Archive for November, 2020

One for the haters: Twitter considers adding a dislike button – The Next Web

Over the years there have been two missing components everyone on Twitter moans about: the notorious edit option and the dislike button. Well, it turns out we might be getting one of those in the future.

Responding to a tweet from security expert Jackie Singh, Twitter product lead Kayvon Beykpour revealed the company is exploring adding a dislike button to its platform but its simply not one of its most urgent priorities.

Instead, Twitter is currently concentrating its efforts on cutting the spread of inauthentic behavior, enhancing the safety of its users with better tools to curb and report harassment, and cracking down on misinformation that could have harmful effects on itsusers.

Anyone who actively uses Twitter already knows the company has spent a considerable amount of time on battling harassment and the spread of misinformation on its platform. Indeed, it has introduced a slewof features aimed at solving those two issues over the years.

More recently, the company shared it had labeled over 300,000 tweets for election misinformation, some of which were posted by none other than US President Donald Trump.

To be fair, Twitter has previously experimented with the idea of a dislike button, although not quite in the same way its like button works.

The company had briefly made it possible for users to report tweets they dont like, but it was impossible for other users to see a tally of the dislikes a tweet had received. Its unclear if Twitter is exploring any alternatives beyond this, but time will tell.

Until then, youll simply have to do with the good old ratio.

via Gizmodo

Read next: Google Chrome introduces tab search here's how to use it

Original post:
One for the haters: Twitter considers adding a dislike button - The Next Web

Eight technology trends that will disrupt the banking industry – Consultancy-me.com

Technology is rapidly transforming the way how banks operate and how they serve their customers, and becoming a key enabler of competitive edge. According to a new report by Deloittes Middle East Financial Services practice, eight emerging technologies are set to disrupt the banking industry in the coming years. An outline of the technologies and some of the key benefits they have to offer to the banking industry.

Cloud is an essential tool of todays service delivery model, and enables banks to penetrate new business opportunities and access new delivery channels. By leveraging cloud-based services, banks are able to decrease data storage costs through saving on capital expenditure (CAPEX) and operating expenditure (OPEX), while ensuring customer data is protected.

There are three types of cloud services:

Some of the key benefits of cloud-based working for banks include:

Big data refers to large and complex datasets that create significant challenges for traditional data management and analysis tools in practical timeframes. Using advanced analytics, banks can apply technology to efficiently extract valuable insights from data, and use those to improve the (strategic) decision-making process.

Benefits of Big Data analytics for the banking sector include:

Artificial Intelligence (AI) is now becoming a part of the business environment and is reinventing the entire ecosystem of the banking sector. By increasing the level of automation and using dynamic systems, AI supports decision-making, enhances the customer experience, and improves operational efficiency. AI also provides a strategic oversight for getting value out of data, which is now needed more than ever due to the data influx from a wide range of sources.

Benefits of artificial Intelligence in the banking sector include:

Deloitte foresees a growing appetite for AI investment across the Middle East. In fact, in one scenario, spending could reach over US$100 million in 2021.

Internet of Things is a technology which connects devices/sensors in a network with the aim of providing better data-driven insights. The banking sector started utilizing IoT relatively late compared to sectors such as energy and automotive. However, IoT has been gaining importance in financial services lately, especially in retail banks, which are showing large investments in IoT to be used in their internal infrastructure and consumer-facing capabilities.

The use of IoT devices will allow banks to collect massive stockpiles of customer data, ranging from their demographic details to their income and spending patterns, to their preferences. The access to this amount of data has the potential to drive fundamental change in the industry including increasing operational efficiency, preventing fraud, reducing nonperforming assets (NPAs), improving employee and customer efficiency, and facilitating easier verification, loan tracking, and customer retention.

The banking industry is mandating the use of intelligent automation to drive efficiency, eliminate repetition, and improve customer satisfaction by providing fast and efficient services. The technology behind this automation is called robotic process automation (RPA).

RPA is transforming how banks operate. Some key benefits of RPA in the banking industry:

Blockchain technology and its associated distributed ledgers were devised as a simple yet smart solution to keep track of the Bitcoin cryptocurrency in circulation. The solution leveraged a distributed ledger architecture under which all users who participated as nodes in the network had a copy of the entire ledger.

Benefits of Blockchain technology in the banking sector include:

A quantum computer is a new type of computer that harnesses the power of quantum mechanics to solve problems that were previously believed to be intractable on regular computers. In the banking sector, the authors predict four major use cases.

There still is some way to go however before quantum computing becomes a reality. According to Deloitte, the 2020s will likely be a time of progress in quantum computing, but the 2030s are the most likely decade for a larger market to develop.

Open Banking refers to the movement that banks work together in an ecosystem of (technology) partners. Banks broadly have four broad strategic options: full-service provider; utility; supplier; and marketplace interface.

These four options are not mutually exclusive. Two of these utility and supplier involve losing control of the customer interface as products and distribution become unbundled. However, organizations pursuing more than one option are likely to need to sharpen their own proposition for each option they pursue to remain competitive.

Open banking is poised to introduce a number of opportunities both for incumbents and new entrants:

In related news, according to another recent report by Deloittes Middle East Financial Services practice, the firm found that one fifth ofMiddle East bank holders now use FinTech solutions to bolster their experience and financial management.

View original post here:
Eight technology trends that will disrupt the banking industry - Consultancy-me.com

What’s Next In AI, Chips And Masks – SemiEngineering

Aki Fujimura, chief executive of D2S, sat down with Semiconductor Engineering to talk about AI and Moores Law, lithography, and photomask technologies. What follows are excerpts of that conversation.

SE: In the eBeam Initiatives recent Luminary Survey, the participants had some interesting observations about the outlook for the photomask market. What were those observations?

Fujimura: In the last couple of years, mask revenues have been going up. Prior to that, mask revenues were fairly steady at around $3 billion per year. Recently, they have gone up beyond the $4 billion level, and theyre projected to keep going up. Luminaries believe a component of this increase is because of the shift in the industry toward EUV. One question in the survey asked participants, What business impact will COVID have on the photomask market? Some people think it may be negative, but the majority of the people believe that its not going to have much of an effect or it might have a positive effect. At a recent eBeam Initiative panel, the panelists commented that the reason for a positive outlook might be because of the demand picture in the semiconductor industry. The shelter-in-place and work-from-home environments are creating more need and opportunities for the electronics and semiconductor industries.

SE: How will extreme ultraviolet (EUV) lithography impact mask revenues?

Fujimura: In general, two thirds of the participants in the survey believe that it will have a positive impact. When you go to EUV, you have a fewer number of masks. This is because EUV brings the industry back to single patterning. 193nm immersion with multiple patterning requires more masks at advanced nodes. With EUV, you have fewer masks, but mask costs for each EUV layer is more expensive.

SE: For decades, the IC industry has followed the Moores Law axiom that transistor density in chips doubles every 18 to 24 months. At this cadence, chipmakers can pack more and smaller transistors on a die, but Moores Law appears to be slowing down. What comes next?

Fujimura: The definition of Moores Law is changing. Its no longer looking at the trends in CPU clock speeds. Thats not changing much. Its scaling more by bit width than by clock speed. A lot of that has to do with thermal properties and other things. We have some theories on where we can make that better over time. On the other hand, if you look at things like massively parallel computing using GPUs or having more CPU cores and how quickly you can access memory or how much memory you can access if you include those things, Moores Law is very much alive. For example, D2S supplies computing systems for the semiconductor manufacturing industry, so we are also a consumer of technology. We do heavy supercomputing, so its important for us to understand whats happening on the computing capability side. What we see is that our ability to compute is continuing to improve at about the same rate as before. But as programmers we have to adapt how we take advantage of it. Its not like you can take the same code and it automatically scales like it did 20 years ago. You have to understand how that scaling is different at any given point in time. You have to figure out how you can take advantage of the strength of the new generation of technology and then shift your code. So its definitely harder.

SE: Whats happening with the logic roadmap?

Fujimura: Were at 5nm in terms of what people are starting to do now. They are starting to plan 3nm and 2nm. And in terms of getting to the 2nm node, people are pretty comfortable. The question is what happens beyond that. It wasnt too long ago that people were saying: Theres no way were going to have 2nm. Thats been the general pattern in the semiconductor industry. The industry is constantly re-inventing itself. It is extending things longer than people ever thought possible. For example, look how long 193nm optical lithography lasted at advanced nodes. At one time, people were waiting for EUV. There was once a lot of doom and gloom about EUV. But despite being late, companies developed new processes and patterning schemes to extend 193nm. It takes coordination by a lot of people to make this happen.

SE: How long can we extend the current technology?

Fujimura: Theres no question that there is a physical limit, but we are still good for the next 10 years.

SE: Theres a lot of activity around AI and machine learning. Where do you see deep learning fitting in?

Fujimura: Deep learning is a subset of machine learning. Its the subset thats made machine learning revolutionary. The general idea of deep learning is to mimic how the brain works with a network of neurons or nodes. The programmer first determines what kind of a network to use. The programmer then trains the network by presenting it with a whole bunch of data. Often, the network is trained by labeled data. Using defect classification as an example, a human or some other program labels each picture as being a defect or not, and may also label what kind of defect it is, or even how it should be repaired. The deep learning engine iteratively optimizes the weights in the network. It automatically finds a set of weights that would result in the network to best mimic the labels. Then, the network is tried on data that it wasnt trained on to test to see if the network learned as intended.

SE: What cant deep learning do?

Fujimura: Deep learning does not reason. Deep learning does pattern matching. Amazingly, it turns out that many of the worlds problems are solvable purely with pattern matching. What you can do with deep learning is a set of things that you just cant do with conventional programming. I was an AI student in the early 1980s. Many of the best computer scientists in the world back then (and ever since) already were trying hard to create a chess program that could beat the chess masters. It wasnt possible until deep learning came along. Applied to semiconductor manufacturing, or any field, there are classes of problems that had not been practically possible without deep learning.

SE: Years ago, there wasnt enough compute power to make machine learning feasible. What changed?

Fujimura: The first publication describing convolutional neural networks was in 1975. The researcher, Dr. Kunihiko Fukushima, called it neocognitron back then, but the paper basically describes deep learning. But computational capability simply wasnt sufficient. Deep learning was enabled with what I call useful waste in massive computations by cost-effective GPUs.

SE: What problems can deep learning solve?

Fujimura: Deep learning can be used for any data. For example, people use it for text-to-speech, speech-to-text, or automatic translation. Where deep learning is most evolved today is when we are talking about two-dimensional data and image processing. A GPU happens to be a good platform for deep learning because of its single instruction multiple data (SIMD) processing nature. The SIMD architecture is also good at image processing, so it makes sense that its applied in that way. So for any problem in which a human expert can look at a picture without any other background knowledge and tell something with high probability, deep learning is likely to be able to do well.

SE: What about machine learning in semiconductor manufacturing?

Fujimura: We have already started to see products incorporating deep learning both in software and equipment. Any tedious and error-prone process that human operators need to perform, particularly those involving visual inspection, are great candidates for deep learning. There are many opportunities in inspection and metrology. There are also many opportunities in software to produce more accurate results faster to help with the turnaround time issues in leading-edge mask shops. There are many opportunities in correlating big data in mask shops and machine log files with machine learning for predictive maintenance.

SE: What are the challenges?

Fujimura: Deep learning is only as good as the data that is being given, so caution is required in deploying deep learning. For example, if deep learning is used to screen resumes by learning from labels provided by prior hiring practices, deep learning learns the biases that are already built into the past practices, even if unintended. If operators tend to make a type of a mistake in categorizing an image, deep learning that learned from the data labeled by that operators past behavior would learn to make the same mistake. If deep learning is used to identify suspected criminal behavior in the street images captured by cameras on the street based on past history of arrests, deep learning will try the best it can to mimic the past behavior. If deep learning is used to identify what a social media user tends to want to see in order to maximize advertising revenues, deep learning will learn to be extremely good at showing the user exactly what the user tends to watch, even if it is highly biased, fake or inappropriate. If misused, deep learning can accentuate and accelerate human addiction and biases. Deep learning is a powerful weapon that relies on the humans wielding it to use it carefully.

SE: Is machine learning more accurate than a human in performing pattern recognition tasks?

Fujimura: In many cases, its found that a deep learning-based program can inference better with a higher percentage of accuracy than a human, particularly when you look at it over time. A human might be able to look at a picture and recognize it with a 99% accuracy. But if the same human has to look at a much larger data set, and do it eight hours a day for 200 days a year, the performance of the human is going to degrade. Thats not true for a computer-based algorithm, including deep learning. The learning algorithms process vast amounts of data. They go through small sections at a time and go through every single one without skipping anything. When you take that into account, deep learning programs can be useful for these error prone processes that are visually oriented or can be cast into being visually oriented.

SE: The industry is working on other technologies to replicate the functions of the brain. Neuromorphic computing is one example. How realistic is this?

Fujimura: The brain is amazing. It will take a long time to create a neural network of the actual brain. There are very interesting computing models in the future. Neuromorphic is not a different computing model. Its a different architecture of how you do it. Its unclear if neuromorphic computing will necessarily create new kinds of capabilities. It does make some of them more efficient and effective.

SE: What about quantum computing?

Fujimura: The big change is quantum computing. That takes a lot of technology, money and talent. Its not an easy technology to develop. But you can bet that leading technology countries are working on it, and there is no question in my mind that its important. Take security, for example. 256-bit encryption is nothing in basic quantum computing. Security mechanisms would have to be significantly revamped in the world of quantum computing. Quantum computing used in a wrong way can be destructive. Staying ahead of that is a matter of national security. But quantum computing also can be very powerful in solving problems that were considered intractable. Many iterative optimization problems, including deep learning training, will see major discontinuities with quantum computing.

SE: Lets move back to the photomask industry. Years ago, the mask was simple. Over time, masks have become more complex, right?

Fujimura: At 130nm or around there, you started to see decorations on the mask. If you wanted to draw a circle on the wafer using Manhattan or rectilinear shapes, you actually drew a square on the mask. Eventually, it would become a circle on the wafer. However, starting at around 130nm, that square on the mask had to be written with decorations in all four corners. Then, SRAFs (sub-resolution assist features) started to appear on the mask around 90nm. There might have been some at 130nm, but mostly at 90nm. By 22nm, you couldnt find a critical layer mask that didnt have SRAFs on them. SRAFs are features on the mask that are designed explicitly not to print on the wafer. Through an angle, SRAFs project light into the main features that you do want to print on a wafer enough so that it helps to augment the amount of energy thats being applied to the resist. Again, this makes the printing of the main features more resilient to manufacturing process variation.

SE: Then multiple patterning appeared around 16nm/14nm, right?

Fujimura: The feature sizes became smaller and more complex. When we reached the limit of resolution for 193i, there was no choice but to go to multiple patterning, where multiple masks printed one wafer layer. You divide the features that you want on a given wafer layer and you put them on different masks. This provided more space for SRAFs for each of the masks. EUV for some layers is projected to go to multiple patterning, too. It costs more to do multiple patterning, but it is a familiar and proven technique for extending lithography to smaller nodes.

SE: To pattern a photomask, mask makers use e-beam mask writer systems based on variable shaped beam (VSB) technology. Now, using thousands of tiny beams, multi-beam mask writers are in the market. How do you see this playing out?

Fujimura: Most semiconductor devices are being patterned using VSB writers for the critical layers. Thats working fine. The write times are increasing. If you look at the eBeam Initiatives recent survey, the average write times are still around 8 hours. Going forward, we are moving toward more complex processes with EUV masks. Today, EUV masks are fairly simple. Rectangular writing is enough. But you need multi-beam mask writers because of the resist sensitivity. The resists are slow in order to be more accurate. We need to apply a lot of energy to make it work, and that is better with multi-beam mask writers.

SE: Whats next for EUV masks?

Fujimura: EUV masks will require SRAFs, too. They dont today at 7nm. SRAFs are necessary for smaller features. And, for 193i as well as for EUV, curvilinear masks are being considered now for improvements in wafer quality, particularly in resilience to manufacturing variation. But for EUV in particular, because of the reflective optics, curvilinear SRAFs are needed even more. Because multi-beam mask writing enables curvilinear mask shapes without a write time penalty, the enhanced wafer quality in the same mask write time is attractive.

SE: What are the big mask challenges going forward?

Fujimura: There are still many. EUV pellicles, affordable defect-free EUV mask blanks, high- NA EUV, and actinic or e-beam-based mask inspection both in the mask shop and in the wafer shop for requalification are all important areas for advancement. Now, the need to adopt curvilinear mask shapes has been widely acknowledged. Data processing, including compact and lossless data representation that is fast to write and read, is an important challenge. Optical proximity correction (OPC) and inverse lithography technology (ILT), which are needed to produce these curvilinear mask shapes to maximize wafer performance, need to run fast enough to be practical.

SE: What are the challenges in developing curvilinear shapes on masks?

Fujimura: There are two issues. Without multi-beam mask writers, producing masks with curvilinear shapes can be too expensive or may practically take too long to write. Second, controlling the mask variation is challenging. Once again, the reason you want curvilinear shapes on the mask is because wafer quality improves substantially. That is even more important for EUV than in 193nm immersion lithography. EUV masks are reflective. So, there is also a 6-degree incidence angle on EUV masks. And that creates more desire to have curvilinear shapes or SRAFs. They dont print on wafer. They are printed on the mask in order to help decrease process variation on the wafer.

SE: What about ILT?

Fujimura: ILT is an advanced form of OPC that computes the desired mask shapes in order to maximize the quality of wafer lithography. Studies have shown that ILT in particular, unconstrained curvilinear ILT can produce the best results in terms of resilience to manufacturing variation. D2S and Micron recently presented a paper on the benefits of full-chip, curvilinear stitchless ILT with mask-wafer co-optimization for memory applications. This approach enabled more than a 2X improvement in process windows.

SE: Will AI play a big role in mask making?

Fujimura: Yes. In particular, with deep learning, the gap between a promising prototype and a production-level inference engine is very wide. While there was quite a bit of initial excitement over deep learning, the world still has not seen very much in production adoption of deep learning. A large amount of this comes from the need for data. In semiconductor manufacturing, data security is extremely important. So while a given manufacturer would have plenty of data of its own kind, a vendor of any given tool, whether software or equipment, has a difficult time getting enough customer data. Even for a manufacturer, creating new data say, a SEM picture of a defect can be difficult and time-consuming. Yet deep learning programming is programming with data, instead of writing new code. If a deep learning programmer wants to improve the success rate of an inference engine from 92% to 95%, that programmer needs to analyze the engine to see what types of data it needs to be additionally trained to make that improvement, then acquire many instances of that type of data, and then iterate. The only way this can be done efficiently and effectively is to have digital twins, a simulated environment that generates data instead of relying only on physical real sample data. Getting to 80% success rate can be done with thousands of collected real data. But getting to 95% success rate requires digital twins. It is the lack of this understanding that is preventing production deployment of deep learning in many potential areas. It is clear to me that many of the tedious and error-prone processes can benefit from deep learning. And it is also clear to me that acceleration of many computing tasks using deep learning will benefit the deployment of new software capabilities in the mask shop.

Related Stories

EUVs Uncertain Future At 3nm And Below

Challenges Linger For EUV

Mask/Lithography Issues For Mature Nodes

The Evolution Of Digital Twins

Next-Gen Mask Writer Race Begins

See the original post:
What's Next In AI, Chips And Masks - SemiEngineering

Rand Paul pledges to fight Biden on lockdowns ‘and forcing us to wear masks forever’ | TheHill – The Hill

Sen. Rand PaulRandal (Rand) Howard PaulRick Scott tests positive for coronavirus Overnight Defense: Formal negotiations inch forward on defense bill with Confederate base name language | Senators look to block B UAE arms sales | Trump administration imposes Iran sanctions over human rights abuses Senators move to block Trump's B UAE arms sale MORE (R-Ky.)says that he would oppose strict coronavirus mitigation efforts if they are put forth by President-elect Joe BidenJoe BidenOutside groups flood Georgia with advertising buys ahead of runoffs Biden will receive @POTUS Twitter account on Jan. 20 even if Trump doesn't concede, company says Trump to participate in virtual G-20 summit amid coronavirus surge MORE, pledging to do everything I can to try to prevent Biden from locking us up and locking us down and forcing us to wear masks forever.

During an interview on "The CATS Roundtable with John Catsimatidis" that aired this weekend, Paul claimed Biden is talking more about a lockdown and hes gonna be a terrible president.

The former vice president has not called for a national lockdown, though he has said he will follow the advice of his scientific advisers when it comes to efforts to combat COVID-19.

At multiple points on the campaign trail, Biden said, I'm not going to shut down the country. I'm going to shut down the virus.

His health advisers have publicly said that they have no current plans to recommend a lockdown.

We are not in support of a nationwide lockdown and believe ... there simply isnt a scenario because we can get this under control, Atul Gawande, a member of Biden's COVID-19 advisory board, said on Sunday.

Paulalso claimed in his interview that current coronavirus mitigation strategies, such as standing 6 feet apart, frequent hand-washing and wearing masks, don't work, contradicting the advice of most health experts.

The Hill has reached out to Paul's office for further comment.

Kentucky, like most other states, is experiencing a spike incoronavirus cases. According to government data, the Bluegrass State broke its record for most cases recorded in a single day on Saturdaywith 3,293.

The day before that, Kentucky broke its record for most COVID-19 deaths reported in a single daywith 25.

See the rest here:
Rand Paul pledges to fight Biden on lockdowns 'and forcing us to wear masks forever' | TheHill - The Hill

Paul Misleads on Natural Infection and COVID-19 Vaccines – FactCheck.org

In a tweet, Sen. Rand Paul misleadingly suggested that immunity from [n]aturally acquired COVID-19 was better than that from a vaccine. But its not known how immunity from the two sources compares and the entire point of a vaccine is to offer immunity without the risk of getting sick.

Paul made his claim in a Nov. 17 tweet in which he listed interim efficacy figures from two ongoing vaccine clinical trials and then provided his own calculation of the effectiveness of natural infection with the coronavirus.

In a follow-up tweet, the Kentucky Republican shared a link to a New York Times article about a new unpublished study that found evidence of some immunity to the coronavirus in most people for at least six months. He commented: Why does the left accept immune theory when it comes to vaccines, but not when discussing naturally acquired immunity?

Paul, who has previouslyspread misinformationabout childhood vaccines, hasinaccurately argued during the COVID-19 pandemic that parts of the U.S. have reached herd, or community, immunity because of preexisting immunity to other coronaviruses.Herd immunityis when enough people in a population are immune to prevent spread of the disease.

Public health experts, however, have said that threshold is still a ways off and that allowing the virus to spread uncontrolled would lead to many needless deaths. A better approach, they say, is to stave off the spread of the virus until a vaccine is widely available.

A Paul spokesperson told us that the senator was not suggesting that immunity through natural infection with COVID-19 is better than getting immunity from a vaccine, but rather, highlighting research that says immunity is real.

We were directed to subsequent tweets, including one in which Paul said he was not arguing against vaccines but that COVID-19 patients can celebrate immunity if lucky enough to survive, as well as Pauls support for alternative options to speed along access to COVID-19 vaccines.

Still, the efficacy figure Paul provides for natural COVID-19 infection isnt accurate. And the juxtaposition of the numbers implies a kind of superiority of natural infection over vaccination a dangerous notion, given that contracting the virus poses a serious risk.

As University of Florida biostatistician Natalie Dean pointed out in response to Pauls tweet, The key distinction is that vaccines are a SAFE way to achieve immunity. Getting sick with COVID-19 is inherently unsafe. We would never ever tolerate a vaccine that carried even a fraction of the risks of natural infection.

While Paul purports to offer a precise percentage for how effective natural infection is relative to vaccines, experts told us that the comparison is premature and faulty.

The efficacy figures for the vaccines come from interim results released in press releases by the two companies, Pfizer and Moderna, and refer to the ability of the vaccines to prevent symptomatic COVID-19 infection in phase 3 trials. (The day after Pauls tweet, Pfizer announced additional data reflective of the full trial, which showed 95% efficacy.) But the number for natural infection is a broad-strokes calculation Paul made based on reinfections.

We dont really know how many reinfections there have been, virologist Angela Rasmussen said in a phone interview, adding that many reinfections have not been confirmed and that efficacy of naturally-acquired immunity isnt a thing.

Its just really ridiculous to try to use the way that efficacy is calculated in clinical trials for vaccines and apply that to epi[demiologic] data across the entire population, she said.

Dr. Paul Offit, director of the Vaccine Education Center at the Childrens Hospital of Philadelphia and a member of the Food and Drug Administrations Vaccines and Related Biological Products Advisory Committee, agreed.

Clearly, there are people who can be reinfected. As a general rule, its usually more mild reinfection, he told us. But, he added, most people arent tested, so you dont really know whos getting reinfected and who isnt.

Its true that reinfections so far appear to be rare, which bodes well both for a vaccine and for people who may have immunity as a result of infection. But no one knows yet how the immunity from each will compare.

Most vaccines do not offer quite as good protection from a pathogen as a natural infection will but of course, a person has to survive or suffer through the infection to get that future protection, sidestepping the entire function of a vaccine. Its therefore largely irrelevant whether or not vaccine immunity is superior to that from natural infection.

There are some instances in which a vaccine does elicit a better immune response. Thats the case for vaccines against human papillomavirus, or HPV; tetanus; Haemophilus influenzae type b; and pneumococcus.

Whether COVID-19 will be one of them remains to be seen. Rasmussen said it was possible, but still hypothetical at this point. We dont really know. We only know that these vaccines typically induce levels of neutralizing antibody that are comparable to the higher levels of neutralizing antibody thats been observed in convalescent patients, she said, referring to the type of antibody that can prevent cells from becoming infected with the virus.

Based on the performance of the shingles vaccine, Offit speculated that some of the later-arriving vaccine candidates that include powerful adjuvants, or chemicals that are added to vaccines to boost the immune response, such as those from Sanofi-GSK or Novavax, might be better than natural infection.

For both the vaccine and natural infection, important questions about COVID-19 immunity remain.

We do know that most people who get COVID-19 do develop some kind of measurable antibody response, but we dont know what that really means in terms of protection against either reinfection or whether you will mount protective immune responses upon a re-exposure, said Rasmussen.

As a result, public health officials have cautioned that for now, even if people have previously contracted COVID-19, individuals should still follow the standard recommendations.

The Centers for Disease Control and Prevention, for example, advises all people, including those who have recovered from COVID-19, to continue to physically distance, wear masks, wash their hands and avoid crowds.

Similarly, the CDC notes that it doesnt yet know if or when it will stop recommending masks or physical distancing after vaccination.

This is in contrast to Pauls assertion that people can celebrate immunity. In a Nov. 12 interview on Fox News, Paul used similar language and advocated that people drop these precautions.

We have 11 million people in our country whove already had COVID. We should tell them to celebrate, he said. We should tell them to throw away their masks, go to restaurants, live again, because these people are now immune.

A huge question is how durable immunity will be. Although the study Paul highlighted suggests that most people will be protected for at least six months and might mean they are protected against severe disease for many years its still not definitive, and doesnt mean that those timeframes will apply to everyone.

Shane Crotty, an immunologist at the La Jolla Institute for Immunology and one of the senior authors of the paper, noted on Twitter that the team observed a wide range of immune responses in people, including a lack of a measurable response in some people.

That led us to speculate, he said, quoting his manuscript, that it may be expected that at least a fraction of the SARS-CoV-2-infected population with particularly low immune memory would be susceptible to re-infection relatively quickly.

The CDC, notably, has said that people who have had COVID-19 may still benefit from a coronavirus vaccine. And some experts envision a future in which multiple vaccines are on the table for everyone.

It strikes me as not unlikely that we will learn what the duration of protection is and people will need whether naturally infected or vaccinated to have booster shots over some period of time, once a year, once every two years, once every five years, Barry Bloom, an immunologist and global health expert at Harvards T.H. Chan School of Public Health, said in a press call.

In his tweet about the new immunity study, Paul also suggested that Democrats were somehow denying realities about immunity from natural infection.

Why does the left accept immune theory when it comes to vaccines, but not when discussing naturally acquired immunity? he asked.

Scientists, however, objected to Pauls characterization.

I dont think anybodys dismissing [immunity following natural infection]. I think what people are saying is, its a bad idea as a strategy for dealing with infection, said Offit, who noted that 30% to 40% of the population could be considered at high risk for COVID-19.

Both Offit and Rasmussen also pointed out that historically, there isnt a lot of precedent for building herd immunity through natural infection.

People were getting smallpox for millennia, Rasmussen said, and the herd immunity threshold was never really reached.

The much safer way of getting to herd immunity is to use a vaccine instead, especially when multiple candidates are on the horizon.

Trying to achieve herd immunity [without a vaccine] would result in hundreds of thousands more if not millions of unnecessary deaths and debilitating illness for millions more, Rasmussen said. So I think its not really right to talk about vaccine-induced herd immunity versus naturally-acquired herd immunity without mentioning the fact that one of them has a very, very large price tag in human lives and quality of life attached to it.

Editors note: FactCheck.org does not accept advertising. We rely on grants and individual donations from people like you. Please consider a donation. Credit card donations may be made throughour Donate page. If you prefer to give by check, send to: FactCheck.org, Annenberg Public Policy Center, 202 S. 36th St., Philadelphia, PA 19104.

Visit link:
Paul Misleads on Natural Infection and COVID-19 Vaccines - FactCheck.org