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среда, 25 августа 2021 г.

Meet the 10 Fastest-Growing Private Companies in America

 



From insurance and banking to supplements and cannabis, these businesses clocked in impressive results in the last three years

The No. 1 Inc. 5000 company in 2021 is Human Bees, a Lathrop, California-based staffing firm. Its co-founders, Ranil Piyaratna and Geetesh Goyal, were running a life-sciences staffing firm when they saw an opportunity to solve workforce problems across industries. In 2017, they pivoted, and their company has grown a whopping 48,345 percent since. Its winning formula: Cast a wide net for applicants, vet them extensively, and then move them quickly through the hiring process. Human Bees has kept growing during the pandemic, working nonstop to help companies like FedEx find essential workers. It places 66 staffers per day on average, in industries from agriculture to software--saving clients money, headaches, and an estimated 1,180 hours per week. --Sophie Downes.



Eren Bali, an immigrant from Turkey, had already built and scaled online-education company Udemy when he turned his attention to America's broken health care system. With Carbon Health, his five-year-old San Francisco-based health care tech company, Bali aims to give patients what he dubs "omnichannel care," or access to medical and mental health care from many points. With more than 2,000 employees and a fresh investment round that values it at more than $3 billion, the company has the audacious goal of opening 1,500 clinics by 2025 to become the United States' largest primary care provider. Carbon Health ranked No. 2 on the 2021 Inc. 5000, with more than $45 million in revenue and a three-year growth rate of 39,734 percent. --Christine Lagorio-Chafkin

During the pandemic, Americans have panic-bought toilet paper, hand sanitizer, and annuities. The financial instrument designed to provide steady income in retirement is a specialty of Upstream Life Insurance Company, which is owned by Derek Hebert and Colby Arceneaux. They rode the wave of interest in so-called safer investments all the way to No. 3 on the 2021 Inc. 5000. The two businessmen acquired the more than 100-year-old Oxford, Mississippi-based company in 2018. In 2020, it booked $194 million in revenue, up 36,955 percent from 2017. The key to their success? Charm. "We used everything we learned from being from the South." Next up is life insurance, says Arceneaux, once again betting that Americans will flock to safety. --Gabrielle Bienasz

Well before Massachusetts greenlit the sale of recreational cannabis in November 2018, the Somerville, Massachusetts-based retail dispensary and wholesale cannabis seller Revolutionary Clinics was on its way to becoming one of the largest growers in the state. Launching with medical cannabis products in 2016 helped position the company, co-founded by G. Ryan Ansin, for growth. Today, it boasts around 400 employees, three retail locations, hundreds of products under a dozen brands, and more than 80 wholesale retail clients. It landed at No. 4 on this year's Inc. 5000, with $40.7 million in 2020 revenue. "It's all about setting a clear strategy, understanding what your unique value propositions are, and bringing on the best people to execute on those plans," says Keith Cooper, Revolutionary's CEO. --Brit Morse

Serial entrepreneur Jason Wilk had a longstanding bone to pick. He'd spent thousands of dollars throughout his young-adult life on overdraft and other fees charged by banks. To remedy the problem for others, Wilk, along with Paras Chitrakar and John Walanin, created a financial-management tool with a super-friendly name: Dave. By 2020, the Los Angeles-based company had saved its 10 million members--1.5 million of whom use its banking service, which takes a percentage of credit transactions--$1 billion in overdraft fees. Dave just completed a merger that will lead to the five-year-old startup going public before the end of 2021. --Christine Lagorio-Chafkin



The internet is out of IPv4 addresses. Jake Brander, the founder and CEO of the Brander Group, has a solution: Help institutions like universities and businesses sell their unused IP addresses. IPv4 refers to the 32-bit number assigned to every laptop, smartphone, and website--and as the world depleted its inventory in 2019, the existing supply has ascended in value. The four-year-old Scottsdale, Arizona-based IP address brokerage has been helping his clients reap the rewards, while also building his company, which generated more than $30 million in revenue in 2020, after starting the year with just seven employees. It landed at No. 6 on this year's Inc. 5000, with 27,096 percent three-year revenue growth. --Amrita Khalid

People with low incomes and little wealth are traditional banks' least profitable customers, so some of these banks tend to hit them with extra charges and don't prioritize their needs. Several digital-first "neobanks" including San Francisco's Varo Bank have cropped up as a result, promising better service without the hefty fees. Led by co-founder and CEO Colin Walsh, Varo also boasts a national bank charter, which lets it operate without a sponsor bank as the middleman. Founded in 2015, the company posted $41.3 million in 2020 revenue, with a three-year growth rate of 23,935 percent. It has raised $482 million, according to Crunchbase, and counts NBA star Russell Westbrook among its investors. --Sophie Downes

After a career of bodybuilding and winning world titles, Patricia and Law Payne noticed a weakness in the market: Physical training clients were developing gut and digestive issues after taking fitness supplements, which are notorious for vague ingredients lists. The problem had a solution: Produce an alternative--one that's transparent about its ingredients and formulated with what they knew from firsthand experience would help clients lose weight and build muscle. That formula led to Hardbody Supplements, which the couple co-founded in 2016. Today, their Overland Park, Kansas-based business offers an array of what it claims are better-for-you protein powders, pre-workout mixes, and fitness and weight loss plans, which helped the company book $25.6 million in 2020 revenue, up 22,948 percent from 2017. --Anna Meyer


After landing on the Inc. 5000 at No. 9 in 2020, Nooshin Behroyan's Paxon Energy has replicated that ranking this year. The Pleasanton, California-based energy management consultancy founded by CEO and single mother of two has been around since in 2016, but really hit its stride in recent years. The energy consultancy, which booked $33.8 million in 2020 revenue, tends to thrive when utility companies need help--fast. An avalanche of issues, including the Covid-19 pandemic, widespread social unrest, and devastating wildfires, ignited more growth for Paxon. And the future looks bright--particularly if lawmakers pass a $1 trillion infrastructure bill now heading to the House of Representatives. The plan calls for billions in smart grid and energy-sector upgrades, among other things. --Brit Morse

Budderfly performs lighting, refrigeration, and HVAC upgrades for businesses, and then shares the energy savings with the clients. The Shelton, Connecticut-based company led by CEO Al Subbloie helps customers access real-time analytics about their energy usage, so an owner can remotely detect when a piece of heating equipment is malfunctioning or a freezer door has been left open. The result is a win both for Budderfly--it booked $25 million in 2020 revenue and it's on pace to hit $40 million in 2021--and for customers and the planet, says Subbloie. "The ability to solve this climate problem is right in front of us, but capitalism doesn't always align with that," he says. "This is a way to make sure it does." --Kevin J. Ryan


https://bit.ly/3gvYd3T

четверг, 5 ноября 2020 г.

Where machines could replace humans—and where they can’t (yet)

 


By Michael Chui, James Manyika, and Mehdi Miremadi



The technical potential for automation differs dramatically across sectors and activities.
As automation technologies such as machine learning and robotics play an increasingly great role in everyday life, their potential effect on the workplace has, unsurprisingly, become a major focus of research and public concern. The discussion tends toward a Manichean guessing game: which jobs will or won’t be replaced by machines?


In fact, as our research has begun to show, the story is more nuanced. While automation will eliminate very few occupations entirely in the next decade, it will affect portions of almost all jobs to a greater or lesser degree, depending on the type of work they entail. Automation, now going beyond routine manufacturing activities, has the potential, as least with regard to its technical feasibility, to transform sectors such as healthcare and finance, which involve a substantial share of knowledge work.

From science fiction to business fact
McKinsey’s Michael Chui explains how automation is transforming work.
These conclusions rest on our detailed analysis of 2,000-plus work activities for more than 800 occupations. Using data from the US Bureau of Labor Statistics and O*Net, we’ve quantified both the amount of time spent on these activities across the economy of the United States and the technical feasibility of automating each of them. The full results, forthcoming in early 2017, will include several other countries,1but we released some initial findings late last year and are following up now with additional interim results.
Last year, we showed that currently demonstrated technologies could automate 45 percent of the activities people are paid to perform and that about 60 percent of all occupations could see 30 percent or more of their constituent activities automated, again with technologies available today. In this article, we examine the technical feasibility, using currently demonstrated technologies, of automating three groups of occupational activities: those that are highly susceptible, less susceptible, and least susceptible to automation. Within each category, we discuss the sectors and occupations where robots and other machines are most—and least—likely to serve as substitutes in activities humans currently perform. Toward the end of this article, we discuss how evolving technologies, such as natural-language generation, could change the outlook, as well as some implications for senior executives who lead increasingly automated enterprises.


Understanding automation potential

In discussing automation, we refer to the potential that a given activity could be automated by adopting currently demonstrated technologies, that is to say, whether or not the automation of that activity is technically feasible.2Each whole occupation is made up of multiple types of activities, each with varying degrees of technical feasibility. Exhibit 1 lists seven top-level groupings of activities we have identified. Occupations in retailing, for example, involve activities such as collecting or processing data, interacting with customers, and setting up merchandise displays (which we classify as physical movement in a predictable environment). Since all of these constituent activities have a different automation potential, we arrive at an overall estimate for the sector by examining the time workers spend on each of them during the workweek.
Exhibit 1

Analyzing work activities rather than occupations is the most accurate way to examine technical feasibility of automation.

In practice, automation will depend on more than just technical feasibility. Five factors are involved: technical feasibility; cost of automate; the relative scarcity, skills, and cost of workers who might otherwise do the activity; benefits (eg, superior performance) of automation beyond labor-cost substitution; and regulatory and social-acceptance considerations.

1)      Applying expertise to decision making, planning and creative tasks.

2)      Unpredictable physical work (physical activities and the operation of machinery) is performed in unpredictable environments, while in predictable physical work, the environments are predictable. 

Technical feasibility is a necessary precondition for automation, but not a complete predictor that an activity will be automated. A second factor to consider is the cost of developing and deploying both the hardware and the software for automation. The cost of labor and related supply-and-demand dynamics represent a third factor: if workers are in abundant supply and significantly less expensive than automation, this could be a decisive argument against it. A fourth factor to consider is the benefits beyond labor substitution, including higher levels of output, better quality, and fewer errors. These are often larger than those of reducing labor costs. Regulatory and social-acceptance issues, such as the degree to which machines are acceptable in any particular setting, must also be weighed. A robot may, in theory, be able to replace some of the functions of a nurse, for example. But for now, the prospect that this might actually happen in a highly visible way could prove unpalatable for many patients, who expect human contact. The potential for automation to take hold in a sector or occupation reflects a subtle interplay between these factors and the trade-offs among them.
Even when machines do take over some human activities in an occupation, this does not necessarily spell the end of the jobs in that line of work. On the contrary, their number at times increases in occupations that have been partly automated, because overall demand for their remaining activities has continued to grow. For example, the large-scale deployment of bar-code scanners and associated point-of-sale systems in the United States in the 1980s reduced labor costs per store by an estimated 4.5 percent and the cost of the groceries consumers bought by 1.4 percent.3It also enabled a number of innovations, including increased promotions. But cashiers were still needed; in fact, their employment grew at an average rate of more than 2 percent between 1980 and 2013.

The most automatable activities

Almost one-fifth of the time spent in US workplaces involves performing physical activities or operating machinery in a predictable environment: workers carry out specific actions in well-known settings where changes are relatively easy to anticipate. Through the adaptation and adoption of currently available technologies, we estimate the technical feasibility of automating such activities at 78 percent, the highest of our seven top-level categories (Exhibit 2). Since predictable physical activities figure prominently in sectors such as manufacturing, food service and accommodations, and retailing, these are the most susceptible to automation based on technical considerations alone.
Exhibit 2

It’s more technically feasible to automate predictable physical activities than unpredictable ones. 


In manufacturing, for example, performing physical activities or operating machinery in a predictable environment represents one-third of the workers’ overall time. The activities range from packaging products to loading materials on production equipment to welding to maintaining equipment. Because of the prevalence of such predictable physical work, some 59 percent of all manufacturing activities could be automated, given technical considerations. The overall technical feasibility, however, masks considerable variance. Within manufacturing, 90 percent of what welders, cutters, solderers, and brazers do, for example, has the technical potential for automation, but for customer-service representatives that feasibility is below 30 percent. The potential varies among companies as well. Our work with manufacturers reveals a wide range of adoption levels—from companies with inconsistent or little use of automation all the way to quite sophisticated users.
Manufacturing, for all its technical potential, is only the second most readily automatable sector in the US economy. A service sector occupies the top spot: accommodations and food service, where almost half of all labor time involves predictable physical activities and the operation of machinery—including preparing, cooking, or serving food; cleaning food-preparation areas; preparing hot and cold beverages; and collecting dirty dishes. According to our analysis, 73 percent of the activities workers perform in food service and accommodations have the potential for automation, based on technical considerations.
Some of this potential is familiar. Automats, or automated cafeterias, for example, have long been in use. Now restaurants are testing new, more sophisticated concepts, like self-service ordering or even robotic servers. Solutions such as Momentum Machines’ hamburger-cooking robot, which can reportedly assemble and cook 360 burgers an hour, could automate a number of cooking and food-preparation activities. But while the technical potential for automating them might be high, the business case must take into account both the benefits and the costs of automation, as well as the labor-supply dynamics discussed earlier. For some of these activities, current wage rates are among the lowest in the United States, reflecting both the skills required and the size of the available labor supply. Since restaurant employees who cook earn an average of about $10 an hour, a business case based solely on reducing labor costs may be unconvincing.
Retailing is another sector with a high technical potential for automation. We estimate that 53 percent of its activities are automatable, though, as in manufacturing, much depends on the specific occupation within the sector. Retailers can take advantage of efficient, technology-driven stock management and logistics, for example. Packaging objects for shipping and stocking merchandise are among the most frequent physical activities in retailing, and they have a high technical potential for automation. So do maintaining records of sales, gathering customer or product information, and other data-collection activities. But retailing also requires cognitive and social skills. Advising customers which cuts of meat or what color shoes to buy requires judgment and emotional intelligence. We calculate that 47 percent of a retail salesperson’s activities have the technical potential to be automated—far less than the 86 percent possible for the sector’s bookkeepers, accountants, and auditing clerks.
As we noted above, however, just because an activity can be automated doesn’t mean that it will be—broader economic factors are at play. The jobs of bookkeepers, accountants, and auditing clerks, for example, require skills and training, so they are scarcer than basic cooks. But the activities they perform cost less to automate, requiring mostly software and a basic computer.
Considerations such as these have led to an observed tendency for higher rates of automation for activities common in some middle-skill jobs—for example, in data collection and data processing. As automation advances in capability, jobs involving higher skills will probably be automated at increasingly high rates.
The heat map in Exhibit 3 highlights the wide variation in how automation could play out, both in individual sectors and for different types of activities within them.4

Activities and sectors in the middle range for automation

Across all occupations in the US economy, one-third of the time spent in the workplace involves collecting and processing data. Both activities have a technical potential for automation exceeding 60 percent. Long ago, many companies automated activities such as administering procurement, processing payrolls, calculating material-resource needs, generating invoices, and using bar codes to track flows of materials. But as technology progresses, computers are helping to increase the scale and quality of these activities. For example, a number of companies now offer solutions that automate entering paper and PDF invoices into computer systems or even processing loan applications. And it’s not just entry-level workers or low-wage clerks who collect and process data; people whose annual incomes exceed $200,000 spend some 31 percent of their time doing those things, as well.
Financial services and insurance provide one example of this phenomenon. The world of finance relies on professional expertise: stock traders and investment bankers live off their wits. Yet about 50 percent of the overall time of the workforce in finance and insurance is devoted to collecting and processing data, where the technical potential for automation is high. Insurance sales agents gather customer or product information and underwriters verify the accuracy of records. Securities and financial sales agents prepare sales or other contracts. Bank tellers verify the accuracy of financial data.
As a result, the financial sector has the technical potential to automate activities taking up 43 percent of its workers’ time. Once again, the potential is far higher for some occupations than for others. For example, we estimate that mortgage brokers spend as much as 90 percent of their time processing applications. Putting in place more sophisticated verification processes for documents and credit applications could reduce that proportion to just more than 60 percent. This would free up mortgage advisers to focus more of their time on advising clients rather than routine processing. Both the customer and the mortgage institution get greater value.
Other activities in the middle range of the technical potential for automation involve large amounts of physical activity or the operation of machinery in unpredictable environments. These types of activities make up a high proportion of the work in sectors such as farming, forestry, and construction and can be found in many other sectors as well.
Examples include operating a crane on a construction site, providing medical care as a first responder, collecting trash in public areas, setting up classroom materials and equipment, and making beds in hotel rooms. The latter two activities are unpredictable largely because the environment keeps changing. Schoolchildren leave bags, books, and coats in a seemingly random manner. Likewise, in a hotel room, different guests throw pillows in different places, may or may not leave clothing on their beds, and clutter up the floor space in different ways.
These activities, requiring greater flexibility than those in a predictable environment, are for now more difficult to automate with currently demonstrated technologies: their automation potential is 25 percent. Should technology advance to handle unpredictable environments with the same ease as predictable ones, the potential for automation would jump to 67 percent. Already, some activities in less predictable settings in farming and construction (such as evaluating the quality of crops, measuring materials, or translating blueprints into work requirements) are more susceptible to automation.

Activities with low technical potential for automation

The hardest activities to automate with currently available technologies are those that involve managing and developing people (9 percent automation potential) or that apply expertise to decision making, planning, or creative work (18 percent). These activities, often characterized as knowledge work, can be as varied as coding software, creating menus, or writing promotional materials. For now, computers do an excellent job with very well-defined activities, such as optimizing trucking routes, but humans still need to determine the proper goals, interpret results, or provide commonsense checks for solutions. The importance of human interaction is evident in two sectors that, so far, have a relatively low technical potential for automation: healthcare and education.

Overall, healthcare has a technical potential for automation of about 36 percent, but the potential is lower for health professionals whose daily activities require expertise and direct contact with patients. For example, we estimate that less than 30 percent of a registered nurse’s activities could be automated, based on technical considerations alone. For dental hygienists, that proportion drops to 13 percent.
Nonetheless, some healthcare activities, including preparing food in hospitals and administering non-intravenous medications, could be automated if currently demonstrated technologies were adapted. Data collection, which also accounts for a significant amount of working time in the sector, could become more automated as well. Nursing assistants, for example, spend about two-thirds of their time collecting health information. Even some of the more complex activities that doctors perform, such as administering anesthesia during simple procedures or reading radiological scans, have the technical potential for automation.
Of all the sectors we have examined, the technical feasibility of automation is lowest in education, at least for now. To be sure, digital technology is transforming the field, as can be seen from the myriad classes and learning vehicles available online. Yet the essence of teaching is deep expertise and complex interactions with other people. Together, those two categories—the least automatable of the seven identified in the first exhibit—account for about one-half of the activities in the education sector.
Even so, 27 percent of the activities in education—primarily those that happen outside the classroom or on the sidelines—have the potential to be automated with demonstrated technologies. Janitors and cleaners, for example, clean and monitor building premises. Cooks prepare and serve school food. Administrative assistants maintain inventory records and personnel information. The automation of these data-collection and processing activities may help to reduce the growth of the administrative expenses of education and to lower its cost without affecting its quality.

Looking ahead

As technology develops, robotics and machine learning will make greater inroads into activities that today have only a low technical potential for automation. New techniques, for example, are enabling safer and more enhanced physical collaboration between robots and humans in what are now considered unpredictable environments. These developments could enable the automation of more activities in sectors such as construction. Artificial intelligence can be used to design components in engineer-heavy sectors.
One of the biggest technological breakthroughs would come if machines were to develop an understanding of natural language on par with median human performance—that is, if computers gained the ability to recognize the concepts in everyday communication between people. In retailing, such natural-language advances would increase the technical potential for automation from 53 percent of all labor time to 60 percent. In finance and insurance, the leap would be even greater, to 66 percent, from 43 percent. In healthcare, too, while we don’t believe currently demonstrated technologies could accomplish all of the activities needed to diagnose and treat patients, technology will become more capable over time. Robots may not be cleaning your teeth or teaching your children quite yet, but that doesn’t mean they won’t in the future.
As stated at the outset, though, simply considering the technical potential for automation is not enough to assess how much of it will occur in particular activities. The actual level will reflect the interplay of the technical potential, the benefits and costs (or the business case), the supply-and-demand dynamics of labor, and various regulatory and social factors related to acceptability.

Leading more automated enterprises

Automation could transform the workplace for everyone, including senior management. The rapid evolution of technology can make harnessing its potential and avoiding its pitfalls especially complex. In some industries, such as retailing, automation is already changing the nature of competition. E-commerce players, for example, compete with traditional retailers by using both physical automation (such as robots in warehouses) and the automation of knowledge work (including algorithms that alert shoppers to items they may want to buy). In mining, autonomous haulage systems that transport ore inside mines more safely and efficiently than human operators do could also deliver a step change in productivity.
Top executives will first and foremost need to identify where automation could transform their own organizations and then put a plan in place to migrate to new business processes enabled by automation. A heat map of potential automation activities within companies can help to guide, identify, and prioritize the potential processes and activities that could be transformed. As we have noted, the key question will be where and how to unlock value, given the cost of replacing human labor with machines. The majority of the benefits may come not from reducing labor costs but from raising productivity through fewer errors, higher output, and improved quality, safety, and speed.
It is never too early to prepare for the future. To get ready for automation’s advances tomorrow, executives must challenge themselves to understand the data and automation technologies on the horizon today. But more than data and technological savvy are required to capture value from automation. The greater challenges are the workforce and organizational changes that leaders will have to put in place as automation upends entire business processes, as well as the culture of organizations, which must learn to view automation as a reliable productivity lever. Senior leaders, for their part, will need to “let go” in ways that run counter to a century of organizational development.5

Understanding the activities that are most susceptible to automation from a technical perspective could provide a unique opportunity to rethink how workers engage with their jobs and how digital labor platforms can better connect individuals, teams, and projects.6It could also inspire top managers to think about how many of their own activities could be better and more efficiently executed by machines, freeing up executive time to focus on the core competencies that no robot or algorithm can replace—as yet.
Could a machine do your job? Find out on Tableau Public, where we analyzed more than 800 occupations to assess the extent to which they could be automated using existing technology
https://mck.co/3evKBDF

вторник, 8 мая 2018 г.

15 cool small businesses that make people healthier, wealthier, smarter, and happier

They're breaking the mold. Jen Rubio, pictured, is the cofounder and president of luggage startup Away. Daniela Spector

 
Daniela Spector




  • Cool small businesses emerge every day across the US.
  • We put together a list of 15 small businesses that make people healthier, wealthier, smarter, or happier.
  • Those small businesses include the independent bookstore Books are Magic and the beach-bound shuttle service The Free Ride.

Across the US, new small businesses are popping up every day. And they're rapidly revolutionizing areas like transportation, food, fashion and beauty, and gaming.
We scoured the web and asked our readers to identify some of their favorite small businesses (which the US government defines as employing 500 people or fewer). Below, we've listed 15 of the most innovative.
Since we're largely highlighting reader-nominated businesses, the companies on the list below aren't definitively the coolest small businesses in the country, but they are some of the coolest. Our criteria for inclusion, aside from having fewer than 500 employees, was that the companies had to improve society at large, meaning they make people healthier, wealthier, smarter, or happier. The businesses are not ranked.
Read on to learn about the small businesses that are making the world a better place to live.

NextGenVest

Kelly Peeler is the CEO and cofounder of NextGenVest.
Courtesy of Kelly Peeler
What it does: Helps students navigate the college financial-aid process. Trained college students provide assistance to college applicants via text message.
Why it's cool: The graduating class of 2016 owed an average of $17,126 in student debt (in New Hampshire, that figure shot up to $27,167). But many students aren't necessarily aware of the financial burden they're taking on when they apply. NextGenVest is a way to get timely and accurate information in their hands.

The Free Ride

Alexander Esposito and James Mirras are the cofounders of The Free Ride.
 Courtesy of Free Ride
What it does: Offers passengers free rides to some beaches in the Hamptons, the Jersey Shore, Santa Monica, and San Diego. How? Electric cars eliminate the cost of fuel and the service is sponsored by advertisers (like JetBlue, seen in the photo).
Why it's cool: Beach-goers no longer have to drive themselves crazy looking for (and paying for) a few hours of parking. Plus, electric cars mean the service is environmentally friendly.

Eu'Genia Shea

Naa-Sakle Akuete is the founder and CEO of Eu'Genia Shea.
Courtesy of Naa-Sakle Akuete
What it does: This mother-daughter-run business sells high-quality shea-butter products while supporting fair wages for the female workers in Ghana who make those products.
Why it's cool: Eu'Genia Shea donates 15% of its profits back to their female workers in Ghana, either in the form of a retirement fund or an education fund for their children. Each product comes with a personal touch — Akuete and her mother package them themselves in her Brooklyn apartment.

Happy Numbers

Evgeny Milyutin, right, and Ivan Kolomoets are the founders of Happy Numbers.
 Courtesy of Evgeny Milyutin
What it does: Helps teachers personalize math instructionthrough an artificial intelligence-enabled math education platform. The program provides interactive exercises for students and then delivers feedback to the teachers based on the students' performance.
Why it's cool: One-on-one education can be more effective than conventional classroom education, but that's not always realistic. HappyNumbers makes it possible. Plus, it helps smart, high-potential students who are nonetheless struggling (like Milyutin, a physics PhD who had a hard time with math in elementary school).

HQ Trivia

Rus Yusupov is a co-founder of HQ Trivia.
 Courtesy of HQ Trivia
What it does: Hosts free, live trivia events twice daily for people all over the world. Winners receive cash prizes.
Why it's cool: HQ Trivia has quickly become one of the most popular gaming apps on the market. It brings groups of friends together over something other than eating and drinking — while giving them a crash course in areas like history, pop culture, and literature.

Books Are Magic

Emma Straub, center, at Books Are Magic with Joanna Goddard, left, and Meg Wolitzer, right.
 Courtesy of Books Are Magic
What it does: This independent bookstore in Cobble Hill, Brooklyn is run by novelist Emma Straub and her husband, graphic designer Michael Fusco-Straub. The store hosts literary events and a wide selection of both fiction and non-fiction.
Why it's cool: There's no getting around it: New York City is running out of bookstores. Straub and Fusco-Straub are among a growing group of entrepreneurs trying to change that, to the delight of bibliophiles in all five boroughs.

Amino Apps

Ben Anderson is the CEO and co-founder of Amino Apps.
Courtesy of Ben Anderson
What it does: Allows users to create apps based on different interests and launch them through the Amino platform. Apps that are popular enough become stand-alone apps in the App store.
Why it's cool: Amino users can find people just like them all over the world, whether their passion is anime or veganism. The website encourages users to "go deep, geek out," bonding with these new friends and creating a product that other people can enjoy and learn from.

Slice

Ilir Sela is the founder and CEO of Slice.
 Courtesy of Ilir Sela
What it does: Lets customers order from local pizzerias (that aren't necessarily on services like Seamless) through a mobile app.
Why it's cool: CEO Ilir Sela's family has been in the pizza-making business for generations. His goal with Slice is to help local pizzerias making delicious pizza stand their ground against big chains making less delicious food, and against online ordering companies that favor those big chains.

Away

Jen Rubio is the cofounder, president, and chief brand officer of Away.
Daniela Spector
What it does: Creates functional, affordable luggage for modern travelers.
Why it's cool: Away was founded by two Warby Parker alums and the brands are similar: Both offer high-quality, fashionable products at reasonable price points because they're marketed direct to consumer.

Nomad Health

Alexi Nazem is the cofounder and CEO of Nomad Health.
 Shelley Kusnetz
What it does: Helps connect freelance clinicians to work in healthcare systems.
Why it's cool: The US is expected to see a shortage of 90,000 physicians by the year 2025. Nomad Health allows doctors to find hospitals that really need their help. The company's CEO is a doctor himself, who saw firsthand how hard it was to get freelance work and aimed to find a solution.

MarketSnacks

Nicolas Martell and Jack Kramer are the cofounders and co-CEOS of MarketSnacks.
 Courtesy of MarketSnacks
What it does: Puts out a daily finance newsletter geared toward millennials.
Why it's cool: The founders, former analysts at New York banks, recently made Forbes' "30 Under 30" list. Their goal is to make financial news concise and, most importantly, "digestible." Having started the company as a side job, they know how hard entrepreneurship can be, and so they make it a point to get on the phone every week with entrepreneurs seeking advice and share their wisdom.

Sweet Generation Bakery

Amy Chasan is the founder and owner of Sweet Generation.
Ben Schellpfeffer
What it does: The pastries in this New York City bakery are handmade by groups of at-risk youth learning professional skills.
Why it's cool: Sweet Generation is all about giving back to the local community. The bakery partners with schools and nonprofit organizations to offer paid jobs or internships for school credit. Plus, the company uses mostly whole, natural ingredients in their pastries.

AUrate

Sophie Kahn and Bouchra Ezzahraoui are the founders of AUrate New York.
 Courtesy of AUrate
What it does: Sells affordable, ethically sourced, high-quality gold jewelry.
Why it's cool: AUrate was initially self-funded through the founders' savings and through family and friends; the founders wanted to have revenue first, and then raise money based on that proof of concept. Today, the company has expanded its mission: For every purchase a customer makes, the company donates a book to a child in need.

Habit

Neil Grimmer, CEO of Habit, pictured.
 Courtesy of Habit
What it does: Provides customers with DNA and other kinds of testing so they can learn more about their specific nutritional needs. Customers also receive personalized recipes from Habit.
Why it's cool: Habit was born out of founder Neil Grimmer's own struggles with health and weight loss. He teamed up with researchers across the globe to help people with similar issues find science-backed solutions that will work for them.

Our Story Bridal

Jacquelyn Ward and Ana Maes are the co-founders of Our Story Bridal.
Courtesy of Our Story Bridal
What it does: New York City's only bridal consignment boutiquesells designer wedding dresses at steep discounts.
Why it's cool: The founders launched the company based on their own struggles to sell their worn wedding dresses — and to help brides who want to look stunning on their wedding day but don't want to spend their life savings. Designers include Vera Wang, Monique Lhuillier, and Carolina Herrera, and discounts on dresses are up to 80%.