Tuesday
Sep132016

Drones: IoT's Killer App for Commerce?

Commercially useful drones are not just remote controlled aircraft, but, equipped with avionics, connections to ground control stations, sophisticated internal sensors that measure everything from yaw to acceleration, and GPS location capability. They are unmanned aircraft systems with increasing autonomy, whether fixed wing or rotary. It might be best to consider them as startlingly inexpensive yet capable aerial robots.

Drones seem to enter the news either as high-capability military weapons, or as entertaining hobby or recreational devices. There is a significant reason for this, and it is legal, rather than technical: the US currently severely restricts the commercial use of drones. Line of sight requirements, altitude restrictions, and other limits make it difficult to develop drone functionality, even when commercial operations are permitted.

 

Restrictions are changing, but slowly, and pressure for change will inevitably grow as the commercial possibilities continue to grow. And the commercial potential of IoT-integrated drones is immense.

Drones as sensor platforms

Transportation possibilities such as Amazon’s proposed delivery drones aside, the most effective coming use of drones will be as relatively inexpensive, medium-capability autonomous aircraft that serve as sensor platforms integrated with ground-based sensor networks through the Internet of Things, providing detailed situation awareness over wide geographic areas.

Aside from high-definition cameras in visible and infrared, the most capable sensor is LiDAR (Light Detection and Ranging), which sends out rapid pulses of laser light to measure surfaces in extraordinary detail.

Drones can also poll RFID (radio frequency identification) chips and other small sensors in remote areas without communications connections, enabling situational awareness where it would otherwise not be possible.

A few examples from various industries will make clear the commercial significance of the integration of drones and the IoT.

Precision agriculture

This is, for once, a purely descriptive term, in contrast with the more usually employed “smart”. Drones allow for farms, vineyards, and other agricultural enterprises to understand their assets on a plant by plant, square foot by square foot basis. 

Agriculture had been getting more and more data-driven and tied to the IoT, as numerous articles here have shown. Drones represent something that ties this system together. This is by far the largest segment where drones will make an impact: the Association for Unmanned Vehicle Systems International estimates that agriculture drones will be 80 percent of the commercial market.

Drone imagery, both visual and infrared, identifies plants that are diseased or under stress from inadequate irrigation or fertilization, and the drone can scan for these problems as frequently as required, hourly if necessary. LiDAR detects even small variations in slope, and thus where water runoff is irregular. This information gets tied together with surface-based moisture sensors and other information to provide advance warning of any problems, on an extremely granular basis. That information then goes into the drip irrigation system, or an automated tractor that dispenses fertilizer or pesticide with accuracy down to one inch. 

Mining

Monitoring the progress of operations of a large open-pit mine is harder than it might seem, given that it is really just a big hole, albeit a hole that can be more than a mile across, and half a mile deep. But a surface mine is a busy worksite, and its configuration changes constantly. Walls of rock are blasted, the ore removed from the rubble, and the non-productive rock disposed of. Measuring productivity requires measuring the volume of rock and ore. Done manually, this is a time-and-labor intensive process that can be done no more often than monthly. 

Camera-equipped drones can fly the mine in a predetermined, GPS-monitored pattern, taking hundreds of images at specific angles. These are then processed and integrated in order to provide a 3D understanding of the mine. Over time, this detailed understanding will improve productivity and reduce waste.
Such drone-based volumetric analysis is also being used in identifying debris from such disasters as earthquakes and landslides. 

Infrastructure inspection

Drones can replace or supplement many ground-based inspections, particularly in rugged and remote areas, at low cost. The power industry is just one example.
Visually inspecting a remote wind turbine requires climbing and visually examining blades several hundred feet in the air, while roped up. Such an inspection can cost $10,000 per turbine. A drone can do this safely, at a much lower cost, and can also cover many more turbines in the same period of time. The integration of the detailed imagery with sensors on the turbine itself provides a detailed view.

Power lines and towers must also be inspected frequently, for corrosion, damage, cracked lines, and other incipient issues. Drones can patrol and detect problems much more easily than human work crews. Radio frequency (RF), ultrasound, and infrared sensors can detect incipient arcing, coronal discharges, and other signs of dangerous degradation long before they become serious problems.

The eye in the sky that ties it all together

Drones will inspect remote dams, detect leaks in oil pipelines, assist in search and rescue, and monitor the environment in the same way they monitor agriculture. And all of this sensing will be tied together through the IoT.

by Alex Jablokow


Image by Turisme Subirats on Flickr (CC by 2.0)

 

Thursday
Sep082016

Qualcomm and AT&T Trial Drones on Cellular Network

snapdragon-flight-board-ruler-hand-featureQualcomm Incorporated has announced that its subsidiary, Qualcomm Technologies, Inc. (QTI) and AT&T, will test Unmanned Aircraft Systems (UAS), or drones, on commercial 4G LTE networks.

 

The trials will analyse how UAS can operate safely and more securely on commercial 4G LTE and networks of the future, including 5G. The research will look at elements that would impact future drone operations.

The team will look at coverage, signal, strength and mobility across network cells and how they function in flight. The goal of the trials and ongoing research is to help enable future drone operations, such as Beyond Visual Line of Sight (BVLOS), as regulations evolve to permit them. The ability to fly beyond an operator’s visual range could enable successful delivery, remote inspection and exploration. Wireless technology can bring many advantages to drones such as ubiquitous coverage, high-speed mobile support, robust security, high reliability and quality of service (QoS).

“The trial with a carrier with the reach and technology of AT&T is a significant step in the development of connectivity technologies for small unmanned aircraft systems (SUAS), including optimization of LTE networks and advancement of 5G technology for drones,” said Matt Grob, executive vice president and chief technology officer, Qualcomm Technologies, Inc. “Not only do we aim to analyze wide-scalable LTE optimization for safe, legal commercial SUAS use cases with beyond line-of-sight connectivity, but the results can help inform positive developments in drone regulations and 5G specifications as they pertain to wide-scale deployment of numerous drone use cases.”

“Many of the anticipated benefits of drones, including delivery, inspections and search and rescue will require a highly secure and reliable connection,” said Chris Penrose, senior vice president, IoT Solutions, AT&T. “With a focus on both regulatory and commercial needs, LTE connectivity has the potential to deliver optimal flight plans, transmit flight clearances, track drone location and adjust flight routes in near real-time. Solving for the connectivity challenges of complex flight operations is an essential first step to enabling how drones will work in the future.”

The UAS trials will be based on the Qualcomm Snapdragon Flight drone development platform, which is designed to offer superior control and navigation capabilities. Already in use in some commercially available drones, the platform offers high fidelity sensor processing, precise localization, autonomous visual navigation and 4K videography all in an integrated, light-weight model suitable for consumers and enterprises.

Trials will begin later this month at Qualcomm Technologies’ San Diego Campus. Testing will take place at its FAA-authorized UAS Flight Center and test environment. The center contains “real world” conditions including commercial, residential, uninhabited areas and FAA controlled airspace. This facility permits testing of the use of commercial cellular networks for drones without affecting AT&T’s everyday network operations.

Source: Press Release

 

Monday
Jun202016

The Periodic Table of Insurance Tech

insuranceperiodicfinal

The 125 key players in the insurance tech space you need to know, including startups, VCs, corporate investors, and accelerators.

From P2P car insurance to on-demand insurance apps to new usage-based insurance applications, a wave of tech startups is  targeting opportunities in the insurance value chain across the health, life, and property & casualty categories. Venture firms and corporate investors are increasingly involved in backing startups in the space, which raised record amounts of funding in 2015 year-to-date.

So after earlier putting out the Periodic Table of Fin Tech, we’re excited to introduce our latest industry cut — the Periodic Table of Insurance Tech – a resource to hone in on key players in the insurance tech ecosystem. The 125 companies and investors on the table were pulled from analysis using CB Insights data around financial health, company momentum, and active investments. It’s also worth mentioning that many more investors are publicly making their interest in the insurance space known.

See the table below or click to expand.

insuranceperiodicfinal

We expect that this list of 125 will change over time as new entrants emerge and gain prominence and other players falter, exit and/or get removed. If you believe someone should be added, please leave a comment with your rationale.

Navigating the Periodic Table of Insurance Tech

The table focuses on ten categories, as follows.

The left side of the Periodic Table of Insurance Tech includes companies across a handful of key insurance tech focus areas. Additional details on these 7 sub-areas of insurance tech are included below.

  • Health Insurance: Private health insurance companies on the list ranged from software-enabled brokerages such as Zenefits; to insurance recommendation and comparison engines, including Stride Health and HealthSherpa; to new health insurance carriers likeOscar Health.
  • Auto insurance: Private auto insurance startups on the list include comparison platforms such as Coverhound and Goji; usage-based insurance startups includingCensio and Metromile; and mobile claims solutions such as Snapsheet.
  • P2P insurance: Private peer-to-peer insurance startups include Guevara, Friendsurance, and others.
  • Small business insurance: Private commercial insurance companies focused on SMBs include Insureon, Embroker and Finanzchef24.
  • Insurance industry software/SaaS: Insurance-specific software providers range from BI and data warehousing startup Quantemplate to insurance fraud detection firm Shift Technology to re-insurance SaaS analytics startup Analyze Re.
  • Mobile insurance management: Startups focusing on allowing consumers to manage and purchase insurance policies via their mobile device including Knip and GetSafe.
  • Product insurance: Companies providing insurance of or tracking products i.e. smartphones, laptops for insurance applications.

On the far right, the table shifts to venture capital firms (both multi-stage and micro VCs), corporate investors, and accelerators/incubators. These were selected based primarily on the total number of portfolio investments into insurance tech and recency of investment in insurance tech. Not surprisingly, several Insurance tech-specific funds and accelerators made it on the table.

  • Venture Capital Firms: The venture capital firms included have made venture equity investments in insurance tech companies across the stage spectrum and across different geographies. The VC firm category spans both micro VCs and large multi-stage firms, with the firms’ LP commitments ranging from $25M to well over $1B+.
  • Corporate Investors: Corporate investors into insurance tech include strategics both within the insurance industry, such as Transamerica and MassMutual, as well as companies from the broader tech industry like Google.
  • Accelerators/Incubators: Accelerators and startup incubators typically offer some combination of equity investment, mentorship, and resources around company development. Those on the insurance tech periodic table have either funded a number of insurance tech portfolio companies or have a specific focus on insurance tech, e.g. Startup Bootcamp Insurance and Global Insurance Accelerator.

Again, if you think an investor or company should be added, please leave a comment below with your rationale. Prior CB Insights periodic tables are listed below:

The Periodic Table of Tech

The Periodic Table of Healthcare

The Periodic Table of IoT

The Periodic Table of European Tech

The Periodic Table of NY Tech

The Periodic Table of Fin Tech

The Periodic Table of E-Commerce

Want to track the activity of these players of the Insurance Tech ecosystem and get alerts about new Insurance Tech companies receiving financing or getting acquired? Check out the CB Insights Venture Capital Database.

Monday
Jun202016

The Innovation Mindset in Action: 3M Corporation

In three recent blog posts we looked at the innovation mindset in individuals, profiling game changersJerry BussPeter Jackson, and Shantha Ragunathan. These three innovators share common qualities, which we call the innovation mindset, a robust framework which can be applied at the micro (individual) as well as macro (organizational) levels: they see and act on opportunities, use “and” thinking to resolve tough dilemmas and break through compromises, and employ their resourcefulnessto power through obstacles. Innovators maintain a laser focus on outcomes, avoid getting caught in theactivity trap, and proactively “expand the pie” to make an impact. Regardless of where they start, innovators and innovative companies persist till they successfully change the game.

Take, for example, 3M Corporation. 3M was awarded the US government’s highest award for innovation, the National Medal of Technology. Over a 20-year period, 3M’s gross margin averaged 51% and the company’s return on assets averaged 29%. 3M has consistently been highly ranked, often in the top 20, in Fortune magazine’s annual survey of “America’s Most Admired Corporations.” How do they do it?

Innovative companies provide forums for employees to pursue opportunities.

One of 3M’s strengths (PDF) is how it treats promising employees: give them opportunities, support them, and watch them learn and thrive. 3M provides a rich variety of centers and forums to create a pool of practical ideas that are then nurtured into opportunities and provided the necessary resources for success. Scientists go out into the field to observe customers to understand their pain points. Customers also visit Innovation Centers set up specifically for the purpose of exploring possibilities, solving problems, and generating product ideas. Scientists share knowledge and build relationships at the Technical Council, which meets periodically to discuss progress on technology projects, and the Technical Forum, an internal professional society where 3M scientists present papers— just two of 3M’s fruitful forums.

Arthur Fry, a 3M employee, attended a Technical Council where Spencer Silver spoke about trying to develop a super-strong adhesive for use in building planes; instead, Silver accidentally created a weak adhesive that was a “solution without a problem.” Fry, who sang in a church choir, had the niggling problem of losing the bookmark in his hymnbook. Fry noticed two important features of Silver’s adhesive that made it suitable for bookmarks: the note was reusable, and it peeled away without leaving any residue. Fry applied for and received funding to develop a product based on Silver’s accidental discovery. Thus was born the Post-it note.

Innovative companies create an environment that fosters the right tension with “and thinking.”

One critical balance at 3M is between present AND future concerns. Quarterly results are important but should not be the sole focus; staying relevant is also important but cannot come at the cost of current performance. 3M has several mechanisms to sustain this “and thinking.” Employing the Thirty Percent Rule, 30% of each division’s revenues must come from products introduced in the last four years. This istracked rigorously, and employee bonuses are based on successful achievement of this goal. 3M also uses “and thinking” in their three-tiered research structure. Each research area has a unique focus: Business Unit Laboratories focus on specific markets, with near-term products; Sector Laboratories, on applications with 3-to-10 year time horizons; and Corporate Laboratories, on basic research with a time horizon of as long as 20 years.

Innovative companies create systems, structures, and work environments to encourage resourcefulnessand initiative.

Reporter Paul Lukas best expressed the resourcefulness of 3Mers: “A 3M customer identifies a problem, and a 3M engineer expresses confidence in being able to solve it. He bangs his head against the wall for years, facing repeated setbacks, until management finally tells him to stop wasting time and money. Undeterred, the engineer stumbles onto a solution and turns a dead end into a ringing success.”

Richard Drew is just such an engineer. Running some Wetordry sandpaper tests at an auto-body shop to improve paint removal, he noticed that the painter was not able to mask one section of a two-tone car while painting the other. The tapes available at the time, back in the 1920s, either left a residue or reacted with the paint. Drew assured the painter that 3M could solve the problem and worked on it for two years, eventually receiving a memo from senior management instructing him to get back to work on the waterproof Wetordry sandpaper. Drew did, but he continued working on the tape project on his own time. The result: Scotch tape.

3M has a rich set of structures and systems to encourage resourcefulness:

  • Seed Capital: Inventors can request seed capital from their business unit managers; if their request is denied, they can seek funding from other business units. Inventors can also apply for corporate funding in the form of a Genesis Grant. (The Post-it was funded by a Genesis Grant.)
  • New Venture Formation: Product inventors must recruit their own teams, reaping the benefit of 3M’s many networking forums as they seek the right people for the job at hand. The recruits have a chance to evaluate the inventor’s track record before signing up. However, if the product fails, everyone is guaranteed their previous jobs.
  • Dual-career ladder:: Scientists can continue to move up the ladder without becoming managers. They have the same prestige, compensation, and perks as corporate management. As a result, 3M doesn’t lose good scientists and engineers only to gain poor managers, a common problem in the manufacturing sector.

Innovative companies focus on the right set of outcomes. They tailor what is measured, monitored, and controlled to suit their focus, and strike the right balance between performance and innovation.

3M has created measurement and reward systems that tolerate mistakes and encourage success. 3M rewards successful innovators in a variety of ways: the Carlton Society, named after former company president Richard P. Carlton, honors top 3M scientists who develop innovative new products and contribute to the company’s culture of innovation, and the Golden Step is a cash award. 3M also has a rich tradition of telling the
stories of famous failures that subsequently created breakthrough products— such as the weak adhesive that inspired Post-It notes— to ensure a culture that stays innovative and risks failure for unexpected rewards. Another
3M failure story from its early days, still repeated inside the company: 3M’s initial business venture was to mine corundum, a material they planned to use to make grinding wheels. Instead, what they found was inferior abrasive. After much experimentation came their first breakthrough product: Wetordry sandpaper.

Innovative companies have strong mechanisms to ensure a continuing focus on expanding the pie, by effectively converting non-consumers into consumers, and providing richer solutions to current consumers. In the process they transform their industry, community, country, and sometimes even the world.

3M uses a research and development focus and a unique “15% rule” to ensure continuing effort on expanding the pie. 3M spends approximately 6% of sales on research and development (PDF), far more than a typical manufacturing company. This has resulted not only in new products but also the creation of new industries. David Powell, 3M’s vice president of marketing, affirms R&D’s importance: “Annual investment in R&D in good years— and bad— is a cornerstone of the company. The consistency in the bad years is particularly important.”

William McKnight, who rose from his initial bookkeeping position to eventually become chairman of 3M’s board, best explained the logic of the 15% rule: “Encourage experimental doodling. If you put fences around people, you get sheep. Give people the room they need.” 3M engineers and scientists can spend up to 15% of their time pursuing projects of their own choice, free to look for unexpected, unscripted opportunities, for breakthrough innovations that have the potential to expand the pie. For example, some employees in the infection-prevention division used their “15% time” to pursue wirelessly connected electronic stethoscopes. The result: In 2012, 3M introduced the first electronic stethoscope with Bluetooth technology that allows doctors to listen to patients’ heart and lung sounds as they go on rounds, seamlessly transferring the data to software programs for deeper analysis.

The innovation mindset is a game-changing asset for companies as well as individuals. Innovative companies like 3M use creative “and” thinking and resourcefulness to pursue promising opportunities and strategically meet outcomes, all the while “expanding the pie.” Such organizations create the structure, systems, and culture to enable their people to think and do things differently in order to achieve extraordinary success.

By Vijay Govindarajan and Srikanth Srinivas

Monday
Jun202016

Trooly is using machine learning to judge trustworthiness from digital footprints

Trust greases the wheels of the sharing economy, paving the way for transactions to take place between total strangers. But figuring out who is trustworthy and who is not remains a sticky bottleneck for digital businesses wanting to scale faster. Meanwhile the consequences for customers when startups screw up these risk calculations can be very unpleasant indeed.

The traditional route to assessing risk is to run a full background check on an individual — a process that can be time-consuming and expensive, given it can involve sending an actual person to an actual courthouses to parse actual paper records.

Which is why, in recent years as sharing economy businesses have been gunning to scale up, other entrepreneurs have spotted an opportunity to step in to offer online services for verifying identity and screening for unsavory behavior, to try to steal a march on more established but slower paced background checkers. A couple of examples of startups entering this space in recent years include UK startup Onfido, which just this April announced a $25 million Series B round; and US based Checkr, which raised a $40 million Series B in March.

Well here’s a third: Trooly, which is today announcing its Series A. Along with an earlier unannounced seed round it says it has now raised $10 million in external funding. Investors in the Series A are Bain Capital Ventures and Milliways Ventures, with the latter also investing in its seed, which it closed at the start of 2014.

Trooly’s big claim vs competitors is that it’s doing things drastically different, even compared to the other digital newcomers, by applying machine learning algorithms to public digital footprint data — so information that can be freely found online (and on the dark web), for example on social media services and police registers of offenders — to enable risk and trust to be assessed much more speedily and cheaply.

The idea being that businesses can use Trooly to perform quick pre-checks based on the public data that’s out in the wild in order to make decisions on whether to proceed with the time and expense of a full background check. Or to run periodic checks to keep more up-to-date tabs on the behavior of existing staff.

Trooly is not saying it can fully replace a “gold standard” background check (yet), but it argues there’s an advantage to offering businesses a fast risk assessment so they can hedge their bets about whether to even proceed with a full background check, whilst also helping them with their ongoing goal of reducing friction from online interactions.

“Background checks are very labour based, people based. It’s literally physical court runners that are going out to court houses to look at records. So typically the way we’re being used in a background check mode is as a triage before sending someone to the courthouse. So a first step,” says Trooly co-founder and CEO Savi Baveja.

“If we can probabalistically say here’s a person or business who is extremely unlikely to fail a background check… that’s worth a lot to our customers. Because then they can make a positive decision much earlier.”

In about half of the cases he says Trooly will be able to say the probability of a failed background check is “virtually zero”. Whereas around eight per cent of requests will get a negative hit from a background check — so that would reduce the business’ costs of performing a full background check in those instances, given they could just turn down a hire or a potential customer.

We’re essentially trying to reinvent legacy mechanisms like background checks, credit checks and fraud mechanisms.

“Our big picture idea is to launch a way of evaluating the trustworthiness of an individual or business that fits better with modern use cases than legacy mechanisms do. We’re essentially trying to reinvent legacy mechanisms like background checks, credit checks and fraud mechanisms,” he says.

“The way we do that is we use public and legally permissible digital footprints, and in about 30 seconds — using very little input information about the individual or business — we return a scorecard that does three things: it verifies whether the input information is authentic; it screens for any relevant and seriously antisocial or pro-social prior behavior; and then it runs a series of predictive models on that footprint to say what is the propensity of this individual or small business for future antisocial or pro-social behavior.”

The advantage vs competing services is speed and cost, says Baveja. He also claims Trooly is more comprehensive, and better suited to diverse tech platform use-cases.

“Both Checkr and OnFido are nothing more than a slick technology workflow on top of the same old background check as has been done for decades,” he argues, discussing other startups in the ID verification and screening space. “So under the hood of these companies, there are court runners going to courthouses taking up to 3 weeks to return a record (vs 30 seconds for us).

“They charge on the order of $20 (vs <<$1 for us).  And their results are subject to all the same problems with bias and underlying data incompleteness as the traditional background check companies like Sterling, Hireright and dozens of others… For every hit that a company like Checkr or Onfido would return, we would be returning one additional hit (at a fraction of the cost and time).”

Baveja says Trooly has built its own dark web crawlers to be able to harvest relevant data to feed into its systems. It has also built in-house indexes of public registers of offenders, as well as licensing relevant public record data-sets from third parties (at least for its current North American markets).

One area where it’s applying machine learning is to help correctly interpret the data displayed on the web — to, for example, link a specific identity with a specific crime (and importantly avoid incorrectly linking pieces of data that might be being displayed on the same webpage but are not necessarily linked).

It’s also using machine learning to bridge gaps in public data — to help join some partial dots to improve the accuracy of its matches and also avoid making connections when there’s not enough coherent information to be sure.

“A lot of public records are incomplete. They don’t give you a date of the conviction, for example, they don’t give you a resolution of the conviction. It’s slightly messy data. And so because we’re applying machine learned identity and machine learned models on top of the underlying records we’re able much better to say: ok just throw out this record, you’re never going to figure out anything about what this person actually did or when they did it,” says Baveja.

“We also have machine learned models on top of the record itself telling the difference between a speeding infraction and an assault. Pretty important. So when we return something to our customer we distinguish between major crimes and minor crimes. We distinguish between recent crimes and non-recent crimes. In a way that allows them to be much more careful about what they use and don’t use.”

To power its future behavior prediction feature, it’s using component models trained on the specific types of behaviors its customers want to identify. The core training for these models consisted of recruiting tens of thousands of people to fill out a series of standard personality/behavior instrument tests and psychology questions, according to Baveja.

“When we get a new customer we ask them to give us some data on what it is that they’re trying to predict, what bad or good behavior are they trying to predict, and then we tune our component models, we weight them to predict that good or bad behavior. So the last 10 per cent of what we do is tuned to the customer’s use case,” he adds.

Given it’s working with partial and public data — and despite applying its salve of machine learning to heal some of the cracks — he concedes the system is still not always able to serve up a score on a particular individual or entity. In fact it’s only able to provide an answer in about two-thirds of the cases.

“For the remaining one-third of requests we have to tell the customer we’re not sure,” he admits. “There generally is 70 to 80 per cent that we are, with some degree of confidence, able to put into an inclusive bucket. The rest we just tell our customers we’re not sure, there’s no footprint, or we just can’t figure it out.”

The system also returns a confidence score — rating how confident Trooly is in a particular assessment. “Our customers use that confidence score to decide where they want to draw the line in terms of using our scorecard,” he adds.

Of course risk mitigation is never going to be an exact science, so a margin of uncertainty and error is to be expected. Although there are perhaps wider questions to be considered about whether technology services in general — as well as tech specifically aimed at speeding up background checks — might not be encouraging businesses and consumers to accept wider risk thresholds than they otherwise might. Given that where there’s risk there’s clearly also opportunity.

But Baveja disputes the notion that Trooly is encouraging more risk. “We are not encouraging companies to do less thorough background checks at all — rather we are suggesting that whatever trust mechanism companies use should actually be demonstrated to predict the behavior they are trying to prevent,” he tells TechCrunch.

“For example, if an on-demand cleaning company is worried about theft, then they should first prove/test that failing a background check is a good predictor of theft on their platform. Way too many companies default to using background checks as their basis for trust when there is little or no proof that using a background check will actually prevent the undesirable behavior from happening on their platform.”

“As a society, we have way overestimated the usefulness of background checks as a reliable predictor of anything, and, as a result, many companies live under the false security of having done a background check when the result of a background check might have no relationship to the behavior they are trying to prevent… We stand behind rigorous models that are based on proven predictive power with undesirable behaviors that our customers care about — can background checks make this claim?” he adds.

At this stage Trooly is not disclosing the exact number (or names) of its customers but Baveja says it’s in the single digits. Size wise it’s going after “very very large” entities, working with “one of the major sharing economy companies” on its pilot to build and refine its models — with that company now a fully fledged customer. The full Trooly production service has been up and running since August of last year.

While it’s started focusing on the sharing economy, where trust is clearly a pressing issue, Trooly is actually eyeing financial services companies as its major target going forward.

“We are in active pilot with financial services companies and related use cases,” notes Baveja. “Here there’s a lot of interest in verify, the first step of what we do [such as from online lenders]… And there’s a lot of interest in the compliance part. The pressure on financial institutions for KYC [know your customer], and anti-money laundering and politically exposed people… That pressure is going way up… so financial institutions are quite keen to find ways to reduce the friction.”

A third use case for FS companies is Trooly’s predictive modeling to help assess risk of growth areas for their lending businesses where they’re likely to encounter so-called ‘thin file’ customers — such as younger people, immigrants and smaller businesses.

“They don’t have great models for all those things. Traditional type of scores don’t do a good job of telling you about millennials,” he adds. “So what we do adds a lot of value there.”

Its investors clearly agree with that assessment. “Trooly has built an impressive service that demonstrates the full potential of machine learning,” says Ajay Agarwal, managing director of Bain Capital Ventures, in a supporting statement. “They’re not simply using data to automate an existing process. They’re addressing an entirely new need – one that’s particularly critical for today’s financial institutions and peer-to-peer marketplaces.”

Trooly’s Series A funding will go towards scaling up the engineering team specifically to focus on the financial service sector, as well as ramping up on marketing generally, says Baveja.

It also wants to explore possibilities for expanding internationally, currently only offering services in the US and Canada, although he notes this will have to be done “extremely carefully” given the different legal, compliance and regulatory frameworks elsewhere.

“That obviously is going to take a lot of investment,” he adds.