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Nine lessons on how Niantic reached a $4B valuation

We’ve captured much of Niantic’s ongoing story in the first three parts of our EC-1, from its beginnings as an “entrepreneurial lab” within Google, to its spin-out as an independent company and the launch of Pokémon GO, to its ongoing focus on becoming a platform for others to build augmented reality products upon.

It’s not an origin story that serves as an easily replicable blueprint — but if we zoom out a bit, what’s to be learned?

A few key themes stuck with me as I researched Niantic’s story so far. Some of them – like the challenges involved with moving millions of users around the real world – are unique to this new augmented reality that Niantic is helping to create. Others – like that scaling is damned hard – are well-understood startup norms, but interesting to see from the perspective of an experienced team dealing with a product launch that went from zero to 100 real quick.

The reading time for this article is 21 minutes (5,125 words).

Build on top of what works best

Everything Niantic has built so far is an evolution of what the team had built before it. Each major step on Niantic’s path has a clear footprint that precedes it; a chunk of DNA that proved advantageous, and is carried along into the next thing.

Looking back, it’s a cycle we can see play out on repeat: build a thing, identify what works about it, trim the extra bits, then build a new thing from that foundation.

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How do you hire a great growth marketer?

Julian Shapiro
Contributor

Julian Shapiro is the founder of BellCurve.com, a growth marketing agency that trains you to become a marketing professional. He also writes at Julian.com.

Editors Note: This article is part of a series that explores the world of growth marketing for founders. If you’ve worked with an amazing growth marketing agency, nominate them to be featured in our shortlist of top growth marketing agencies in tech.

Startups often set themselves back a year by hiring the wrong growth marketer.

This post shares a framework my marketing agency uses to source and vet high-potential growth candidates.

With it, early-stage startups can identify and attract a great first growth hire.

It’ll also help you avoid unintentionally hiring candidates who lack broad competency. Some marketers master 1-2 channels, but aren’t experts at much else. When hiring your first growth marketer, you should aim for a generalist.

This post covers two key areas:

  1. How I find growth candidates.
  2. How I identify which candidates are legitimately talented.

Great marketers are often founders

One interesting way to find great marketers is to look for great potential founders.

Let me explain. Privately, most great marketers admit that their motive for getting hired was to gain a couple years’ experience they could use to start their own company.

Don’t let that scare you. Leverage it: You can sidestep the competitive landscape for marketing talent by recruiting past founders whose startups have recently failed.

Why do this? Because great founders and great growth marketers are often one and the same. They’re multi-disciplinary executors, they take ownership and they’re passionate about product.

You see, a marketing role with sufficient autonomy mimics the role of a founder: In both, you hustle to acquire users and optimize your product to retain them. You’re working across growth, brand, product and data.

As a result, struggling founders wanting a break from the startup roller coaster often find transitioning to a growth marketing role to be a natural segue.

How do we find these high-potential candidates?

Finding founders

To find past founders, you could theoretically monitor the alumni lists of incubators like Y Combinator and Techstars to see which companies never succeeded. Then you can reach out to their first-time founders.

You can also identify future founders: Browse Product Hunt and Indie Hackers for old projects that showed great marketing skill but didn’t succeed.

There are thousands of promising founders who’ve left a mark on the web. Their failure is not necessarily indicative of incompetence. My agency’s co-founders and directors, including myself, all failed at founding past companies.

How do I attract candidates?

To get potential founders interested in the day-to-day of your marketing role, offer them both breadth and autonomy:

  • Let them be involved in many things.
  • Let them be fully in charge of a few things.

Remember, recreate the experience of being a founder.

Further, vet their enthusiasm for your product, market and its product-channel fit:

  • Product and market: Do their interests line up with how your product impacts its users? For example, do they care more about connecting people through social networks, or about solving productivity problems through SaaS? And which does your product line up with?
  • Product-channel fit: Are they excited to run the acquisition channels that typically succeed in your market?

The latter is a little-understood but critically important requirement: Hire marketers who are interested in the channels your company actually needs.

Let’s illustrate this with a comparison between two hypothetical companies:

  1. A B2B enterprise SaaS app.
  2. An e-commerce company that sells mattresses.

Broadly speaking, the enterprise app will most likely succeed through the following customer acquisition channels: sales, offline networking, Facebook desktop ads and Google Search.

In contrast, the e-commerce company will most likely succeed through Instagram ads, Facebook mobile ads, Pinterest ads and Google Shopping ads.

We can narrow it even further: In practice, most companies only get one or two of their potential channels to work profitably and at scale.

Meaning, most companies have to develop deep expertise in just a couple of channels.

There are enterprise marketers who can run cold outreach campaigns on autopilot. But, many have neither the expertise nor the interest to run, say, Pinterest ads. So if you’ve determined Pinterest is a high-leverage ad channel for your business, you’d be mistaken to assume that an enterprise marketer’s cold outreach skills seamlessly translate to Pinterest ads.

Some channels take a year or longer to master. And mastering one channel doesn’t necessarily make you any better at the next. Pinterest, for example, relies on creative design. Cold email outreach relies on copywriting and account-based marketing.

(How do you identify which ad channels are most likely to work for your company? Read my Extra Crunch article for a breakdown.)

To summarize: To attract the right marketers, identify those who are interested in not only your product but also how your product is sold.

Other approaches

The founder-first approach I’ve shared is just one of many ways my agency recruits great marketers. The point is to remind you that great candidates are sometimes a small career pivot away from being your perfect hire. You don’t have to look in the typical places when your budget is tight and you want to hire someone with high, senior potential.

This is especially relevant for early-stage, bootstrapping startups.

If you have the foresight to recognize these high-potential candidates, you can hopefully hire both better and cheaper. Plus, you empower someone to level up their career.

Speaking of which, here are other ways to hire talent whose potential hasn’t been fully realized:

  • Find deep specialists (e.g. Facebook Ads experts) and offer them an opportunity to learn complementary skills with a more open-ended, strategic role. (You can help train them with my growth guide.)
  • Poach experienced junior marketers from a company in your space by offering senior roles.
  • Hire candidates from top growth marketing schools.

Vetting growth marketers

If you don’t yet have a growth candidate to vet, you can stop reading here. Bookmark this and return when you do!

Now that you have a candidate, how do you assess whether they’re legitimately talented?

At Bell Curve, we ask our most promising leads to incrementally complete three projects:

  • Create Facebook and Instagram ads to send traffic to our site. This showcases their low-level, tactical skills.
  • Walk us through a methodology for optimizing our site’s conversion rate. This showcases their process-driven approach to generating growth ideas. Process is everything.
  • Ideate and prioritize customer acquisition strategies for our company. This showcases their ability to prioritize high-leverage projects and see the big picture.

We allow a week to complete these projects. And we pay them market wage.

Here’s what we’re looking for when we assess their work.

Level 1: Basics

First — putting their work aside — we assess the dynamics of working with them. Are they:

  • Competent: Can they follow instructions and understand nuance?
  • Reliable: Will they hit deadlines without excuses?
  • Communicative: Will they proactively clarify unclear things?
  • Kind: Do they have social skills?

If they follow our instructions and do a decent job, they’re competent. If they hit our deadline, they’re probably reliable. If they ask good questions, they’re communicative.

And if we like talking to them, they’re kind.

Level 2: Capabilities

A level higher, we use these projects to assess their ability to contribute to the company:

  • Do they have a process for generating and prioritizing good ideas? 
    • Did their process result in multiple worthwhile ad and landing page ideas? We’re assessing their process more so than their output. A great process leads to generating quality ideas forever.
    • Resources are always limited. One of the most important jobs of a growth marketer is to ensure growth resources are focused on the right opportunities. I’m looking for a candidate that has a process for identifying, evaluating and prioritizing growth opportunities.
  • Can they execute on those ideas? 
    • Did they create ads and propose A/B tests thoughtfully? Did they identify the most compelling value propositions, write copy enticingly and target audiences that make sense?
    • Have they achieved mastery of 1-2 acquisition channels (ideally, the channels your company is dependent on to scale)? I don’t expect anyone to be an expert in all channels, but deep knowledge of at least a couple of channels is key for an early-stage startup making their first growth hire.

If you don’t have the in-house expertise to assess their growth skills, you can pay an experienced marketer to assess their work. It’ll cost you a couple hundred bucks, and give you peace of mind. Look on Upwork for someone, or ask a marketer at a friend’s company.

Recap

  • If you’re an early-stage company with a tight budget, there are creative ways to source high-potential growth talent.
  • Assess that talent on their product fit and market fit for your company. Do they actually want to work on the channels needed for your business to succeed?
  • Give them a week-long sample project. Assess their ability to generate ideas and prioritize them.

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Fabula AI is using social spread to spot ‘fake news’

UK startup Fabula AI reckons it’s devised a way for artificial intelligence to help user generated content platforms get on top of the disinformation crisis that keeps rocking the world of social media with antisocial scandals.

Even Facebook’s Mark Zuckerberg has sounded a cautious note about AI technology’s capability to meet the complex, contextual, messy and inherently human challenge of correctly understanding every missive a social media user might send, well-intentioned or its nasty flip-side.

“It will take many years to fully develop these systems,” the Facebook founder wrote two years ago, in an open letter discussing the scale of the challenge of moderating content on platforms thick with billions of users. “This is technically difficult as it requires building AI that can read and understand news.”

But what if AI doesn’t need to read and understand news in order to detect whether it’s true or false?

Step forward Fabula, which has patented what it dubs a “new class” of machine learning algorithms to detect “fake news” — in the emergent field of “Geometric Deep Learning”; where the datasets to be studied are so large and complex that traditional machine learning techniques struggle to find purchase on this ‘non-Euclidean’ space.

The startup says its deep learning algorithms are, by contrast, capable of learning patterns on complex, distributed data sets like social networks. So it’s billing its technology as a breakthrough. (Its written a paper on the approach which can be downloaded here.)

It is, rather unfortunately, using the populist and now frowned upon badge “fake news” in its PR. But it says it’s intending this fuzzy umbrella to refer to both disinformation and misinformation. Which means maliciously minded and unintentional fakes. Or, to put it another way, a photoshopped fake photo or a genuine image spread in the wrong context.

The approach it’s taking to detecting disinformation relies not on algorithms parsing news content to try to identify malicious nonsense but instead looks at how such stuff spreads on social networks — and also therefore who is spreading it.

There are characteristic patterns to how ‘fake news’ spreads vs the genuine article, says Fabula co-founder and chief scientist, Michael Bronstein.

“We look at the way that the news spreads on the social network. And there is — I would say — a mounting amount of evidence that shows that fake news and real news spread differently,” he tells TechCrunch, pointing to a recent major study by MIT academics which found ‘fake news’ spreads differently vs bona fide content on Twitter.

“The essence of geometric deep learning is it can work with network-structured data. So here we can incorporate heterogenous data such as user characteristics; the social network interactions between users; the spread of the news itself; so many features that otherwise would be impossible to deal with under machine learning techniques,” he continues.

Bronstein, who is also a professor at Imperial College London, with a chair in machine learning and pattern recognition, likens the phenomenon Fabula’s machine learning classifier has learnt to spot to the way infectious disease spreads through a population.

“This is of course a very simplified model of how a disease spreads on the network. In this case network models relations or interactions between people. So in a sense you can think of news in this way,” he suggests. “There is evidence of polarization, there is evidence of confirmation bias. So, basically, there are what is called echo chambers that are formed in a social network that favor these behaviours.”

“We didn’t really go into — let’s say — the sociological or the psychological factors that probably explain why this happens. But there is some research that shows that fake news is akin to epidemics.”

The tl;dr of the MIT study, which examined a decade’s worth of tweets, was that not only does the truth spread slower but also that human beings themselves are implicated in accelerating disinformation. (So, yes, actual human beings are the problem.) Ergo, it’s not all bots doing all the heavy lifting of amplifying junk online.

The silver lining of what appears to be an unfortunate quirk of human nature is that a penchant for spreading nonsense may ultimately help give the stuff away — making a scalable AI-based tool for detecting ‘BS’ potentially not such a crazy pipe-dream.

Although, to be clear, Fabula’s AI remains in development at this stage, having been tested internally on Twitter data sub-sets at this stage. And the claims it’s making for its prototype model remain to be commercially tested with customers in the wild using the tech across different social platforms.

It’s hoping to get there this year, though, and intends to offer an API for platforms and publishers towards the end of this year. The AI classifier is intended to run in near real-time on a social network or other content platform, identifying BS.

Fabula envisages its own role, as the company behind the tech, as that of an open, decentralised “truth-risk scoring platform” — akin to a credit referencing agency just related to content, not cash.

Scoring comes into it because the AI generates a score for classifying content based on how confident it is it’s looking at a piece of fake vs true news.

A visualisation of a fake vs real news distribution pattern; users who predominantly share fake news are coloured red and users who don’t share fake news at all are coloured blue — which Fabula says shows the clear separation into distinct groups, and “the immediately recognisable difference in spread pattern of dissemination”.

In its own tests Fabula says its algorithms were able to identify 93 percent of “fake news” within hours of dissemination — which Bronstein claims is “significantly higher” than any other published method for detecting ‘fake news’. (Their accuracy figure uses a standard aggregate measurement of machine learning classification model performance, called ROC AUC.)

The dataset the team used to train their model is a subset of Twitter’s network — comprised of around 250,000 users and containing around 2.5 million “edges” (aka social connections).

For their training dataset Fabula relied on true/fake labels attached to news stories by third party fact checking NGOs, including Snopes and PolitiFact. And, overall, pulling together the dataset was a process of “many months”, according to Bronstein, He also says that around a thousand different stories were used to train the model, adding that the team is confident the approach works on small social networks, as well as Facebook-sized mega-nets.

Asked whether he’s sure the model hasn’t been trained to identified patterns caused by bot-based junk news spreaders, he says the training dataset included some registered (and thus verified ‘true’) users.

“There is multiple research that shows that bots didn’t play a significant amount [of a role in spreading fake news] because the amount of it was just a few percent. And bots can be quite easily detected,” he also suggests, adding: “Usually it’s based on some connectivity analysis or content analysis. With our methods we can also detect bots easily.”

To further check the model, the team tested its performance over time by training it on historical data and then using a different split of test data.

“While we see some drop in performance it is not dramatic. So the model ages well, basically. Up to something like a year the model can still be applied without any re-training,” he notes, while also saying that, when applied in practice, the model would be continually updated as it keeps digesting (ingesting?) new stories and social media content.

Somewhat terrifyingly, the model could also be used to predict virality, according to Bronstein — raising the dystopian prospect of the API being used for the opposite purpose to that which it’s intended: i.e. maliciously, by fake news purveyors, to further amp up their (anti)social spread.

“Potentially putting it into evil hands it might do harm,” Bronstein concedes. Though he takes a philosophical view on the hyper-powerful double-edged sword of AI technology, arguing such technologies will create an imperative for a rethinking of the news ecosystem by all stakeholders, as well as encouraging emphasis on user education and teaching critical thinking.

Let’s certainly hope so. And, on the educational front, Fabula is hoping its technology can play an important role — by spotlighting network-based cause and effect.

“People now like or retweet or basically spread information without thinking too much or the potential harm or damage they’re doing to everyone,” says Bronstein, pointing again to the infectious diseases analogy. “It’s like not vaccinating yourself or your children. If you think a little bit about what you’re spreading on a social network you might prevent an epidemic.”

So, tl;dr, think before you RT.

Returning to the accuracy rate of Fabula’s model, while ~93 per cent might sound pretty impressive, if it were applied to content on a massive social network like Facebook — which has some 2.3BN+ users, uploading what could be trillions of pieces of content daily — even a seven percent failure rate would still make for an awful lot of fakes slipping undetected through the AI’s net.

But Bronstein says the technology does not have to be used as a standalone moderation system. Rather he suggests it could be used in conjunction with other approaches such as content analysis, and thus function as another string on a wider ‘BS detector’s bow.

It could also, he suggests, further aid human content reviewers — to point them to potentially problematic content more quickly.

Depending on how the technology gets used he says it could do away with the need for independent third party fact-checking organizations altogether because the deep learning system can be adapted to different use cases.

Example use-cases he mentions include an entirely automated filter (i.e. with no human reviewer in the loop); or to power a content credibility ranking system that can down-weight dubious stories or even block them entirely; or for intermediate content screening to flag potential fake news for human attention.

Each of those scenarios would likely entail a different truth-risk confidence score. Though most — if not all — would still require some human back-up. If only to manage overarching ethical and legal considerations related to largely automated decisions. (Europe’s GDPR framework has some requirements on that front, for example.)

Facebook’s grave failures around moderating hate speech in Myanmar — which led to its own platform becoming a megaphone for terrible ethnical violence — were very clearly exacerbated by the fact it did not have enough reviewers who were able to understand (the many) local languages and dialects spoken in the country.

So if Fabula’s language-agnostic propagation and user focused approach proves to be as culturally universal as its makers hope, it might be able to raise flags faster than human brains which lack the necessary language skills and local knowledge to intelligently parse context.

“Of course we can incorporate content features but we don’t have to — we don’t want to,” says Bronstein. “The method can be made language independent. So it doesn’t matter whether the news are written in French, in English, in Italian. It is based on the way the news propagates on the network.”

Although he also concedes: “We have not done any geographic, localized studies.”

“Most of the news that we take are from PolitiFact so they somehow regard mainly the American political life but the Twitter users are global. So not all of them, for example, tweet in English. So we don’t yet take into account tweet content itself or their comments in the tweet — we are looking at the propagation features and the user features,” he continues.

“These will be obviously next steps but we hypothesis that it’s less language dependent. It might be somehow geographically varied. But these will be already second order details that might make the model more accurate. But, overall, currently we are not using any location-specific or geographic targeting for the model.

“But it will be an interesting thing to explore. So this is one of the things we’ll be looking into in the future.”

Fabula’s approach being tied to the spread (and the spreaders) of fake news certainly means there’s a raft of associated ethical considerations that any platform making use of its technology would need to be hyper sensitive to.

For instance, if platforms could suddenly identify and label a sub-set of users as ‘junk spreaders’ the next obvious question is how will they treat such people?

Would they penalize them with limits — or even a total block — on their power to socially share on the platform? And would that be ethical or fair given that not every sharer of fake news is maliciously intending to spread lies?

What if it turns out there’s a link between — let’s say — a lack of education and propensity to spread disinformation? As there can be a link between poverty and education… What then? Aren’t your savvy algorithmic content downweights risking exacerbating existing unfair societal divisions?

Bronstein agrees there are major ethical questions ahead when it comes to how a ‘fake news’ classifier gets used.

“Imagine that we find a strong correlation between the political affiliation of a user and this ‘credibility’ score. So for example we can tell with hyper-ability that if someone is a Trump supporter then he or she will be mainly spreading fake news. Of course such an algorithm would provide great accuracy but at least ethically it might be wrong,” he says when we ask about ethics.

He confirms Fabula is not using any kind of political affiliation information in its model at this point — but it’s all too easy to imagine this sort of classifier being used to surface (and even exploit) such links.

“What is very important in these problems is not only to be right — so it’s great of course that we’re able to quantify fake news with this accuracy of ~90 percent — but it must also be for the right reasons,” he adds.

The London-based startup was founded in April last year, though the academic research underpinning the algorithms has been in train for the past four years, according to Bronstein.

The patent for their method was filed in early 2016 and granted last July.

They’ve been funded by $500,000 in angel funding and about another $500,000 in total of European Research Council grants plus academic grants from tech giants Amazon, Google and Facebook, awarded via open research competition awards.

(Bronstein confirms the three companies have no active involvement in the business. Though doubtless Fabula is hoping to turn them into customers for its API down the line. But he says he can’t discuss any potential discussions it might be having with the platforms about using its tech.)

Focusing on spotting patterns in how content spreads as a detection mechanism does have one major and obvious drawback — in that it only works after the fact of (some) fake content spread. So this approach could never entirely stop disinformation in its tracks.

Though Fabula claims detection is possible within a relatively short time frame — of between two and 20 hours after content has been seeded onto a network.

“What we show is that this spread can be very short,” he says. “We looked at up to 24 hours and we’ve seen that just in a few hours… we can already make an accurate prediction. Basically it increases and slowly saturates. Let’s say after four or five hours we’re already about 90 per cent.”

“We never worked with anything that was lower than hours but we could look,” he continues. “It really depends on the news. Some news does not spread that fast. Even the most groundbreaking news do not spread extremely fast. If you look at the percentage of the spread of the news in the first hours you get maybe just a small fraction. The spreading is usually triggered by some important nodes in the social network. Users with many followers, tweeting or retweeting. So there are some key bottlenecks in the network that make something viral or not.”

A network-based approach to content moderation could also serve to further enhance the power and dominance of already hugely powerful content platforms — by making the networks themselves core to social media regulation, i.e. if pattern-spotting algorithms rely on key network components (such as graph structure) to function.

So you can certainly see why — even above a pressing business need — tech giants are at least interested in backing the academic research. Especially with politicians increasingly calling for online content platforms to be regulated like publishers.

At the same time, there are — what look like — some big potential positives to analyzing spread, rather than content, for content moderation purposes.

As noted above, the approach doesn’t require training the algorithms on different languages and (seemingly) cultural contexts — setting it apart from content-based disinformation detection systems. So if it proves as robust as claimed it should be more scalable.

Though, as Bronstein notes, the team have mostly used U.S. political news for training their initial classifier. So some cultural variations in how people spread and react to nonsense online at least remains a possibility.

A more certain challenge is “interpretability” — aka explaining what underlies the patterns the deep learning technology has identified via the spread of fake news.

While algorithmic accountability is very often a challenge for AI technologies, Bronstein admits it’s “more complicated” for geometric deep learning.

“We can potentially identify some features that are the most characteristic of fake vs true news,” he suggests when asked whether some sort of ‘formula’ of fake news can be traced via the data, noting that while they haven’t yet tried to do this they did observe “some polarization”.

“There are basically two communities in the social network that communicate mainly within the community and rarely across the communities,” he says. “Basically it is less likely that somebody who tweets a fake story will be retweeted by somebody who mostly tweets real stories. There is a manifestation of this polarization. It might be related to these theories of echo chambers and various biases that exist. Again we didn’t dive into trying to explain it from a sociological point of view — but we observed it.”

So while, in recent years, there have been some academic efforts to debunk the notion that social media users are stuck inside filter bubble bouncing their own opinions back at them, Fabula’s analysis of the landscape of social media opinions suggests they do exist — albeit, just not encasing every Internet user.

Bronstein says the next steps for the startup is to scale its prototype to be able to deal with multiple requests so it can get the API to market in 2019 — and start charging publishers for a truth-risk/reliability score for each piece of content they host.

“We’ll probably be providing some restricted access maybe with some commercial partners to test the API but eventually we would like to make it useable by multiple people from different businesses,” says requests. “Potentially also private users — journalists or social media platforms or advertisers. Basically we want to be… a clearing house for news.”

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Minds, the blockchain-based social network, grabs a $6M Series A

Minds, a decentralized social network, has raised $6 million in Series A funding from Medici Ventures, Overstock.com’s venture arm. Overstock CEO Patrick Byrne will join the Minds Board of Directors.

What is a decentralized social network? The creators, who originally crowdfunded their product, see it as an anti-surveillance, anti-censorship, and anti-“big tech” platform that ensures that no one party controls your online presence. And Minds is already seeing solid movement.

“In June 2018, Minds saw an enormous uptick in new Vietnamese of hundreds of thousands users as a direct response to new laws in the country implementing an invasive ‘cybersecurity’ law which included uninhibited access to user data on social networks like Facebook and Google (who are complying so far) and the ability to censor user content,” said Minds founder Bill Ottman.

“There has been increasing excitement in recent years over the power of blockchain technology to liberate individuals and organizations,” said Byrne. “Minds’ work employing blockchain technology as a social media application is the next great innovation toward the mainstream use of this world-changing technology.”

Interestingly, Minds is a model for the future of hybrid investing, a process of raising some cash via token and raising further cash via VC. This model ensures a level of independence from investors but also allows expertise and experience to presumably flow into the company.

Ottman, for his part, just wants to build something revolutionary.

“The rise of an open source, encrypted and decentralized social network is crucial to combat the big-tech monopolies that have abused and ignored users for years. With systemic data breaches, shadow-banning and censorship, people over the world are demanding a digital revolution. User-safety, fair economies, and global freedom of expression depend on it – we are all in this battle together,” said Ottman.

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Openbook is the latest dream of a digital life beyond Facebook

As tech’s social giants wrestle with antisocial demons that appear to be both an emergent property of their platform power, and a consequence of specific leadership and values failures (evident as they publicly fail to enforce even the standards they claim to have), there are still people dreaming of a better way. Of social networking beyond outrage-fuelled adtech giants like Facebook and Twitter.

There have been many such attempts to build a ‘better’ social network of course. Most have ended in the deadpool. A few are still around with varying degrees of success/usage (Snapchat, Ello and Mastodon are three that spring to mine). None has usurped Zuckerberg’s throne of course.

This is principally because Facebook acquired Instagram and WhatsApp. It has also bought and closed down smaller potential future rivals (tbh). So by hogging network power, and the resources that flow from that, Facebook the company continues to dominate the social space. But that doesn’t stop people imagining something better — a platform that could win friends and influence the mainstream by being better ethically and in terms of functionality.

And so meet the latest dreamer with a double-sided social mission: Openbook.

The idea (currently it’s just that; a small self-funded team; a manifesto; a prototype; a nearly spent Kickstarter campaign; and, well, a lot of hopeful ambition) is to build an open source platform that rethinks social networking to make it friendly and customizable, rather than sticky and creepy.

Their vision to protect privacy as a for-profit platform involves a business model that’s based on honest fees — and an on-platform digital currency — rather than ever watchful ads and trackers.

There’s nothing exactly new in any of their core ideas. But in the face of massive and flagrant data misuse by platform giants these are ideas that seem to sound increasingly like sense. So the element of timing is perhaps the most notable thing here — with Facebook facing greater scrutiny than ever before, and even taking some hits to user growth and to its perceived valuation as a result of ongoing failures of leadership and a management philosophy that’s been attacked by at least one of its outgoing senior execs as manipulative and ethically out of touch.

The Openbook vision of a better way belongs to Joel Hernández who has been dreaming for a couple of years, brainstorming ideas on the side of other projects, and gathering similarly minded people around him to collectively come up with an alternative social network manifesto — whose primary pledge is a commitment to be honest.

“And then the data scandals started happening and every time they would, they would give me hope. Hope that existing social networks were not a given and immutable thing, that they could be changed, improved, replaced,” he tells TechCrunch.

Rather ironically Hernández says it was overhearing the lunchtime conversation of a group of people sitting near him — complaining about a laundry list of social networking ills; “creepy ads, being spammed with messages and notifications all the time, constantly seeing the same kind of content in their newsfeed” — that gave him the final push to pick up the paper manifesto and have a go at actually building (or, well, trying to fund building… ) an alternative platform. 

At the time of writing Openbook’s Kickstarter crowdfunding campaign has a handful of days to go and is only around a third of the way to reaching its (modest) target of $115k, with just over 1,000 backers chipping in. So the funding challenge is looking tough.

The team behind Openbook includes crypto(graphy) royalty, Phil Zimmermann — aka the father of PGP — who is on board as an advisor initially but billed as its “chief cryptographer”, as that’s what he’d be building for the platform if/when the time came. 

Hernández worked with Zimmermann at the Dutch telecom KPN building security and privacy tools for internal usage — so called him up and invited him for a coffee to get his thoughts on the idea.

“As soon as I opened the website with the name Openbook, his face lit up like I had never seen before,” says Hernández. “You see, he wanted to use Facebook. He lives far away from his family and facebook was the way to stay in the loop with his family. But using it would also mean giving away his privacy and therefore accepting defeat on his life-long fight for it, so he never did. He was thrilled at the possibility of an actual alternative.”

On the Kickstarter page there’s a video of Zimmermann explaining the ills of the current landscape of for-profit social platforms, as he views it. “If you go back a century, Coca Cola had cocaine in it and we were giving it to children,” he says here. “It’s crazy what we were doing a century ago. I think there will come a time, some years in the future, when we’re going to look back on social networks today, and what we were doing to ourselves, the harm we were doing to ourselves with social networks.”

“We need an alternative to the social network work revenue model that we have today,” he adds. “The problem with having these deep machine learning neural nets that are monitoring our behaviour and pulling us into deeper and deeper engagement is they already seem to know that nothing drives engagement as much as outrage.

“And this outrage deepens the political divides in our culture, it creates attack vectors against democratic institutions, it undermines our elections, it makes people angry at each other and provides opportunities to divide us. And that’s in addition to the destruction of our privacy by revenue models that are all about exploiting our personal information. So we need some alternative to this.”

Hernández actually pinged TechCrunch’s tips line back in April — soon after the Cambridge Analytica Facebook scandal went global — saying “we’re building the first ever privacy and security first, open-source, social network”.

We’ve heard plenty of similar pitches before, of course. Yet Facebook has continued to harvest global eyeballs by the billions. And even now, after a string of massive data and ethics scandals, it’s all but impossible to imagine users leaving the site en masse. Such is the powerful lock-in of The Social Network effect.

Regulation could present a greater threat to Facebook, though others argue more rules will simply cement its current dominance.

Openbook’s challenger idea is to apply product innovation to try to unstick Zuckerberg. Aka “building functionality that could stand for itself”, as Hernández puts it.

“We openly recognise that privacy will never be enough to get any significant user share from existing social networks,” he says. “That’s why we want to create a more customisable, fun and overall social experience. We won’t follow the footsteps of existing social networks.”

Data portability is an important ingredient to even being able to dream this dream — getting people to switch from a dominant network is hard enough without having to ask them to leave all their stuff behind as well as their friends. Which means that “making the transition process as smooth as possible” is another project focus.

Hernández says they’re building data importers that can parse the archive users are able to request from their existing social networks — to “tell you what’s in there and allow you to select what you want to import into Openbook”.

These sorts of efforts are aided by updated regulations in Europe — which bolster portability requirements on controllers of personal data. “I wouldn’t say it made the project possible but… it provided us a with a unique opportunity no other initiative had before,” says Hernández of the EU’s GDPR.

“Whether it will play a significant role in the mass adoption of the network, we can’t tell for sure but it’s simply an opportunity too good to ignore.”

On the product front, he says they have lots of ideas — reeling off a list that includes the likes of “a topic-roulette for chats, embracing Internet challenges as another kind of content, widgets, profile avatars, AR chatrooms…” for starters.

“Some of these might sound silly but the idea is to break the status quo when it comes to the definition of what a social network can do,” he adds.

Asked why he believes other efforts to build ‘ethical’ alternatives to Facebook have failed he argues it’s usually because they’ve focused on technology rather than product.

“This is still the most predominant [reason for failure],” he suggests. “A project comes up offering a radical new way to do social networking behind the scenes. They focus all their efforts in building the brand new tech needed to do the very basic things a social network can already do. Next thing you know, years have passed. They’re still thousands of miles away from anything similar to the functionality of existing social networks and their core supporters have moved into yet another initiative making the same promises. And the cycle goes on.”

He also reckons disruptive efforts have fizzled out because they were too tightly focused on being just a solution to an existing platform problem and nothing more.

So, in other words, people were trying to build an ‘anti-Facebook’, rather than a distinctly interesting service in its own right. (The latter innovation, you could argue, is how Snap managed to carve out a space for itself in spite of Facebook sitting alongside it — even as Facebook has since sought to crush Snap’s creative market opportunity by cloning its products.)

“This one applies not only to social network initiatives but privacy-friendly products too,” argues Hernández. “The problem with that approach is that the problems they solve or claim to solve are most of the time not mainstream. Such as the lack of privacy.

“While these products might do okay with the people that understand the problems, at the end of the day that’s a very tiny percentage of the market. The solution these products often present to this issue is educating the population about the problems. This process takes too long. And in topics like privacy and security, it’s not easy to educate people. They are topics that require a knowledge level beyond the one required to use the technology and are hard to explain with examples without entering into the conspiracy theorist spectrum.”

So the Openbook team’s philosophy is to shake things up by getting people excited for alternative social networking features and opportunities, with merely the added benefit of not being hostile to privacy nor algorithmically chain-linked to stoking fires of human outrage.

The reliance on digital currency for the business model does present another challenge, though, as getting people to buy into this could be tricky. After all payments equal friction.

To begin with, Hernández says the digital currency component of the platform would be used to let users list secondhand items for sale. Down the line, the vision extends to being able to support a community of creators getting a sustainable income — thanks to the same baked in coin mechanism enabling other users to pay to access content or just appreciate it (via a tip).

So, the idea is, that creators on Openbook would be able to benefit from the social network effect via direct financial payments derived from the platform (instead of merely ad-based payments, such as are available to YouTube creators) — albeit, that’s assuming reaching the necessary critical usage mass. Which of course is the really, really tough bit.

“Lower cuts than any existing solution, great content creation tools, great administration and overview panels, fine-grained control over the view-ability of their content and more possibilities for making a stable and predictable income such as creating extra rewards for people that accept to donate for a fixed period of time such as five months instead of a month to month basis,” says Hernández, listing some of the ideas they have to stand out from existing creator platforms.

“Once we have such a platform and people start using tips for this purpose (which is not such a strange use of a digital token), we will start expanding on its capabilities,” he adds. (He’s also written the requisite Medium article discussing some other potential use cases for the digital currency portion of the plan.)

At this nascent prototype and still-not-actually-funded stage they haven’t made any firm technical decisions on this front either. And also don’t want to end up accidentally getting into bed with an unethical tech.

“Digital currency wise, we’re really concerned about the environmental impact and scalability of the blockchain,” he says — which could risk Openbook contradicting stated green aims in its manifesto and looking hypocritical, given its plan is to plough 30% of its revenues into ‘give-back’ projects, such as environmental and sustainability efforts and also education.

“We want a decentralised currency but we don’t want to rush into decisions without some in-depth research. Currently, we’re going through IOTA’s whitepapers,” he adds.

They do also believe in decentralizing the platform — or at least parts of it — though that would not be their first focus on account of the strategic decision to prioritize product. So they’re not going to win fans from the (other) crypto community. Though that’s hardly a big deal given their target user-base is far more mainstream.

“Initially it will be built on a centralised manner. This will allow us to focus in innovating in regards to the user experience and functionality product rather than coming up with a brand new behind the scenes technology,” he says. “In the future, we’re looking into decentralisation from very specific angles and for different things. Application wise, resiliency and data ownership.”

“A project we’re keeping an eye on and that shares some of our vision on this is Tim Berners Lee’s MIT Solid project. It’s all about decoupling applications from the data they use,” he adds.

So that’s the dream. And the dream sounds good and right. The problem is finding enough funding and wider support — call it ‘belief equity’ — in a market so denuded of competitive possibility as a result of monopolistic platform power that few can even dream an alternative digital reality is possible.

In early April, Hernández posted a link to a basic website with details of Openbook to a few online privacy and tech communities asking for feedback. The response was predictably discouraging. “Some 90% of the replies were a mix between critiques and plain discouraging responses such as “keep dreaming”, “it will never happen”, “don’t you have anything better to do”,” he says.

(Asked this April by US lawmakers whether he thinks he has a monopoly, Zuckerberg paused and then quipped: “It certainly doesn’t feel like that to me!”)

Still, Hernández stuck with it, working on a prototype and launching the Kickstarter. He’s got that far — and wants to build so much more — but getting enough people to believe that a better, fairer social network is even possible might be the biggest challenge of all. 

For now, though, Hernández doesn’t want to stop dreaming.

“We are committed to make Openbook happen,” he says. “Our back-up plan involves grants and impact investment capital. Nothing will be as good as getting our first version through Kickstarter though. Kickstarter funding translates to absolute freedom for innovation, no strings attached.”

You can check out the Openbook crowdfunding pitch here.

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Security, privacy experts weigh in on the ICE doxxing

In what appears to be the latest salvo in a new, wired form of protest, developer Sam Lavigne posted code that scrapes LinkedIn to find Immigration and Customs Enforcement employee accounts. His code, which basically a Python-based tool that scans LinkedIn for keywords, is gone from Github and Gitlab and Medium took down his original post. The CSV of the data is still available here and here and WikiLeaks has posted a mirror.

“I find it helpful to remember that as much as internet companies use data to spy on and exploit their users, we can at times reverse the story, and leverage those very same online platforms as a means to investigate or even undermine entrenched power structures. It’s a strange side effect of our reliance on private companies and semi-public platforms to mediate nearly all aspects of our lives. We don’t necessarily need to wait for the next Snowden-style revelation to scrutinize the powerful — so much is already hiding in plain sight,” said Lavigne.

Doxxing is the process of using publicly available information to target someone online for abuse. Because we can now find out anything on anyone for a few dollars – a search for “background check” brings up dozens of paid services that can get you names and addresses in a second – scraping public data on LinkedIn seems far easier and innocuous. That doesn’t make it legal.

“Recent efforts to outlaw doxxing at the national level (like the Online Safety Modernization Act of 2017) have stalled in committee, so it’s not strictly illegal,” said James Slaby, Security Expert at Acronis. “But LinkedIn and other social networks usually consider it a violation of their terms of service to scrape their data for personal use. The question of fairness is trickier: doxxing is often justified as a rare tool that the powerless can use against the powerful to call attention to perceived injustices.”

“The problem is that doxxing is a crude tool. The torrent of online ridicule, abuse and threats that can be heaped on doxxed targets by their political or ideological opponents can also rain down on unintended and undeserving targets: family members, friends, people with similar names or appearances,” he said.

The tool itself isn’t to blame. No one would fault a job seeker or salesperson who scraped LinkedIn for targeted employees of a specific company. That said, scraping and publicly shaming employees walks a thin line.

“In my opinion, the professor who developed this scraper tool isn’t breaking the law, as it’s perfectly legal to search the web for publicly available information,” said David Kennedy, CEO of TrustedSec. “This is known in the security space as ‘open source intelligence’ collection, and scrapers are just one way to do it. That said, it is concerning to see ICE agents doxxed in this way. I understand emotions are running high on both sides of this debate, but we don’t want to increase the physical security risks to our law enforcement officers.”

“The decision by Twitter, Github and Medium to block the dissemination of this information and tracking tool makes sense – in fact, law enforcement agents’ personal information is often protected. This isn’t going to go away anytime soon, it’s only going to become more aggressive, particularly as more people grow comfortable with using the darknet and the many available hacking tools for sale in these underground forums. Law enforcement agents need to take note of this, and be much more careful about what (and how often) they post online.”

Ultimately, doxxing is problematic. Because we place our information on public forums there should be nothing to stop anyone from finding and posting it. However, the expectation that people will use our information for good and not evil is swiftly eroding. Today, wrote one security researcher, David Kavanaugh, doxxing is becoming dangerous.

“Going after the people on the ground is like shooting the messenger. Decisions are made by leadership and those are the people we should be going after. Doxxing is akin to a personal attack. Change policy, don’t ruin more lives,” he said.

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Arbtr wants to create an anti-feed where users can only share one thing at a time

At a time when the models of traditional social networks are being questioned, it’s more important than ever to experiment with alternatives. Arbtr is a proposed social network that limits users to sharing a single thing at any given time, encouraging “ruthless self-editing” and avoiding “nasty things” like endless feeds filled with trivial garbage.

It’s seeking funds on Kickstarter and could use a buck or two. I plan to.

Now, I know what you’re thinking. “Why would I give money to maybe join a social network eventually that might not have any of my friends on it on it? That is, if it ever even exists?” Great question.

The answer is: how else do you think we’re going to replace Facebook? Someone with a smart, different idea has to come along and we have to support them. If we won’t spare the cost of a cup of coffee for a purpose like that, then we deserve the social networks we’ve got. (And if I’m honest, I’ve had very similar ideas over the last few years and I’m eager to see how they might play out in reality.)

The fundamental feature is, of course, the single-sharing thing. You can only show off one item at a time, and when you post a new one, the old one (and any discussion, likes, etc) will be deleted. There will be options to keep logs of these things, and maybe premium features to access them (or perhaps metrics), but the basic proposal is, I think, quite sound — at the very least, worth trying.

Some design ideas for the app. I like the text one but it does need thumbnails.

If you’re sharing less, as Arbtr insists you will, then presumably you’ll put more love behind those things you do share. Wouldn’t that be nice?

We’re in this mess because we bought wholesale the idea that the more you share, the more connected you are. Now that we’ve found that isn’t the case – and in fact we were in effect being fattened for a perpetual slaughter — I don’t see why we shouldn’t try something else.

Will it be Arbtr? I don’t know. Probably not, but we’ve got a lot to gain by giving ideas like this a shot.

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SafeToNet demos anti-sexting child safety tool

 With rising concern over social media’s ‘toxic’ content problem, and mainstream consumer trust apparently on the slide, there’s growing pressure on parents to keep children from being overexposed to the Internet’s dark sides. Yet pulling the plug on social media isn’t exactly an option.  Read More

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Researchers find that Twitter bots can be used for good

 According to Emilio Ferrara, a USC Information Sciences Institute researcher, not all Twitter bots are born bad. He should know. Ferrara created a “large-scale experiment designed to analyze the spread of information on social networks” and found that “good” tweets spread just as quickly as bad tweets. Further, they confirmed something the we already know: that… Read More

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Skype’s Snapchat-inspired makeover puts the camera a swipe away, adds stories

 Microsoft today is launching a completely revamped version of its Skype application, with a new set of features that draw obvious inspiration from messaging rivals, like Messenger and Snapchat. Yes, that means Skype now has its own Stories-like feature, which it’s calling Highlights, as well as a redesign that puts the camera only a swipe away from your chats, among other things. The… Read More

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