019: Nvidia collaborated with Volvo for developing artificial intelligence that is used in self-driving trucks.

May-2019: Samsung Electronics came into partnership with Efinix, an innovator in programmable product platforms and technologies. Under this partnership, the companies were aimed at developing Quantum eFPGAs on Samsungs 10nm silicon process.

Dec-2018: IBM extended its partnership with Samsung for developing 7-nanometer (nm) microprocessors for IBM Power Systems, LinuxONE, and IBM Z. The expansion was aimed at driving the performance of the unmatched system including encryption and compression speed, acceleration, memory, and I/O bandwidth, as well as system scaling.

Jun-2018: AWS announced its collaboration with Cadence Design Systems. The collaboration was aimed at delivering a Cadence Cloud portfolio to electronic systems and semiconductor design.

Mar-2018: Nvidia came into partnership with Arm for bringing deep learning interface to billions of consumer electronics, mobile, and Internet of Things devices.

Acquisition and Mergers:

Aug-2019: Xilinx took over Solarflare, a provider of high-performance, low latency networking solutions. The acquisition helped in generating more revenues and enabled new marketing and R&D funds for the future.

Apr-2019: Intel completed the acquisition of Omnitek, a provider of video and vision field-programmable gate array (FPGA). Through the acquisition, the FPGA processor business of the company has been doubled.

Jul-2018: Intel took over eASIC, a fabless semiconductor company. The acquisition bolstered the companys business in providing chips.

Apr-2017: AMD acquired Nitero, a company engaged in providing technology to connect VR headsets wirelessly to PCs. The acquisition helped the company in getting control over VR experiences.

Product Launches and Product Expansions:

Dec-2019: Nvidia launched Drive AGX Orin, a new Orin AI processor or system-on-chip (SoC). This processor improves power efficiency and performance. This processor is used in evolving the automotive business.

Dec-2019: AWS unveiled Graviton2, the next-generation of its ARM processors. It is a custom chip that is designed with 7nm architecture and based on 64-bit ARM Neoverse cores.

Nov-2019: AMD launched two new Threadripper 3 CPUs with 24 and 32 cores. Both these CPUs will be integrated into AMDs new TRX40 platform using the new sTRX4 socket.

Nov-2019: Intel unveiled Ponte Vecchio GPUs, a graphics processing unit (GPU) architecture. This chip was designed for handling the artificial intelligence loads and heavy data in the data center.

Nov-2019: Intel launched Stratix 10 GX 10M, a new FPGA. This consists of two large FPGA dies and four transceiver tiles and has a total of 10.2 million logic elements and 2304 user I/O pins.

Oct-2018: Google launched TensorFlow, the popular open-source artificial intelligence framework. This framework runs deep learning, machine learning, and other predictive and statistical analytics workloads. This simplifies training models, the process of acquiring data, refining future results, and serving predictions.

Sep-2019: AWS released Amazon EC2 G4 GPU-powered Amazon Elastic Compute Cloud (Amazon EC2) instances. It delivers up to 1.8 TB of local NVMe storage and up to 100 Gbps of networking throughput to AWS custom Intel Cascade Lake CPUs and NVIDIA T4 GPUs.

Aug-2019: Xilinx released Virtex UltraScale+ VU19P, a 16nm device with 35 billion transistors. It has four chips on an interposer. It is the worlds largest field-programmable gate array (FPGA) and has 9 million logic cells.

May-2019: Nvidia introduced NVIDIA EGX, an accelerated computing platform. This platform was aimed at allowing the companies in performing low-latency AI at the edge for perceiving, understanding, and acting in real-time on continuous streaming data between warehouses, factories, 5G base stations, and retail stores.

Nov-2018: AWS introduced Inferentia and Elastic Inference, two chips and 13 machine learning capabilities and services. Through these launches, the company aimed towards attracting more developers.

Sep-2018: Qualcomm unveiled Snapdragon Wear 3100 chipset. This chipset is used in smartwatches and has extended battery life.

Aug-2018: AMD introduced B450 chipset for Ryzen processors. The chip runs about 2 watts lower in power than B350 chipset.

Jul-2018: Google introduced Tensor Processing Units or TPUs, the specialized chips. This chip lives in data centers of the company and simplifies the AI tasks. These chips are used in enterprise jobs.

Apr-2018: Qualcomm launched QCS605 and QCS603 SoCs, two new system-on-chips. These chips combine image signal processor, CPU, AI, GPU technology for accommodating several camera applications, smart displays, and robotics.

Scope of the Study

Market Segmentation:

By Compute Capacity

High

Low

By Type

GPU

ASIC

CPU

FPGA

Others

By Technology

System-on-chip (SoC)

System-in-package (SIP)

Multi-chip module & Others

By End User

Consumer Electronics

Industrial

Aerospace & Defense

Healthcare

Automotive

Others

By Geography

North America

o US

o Canada

o Mexico

o Rest of North America

Europe

o Germany

o UK

o France

o Russia

o Spain

o Italy

o Rest of Europe

Asia Pacific

o China

o Japan

o India

o South Korea

o Singapore

o Malaysia

o Rest of Asia Pacific

LAMEA

o Brazil

o Argentina

o UAE

o Saudi Arabia

o South Africa

o Nigeria

o Rest of LAMEA

Companies Profiled

Samsung Electronics Co., Ltd. (Samsung Group)

Microsoft Corporation

Intel Corporation

Nvidia Corporation

IBM Corporation

Google, Inc.

Amazon.com, Inc. (Amazon Web Services)

Qualcomm, Inc.

Advanced Micro Devices, Inc.

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The Global Deep Learning Chipset Market size is expected to reach $24.5 billion by 2025, rising at a market growth of 37% CAGR during the forecast...

Innovative AI and Machine-Learning Technology That Detects Emotion Wins Top Award – Express Computer

CampaignTester was awarded Best Application of Artificial Intelligence to Optimize Creative at the 2020 Campaigns & Elections Reed Awards.

CampaignTester is a cutting-edge mobile-based platform that utilizes emotion analytics and machine learning to detect a users emotion and engagement level while watching video content. Their proprietary platform aims to deliver key audience insights for organizations to validate, revise and perfect their video content messaging.

Campaigns & Elections Reed Award winners represent the best-of-the-best in the political campaign and advocacy industries. The 2020 Reed Awards honored winners across 16 distinct category groups, representing the different specialisms of the political campaign industry, with distinct category groups for International (non-US) work, and Grassroots Advocacy work.

It was particularly meaningful being recognized among some of the finest marketers and technologists in the world. Bill Lickson, CampaignTesters Chief Operating Officer affirmed. I was thrilled and honored to accept this prestigious award on behalf of our entire talented team.

Aaron Itzkowitz, Chief Executive Officer and Founder of CampaignTester added, This award is a great start to what looks to be a wonderful year for our client-partners and our company. While our technology was recognized for excellence in political marketing, our technology is for any industry that uses video in marketing

If you have an interesting article / experience / case study to share, please get in touch with us at [emailprotected]

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Express Computer is one of India's most respected IT media brands and has been in publication for 24 years running. We cover enterprise technology in all its flavours, including processors, storage, networking, wireless, business applications, cloud computing, analytics, green initiatives and anything that can help companies make the most of their ICT investments. Additionally, we also report on the fast emerging realm of eGovernance in India.

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Innovative AI and Machine-Learning Technology That Detects Emotion Wins Top Award - Express Computer

Encryption app to avoid coronavirus censorship removed by Apple in China – Quartz

Apple yesterday removed Boom the Encryption Keyboard, an app that allowed Chinese internet users to bypass censorship, from the China app store, according to its developer.

Wang Huiyu, a New York-based Chinese citizen in his 20s, told Quartz that he developed Boom together with one of his university classmates during the outbreak of the coronavirus. Part of the motivation for Wang to develop the app, which went live on Feb. 15, was to offer people a chance to counter rigid online surveillance, and to provide them with an entertaining private messaging app.

According to an email sent by Apple to Wang, the app was removed because it contained content that is illegal in China. The app is still available in other regions, including Hong Kong, he said.

I designed the app because I wanted to remind people of the importance of privacy, and my target customers are people born after 1995 or 2000. I feel those under 20 will be able to accept new things and ideas the fastest, said Wang.

Boom encrypts text, both in Chinese and English, by turning them into emoji or Japanese or Korean characters, as well as rearranging lines of text in random order. The receivers of such messages can decrypt them by copying the emoji or characters using the app, with the original text then displayed automatically on the keyboards interface. As Chinas blanket online censorship relies heavily on the detection of key words or even pictures containing sensitive words, apps like Boom can help users avoid such scrutiny.

Another app developed by Wang, which offered animated wallpapers featuring political figures including former Chinese leader Jiang Zemin, was also removed (link in Chinese) from Apples mainland China app store on the same day as Boom, he said.

Apple has removed apps from its China app store in the past for containingillegal content. Among the apps that have been pulled were Quartzs news app, which was removed from the China app store last year.

Apple did not immediately reply to a request for comment.

While most apps that enable encrypted messages and communications have long been banned in China, Wang said he suspects Boom drew the attention of authorities because of the way Chinese internet users quickly moved to preserve a particular coronavirus-linked article from being scrubbed by censors recently.

The article in question is an interview with Ai Fen, a Wuhan doctor who said she was reprimanded for alerting other people about the novel coronavirus. The article, published on March 10 by Chinas Ren Wu magazine, was deleted within hours of its publication. Various versions of the article, including those reproduced in emoji, English, and even Hebrew, emerged after the deletion as people scrambled to save Ais story, part of a broader wave of efforts by internet users in China to prevent censors from removing crucial stories and memories related to the epidemic. Wang said downloads of Boom from mainland China surged after the incident.

Apple has been repeatedly accused of bowing to China by removing apps, such as a Hong Kong live map app that allowed protesters to crowdsource police movements during last years protests in the city.

Continued here:
Encryption app to avoid coronavirus censorship removed by Apple in China - Quartz

EARN IT: The US Anti-Encryption Bill That Threatens Private Speech… – Bitcoin Magazine

Theres a new bill in the works to fight against child sexual abuse material (CSAM) and other risky services on the internet but it could come at a cost to online privacy.

Eliminating Abusive or Rampant Neglect of Interactive Technologies (EARN IT) was proposed by the Senate Judiciary Committee and sponsored by senators from both sides of the aisle such as Lindsey Graham (R-SC) and Richard Blumenthal (D-CT). The bill is also supported by the National Center for Missing and Exploited Children and the National Center on Sexual Exploitation.

However, this bill is problematic for both freedom of speech and privacy online according to Riana Pfefferkorn, associate director of Surveillance and Cybersecurity at the Center for Internet and Society.

This bill is trying to convert your anger at Big Tech into law enforcements long-desired dream of banning strong encryption, argued Pfefferkorn in a blog post. Pfefferkorns detailed explanation says EARN IT appears less like a legitimate way to prevent the spread of child exploitation content and more like a covert attempt to ban end-to-end encryption, without having to ban it outright.

At the end of January 2020, a draft of the proposal was leaked and met with similar apprehension not only by Big tech juggernauts (Facebook, Google, etc.) but also their sometimes opposing counterparts, freedom of speech advocates.

Were concerned the EARN IT Act may be used to roll back encryption, which protects everyones safety from hackers and criminals, and may limit the ability of American companies to provide the private and secure services that people expect, Facebook spokesperson Thomas Richards said in a statement to the Washington Post.

Clearly, the issue could not be more sensitive. Patrick A. Trueman, president and CEO of the National Center on Sexual Exploitation, recently voiced this opinion, apparently advocating for EARN IT.

Right now, Big Tech has no incentive to prevent predators from grooming, recruiting, and trafficking children online and as a result countless children have fallen victim to child abusers on platforms like Instagram, Snapchat, and TikTok, said Trueman.

While everyone who has publicly condemned EARN IT has also stated a universal commitment to child safety online and in the real world, many say the bills far-reaching approach to content moderation could do more harm than good by essentially eliminating private conversations across the internet, particularly on social media platforms and messaging apps.

To fully comprehend what EARN IT proposes, one needs to understand the importance of two bills passed in the 90s. These laid the groundwork for how privacy and free speech are supposed to operate for U.S. citizens.

First, Section 230 of the Communications Decency Act (CDA), passed in 1996, allows for the continued development of the internet as a free market and universal good for free speech. Section 230 says that online platforms or providers of interactive computer services mostly cannot be held responsible for the things their users say or do on their platforms. It uses the term mostly instead of always because platforms are still liable for exceptions that violate intellectual and federal criminal law. Essentially, this means if someone is defamed for being a fraud, that person can sue their defamer, but they cannot sue the platform for providing the space for free speech.

Second, the Communications Assistance for Law Enforcement Act (CALEA), passed in 1994, requires telecom providers to make their networks wiretappable for law enforcement. However, it also ensured a carve-out for encrypted messages and information services where websites, email, social media, messaging apps and cloud storage fall out of CALEAs jurisdiction.

The purpose of these carve-outs was to reach a compromise between the competing interests of network security providers, privacy advocates, civil liberties, technological growth and law enforcement. In combination, Section 230 and CALEA prevent regulation from suffocating growth and development of the U.S. information economy.

Since the 90s, more regulation has passed to undo Section 230. Section 230 has been amended since it was passed: SESTA/FOSTA, enacted in 2018, pierces providers immunity from civil and state-law claims about sex trafficking, wrote Pfefferkorn. SESTA/FOSTA is currently being challenged in federal court being unconstitutional and doing more harm than good.

There is also already a regulatory reporting scheme for online providers combatting CSAM. Also, Section 230 does not keep federal prosecutors from holding providers accountable for CSAM on their services.

While the current reporting schemes success is questionable, there is reasonable evidence to believe that EARN IT is an attempt to regulate communication on the internet more broadly.

The so-called EARN IT bill will strip Section 230 protections away from any website that doesnt follow a list of best practices, meaning those sites can be sued into bankruptcy, writes Joe Mullin, a policy analyst with the Electronic Freedom Foundation.

Mullin is referring to how EARN IT would target CSAM. It proposes to do this by creating a federal commission to develop a list of best practices for preventing CSAM that online platform providers would have to follow or else lose their immunity under Section 230 meaning they could be sued into bankruptcy. This commission would largely be made up of law enforcement and allied groups such as the National Center for Missing and Exploited Children (NCMEC).

According to Mullin, The best practices list will be created by a government commission, headed by Attorney General Barr, who has made it very clear he would like to ban encryption and guarantee law enforcement legal access to any digital message.

Although the word encryption does not appear anywhere in the EARN IT bill, Mullin is suspicious of how the federal commission might design best practices. For instance, in an earlier draft of the bill, the NCMEC Vice-President stated that online services should be made to screen all messages using screening technology approved by themselves and law enforcement, report what they find in messages to the NCMEC and be held legally responsible for the content of the messages sent by others.

In short, the commission could quietly give backdoor access to all U.S. hosted information services, undoing encrypted messages altogether.

Mullin, Pfefferkorn and other outspoken critics of EARN IT all agree that the bills proposed execution is opening the door for the elimination of encryption: the fact that it is never explicitly addressed is especially concerning..

According to Mullin, its also possible that the current draft of EARN IT will be amended to undo the damage it could do to online privacy. Could be as straightforward as putting a clause in[,] saying the bill doesnt apply to encryption, he writes.

However, until some amendment occurs, critics are wary of a federal commission consisting of fewer than twenty people, according to the latest reports, who would be making large-scale privacy and security decisions for the entire U.S. population.

Such a potentially big power grab would seem a bit ridiculous, but Pfefferkorn also acknowledged that EARN IT rides on a wave of resentment or techlash the U.S. population has begun to harbor against many internet-based companies. This animosity is directed toward both U.S. tech juggernauts, whose business models run off of surveillance capitalism and online free speech platforms which, for the average person, can feel like the concentrated font of human venality every time we open our phones, according to Pfefferkorn.

In general, free speech on social media platforms is already a nuanced and complicated topic. Even under Section 230, social media platforms can still censor content when they deem it inappropriate internally. For example, Twitter has a keyword blacklist and the protocol for how it works can change on a dime.

For Nozomi Hayase, social psychologist and writer, surveillance of encrypted messaging is a movement toward forfeiting democracy. By Hayases reasoning, privacy is a prerequisite for a kind of solitude that allows people to think and act independently and is, therefore, essential to a functioning democratic society.

Democracy requires sovereign individuals who are able to communicate with one another freely. This freedom comes with great responsibility, said Hayase, who recognized EARN IT as the newest installment of a dangerous trend toward online censorship. If we really want to have a truly democratic society, we have to accept the fact that it is the duty of each person to develop his or her own moral capacity to determine what is right and wrong, instead of depending on an external authority to tell us what we should or should not do.

Currently, EARN IT has been referred to the Senate Judiciary Committee. Citizens can contact their congressmen directly or take action through the Electronic Frontier Foundations website.

More here:
EARN IT: The US Anti-Encryption Bill That Threatens Private Speech... - Bitcoin Magazine

Apple censors encrypted chat app BOOM on behalf of Chinese government – Reclaim The Net

While the whole world is being crippled by the coronavirus pandemic, China, the country to be first affected, says that its not improving drastically.

It is, however, questionable whether they improved as a result of the prompt healthcare delivery or blatant censorship that hides whats really going on in the country.

The latter may be equally true, considering Chinas rampant authoritarian censorship practices.

Apple is now amidst more censorship drama with the Chinese government.

The big tech company is under pressure for removing an app from the Chinese App Store that was being used to share news related to the pandemic inside the country.

The Boom Text Encryption Keyboard app by Huiyu Wang, a New York-based Chinese developer, was developed in an effort to encrypt and decrypt text messages.

Chinese citizens used the app to share information and get a hold of the recent developments surrounding the coronavirus pandemic.

At a juncture where the Chinese government may end up tightening the leash around information circulation, apps such as Boom are invaluable.

The app makes use of techniques such as emoji replacement and word jumbling to facilitate encrypted message communication.

The app allowed Chinese users to share information about the coronavirus without being detected by the filters deployed by the Chinese government.

It was first available when the coronavirus infestation reached up to mainland China. Based on Wangs recent tweet, it was found that Apple pulled out the app as it was content that is illegal in China.

Wang says that the app must have attracted attention from the Chinese officials when it was used to circulate an interview related to Coronavirus that the government was trying to censor.

Whats more, Wang says that his social media profiles as well as an app, completely unrelated to the encrypted keyboard, were now removed.

Alas, this hasnt been the first time Apple has censored on behalf of the Chinese government.

Time and again, Apple took down several apps, especially VPN applications from the App Store just because the Chinese government directed it to do so.

While proclaiming that privacy is a human right, the tech giant ends up removing several applications that allow the Chinese netizens to have private conversations and steer clear of the censorship imposed by their government.

Continued here:
Apple censors encrypted chat app BOOM on behalf of Chinese government - Reclaim The Net

Privacy & Encryption Will Be More Important Than Ever In Wake Of Coronavirus – Techdirt

from the encrypt-ALL-the-things! dept

Be it Cambridge Analytica, Equifax, or wireless carrier location data, the U.S. has already faced a steady parade of privacy and security related scandals. Now as countries around the world hunker down to slow the rate of COVID-19, the problem could easily grow even larger as a chain reaction of implications make privacy, security, and tools like encryption more important than ever.

Millions of Americans are now telecommuting for the first time. As they do so, more than a few of them won't be wise enough to use basic security precautions while handling sensitive work or health related data. And as we've noted for years, services like VPNs often don't provide reliable protection, given it's hard to verify just how secure or trustworthy service owners are. Many services were already shady as hell, and even the reliable offerings may struggle under the load.

Many folks are already using the pandemic as scam fodder. As a result, the shift to home work -- and the dramatic spike in healthcare information being shoveled around the internet -- means that the battle over encryption is also more important than ever:

As with everything this pandemic is going to touch, there are layers and layers of complications here. Many popular teleconferencing services don't have particularly great privacy standards. And with no U.S. privacy law to speak of for the internet era (outside of the problematic COPPA), it shouldn't be hard to see how we might run into some additional problems. It should also be easy to see how the pandemic may provide justification for all manner of problematic privacy and security related behavior, from the war on encryption to the quest to expand domestic surveillance.

Israel, for example, has started using a previously unknown database of phone location data to help track the spread of COVID-19. The Washington Post this week indicated that both Google and Facebook (that bastion of privacy-related trust) are also working with the U.S. government to explore the use of location data to help combat the spread of the virus. Experts suggest that we should be able to walk and chew gum at the same time, including data sharing and sunset provisions into any efforts designed to battle the pandemic:

We're only going to have so much attention to go around as we worry about ourselves, our families, and our livelihoods. Unfortunately, the pandemic could easily provide cover for the steady expansion of problematic domestic surveillance efforts that continues at a pretty brisk clip, even in normal times.

Filed Under: covid-19, encryption, privacy, surveillance, tracking

See more here:
Privacy & Encryption Will Be More Important Than Ever In Wake Of Coronavirus - Techdirt