natural language processing

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How this startup built and exited to Twitter in 1,219 days

By the summer of 2016, Marie Outtier had spent eight years as a consultant advising media agencies and martech companies on marketing growth strategy.

Pierre-Jean “PJ” Camillieri started as a music software engineer before joining one of Apple’s consumer electronics divisions. Inspired by Siri, he left to start Timista, a smart lifestyle assistant.

When the two joined forces to co-found Aiden.ai, the combination was potent — one was a consummate marketer, the other, a specialist in machine learning. Their goal: create an AI-driven marketing analyst that offered actionable advice in real time.

Humans who manage ad campaigns must analyze vast amounts of numbers, but Outtier and Camillieri envisioned a tool that could make optimization recommendations in real time. Analytics are vast and unwieldy, so theirs was a no-brainer proposition with a market crying out for solutions.

The company’s first office was at Bloom Space in Gower Street, London. It was just a handful of hot desks and a nearby sofa shared with four other startups. That summer, they began in earnest to build the company. A few months later, they had a huge opportunity when the still 100% bootstrapped company was selected for Techcrunch Disrupt’s Startup Battlefield competition.

Interviewed by TechCrunch, they explained their proposition: Marketers wanted to know where a digital marketing campaign was getting the most traction: Twitter or Facebook. You might need to check several dashboards across multiple accounts, plus Google analytics to compile the data — and even if you conclude that one platform is outperforming the other, that might change next week as users shift attention to Instagram, potentially wasting 60% of ad spend.

Aiden was intended to feel like just another co-worker, relying on natural language processing to make the exchange feel chatty and comfortable. It queried data from multiple dashboards and quickly compiled it into flash charts, making it easy to find and digest.

Eventually, instead of managing 10 clients, marketing analysts would be able to manage 50 using dynamic predictions as well as visualizations. Aiden incorporated Outtier’s expertise into its algorithms so it could suggest how to tweak a Facebook campaign and anticipate what was going to happen.

Was appearing at Disrupt a significant moment? “It was a big deal for us,” says Outtier. “The exposure gave us ammunition to raise our first round. And being part of the Disrupt Battlefield alumni gave us many meaningful networking and PR opportunities.”

A few weeks later the company had raised a seed round of $750,000. But not without difficulty. By this time Outtier was in the latter stages of pregnancy. Raising money under these circumstances was difficult, but, she says, “it can be done. It’s tougher than ‘normal circumstances.’ It’s a bit like running a marathon, but with a fridge on your back.”

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Lightspeed leads Laiye’s $42M round to bet on Chinese enterprise IT

Laiye, a Chinese startup that offers robotic process automation services to several major tech firms in the nation and government agencies, has raised $42 million in a new funding round as it looks to scale its business.

The new financing round, Series C, was co-led by Lightspeed Venture Partners and Lightspeed China Partners. Cathay Innovation, which led the startup’s Series B+ round and Wu Capital, which led the Series B round, also participated in the new round.

China has been the hub for some of the cheapest labor in the world. But in recent years, a number of companies and government agencies have started to improve their efficiency with the help of technology.

That’s where Laiye comes into play. Robotic process automation (RPA) allows software to mimic several human behaviors such as keyboard strokes and mouse clicks.

“For instance, a number of banks did not previously offer APIs, so humans had to sign in and fetch the data and then feed it into some other software. Processes like these could be automated by our platform,” said Arvid Wang, co-founder and co-chief executive of Laiye, in an interview with TechCrunch.

The four-and-a-half-year-old startup, which has raised more than $100 million to date, will use the fresh capital to hire talent from across the globe and expand its services. “We believe robotic process automation will achieve its full potential when it combines AI and the best human talent,” he said.

Laiye’s announcement today comes as the market for robotic automation process is still in nascent stage in China. There are a handful of startups looking into this space, but Laiye, which counts Microsoft as an investor, and Sequoia-backed UiPath are the two clear leaders in the market.

As my colleague Rita Liao wrote last year, it was only recently that some entrepreneurs and investors in China started to shift their attention from consumer-facing products to business applications.

Globally, RPA has emerged as the fastest growing market in enterprise space. A Gartner report found last year that RPA market grew over 63% in 2018. Recent surveys have shown that most enterprises in China today are also showing interest in enhancing their RPA projects and AI capabilities.

Laiye today has more than 200 partners and more than 200,000 developers have registered to use its multilingual UiBot RPA platform. UiBot enables integration with Laiye’s native and third-party AI capabilities such as natural language processing, optical character recognition, computer vision, chatbot and machine learning.

“We are very bullish on China, and the opportunities there are massive,” said Lightspeed partner Amy Wu in an interview. “Laiye is doing phenomenally there, and with this new fundraise, they can look to expand globally,” she said.

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Hugging Face raises $15 million to build the definitive natural language processing library

Hugging Face has raised a $15 million funding round led by Lux Capital. The company first built a mobile app that let you chat with an artificial BFF, a sort of chatbot for bored teenagers. More recently, the startup released an open-source library for natural language processing applications. And that library has been massively successful.

A.Capital, Betaworks, Richard Socher, Greg Brockman, Kevin Durant and others are also participating in today’s funding round.

Hugging Face launched its original chatbot app back in early 2017. After months of work, the startup wanted to prove that chatbots don’t have to be a glorified command line interface for customer support.

With the app, you could generate a digital friend and text back and forth with your companion. And it wasn’t just about understanding what you meant — the app tried to detect your emotions to adapt answers based on your feelings.

It turns out that the technology behind that chatbot app is solid. As Brandon Reeves from Lux Capital wrote, there’s been a ton of progress when it comes to computer vision and image processing, but natural language processing has been lagging behind.

Hugging Face’s open-source framework Transformers has been downloaded over a million times. The GitHub project has amassed 19,000 stars, proving that the open-source community thinks this is a useful brick to build upon. Researchers at Google, Microsoft and Facebook have been playing around with it.

Some companies even use it in production, such as challenger bank Monzo for its customer support chatbot and Microsoft Bing. You can leverage Transformers for text classification, information extraction, summarization, text generation and conversational artificial intelligence.

With today’s funding round, the company plans to triple its headcount in New York and Paris.

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Eigen nabs $37M to help banks and others parse huge documents using natural language and ‘small data’

One of the bigger trends in enterprise software has been the emergence of startups building tools to make the benefits of artificial intelligence technology more accessible to non-tech companies. Today, one that has built a platform to apply the power of machine learning and natural language processing to massive documents of unstructured data has closed a round of funding as it finds strong demand for its approach.

Eigen Technologies, a London-based startup whose machine learning engine helps banks and other businesses that need to extract information and insights from large and complex documents like contracts, is today announcing that it has raised $37 million in funding, a Series B that values the company at around $150 million – $180 million.

The round was led by Lakestar and Dawn Capital, with Temasek and Goldman Sachs Growth Equity (which co-led its Series A) also participating. Eigen has now raised $55 million in total.

Eigen today is working primarily in the financial sector — its offices are smack in the middle of The City, London’s financial center — but the plan is to use the funding to continue expanding the scope of the platform to cover other verticals such as insurance and healthcare, two other big areas that deal in large, wordy documentation that is often inconsistent in how its presented, full of essential fine print, and typically a strain on an organisation’s resources to be handled correctly — and is often a disaster if it is not.

The focus up to now on banks and other financial businesses has had a lot of traction. It says its customer base now includes 25% of the world’s G-SIB institutions (that is, the world’s biggest banks), along with others that work closely with them, like Allen & Overy and Deloitte. Since June 2018 (when it closed its Series A round), Eigen has seen recurring revenues grow sixfold with headcount — mostly data scientists and engineers — double. While Eigen doesn’t disclose specific financials, you can see the growth direction that contributed to the company’s valuation.

The basic idea behind Eigen is that it focuses what co-founder and CEO Lewis Liu describes as “small data.” The company has devised a way to “teach” an AI to read a specific kind of document — say, a loan contract — by looking at a couple of examples and training on these. The whole process is relatively easy to do for a non-technical person: you figure out what you want to look for and analyse, find the examples using basic search in two or three documents and create the template, which can then be used across hundreds or thousands of the same kind of documents (in this case, a loan contract).

Eigen’s work is notable for two reasons. First, typically machine learning and training and AI requires hundreds, thousands, tens of thousands of examples to “teach” a system before it can make decisions that you hope will mimic those of a human. Eigen requires a couple of examples (hence the “small data” approach).

Second, an industry like finance has many pieces of sensitive data (either because it’s personal data, or because it’s proprietary to a company and its business), and so there is an ongoing issue of working with AI companies that want to “anonymise” and ingest that data. Companies simply don’t want to do that. Eigen’s system essentially only works on what a company provides, and that stays with the company.

Eigen was founded in 2014 by Dr. Lewis Z. Liu (CEO) and Jonathan Feuer (a managing partner at CVC Capital Partners, who is the company’s chairman), but its earliest origins go back 15 years earlier, when Liu — a first-generation immigrant who grew up in the U.S. — was working as a “data-entry monkey” (his words) at a tire manufacturing plant in New Jersey, where he lived, ahead of starting university at Harvard.

A natural computing whiz who found himself building his own games when his parents refused to buy him a games console, he figured out that the many pages of printouts he was reading and re-entering into a different computing system could be sped up with a computer program linking up the two. “I put myself out of a job,” he joked.

His educational life epitomises the kind of lateral thinking that often produces the most interesting ideas. Liu went on to Harvard to study not computer science, but physics and art. Doing a double major required working on a thesis that merged the two disciplines together, and Liu built “electrodynamic equations that composed graphical structures on the fly” — basically generating art using algorithms — which he then turned into a “Turing test” to see if people could detect pixelated actual work with that of his program. Distill this, and Liu was still thinking about patterns in analog material that could be re-created using math.

Then came years at McKinsey in London (how he arrived on these shores) during the financial crisis where the results of people either intentionally or mistakenly overlooking crucial text-based data produced stark and catastrophic results. “I would say the problem that we eventually started to solve for at Eigen became tangible,” Liu said.

Then came a physics PhD at Oxford where Liu worked on X-ray lasers that could be used to decrease the complexity and cost of making microchips, cancer treatments and other applications.

While Eigen doesn’t actually use lasers, some of the mathematical equations that Liu came up with for these have also become a part of Eigen’s approach.

“The whole idea [for my PhD] was, ‘how do we make this cheaper and more scalable?,’ ” he said. “We built a new class of X-ray laser apparatus, and we realised the same equations could be used in pattern matching algorithms, specifically around sequential patterns. And out of that, and my existing corporate relationships, that’s how Eigen started.”

Five years on, Eigen has added a lot more into the platform beyond what came from Liu’s original ideas. There are more data scientists and engineers building the engine around the basic idea, and customising it to work with more sectors beyond finance. 

There are a number of AI companies building tools for non-technical business end-users, and one of the areas that comes close to what Eigen is doing is robotic process automation, or RPA. Liu notes that while this is an important area, it’s more about reading forms more readily and providing insights to those. The focus of Eigen is more on unstructured data, and the ability to parse it quickly and securely using just a few samples.

Liu points to companies like IBM (with Watson) as general competitors, while startups like Luminance is another taking a similar approach to Eigen by addressing the issue of parsing unstructured data in a specific sector (in its case, currently, the legal profession).

Stephen Nundy, a partner and the CTO of Lakestar, said that he first came into contact with Eigen when he was at Goldman Sachs, where he was a managing director overseeing technology, and the bank engaged it for work.

“To see what these guys can deliver, it’s to be applauded,” he said. “They’re not just picking out names and addresses. We’re talking deep, semantic understanding. Other vendors are trying to be everything to everybody, but Eigen has found market fit in financial services use cases, and it stands up against the competition. You can see when a winner is breaking away from the pack and it’s a great signal for the future.”

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The founders of Robin Healthcare think doctors need smart assistants, too

Robin Healthcare, a new startup founded by serial entrepreneurs Noah Auerhahn and Emilio Galan, is hoping to harness the power of personal assistants to make the business of healthcare easier for the physicians who practice it.

The company’s technology, which works much the same way as a Google Home or Amazon Alexa or Echo, is placed in hospital rooms and transcribes and formats doctor interactions with patients to reduce paperwork and streamline the behind-the-scenes part of the process that can drive doctors to the point of distraction, the company’s co-founder said.

“I had a background doing claims data work in healthcare at UCSF finishing my clinical training,” says Galan. “And I was hearing lots of doctors telling me not to practice.”

The problem, says Galan, was the overabundance of paperwork. After school, Galan doubled down on his work in claims and billing, launching a company called HonestHealth, where he worked with institutions and companies, like The Robert Wood Johnson Foundation, Consumer Reports and the New York State Department of Health, to analyze healthcare claims data and develop consumer applications.

Galan met Auerhahn at the HLTH conference a few years ago just as Auerhahn was looking for his next challenge after the sale of his previous company, ExtraBux.

The two men saw the wave of smart devices coming and figured there must be a way to use the technology to build a fully billable clinical report from monitoring the conversations with patients.

The company currently has dozens of its smart devices installed in hospitals around the country, including a large surgical practice in Tennessee, the Campbell Clinic; Duke University Medical Center’s Private Diagnostic Clinic; the University of California San Francisco Medical Center; and Webster Orthopedics in Northern California.

Robin integrates with the major electronic health records companies, Epic and Cerner, through third-party integrations that are designed to make it easier to input data automatically as doctors are assessing a patient’s condition and delivering treatments.

Part of why Robin exists is to avoid technology interrupting care,” says Auerhahn. “Having fewer interactions with EMR is a good way to do that.”

Robin’s service is human-assisted natural language processing to make sure that the data is input correctly.

The company’s early vision has been enough to attract investors like Norwest Venture Partners, which led the company’s $11.5 million Series A round.

In all, Robin Healthcare has raised $15 million in financing. The company’s other investors include Social Leverage, the early-stage investment firm founded by Howard Lindzon.

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Battlefield winner Forethought adds tool to automate support ticket routing

Last year at this time, Forethought won the TechCrunch Disrupt Battlefield competition. A $9 million Series A investment followed last December. Today at TechCrunch Sessions: Enterprise in San Francisco, the company introduced the latest addition to its platform, called Agatha Predictions.

Forethought CEO and co-founder Deon Nicholas said that after launching its original product, Agatha Answers (to provide suggested answers to customer queries), customers were asking for help with the routing part of the process, as well. “We learned that there’s a whole front end of that problem before the ticket even gets to the agent,” he said. Forethought developed Agatha Predictions to help sort the tickets and get them to the most qualified agent to solve the problem.

“It’s effectively an entire tool that helps triage and route tickets. So when a ticket is coming in, it can predict whether it’s a high-priority or low-priority ticket and which agent is best qualified to handle this question. And this all happens before the agent even touches the ticket. This really helps drive efficiencies across the organization by helping to reduce triage time,” Nicholas explained.

The original product (Agatha Answers) is designed to help agents get answers more quickly and reduce the amount of time it takes to resolve an issue. “It’s a tool that integrates into your Help Desk software, indexes your past support tickets, knowledge base articles and other [related content]. Then we give agents suggested answers to help them close questions with reduced handle time,” Nicholas said.

He says that Agatha Predictions is based on the same underlying AI engine as Agatha Answers. Both use Natural Language Understanding (NLU) developed by the company. “We’ve been building out our product, and the Natural Language Understanding engine, the engine behind the system, works in a very similar manner [across our products]. So as a ticket comes in the AI reads it, understands what the customer is asking about, and understands the semantics, the words being used,” he explained. This enables them to automate the routing and supply a likely answer for the issue involved.

Nicholas maintains that winning Battlefield gave his company a jump start and a certain legitimacy it lacked as an early-stage startup. Lots of customers came knocking after the event, as did investors. The company has grown from five employees when it launched last year at TechCrunch Disrupt to 20 today.

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Ment.io wants to help your team make decisions

Getting even the most well-organized team to agree on anything can be hard. Tel Aviv’s Ment.io, formerly known as Epistema, wants to make this process easier by applying smart design and a dose of machine learning to streamline the decision-making process.

Like with so many Israeli startups, Ment.io’s co-founders Joab Rosenberg and Tzvika Katzenelson got their start in Israel’s intelligence service. Indeed, Rosenberg spent 25 years in the intelligence service, where his final role was that of the deputy head analyst. “Our story starts from there, because we had the responsibility of gathering the knowledge of a thousand analysts, surrounded by tens of thousands of collection unit soldiers,” Katzenelson, who is Ment.io’s CRO, told me. He noted that the army had turned decision making into a form of art. But when the founders started looking at the tech industry, they found a very different approach to decision making — and one that they thought needed to change.

If there’s one thing the software industry has, it’s data and analytics. These days, the obvious thing to do with all of that information is to build machine learning models, but Katzenelson (rightly) argues that these models are essentially black boxes. “Data does not speak for itself. Correlations that you may find in the data are certainly not causations,” he said. “Every time you send analysts into the data, they will come up with some patterns that may mislead you.”

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So Ment.io is trying to take a very different approach. It uses data and machine learning, but it starts with questions and people. The service actually measures the level of expertise and credibility every team member has around a given topic. “One of the crazy things we’re doing is that for every person, we’re creating their cognitive matrix. We’re able to tell you within the context of your organization how believable you are, how balanced you are, how clearly you are being perceived by your counterparts, because we are gathering all of your clarification requests and every time a person challenges you with something.”Ment1

At its core, Ment.io is basically an internal Q&A service. Anybody can pose questions and anybody can answer them with any data source or supporting argument they may have.

“We’re doing structuring,” Katzenelson explained. “And that’s basically our philosophy: knowledge is just arguments and counterarguments. And the more structure you can put in place, the more logic you can apply.”

In a sense, the company is doing this because natural language processing (NLP) technology isn’t yet able to understand the nuances of a discussion.Ment6If you’re anything like me, though, the last thing you want is to have to use yet another SaaS product at work. The Ment.io team is quite aware of that and has built a deep integration with Slack already and is about to launch support for Microsoft Teams in the next few days, which doesn’t come as a surprise, given that the team has participated in the Microsoft ScaleUp accelerator program.

The overall idea here, Katzenelson explained, is to provide a kind of intelligence layer on top of tools like Slack and Teams that can capture a lot of the institutional knowledge that is now often shared in relatively ephemeral chats.

Ment.io is the first Israeli company to raise funding from Peter Thiel’s late-stage fund, as well as from the Slack Fund, which surely creates some interesting friction, given the company’s involvement with both Slack and Microsoft, but Katzenelson argues that this is not actually a problem.

Microsoft is also a current Ment.io customer, together with the likes of Intel, Citibank and Fiverr.

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A guide to Virtual Beings and how they impact our world

Money from big tech companies and top VC firms is flowing into the nascent “virtual beings” space. Mixing the opportunities presented by conversational AI, generative adversarial networks, photorealistic graphics, and creative development of fictional characters, “virtual beings” envisions a near-future where characters (with personalities) that look and/or sound exactly like humans are part of our day-to-day interactions.

Last week in San Francisco, entrepreneurs, researchers, and investors convened for the first Virtual Beings Summit, where organizer and Fable Studio CEO Edward Saatchi announced a grant program. Corporates like Amazon, Apple, Google, and Microsoft are pouring resources into conversational AI technology, chip-maker Nvidia and game engines Unreal and Unity are advancing real-time ray tracing for photorealistic graphics, and in my survey of media VCs one of the most common interests was “virtual influencers”.

The term “virtual beings” gets used as a catch-all categorization of activities that overlap here. There are really three separate fields getting conflated though:

  1. Virtual Companions
  2. Humanoid Character Creation
  3. Virtual Influencers

These can overlap — there are humanoid virtual influencers for example — but they represent separate challenges, separate business opportunities, and separate societal concerns. Here’s a look at these fields, including examples from the Virtual Beings Summit, and how they collectively comprise this concept of virtual beings:

Virtual companions

Virtual companions are conversational AI that build a unique 1-to-1 relationship with us, whether to provide friendship or utility. A virtual companion has personality, gauges the personality of the user, retains memory of prior conversations, and uses all that to converse with humans like a fellow human would. They seem to exist as their own being even if we rationally understand they are not.

Virtual companions can exist across 4 formats:

  1. Physical presence (Robotics)
  2. Interactive visual media (social media, gaming, AR/VR)
  3. Text-based messaging
  4. Interactive voice

While pop culture depictions of this include Her and Ex Machina, nascent real-world examples are virtual friend bots like Hugging Face and Replika as well as voice assistants like Amazon’s Alexa and Apple’s Siri. The products currently on the market aren’t yet sophisticated conversationalists or adept at engaging with us as emotional creatures but they may not be far off from that.

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Lexion raises $4.2M to bring AI to contract management

Contract management isn’t exactly an exciting subject, but it’s a real pain point for many companies. It also lends itself to automation, thanks to recent advances in machine learning and natural language processing. It’s no surprise then, that we see renewed interest in this space and that investors are putting more money into it. Earlier this week, Icertis raised a $115 million Series E round, for example, at a valuation of more than $1 billion. Icertis has been in this business for 10 years, though. On the other end of the spectrum, contract management startup Lexion today announced that it has raised a $4.2 million seed round led by Madrona Venture Group and law firm Wilson Sonsini Goodrich & Rosati, which was also one of the first users of the product.

Lexion was incubated at the Allen Institute for Artificial Intelligence (AI2), one of the late Microsoft co-founders’ four scientific research institutes. The company’s co-founder and CEO, Gaurav Oberoi, is a bit of a serial entrepreneur, whose first startup, BillMonk, was first featured on TechCrunch back in 2006. His second go-around was Precision Polling, which SurveyMonkey then acquired shortly after it launched. Oberoi founded the company together with former Microsoft research software development engineering lead Emad Elwany and engineering veteran James Baird.

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“Gaurav, Emad, and James are just the kind of entrepreneurs we love to back: smart, customer obsessed and attacking a big market with cutting-edge technology,” said Madrona Venture Group managing director Tim Porter. “AI2 is turning out some of the best applied machine learning solutions, and contract management is a perfect example — it’s a huge issue for companies at every size and the demand for visibility into contracts is only increasing as companies face growing regulatory and compliance pressures.”

Contract management is becoming a bit of a crowded space, though, something Oberoi acknowledged. But he argues that Lexion is tackling a different market from many of its competitors.

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“We think there’s growing demand and a big opportunity in the mid-market,” he said. “I think similar to how back in the 2000s, Siebel or other companies offered very expensive CRM software and now you have Salesforce — and now Salesforce is the expensive version — and you have this long tail of products in the mid-market. I think the same is happening to contracts. […] We’re working with companies that are as small as post-seed or post-Series A to a publicly traded company.”

Given that it handles plenty of highly confidential information, it’s no surprise that Lexion says that it takes security very seriously. “I think, something that all young startups that are selling into business or enterprise in 2019 need to address upfront,” Oberoi said. “We realized, even before we raised funding and got very serious about growing this business, that security has to be part of our DNA and culture from the get-go.” He also noted that every new feature and product iteration at Lexion goes through a security review.

Like most startups at this stage, Lexion plans to invest the new funding into building out its product — and especially its AI engine — and go-to-market and sales strategy.

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Cathay Innovation leads Laiye’s $35M round to bet on Chinese enterprise IT

For many years, the boom and bust of China’s tech landscape have centered around consumer-facing products. As this space gets filled by Baidu, Alibaba, Tencent, and more recently Didi Chuxing, Meituan Dianping, and ByteDance, entrepreneurs and investors are shifting attention to business applications.

One startup making waves in China’s enterprise software market is four-year-old Laiye, which just raised a $35 million Series B round led by cross-border venture capital firm Cathay Innovation. Existing backers Wu Capital, a family fund, and Lightspeed China Partners, whose founding partner James Mi has been investing in every round of Laiye since Pre-A, also participated in this Series B.

The deal came on the heels of Laiye’s merger with Chinese company Awesome Technology, a team that’s spent the last 18 years developing Robotic Process Automation, a term for technology that lets organizations offload repetitive tasks like customer service onto machines. With this marriage, Laiye officially launched its RPA product UiBot to compete in the nascent and fast-growing market for streamlining workflow.

“There was a wave of B2C [business-to-consumer] in China, and now we believe enterprise software is about to grow rapidly,” Denis Barrier, co-founder and chief executive officer of Cathay Innovation, told TechCrunch over a phone interview.

Since launching in January, UiBot has collected some 300,000 downloads and 6,000 registered enterprise users. Its clients include major names such as Nike, Walmart, Wyeth, China Mobile, Ctrip and more.

Guanchun Wang, chairman and CEO of Laiye, believes there are synergies between AI-enabled chatbots and RPA solutions, as the combination allows business clients “to build bots with both brains and hands so as to significantly improve operational efficiency and reduce labor costs,” he said.

When it comes to market size, Barrier believes RPA in China will be a new area of growth. For one, Chinese enterprises, with a shorter history than those found in developed economies, are less hampered by legacy systems, which makes it “faster and easier to set up new corporate software,” the investor observed. There’s also a lot more data being produced in China given the population of organizations, which could give Chinese RPA a competitive advantage.

“You need data to train the machine. The more data you have, the better your algorithms become provided you also have the right data scientists as in China,” Barrier added.

However, the investor warned that the exact timing of RPA adoption by people and customers is always not certain, even though the product is ready.

Laiye said it will use the proceeds to recruit talents for research and development as well as sales of its RPA products. The startup will also work on growing its AI capabilities beyond natural language processing, deep learning, and reinforcement learning, in addition to accelerating commercialization of its robotic solutions across industries.

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