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Workflow automation has been one of the key trends this year so far, and Zoho, a company known for its suite of affordable business tools has joined the parade with a new low code workflow product called Qntrl (pronounced control).
Zoho’s Rodrigo Vaca, who is in charge of Qntrl’s marketing says that most of the solutions we’ve been seeing are built for larger enterprise customers. Zoho is aiming for the mid-market with a product that requires less technical expertise than traditional business process management tools.
“We enable customers to design their workflows visually without the need for any particular kind of prior knowledge of business process management notation or any kind of that esoteric modeling or discipline,” Vaca told me.
While Vaca says, Qntrl could require some technical help to connect a workflow to more complex backend systems like CRM or ERP, it allows a less technical end user to drag and drop the components and then get help to finish the rest.
“We certainly expect that when you need to connect to NetSuite or SAP you’re going to need a developer. If nothing else, the IT guys are going to ask questions, and they will need to provide access,” Vaca said.
He believes this product is putting this kind of tooling in reach of companies that may have been left out of workflow automation for the most part, or which have been using spreadsheets or other tools to create crude workflows. With Qntrl, you drag and drop components, and then select each component and configure what happens before, during and after each step.
What’s more, Qntrl provides a central place for processing and understanding what’s happening within each workflow at any given time, and who is responsible for completing it.
We’ve seen bigger companies like Microsoft, SAP, ServiceNow and others offering this type of functionality over the last year as low code workflow automation has taken center stage in business.
This has become a more pronounced need during the pandemic when so many workers could not be in the office. It made moving work in a more automated workflow more imperative, and we have seen companies moving to add more of this kind of functionality as a result.
Brent Leary, principal analyst at CRM Essentials, says that Zoho is attempting to remove some the complexity from this kind of tool.
“It handles the security pieces to make sure the right people have access to the data and processes used in the workflows in the background, so regular users can drag and drop to build their flows and processes without having to worry about that stuff,” Leary told me.
Qntrl is available starting today starting at just $7 per user month.
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Dat Bike, a Vietnamese startup with ambitions to become the top electric motorbike company in Southeast Asia, has raised $2.6 million in pre-Series A funding led by Jungle Ventures. Made in Vietnam with mostly domestic parts, Dat Bike’s selling point is its ability to compete with gas motorbikes in terms of pricing and performance. Its new funding is the first time Jungle Ventures has invested in the mobility sector and included participation from Wavemaker Partners, Hustle Fund and iSeed Ventures.
Founder and chief executive officer Son Nguyen began learning how to build bikes from scrap parts while working as a software engineer in Silicon Valley. In 2018, he moved back to Vietnam and launched Dat Bike. More than 80% of households in Indonesia, Malaysia, Thailand and Vietnam own two-wheeled vehicles, but the majority are fueled by gas. Nguyen told TechCrunch that many people want to switch to electric motorbikes, but a major obstacle is performance.
Nguyen said that Dat Bike offers three times the performance (5 kW versus 1.5 kW) and 2 times the range (100 km versus 50 km) of most electric motorbikes in the market, at the same price point. The company’s flagship motorbike, called Weaver, was created to compete against gas motorbikes. It seats two people, which Nguyen noted is an important selling point in Southeast Asian countries, and has a 5000W motor that accelerates from 0 to 50 km per hour in three seconds. The Weaver can be fully charged at a standard electric outlet in about three hours, and reach up to 100 km on one charge (the motorbike’s next iteration will go up to 200 km on one charge).
Dat Bike’s opened its first physical store in Ho Chi Minh City last December. Nguyen said the company “has shipped a few hundred motorbikes so far and still have a backlog of orders.” He added that it saw a 35% month-over-month growth in new orders after the Ho Chi Minh City store opened.
At 39.9 million dong, or about $1,700 USD, Weaver’s pricing is also comparable to the median price of gas motorbikes. Dat Bike partners with banks and financial institutions to offer consumers twelve-month payment plans with no interest.
“These guys are competing with each other to put the emerging middle class of Vietnam on the digital financial market for the first time ever and as a result, we get a very favorable rate,” he said.
While Vietnam’s government hasn’t implemented subsidies for electric motorbikes yet, the Ministry of Transportation has proposed new regulations mandating electric infrastructure at parking lots and bike stations, which Nguyen said will increase the adoption of electric vehicles. Other Vietnamese companies making electric two-wheeled vehicles include VinFast and PEGA.
One of Dat Bike’s advantages is that its bikes are developed in house, with locally-sourced parts. Nguyen said the benefits of manufacturing in Vietnam, instead of sourcing from China and other countries, include streamlined logistics and a more efficient supply chain, since most of Dat Bike’s suppliers are also domestic.
“There are also huge tax advantages for being local, as import tax for bikes is 45% and for bike parts ranging from 15% to 30%,” said Nguyen. “Trade within Southeast Asia is tariff-free though, which means that we have a competitive advantage to expand to the region, compare to foreign imported bikes.”
Dat Bike plans to expand by building its supply chain in Southeast Asia over the next two to three years, with the help of investors like Jungle Ventures.
In a statement, Jungle Ventures founding partner Amit Anand said, “The $25 billion two-wheeler industry in Southeast Asia in particular is ripe for reaping benefits of new developments in electric vehicles and automation. We believe that Dat Bike will lead this charge and create a new benchmark not just in the region but potentially globally for what the next generation of two-wheeler electric vehicles will look and perform like.”
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Decentralized finance startup MOUND, known for its yield farming aggregator Pancake Bunny, has raised $1.6 million in seed funding led by Binance Labs. Other participants included IDEO CoLab, SparkLabs Korea and Handshake co-founder Andrew Lee.
Built on Binance Smart Chain, a blockchain for developing high-performance DeFi apps, MOUND says Pancake Bunny now has more than 30,000 daily average users, and has accumulated more than $2.1 billion in total value locked (TVL) since its launch in December 2020.
The new funding will be used to expand Pancake Bunny and develop new products. MOUND recently launched Smart Vaults and plans to unveil Cross-Chain Collateralization in about a month, bringing the startup closer to its goal of covering a wide range of DeFi use cases, including farming, lending and swapping.
Smart Vaults are for farming single asset yields on leveraged lending products. It also automatically checks if the cost of leveraging may be more than anticipated returns and can actively lend assets for MOUND’s cross-chain farming.
Cross-Chain Collateralization is cross-chain yield farming that lets users keep original assets on their native blockchain instead of relying on a bridge token. The user’s original assets serve as collateral when the Bunny protocol borrows assets on the Binance Smart Chain for yield farming. This allows users to keep assets on native blockchains while giving them liquidity to generate returns on the Binance Smart Chain.
In a statement, Wei Zhou, Binance chief financial officer, and head of Binance Labs and M&A’s, said “Pancake Bunny’s growth and MOUND’s commitment to execution are impressive. Team MOUND’s expertise in live product design and service was a key factor in our decision to invest. We look forward to expanding the horizons of Defi together with MOUND.”
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In the earliest stages of building a startup, it can be hard to justify focusing on anything other than creating a great product or service and meeting the needs of customers or users. However, there are still a number of surefire measures that any early-stage company can and should put in place to achieve “people ops” success as they begin scaling, according to venture capital firm Atomico‘s talent partners, Caro Chayot and Dan Hynes.
You need to recruit for what you need, but you also need to think about what is coming down the line.
As members of the VC’s operational support team, both work closely with companies in the Atomico portfolio to “find, develop and retain” the best employees in their respective fields, at various stages of the business. They’re operators at heart, and they bring a wealth of experience from time spent prior to entering VC.
Before joining Atomico, Chayot led the EMEA HR team at Twitter, where she helped scale the business from two to six markets and grew the team from 80 based in London to 500 across the region. Prior to that, she worked at Google in people ops for nine years.
Hynes was responsible for talent and staffing at well-known technology companies including Google, Cisco and Skype. At Google, he grew the EMEA team from 60 based in London to 8,500 across Europe by 2010, and at Skype, he led a talent team that scaled from 600 to 2,300 in three years.
When most founders think about hiring, they think about what they need now and the gaps that exist in their team at that moment. Dan and I help founders see things a little differently. You need to recruit for what you need, but you also need to think about what is coming down the line. What will your company look like in a year or 18 months? Functions and team sizes will depend on the sector — whether you are building a marketplace, a SaaS business or a consumer company. Founders also need to think about how the employees they hire now can develop over the next 18 months. If you hire people who are at the top of their game now, they won’t be able to grow into the employees you need in the future.
If org design is the “what,” then culture is the “how.” It’s about laying down values and principles. It may sound fluffy, but capturing what it means to work at your company is key to hiring and retaining the best talent. You can use clearly articulated values at every stage of talent-building to shape your employer brand. What do you want potential employees to feel when they see your website? What do you want to look for in the interview process to make sure you are hiring people who are additive to the culture? How do you develop people and compensate them? These are all expressions of culture.
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You hear so much about data these days that you might forget that a huge amount of the world runs on documents: a veritable menagerie of heterogeneous files and formats holding enormous value yet incompatible with the new era of clean, structured databases. Docugami plans to change that with a system that intuitively understands any set of documents and intelligently indexes their contents — and NASA is already on board.
If Docugami’s product works as planned, anyone will be able to take piles of documents accumulated over the years and near-instantly convert them to the kind of data that’s actually useful to people.
If Docugami’s product works as planned, anyone will be able to take piles of documents accumulated over the years and near-instantly convert them to the kind of data that’s actually useful to people.
Because it turns out that running just about any business ends up producing a ton of documents. Contracts and briefs in legal work, leases and agreements in real estate, proposals and releases in marketing, medical charts, etc, etc. Not to mention the various formats: Word docs, PDFs, scans of paper printouts of PDFs exported from Word docs, and so on.
Over the last decade there’s been an effort to corral this problem, but movement has largely been on the organizational side: put all your documents in one place, share and edit them collaboratively. Understanding the document itself has pretty much been left to the people who handle them, and for good reason — understanding documents is hard!
Think of a rental contract. We humans understand when the renter is named as Jill Jackson, that later on, “the renter” also refers to that person. Furthermore, in any of a hundred other contracts, we understand that the renters in those documents are the same type of person or concept in the context of the document, but not the same actual person. These are surprisingly difficult concepts for machine learning and natural language understanding systems to grasp and apply. Yet if they could be mastered, an enormous amount of useful information could be extracted from the millions of documents squirreled away around the world.
Docugami founder Jean Paoli says they’ve cracked the problem wide open, and while it’s a major claim, he’s one of few people who could credibly make it. Paoli was a major figure at Microsoft for decades, and among other things helped create the XML format — you know all those files that end in x, like .docx and .xlsx? Paoli is at least partly to thank for them.
“Data and documents aren’t the same thing,” he told me. “There’s a thing you understand, called documents, and there’s something that computers understand, called data. Why are they not the same thing? So my first job [at Microsoft] was to create a format that can represent documents as data. I created XML with friends in the industry, and Bill accepted it.” (Yes, that Bill.)
The formats became ubiquitous, yet 20 years later the same problem persists, having grown in scale with the digitization of industry after industry. But for Paoli the solution is the same. At the core of XML was the idea that a document should be structured almost like a webpage: boxes within boxes, each clearly defined by metadata — a hierarchical model more easily understood by computers.
“A few years ago I drank the AI kool-aid, got the idea to transform documents into data. I needed an algorithm that navigates the hierarchical model, and they told me that the algorithm you want does not exist,” he explained. “The XML model, where every piece is inside another, and each has a different name to represent the data it contains — that has not been married to the AI model we have today. That’s just a fact. I hoped the AI people would go and jump on it, but it didn’t happen.” (“I was busy doing something else,” he added, to excuse himself.)
The lack of compatibility with this new model of computing shouldn’t come as a surprise — every emerging technology carries with it certain assumptions and limitations, and AI has focused on a few other, equally crucial areas like speech understanding and computer vision. The approach taken there doesn’t match the needs of systematically understanding a document.
“Many people think that documents are like cats. You train the AI to look for their eyes, for their tails … documents are not like cats,” he said.
It sounds obvious, but it’s a real limitation. Advanced AI methods like segmentation, scene understanding, multimodal context, and such are all a sort of hyperadvanced cat detection that has moved beyond cats to detect dogs, car types, facial expressions, locations, etc. Documents are too different from one another, or in other ways too similar, for these approaches to do much more than roughly categorize them.
As for language understanding, it’s good in some ways but not in the ways Paoli needed. “They’re working sort of at the English language level,” he said. “They look at the text but they disconnect it from the document where they found it. I love NLP people, half my team is NLP people — but NLP people don’t think about business processes. You need to mix them with XML people, people who understand computer vision, then you start looking at the document at a different level.”
Paoli’s goal couldn’t be reached by adapting existing tools (beyond mature primitives like optical character recognition), so he assembled his own private AI lab, where a multidisciplinary team has been tinkering away for about two years.
“We did core science, self-funded, in stealth mode, and we sent a bunch of patents to the patent office,” he said. “Then we went to see the VCs, and SignalFire basically volunteered to lead the seed round at $10 million.”
Coverage of the round didn’t really get into the actual experience of using Docugami, but Paoli walked me through the platform with some live documents. I wasn’t given access myself and the company wouldn’t provide screenshots or video, saying it is still working on the integrations and UI, so you’ll have to use your imagination … but if you picture pretty much any enterprise SaaS service, you’re 90% of the way there.
As the user, you upload any number of documents to Docugami, from a couple dozen to hundreds or thousands. These enter a machine understanding workflow that parses the documents, whether they’re scanned PDFs, Word files, or something else, into an XML-esque hierarchical organization unique to the contents.
“Say you’ve got 500 documents, we try to categorize it in document sets, these 30 look the same, those 20 look the same, those five together. We group them with a mix of hints coming from how the document looked, what it’s talking about, what we think people are using it for, etc.,” said Paoli. Other services might be able to tell the difference between a lease and an NDA, but documents are too diverse to slot into pre-trained ideas of categories and expect it to work out. Every set of documents is potentially unique, and so Docugami trains itself anew every time, even for a set of one. “Once we group them, we understand the overall structure and hierarchy of that particular set of documents, because that’s how documents become useful: together.”
That doesn’t just mean it picks up on header text and creates an index, or lets you search for words. The data that is in the document, for example who is paying whom, how much and when, and under what conditions, all that becomes structured and editable within the context of similar documents. (It asks for a little input to double check what it has deduced.)
It can be a little hard to picture, but now just imagine that you want to put together a report on your company’s active loans. All you need to do is highlight the information that’s important to you in an example document — literally, you just click “Jane Roe” and “$20,000” and “five years” anywhere they occur — and then select the other documents you want to pull corresponding information from. A few seconds later you have an ordered spreadsheet with names, amounts, dates, anything you wanted out of that set of documents.
All this data is meant to be portable too, of course — there are integrations planned with various other common pipes and services in business, allowing for automatic reports, alerts if certain conditions are reached, automated creation of templates and standard documents (no more keeping an old one around with underscores where the principals go).
Remember, this is all half an hour after you uploaded them in the first place, no labeling or pre-processing or cleaning required. And the AI isn’t working from some preconceived notion or format of what a lease document looks like. It’s learned all it needs to know from the actual docs you uploaded — how they’re structured, where things like names and dates figure relative to one another, and so on. And it works across verticals and uses an interface anyone can figure out in a few minutes. Whether you’re in healthcare data entry or construction contract management, the tool should make sense.
The web interface where you ingest and create new documents is one of the main tools, while the other lives inside Word. There Docugami acts as a sort of assistant that’s fully aware of every other document of whatever type you’re in, so you can create new ones, fill in standard information, comply with regulations and so on.
Okay, so processing legal documents isn’t exactly the most exciting application of machine learning in the world. But I wouldn’t be writing this (at all, let alone at this length) if I didn’t think this was a big deal. This sort of deep understanding of document types can be found here and there among established industries with standard document types (such as police or medical reports), but have fun waiting until someone trains a bespoke model for your kayak rental service. But small businesses have just as much value locked up in documents as large enterprises — and they can’t afford to hire a team of data scientists. And even the big organizations can’t do it all manually.
The problem is extremely difficult, yet to humans seems almost trivial. You or I could glance through 20 similar documents and a list of names and amounts easily, perhaps even in less time than it takes for Docugami to crawl them and train itself.
But AI, after all, is meant to imitate and transcend human capacity, and it’s one thing for an account manager to do monthly reports on 20 contracts — quite another to do a daily report on a thousand. Yet Docugami accomplishes the latter and former equally easily — which is where it fits into both the enterprise system, where scaling this kind of operation is crucial, and to NASA, which is buried under a backlog of documentation from which it hopes to glean clean data and insights.
If there’s one thing NASA’s got a lot of, it’s documents. Its reasonably well-maintained archives go back to its founding, and many important ones are available by various means — I’ve spent many a pleasant hour perusing its cache of historical documents.
But NASA isn’t looking for new insights into Apollo 11. Through its many past and present programs, solicitations, grant programs, budgets, and of course engineering projects, it generates a huge amount of documents — being, after all, very much a part of the federal bureaucracy. And as with any large organization with its paperwork spread over decades, NASA’s document stash represents untapped potential.
Expert opinions, research precursors, engineering solutions, and a dozen more categories of important information are sitting in files searchable perhaps by basic word matching but otherwise unstructured. Wouldn’t it be nice for someone at JPL to get it in their head to look at the evolution of nozzle design, and within a few minutes have a complete and current list of documents on that topic, organized by type, date, author and status? What about the patent advisor who needs to provide a NIAC grant recipient information on prior art — shouldn’t they be able to pull those old patents and applications up with more specificity than any with a given keyword?
The NASA SBIR grant, awarded last summer, isn’t for any specific work, like collecting all the documents of such and such a type from Johnson Space Center or something. It’s an exploratory or investigative agreement, as many of these grants are, and Docugami is working with NASA scientists on the best ways to apply the technology to their archives. (One of the best applications may be to the SBIR and other small business funding programs themselves.)
Another SBIR grant with the NSF differs in that, while at NASA the team is looking into better organizing tons of disparate types of documents with some overlapping information, at NSF they’re aiming to better identify “small data.” “We are looking at the tiny things, the tiny details,” said Paoli. “For instance, if you have a name, is it the lender or the borrower? The doctor or the patient name? When you read a patient record, penicillin is mentioned, is it prescribed or prohibited? If there’s a section called allergies and another called prescriptions, we can make that connection.”
When I pointed out the rather small budgets involved with SBIR grants and how his company couldn’t possibly survive on these, he laughed.
“Oh, we’re not running on grants! This isn’t our business. For me, this is a way to work with scientists, with the best labs in the world,” he said, while noting many more grant projects were in the offing. “Science for me is a fuel. The business model is very simple — a service that you subscribe to, like Docusign or Dropbox.”
The company is only just now beginning its real business operations, having made a few connections with integration partners and testers. But over the next year it will expand its private beta and eventually open it up — though there’s no timeline on that just yet.
“We’re very young. A year ago we were like five, six people, now we went and got this $10 million seed round and boom,” said Paoli. But he’s certain that this is a business that will be not just lucrative but will represent an important change in how companies work.
“People love documents. Maybe it’s because I’m French,” he said, “but I think text and books and writing are critical — that’s just how humans work. We really think people can help machines think better, and machines can help people think better.”
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When Microsoft announced it was acquiring Nuance Communications this morning for $19.7 billion, you could be excused for doing a Monday morning double take at the hefty price tag.
That’s surely a lot of money for a company on a $1.4 billion run rate, but Microsoft, which has already partnered with the speech-to-text market leader on several products over the last couple of years, saw a company firmly embedded in healthcare and decided to go all in.
And $20 billion is certainly all in, even for a company the size of Microsoft. But 2020 forced us to change the way we do business, from restaurants to retailers to doctors. In fact, the pandemic in particular changed the way we interact with our medical providers. We learned very quickly that you don’t have to drive to an office, wait in waiting room, then in an exam room, all to see the doctor for a few minutes.
Instead, we can get on the line, have a quick chat and be on our way. It won’t work for every condition, of course — there will always be times the physician needs to see you — but for many meetings such as reviewing test results or for talk therapy, telehealth could suffice.
Microsoft CEO Satya Nadella says that Nuance is at the center of this shift, especially with its use of cloud and artificial intelligence, and that’s why the company was willing to pay the amount it did to get it.
“AI is technology’s most important priority, and healthcare is its most urgent application. Together, with our partner ecosystem, we will put advanced AI solutions into the hands of professionals everywhere to drive better decision-making and create more meaningful connections, as we accelerate growth of Microsoft Cloud in Healthcare and Nuance,” Nadella said in a post announcing the deal.
Holger Mueller, an analyst at Constellation Research, says that may be so, but he believes that Microsoft missed the boat with Cortana and this is about helping the company catch up on a crucial technology. “Nuance will be not only give Microsoft technology help in regards to neural network-based speech recognition, but also a massive improvement from vertical capabilities, call center functionality and the MSFT IP position in speech,” he said.
Microsoft sees this deal doubling what was already a considerable total addressable market to nearly $500 billion. While TAMs always tend to run high, that is still a substantial number.
It also fits with Gartner data, which found that by 2022, 75% of healthcare organizations will have a formal cloud strategy in place. The AI component only adds to that number and Nuance brings 10,000 existing customers to Microsoft, including some of the biggest healthcare organizations in the world.
Brent Leary, founder and principal analyst at CRM Essentials, says the deal could provide Microsoft with a ton of health data to help feed the underlying machine learning models and make them more accurate over time.
“There is going be a ton of health data being captured by the interactions coming through telemedicine interactions, and this could create a whole new level of health intelligence,” Leary told me.
That of course could drive a lot of privacy concerns where health data is involved, and it will be up to Microsoft, which just experienced a major breach on its Exchange email server products last month, to assure the public that their sensitive health data is being protected.
Leary says that ensuring data privacy is going to be absolutely key to the success of the deal. “The potential this move has is pretty powerful, but it will only be realized if the data and insights that could come from it are protected and secure — not only protected from hackers but also from unethical use. Either could derail what could be a game-changing move,” he said.
Microsoft also seemed to recognize that when it wrote, “Nuance and Microsoft will deepen their existing commitments to the extended partner ecosystem, as well as the highest standards of data privacy, security and compliance.”
Kate Leggett, an analyst at Forrester Research, thinks healthcare could be just the first step and once Nuance is in the fold, it could go much deeper than that.
“However, the benefit of this acquisition does not stop [with healthcare]. Nuance also offers market-leading customer engagement technologies, with deep expertise and focus in verticals such as financial services. As MSFT evolves their industry editions into other verticals, this acquisition will pay off for other industries. MSFT may also choose to fill in the gaps within their Dynamics solution with Nuance’s customer engagement technologies,” Leggett said.
We are clearly on the edge of a sea change when it comes to how we interact with our medical providers in the future. COVID pushed medicine deeper into the digital realm in 2020 out of simple necessity. It wasn’t safe to go into the office unless absolutely necessary.
The Nuance acquisition, which is expected to close some time later this year, could help Microsoft shift deeper into the market. It could even bring Teams into it as a meeting tool, but it’s all going to depend on the trust level people have with this approach, and it will be up to the company to make sure that both healthcare providers and the people they serve have that.
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Microsoft agreed today to acquire Nuance Communications, a leader in speech to text software, for $19.7 billion. Bloomberg broke the story over the weekend that the two companies were in talks.
In a post announcing the deal, the company said this was about increasing its presence in the healthcare vertical, a place where Nuance has done well in recent years. In fact, the company announced the Microsoft Cloud for Healthcare last year, and this deal is about accelerating its presence there. Nuance’s products in this area include Dragon Ambient eXperience, Dragon Medical One and PowerScribe One for radiology reporting.
“Today’s acquisition announcement represents the latest step in Microsoft’s industry-specific cloud strategy,” the company wrote. The acquisition also builds on several integrations and partnerships the two companies have made in the last couple of years.
The company boasts 10,000 healthcare customers, according to information on the website. Those include AthenaHealth, Johns Hopkins, Mass General Brigham and Cleveland Clinic to name but a few, and it was that customer base that attracted Microsoft to pay the price it did to bring Nuance into the fold.
Nuance CEO Mark Benjamin will remain with the company and report to Scott Guthrie, Microsoft’s EVP in charge of the cloud and AI group.
Nuance has a complex history. It went public in 2000 and began buying speech recognition products, including Dragon Dictate from Lernout Hauspie, in 2001. It merged with a company called ScanSoft in 2005. That company began life as Visioneer, a scanning company, in 1992.
Today, the company has a number of products including Dragon Dictate, a consumer and business text to speech product that dates back to the early 1990s. It’s also involved in speech recognition, chat bots and natural language processing particularly in healthcare and other verticals.
The company has 6,000 employees spread across 27 countries. In its most recent earnings report from November 2020, which was for Q42020, the company reported $352.9 million in revenue compared to $387.6 million in the same period a year prior. That’s not the direction a company wants to go, but it is still a run rate of over $1.4 billion.
At the time of that earnings call, the company also announced it was selling its medical transcription and electronic health record (EHR) Go-Live services to Assured Healthcare Partners and Aeries Technology Group. Company CEO Benjamin said this was about helping the company concentrate on its core speech services.
“With this sale, we will reach an important milestone in our journey towards a more focused strategy of advancing our Conversational AI, natural language understanding and ambient clinical intelligence solutions,” Benjamin said in a statement at the time.
It’s worth noting that Microsoft already has a number speech recognition and chat bot products of its own, including desktop speech to text services in Windows and on Azure, but it took a chance to buy a market leader and go deeper into the healthcare vertical.
The transaction has already been approved by both company boards and Microsoft reports it expects the deal to close by the end of this year, subject to standard regulatory oversight and approval by Nuance shareholders.
This would mark the second largest purchase by Microsoft ever, only surpassed by the $26.2 billion the company paid for LinkedIn in 2016.
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EcoCart, a company pitching consumers on ways to offset their carbon emissions for free at select merchants (with a browser extension!) has raised $3 million in financing from Base10 Partners.
Brands pay the company a commission to drive traffic to their websites under a standard affiliate marketing model and EcoCart uses a portion of the proceeds to offset a shopper’s carbon emissions.
About 10,000 companies work with EcoCart, either through direct partnerships or passive affiliate marketing services. EcoCart also offers a carbon accounting tool for businesses and an offsetting offering for them as well, according to co-founders Peter Twomey and Dane Baker.
The San Francisco-based startup uses services like ClimeCo and BlueSource to source and aggregate offset projects that companies can finance.
The two co-founders, who met at the University of San Diego, previously founded a startup called Toyroom, which rented outdoor equipment to customers in an effort to reduce unnecessary consumption.
“We live this problem ourselves. We realized it was incredibly difficult to maintain this sustainability ethos,” Baker said.
While the browser extension sets EcoCart apart from other offsetting services like Cloverly, the company does share some functionality in its business-facing offering where an option to offset the carbon associated with a purchase is integrated directly into the checkout flow.
EcoCart launched its business-to-business integration in June of last year and now counts 500 vendors as customers. So far, about a quarter of customers have chosen to offset their purchases at checkout, amounting to the capture of an estimated 25 million pounds of CO2, the company said.
Investors backing the company include Base10 Partners; PopSugar co-founder Brian Sugar’s early-stage venture fund and angel investors like Ben Jabbawy, the founder of Privy; Rich Gardner, the VP of global partnerships at Klaviyo; Kyle Hency, the co-founder of Chubbie; Bryan Meehan, the chair of Blue Bottle Coffee; and Carly Strife, the co-founder of BarkBox.
While online shopping gets a bad reputation, it’s actually sometimes a greener option than shopping in physical stores, according to one study published in Nature last year.
Consumer offsets, while well-meaning, don’t have nearly the same impact as having the companies themselves actually rein in their greenhouse gas emissions and decarbonize their operations. In fact, the whole notion of the consumer carbon footprint and the personal responsibility of consumers for planetary pollution was dreamed up by advertising executives at the behest of oil and gas and consumer goods companies pushing products.
But something is better than nothing, and offsets do help necessary projects get funding.
EcoCart said it spent months developing a proprietary algorithm to calculate the carbon footprint of online orders. For both the e-commerce plug-in and browser extension, EcoCart uses the characteristics of each order, including material inputs to the item, shipping distance and package weight, to estimate the emissions created from that order, the company said.
“We believe EcoCart is reinventing how brands interact with their customers while also managing and addressing their environmental impact at scale,” said Chris Zeoli, principal at Base10 Partners, in a statement. “EcoCart represents a solution that is helping reverse decades of harmful climate change. Base10 is proud to be partnering with the EcoCart founders as they continue to make carbon neutral shopping the new checkout standard for industries including retail, micromobility, food delivery, and more.”
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Welcome back to The TechCrunch Exchange, a weekly startups-and-markets newsletter. It’s broadly based on the daily column that appears on Extra Crunch, but free, and made for your weekend reading.
Ready? Let’s talk money, startups and spicy IPO rumors.
The startup world could be in for a busy summer.
Today the economy is improving. Unemployment is falling, while interest rates are staying low. There’s lots of new capital on offer, and some expectation that we’ll get back to Q1’s IPO wave in Q3. Throw in widespread vaccinations and a return to something akin to our old lives, and the world of business could be ready to accelerate further in short order.
There are caveats, of course. Lots of folks are being left behind in the recovery. And vaccine hesitancy is as lethally stupid as it is surprisingly common. But anticipated summer economic conditions, strong markets and a general belief that the digital transformation’s acceleration will continue point to a coming hot(ter) period for tech.
That is good news for startups.
We’re already starting to see anticipatory reporting on the matter. Wired’s recent piece on venture capitalists telling startups to invest rapidly is worth reading. I’ll back it up by saying that it seems that most startups that I am chatting with every week had a solid-as-heck first quarter and aren’t worried about the second. If I am not accidentally speaking with only founders who are doing well and somehow missing legion startups that are struggling, it seems to be a pretty darn good time to build a tech company.
Plaid’s round from earlier this week underscores what I’m talking about. The API-powered consumer fintech company’s CEO Zach Perret told TechCrunch how much the digitization of the world of financial services had accelerated in the last year. Yep. Startups that would have done well in more normal times are often seeing their market move in their direction. Often rapidly. That’s why Plaid is worth north of $13 billion today, nearly triple what it was worth in early 2020.
For the startups doing well, there’s ample cash on offer. Ramp’s latest round, a two-in-one, makes that point plain. So, if the broader economy and its technological sector do accelerate, expect wallets to open even further. As the temperature heats up, so too could the business climate.
I mean, how else can you explain the Clubhouse news? Or the Topps news? TechCrunch had to cover the middle ground between baseball cards, NFTs and candy, for the love of all that is holy.
Next week The Exchange is digging into Q1 2021 venture capital numbers from around the world. We’ll see soon enough how big the start to the year was, but we have a guess.
Sticking to our theme of growth and a hot and warming climate for tech startups, a few more data points from the last week.
I caught up with the CEO of Kudo this week, a few days after his company announced a $21 million Series A round of funding. I covered the translation-as-a-service company last year when it raised a seed round. Per its chief executive Fardad Zabetian, the company had 14 employees last March. It now has 150 and has more than 50 open positions. That’s not the sort of growth you see off of merely a few capital raises. That’s growth.
Coinbase’s monster quarter highlights how some technology work from the past decade is maturing in a lucrative manner. The company’s epic revenue growth and nearly hilarious profitability are going to make its impending direct listing an even bigger event than I had expected. Get ready for that on the 14th. (More from the original Coinbase listing here.)
And then there’s Canva, which just repriced itself through a $71 million secondary transaction. The cloud design company is now worth $15 billion, up from around $6 billion last June, per Crunchbase data. Even more, the company announced a few growth metrics worth sharing:
And it’s not going public. Yes, you can laugh. I got the company to ask its CEO Melanie Perkins why that’s the case, and here’s what we got back:
There’s no rush for us. We’re profitable and we’re very fortunate that we can still find investors that align to our vision and values. I often say that we’re just one percent of the way there with Canva. We have a huge vision to empower every team to achieve its goals through visual communication. We’ve still got a whole lot more to achieve and so no immediate plans for any public listing- there’s simply no rush for us right now.
Let me just say that you don’t only have to go public when there’s a rush to do so! You can do so merely to make us, the reporting class, excited about going to work, as there are new numbers to read!
I was off for a bit of this week to recharge, so some news and notes you might have expected in the above missive may be missing. Rest assured that The Exchange is going to get bigger and better and more number-y and full of jokes when I get back. Someone is joining the little team, so we have big plans.
Hugs,
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“Most of the startups I give advice to about how to raise venture capital shouldn’t be raising venture capital,” an investor recently told me. While the idea that every startup isn’t venture-backable might run counter to the narrative to the barrage of funding news each week, I think it’s important to double click on the topic. Plus, it keeps coming up, off the record, on phone calls with investors!
As venture grows as an asset class, the access to capital has broadened from a dollar perspective, but I do think the difficulties that remain is an important dynamic to call out (and something no one talks about during an upmarket). Beyond the fact that only a small subset of startups truly can pull off scaling to the point of venture-level returns, it is still hard for even qualified founders to raise venture capital. Venture capital is still a heavily white, male-led industry, and as a result contains bias that disproportionately limits access for underrepresented founders.
Eniac founding partner Hadley Harris applied this dynamic to the current market boom in a recent tweet: A lot of people are misunderstanding this VC funding market. More money is flowing into the market but the increase is not evenly distributed. The market believes winners can be much bigger but not necessary that there will be more winners. It’s still very hard for most to raise a VC.
To say otherwise is to gaslight the early-stage or first-time founders that have spent months and months trying to raise their first institutional dollars and failed. So ask yourself: Seed rounds have indeed grown bigger, but for who? What comes at the cost of the $30 million seed round? Are the founders that can raise overnight from diverse backgrounds? Are investors backing first-time founders as much as they are backing second- or third-time entrepreneurs?
The answers might leave you debating about the boundaries, and limitations, of the upcoming hot-deal summer.
A few weeks ago, I wrote about the disconnect between due diligence and fundraising right now. Now we’ve moved onto the disconnect, and bifurcation, within first-check fundraising itself. There is so much more we can get into about the fallacy of “democratization” in venture capital, from who gets to start a rolling fund to the lack of assurance within equity crowdfunding campaigns.
We’ll get through it all together, and in the meantime make sure to follow me on Twitter @nmasc_ for more hot takes throughout the week.
In the rest of this newsletter, we will talk about fintech politics, the Affirm model with a twist, and sneakers-as-a-service.
The inimitable Mary Ann Azevedo has been dominating the fintech beat for us, covering everything from the latest Uruguayan unicorn to Acorn’s scoop of a debt management startup. But the story I want to focus on this week is her interview with ex-Coinbase counsel & former Treasury official, Brian Brooks.
Here’s what to know: Coinbase CEO Brian Armstrong notoriously released a memo last year denouncing political activism at work, calling it a distraction. In this exclusive interview, Brooks spoke about how blockchain is the answer to financial inclusion, and argued why politics needs to be taken out of tech.
We don’t want bank CEOs making those decisions for us as a society, in terms of who they choose to lend money to, or not. We need to take the politics out of tech. All of us do a lot of different things, and we have no idea on a given day, whether what we’re doing is popular with our neighbors or popular with our bank president or not. I don’t want the fact that I sometimes feel Republican to be a reason why my local bank president can deny me a mortgage.
Image Credits: Bryce Durbin/TechCrunch
While Affirm may have popularized the “buy now, pay later” model, the consumer-friendly business strategy still has room to be niched down into specific subsectors. I ran into one such startup when covering Plaid’s inaugural cohort of startups in its accelerator program.
Here’s what to know: Walnut is a new seed-stage startup that is a point-of-sale loan company with a healthcare twist. Unlike Affirm, it doesn’t make money off of fees charged to consumers.
Image Credits: Bryce Durbin/TechCrunch
Everything you could ever want to know about StockX
In our latest EC-1, reporter Rae Witte has covered a startup that leads one of the most complex and culturally relevant marketplaces in the world: sneakers.
Here’s what to know: StockX, in her words, has built a stock market of hype, and her series goes into its origin story, authentication processes and a market map.
Image Credits: Nigel Sussman
Found, a new podcast joining the TechCrunch network, has officially launched! The Equity team got a behind-the-scenes look at what triggered the new podcast, the first guests and goals of the show. Make sure to tune into the first episode.
Also, if you run into any paywalls while browsing today’s newsletter, make sure to use discount code STARTUPSWEEKLY to get 25% off an annual or two-year Extra Crunch subscription.
Seen on TechCrunch
Okta launches a new free developer plan
New Jersey announces $10M seed fund aimed at Black and Latinx founders
Education nonprofit Edraak ignored a student data leak for two months
6 VCs talk the future of Austin’s exploding startup ecosystem
Dear Sophie: Help! My H-1B wasn’t chosen!
Seen on Extra Crunch
5 machine learning essentials nontechnical leaders need to understand
How we dodged risks and raised millions for our open-source machine language startup
Giving EV batteries a second life for sustainability and profit
And that’s a wrap! Thanks for making it this far, and now I dare you to go make the most out of the rest of your day. And by make the most, I mean listen to Taylor’s Version.
Warmly,
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