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Jordan Peterson drops tenured professorship, blasts …

Diversity, inclusion and equity are destroying academia, the conservative author has warned

Canadian psychologist and author Jordan Peterson has announced he is resigning as a tenured professor at the University of Toronto, citing concerns with academias shift towards Diversity, Inclusivity and Equity mandates, which he appreciates as DIE. The abbreviated term is one of reasons behind Petersons resignation, which he announced in a Wednesday piece for the National Post.

The appalling ideology of diversity, inclusion and equity is demolishing education and business, Peterson wrote.

The now-former professor said he loved his job and students, but voiced frustration that his qualified and supremely trained heterosexual white male graduate students face a negligible chance of being offered university research positions, despite stellar scientific dossiers.

Impossible-to-meet diversity and political correctness standards are affecting both students and fellow staff members. Peterson refers to himself as persona non grata in his field because of his unacceptable philosophical positions.

How can I accept prospective researchers and train them in good conscience knowing their employment prospects to be minimal? he wrote, later adding that his colleagues must craft DIE statements to get research grants today.

They all lie, he said of many modern professors, adding they teach their students to do the same.

They do it constantly, with various rationalizations and justifications, further corrupting what is already a stunningly corrupt enterprise, he added about many of his colleagues, blasting teachers for undergoing modern so-called anti-bias training.

Accrediting boards for Canadian graduate clinical psychology training programs will refuse accreditation programs unless they include a social justice orientation, according to Peterson.

All of you going along with the DIE activists, whatever your reasons: this is on you, he added. Cowering cravenly in pretence and silence. Teaching your students to dissimulate and lie. To get along. As the walls crumble.

In a lengthy thread later posted on Twitter, Peterson highlighted students and professors confirming his concerns about wokeism standards destroying academic standards.

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Opinion | Acting in good faith benefits all – Daily Northwestern

Finding guiding rules for life is a complex task. Entire self-help industries exist to promote principles people should embrace and to help people find what brings them the most joy. Some people turn to religion for guidance, others to pop culture academics like psychologist Jordan Peterson and philosopher Slavoj iek.

For me, one of the most important principles that can guide action is the concept of good faith. Engaging with people in good faith is a central mantra that underlies not only the success of interpersonal relationships, but also the functioning of society at large.

To act in good faith means a few things. First, it means to act honestly. That requires individuals to be honest with themselves and others, and to give their best effort to understand others. That extends into the second premise, which is to extend the benefit of the doubt to others. Someone being short with you in line at the coffee shop or bumping into you in a crowded bar is rarely a reflection of their character. Finally, acting in good faith means behaving in ways that would be sustainable should everyone engage in them.

On a micro-community level, acting in good faith is critical for the functioning of any organization. From clubs to sports teams, there needs to be an underlying assumption that everyone involved is working together in a genuine fashion, as being honest with each other promotes a culture of trust and support. Absent that, social groups cant help their members when times are tough, which moots the whole point of finding community.

That spills over into the larger Northwestern community. The greater goal of an educational institution seems to be lost when people no longer act in good faith. Professors start to assume every student who doesnt attend class must be lazy and not actually sick, and students are put in a place where the educational process becomes wrapped up in competition, which discourages genuine collaboration that would further everyones interests.

Beyond just those student-professor relationships, acting in good faith is important to help avert a cynical perspective on the world that can quite literally shorten life. Looking for the best in people helps color life differently. No longer is everyone out to get you. Not entering every interaction with the assumption you are going to get screwed is necessary for a much happier and more peaceful existence.

This is absolutely not to suggest life should be approached with some sort of blank-slate naivety. When approaching the world in good faith, there is still ample room to be skeptical. It remains necessary to be vigilant, and if in any negotiation or interaction the other party doesnt seem to want to act in good faith, then perhaps you dont owe it to them. However, when the waiter makes a mistake with your order, life is better when you assume the mistake was just that, rather than some sort of targeted action.

The last principle, to behave responsibly, is a critical touchpoint. The best example of this is when theres construction on a five-lane highway that takes it down to one or two lanes and everyone is merging all the way over. Some people will speed ahead to the very point where they have to merge, and then hope some good citizen allows them in. Ultimately, when only a few people do this, it doesnt totally ruin the flow of traffic. But if everyone were to drive with ignorance for common decency on the road, traffic-guidance systems would collapse. If only one or two people abuse the system, nothing goes wrong. But it becomes wildly unfair when some portion of the people within a system can abuse it with no consequences while others play by the rules.

None of this means I always act in good faith. Ive ignored these principles many times. But when it comes down to it, I try my best to be responsible, extend the benefit of the doubt to people and always forefront honesty. That process undergirds social cohesion in all the micro-level interactions we participate in on a day to day basis.

Jack Landgraff is a Weinberg sophomore. He can be contacted at [emailprotected]. If you would like to respond publicly to this op-ed, send a Letter to the Editor to [emailprotected]. The views expressed in this piece do not necessarily reflect the views of all staff members of The Daily Northwestern.

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State Lawmakers Are Combating Racism the Right Way. Here’s What You Need to Know. – Heritage.org

Every parent wants toprotecttheir child from prejudice. Yet some activists and writers claim that state lawmakers proposals to reject educators use of critical race theory in K-12 schools is acampaignthat thrives on caricature.

We saw an example of this in a Twitter exchange between the best-selling author Jordan Peterson and the Manhattan Institute Senior Fellow Chris Rufo this week.

Peterson argued that banning critical race theory in schools is a bad idea because ideas are defeated by better ideas. Peterson also added that critical race theory cant be defined or policed.

Rufo, who has documented the ways in which educators application of critical race theory leads to racial discrimination, appropriately responded by saying state proposals that defend teachers and students from these activities must becareful to restrict racialist abuse.Schools have a coercive power over children, Rufo argued.

Also, critical race theory can be defined (its architects left a canon defining its main ideas) and lawmakers are responsible for addressing violations of existing law. The Heritage Foundationsmodel policycontains such careful provisions and prohibits compelled speechwith compelled speech being a natural consequence of school officials applications of critical race theory in classrooms (or anywhere else).

As I explain in my book Splintered: Critical Race Theory and the Progressive War on Truth, critical race theorypromotes racial discriminationand Marxism. One critical race theorist calledKarl Marxs ideasdazzling and riveting to contemporary theorists. Critical race theory has an activist dimension and questions the very foundations of constitutional law, according to two of the theorys founders, Richard Delgado and Jean Stefancic.

There is a wave of popular opinion rejecting the theorys biased applications. State lawmakers are considering proposals that defend teachers and students from being forced to believe ideas that clash with their personal values and Americas founding ideals, including ideas thatviolatethe Civil Rights Act of 1964. Here are some examples of proposals that are rejecting racial discrimination, not banning critical race theory:

Criticshave claimed such proposals prevent schools from making people feel discomfort, as though teachers will need to avoid discussing the harsh truths about slavery and racism in Americas past. But the proposals are specific regarding school activities and instructional practices and do not ban black history, as one Florida lawmaker who opposes the state proposal claimed.

Floridas proposal, for example, says that a public employee cannot force a teacher or student to believe that an individual should feel discomfort, guilt, anguish based on their skin color. The proposal is not an invitation to censor school material but a firm statement opposing racism.

Some school officials know that racially discriminatory behavior will not stand in court. Earlier this week in Massachusetts, Wellesley public school leaders justsettled a lawsuit with Parents Defending Education, an advocacy organization exposing radical content in schools, who argued that the districts racial affinity groups were illegal. These affinity activities separate students by race for different school activities.

State proposals to reject critical race theory should protect teachers and students from prejudice by prohibiting compelled speech, reinforcing the Civil Rights Act of 1964 and the 14th Amendment to the U.S. Constitution, and even stating that nothing in such proposals shall limit classroom discussions (Georgias proposal, for one, contains such a provision).

Before denouncing state proposals for using the words discomfort, guilt, and anguish in relation to K-12 schools, critics should look closer at what lawmakers are attempting to do: protect children from racism.

This piece originally appeared in The Daily Signal

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San Antonio judge taking heat over controversial ‘chones’ video. We have some questions. – mySA

A San Antonio judge running for reelection is under fire for YouTube video his opponent calls "undignified."

Carlos Quezada, 289th District Court Judge, was featured in a parody video posted to YouTube on January 30 showing him presiding over fake bench trial over a woman who stole Cleto Rodriguez's (yes that Cleto) "lucky" underwear, or chones, and used them as a rag for cleaning, reports the Express-News.

Quezada, running on the Democraticballot,told Express-News that he didn't think anyone would take the video seriously because he was having fun. His opponent in the Democratic primary, Rose Zebell-Sosa, believes Quezada is in violation of judicial conduct rules.

The video is awkward, to say the least, but it also leaves us with a lot of questions. Some of them answered. Someof them not.

The video was posted by a channel called The Carpenter's Apprentice, which reportedly belongs to a man named Roy Aguillon, according to the Express-News article.

Exactly. The Express-News says Aguillon is a political activist for the Southside who ran unsuccessfully for San Antonio City Council in 2015.

According to a welcome video on his channel, Aguillon credits writer and right-wing figure Jordan Peterson for helping him get his life back together. Peterson has publicly made transphobic remarks and railed against feminists. Peterson believes feminism is destroying America. And men.

The video is a little cringe, but apparently Quezada made it to campaign for reelection to his district judge seat. Near the end of the video he asks the fake plaintiff and defendant for their vote.

We're not sure. He is a local celebrity and Cleto does appears in several of Aguillon's videos, including a recent video segment he introduces as "Cleto's Community" where he interviews Pamela Espurvoa Allen, founder of Eagle's Flight Advocacy and Outreach.

His opponent Zebell-Sosa appears to imply that it can. She told the Express-News that she finds it "disturbing, undignified and disappointing." His opponent says the video also promotes stereotypes.

Again, Zebell-Sosa seems to think it could. Judges are held to rules and standards of conduct set out by the State Commission on Judicial Conduct.

That remains to be seen. Jacqueline Habersham, executive director of the SCJC, told the Express-News whether Quezada was in violation of any of the rules to warrant an investigation.

Quite often. In fact, there is a whole public archive of suspensions, resignations, and sanctions.

It's five minutes long. The "joke" is presented in the first minute and 30 seconds. After a while, the "holey chones" discourse becomes awkward. Maybe there will be a re-cut?

Depends on who you speak to. There have been more serious judicial violations and investigations against Texas judges in the past. There was a district judge in Polk County who was accused of showing prejudice against a defendant, and a Burnet County judge who took to Facebook to say the man charged with the murder of SAPD Detective Benjamin Marconi should be lynched.

God, I sure hope not.

The primaries and midterms are upon us so only time will tell. Some of his supporters and people on the fence could legitimately be offended by the video, which Zebell-Sosa says mocks court proceedings. Or they could not care at all.

Election Day for the primaries is on March 1.

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John Oliver Needs Only 2 Words To Express Any Ambition To Join Joe Rogan On Spotify – HuffPost

Although Joe Rogan recently apologized for spreading misinformation on his Spotify podcast and said he never intended to purposely be inaccurate, fellow comedian John Oliver thinks hes missing the point.

Oliver, the star of the HBO series Last Week Tonight, pointed out that whether Rogan intentionally spread lies is beside the point if the information is not true to begin with.

People like Rogan will say they didnt intend to misinform, but if you did misinform people, your intention doesnt fundamentally matter that much since the consequence is the same, Oliver told HuffPost.

Oliver has spoken out against Rogans penchant for misinformation in the past, but he admits the issue may be endemic among podcasters and TV personalities.

I think there is also an issue regarding people on podcasts or TV just confidentially pontificating about something they havent really done the research on, Oliver said.

However, Oliver needed only two words to sum up his desire to do his own podcast on Spotify: Fuck no.

Would you like to talk with [Canadian professor and anti-trans activist] Jordan Peterson every month with a laptop next to you? No. Im good, actually.

Of course, Oliver is pretty busy preparing for the season premiere of Last Week Tonight on Feb. 20.

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Cleveland high school student walks 3 miles to school daily to fulfill dream of being a scientist – News 5 Cleveland

CLEVELAND Mussa Wisova is a shining example of what can happen when potential, opportunity and drive intersect at school.

The 16-year-old junior at John Marshall School of Information Technology (JMIT) is going the distance for education. He walks three miles to and from school every day. Every step is getting him closer to his dream.

News 5 Cleveland.

"I want to be a scientist more than anything," smiled Wisova.

His parents have gone the distance for the American dream; the family immigrated to Cleveland from Tanzania in 2016.

News 5 Cleveland.

"For me, like English, I didn't even know the alphabet," he said.

He and his siblings studied children's books from a neighbor to learn English.

Now, Wisova is studying physics and quantum science, and hoping to go to MIT.

"It is the only university I want to go to, and it's really hard," he said. "So, I'm really pushing forward to get to there."

Wisova said it wasn't until he came to Cleveland and was exposed to teachers and opportunities that he fully realized his talent and passion for science, technology, engineering and math.

"I think the role of teacher is to see the talent and bring it out and expose them to the resources that are available in the district," said Daisy Pedavada, a teacher at JMIT.

At JMIT, Wisova has had the opportunity to take AP courses, participate in healthcare sector partnerships, and receive web development training just to name a few.

He also started his own SAT prep club and recruited other kids to join.

"He's so dedicated," said Pedavada.

"I just love learning," said Wisova.

It was an educator who first told News 5 about Wisova; impressed by his talent and tenacity. They also wanted to show the opportunities for kids to excel in Cleveland and how much they mean to the students and teachers working with them.

Wisova says he wants to stay in Cleveland for his professional career if the right opportunity presents itself.

He embodies the potential of so many young minds and the importance of going the distance to help each discover and reach their dreams.

"We all have dreams but it's about how hard you work for it," said Wisova.

Speaking of opportunity, Wisova is trying to establish a summer research program with IBM's first private-sector, on-site quantum computer at the Cleveland Clinic.

News 5

'Help Wanted: Ohio' dives into the issues surrounding employment in Northeast Ohio.

We investigate the broken unemployment system, our broken skills development and education systems, the impacts worker shortages are having on our local economy, as well as the hardest-hit industries. We hold leaders and legislators accountable and look for those working towards solutions.

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Is the Future of Food Quality in the Hands of Machine Learning? – FoodSafetyTech – FoodSafetyTech

Is the future of food quality in the hands of machine learning? Its a provocative question, and one that does not have a simple answer. Truth be told, its not for every entity that produces food, but in a resource, finance and time-constrained environment, machine learning will absolutely play a role in the food safety arena.

We live in a world where efficiency, cost savings and sustainability goals are interconnected, says Berk Birand, founder and CEO of Fero Labs. No longer do manufacturers have to juggle multiple priorities and make tough tradeoffs between quality and quantity. Rather, they can make one change that optimizes all of these variables at once with machine learning. In a Q&A with Food Safety Tech, Birand briefly discusses how machine learning can benefit food companies from the standpoint of streamlining manufacturing processes and improve product quality.

Food Safety Tech: How does machine learning help food manufacturers maximize production without sacrificing quality?

Berk Birand: Machine learning can help food manufacturers boost volume and yield while also reducing quality issues waste, and cycle time. With a more efficient process powered by machine learning, they can churn out products faster without affecting quality.

Additionally, machine learning helps food producers manage raw material variation, which can cause low production volume. In the chemicals sector, a faulty batch of raw ingredients can be returned to the supplier for a refund; in food, however, the perishable nature of many food ingredients means that they must be used, regardless of any flaws. This makes it imperative to get the most out of each ingredient. A good machine learning solution will note those quality differences and recommend new parameters to deal with them.

FST: How does integrating machine learning into software predict quality violations in real-time, and thus help prevent them?

Birand: The power of machine learning can predict quality issues hours ahead of time and recommend the optimal settings to prevent future quality issues. The machine learning software analyzes all the data produced on the factory floor and learns how each factor, such as temperature or length of a certain process, affects the final quality.

By leveraging these learnings, the software can then help predict quality violations in real-time and tell engineers and operators how to prevent them, whether the solution is increasing the temperature or adding more of a specific ingredient.

FST: How does machine learning technology reveal & uphold sustainability improvements?

Birand: Due to the increase in climate change, sustainability continues to become a priority for many manufacturers. Explainable machine learning software can reveal where sustainability improvements, such as reducing heat or minimizing water consumption, can be made without any effect on quality or throughput. By tapping into these recommendations, factories can produce more food with the same amount of energy.

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Aspinity Redefines Always-on Power Efficiency with First Analog Machine Learning Chip – Business Wire

PITTSBURGH--(BUSINESS WIRE)--Aspinity, the pioneer in analog machine learning chips, today launched the first member of its analogML family, the AML100, which is the industrys first and only tiny machine learning (ML) solution operating completely within the analog domain. As such, the AML100 reduces always-on system power by 95%, allowing manufacturers to dramatically extend the battery life of todays devices or migrate walled powered always-on devices to battery - opening whole new classes of products for voice-first systems, home and commercial security, predictive and preventative maintenance, and biomedical monitoring.

Minimizing the quantity and movement of data through a system is one of the most efficient ways to reduce power consumption, but todays always-on devices dont have that capability. Instead, they continuously collect large amounts of natively analog data as they monitor their environment and digitize the data immediately, wasting tremendous system power processing data that are mostly irrelevant to the application. In contrast, the AML100 delivers substantial system-level power-savings by moving the ML workload to ultra-low-power analog, where the AML100 can determine data relevancy with a high degree of accuracy and at near-zero power. This makes the AML100 the only tinyML chip that intelligently reduces data at the sensor while the data is still analog and keeps the digital components in low power mode until important data is detected, thereby eliminating the power penalty of digitization, digital processing, and transmission of irrelevant data.

Weve long realized that reducing the power of each individual chip within an always-on system provides only incremental improvements to battery life, said Tom Doyle, founder and CEO, Aspinity. Thats not good enough for manufacturers who need revolutionary power improvements. The AML100 reduces always-on system power to under 100A, and that unlocks the potential of thousands of new kinds of applications running on battery.

Inside the AML100

The heart of the AML100 is an array of independent, configurable analog blocks (CABs) that are fully programmable within software to support a wide range of functions, including sensor interfacing and ML. This versatility delivers a tremendous advantage over other analog approaches, which are rigid and only address a single function. The AML100, however, is highly flexible, and can be reprogrammed in the field with software updates or with new algorithms targeting other always-on applications.

The precise programmability of the AML100s analog circuits also eliminates the chip-to-chip performance inconsistencies typical of standard analog CMOS process variation, which has severely limited the use of highly sophisticated analog chips, even when the inherent low power of analog makes it better suited for a specific task.

Key Features of the AML100

Availability

Aspinitys AML100 is currently sampling to key customers with volume production planned for Q4 2022. Customers can evaluate the AML100s capabilities by purchasing one of Aspinitys integrated hardware-software evaluation kits: EVK1 for glass break and T3/T4 alarm tone detection or EVK2 for voice detection with preroll collection and delivery. Contact Aspinity about evaluation kits with software packages for other applications. For more information, download the AML100 product brief or contact Aspinity.

About Aspinity

Aspinity is the world leader in the design and development of analog processing chips that are revolutionizing the power- and data-efficiency of always-on sensing architectures. By delivering highly discriminating analog event detection, Aspinitys ultra-low power, trainable and programmable analog machine learning (analogML) core eliminates the power penalty of moving irrelevant data through the digital processing system, dramatically extending battery life in consumer, IoT, industrial and biomedical applications.

For more information on Aspinity, stay in touch on LinkedIn and Twitter: @aspinity, email: info@aspinity.com or visit https://Aspinity.com.

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Can Machine Learning be Used to Improve Mental Health? – Analytics Insight

We explore how leveraging Machine Learning helps improve Mental Health in the digital world

Machine learning (ML)is a type ofartificial intelligence.ML algorithmsare utilized in a wide range of applications including medicine, traffic prediction, and object recommendations, and image recognition andspeech recognitionwhere creating traditional algorithms to do the required tasks is difficult. It makes such tasks easier to conduct.

Nowadays Artificial intelligence (AI) and machine learning (ML) technologies are being used to increase our understanding ofmental health issues and to aid mental health clinicians in making better therapeutic decisions as data about an individuals mental health status becomes more readily available.

We are using machine learning in our daily life even without knowing it such as Google Maps, Google Assistant, Alexa, etc. Machine Learning (ML) is a type of Artificial Intelligence, which is the study of computer algorithms that can automatically learn with the use of huge data and experience. These ML algorithms then create a model based on training data (input data) to make predictions or judgments without having to be specifically programmed to do so. It can become fairly adept at executing tasks on its own and reduce the cumbersomeness of such tasks where developing an algorithm manually to do a specific task is needed. It can also assist in the identification of relevant patterns that people would not have been able to uncover as quickly alone without the assistance of the machine.

Machine learning is being used by neuroscientists and doctors all over the world to build treatment and therapeutic strategies and to identify some of the important markers for mental health issues before they arise. One of the advantages is that machine learning can assist clinicians in predicting who is at risk for a specific condition.

Assembling data for mental health specialists can be now done easily so that they can do their jobs better since there is a massive amount of data available. The fact that interpreting diagnoses was previously reliant on group averages and population statistics is what makes machine learning so useful now. Clinicians can customize their care thanks to machine learning.

Machine learning is assisting in the transformation of mental health in two major ways:

When people are diagnosed with a mental disorder today, they must go through a process of trial and error to find the correct pharmaceutical dosage and treatment plan. This process of trial and error should not be happening, but the truth is that each patients symptoms for a mental health illness like depression will be different. The symptoms of one patient may differ from those of another.

A biomarker is anything like blood cholesterol, which is a biomarker for coronary heart disease. Thus similar to a physical biomarker present in the human body, it contains behavioral bio-markers for mental illnesses too like feelings of hopelessness and despair depression. ML algorithms could aid mental health providers in determining whether patients are at high risk of acquiring a specific mental health illness by identifying crucial behavioral bio-markers. Additionally, the algorithms may aid in the monitoring of a treatment plans effectiveness.

It all boils down to each patients biology, triggers, and responses to stress and illnesses like depression. Many of the symptoms of mental health problems overlap, and while some of the important markers for mental health disorders are well-known, a treatment plan based on trial and error is not an option. Psychiatrists and mental health professionals can use machine learning algorithms to discover sub-types of various disorders and build better-tailored treatment strategies and medication dosages.

Its critical to note that persons with particular disorders, such as panic disorder, psychosis, manic states, and so on, are more susceptible to crises. Patients who have been diagnosed with chronic mental illnesses have their disorders checked in order to help them get through their daily lives. However, certain illnesses, like Schizophrenia and Bipolar Disorder, have a higher probability of experiencing a crisis. Mental health experts are in charge of reducing the likelihood of patients experiencing a crisis through the use of ML algorithms. To detect whether a patient is about to have an episode, machine learning algorithms can use a combination of self-provided data and passive data through their smartphones or social media. There are several clear indicators that a new episode is on the way. These crises can be predicted if a pattern of stress, isolation, or exposure to triggers can be identified. Every one of us has our own set of triggers and coping methods, and treatment plans that examine a patients tendencies and intervene before an episode occurs can be extremely beneficial.

Due to those teaching, there is a stigma surrounding mental health care, there is just insufficient access to mental health resources. In addition to the already difficult access to mental health services, marginalized and minority communities face even greater barriers. This is due to a combination of financial constraints and a lack of education on the necessity of mental health care, as well as the topics underlying stigma.

Data Science / Machine Learning is a fantastic tool for existing physicians, psychiatrists, and therapists to use in order to better assist their patients. Its fantastic that individuals are working to develop technology solutions to combat the disease. But it isnt quite enough. We should feel at ease discussing mental health in the same way that we would discuss physical health. Now, more than ever, we must make progress in normalizing this conversation.

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Machine Learning in the Construction Industry | Pro – Pro Builder

When most people hear machine learning or artificial intelligence, the last thing that comes to mind is a technology that requires human interaction. Usually, its the opposite. More computers and more technology mean fewer humans need to be involved.

Machine learning can, however, improve the daily lives of humans in industries of all natures, particularly in construction.

While machine learning in construction may appear to be a distant concept decades away from becoming a reality, the technologys future is closer than you think. In reality, machine learning has been gaining traction in the construction business for years and, simply put, rather than removing humans from the equation, it allows individuals to accomplish their jobs more efficiently.

Because the construction industry has been slower to adopt the level of technological advancements applied in other industries, the job of constructing buildings has become increasingly difficult for its workers.

However, finding the resources to incorporate new technology while staying on track with building projects is difficult. Machine learning has the potential to propel the construction sector forward, improving conditions and productivity for workers, contracting organizations, and clients on a daily basis.

Before we delve too far into the topic, lets make sure we cover the basics, especially if youre unfamiliar with the notion. The definition of machine learning provided by the book Machine Learning: An Artificial Intelligence Approachcenters on the definition of what it means to be intelligent: the ability to learn is one of the most fundamental aspects of intelligent behaviour.

With machine learning, machines essentially have the ability to learn without being explicitly programmed. So machines can self-learn and forecast outcomes based on what statistically significant patterns they discover in the data they are receiving. Instead of having a human program them, they employ software with algorithms that enable them to make predictions based on data analysis. A machine, for example, can alert you to the need for preventative maintenance based on data it collects from the equipment its monitoring.

Machine learning is now considered a subset of artificial intelligence (AI). It sounds like science fiction, but it has many technical and practical uses.

There are plenty of ways in which machine learning can be used to help humans in the construction workplace, and it covers a range of different niches and considerations. Some of the most important include:

Machine learning has the potential to improve the overall design of a building for its occupants. Workspace businesses (WeWork, for example) use the technology to better analyze and estimate the frequency of use for meeting rooms, allowing companies to optimize the design of those spaces before construction begins.

Machine learning can also assist workers in identifying potential design flaws and omissions before proceeding with construction.

Of course, safety on building jobsites is a top priority, and machine learning can help. Consider the testing of VINNIE [Very Intelligent Neural Network for Insight and Evaluation]artificial intelligence as reported by Engineering News-Record in 2016:

VINNIE detected safety hazards, such as a person who was not wearing a hard hat, far more quickly and accurately than the human team. In comparison, a team of human specialists took over 4.5 hours to review over 1,000 entries, whereas VINNIE took less than 10 minutes. The human team correctly identified 414 photographs with persons, while VINNIE correctly identified 446.

At the end of the day, a safer work environment benefits the entire workforce.

Hand in hand with the above example is one of the most wonderful aspects of machine learning: its ability to predict dangers before they occur. For instance, using predictive analytics, machine learning can help you identify hazards, quantify their impact, and reduce or avoid them.

Machine learning requires enormous subsets of data to be effective and accurate. Lack of sufficient data is whats currently preventing many small and medium-size construction firms from using this technology. Increasing the amount of data available and integrating it will help the entire sector progress to a better, more efficient, and more productive future, creating a critical mass of construction firms that can benefit from machine learning especially if technological systems are integrated.

But lack of integration is one of the current hurdles construction faces because even if you have a large amount of digitized data available, unless technology platforms are adequately integrated, data will remain separated. Thats the case now in the construction industry overall and also within many building companies, which use multiple unintegrated platforms within their business. This will be something that needs to be addressed over time.

However, this is a challenge many businesses in a wide range of industries face, and is therefore a problem best solved collectively.

Machine learning and AI in construction share an intriguing future together, starting right now. But while machine learning is expected to have an impact on the future of construction, this doesnt mean machines and technology will take away human jobs.

Construction is and always will be a human endeavor. To win the future, we need our workers talents, competence, and invention to remain, we just need to optimize it. Machine learning can be used as yet another instrument to showcase our industrys expertise and growth.

George J. Newton is a business development and technology writer, blogger, and consultant at Write my Essay and Thesis writing service. He also writes for Nextcoursework.com. George loves exploring new ideas and seeing where the human race is heading.

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