Fundings & Exits
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Attentive, a startup helping retailers personalize their mobile messages, is announcing that it has raised $40 million in Series B funding.
The startup was founded by Brian Long and Andrew Jones, who sold their previous startup TapCommerce to Twitter. When they announced Attentive’s $13 million Series A last year, Long told me the startup is all about helping retailers find better ways to communicate with customers, particularly as it’s harder for their individual apps to stand out.
Attentive’s first product allowed for what it calls “two-tap” sign-up, where users can tap on a promotion link from a brand’s website, creating a pre-populated text that opts them in to for SMS messages from that retailer.
Since then, it’s built a broader suite of messaging tools, with support for cart abandonment reminders, A/B testing, subscriber segmentation and other features that allow retailers to get smarter and more targeted in their messaging strategy.
The startup says mobile messages sent through its platform are seeing click-through rates of more than 30%, and that it now works with more than 400 customers, including Sephora, Urban Outfitters, Coach, CB2 and Jack in the Box.
The Series B was led by Sequoia, with participation from new investors IVP and High Alpha, as well as previous backers Bain Capital Ventures, Eniac Ventures and NextView Ventures. The plan for the new funding is to grow the entire team, especially sales and engineering.
“CRM is changing,” Long said in a statement. “Businesses can’t build a relationship with the modern consumer through email alone. Email performance, as measured by how many subscribers click-through on a message, is down 45% over the last five years. Rather than continuing to shout one-way messages at consumers, smart brands will stay relevant by embracing personalized, real-time, two-way communication channels.”
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Glow is a new startup that says it wants to help podcasters build media business.
That’s something co-founder and CEO Amira Valliani said she tried to do herself. After a career that included working in the Obama White House and getting an MBA from Wharton, she launched a podcast covering local elections in Cambridge, Mass., and she said that after the initial six episodes, she struggled to find a sustainable business model.
Valliani (pictured above with her co-founder and chief product officer Brian Elieson) recalled thinking, “Well, I got this one grant and I’d love to do more, but I need to figure out a way to pay for it.” She realized that advertising didn’t make sense, but when a listener expressed interest in paying her directly, none of the existing platforms made it easy.
“I just couldn’t figure it out,” she said. “I felt an acute need, and I thought, ‘Are there other people out there who haven’t been able to figure out how to do it, because the lift is just too high?’ ”
That’s the need Glow tries to address with its first product — allowing podcasters to create paid subscriptions. To do that, podcasters create a subscription page on the Glow site, where they can accept payments and then allow listeners to access paywalled content from the podcast app of their choice.
Glow started testing the product with the startup-focused podcast Acquired, which is now bringing in $35,000 in subscription fees through Glow. More recently, it’s signed up the Techmeme Ride Home, Twenty Thousand Hertz, The Newsworthy and others.
When asked about the broader landscape of podcast startups (including several that support paid subscriptions), Valliani said there are three main problems that podcasters face: hosting, monetization and distribution.
Hosting, she said, is “largely a solved problem,” so Glow is starting out by trying to “solve for monetization through the direct relationship with listeners.” Eventually, it could move into distribution, though that doesn’t mean launching a Glow podcast app: “For us, we think distribution means helping podcasts grow their audience.”
The startup announced today that it has raised $2.3 million in seed funding. The round was led by Greycroft, with participation from Norwest Venture Partners, PSL Ventures, WndrCo and Revolution’s Rise of the Rest Seed Fund, as well as individual investors including Nas and Electronic Arts CTO Ken Moss.
“Our first hire after this funding round will be someone focused on podcast success,” Valliani said. “Of course, we’re going to build the product [but we’re] doubling down on this market; we better make sure that [podcasters] are prepared to launch programs that are as successful as possible.”
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Another day, another Salesforce acquisition. Just days after closing the hefty $15.7 billion Tableau deal, the company opened its wallet again, this time announcing it has bought field service software company ClickSoftware for a tidy $1.35 billion.
This one could help beef up the company’s field service offering, which falls under the Service Cloud umbrella. In its June earnings report, the company reported that Service Cloud crossed the $1 billion revenue threshold for the first time. This acquisition is designed to keep those numbers growing.
“Our acquisition of ClickSoftware will not only accelerate the growth of Service Cloud, but drive further innovation with Field Service Lightning to better meet the needs of our customers,” Bill Patterson, EVP and GM of Salesforce Service Cloud said in a statement announcing the deal.
ClickSoftware is actually older than Salesforce having been founded in 1997. The company went public in 2000, and remained listed until it went private again in 2015 in a deal with private equity company Francisco Partners, which bought it for $438 million. Francisco did alright for itself, holding on to the company for four years before more than doubling its money.
The deal is expected to close in the fall and is subject to the normal regulatory approval process.
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If you go back about a decade, Hadoop was hot and getting hotter. It was a platform for processing big data, just as big data was emerging from the domain of a few web-scale companies to one where every company was suddenly concerned about processing huge amounts of data. The future was bright, an open source project with a bunch of startups emerging to fulfill that big data promise in the enterprise.
Three companies in particular emerged out of that early scrum — Cloudera, Hortonworks and MapR — and between them raised more than $1.5 billion. The lion’s share of that went to Cloudera in one massive chunk when Intel Capital invested a whopping $740 million in the company. But times have changed.
Just yesterday, HPE bought the assets of MapR, a company that had raised $280 million. The deal was pegged at under $50 million, according to multiple reports. That’s not what you call a healthy return on investment.
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Rookout, a startup that provides debugging across a variety of environments, including serverless and containers, announced an $8 million Series A investment today. It plans to use the money to expand beyond its debugging roots.
The round was led by Cisco Investments along with existing investors TLV Partners and Emerge. Nat Friedman, CEO of GitHub; John Kodumal, CTO and co-founder of LaunchDarkly; and Raymond Colletti, VP of revenue at Codecov also participated.
“Rookout from day one has been working to provide production debugging and collection capabilities to all platforms,” Or Weis, co-founder and CEO of Rookout told TechCrunch. That has included serverless like AWS Lambda, containers and Kubernetes and Platform-as-a-Service like Google App Engine and Elastic Beanstalk.
The company is also giving visibility into platforms that are sometimes hard to observe because of the ephemeral nature of the technology, and that go beyond its pure debugging capabilities. “In the last year, we’ve discovered that our customers are finding completely new ways to use Rookout’s code-level data collection capabilities and that we need to accommodate, support and enhance the many varied uses of code-level observability and pipelining,” Weiss said in a statement.
It was particularly telling that a company like Cisco was deeply involved in the round. Rob Salvagno, vice president of Cisco Global Corporate Development and Cisco Investments, likes the developer focus of the company.
“Developers have become key influencers of enterprise IT spend. By collecting data on-demand without re-deploying, Rookout created a Developer-centric software, which short-circuits complexities in the production debugging, increases Developer efficiency and reduces the friction which exists between IT Ops and Developers,” Salvagno said in a statement.
Rookout, which launched in 2017, has offices in San Francisco and Tel Aviv, with a total of 20 employees. It has raised more than $12 million.
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Cockroach Labs, makers of CockroachDB, sits in a tough position in the database market. On one side, it has traditional database vendors like Oracle, and on the other there’s AWS and its family of databases. It takes some good technology and serious dollars to compete with those companies. Cockroach took care of the latter with a $55 million Series C round today.
The round was led by Altimeter Capital and Tiger Global along with existing investor GV. Other existing investors, including Benchmark, Index Ventures, Redpoint Ventures, FirstMark Capital and Work-Bench, also participated. Today’s investment brings the total raised to more than $110 million, according to the company.
Spencer Kimball, co-founder and CEO, says the company is building a modern database to compete with these industry giants. “CockroachDB is architected from the ground up as a cloud native database. Fundamentally, what that means is that it’s distributed, not just across nodes in a single data center, which is really table stakes as the database gets bigger, but also across data centers to be resilient. It’s also distributed potentially across the planet in order to give a global customer base what feels like a local experience to keep the data near them,” Kimball explained.
At the same time, even while it has a cloud product hosted on AWS, it also competes with several AWS database products, including Amazon Aurora, Redshift and DynamoDB. Much like MongoDB, which changed its open-source licensing structure last year, Cockroach did as well, for many of the same reasons. They both believed bigger players were taking advantage of the open-source nature of their products to undermine their markets.
“If you’re trying to build a business around an open-source product, you have to be careful that a much bigger player doesn’t come along and extract too much of the value out of the open-source product that you’ve been building and maintaining,” Kimball explained.
As the company deals with all of these competitive pressures, it takes a fair bit of money to continue building a piece of technology to beat the competition, while going up against much deeper-pocketed rivals. So far the company has been doing well, with Q1 revenue this year doubling all of last year. Kimball indicated that Q2 could double Q1, but he wants to keep that going, and that takes money.
“We need to accelerate that sales momentum and that’s usually what the Series C is about. Fundamentally, we have, I think, the most advanced capabilities in the market right now. Certainly we do if you look at the differentiator around just global capability. We nevertheless are competing with Oracle on one side, and Amazon on the other side. So a lot of this money is going towards product development too,” he said.
Cockroach Labs was founded in 2015, and is based in New York City.
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While you’d be hard pressed to find any startup not brimming with confidence over the disruptive idea they’re chasing, it’s not often you come across a young company as calmly convinced it’s engineering the future as Dasha AI.
The team is building a platform for designing human-like voice interactions to automate business processes. Put simply, it’s using AI to make machine voices a whole lot less robotic.
“What we definitely know is this will definitely happen,” says CEO and co-founder Vladislav Chernyshov. “Sooner or later the conversational AI/voice AI will replace people everywhere where the technology will allow. And it’s better for us to be the first mover than the last in this field.”
“In 2018 in the US alone there were 30 million people doing some kind of repetitive tasks over the phone. We can automate these jobs now or we are going to be able to automate it in two years,” he goes on. “If you multiple it with Europe and the massive call centers in India, Pakistan and the Philippines you will probably have something like close to 120M people worldwide… and they are all subject for disruption, potentially.”
The New York based startup has been operating in relative stealth up to now. But it’s breaking cover to talk to TechCrunch — announcing a $2M seed round, led by RTP Ventures and RTP Global: An early stage investor that’s backed the likes of Datadog and RingCentral. RTP’s venture arm, also based in NY, writes on its website that it prefers engineer-founded companies — that “solve big problems with technology”. “We like technology, not gimmicks,” the fund warns with added emphasis.
Dasha’s core tech right now includes what Chernyshov describes as “a human-level, voice-first conversation modelling engine”; a hybrid text-to-speech engine which he says enables it to model speech disfluencies (aka, the ums and ahs, pitch changes etc that characterize human chatter); plus “a fast and accurate” real-time voice activity detection algorithm which detects speech in under 100 milliseconds, meaning the AI can turn-take and handle interruptions in the conversation flow. The platform can also detect a caller’s gender — a feature that can be useful for healthcare use-cases, for example.
Another component Chernyshov flags is “an end-to-end pipeline for semi-supervised learning” — so it can retrain the models in real time “and fix mistakes as they go” — until Dasha hits the claimed “human-level” conversational capability for each business process niche. (To be clear, the AI cannot adapt its speech to an interlocutor in real-time — as human speakers naturally shift their accents closer to bridge any dialect gap — but Chernyshov suggests it’s on the roadmap.)
“For instance, we can start with 70% correct conversations and then gradually improve the model up to say 95% of correct conversations,” he says of the learning element, though he admits there are a lot of variables that can impact error rates — not least the call environment itself. Even cutting edge AI is going to struggle with a bad line.
The platform also has an open API so customers can plug the conversation AI into their existing systems — be it telephony, Salesforce software or a developer environment, such as Microsoft Visual Studio.
Currently they’re focused on English, though Chernyshov says the architecture is “basically language agnostic” — but does requires “a big amount of data”.
The next step will be to open up the dev platform to enterprise customers, beyond the initial 20 beta testers, which include companies in the banking, healthcare and insurance sectors — with a release slated for later this year or Q1 2020.
Test use-cases so far include banks using the conversation engine for brand loyalty management to run customer satisfaction surveys that can turnaround negative feedback by fast-tracking a response to a bad rating — by providing (human) customer support agents with an automated categorization of the complaint so they can follow up more quickly. “This usually leads to a wow effect,” says Chernyshov.
Ultimately, he believes there will be two or three major AI platforms globally providing businesses with an automated, customizable conversational layer — sweeping away the patchwork of chatbots currently filling in the gap. And of course Dasha intends their ‘Digital Assistant Super Human Alike’ to be one of those few.
“There is clearly no platform [yet],” he says. “Five years from now this will sound very weird that all companies now are trying to build something. Because in five years it will be obvious — why do you need all this stuff? Just take Dasha and build what you want.”
“This reminds me of the situation in the 1980s when it was obvious that the personal computers are here to stay because they give you an unfair competitive advantage,” he continues. “All large enterprise customers all over the world… were building their own operating systems, they were writing software from scratch, constantly reinventing the wheel just in order to be able to create this spreadsheet for their accountants.
“And then Microsoft with MS-DOS came in… and everything else is history.”
That’s not all they’re building, either. Dasha’s seed financing will be put towards launching a consumer-facing product atop its b2b platform to automate the screening of recorded message robocalls. So, basically, they’re building a robot assistant that can talk to — and put off — other machines on humans’ behalf.
Which does kind of suggest the AI-fuelled future will entail an awful lot of robots talking to each other…
Chernyshov says this b2c call screening app will most likely be free. But then if your core tech looks set to massively accelerate a non-human caller phenomenon that many consumers already see as a terrible plague on their time and mind then providing free relief — in the form of a counter AI — seems the very least you should do.
Not that Dasha can be accused of causing the robocaller plague, of course. Recorded messages hooked up to call systems have been spamming people with unsolicited calls for far longer than the startup has existed.
Dasha’s PR notes Americans were hit with 26.3BN robocalls in 2018 alone — up “a whopping” 46% on 2017.
Its conversation engine, meanwhile, has only made some 3M calls to date, clocking its first call with a human in January 2017. But the goal from here on in is to scale fast. “We plan to aggressively grow the company and the technology so we can continue to provide the best voice conversational AI to a market which we estimate to exceed $30BN worldwide,” runs a line from its PR.
After the developer platform launch, Chernyshov says the next step will be to open up access to business process owners by letting them automate existing call workflows without needing to be able to code (they’ll just need an analytic grasp of the process, he says).
Later — pegged for 2022 on the current roadmap — will be the launch of “the platform with zero learning curve”, as he puts it. “You will teach Dasha new models just like typing in a natural language and teaching it like you can teach any new team member on your team,” he explains. “Adding a new case will actually look like a word editor — when you’re just describing how you want this AI to work.”
His prediction is that a majority — circa 60% — of all major cases that business face — “like dispatching, like probably upsales, cross sales, some kind of support etc, all those cases” — will be able to be automated “just like typing in a natural language”.
So if Dasha’s AI-fuelled vision of voice-based business process automation come to fruition then humans getting orders of magnitude more calls from machines looks inevitable — as machine learning supercharges artificial speech by making it sound slicker, act smarter and seem, well, almost human.
But perhaps a savvier generation of voice AIs will also help manage the ‘robocaller’ plague by offering advanced call screening? And as non-human voice tech marches on from dumb recorded messages to chatbot-style AIs running on scripted rails to — as Dasha pitches it — fully responsive, emoting, even emotion-sensitive conversation engines that can slip right under the human radar maybe the robocaller problem will eat itself? I mean, if you didn’t even realize you were talking to a robot how are you going to get annoyed about it?
Dasha claims 96.3% of the people who talk to its AI “think it’s human”, though it’s not clear what sample size the claim is based on. (To my ear there are definite ‘tells’ in the current demos on its website. But in a cold-call scenario it’s not hard to imagine the AI passing, if someone’s not paying much attention.)
The alternative scenario, in a future infested with unsolicited machine calls, is that all smartphone OSes add kill switches, such as the one in iOS 13 — which lets people silence calls from unknown numbers.
And/or more humans simply never pick up phone calls unless they know who’s on the end of the line.
So it’s really doubly savvy of Dasha to create an AI capable of managing robot calls — meaning it’s building its own fallback — a piece of software willing to chat to its AI in future, even if actual humans refuse.
Dasha’s robocall screener app, which is slated for release in early 2020, will also be spammer-agnostic — in that it’ll be able to handle and divert human salespeople too, as well as robots. After all, a spammer is a spammer.
“Probably it is the time for somebody to step in and ‘don’t be evil’,” says Chernyshov, echoing Google’s old motto, albeit perhaps not entirely reassuringly given the phrase’s lapsed history — as we talk about the team’s approach to ecosystem development and how machine-to-machine chat might overtake human voice calls.
“At some point in the future we will be talking to various robots much more than we probably talk to each other — because you will have some kind of human-like robots at your house,” he predicts. “Your doctor, gardener, warehouse worker, they all will be robots at some point.”
The logic at work here is that if resistance to an AI-powered Cambrian Explosion of machine speech is futile, it’s better to be at the cutting edge, building the most human-like robots — and making the robots at least sound like they care.
Dasha’s conversational quirks certainly can’t be called a gimmick. Even if the team’s close attention to mimicking the vocal flourishes of human speech — the disfluencies, the ums and ahs, the pitch and tonal changes for emphasis and emotion — might seem so at first airing.
In one of the demos on its website you can hear a clip of a very chipper-sounding male voice, who identifies himself as “John from Acme Dental”, taking an appointment call from a female (human), and smoothly dealing with multiple interruptions and time/date changes as she changes her mind. Before, finally, dealing with a flat cancelation.
A human receptionist might well have got mad that the caller essentially just wasted their time. Not John, though. Oh no. He ends the call as cheerily as he began, signing off with an emphatic: “Thank you! And have a really nice day. Bye!”
If the ultimate goal is Turing Test levels of realism in artificial speech — i.e. a conversation engine so human-like it can pass as human to a human ear — you do have to be able to reproduce, with precision timing, the verbal baggage that’s wrapped around everything humans say to each other.
This tonal layer does essential emotional labor in the business of communication, shading and highlighting words in a way that can adapt or even entirely transform their meaning. It’s an integral part of how we communicate. And thus a common stumbling block for robots.
So if the mission is to power a revolution in artificial speech that humans won’t hate and reject then engineering full spectrum nuance is just as important a piece of work as having an amazing speech recognition engine. A chatbot that can’t do all that is really the gimmick.
Chernyshov claims Dasha’s conversation engine is “at least several times better and more complex than [Google] Dialogflow, [Amazon] Lex, [Microsoft] Luis or [IBM] Watson”, dropping a laundry list of rival speech engines into the conversation.
He argues none are on a par with what Dasha is being designed to do.
The difference is the “voice-first modelling engine”. “All those [rival engines] were built from scratch with a focus on chatbots — on text,” he says, couching modelling voice conversation “on a human level” as much more complex than the more limited chatbot-approach — and hence what makes Dasha special and superior.
“Imagination is the limit. What we are trying to build is an ultimate voice conversation AI platform so you can model any kind of voice interaction between two or more human beings.”
Google did demo its own stuttering voice AI — Duplex — last year, when it also took flak for a public demo in which it appeared not to have told restaurant staff up front they were going to be talking to a robot.
Chernyshov isn’t worried about Duplex, though, saying it’s a product, not a platform.
“Google recently tried to headhunt one of our developers,” he adds, pausing for effect. “But they failed.”
He says Dasha’s engineering staff make up more than half (28) its total headcount (48), and include two doctorates of science; three PhDs; five PhD students; and ten masters of science in computer science.
It has an R&D office in Russian which Chernyshov says helps makes the funding go further.
“More than 16 people, including myself, are ACM ICPC finalists or semi finalists,” he adds — likening the competition to “an Olympic game but for programmers”. A recent hire — chief research scientist, Dr Alexander Dyakonov — is both a doctor of science professor and former Kaggle No.1 GrandMaster in machine learning. So with in-house AI talent like that you can see why Google, uh, came calling…
But why not have Dasha ID itself as a robot by default? On that Chernyshov says the platform is flexible — which means disclosure can be added. But in markets where it isn’t a legal requirement the door is being left open for ‘John’ to slip cheerily by. Bladerunner here we come.
The team’s driving conviction is that emphasis on modelling human-like speech will, down the line, allow their AI to deliver universally fluid and natural machine-human speech interactions which in turn open up all sorts of expansive and powerful possibilities for embeddable next-gen voice interfaces. Ones that are much more interesting than the current crop of gadget talkies.
This is where you could raid sci-fi/pop culture for inspiration. Such as Kitt, the dryly witty talking car from the 1980s TV series Knight Rider. Or, to throw in a British TV reference, Holly the self-depreciating yet sardonic human-faced computer in Red Dwarf. (Or indeed Kryten the guilt-ridden android butler.) Chernyshov’s suggestion is to imagine Dasha embedded in a Boston Dynamics robot. But surely no one wants to hear those crawling nightmares scream…
Dasha’s five-year+ roadmap includes the eyebrow-raising ambition to evolve the technology to achieve “a general conversational AI”. “This is a science fiction at this point. It’s a general conversational AI, and only at this point you will be able to pass the whole Turing Test,” he says of that aim.
“Because we have a human level speech recognition, we have human level speech synthesis, we have generative non-rule based behavior, and this is all the parts of this general conversational AI. And I think that we can we can — and scientific society — we can achieve this together in like 2024 or something like that.
“Then the next step, in 2025, this is like autonomous AI — embeddable in any device or a robot. And hopefully by 2025 these devices will be available on the market.”
Of course the team is still dreaming distance away from that AI wonderland/dystopia (depending on your perspective) — even if it’s date-stamped on the roadmap.
But if a conversational engine ends up in command of the full range of human speech — quirks, quibbles and all — then designing a voice AI may come to be thought of as akin to designing a TV character or cartoon personality. So very far from what we currently associate with the word ‘robotic’. (And wouldn’t it be funny if the term ‘robotic’ came to mean ‘hyper entertaining’ or even ‘especially empathetic’ thanks to advances in AI.)
Let’s not get carried away though.
In the meanwhile, there are ‘uncanny valley’ pitfalls of speech disconnect to navigate if the tone being (artificially) struck hits a false note. (And, on that front, if you didn’t know ‘John from Acme Dental’ was a robot you’d be forgiven for misreading his chipper sign off to a total time waster as pure sarcasm. But an AI can’t appreciate irony. Not yet anyway.)
Nor can robots appreciate the difference between ethical and unethical verbal communication they’re being instructed to carry out. Sales calls can easily cross the line into spam. And what about even more dystopic uses for a conversation engine that’s so slick it can convince the vast majority of people it’s human — like fraud, identity theft, even election interference… the potential misuses could be terrible and scale endlessly.
Although if you straight out ask Dasha whether it’s a robot Chernyshov says it has been programmed to confess to being artificial. So it won’t tell you a barefaced lie.
How will the team prevent problematic uses of such a powerful technology?
“We have an ethics framework and when we will be releasing the platform we will implement a real-time monitoring system that will monitor potential abuse or scams, and also it will ensure people are not being called too often,” he says. “This is very important. That we understand that this kind of technology can be potentially probably dangerous.”
“At the first stage we are not going to release it to all the public. We are going to release it in a closed alpha or beta. And we will be curating the companies that are going in to explore all the possible problems and prevent them from being massive problems,” he adds. “Our machine learning team are developing those algorithms for detecting abuse, spam and other use cases that we would like to prevent.”
There’s also the issue of verbal ‘deepfakes’ to consider. Especially as Chernyshov suggests the platform will, in time, support cloning a voiceprint for use in the conversation — opening the door to making fake calls in someone else’s voice. Which sounds like a dream come true for scammers of all stripes. Or a way to really supercharge your top performing salesperson.
Safe to say, the counter technologies — and thoughtful regulation — are going to be very important.
There’s little doubt that AI will be regulated. In Europe policymakers have tasked themselves with coming up with a framework for ethical AI. And in the coming years policymakers in many countries will be trying to figure out how to put guardrails on a technology class that, in the consumer sphere, has already demonstrated its wrecking-ball potential — with the automated acceleration of spam, misinformation and political disinformation on social media platforms.
“We have to understand that at some point this kind of technologies will be definitely regulated by the state all over the world. And we as a platform we must comply with all of these requirements,” agrees Chernyshov, suggesting machine learning will also be able to identify whether a speaker is human or not — and that an official caller status could be baked into a telephony protocol so people aren’t left in the dark on the ‘bot or not’ question.
“It should be human-friendly. Don’t be evil, right?”
Asked whether he considers what will happen to the people working in call centers whose jobs will be disrupted by AI, Chernyshov is quick with the stock answer — that new technologies create jobs too, saying that’s been true right throughout human history. Though he concedes there may be a lag — while the old world catches up to the new.
Time and tide wait for no human, even when the change sounds increasingly like we do.
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AWS is already the clear market leader in the cloud infrastructure market, but it’s never been an organization that rests on its past successes. Whether it’s a flurry of new product announcements and enhancements every year, or making strategic acquisitions.
When it bought Israeli storage startup E8 yesterday, it might have felt like a minor move on its face, but AWS was looking, as it always does, to find an edge and reduce the costs of operations in its data centers. It was also very likely looking forward to the next phase of cloud computing. Reports have pegged the deal at between $50 and $60 million.
What E8 gives AWS for relatively cheap money is highly advanced storage capabilities, says Steve McDowell, senior storage analyst at Moor Research and Strategy. “E8 built a system that delivers extremely high-performance/low-latency flash (and Optane) in a shared-storage environment,” McDowell told TechCrunch.
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In the context of a term sheet, pro rata rights (or pro rata) govern whether investors may continue to invest in subsequent rounds of funding in proportion with their ownership. Investors with pro rata rights can invest in the company’s next round an amount that will allow them to maintain their ownership percentage.
This is an excerpt from the Holloway Guide to Raising Venture Capital, a comprehensive resource for founders of early-stage startups, covering technical details, practical knowledge, real-world scenarios, and pitfalls to avoid. Read our accompanying article about the company over on TechCrunch.
Pro rata is Latin for “in proportion.” Most people are familiar with the concept of prorating from dealing with landlords: if you’re entering into a lease halfway through the month, your rent may be prorated, where you pay an amount of the rent that is in proportion to your time actually occupying the property.
Almost all investors try to negotiate for pro rata rights, because if a company is doing well they want to own as much of it as possible. After all, why not double down on a winner than use that same money to invest in a newer, unproven company? In the 2018–2019 fundraising climate, though, it’s safe to say we’re at “peak pro rata.” Everybody wants pro rata, even those who don’t entirely understand how it works or affects companies.
Some founders include a major investor clause in the term sheet, which reserves certain rights and privileges to those they deem “major investors,” based on amount invested or number of shares purchased. Whether to grant pro rata rights to all investors or only those above a major investor threshold is a tricky decision for two reasons.
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Vacasa, a provider of vacation rental management services akin to Airbnb, has agreed to acquire Wyndham Vacation Rentals from Wyndham Destinations.
Portland-based Vacasa will pay Wyndham a total of $162 million, including at least $45 million in cash at closing and upwards of $30 million in Vacasa equity.
Vacasa, founded in 2009, has raised $207.5 million in venture capital funding to date from investors such as Assurant Growth Investing and NewSpring Capital.
Its acquisition of Wyndham Vacation Rentals will bring a number of brands, including ResortQuest, Kaiser Realty and Vacation Palm Springs, under its ownership and will expand its portfolio to include 9,000 new properties.
“We are excited to partner with the pioneering company in the short-term rental industry that helped make vacation homes popular for so many families around the world,” Vacasa founder and chief executive officer Eric Breon said in a statement. “Combining Wyndham Vacation Rentals’ decades of operational excellence with Vacasa’s next-generation technology will deliver the industry’s best vacation rental experiences.”
The deal comes amid a period of growth for the Oregon business, which says it expects to bring in more than $1 billion in gross bookings and roughly $500 million in net revenue in the next year.
The acquisition, announced this morning, is projected to close this fall.
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