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Saturday, August 22, 2020

dplyr filter(): Filter/Select Rows based on conditions

dplyr, R package that is at core of tidyverse suite of packages, provides a great set of tools to manipulate datasets in the tabular form. dplyr has a set of useful functions for “data munging”, including select(), mutate(), summarise(), and arrange() and filter().

And in this tidyverse tutorial, we will learn how to use dplyr’s filter() function to select or filter rows from a data frame with multiple examples. First, we will start with how to select rows of a dataframe based on a value of a single column or variable. And then we will learn how select rows of a dataframe using values from multiple variables or columns.

Let us get started by loading tidyverse, suite of R packges from RStudio.

library("tidyverse")

We will load Penguins data directly from cmdlinetips.com‘s github page.

path2data <- "https://raw.githubusercontent.com/cmdlinetips/data/master/palmer_penguins.csv"
penguins<- readr::read_csv(path2data)

Penguins data look like this

head(penguins)
## # A tibble: 6 x 7
##   species island bill_length_mm bill_depth_mm flipper_length_… body_mass_g sex  
##   <chr>   <chr>           <dbl>         <dbl>            <dbl>       <dbl> <chr>
## 1 Adelie  Torge…           39.1          18.7              181        3750 male 
## 2 Adelie  Torge…           39.5          17.4              186        3800 fema…
## 3 Adelie  Torge…           40.3          18                195        3250 fema…
## 4 Adelie  Torge…           NA            NA                 NA          NA <NA> 
## 5 Adelie  Torge…           36.7          19.3              193        3450 fema…
## 6 Adelie  Torge…           39.3          20.6              190        3650 male

Let us subset Penguins data by filtering rows based on one or more conditions.

How to filter rows based on values of a single column in R?

Let us learn how to filter data frame based on a value of a single column. In this example, we want to subset the data such that we select rows whose “sex” column value is “fename”.

penguins %>% 
  filter(sex=="female")

This gives us a new dataframe , a tibble, containing rows with sex column value “female”column.

## # A tibble: 165 x 7
##    species island bill_length_mm bill_depth_mm flipper_length_… body_mass_g
##    <chr>   <chr>           <dbl>         <dbl>            <dbl>       <dbl>
##  1 Adelie  Torge…           39.5          17.4              186        3800
##  2 Adelie  Torge…           40.3          18                195        3250
##  3 Adelie  Torge…           36.7          19.3              193        3450
##  4 Adelie  Torge…           38.9          17.8              181        3625
##  5 Adelie  Torge…           41.1          17.6              182        3200
##  6 Adelie  Torge…           36.6          17.8              185        3700
##  7 Adelie  Torge…           38.7          19                195        3450
##  8 Adelie  Torge…           34.4          18.4              184        3325
##  9 Adelie  Biscoe           37.8          18.3              174        3400
## 10 Adelie  Biscoe           35.9          19.2              189        3800
## # … with 155 more rows, and 1 more variable: sex <chr>

In our first example using filter() function in dplyr, we used the pipe operator “%>%” while using filter() function to select rows. Like other dplyr functions, we can also use filter() function without the pipe operator as shown below.

filter(penguins, sex=="female")

And we will get the same results as shown above.

In the above example, we selected rows of a dataframe by checking equality of variable’s value. We can also use filter to select rows by checking for inequality, greater or less (equal) than a variable’s value.

Let us see an example of filtering rows when a column’s value is not equal to “something”. In the example below, we filter dataframe whose species column values are not “Adelie”.

penguins %>% 
  filter(species != "Adelie")

We now get a filtered dataframe with species other than “Adelie”

## # A tibble: 192 x 7
##    species island bill_length_mm bill_depth_mm flipper_length_… body_mass_g
##    <chr>   <chr>           <dbl>         <dbl>            <dbl>       <dbl>
##  1 Gentoo  Biscoe           46.1          13.2              211        4500
##  2 Gentoo  Biscoe           50            16.3              230        5700
##  3 Gentoo  Biscoe           48.7          14.1              210        4450
##  4 Gentoo  Biscoe           50            15.2              218        5700
##  5 Gentoo  Biscoe           47.6          14.5              215        5400
##  6 Gentoo  Biscoe           46.5          13.5              210        4550
##  7 Gentoo  Biscoe           45.4          14.6              211        4800
##  8 Gentoo  Biscoe           46.7          15.3              219        5200
##  9 Gentoo  Biscoe           43.3          13.4              209        4400
## 10 Gentoo  Biscoe           46.8          15.4              215        5150
## # … with 182 more rows, and 1 more variable: sex <chr>

dplyr filter() with greater than condition

When the column of interest is a numerical, we can select rows by using greater than condition. Let us see an example of filtering rows when a column’s value is greater than some specific value.

In the example below, we filter dataframe such that we select rows with body mass is greater than 6000 to see the heaviest penguins.

# filter variable greater than a value
penguins %>% 
  filter(body_mass_g> 6000)

After filtering for body mass, we get just two rows that satisfy body mass condition we provided.

# # A tibble: 2 x 7
##   species island bill_length_mm bill_depth_mm flipper_length_… body_mass_g sex  
##   <chr>   <chr>           <dbl>         <dbl>            <dbl>       <dbl> <chr>
## 1 Gentoo  Biscoe           49.2          15.2              221        6300 male 
## 2 Gentoo  Biscoe           59.6          17                230        6050 male

Similarly, we can select or filter rows when a column’s value is less than some specific value.

dplyr filter() with less than condition

Similarly, we can also filter rows of a dataframe with less than condition. In this example below, we select rows whose flipper length column is less than 175.

# filter variable less than a value
penguins %>% 
  filter(flipper_length_mm <175)

Here we get a new tibble with just rows satisfying our condition.

## # A tibble: 2 x 7
##   species island bill_length_mm bill_depth_mm flipper_length_… body_mass_g sex  
##   <chr>   <chr>           <dbl>         <dbl>            <dbl>       <dbl> <chr>
## 1 Adelie  Biscoe           37.8          18.3              174        3400 fema…
## 2 Adelie  Biscoe           37.9          18.6              172        3150 fema…

How to Filter Rows of a dataframe using two conditions?

With dplyr’s filter() function, we can also specify more than one conditions. In the example below, we have two conditions inside filter() function, one specifies flipper length greater than 220 and second condition for sex column.

# 2.6.1 Boolean AND
penguins %>% 
  filter(flipper_length_mm >220 & sex=="female")
## # A tibble: 1 x 7
##   species island bill_length_mm bill_depth_mm flipper_length_… body_mass_g sex  
##   <chr>   <chr>           <dbl>         <dbl>            <dbl>       <dbl> <chr>
## 1 Gentoo  Biscoe           46.9          14.6              222        4875 fema…

dplyr’s filter() function with Boolean OR

We can filter dataframe for rows satisfying one of the two conditions using Boolean OR. In this example, we select rows whose flipper length value is greater than 220 or bill depth is less than 10.

penguins %>% 
  filter(flipper_length_mm >220 | bill_depth_mm < 10)
## # A tibble: 35 x 7
##    species island bill_length_mm bill_depth_mm flipper_length_… body_mass_g
##    <chr>   <chr>           <dbl>         <dbl>            <dbl>       <dbl>
##  1 Gentoo  Biscoe           50            16.3              230        5700
##  2 Gentoo  Biscoe           49.2          15.2              221        6300
##  3 Gentoo  Biscoe           48.7          15.1              222        5350
##  4 Gentoo  Biscoe           47.3          15.3              222        5250
##  5 Gentoo  Biscoe           59.6          17                230        6050
##  6 Gentoo  Biscoe           49.6          16                225        5700
##  7 Gentoo  Biscoe           50.5          15.9              222        5550
##  8 Gentoo  Biscoe           50.5          15.9              225        5400
##  9 Gentoo  Biscoe           50.1          15                225        5000
## 10 Gentoo  Biscoe           50.4          15.3              224        5550
## # … with 25 more rows, and 1 more variable: sex <chr>

Select rows with missing value in a column

Often one might want to filter for or filter out rows if one of the columns have missing values. With is.na() on the column of interest, we can select rows based on a specific column value is missing.

In this example, we select rows or filter rows with bill length column with missing values.

penguins %>% 
 filter(is.na(bill_length_mm))

In this dataset, there are only two rows with missing values in bill length column.

## # A tibble: 2 x 8
##   species island bill_length_mm bill_depth_mm flipper_length_… body_mass_g sex  
##   <fct>   <fct>           <dbl>         <dbl>            <int>       <int> <fct>
## 1 Adelie  Torge…             NA            NA               NA          NA <NA> 
## 2 Gentoo  Biscoe             NA            NA               NA          NA <NA> 
## # … with 1 more variable: year <int>

We can also use negation symbol “!” to reverse the selection. In this example, we select rows with no missing values for sex column.

penguins %>% 
  filter(!is.na(sex))

Note that this filtering will keep rows with other column values with missing values.

## # A tibble: 333 x 7
##    species island bill_length_mm bill_depth_mm flipper_length_… body_mass_g
##    <chr>   <chr>           <dbl>         <dbl>            <dbl>       <dbl>
##  1 Adelie  Torge…           39.1          18.7              181        3750
##  2 Adelie  Torge…           39.5          17.4              186        3800
##  3 Adelie  Torge…           40.3          18                195        3250
##  4 Adelie  Torge…           36.7          19.3              193        3450
##  5 Adelie  Torge…           39.3          20.6              190        3650
##  6 Adelie  Torge…           38.9          17.8              181        3625
##  7 Adelie  Torge…           39.2          19.6              195        4675
##  8 Adelie  Torge…           41.1          17.6              182        3200
##  9 Adelie  Torge…           38.6          21.2              191        3800
## 10 Adelie  Torge…           34.6          21.1              198        4400
## # … with 323 more rows, and 1 more variable: sex <chr>

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Brandy and Monica are set to battle on Verzuz

The battle will take place on Monday, August 31 at 8 p.m. ET.

A Verzuz battle between 90s R&B icons, Brandy and Monica, is set to take place at Tyler Perry‘s studio.

Announced on producer Timberland’s Instagram page, Brandy and Monica have signed the paperwork and the battle will be streamed live on Instagram and on Apple Music.

Less than an hour after the announcement, Timberland’s post has garnered more than 60,000 likes. The post sparked excitement and debates from fans on who has the better catalog and which songs will be performed by the artists.

READ MORE: Black Twitter debates potential Usher, Chris Brown Verzuz battle

The event, which is being sponsored by Ciroc, will be “historical,” according to Monica, who tweeted about the event. Brandy also used the hastag #history after the announcement on Twitter.

The battle between the two singers was said to be in the works for a while, with Monica initially rejecting the offer two months ago, saying, “people have put us against each other for 20-something years,” The Source reported.

Brandy also made an appearance on Frank Ski‘s IG program, confirming that Monica decline to do a Verzuz with her.

The two singers also have a complex and long-standing relationship.

READ MORE: Teddy Riley and Babyface’s ‘Verzuz’ battle was a teachable moment

Their Grammy Award-winning duet, “The Boy Is Mine,” helped both stars launch their careers and many assumed that the two young stars were friends.

After a few years of being in the industry, there were conflicting reports that Monica disliked Brandy from the beginning, and that the two singers had a physical altercation.

It was said that Monica punched Brandy in the stomach, according to the executive producer of Monica’s first two albums, Dallas Austin.

It seems that the issues have been put behind them as the two are kind to each other on social media. The battle will take place on Monday, August 31 at 8 p.m. ET.

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House Democrats want to give the USPS $25 billion

The Republican-controlled Senate said that they would “absolutely not pass” the stand-alone bill.

House Speaker Nancy Pelosi and the rest of the Democratic House of Representatives, has voted to provide $25 billion to the USPS and stop any policy changes that would affect the election.

The “Delivering for America Act” was written to ensure that mail-in ballots will not be delayed or not accounted for after the removal of postboxes and the USPS corporate restructuring.

READ MORE: Postal Service backlog creates worry about November election

Pelosi called out incumbent President Donald Trump for bashing mail-in voting, calling it a concerted effort to suppress voting alongside Trump’s demands for law enforcement officers to monitor voting at polling places, Reuters reported. 

“The American people do not want anyone messing with the Post Office. They certainly do not want it to be politicized. They just want their mail, they want their medicines and they want their mail-in ballots delivered in a timely way. And that is exactly what our bill does,” Democratic Representative Carolyn Maloney, who authored the legislation, said.

However, the Republican-controlled Senate, led by Majority Leader Mitch McConnell said in a statement that the Senate would “absolutely not pass” the stand-alone bill, Reuters reported.

The White House also strongly opposed the legislation, calling on President Trump to veto the proposal.

READ MORE: Postmaster General DeJoy to ‘suspend’ operational changes until after the election

Maloney also released a Postal Service document showing there is a correlation between an 8% slowdown in the processing of first-class mail and Louis DeJoy, a close ally of Trump, theGrio previously reported, becoming postmaster in June.

Despite there being a slim chance of this bill getting passed in the Senate, more than two dozen Republicans have sided with Democrats on the issue this Saturday.

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Mariah Carey releases ‘Save the Day’ featuring Lauryn Hill, from upcoming album

In addition to her upcoming album, Carey is also set to release her first memoir.

On Friday, Grammy-Award winning singer/songwriter, Mariah Carey, 50, dropped her eagerly awaited single, “Save the Day.” The song that was produced by longtime collaborator Jermaine Dupree, features Lauryn Hill and is from Carey’s upcoming album, The Rarities.

Hill fans hoping for new material from the elusive diva might be disappointed as “Save the Day” only samples Hill’s vocals from the bridge of “Killing Me Softly,” a hit recorded by Hill’s group, Fugees, back in 1996.

READ MORE: Mariah Carey announces new memoir

Carey revealed the new album cover and announced its upcoming release via Twitter on Tuesday night. “This one is for you, my fans,” the pop icon tweeted. “It’s to celebrate us, and to thank you for years of pure love and support. I am so grateful to you. The RARITIES album is out October 2.”

Although Carey and Dupri recorded “Save the Day” in 2011, they held on to the empowering new song until now. The Rarities album is a collection of unreleased music and some of Carey’s #1 hits including “Always Be My Baby” and “Hero.”

“The truth is, most of the songs I had completely forgotten about,” Carey told The Sun. “I had recorded them way back when and put them in the vault just because they didn’t end up making an album. From every era, there’s a song that could have made it to an album.”

Hoping that the song will inspire change in 2020, Carey sings, “We’re all in this together,” while Hill’s vocals play in the background.

It’s been two years since Carey’s last album, Caution, which was released in November 2018 and debuted at number 5 on the U.S. Billboard 200 with 51,000 album-equivalent units, of which 43,000 were pure album sales.

In addition to her upcoming album, the global superstar is also set to release her first memoir, The Meaning of Mariah Carey on September 29. Written with Michaela Angela Davis, the unfiltered autobiography promises to “finally tell the story of her life in a way that only she could.”

READ MORE: Video of comic Sandra Bernhard calling Mariah Carey the n-word resurfaces

According to Entertainment Weekly, Audible will exclusively release the audiobook performed by Carey, with special musical components interwoven with her words.

Celebrating 30 years of unprecedented success, Mariah Carey has sold over 200 million records worldwide.

Have you subscribed to theGrio’s podcast “Dear Culture”? Download our newest episodes now!

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It's tempting to think that GP3 will solve all NLP problems but it does not

In my previous blog what is driving the innovation in nlp and gpt3 , I talked about how GPT3 has evolved from the basic transformer architecture.

Based on that blog, a start-up approached me saying that they had an idea which they felt could only be implemented by GPT3.

They were eagerly waiting to be approved (isn’t everybody - he he!)

Apart from waiting for GPT3- there was another critical flaw in their argument

Their idea was not generative i.e. it did not need GPT3 in the first place (or for that matter any similar architecture)

It’s tempting to think that GPT-3 will solve all the NLP problems .. but it does not

let me explain by this what I mean by this

Below is the basic flow of NLP services and a listing of NLP applications

NLP services include:

  • Text Summarization
  • Text Generation
  • Chatbots
  • Machine Translation
  • Text to Speech
  • Text Classification
  • Sentence Similarity
  • Finding similar sentences

 

Image source – Dr Amita Kapoor

While many of these are generative- not all of them are.

The GPT3 and transformer-based applications basically address the generative elements of NLP

That still leaves a large number of other applications which use NLP but are not generative (for example Text classification or Text summarization).

 

You can also look at the same situation from the perspective of word embeddings. Word embeddings are a type of word representation that allows words with similar meaning to have a similar representation.

Historically, word2vec and GloVe have worked well for word embeddings but these were shallow approaches. Transformers solve this problem by providing a functionality similar to what we see in transfer learning for CNNs (thereby not all layers need to be trained if you use a pre-built model)

 

To conclude

Hence, we can say that GPT3 is very interesting and will continue to be so.

However, there will be always a subset of NLP applications which will not be covered by any of the transformer-based approaches because they are not generative.

 



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Alternative to the Arithmetic, Geometric, and Harmonic Means

Given n observations x1, ..., xn, the generalized mean (also called power mean) is defined as 

The case p = 1 corresponds to the traditional arithmetic mean, while p = 0 yields the geometric mean, and p = -1 yields the harmonic mean. See here for details. This metric is favored by statisticians. It is a particular case of the quasi-arithmetic mean

Here I introduce another kind of mean called exponential mean, also based on a parameter p, that may have an appeal to data scientists and machine learning professionals. It is also a special case of the quasi-arithmetic mean. Though the concept is basic, there is very little if any literature about it. It is related to the LogSumExp and the Log semiring. It is defined as follows:

Here the logarithm is in base p, with p positive. When p tends to 0, mp is the minimum of the observations. When p tends to 1, it yields the classic arithmetic mean, and as p tends to infinity, it yields the maximum of the observations. 

I tested both means (exponential and power means) for various values of p ranging between 0 and 2. See above chart, where the X-axis represents the parameter p, and the Y-axis represents the mean. The test data set consists of 10 numbers randomly chosen between 0 and 1, with an average value of 0.53. Note that if p = 1, then mp = Mp = 0.53 is the standard arithmetic mean. 

The blue curve in the above chart is very well approximated by a logarithm function, except when p is very close to zero or p is extremely large. The red curve is well approximated by a second-degree polynomial. Convergence to the maximum of the observations (equal to 0.89 here), as p tends to infinity, occurs much faster with the power mean than with the exponential mean. Note that the minimum is 0.07, and the exponential mean will start approaching that value only when p is extremely close to zero.

Finally, the central limit theorem applies both to the power and exponential means, when the number n of observations becomes larger and larger.



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Trump accuses FDA of slowing COVID-19 vaccines

Two FDA officials have threatened to leave their jobs if Trump approves a vaccine that does not work.

President Donald Trump believes, without giving any proof, that the Food and Drug Administration (FDA) is intentionally slowing down the testing of COVID-19 vaccines to hurt his chances of reelection in November.

In a tweet posted on Friday, Trump said that the FDA is part of the deep state and they are manipulating drug companies into slowing down their enrollment of test subjects, thus delaying an approved vaccine, according to Reuters.

READ MORE: Trump touts another unproven coronavirus cure backed by a top donor

Publicly calling out agencies for being part of a Democratic deep state has been one of Trump’s common tactics. Critics believe he uses it to intimidate those who are seemingly undermining his agenda in order for them to change their minds and accept his demands.

Public health officials and lawmakers are reportedly worried that the Trump administration will pressure the FDA into approving a vaccine that does not work.

In an exclusive statement obtained by Reuters, a top FDA official said he would resign if Trump approved a vaccine without the agency’s approval of safety and effectiveness.

“Obviously, they are hoping to delay the answer until after November 3rd. Must focus on speed, and saving lives!” Trump wrote, dragging FDA Commissioner Stephen Hahn in the tweet.

Although Hahn did not directly respond to the president’s tweet, the commissioner tweeted a link of the FDA’s daily updates on how it is fighting the disease.

READ MORE: Los Angeles mayor wants DIY coronavirus kit

In compliance to the FDA and National Institutes of Health (NIH), drug manufacturers are rapidly producing a vaccine to treat COVID-19 as the diease has already claimed 800,000 lives worldwide.

House Speaker Nancy Pelosi chimed in on the president’s statement, calling it “dangerous” and “beyond the pale” for insinuating that the FDA is playing politics.

Trump’s tweet has also prompted the director of the FDA’s Center for Biologics Evaluation and Research, Peter Marks, to threaten to quit his job last week. Marks told government officials, pharmaceutical executives, and academics in a conference call that he would leave if the agency released an unproven vaccine.

Have you subscribed to theGrio’s podcast “Dear Culture”? Download our newest episodes now!

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California is experiencing one of its worst wildfires

The Friday firestorm involved about two dozen major incidents.

A series of lighting strikes on Friday has exacerbated a wildfire in California. The fire killed six people, incinerated nearly 700 buildings, and jeopardized nearly 14,000 firefighters who are currently working to control the flames.

The fire is said to be one of the worst that California has ever seen and is currently raging between San Francisco and Sacramento.

READ MORE: At least 5 people killed in Northern California wildfires

The Friday firestorm involved about two dozen major incidents which spread across other local jurisdictions in California, Reuters reported.

As reported by USA Today, the thunder hit the forest areas and the dry humid air evaporated the rainwater that could have reached the ground. Had this water not evaporated, it had the potential to stop the fire from spreading.

In addition to the lack of rainwater, the fire was easily spread due to the persistent heat in California and low humidity, which made the forest dry and crunchy, USA Today reported.

Firefighters, in the words of fire marshal Jay Tracey of Fresno, were “scrambling for bodies” in the 314,000 acre spread.

The southern part of the fire is being contained by firefighters, but winds are fanning the flames, making the fire harder to put out. This is also true in the northwest part of California where towns like of Healdsburg and Guernville grow wine, according to Tracey.

As the fire continues to burn away the state’s winery resources, the fire department’s resources are growing scarce, with many firefighters being stationed at home.

One pilot, who was on a water-dropping mission in central California, died Wednesday when his helicopter crashed.

READ MORE: California resident tests positive for plague, first time in 5 years

The damage from the fire is likely to continue over the weekend with more lightning storms expected, the California Department of Forestry and Fire Protection (CalFire) spokesman Daniel Berlant said. 

As theGrio previously reported, Gov. Gavin Newsom called the flames a clear sign of climate change in a last-minute video recorded for the Democratic National Convention from a forest near Watsonville after he visited an evacuation center.

On Saturday, the fire has already doubled in size since it began.

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Facebook Finally Cracks Down on QAnon

Plus: A top-secret iPod, Carnival ransomware, and more of the week’s top security news.

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Solar Panels Are Starting to Die, Leaving Behind Toxic Trash

Photovoltaic panels are a boon for clean energy but are tricky to recycle. As the oldest ones expire, get ready for a solar e-waste glut.

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The 6 Best TVs for Every Budget (2020): TCL, Samsung, LG

WIRED tested. The best, boldest, and cheapest 4K and 8K TVs we have seen, from OLEDs to LCDs.

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Real-time data for a better response to disease outbreaks

Kinsa was founded by MIT alumnus Inder Singh MBA ’06, SM ’07 in 2012, with the mission of collecting information about when and where infectious diseases are spreading in real-time. Today the company is fulfilling that mission along several fronts.

It starts with families. More than 1.5 million of Kinsa’s “smart” thermometers have been sold or given away across the country, including hundreds of thousands to families from low-income school districts. The thermometers link to an app that helps users decide if they should seek medical attention based on age, fever, and symptoms.

At the community level, the data generated by the thermometers are anonymized and aggregated, and can be shared with parents and school officials, helping them understand what illnesses are going around and prevent the spread of disease in classrooms.

By working with over 2,000 schools to date in addition to many businesses, Kinsa has also developed predictive models that can forecast flu seasons each year. In the spring of this year, the company showed it could predict flu spread 12-20 weeks in advance at the city level.

The milestone prepared Kinsa for its most profound scale-up yet. When Covid-19 came to the U.S., the company was able to estimate its spread in real-time by tracking fever levels above what would normally be expected. Now Kinsa is working with health officials in five states and three cities to help contain and control the virus.

“By the time the CDC [U.S. Centers for Disease Control] gets the data, it has been processed, deidentified, and people have entered the health system to see a doctor,” say Singh, who is Kinsa’s CEO as well as its founder. “There’s a huge delay from when someone contracts an illness and when they see a doctor. The current health care system only sees the latter; we see the former.”

Today Kinsa finds itself playing a central role in America’s Covid-19 response. In addition to its local partnerships, the company has become a central information hub for the public, media, and researchers with its Healthweather tool, which maps unusual rates of fevers — among the most common symptom of Covid-19 — to help visualize the prevalence of illness in communities.

Singh says Kinsa’s data complement other methods of containing the virus like testing, contact tracing, and the use of face masks.

Better data for better responses

Singh’s first exposure to MIT came while he was attending the Harvard University Kennedy School of Government as a graduate student.

“I remember I interacted with some MIT undergrads, we brainstormed some social-impact ideas,” Singh recalls. “A week later I got an email from them saying they’d prototyped what we were talking about. I was like, ‘You prototyped what we talked about in a week!?’ I was blown away, and it was an insight into how MIT is such a do-er campus. It was so entrepreneurial. I was like, ‘I want to do that.’”

Soon Singh enrolled in the Harvard-MIT Program in Health Sciences and Technology, an interdisciplinary program where Singh earned his master’s and MBA degrees while working with leading research hospitals in the area. The program also set him on a course to improve the way we respond to infectious disease.

Following his graduation, he joined the Clinton Health Access Initiative (CHAI), where he brokered deals between pharmaceutical companies and low-resource countries to lower the cost of medicines for HIV, malaria, and tuberculosis. Singh described CHAI as a dream job, but it opened his eyes to several shortcomings in the global health system.

“The world tries to curb the spread of infectious illness with almost zero real-time information about when and where disease is spreading,” Singh says. “The question I posed to start Kinsa was ‘how do you stop the next outbreak before it becomes an epidemic if you don’t know where and when it’s starting and how fast it’s spreading’?”

Kinsa was started in 2012 with the insight that better data were needed to control infectious diseases. In order to get that data, the company needed a new way of providing value to sick people and families.

“The behavior in the home when someone gets sick is to grab the thermometer,” Singh says. “We piggy-backed off of that to create a communication channel to the sick, to help them get better faster.”

Kinsa started by selling its thermometers and creating a sponsorship program for corporate donors to fund thermometer donations to Title 1 schools, which serve high numbers of economically disadvantaged students. Singh says 40 percent of families that receive a Kinsa thermometer through that program did not previously have any thermometer in their house.

The company says its program has been shown to help schools improve attendance, and has yielded years of real-time data on fever rates to help compare to official estimates and develop its models.

“We had been forecasting flu incidence accurately several weeks out for years, and right around early 2020, we had a massive breakthrough,” Singh recalls. “We showed we could predict flu 12 to 20 weeks out — then March hit. We said, let’s try to remove the fever levels associated with cold and flu from our observed real time signal. What’s left over is unusual fevers, and we saw hotspots across the country. We observed six years of data and there’d been hot spots, but nothing like we were seeing in early March.”

The company quickly made their real-time data available to the public, and on March 14, Singh got on a call with the former New York State health commissioner, the former head of the U.S. Food and Drug Administration, and the man responsible for Taiwan’s successful Covid-19 response.

“I said, ‘There’s hotspots everywhere,” Singh recalls. “They’re in New York, around the Northeast, Texas, Michigan. They said, ‘This is interesting, but it doesn’t look credible because we’re not seeing case reports of Covid-19.’ Low and behold, days and weeks later, we saw the Covid cases start building up.”

A tool against Covid-19

Singh says Kinsa’s data provide an unprecedented look into the way a disease is spreading through a community.

“We can predict the entire incidence curve [of flu season] on a city-by-city basis,” Singh says. “The next best model is [about] three weeks out, at a multistate level. It’s not because we’re smarter than others; it’s because we have better data. We found a way to communicate with someone consistently when they’ve just fallen ill.”

Kinsa has been working with health departments and research groups around the country to help them interpret the company’s data and react to early warnings of Covid-19’s spread. It’s also helping companies around the country as they begin bringing employees back to offices.

Now Kinsa is working on expanding its international presence to help curb infectious diseases on multiple fronts around the world, just like it’s doing in the U.S. The company’s progress promises to help authorities monitor diseases long after Covid-19.

“I started Kinsa to create a global, real-time outbreak monitoring and detection system, and now we have predictive power beyond that,” Singh says. “When you know where and when symptoms are starting and how fast their spreading, you can empower local individuals, families, communities, and governments.”



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Economist Antoine Levy is all over the map

Some of the stereotypical differences between the United States and France do check out, according to Antoine Levy: The weather and the food are much worse in New England, he says, and the people are much more welcoming. But for Levy, who is about to start the fifth year of his MIT PhD program in economics, the U.S. is starting to feel like his native France in some ways.

“For a long time, I thought France was obsessed by politics and the United States was not,” he recalls. However, his impression has changed over the last five years. In France, from urban neighborhoods to small villages, he says everyone has an opinion on every government minister. Lately, he has felt a transformation around him, and has observed his peers in the U.S. becoming more interested in local politics as well.

While this may be a reflection of recent changes in the American political climate, a local perspective on policy is also a key signature of Levy’s research at MIT. Whether in France or the U.S., the economist has long been fascinated by how politics and economics converge in different ways from one region or locality to another.

All over the place

Levy’s research looks at how different sociodemographic markers within a country, such as population density, can shape economic activity and policy across these areas.

His current projects focus on harnessing the power of regional data to inform economic policy, from housing development to unemployment to political influence. For example, he has studied the Economic and Monetary Union of the E.U. after the Great Recession, in relation to the Phillips curve, which, somewhat controversially, suggests there is an inverse relationship between unemployment and wage growth. While aggregated national data do not demonstrate a clear Phillips curve, Levy has found that regional European data do follow the pattern –– indicating that policy informed by regional data might be more important than ever.

“We’ve talked a lot about political polarization, but there’s also been a massive spatial polarization over the last 25 years,” he explains. “That conjunction of economic geography and political geography has massive implications for the relative influence of places, and for the policy and politics of trade, social insurance, and redistribution.”

His latest work has been inspired by recent historical events –– Brexit, the election of Donald Trump, the “yellow vest” protests in his native France –– which have exposed the way one-size-fits-all economic policies have left behind people in vastly different geographical situations. Too often, Levy says, people rely on a mythicized idea of a region without drilling down into the patterns of population and economic behavior there. For example, in one working paper, he argues that a significant part of Emmanuel Macron’s success in the 2017 French presidential election can be attributed to a specific campaign promise to abolish a housing tax that affected 80 percent of households in the country.

A key theme in his work is how regional economics have an important influence on individuals’ political decisions — though this is often overlooked by economists.

“There’s this thing in economics where people are called agents,” Levy says. “People do stuff. People write laws, people vote, people get jobs and consume. And at some point, you have to still ask what you would do in their place.”

Taking it all in

Part of Levy’s interest in regional variations comes from personal experience. Growing up, he moved around often for his father’s work as an executive in the food industry, which took the family from the midsized city of Lyon, in the southeast, to the much smaller Périgueux, in the southwest; eventually they moved to Paris for his mother’s medical care and school. Experiencing the daily economic differences between those places, even commonplace details like the cost of coffee, have impressed upon him the way one’s economic circumstances affect one’s choices.

“The fate of places and how it’s tied to economics: I think that’s something that you get to experience very concretely when you move around,” Levy says. “Especially in a country as diverse as France.”

Levy’s penchant for variety followed him to college, where he couldn’t bring himself to choose between a more academically oriented education at École Normale Supérieure and business school at HEC Paris. In an unusual move, he ended up enrolling in both. He says he wanted to keep an eye on everything in economics –– from fundamental research to more applied areas. His embrace of interdisciplinary approaches ultimately brought him to MIT, where he appreciates how his program has allowed him to fold together his early interests in macroeconomics and international finance, and his current work on microeconomic and spatial topics.

“The professors tend to always push you to explore your interests and be very open about your interests,” Levy says of the MIT economics department, where he is advised by professors Arnaud Costinot and Ivan Werning. “They were never excessively restrictive about what I should work on or what I should study, they were always very open to hear new ideas.”

That doesn’t mean the path has always been easy, especially with the sheer time investment of a doctoral degree. “I used to be the one who wanted to experience satisfaction in the very short run,” Levy says. “Sometimes you have to slow down and go back to the beginning instead of going through a project very quickly.” To keep himself going he also takes on smaller projects, like writing short proposals, book reviews, and popular press articles.

He also takes the time to read the news or a favorite Philip Roth novel, and has fond memories of playing squash, picnicking on the Charles River, and bouncing research ideas with friends from his cohort and the French community at MIT. He has an affinity for his fellow ex-pats: “They made a choice of leaving France, and I think that’s always a sign of being ready to find out the limits of your openness.”

As he continues with his research, Levy plans to stay focused on issues that matter to the people around him, and remaining open to topics outside his expertise and immediate research field. Knowing that his work could have an impact on people’s lives keeps him passionate about economics, wherever it might take him in the future.

“It’s not something that you do for the sake of beauty,” he says of economics. “When you say you’re an economist, and you’re at the dinner table, people have tons of questions. If people have a question that they think is relevant for economics, then maybe it should be. You have to have an answer.”



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Two projects receive funding for technologies that avoid carbon emissions

The Carbon Capture, Utilization, and Storage Center, one of the MIT Energy Initiative (MITEI)’s Low-Carbon Energy Centers, has awarded $900,000 in funding to two new research projects to advance technologies that avoid carbon dioxide (CO2) emissions into the atmosphere and help address climate change. The winning project is receiving $750,000, and an additional project receives $150,000.

The winning project, led by principal investigator Asegun Henry, the Robert N. Noyce Career Development Professor in the Department of Mechanical Engineering, and co-principal investigator Paul Barton, the Lammot du Pont Professor of Chemical Engineering, aims to produce hydrogen without CO2 emissions while creating a second revenue stream of solid carbon. The additional project, led by principal investigator Matěj Peč, the Victor P. Starr Career Development Chair in the Department of Earth, Atmospheric and Planetary Sciences, seeks to expand understanding of new processes for storing CO2 in basaltic rocks by converting it from an aqueous solution into carbonate minerals.

Carbon capture, utilization, and storage (CCUS) technologies have the potential to play an important role in limiting or reducing the amount of CO2 in the atmosphere, as part of a suite of approaches to mitigating to climate change that includes renewable energy and energy efficiency technologies, as well as policy measures. While some CCUS technologies are being deployed at the million-ton-of-CO2 per year scale, there are substantial needs to improve costs and performance of those technologies and to advance more nascent technologies. MITEI’s CCUS center is working to meet these challenges with a cohort of industry members that are supporting promising MIT research, such as these newly funded projects.

A new process for producing hydrogen without CO2 emissions

Henry and Barton’s project, “Lower cost, CO2-free, H2 production from CH4 using liquid tin,” investigates the use of methane pyrolysis instead of steam methane reforming (SMR) for hydrogen production.

Currently, hydrogen production accounts for approximately 1 percent of global CO2 emissions, and the predominant production method is SMR. The SMR process relies on the formation of CO2, so replacing it with another economically competitive approach to making hydrogen would avoid emissions. 

“Hydrogen is essential to modern life, as it is primarily used to make ammonia for fertilizer, which plays an indispensable role in feeding the world’s 7.5 billion people,” says Henry. “But we need to be able to feed a growing population and take advantage of hydrogen’s potential as a carbon-free fuel source by eliminating CO2 emissions from hydrogen production. Our process results in a solid carbon byproduct, rather than CO2 gas. The sale of the solid carbon lowers the minimum price at which hydrogen can be sold to break even with the current, CO2 emissions-intensive process.”

Henry and Barton’s work is a new take on an existing process, pyrolysis of methane. Like SMR, methane pyrolysis uses methane as the source of hydrogen, but follows a different pathway. SMR uses the oxygen in water to liberate the hydrogen by preferentially bonding oxygen to the carbon in methane, producing CO2 gas in the process. In methane pyrolysis, the methane is heated to such a high temperature that the molecule itself becomes unstable and decomposes into hydrogen gas and solid carbon — a much more valuable byproduct than CO2 gas. Although the idea of methane pyrolysis has existed for many years, it has been difficult to commercialize because of the formation of the solid byproduct, which can deposit on the walls of the reactor, eventually plugging it up. This issue makes the process impractical. Henry and Barton’s project uses a new approach in which the reaction is facilitated with inert molten tin, which prevents the plugging from occurring. The proposed approach is enabled by recent advances in Henry’s lab that enable the flow and containment of liquid metal at extreme temperatures without leakage or material degradation. 

Studying CO2 storage in basaltic reservoirs

With his project, “High-fidelity monitoring for carbon sequestration: integrated geophysical and geochemical investigation of field and laboratory data,” Peč plans to conduct a comprehensive study to gain a holistic understanding of the coupled chemo-mechanical processes that accompany CO2 storage in basaltic reservoirs, with hopes of increasing adoption of this technology.

The Intergovernmental Panel on Climate Change estimates that 100 to 1,000 gigatonnes of CO2 must be removed from the atmosphere by the end of the century. Such large volumes can only be stored below the Earth’s surface, and that storage must be accomplished safely and securely, without allowing any leakage back into the atmosphere.

One promising storage strategy is CO2 mineralization — specifically by dissolving gaseous CO2 in water, which then reacts with reservoir rocks to form carbonate minerals. Of the technologies proposed for carbon sequestration, this approach is unique in that the sequestration is permanent: the CO2 becomes part of an inert solid, so it cannot escape back into the environment. Basaltic rocks, the most common volcanic rock on Earth, present good sites for CO2 injection due to their widespread occurrence and high concentrations of divalent cations such as calcium and magnesium that can form carbonate minerals. In one study, more than 95 percent of the CO2 injected into a pilot site in Iceland was precipitated as carbonate minerals in less than two years.

However, ensuring the subsurface integrity of geological formations during fluid injection and accurately evaluating the reaction rates in such reservoirs require targeted studies such as Peč’s.

“The funding by MITEI’s Low-Carbon Energy Center for Carbon Capture, Utilization, and Storage allows me to start a new research direction, bringing together a group of experts from a range of disciplines to tackle climate change, perhaps the greatest scientific challenge our generation is facing,” says Peč.

The two projects were selected from a call for proposals that resulted in 15 entries by MIT researchers. “The application process revealed a great deal of interest from MIT researchers in advancing carbon capture, utilization, and storage processes and technologies,” says Bradford Hager, the Cecil and Ida Green Professor of Earth Sciences, who co-directs the CCUS center with T. Alan Hatton, the Ralph Landau Professor of Chemical Engineering. “The two projects funded through the center will result in fundamental, higher-risk research exploring novel approaches that have the potential to have high impact in the longer term. Given the short-term focus of the industry, projects like this might not have otherwise been funded, so having support for this kind of early-stage fundamental research is crucial.”



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Are we still listening to space?

When LIGO, the Laser Interferometer Gravitational-Wave Observatory, and its European counterpart, Virgo, detect a gravitational ripple from space, a public alert is sent out. That alert lets researchers know with a decently high confidence that this ripple was probably caused by an exceptional cosmic event, such as the collision of neutron stars or the merging of black holes, somewhere in the universe.

Then starts the scramble. A pair of researchers is assigned to the incoming event, analyzing the data to get a preliminary location in the sky whence the ripple emanated. Telescopes are pointed in that direction, more data is amassed, and the pair of researchers conducts further followup studies to try to determine what kind of event caused the wave.

“I often think of it as if we’re in a dark forest and listening to the ground,” says Eva Huang, a third-year Department of Physics graduate student in Assistant Professor Salvatore Vitale’s lab in the MIT Kavli Institute for Astrophysics and Space Research (MKI). “From the footsteps, we’re trying to guess what kind of animal is passing by.”

The LIGO-Virgo Collaboration keeps a rotation system to determine which researchers get to investigate the latest detection. Sylvia Biscoveanu, a second-year graduate student also in Vitale’s lab, was next on the list when LIGO suspended its third observational run due to Covid-19. If a cosmic event happens in the universe and there’s no one there to detect it, did it even happen?

Data analysis in isolation

When MIT similarly scaled back on-campus research in mid-March due to the coronavirus pandemic, the LIGO team at MKI adapted quickly to the new work-from-home normal. “Our work is physically less dependent on being at MIT,” says Vitale, who is also a member of the LIGO Scientific Collaboration. “Still, there are consequences.”

For Biscoveanu, working from home has entailed being at her computer for at least eight hours a day. “In terms of actually being able to do my research, I haven’t suffered,” she says. What has suffered is her ability to exchange ideas with other members of the LIGO group at MIT. “I had just moved to a bigger office with a bunch of graduate students, and we were really looking forward to being able to talk to each other and ask questions regularly,” says Biscoveanu. “I definitely don’t get as much of that at home.”

Mentorship also looks different when everyone is at home. Vitale has always had an open-door policy with his graduate students. “I do weekly meetings with my students, but on top of that I had close-to-daily interactions with them,” he says. Unless his door was closed, Vitale says, his students could come in and talk anytime. That immediate connection, he has found, is hard to replicate in the digital world.

“The thing I tell my students is that we don’t work in a hut where everyone is making their own project and then it’s done,” says Vitale. “Research is more than the sum of its parts.” One advantage of working in a group is the ability to turn to a colleague to discuss a paper you just read, a problem you’re facing, or a crazy idea you had the night before. That’s harder to do when everyone is stuck in their own hut.

“Now you have to go in the chat room or arrange a telecon if you want to ask a question,” says Ken Ng, a third-year graduate student in the Vitale group. Ng uses gravitational waves to study particle physics, with his work focusing on axions, a proposed elementary particle that is orders of magnitude smaller than the tiniest particle observed. Telecons and Slack, he has found, can be particularly inefficient when you’re trying to quickly sketch out an idea. “I’m actually thinking of buying a white board,” he says.

Space never stops

When the third observation run was suspended a month before it was supposed to end, it had collected 56 gravitational wave candidates. In comparison, the first two runs combined amassed a total of 11 candidates. So even though fresh data isn’t arriving in the lab, the work hasn’t ceased, and LIGO scientists are scrutinizing the data from home. “If the pandemic had happened a few months before, we could have missed half the data,” says Ng, looking on the positive side.  

Compared to the other members of the lab, Ng is no pandemic rookie. When the Covid-19 pandemic struck, he thought, “Again?” Ng, who is from Hong Kong, faced the SARS outbreak in 2002 and considers himself the pandemic veteran of the group. That experience has kept him from panicking these days. “I know the importance of social distancing and mask-wearing,” he explains.

Still, for some in the group, social distancing has led to less productivity and feelings of guilt. “I sometimes feel that, because my work is less impacted, I cannot allow myself to feel frustrated,” says Huang. Her work — analyzing LIGO data to decipher the cosmic events responsible for detected waves — can be done at home, unlike researchers who need to be physically in-lab. Throughout the pandemic, Huang has worked hard to combat the feeling that she needs to earn permission to be self-compassionate. “I can be, and need to be, kind to myself during this time.

All are looking forward to the day when they can come back to campus. Partly, Ng confesses, for the free food. But mostly to continue studying gravitational waves in the same space. “I miss being able to chat randomly when people are in an office,” he says.

Vitale acknowledges that there have been some benefits of working from home. “This has obliged everyone to think a bit harder about how to express what we want to say,” he says. Still, like his students, he also can’t wait to leave his hut and get back to campus. “I think for all of us, it will also just be nice to be back at the office and re-establish a clear separation between our living and our working spaces, that right now are collapsed in the same entity.”



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The factory of the future, batteries not included

Many analysts have predicted an explosion in the number of industrial “internet of things” (IoT) devices that will come online over the next decade. Sensors play a big role in those forecasts.

Unfortunately, sensors come with their own drawbacks, many of which are due to the limited energy supply and finite lifetime of their batteries.

Now the startup Everactive has developed industrial sensors that run around the clock, require minimal maintenance, and can last over 20 years. The company created the sensors not by redesigning its batteries, but by eliminating them altogether.

The key is Everactive’s ultra-low-power integrated circuits, which harvest energy from sources like indoor light and vibrations to generate data. The sensors continuously send that data to Everactive’s cloud-based dashboard, which gives users real time insights, analysis, and alerts to help them leverage the full power of industrial IoT devices.

“It’s all enabled by the ultra-low-power chips that support continuous monitoring,” says Everactive Co-Chief Technology Officer David Wentzloff SM ’02, PhD ’07. “Because our source of power is unlimited, we’re not making tradeoffs like keeping radios off or doing something else [limiting] to save battery life.”

Everactive builds finished products on top of its chips that customers can quickly deploy in large numbers. Its first product monitors steam traps, which release condensate out of steam systems. Such systems are used in a variety of industries, and Everactive’s customers include companies in sectors like oil and gas, paper, and food production. Everactive has also developed a sensor to monitor rotating machinery, like motors and pumps, that runs on the second generation of its battery-free chips.

By avoiding the costs and restrictions associated with other sensors, the company believes it’s well-positioned to play a role in the IoT-powered transition to the factory of the future.

“This is technology that’s totally maintenance free, with no batteries, powered by harvested energy, and always connected to the cloud. There’s so many things you can do with that, it’s hard to wrap your head around,” Wentzloff says.

Breaking free from batteries

Wentzloff and his Everactive co-founder and co-CTO Benton Calhoun SM ’02, PhD ’06 have been working on low-power circuit design for more than a decade, beginning with their time at MIT. They both did their PhD work in the lab of Anantha Chandrakasan, who is currently the Vannevar Bush Professor of Electrical Engineering and Computer Science and the dean of MIT’s School of Engineering. Calhoun’s research focused on low-power digital circuits and memory while Wentzloff’s focused on low power radios.

After earning their PhDs, both men became assistant professors at the schools they attended as undergraduates — Wentzloff at the University of Michigan and Calhoun at the University of Virginia — where they still teach today. Even after settling in different parts of the country, they continued collaborating, applying for joint grants and building circuit-based systems that combined their areas of research.

The collaboration was not an isolated incident: The founders have maintained relationships with many of their contacts from MIT.

“To this day I stay in touch with my colleagues and professors,” Wentzloff says. “It’s a great group to be associated with, especially when you talk about the integrated circuit space. It’s a great community, and I really value and appreciate that experience and those connections that have come out of it. That’s far and away the longest impression MIT has left on my career, those people I continue to stay in touch with. We’re all helping each other out.”

Wentzloff and Calhoun’s academic labs eventually created a battery-free physiological monitor that could track a user’s movement, temperature, heart rate, and other signals and send that data to a phone, all while running on energy harvested from body heat.

“That’s when we decided we should look at commercializing this technology,” Wentzloff says.

In 2014, they partnered with semiconductor industry veteran Brendan Richardson to launch the company, originally called PsiKick.

In the beginning, when Wentzloff describes the company as “three guys and a dog in a garage,” the founders sought to reimagine circuit designs that included features of full computing systems like sensor interfaces, processing power, memory, and radio signals. They also needed to incorporate energy harvesting mechanisms and power management capabilities.

“We wiped the slate clean and had a fresh start,” Wentzloff recalls.

The founders initially attempted to sell their chips to companies to build solutions on top of, but they quickly realized the industry wasn’t familiar enough with battery-free chips.

“There’s an education level to it, because there’s a generation of engineers used to thinking of systems design with battery-operated chips,” Wentzloff says.

The learning curve led the founders to start building their own solutions for customers. Today Everactive offers its sensors as part of a wider service that incorporates wireless networks and data analytics.

The company’s sensors can be powered by small vibrations, lights inside a factory as dim as 100 lux, and heat differentials below 10 degrees Fahrenheit. The devices can sense temperature, acceleration, vibration, pressure, and more.

The company says its sensors cost significantly less to operate than traditional sensors and avoid the maintenance headache that comes with deploying thousands of battery-powered devices.

For instance, Everactive considered the cost of deploying 10,000 traditional sensors. Assuming a three-year battery life, the customer would need to replace an average of 3,333 batteries each year, which comes out to more than nine a day.

The next technological revolution

By saving on maintenance and replacement costs, Everactive customers are able to deploy more sensors. That, combined with the near-continuous operation of those sensors, brings a new level of visibility to operations.

“[Removing restrictions on sensor installations] starts to give you a sixth sense, if you will, about how your overall operations are running,” Calhoun says. “That’s exciting. Customers would like to wave a magic wand and know exactly what’s going on wherever they’re interested. The ability to deploy tens of thousands of sensors gets you close to that magic wand.”

With thousands of Everactive’s steam trap sensors already deployed, Wentzloff believes its sensors for motors and other rotating machinery will make an even bigger impact on the IoT market.

Beyond Everactive’s second generation of products, the founders say their sensors are a few years away from being translucent, flexible, and the size of a postage stamp. At that point customers will simply need to stick the sensors onto machines to start generating data. Such ease of installation and use would have implications far beyond the factory floor.

“You hear about smart transportation, smart agriculture, etc.,” Calhoun says. “IoT has this promise to make all of our environments smart, meaning there’s an awareness of what’s going on and use of that information to have these environments behave in ways that anticipate our needs and are as efficient as possible. We believe battery-less sensing is required and inevitable to bring about that vision, and we’re excited to be a part of that next computing revolution.”



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3 Questions: Historian Emma Teng on face masks as 公德心

As The Washington Post has reported, “at the heart of the dismal U.S. coronavirus response” is a “fraught relationship with masks.” With this “meaning of masks” series, which explores the myriad historic, creative, and cultural meanings of masks, we aim to offer our fellow Americans more ways to appreciate and practice protective masking — a primary means for containing the Covid-19 pandemic.

Emma J. Teng is the T.T. and Wei Fong Chao Professor of Asian Civilizations at MIT and director of MIT Global Languages. A member of the History Section faculty, she teaches courses in Chinese and East Asian culture, migration, Asian American history, and women’s and gender studies. A Margaret MacVicar Faculty Fellow, Teng is the author of “Taiwan's Imagined Geography: Chinese Colonial Travel Writing and Pictures, 1683-1895” (Harvard, 2004) and “Eurasian: Mixed Identities in the United States, China, and Hong Kong, 1842-1943” (University of California, 2013). SHASS Communications spoke with her in July.

Q: Humans use masks for a variety of purposes, ranging from protection to play to artistic performance. Can you provide some examples of masks and masking drawn from your discipline?

A: In East Asia, face masks are worn for a wide range of purposes. Combating urban pollution is a top reason for many, but it’s also common to wear a face mask to prevent allergies, for extra sun protection, or even because you want to run down to the corner shop anonymously and it’s too early to face your neighbors.

Masks can sometimes provide a little extra privacy in densely populated East Asian cities — on the subway or train, for example. In cold and flu season, many consider it prudent to wear a face mask and carry disposable hand wipes to fight contagion. And if you have a cold yourself, you are expected as a matter of basic etiquette to wear a face mask out in public, in the office, and at school in order to protect others from possible infection.

The earliest uses of face coverings in East Asia were likely for sun protection, especially for those working long hours in the fields, or for feminine modesty in eras when it was considered inappropriate for women (particularly elite women) to show their faces in the presence of men outside their family. The use of masks as a public health measure in East Asia seems to have arisen with the 1918 influenza pandemic, becoming commonplace first in Japan. After the SARS outbreak of 2002, face masks became even more common, as did other public health measures such as incorporating antimicrobial materials into such surfaces as escalator handrails.

Q: Many countries have adopted mask-wearing as a politically neutral health measure, but that hasn’t been universally true. Can you comment on the ways that culture impacts the wearing of masks?

A: In an era of globalization, it’s tempting to imagine that culture doesn’t matter, or is invisible. The pandemic, however, has made cultural differences highly visible, in some disturbing ways. Just months into the outbreak of Covid-19, I received an email from a reporter from The Los Angeles Times who was hoping to interview me on the seemingly strange (to many in the U.S.) Asian custom of wearing face masks. Closer to home, I heard people question why Asians in Somerville [Massachusetts] were wearing face masks “as if they aren't the problem.”

With U.S. leaders referring to SARS-CoV-2 as the “Wuhan virus,” “China virus,” or even worse, the “kung flu,” Chinese immigrants and Asian Americans more broadly suddenly found themselves objects of suspicion, xenophobia, and hate. Face masks made them all the more visible. Not surprisingly, the face mask has become one symbol of the “I am not a virus” (#JeNeSuisPasUnVirus) movement that first emerged among Asians in France.

In general, I think too much has been made of the supposed difference between American “individualism” and Asian “collectivism.” However, when it comes to wearing face masks, certain aspects of culture have almost certainly been coming into play. At an MIT Starr Forum faculty panel on “When Culture Meets Covid-19,” Professor Yasheng Huang of the MIT Sloan School suggested that communitarian norms in East Asian countries support the ethos that “doing something for the community good is good for me also.”

This value is known as 公德心: in Mandarin, gongdexin; in Japanese, kootokushin; in Korean, kongdkshim; and in English, public-spiritedness.

Confucianism, a philosophy that has significantly influenced East Asian cultures, encourages respect for elders and care for young children. It would therefore be largely unthinkable to discuss sacrificing older people to the pandemic using a cost-benefit analysis. If wearing a face mask can help protect someone’s grandparents, that is your duty. It is also considered a social responsibility to do one’s part in controlling the pandemic to ensure that schools remain open for the younger generation.

Research that has emerged from East Asia over the past several months supports the efficacy of community mask wearing, even for the asymptomatic or presymptomatic, as a public health measure. Findings of a Hong Kong study published in The Journal of Infection (April 2020) showed that: “Community-wide mask wearing may contribute to the control of Covid-19 by reducing the amount of emission of infected saliva and respiratory droplets from individuals with subclinical or mild Covid-19.”

The authors of “Covid-19 and Public Interest in Face Mask Use,” which appeared in the American Journal of Respiratory and Critical Care Medicine in June, noted that: “In many Asian countries like China and Japan, the use of face masks in this pandemic is ubiquitous and is considered as a hygiene etiquette, whereas in many Western countries, its use in the public is less common.” Comparing rates of infection in East Asia with Western countries such as the United States, their study suggests that early public interest in using face masks “may be an independently important factor in controlling the Covid-19 epidemic on a population scale.”

As an Asian studies scholar, I see this as a valuable opportunity to learn from the approaches and successes of Asian countries — for example, South Korea, Taiwan, and Singapore — in controlling the pandemic. I hope we can observe how these countries look to science to guide their public health policy and responses to the pandemic, in addition to cultural factors that support community mask-wearing. This would be far more productive than blaming the emergence of this novel coronavirus on “weird” Chinese food habits — as we saw with the so-called bat soup controversy and the media attention to wet markets — or stigmatizing mask wearing as a “strange” Asian custom.

Q: Given this history, can you speculate on ways in which people today might explore the creative possibilities of masks that are needed for protection from the virus?

A: I see face masks as an outlet for creativity and self-expression. In early April, when the U.S. Centers for Disease Control and Prevention finally caught up and reversed its position on face masks, surgical masks were impossible to find. The first thing I did after sewing masks for my family was to reach out to my team to say, “Who needs a mask?!”

Owning a sewing machine and a large collection of fabrics, I thought sewing masks would be a useful and creative distraction. It was fun to choose fabrics reflecting my colleagues’ color and pattern preferences and to experiment with different mask designs. Reaching out to various members of the MIT community to see who might need a mask at that time of shortage helped me feel connected while working remotely. Crafting is also a good way to slow down and practice mindfulness.

Among the favorite masks I made are the one for Associate Provost Krystyn Van Vliet, which features floor plans, and the one I call “I Know Why the Caged Bird Sings” (after the book by Maya Angelou) for Associate Professor of Literature Sandy Alexandre. I wanted to thank both of them for their invaluable contributions to our MIT communty during this difficult time.

Another fun, creative outlet was to team up with my friend Associate Dean of Engineering Anette “Peko” Hosoi to develop an online exploration of the science and craft of face masks. This project was a good way to bring together cross-disciplinary knowledge of fabrics, designs, and usage in a very practical way and share with others.

Wearing a face mask yourself is a good way to say “I care about your health” when out in public; using your creativity to make a personalized mask for someone else is another way to say you care.

Prepared by MIT SHASS Communications
Editorial Team: Emily Hiestand and Kathryn O’Neill



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For student researchers, no pause for the pandemic

In mid-March, when the Covid-19 pandemic darkened MIT classrooms and labs, lights switched on for undergraduate research taking place remotely. Zooming in from time zones often distant from Cambridge, Massachusetts, many students were able to continue undergraduate research opportunities (UROPs) made possible by nuclear science and engineering faculty.

Advancing projects begun during January independent activities period or the start of spring semester, students overcame significant obstacles to make their research experiences meaningful while working from home — whether that home was in a manicured U.S. suburban subdivision, a palm-lined street in the Middle East, or, in the case of Quynh T. Nguyen, surrounded by local rice fields in Vietnam.

“It was tough returning to Dong Hoi City, because I thought that meant I was done with my UROP for the semester,” says the rising junior majoring in physics. Working with Assistant Professor Mingda Li, Nguyen had been investigating the thermal transport properties of materials, growing crystals in the lab. One goal of such work is optimizing heat transfer in materials to improve efficiency in energy production. “I was so grateful when Professor Li found ways for me to stay on the project from home,” he says.

While finishing his spring classes online — a major undertaking given the 11-hour time difference and difficulties accessing MIT servers — Nguyen pivoted with enthusiasm from lab work to developing machine learning applications for the same project.

“I’ve been excited about machine learning since taking a class, and so actually this UROP has allowed me to leverage my knowledge in an extremely new and interesting way for me,” says Nguyen.

Aljazzy Alahmadi, a rising sophomore, managed to get back to Saudi Arabia the day before such international flights were halted. “I was in a UROP meeting when MIT emailed the news, and I didn’t think about anything except getting home as fast as possible,” she recalls. But soon after she settled into life in Dammam, a city of more than a million on the Persian Gulf, she was relieved to learn that she could continue her project with graduate student Saleem Aldajani, within the lab of Associate Professor Michael P. Short.

“My work involves finding trends in the degradation of a stainless steel alloy often used in light water nuclear reactors when it’s under reactor-like thermal conditions,” she says. This kind of information might contribute to extended lifetimes for light water reactors. But after training with steel cutting and specialized spectroscopy techniques in the lab, her remote location necessitated a turn to data analysis instead.

“I was kind of happy about this switch,” Alahmadi says. “When I began the project, I didn’t really grasp what it was all about — I was learning how to cut steel samples — so when I started focusing on datasets I could intellectually explore in a way I couldn’t before.”

After she returned to her home in Katy, Texas, a small city in Houston’s shadow, Andrea Garcia, a rising sophomore, says she felt “kind of devastated.” Drawn to disciplines that would enable her to address environmental problems and climate change, Garcia had just decided to concentrate in materials science and engineering. “I had a lot of things planned for the rest of the semester,” she says, including a UROP in the Short lab. After hearing him lecture about the promise of fusion energy in the fall, Garcia had determined to learn more about nuclear energy more broadly.

She leapt into Short’s project, spending weeks learning how to use lasers safely. “Then we got kicked out due to Covid,” says Garcia. “I thought there’d be no way for undergraduate researchers to keep doing the research, but Professor Short made it happen, offering to run experiments and send us the data.”

Flying (mostly) solo

Although routinely in touch with faculty and lab supervisors via email and Zoom meetings, the students were on their own for the most part during spring semester and beyond. While they found the physical isolation from a team challenging at times, the undergraduates also relished their independence.

“I was analyzing data on irradiated samples of titanium aluminum metals, focused on thermal diffusivity, and was left to my own devices,” says Garcia. “Every week, we had to present our findings, and I came to feel a sense of ownership, that I was having an impact and that my work was achieving something.”

Investigating electrical and thermal conductivity of crystals that feature some unique quantum properties proved fascinating to Nguyen, not least because it catalyzed him to “learn many new things related to machine learning on Coursera,” as well as to investigate domains of physics previously unfamiliar to him. He especially enjoyed prowling through vast online databases: “I find it amazing that scientists have built these repositories and made them available for everyone to access.”

Alahmadi felt energized by the quest to find something of value in her datasets. “With this project, I felt I couldn’t leave until I reached a point of a deliverable,” she says. “I wanted to get a result, publish a paper, go to a conference — get the full experience of this.”

Sticking with it

Although their fall plans might be uncertain, these students remain anchored by their continuing research. Garcia, who found that she enjoyed using Python to create graphs mapping the properties of her material samples, says the experience reminded her “that computer science is a useful skill.” As a result, she hopes to bear down on her materials science major while taking more computer science courses.

“My wildest dream, which keeps me going, is to incorporate power systems in Saudi that don’t use carbon,” Alahmadi says. She hopes to stick with her UROP, wherever she is living. “It’s taught me to open my eyes to all things so I can learn new skills, from acquiring new capabilities to make projects go faster, to collaborating well with other lab members.”

Nguyen, who is targeting a career in applied physics, feels his experience with the UROP “is invaluable for my future,” he says. He has co-authored a scientific publication, and feels deep ties to his Cambridge-based research group. He has come to view this difficult period not as an obstacle, but an opportunity. “It’s an unprecedented experience, working and communicating remotely,” he says. “We are all experiencing a painful pandemic, but as Professor Li notes we are living in a historic time that will one day be memorialized in movies and books, so it’s not all bad.”



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Rewriting the rules of machine-generated art

Horses don’t normally wear hats, and deep generative models, or GANs, don’t normally follow rules laid out by human programmers. But a new tool developed at MIT lets anyone go into a GAN and tell the model, like a coder, to put hats on the heads of the horses it draws. 

In a new study appearing at the European Conference on Computer Vision this month, researchers show that the deep layers of neural networks can be edited, like so many lines of code, to generate surprising images no one has seen before.

“GANs are incredible artists, but they’re confined to imitating the data they see,” says the study’s lead author, David Bau, a PhD student at MIT. “If we can rewrite the rules of a GAN directly, the only limit is human imagination.”

Generative adversarial networks, or GANs, pit two neural networks against each other to create hyper-realistic images and sounds. One neural network, the generator, learns to mimic the faces it sees in photos, or the words it hears spoken. A second network, the discriminator, compares the generator’s outputs to the original. The generator then iteratively builds on the discriminator’s feedback until its fabricated images and sounds are convincing enough to pass for real.

GANs have captivated artificial intelligence researchers for their ability to create representations that are stunningly lifelike and, at times, deeply bizarre, from a receding cat that melts into a pile of fur to a wedding dress standing in a church door as if abandoned by the bride. Like most deep learning models, GANs depend on massive datasets to learn from. The more examples they see, the better they get at mimicking them. 

But the new study suggests that big datasets are not essential. If you understand how a model is wired, says Bau, you can edit the numerical weights in its layers to get the behavior you desire, even if no literal example exists. No dataset? No problem. Just create your own.

“We’re like prisoners to our training data,” he says. “GANs only learn patterns that are already in our data. But here I can manipulate a condition in the model to create horses with hats. It’s like editing a genetic sequence to create something entirely new, like inserting the DNA of a firefly into a plant to make it glow in the dark.”

Bau was a software engineer at Google, and had led the development of Google Hangouts and Google Image Search, when he decided to go back to school. The field of deep learning was exploding and he wanted to pursue foundational questions in computer science. Hoping to learn how to build transparent systems that would empower users, he joined the lab of MIT Professor Antonio Torralba. There, he began probing deep nets and their millions of mathematical operations to understand how they represent the world.

Bau showed that you could slice into a GAN, like layer cake, to isolate the artificial neurons that had learned to draw a particular feature, like a tree, and switch them off to make the tree disappear. With this insight, Bau helped create GANPaint, a tool that lets users add and remove features like doors and clouds from a picture. In the process, he discovered that GANs have a stubborn streak: they wouldn’t let you draw doors in the sky.

“It had some rule that seemed to say, ‘doors don’t go there,’” he says. “That’s fascinating, we thought. It’s like an ‘if’ statement in a program. To me, it was a clear signal that the network had some kind of inner logic.”

Over several sleepless nights, Bau ran experiments and picked through the layers of his models for the equivalent of a conditional statement. Finally, it dawned on him. “The neural network has different memory banks that function as a set of general rules, relating one set of learned patterns to another,” he says. “I realized that if you could identify one line of memory, you could write a new memory into it.” 

In a short version of his ECCV talk, Bau demonstrates how to edit the model and rewrite memories using an intuitive interface he designed. He copies a tree from one image and pastes it into another, placing it, improbably, on a building tower. The model then churns out enough pictures of tree-sprouting towers to fill a family photo album. With a few more clicks, Bau transfers hats from human riders to their horses, and wipes away a reflection of light from a kitchen countertop.

The researchers hypothesize that each layer of a deep net acts as an associative memory, formed after repeated exposure to similar examples. Fed enough pictures of doors and clouds, for example, the model learns that doors are entryways to buildings, and clouds float in the sky. The model effectively memorizes a set of rules for understanding the world.

The effect is especially striking when GANs manipulate light. When GANPaint added windows to a room, for example, the model automatically added nearby reflections. It’s as if the model had an intuitive grasp of physics and how light should behave on object surfaces. “Even this relationship suggests that associations learned from data can be stored as lines of memory, and not only located but reversed,” says Torralba, the study’s senior author. 

GAN editing has its limitations. It’s not easy to identify all of the neurons corresponding to objects and animals the model renders, the researchers say. Some rules also appear edit-proof; some changes the researchers tried to make failed to execute.

Still, the tool has immediate applications in computer graphics, where GANs are widely studied, and in training expert AI systems to recognize rare features and events through data augmentation. The tool also brings researchers closer to understanding how GANs learn visual concepts with minimal human guidance. If the models learn by imitating what they see, forming associations in the process, they may be a springboard for new kinds of machine learning applications. 

The study’s other authors are Steven Liu, Tongzhou Wang, and Jun-Yan Zhu.



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Fostering friendships and films from across the globe

What do you do when a pandemic shuts down international travel, and you can't do your internship in Japan? For MIT International Science and Technology Initiatives (MISTI) students this summer, the answer was the Virtual Language Conversation Exchange with the Tokyo Institute of Technology (also known as Tokyo Tech). MIT Japan's managing director, Christine Pilcavage, and MIT's global language senior instructor, Takako Aikawa, collaborated with Professor Eri Ota and Naoko Goto of Center of International Education at Tokyo Tech to create a six-week exchange-style Japanese Language Conversation course. The goal was to bring Japan a little closer to the MIT students and ultimately create a lasting community between the two schools.

The oldest of the MISTI programs, MIT-Japan has been sending MIT students abroad since 1983 to experience Japan’s engineering and science culture first-hand. In a typical summer, the program has 30-40 MIT students interning and conducting research in leading companies, universities, and research organizations across Japan. This year, as Covid-19 crept across the country, MIT suspended international travel and students were informed that their trips would not be taking place as planned. The MIT-Japan students had already shown such a commitment to language and cultural learning, it was clear that keeping the program running in a new way was critical. The result was the Virtual Language Conversation Exchange. “I was heartbroken when we [MIT] had to cancel our summer internship program this year,” says Pilcavage. “I was elated when we were able to create and implement the program this summer, and my students who couldn’t experience Japan this summer could feel a little closer to the country by connecting with the students at Tokyo Tech.”

Seventeen MIT students took part in the language exchange curriculum and were randomly paired with their Tokyo Tech counterparts in similar majors. The exchange took place virtually between the Japanese students based in Tokyo and MIT-Japan students stationed around the world — the United Kingdom, Vietnam, Bahrain, Thailand, and all across the United States. Even with the logistical challenge of straddling so many different time zones, the virtual format proved to make the opportunity more accessible to students, especially during this unconventional summer. "Since it was held online, it was easy for me to join the activity. It was a very good, rare opportunity to meet students from MIT," shared one of the Tokyo Tech participants. 

The objective was for all of the students to improve their second-language skills, understand different cultures and ideas, and broaden their perspective through the exchange. The entire group joined the first week in a plenary, and then the student pairs met regularly for three weeks, discussing a selected topic in their non-native language. For a final project, teams created a joint video on their chosen theme, with topics including university life, linguistics, music, movies, cooking, and folktales. As the students bonded, they also shared their interests, impressions of Japan, and their plans for the future. "I really enjoyed this program. I made a new friend and talked about various things together," said one of the Tokyo Tech participants. "I learned not only English vocabulary and grammar — also different cultures and lifestyles. I became more interested in the U.S. and MIT!"

The students watched the video submissions before the final meeting and voted on a favorite. At the end of the six weeks, a compilation video created by the Tokyo Tech instructors was screened by students and instructors who shared feedback about their experiences. "When watching our students' final project videos, I was so moved and touched by their creativity and passion to learn each other's culture and language, " MIT's Aikawa-sensei comments. "I taught many of the MIT participants 'in-person' in the past, and it was such a rewarding experience for me to see their happy and energetic faces, using the Japanese language at this difficult time."

With the coronavirus continuing to impact countries around the world, Pilcavage says she also sees reasons to remain positive. "Despite the despair, the friendships that developed and flourished in this short time give us much hope. We hope the MIT students will be able to travel to Japan again soon, and we hope to welcome our Tokyo Tech friends to visit our campus."

Professor Richard Samuels, founder of the MIT-Japan Program and MISTI, agrees. "The videos go a long way toward restoring my confidence in the resilience of young scholars, as well as my hope that we all soon will be able to move beyond the current constraints and directly engage one another as friends and professionals."



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Thea Keith-Lucas named interim chaplain to the Institute

Episcopal chaplain Reverend Thea Keith-Lucas has been named interim chaplain to the Institute as MIT pauses its search for a full-time chaplain, which launched last fall. “I am honored to serve alongside our dedicated and creative chaplains to support the religious identities, spiritual well-being, and ethical growth of our students in this challenging time,” says Keith-Lucas.

Since 2013, Keith-Lucas has led the Lutheran Episcopal Ministry at MIT, a joint ministry that she shares with MIT’s Lutheran chaplain Reverend Andrew Heisen. She has made it a priority to support LBGTQ+ Services, Violence Prevention and Response, and other efforts to create a diverse and inclusive community at MIT. For the past two years, she has been one of two co-conveners for Christian chaplains in the Office of Religious, Spiritual, and Ethical Life (ORSEL).

She also serves as coordinator of Radius, an initiative of ORSEL's Technology and Culture Forum that examines the ethical implications of technology and scientific innovation on society, individuals, and the environment. “Whether we're leading a public forum, mentoring a student activist, or teaching an ethics seminar, our goal is to help people reflect more deeply on their choices and find the inspiration they need to do good in this world,” says Keith-Lucas.

Hailing from a family of scientists and engineers, Keith-Lucas was ordained to the Episcopal priesthood in 2006. She previously served parishes in Randolph and Danvers, Massachusetts before her appointment as a chaplain to MIT by the Episcopal Diocese of Massachusetts, which has engaged in ministry at the Institute for more than 60 years. She lives in Lexington, Massachusetts, with her husband, Jake Montwieler, and their two children.

Keith-Lucas’s appointment follows a decision by the Division of Student Life to pause the search for a new chaplain to the Institute. “When we started the search last fall, the world was very different,” says Suzy Nelson, vice president and dean for student life. “Given the impact of Covid-19 on our community members’ ability to engage fully in the search, we need to step back and reassess our timeline and approach. We are grateful to Thea for her years of service to MIT as a chaplain. Thea will offer strong leadership during this interim period.”

In addition to coordinating and fostering religious life programming at MIT, the chaplain to the Institute is part of MIT’s larger student support network. The Institute chaplain works with more than 30 other MIT chaplains who represent many religious traditions to promote interfaith discourse and educate the MIT community about the history and role of religions around the world. Though the role was created in 2007, it was part of President James Killian’s vision in the mid-1950s to bolster MIT’s spiritual life and teaching on religion in society.

“This role is very important to the MIT community as a whole, including those who follow a faith tradition and those who don’t. We look to chaplains to be a source of comfort during painful times and an ethical guide during uncertain times,” Nelson says. “That’s a tall order, and we are excited that Thea will take on the challenge on an interim basis.”



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