If This, Then That (IFTTT): essential crowdsourcing component to speed IoT development

I’ve been meaning to write about IFTTT (If This, Then That, pronounced like “gift,” but minus the g) for a long time, because I see it as a crucial, if perhaps underappreciated, component to spread the IoT more rapidly and increase its versatility — by democratizing the IoT.

That’s because this cool site embraces one of my favorite IoT “Essential Truths.” We must start asking:

who else could use this data?

I first started asking this question in my book, Data Dynamite, which largely focused on a fundamental paradigm shift away from the old view of data, namely, that you could gain a competitive advantage if you had proprietary information that I didn’t have. It was a zero-sum game. Your win was my loss.  

No longer: now value is created for you if you share data with me and I come up with some other way to use that data that you hadn’t explored. Win-win!

As applied to the IoT, I’ve explored this shift primarily in the context of corporate initiatives, where it becomes possible, for the first time, to share data instantly among everyone who could benefit from that data: everyone within the company, but also your supply chain, your distribution network, and, sometimes, even your customers. 

samples of IFTTT recipes

Here’s where the benefit of sharing data with your customers on a real-time basis comes in: there are a lot more of them than there are of manufacturers, and I can guarantee you that they will come up with clever uses that your staff, no matter how brilliant, won’t. Exhibit A: during last year’s World Series, GigaOM’s Stacey Higginbotham, did an IFTTT “recipe” that turned her HUE lights red (too bad for her, the Sox scored more runs. Wait until next year…). What Philips researcher would have ever done that on company time?

By harnessing crowdsourcing of ideas, the IoT will progress much faster, because of the variety of interests and/or needs that individuals add to the soup!

So, how’s IFTTT work?

Here’s a brief outline (or go here for details):

  1. a “recipe” is made up of a “trigger” (i.e., if this happens, such as “I’m tagged in a photo on Facebook”) and an action (then that happens, such as “create a status message on Facebook.”).
  2. the building blocks for recipes are called channels — 116 as of now, and growing all the time — each of which his its own triggers and actions.  The channels include a wide range of apps and products, such as Nest thermostats or Facebook.

There is a wide variety of recipes on the IFTTT site (you can subscribe to have new ones involving a given channel that interests you sent to you as they are shared) or you can easily create your own — with no programming skill required. How cool is that?

Yes, IFTTT can be fun (“email your mother Foursquare checkins tagged #mom. Useful for brownie points“), but I’m convince that it’s also a critically important tool to speed deployment and impact of the IoT, by harnessing the power of crowdsourcing to complement the work of app developers and device manufacturers.

Now get going!

 

The New IoT Math: 1 + 1 + 3 — Jawbone UP24 now controls Nest thermostat

A chance conversation about the IoT the other day turned me on to this elegant proof-of-concept that what I call “Smart Aging” to help seniors be healthier and avoid institutionalization is possible: my Jawbone UP bracelet could now control my Nest thermostat (if I had one: with three heating zones in my house, I’m gonna wait until the NEST price drops before I’ll buy them…).

That, ladies and gentlemen, is exactly what I’m talking about with my concept of “Smart Aging” for seniors, which would combine:

  • Quantified Self devices such as Jawbone UPs, Nike FuelBand, the congestive heart failure necklace,  or the Biostamp sensor (more about that one in a future post!) that will easily and unobtrusively monitor your bodily indicators and, if you choose, report them to your doctor, both to improve diagnoses, and to encourage you to adopt healthy practices such as a daily walk.
  • smart home devices such as the NEST or the voice-activated Ivee hub.

Even better, if device manufacturers get it about one of my Essential Truths about the IoT:  who else could use this data?, they will allow free access to their algorithms, and someone will realize that 1+1=3: the two devices are even more powerful when linked! In this case, the Jawbone UP is powerful, and so is the Nest, but something totally new is possible when they are linked:

“By connecting your UP24 with your Nest Thermostat, the temperature of your house will automatically adjust to a temperature you prefer – the moment you go to bed or wake up.

“Through UP Insights, we have shared the fact that an ideal sleeping environment is cooler, between 65 and 72 degrees. With the Nest integration, we no longer just tell you this fact. We make it a reality. Once your band enters Sleep Mode, your thermostat will kick down to your ideal temperature. And when you wake? You guessed it. Your thermostat will automatically adjust to a warmer temperature… all without leaving your bed.”

Nest-2_thermostatJawbone_UpHow cool (or hot, depending on the season…) is that?

I particularly like it for seniors because of one UP feature: instead of setting a precise wake-up alarm, you also have the option of creating a 30-minute window when it it should vibrate to wake you, with the exact time determined by what the UP determines is the ideal point in your natural sleep cycle.  Some working people on extremely tight morning schedules may not want to take advantage of that option, but for seniors, answering to no one but themselves, that would be an added benefit: get the best possible sleep, AND get up in a warm house (oh, and while you’re at it, why not link in some Phillips HUE lights and a coffee pot plugged in to a Belkin WeMo socket, so that you’ll also have fresh-brewed coffee and a bright kitchen?).  Sweet!

Do the math: one IoT-empowered device is nice, but link several more of them, and 1 + 1 = 3 — or more!

My speech on how the Internet of Things will aid Predictive Analytics

I spoke yesterday at the Predictive Analytics Manufacturing conference in Chicago, about a theme I first raised in the O’Reilly SOLID blog, about how the Internet of Things could bring about an “era of precision manufacturing.”

I argued that, as powerful as Predictive Analytics tools have been in analyzing manufacturing data and improving forecasting, their effectiveness has been artificially restricted because, for example, we can’t “see” inside production machinery to detect early signs of metal fatigue in time to avoid a costly breakdown, nor can we tell whether EVERY product on an assembly line will function when customers use them.

By contrast, I argued that the IoT will give us all this information, and, most important, allow everyone (from your supply chain and distribution network to EVERYONE in your company) to share this data on a real-time basis.  I warned that it will be management issues (those pesky IoT Essential Truths again!), such as whether to allow this sharing to take place, and whether to end departmental silos, that will be the biggest potential barrier to full IoT implementation.

Believe me, it will be an incredible transformation.  You can read the full text here.

My piece in Harvard Biz Review blaming #370 crash on lack of “Internet of Things” thinking!

Hey, everyone else has weighed in with an explanation on why Flight 370 crashed, so I did, today, with a piece in the Harvard Business Review blog in which I blamed it on lack of “Internet of Things thinking.”

May sound crazy, but I think it’s true, because of two of my “Essential Truths” about the IoT — two things that we can do now but never could before, which open up a huge range of possibilities for change:

  • limitless numbers of devices and people can share the same data on a real-time basis
  • for the first time, we can get real-time data on how devices are actually operating, even conditions deep within the device

In this case, if Malaysia Air had only been willing to pay $10 more per flight, it could have had a wide-ranging flow of real-time data from the plane’s engines. Under regular conditions this data could have allowed the company to tweak the engines’ performance, while also allowing them to do “predictive maintenance,” catching minute problems as they first emerged, in time to make safe, economical repairs rather than waiting until a catastrophic failure.

AND, it also would have allowed them during the crisis two weeks ago to have immediately switched to monitoring the engine data when voice transmissions ended, so they would have known immediately that the plane was still flying, in time to have launched planes to intercept the plane and land it safely.

HOWEVER, what was missing was this “Internet of Things thinking,” so they didn’t think expansively about the value of sharing the data.  They saved $10 per flight, but lost 290 people. Somehow the math doesn’t add up…

In case you missed it, great panel today on the IoT and government

Posted on 19th March 2014 in government, Internet of Things, US government

In case you missed it, old friend Christopher Dorobek put together a great (in all modesty, LOL …) panel today for his “DorobekINSIDER” series on GovLoop about how the Internet of Things will transform government.  I’ll try to summarize it in a later post, but you can listen in here!

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Can Internet of Things help solve the Malaysia 370 mystery?

Posted on 13th March 2014 in Internet of Things, M2M, transportation

It appears from a Wall St. Journal article  that Malaysia Air 370’s Rolls-Royce Trent 800 engines may have had built-in sensors

Rolls-Royce Trent 800 jet engine

that allowed the engines to send real-time operating data to Rolls-Royce for analysis. According to the WSJ, the data may indicate that the plane flew for an additional four hours after its last radio transmissions.

Whether or not this proves to be true, it does give a preview of what life will be like when the IoT is fully functional: real-time data will become a critical tool in transportation management and safety. In this case the data might help locate the wreckage. In others, the fact that it will allow traffic controllers, whether on the ground or in the air, to react to danger in real time, will save lives. 

Crucially important cautionary note about data’s limits!

Posted on 4th February 2014 in Internet of Things, open data, US government

I yield to no one in my passion for liberating data, and for its potential role in improving decision-making. It’s essential to full realization of the Internet of Things, and yes, it can even save lives (not to mention baseball teams, witness Michael Lewis’ wonderful Moneyball!). However, I implore you to read “Why Quants Don’t Know Everything,” a gem by Felix Salmon that’s tucked into the current Wired issue. It documents a disturbing pattern of how decision-making in everything from baseball to, yes, the NSA, can be distorted — with serious consequences, when the “quants” take over completely and data is followed blindly. Salmon begins with the NSA’s insatiable appetite for data:

“Once it was clear that the NSA could do something, it seemed inarguable that the agency should do it—even after the bounds of information overload (billions of records added to bulging databases every day) or basic decency (spying on allied heads of state, for example) had long since been surpassed. The value of every marginal gigabyte of high tech signals intelligence was, at least in theory, quantifiable. The downside—the inability to prioritize essential intelligence and act on it; the damage to America’s democratic legitimacy—was not. As a result, during the past couple of decades spycraft went from being a pursuit driven by human judgment calls to one driven by technical capability.”

Let me emphasize: technical capability came to trump human judgment calls. I suspect there’s probably not too much question among you, dear readers, that the NSA went to far. But Salmon sees a broader problem with unchecked faith in data:

The reason the quants win is that they’re almost always right—at least at first. They find numerical patterns or invent ingenious algorithms that increase profits or solve problems in ways that no amount of subjective experience can match. But what happens after the quants win is not always the data-driven paradise that they and their boosters expected. The more a field is run by a system, the more that system creates incentives for everyone (employees, customers, competitors) to change their behavior in perverse ways—providing more of whatever the system is designed to measure and produce, whether that actually creates any value or not. It’s a problem that can’t be solved until the quants learn a little bit from the old-fashioned ways of thinking they’ve displaced.” (my emphasis)

Salmon goes on to show parallel stages in a wide range of fields where data is in the ascendancy:

  1.  “pre-disruption.” The Neanderthal period, before data is applied to big problems.
  2. disruption.” Example they use is 2012 Obama campaign, where the technologists held sway, targeted voters down to the individual level based on data. You know what happened.
  3. overshoot.” Here’s where things go off the track:”The most common problem is that all these new systems—metrics, algo­rithms, automated decisionmaking processes—result in humans gaming the system in rational but often unpredictable ways. (my emphasis) Sociologist Donald T. Campbell noted this dynamic back in the ’70s, when he articulated what’s come to be known as Campbell’s law: “The more any quantitative social indicator is used for social decision-making,” he wrote, “the more subject it will be to corruption pressures and the more apt it will be to distort and corrupt the social processes it is intended to monitor.”On a managerial level, once the quants come into an industry and disrupt it, they often don’t know when to stop. They tend not to have decades of institutional knowledge about the field in which they have found themselves. And once they’re empowered, quants tend to create systems that favor something pretty close to cheating. (again, my emphasis) As soon as managers pick a numerical metric as a way to measure whether they’re achieving their desired outcome, everybody starts maximizing that metric rather than doing the rest of their job—just as Campbell’s law predicts.”

    He then gives a number of illustrations including “teaching to tests” and, most infamously, the bank meltdown  (I was particularly struck by the one dealing with serious problems in policing: um, it can kill…) that can come as a result of pre-occupation with data. Have you seen this in your field??

  4. synthesis.”  My father used to say that there was an inverse relationship between the amount of education you had and your amount of common sense (he was a little too intimidating for me to point out that he had a Ph.D….).  Here’s where the smart guys and gals learn to put data in perspective:”It’s increasingly clear that for smart organizations, living by numbers alone simply won’t work. That’s why they arrive at stage four: synthesis—the practice of marrying quantitative insights with old-fashioned subjective experience. Nate Silver himself has written thoughtfully about examples of this in his book, The Signal and the Noise. He cites baseball, which in the post-Moneyball era adopted a ‘fusion approach’ that leans on both statistics and scouting. Silver credits it with delivering the Boston Red Sox’s first World Series title in 86 years. (LOL: my emphasis!) Or consider weather forecasting: The National Weather Service employs meteorologists who, understanding the dynamics of weather systems, can improve forecasts by as much as 25 percent compared with computers alone. A similar synthesis holds in eco­nomic forecasting: Adding human judgment to statistical methods makes results roughly 15 percent more accurate. And it’s even true in chess: While the best computers can now easily beat the best humans, they can in turn be beaten by humans aided by computers.”

I’ve been concerned for a while that the downside of vast quantities of real-time data is that decision-makers may ignore time-honored perspective, horse sense, whatever you call it, and may just get whip-sawed by constantly changing data.

So yes, there will be a need for living, breathing managers in the era of the Internet of Things, even ones with grey hair! It will take time, and probably a lot of trial-and-error, but smart companies will attain that synthesis of qualitative insights and “old-fashioned subjective experience.

I beg you: please read this entire article, save it, and share it: it’s a bit of critical insight that may just get drowned out by people like me calling for more, and more rapid, sharing of data. 

Whew. My conscience feels redeemed!

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TellSpec: IoT device that can be a life-saver — and the killer app!

Posted on 10th December 2013 in design, environmental, health, Internet of Things, M2M

Whenever someone tries to dismiss the Internet of Things as a nice future vision, I love to rebut them with an example — such as the bassinettes in the Toronto Hospital for  Sick Children that allow doctors to diagnose a life-threatening infection a day before there are visible symptoms — that shows the IoT’s not only a reality, but is also saving lives!   That usually stops them in their tracks.   .

Now there’s a great new example on the horizon: the TellSpec food inspector.

In fact, because of the service’s three components, I’d say it’s a near-perfect example if you want to introduce the IoT to someone! Once in widespread use, it might well be the “killer app” that finally makes the IoT a household phrase — extremely useful (and easy to use), affordable, and allowing you to do something that couldn’t be done before.

For a variety of reasons, the rate of food allergies is increasing alarmingly, and adults with gluten allergies or parents whose kids are allergic to peanuts can’t always depend on package labels or appearances to warn them of when a given food may trigger a deadly attack of anaphylaxis. Then there’s the rest of us, who are increasingly dubious about whether our foods include pesticides, transfats or other unwanted substances. Or, we may just want to track our calorie consumption. TaDa! The TellSpec!

The crowd-sourced (yea! The people know best) system is a a classic IoT service, because it combines:

  • a device: the TellSpec scanner, which is small enough to go on a key chain — and would have been impossible without the revolution in sensors and nanotechnology (specifically, nanophotonics): its guts are a low-power laser and a spectrometer on a chip that measures the reflected light, analyzing any food’s chemical composition in less than 20 seconds. This kind of analysis used to require a bulky, stationary spectrometer.
  • analysis in the cloud: the data is transmitted to the cloud, where an algorithm analyzes the spectrum information. As you can imagine, doing this kind of analysis on a large scale and in real time was impossible until the cloud.
  • the app: within seconds, you get an easy-to-understand message that details the food’s components, such as transfats, caloric content, allergens, etc.

How cool is that?

The system is in prototype right now. They’re taking pre-orders now, for delivery in August. The scanner plus a year of the analysis support will be $320, and after that, it will cost $7.99 per month or $69.99 yearly. My normally acceptable range of cost for an app is $.00 or less, LOL, but even a cheapskate like me realizes that this is well worth the price.

What a marvelous invention, and what a proof of concept!

As always, I’m indebted to Postscapes for the tip on this one.

Calculating Internet of Things ROI — important tool

Just came across this video while researching how to calculate ROI on Internet of Things investments for the e-book I’m writing, and felt compelled to share it.

That’s because it may be hard to calculate ROI fully and accurately for IoT investments if you aren’t thinking in terms of what my friend/patron Eric Bonabeau always pounds into my head: what can you do now that you couldn’t do before?

In the case of the IoT, there are  several things, such as “predictive maintenance,” that weren’t possible before and thus we don’t automatically think of calculating these benefits. It will require a conscious change in figuring ROI to account for them.

According to Axeda CMO Bill Zujewski, there are 6 levels of M2M/IoT implementation, and there are both cost savings and revenue enhancements as you move up the curve:

  1. Unconnected: this is where most firms are today. No M2M/IoT investments.
  2. Connected, pulling data for future use: No return yet.
  3. Service: the investment begins to pay off, primarily because of lower service costs.
    1. Cost reductions:
      1. fewer repair visits  Now that you’re harvesting real-time information about products’ condition, you may be able to optimize operating conditions remotely.
      2. first-time fix rate increases: Now you may know what the problem is before you leave, and can also take the proper replacement parts.
      3. reduced call length: You may know the problem in advance, rather than having to tinker once you’re there to discover it.
    2. Higher Revenues:
      1. Greater customer satisfaction. Customer doesn’t have to pay as much for repairs, down-time is reduced.
  4. Analyze: Putting data into BI and other analysis tools to get greater insights. For example, understand what are bad parts, when they’re failing.
    1. Cost reductions:
      1. fewer service visits: instead of monthly service you may be able to switch to quarterly.
      2. lowering returns
      3. improve product design
    2. Higher Revenues:
      1. Increase product up-time: due to better design and more effective maintenance, longer mean-time-to-failure.
  5. Data integration: begin to integrate data with business processes.
    1. Cost reductions:
      1. warrantees (especially for industrial equipment): fewer claims if you can monitor equipment’s operations, warn owner if they’re using it improperly.
      2. recalls: reduced.
    2. Higher revenues:
      1. pay-as-you-go leases: as we’ve discussed earlier, you may be able to increase revenues by leasing products based on how much the customer actually uses them (which you can now document), rather than selling them.
      2. increased sales of consumables: you’ll be able to know exactly when the customer needs them.
  6. Reinvent the customer experience: According to Zujewski, this is where you “put machine data into the end users’ hands” through a smartphone app, for example, that gives them access to the information.
    1. Cost reductions:
      1. reduced calls to call center: the end user will be able to initiate service and troubleshoot themselves.
    2. Higher revenues:
      1. increases sales: your product will be enhanced, leading to more successful sales calls. You also may be able to charge for some of the new data access services that make the product better.

Zujewski concludes by saying that all of these changes combine into 4 major benefits:

  1. world-class service
  2. business insights (such as better understanding of how your customers are using your products) from all the data and analysis
  3. improve business processes: integrating data allows you to improve the way you perform current processes
  4. highly-differentiated offering due to to the apps and information you can provide users. “You end up demo-ing your apps vs. just the machines”

I was really impressed with this presentation, and it makes sense to me as a framework for calculating ROI on Internet of Things investments (I want to think about other benefits of the IoT that were impossible before to see if there are any other factors that should also be calculated).

I’d be really interested in your reaction: is this a valid methodology? what other factors would you also include?

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Best quick intro to the IoT that I’ve seen!

Following up on my last post, I’ve found what I think is the best quick intro to the Internet of Things!

Internet of Things,” released today by the Center for Data Innovation (hadn’t heard of them! BTW, they also get points in my book for covering XBRL, the magic potion for data…) is a quick read: it has short intros to most of the major consumer-oriented areas affected by the IoT, from healthcare to home automation, combined with two examples for each of those topics. I hadn’t heard of some of the examples (thanks, authors Daniel Castro and Jordan Misra!), although most are frequently cited ones ranging from the Nest thermostat to the Vitality GlowCap.  All in all, they’ll show almost any skeptic that the IoT is already a reality and that it will change their life!

The report concludes with brief policy recommendations for government and business alike:

  • (for government agencies) lead by example, i.e., include funding for sensors in bridge projects, etc. Yea (you listening, Obama Administration?).
  • reduce barriers to data sharing (this harkens back to my Data Dynamite book: data gains value by being shared!).
  • give consumers access to their data (again, something I wrote about in Data Dynamite).
  • avoid inundating consumers with notices (a fine line, since they need to be informed, in plain English, about how their data will be used).
  • regulate the use of data, not the collection (in line with Mercatus Center’s advice)

All in all, a nice intro to the IoT!

BTW: Thanx to ol’ friend Pete O’Dell for turning me on to this report!

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