Technology -> Big Data
By: Dana Gardner, Principal Analyst, Interarbor Solutions
Published: 12th March 2014
Copyright Interarbor Solutions © 2014
Big data capabilities and advanced business analytics have now become essential to nearly any business development activity.
The benefits that enterprises can get if they can get their hands around big data analytics and apply it to business challenges are quickly being documented—and they come as big new profits and major market advantages. Industries around the world are rapidly seeking transformational projects using big data to gain competitive advantage.
As part of the next edition of the HP Big Data Podcast Series, BriefingsDirect sat down with two HP executives to learn how these advanced analytics seekers can best accomplish their goals. The insights gleaned include how companies worldwide are best capturing myriad knowledge, gaining ever deeper analysis, and rapidly and securely making those insights available to more people on their own terms.
So join this executive-level discussion highlighting how the latest version of HP HAVEn produces new business analytics value and strategic return with Girish Mundada, Chief Technology Officer for HP HAVEn, and Dan Wood, Worldwide Solution Marketing Lead for Big Data at HP Software. The discussion is moderated by me, Dana Gardner, Principal Analyst at Interarbor Solutions.
Here are some excerpts:
Gardner: We’re in a fascinating time because analytics and big data are now top of mind. What was once relegated to a fairly small group of data scientists and analysts as reporting tools—and I am thinking about business intelligence (BI)—has really now become a comprehensive capability that’s proving essential to nearly any business strategy.
What’s behind this eagerness to gain big data capabilities and exploit analytics so broadly?
Wood: We're starting to see some very clear quantification of the value and the benefits of big data. It’s fair to say that big data is probably the hottest topic in the industry.
There’s a lot of talk across all forms of media about big data right now, but what’s happened is that credible publications, like the Harvard Business Review, for example, have started to put solid numbers around the benefits that enterprises can get if they can get their hands around big data analytics and apply it to business challenges.
For example, Harvard Business Review is saying that, on average, data-driven organizations will be five percent more productive and six percent more profitable than their competitors.
Think about that. A six-percent distinct profitability increase would double the stock price for a lot of organizations. So there really is a prize worth chasing after.
What we’re seeing, Dana, is much more widespread interest across the organization and not just within IT. We’re seeing line-of-business leaders understanding and, in many organizations, actually starting to benefit from big data analytics.
They’re able to analyze the call logs in a call center, better understand the clickstreams on a website, and better understand how customers are using products. All of these are ways of analyzing large amounts of data and directly tying it to specific line-of-business problems.
That’s where we are right now. Industries around the world are going through transformational projects using big data to gain competitive advantage.
Gardner: It’s interesting too, Dan, that they’re not just taking these as individual data sets and handling them individually, but increasingly businesses are combining them, and finding new relationships, and doing things that they really couldn't have done before.
Wood: Absolutely. It’s the idea of 360-degree view of their internal operations, or of their external customer trends and needs—and it’s come from combining data sets.
For example, they’re combining social media analytics on customers with the call logs into the call center, with internal systems of record around the customer relationship management (CRM) and ongoing customer transactions. It’s by combining all those insights that the real big data opportunity reveals itself.
Gardner: And the sources for those insights and data, of course, are across almost any type of information asset. It’s not a just structured data or data that your application standard is around—it’s getting all the data all of the time.
Wood: That’s right. In some ways, this industry label of big data is perhaps not the most helpful, because it’s not just the volume of data that is the challenge and the opportunity for the business. It’s the variety of sources, as you’ve alluded to, and also the velocity at which that data is moving.
The business needs to get hold of these multiple sources of data and immediately be able to apply the analytics, get the insights, and make the business decisions. This is why still the vast majority of that data that’s available to an enterprise remains dark.
It’s unused and unexploited. Organizations, with their traditional analytics systems, are struggling to get the meaning and insights from all these data types that we mentioned. These include unstructured information, such as social media sentiment, voice recordings, potentially even video recordings, and the structured and semi-structured things like log files and data center data. For many organizations, getting the information quickly enough out of their CRM and enterprise resource planning (ERP) systems is a challenge as well.
Gardner: So we see that there’s a great desire to do this, and there are great returns on being able to do this well. We talked about some of the general challenges. What specifically is holding people up?
Is this an issue of cost, complexity, or skills? Why aren’t companies able to move beyond this small fraction of the available information to which they could be applying such important insight and analytics?
Wood: It’s a complexity and a skills challenge, as you mentioned. The systems they have today, Dana, typically aren’t set up to able to analyze these vast amounts of unstructured information, and also to be able to analyze the structured data at a speed needed by the organization.
Think about the need to analyze immediately a clickstream from an online shopping application or a pay-to-use application that an organization has. That is, a rapid-scale analysis of a large amount of structured data. Typically, the analytic systems that organizations have had aren’t able to cope with that or with the unstructured human information.
This is why HP has created the HAVEn Big Data Platform, and Girish will talk in more detail about this, and how it brings together the analytics engine needed to address these issues.
Just as importantly, there’s the ecosystem around HAVEn, which includes HP experts and services and services from partners, to bring together the skills needed to turn this data collection into useful information.
And there are skills around data scientists, as well—skills around understanding the right questions the line of business needs to be asking, and understanding actually how to visualize and represent the data.
Gardner: What were the guiding principles that you were thinking of when HAVEn was being put together?
Mundada: HAVEn came together not by creating it in a dark room somewhere in the back office. It came together by talking to customers. On a regular basis, I meet with some of HP's largest customers worldwide, getting input from them. And they're telling us what their current problems are.
Let me see if I can describe the landscape in a typical organization, and we can go from there. You'll see why we created HAVEn.
Let’s visualize four different waves of data. Back in early '60s,'70s, even part of the '80s, mainframes were the primary way to process data, and we used them for operationalizing certain parts of data processing, where data was extremely high-value. If you look at the cost of the systems, it was phenomenal.
Then came the next wave in the ‘80s, where we went into what I call client-server computing, and we already know several companies that were created in this space.
I’ve lived in Silicon Valley for almost 30 years now, and a whole bunch of new companies were born in this space. I worked for a company, Postgres, which became Illustra, then became Informix, and became IBM. If you look at that entire wave of OLTP technologies, we created data-processing technologies designed to solve basic business problems.
Application software was created: CRM, supplier relationship management (SRM), you name it. Many companies that did consulting around that were created, too. That was that second wave after the mainframe.
Then came the third wave, where we took this data from all these transactional systems, brought them together to find out some basic analysis, which we now call business analytics, to find out "who is my most profitable customer, what are they buying, why are they buying," and things of that nature.
We created companies for that wave, too, and many technologies. Exadata, Teradata, Netezza, and a whole bunch of companies and applications were born in that space. That wave lasted for quite a while.
What we're seeing now is that from 2003 onward, something very fundamental has happened. At least, that’s the way I've been seeing this. If you look at the three Vs that Dan has described—volume, velocity, and variety—we’re talking about volumes that are growing exponentially. In the past, they were growing linearly. That creates a very different kind of requirement.
More importantly, if you look at the variety that Dan mentioned, that’s really the key driver in my mind. People are now routinely bringing in machine data, human data, and your traditional structured warehouses—all of them together.
If you visualize a bar graph, you would see that 10 percent of the data that we now can monetize is coming from traditional sources, whereas 90 percent of the data that we need to monetize is now sitting in machine data and human data.
What we're trying to do with HAVEn is create a combined platform, where you can combine these three different data types and do very high-velocity analytics.
As a simple example, if you look at Apache Web Server logs, that data is used historically by the security people to see if anybody is breaking in. That data was being used by operational people to see if machines aren’t overloaded.
More importantly the digital marketing guys now want to look at that data to see who's coming to their website, what they’re buying, what they’re not buying, why they’re buying, and which geographies they’re coming from. Then, they want to combine all these data sets with their existing structured data to make sense out of it.
Today, it's a mess in the market. When we talk to our partners and customers, they’re saying that they have point solutions for each of these things, and if you want to combine that data, it’s really hard. That’s why we had to create HAVEn.
HAVEn is the fourth wave. HAVEn is specifically about big data, the fourth wave. If you look at HP’s portfolio, we sell products and services across each of these waves, and the fastest growing wave right now is the big data wave. It’s growing at about 35 percent a year, according to Gartner, and that's why we're excited about it.
Gardner: Now we know why you created it and what it’s supposed to do. Tell us a little bit more about what’s included in HAVEn and why it is that you’ve been able combine product and platform to solve this very difficult task.
Mundada: If you look at what’s required now to process big data in its entirety, one product no longer can do it all. There is a very famous paper written by some university professors titled One size does not fit all. It proves that different data structures are able to solve different kinds of data problems far more efficiently.
One way to think about big data is to think of it as a pile of dirt. It’s a big pile. In that pile, there’s gold, silver, platinum, iron, and other metals you don’t even know. If the cost of mining that data is high, obviously you’re going to go after only the platinum and some known objects that you care about, because that’s all you can afford.
HAVEn is about bringing that cost of processing down to a very, very low level so you can go after more metals. That means you have to bring together a set of technologies to be able to solve this. If you look at the last three years, HP has made very significant amounts of investments in the big data space.
We bought companies that were best of breed to try to solve specific problems. We bought Autonomy, Vertica, ArcSight, Fortify, TippingPoint, 3PAR Data, and Knightsbridge.
Now, we have a set of technologies to be able to combine them into a unique experience. Think of it almost like Microsoft Office. Before you had Microsoft Office, you would buy a word processor from one company, a spreadsheet from another company, and presentation software from a third company.
Let’s say you wanted to create a simple table. If you had created it in a word processor or even a spreadsheet, you couldn’t mix and match that. It was impossible to mix and match very different types.
Then, Microsoft came to the table and said, “Look, here’s a simplified solution.” If you want to create a table, go ahead and create it in PowerPoint. Or if you want to create a more complicated thing, put it in Excel. Then, take that Excel and put it in PowerPoint. Or, you can put the whole thing into a Word document. That was the beauty of what Microsoft did.
We’re trying to do something similar for big data, make it very easy for people to combine all these different engines and the different data types and write simple applications on it.
Gardner: What beyond the products and binding them together makes HAVEn unique?
Mundada: HAVEn is really two different concepts. There’s the HAVEn data platform, which we’ll talk about now, and there’s a HAVEn ecosystem, which I’ll mention in a minute.
HAVEn means Hadoop, Autonomy, Vertica, Enterprise Security, and “n” applications. That’s the acronym. So let’s look at one of these pieces, and why we need an architecture like this.
As I said, today you need to combine different sets of data techniques to solve different problems, and they have to work seamlessly. That’s what we did with HAVEn. I’ve been with HAVEn from day zero, before the project concept started, and I can tell you why and how we added these pieces and how we’re trying to integrate them better.
If you look at Hadoop as an ecosystem part of that HAVEn, our story with Hadoop at HP is that Hadoop is an integral part of HAVEn. We see a lot of our customers and partners betting on Hadoop and we think it’s a good thing to keep Hadoop open and non-proprietary.
We also today work with all leading Hadoop vendors, so we have shipping appliances as well as reference architectures for both Cloudera and Hortonworks, and we’re working now with MapR to create similar infrastructure. That’s our Hadoop’s story.
We’ve also found that our customers are saying they want some flexibility in Hadoop. Today, they may want one vendor, and tomorrow, they may decide to go to another vendor for whatever business reasons they choose. They want to know if we can provide a simple management tool that works across multiple Hadoop distributions.
As an example, we had to extend our Business Service Management (BSM) portfolio, so we can manage Hadoop, Vertica, hardware, storage, and networking all from within one environment. This is simply operationalizing it. Having a standardized set of hardware that matches multiple Hadoop distributions was another thing we had to do. There are many such enterprise-class innovations that you’ll see coming from HP.
But more than that, we also found that Hadoop is really good for certain kinds of applications today, and obviously, the community will extend that. You will see more and more innovations coming from that community and ecosystem.
Today, there are several areas where there are holes in Hadoop, or maybe they’re not as strong as commercial products. One such area that you see is SQL. The SQL phase of Hadoop is going to be one of the key differentiators across the different Hadoop packaging.
In that area, we have a technology called Vertica, which is the V part of HAVEn, and you’ll see companies like Facebook using a combination of both Hadoop and Vertica.
The classic use case we see is that people will bring all kinds of raw data, put it into Hadoop, and do some batch processing there. Hadoop is great as a file system, a batch processing environment. But then they’ll take pieces of that data and want to do deep analytics on it, like regression analytics, and they will put it into Vertica.
Vertica is an analytic database platform, and I will break up those three words. It’s a database. It looks and feels like a database. It has SQL on it, open database connectivity (ODBC), and Java database connectivity (JDBC) connectivity. You can run all kinds of tools on it, the ones you are used to, Tableau, Pentaho, and Informatica. So from that perspective it’s a regular database.
What’s different is that it’s custom built for the fourth wave. It’s an analytic database, and by that, I mean the underlying algorithms are completely designed from the ground up. Michael Stonebraker, who created the key products in the first wave and the second wave, Ingres and Postgres, also created this at MIT from the ground up.
The intuition was that if you look at the processing of data today, it’s gone from having 10 to 20 columns per row to possibly thousands of columns. A social media company, for example, might have 10,000 pieces of information on me, and while they do processing, it’s going more linear. It’s going regression-oriented in a sense. You might say “Girish, age x, lives here, and likes y. What’s the likelihood somebody else may like it?”
It’s meant for that kind of deep analytical processing, a column-oriented structure. In those kinds of applications, this database technology tends to be magnitudes faster—tens of times faster. That’s one example of Hadoop and Vertica, and we can talk more about other pieces Autonomy and Enterprise Security with you.
Gardner: So we see that there’s a platform that you put together. There’s an ecosystem that’s supporting that. There are these binding standards that make the ecosystem and the platform more synergistic. But other people are doing the same thing. What’s making HAVEn different? What is it about HAVEn that you think is going to be a winner in the marketplace?
Mundada: There are two different answers to it. Let me talk about how we’ve taken not just the SQL piece of Hadoop, but how we extend it with other parts of HP that are unique to HAVEn. It’s the breadth of it. Let’s see how we extend this simple combination of Hadoop and Vertica.
I said it’s an analytic database platform. If you look at that platform piece of it, with Vertica, we’re able to drop in other code that are user-defined and user-written. For example, you can drop in R language routines, Java, C++, or C language routines directly into the database. Now, we’re now able to combine that richness across our portfolio.
Autonomy, which is the A part of HAVEn, is a unique technology. It's one of a kind. Some of the largest governments and some of the largest organizations in the world, such as banks and financial institutions, have this in production in what it's meant for, human information processing, which is audio, video, and text.
As an example, you could take a video stream and ask simple questions. Tell me if an object is moving from point A to point B, or tell me what’s in the object. Is it a human? Is it a car? Can you read car number plates automatically?
And you could do some really sophisticated applications. Taking a car, we have cases where police cars have video cameras mounted on the side, and as they’re driving by in a parking lot, they can take photos of the number plates and compare it to stolen cars.
Imagine being able to take that technology and combining it automatically, through simple SQL-like or simple REST API-like commands with SQL, with your existing data and creating very sophisticated applications to understand your customer or for crime detection and things like that?
Now let’s bring in the third of part of the puzzle, the E part, which is Enterprise Security. That’s also unique. We have an entire portfolio, both for security as well as for operations management.
If you look at enterprise security and if you look at the Gartner Magic Quadrant, HP’s product set has been in the leader space for several years in a row. They are the number one vendor in that area.
Now, think about our portfolio of ArcSight, Fortify, Tipping Point, and other ESP products. Imagine being able to take the data-collection algorithms of those, bringing it into this common platform of HAVEn, combining it with other structured and unstructured data with just simple commands. That’s something we can do uniquely.
Operations management is another area where we have hundreds of these machine logs. We can collect them, break them open into modular pieces, and create new applications. You can go look at our website, Operations Analytics, where, with a simple slider, you can go back and forth in time to millions of log files as if they were structured data.
We can do that uniquely, because we have that entire collection. Our BSM portfolio has been on the market for 30 years. It’s one of the leaders. This is the HP OpenView platform and this is one of the things we can do uniquely at HP, bring all these things together.
That’s the breadth of our portfolio, but it simply doesn’t stop at this platform level. Remember, I said that there are two concepts. There is a platform, and then there is the ecosystem. Let’s look at the platform level first.
We have the whole of HAVEn. We have the connectors, and we ship these 700 connectors out of the box. With simple commands, you can bring in social media data in every language written. You can bring in machine logs and structured logs. That’s the platform.
Let’s extend it further into the ecosystem part. The next thing that people were saying was, “We want to use something very open. We have our own visualization tools. We have our own extract, transform, load (ETL) tools that we’re used to. Can you just make them work?" And we said, "Sure.”
That’s one of the things that we’re able to do now. With simple SQL, we can essentially write simple queries across structured and unstructured data. Using Tableau Software, or any other tool that you like, we can access this data through our connectors, but, more importantly, it lets you hook in your existing ETL tools into this—completely transparently.
So that’s the openness of the platform, the breadth and the openness of the platform. Breadth is not just about the software platform, but it’s about HP’s strength to bring together hardware, software, and services.
Even with the platform, the HAVEn components in the middle, the connectors, and being able to match them with matching hardware, our customers are asking, “Can you give us matching hardware for Hadoop, so we don’t have to spend time setting it up?” That’s one of things that HP can uniquely do, but more importantly we have appliances for Vertica, for example, which are standardized.
If you look at the other side, our customers are also saying, “We understand that HP wants to provide us all this, but we like openness and we like other partners.” So we said, “Fine, we’ll leave this entire ecosystem open.” Our software will work with HP hardware and we can optimize, but we also commit to working on everybody else’s hardware.
Our cloud story is that we’ll work on Amazon, as well as OpenStack. For example, if you want to build a hybrid cloud, where part of your data resides on HP or your private environment using OpenStack, that’s fine. If you want to put it in Amazon or Rackspace, no problem. We’ll help you bridge all these. These are the kinds of enterprise-cloud innovations that HP is able to do, and we’re open to this.
So to answer your question very succinctly, if there were three things I would pick where HP is different, one is our breadth of our portfolio. We have very large breadth that we've brought together.
It’s the openness of the platform. HP is known to be a very open company. If you look our Hadoop story, we have an example. We didn’t create a proprietary Hadoop. We kept it open. If you look at our virtualization, we didn’t go and force a virtualization technology on you. We kept it open.
More importantly, if there is one key thing that you want to take home from what we've done with HAVEn, it's not about feeds and not about speeds. It's about business value.
The reason we created HAVEn was to create that iPhone-like environment or Android-like environment, where the vision is that you should be able to go to a website, say you have standardized on the HAVEn platform, and then, be able to point and click and download an application.
The end part of HAVEn is really the business value of it, and that’s how we see HAVEn as unique. There is nobody else, as far as we know, that has that end-vision, where you can build the applications yourself using standard tools—SQL, ODBC, REST API, JDBC—or you can buy ready-made software that HP Software has created.
We have packages across service, operations, and digital marketing. Or you can go with a partner. The partner could be HP Enterprise Services, Accenture, Capgemini, or any of those big partners. That’s something unique about the HP big data ecosystem that doesn’t exist anywhere else today.
Gardner: Applications are something that take advantage of the platform, the capabilities, the breadth and depth of the data, and information.
I wonder if you could explain a little bit more about the application side of HAVEn, perhaps through examples of what people are already doing with these applications, and how they’re using them in their business setting?
Mundada: That’s actually one of the most exciting parts of my job. As I said, I meet literally 100 customers a month. I'm traveling across the continents, and the use-cases of big data that I see are truly phenomenal. It really keeps you very motivated to keep doing more.
Let's look at a very broad level of why these things matter. Big data is not just about monetary profits. It's really about what I call extended profits. It doesn’t have to be monetary. If you look at a simple example, we have medical companies using data, using our technologies, to dramatically speed up drug discovery hundreds of times more than they were able to with Hadoop.
That translates into just saving lives. At our recent Discover show in Barcelona, we saw that a very innovative organization is using our technology to look at bio-diversity and save wildlife in the Amazon.
That’s unique, but those are like edge cases. If you look at a regular enterprise, what they want to do at a very high level falls into three categories: Applications that HP itself is building, applications that partners are building, and applications that customers themselves are building.
There are three applications I’ll mention. In terms of increasing revenue, we have a product that we ship called Digital Marketing Hub, and it combines the power of Autonomy and Vertica to analyze all of your customer analytics.
You’re able to take your call center logs, your social media feeds, your emails, your phone interactions and find out what the customer is really is saying, what they want and don't want, and then, being able to optimize that interaction with the customer to create more revenue.
For example, when a customer calls knowing what they want, obviously you can tell them more precise things. That’s one example.
Let's look at another example, where you want to decrease your bottom line or decrease your costs. Operational Analytics is another software product we ship. We’re able to drive down costs of debugging network troubles by 80 percent by combining all these logs from machines on a very frequent basis.
We can look at this and say. "At this second, every machine was okay. A second later, machines have gone down." I can look exactly at the incremental logs that showed up, using a simple pen like a pointer, going through SQL-like data. That’s unique.
Those are the kinds of applications we’re able to create. It's not just these two. The other thing people want is to improve products and services. We have something called Service Anywhere, where, as you're calling or as you're typing in commands and saying you want to find information about that, the system is able to understand the meaning of what you’re saying.
Notice that this is not keyword search. This is meaning, where it's able to go through existing case reports from customers, look at existing resolutions, and then say, “Okay, this might solve your problem automatically.”
Imagine what that impacts. Your customers are happy, because the answers are quicker. We call this ticketless ID, but more important, look at some other interesting ways of how this affects a company.
For example, I was recently in Europe. I was talking to a very large telco there, and they said, “We have something like 20,000 call-center operators who are taking calls from customers. Each call volume might take six minutes and some of them are repeat calls. That’s really our problem.”
We worked out something that roughly could save them two minutes per call. That translates to about a $100 million net saving per year. That’s really phenomenal. Those are one kind of application that HP built.
Now imagine a customer wanting to build the same application themselves. That’s the beauty of the HAVEn platform. On the same platform, you can buy HP-built applications or you can build your own.
Let's look at NASCAR as an example. They did something very similar for customer analytics. They are able to—while the race is happening—understand audio, television channels, radio, broadcast, and social media and bring that all together as if it's one unique piece of data.
Then, they’re able to use that data in really innovative ways to further their sport and to create more promotional dollars for just not themselves, but even the participants. That’s unique—being able to analyze mass scale human data.
Gardner: Well, we've learned a lot about the market, the demand, why big data makes so much sense. There is very large undertaking by HP around HAVEn, and what it’s getting in terms of openness, platforms, breadth, and these great examples of applications. But we also need to look to the future.
What's coming next in terms of HAVEn 2.0 or HAVEn 1.5? Dan, could you update us on how things are progressing, what you have in mind for the next versions of these products and, therefore, the whole increasing as sum of the parts increases?
Wood: Dana, we've just announced HAVEn 2.0. The way Girish explained HAVEn there in terms of the platform and the ecosystem and continuous innovation now is around both of those pieces. It's really important to us to be driving the ecosystem, as well as the platform. So I’ll speak to HAVEn 2.0 and one of the feature that’s the focus in driving HP forward.
In terms of the platform, there are the analytics engines that we have. Girish mentioned they were best in class at the time that HP acquired them, and we continue to invest in R and D across Autonomy, IDOL, Vertica, and the ArcSight Logger product. We recently announced new versions of all three of those, improving the analytics capability and the usability and, just as importantly, increasing the interoperability.
For example, we now have integration of the ArcSight Logger with the Autonomy IDOL engine for analyzing unstructured human information. A really great use case of this is Logger was previously enabling IT to understand data movements and potential threats and the risks in the organization.
For example, if I were sending 50 percent of my email to a competitor, you could combine that capability with the unstructured information analysis in Autonomy and understand by that the information layer exactly what’s in that email, 50 percent of which is going to a competitor.
Let’s start putting that together and getting a powerful view of what an individual is doing and whether it’s a risky individual in the organization, integrating those HAVEn engines and putting more effort on integrating it into the Hadoop environment as well.
For example, we have just announced integration Hadoop connectors for Autonomy. A lot of people are saying that they’re building this data lake with Hadoop and they want to have the capability of putting some analytics into the unstructured information that exists in that Hadoop data lake. Clearly, we’ve also got integration with Vertica in the Hadoop environment as well.
The other key thing within that on the engine is IDOL OnDemand. At the moment, on an early-access program, we’re making the IDOL engine available to developers as a cloud-based offering. This is to encourage the independent developer community to take components of IDOL with that social media analytics, whether it’s video or audio recognition, and start building that into their own applications.
We believe the power of HAVEn will come from the combination of HP-provided applications and also third-party applications on top.
We’re facilitating that with this initial early-access program on IDOL OnDemand, and also, we’re investing in developer programs to make the whole HAVEn development platform far easier for partners and independent developers to work with.
We’ve set up a HAVEn developer website, and stay tuned for some really fun events online and physical events, where we’ll be getting the developer community together.
In terms of those applications that make the whole HAVEn ecosystem come to life, Girish has mentioned some of them that we have announced over the last few weeks. So I’ll give you a quick recap on those.
We have the Operations Analytics and Service Anywhere apps, both aimed at the CIO. And we have the Digital Marketing Hub from HP aimed at marketing leaders in the organizations. These are three applications that HP has packaged on the HAVEn platform.
And along with the HAVEn 2.0 announcement, we’re really pleased that six of the leading SI partners—Accenture, Capgemini, Deloitte, PwC, Accenture and Wipro—themselves have put marketing applications on top of HAVEn. And those guys have gotten fascinating mixtures of very industry-specific analytics applications and more horizontal apps based on the priorities that they’re chasing after.
So we’re really excited about that and expect to see many more announcements of partner applications over the next few months.
The final piece of HAVEn 2.0 to support this whole ecosystem thing is a marketplace that we’ve launched, where we’re populating our solutions and partner solutions to facilitate the whole commerce side of those applications taking off in the market.
The first place to go is hp.com/haven. That’s your one-stop resource for information on this platform, all of the engines that Girish alluded to. You can get the inspiration from some amazing customer case studies we have on there—insights from experts like Girish and other people who are talking in depth about the individual engines.
And as you rightly say, Dana, it’s finding the right on-ramp for yourself. You can look at the case studies we have, the use cases on big data in particular industries, and take a look at what is the specific pain point you have today.
You can also drill down from there, if you're a developer, and find the tools and resources that we’ve spoken about to enable you to start building apps on top of HAVEn. That’s one part.
The whole power of HP behind this HAVEn platform is in enabling, from an infrastructure and services point of view, to start building these big data analytics. A couple of key things here.
We started to build fully configured appliances around Hadoop and Vertica. So the Converged System’s team in HP has launched the ConvergedSystem 300, which enables you to have Vertica and Hadoop on a pre-configured appliance. That’s a great starting point for someone early on in the big data analytics life cycle.
To expand on that, the Technology Services team is able to do full consulting on how to optimize the overall infrastructure from the point of view of processing, sharing, and storing this vast amount of information that all organizations are coping with today. That will then start to put in things like 3PAR storage systems and other innovations across the HP hardware business.
Another place where I see customers often needing some help to get started is in understanding exactly what the questions are that we need to be asking in terms of analytics and exactly what algorithms and analytics we need to put in place to get going. This is where the Big Data Discovery Experience Services from HP come in.
This is provided by the Enterprise Services Group (ESG). Those guys have data scientists and industry experts who can actually help customers go through the design phase for a big data platform and than offer the HAVEn infrastructure supported by the ESG Services team.
Finally, Dana, come and see us on the road. We’ll be at HP Discover in Las Vegas June 10–12. We’re putting together several road shows and events across the main regions in Europe, the Americas, and in Asia Pacific, where we will be taking HAVEn on the road, too. Take a look at that hp.com/haven website, and details of the events will be found on there.
Mundada: There are two key messages: big data is really important and it’s disrupting business. Your competitors are going to do it. You have a choice to either lead and do it yourself or you will be forced to follow. It’s one of those things that are disrupting industries worldwide.
Now, when you think of big data, don’t think of pieces and don’t think of piece parts. It’s not like you need a separate solution for human information, another for machine logs, and another for structured data. You almost have to think of it holistically, because there are many kinds of newer applications that I’m seeing regularly, where you have to bring all these data types together and create joint applications.
Whichever technologies that you choose and settle on, think of that Microsoft Office-like experience. You want to combine integrated solution across the entire stack and there aren’t that many available in the market today. So whoever you work with, make sure that you’re able to handle that entire piece as one giant puzzle.
All fields must be completed to submit a comment. Email addresses are passed through to the author so they can contact you directly if needed.
Published by: electronicdawn Ltd.