‘Big Analytics’ for Hospitality

March 18, 2013

In last week’s post I proposed that the hospitality industry move past debating whether they have a big data problem and move towards admitting that they have a big analytics opportunity. In this post, I want to give you some more specific examples of the benefits of “big analytics” (and “big data analytics”).

In Natalie Osborn’s SAS post from earlier this month, industry experts weighed in on the opportunities and challenges associated with analytics in hospitality in today’s market. The overriding theme was around accessing data and turning it into meaningful information quickly.Big analytics is all about speed to decision making.

For hospitality, big analytics comes into play in two high-level areas:

    1. Making analytical decisions in real timeThe guest is standing in front of you, on your website or even just passing by, and you need to get a relevant message to them right at that moment. Your manager is on the floor trying to figure out what do next based on current operating conditions.
    2. Running scenarios, evaluating options, and testing alternatives. Even if you don’t have to make a decision in the moment, faster answers give you more time for analysis. Multiple runs with adjusted parameters or dynamic what-if analysis provide opportunities to do a more complete evaluation before making a decision.

Big analytics for real-time analytical decisions
Personalization has always been a hot topic (and big challenge) for hospitality companies. Delivering that memorable experience, which cements loyalty and increases return likelihood on a mass scale across huge global enterprises with high line-level turnover, is a seemingly insurmountable challenge.

But, if you can interpret behavior and deliver a relevant recommendation to the employee (or device) that the guest is interacting with while the guest is right there, “mass personalization” becomes achievable. If you get it right, you have a “surprise and delight” moment. If you get it wrong, you have an artificial, seemingly scripted interaction that makes the guest feel like one of the crowd.

Big analytics lets you run predictive models based on current, observed guest behavior compared to their past behavior (or that of similar guests) to determine what you can offer, mention, or provide to encourage the behavior you want, in time to make it happen. You can uncover cross- and up-sell opportunities, fill empty restaurant seats, or just wish someone a happy birthday or a welcome back — all right in the moment.

Big analytics also comes into play when your guest is on your website. Matching what you know about them, or how they compare to previous visitors, with their current click patterns can help the analytics predict what content should be surfaced to maximize their likelihood to convert. Extend that to the mobile strategy with location data (and, by the way, now we’re starting to get into some big data — I’m just saying…).

What about operational managers on the floor who want to make real time, proactive decisions about what gaming tables to open and close, how to deploy staff or which restaurant to send guests to? You don’t have time to wait three hours to calculate an updated forecast, when you are trying to decide whether you can save labor cost by cutting a few servers early. Is gut instinct enough when high revenue impact decisions like raising and lowering minimum table bets are on the line? Big analytics helps you to calculate the advanced predictive models that support your management decisions at the speed of business.

Big analytics for scenario testing
Many hospitality companies may argue that they either aren’t ready for real-time or don’t need it. Whether the scenarios I described above are relevant or achievable for your organization or not, there’s a very strong argument for using big analytics to help your analysts make better decisions faster. After all, good analysts are in high demand, so increasing productivity — and making better decisions — with your existing analysts will have a huge positive impact on your business. Here are some hospitality examples where big analytics moves the needle, even if “real time” isn’t the goal.

As the decisions that marketing departments must make about their campaign plans become more complex, marketing departments are turning to optimization to help. Marketing optimization algorithms output a contact strategy for each campaign that meets a campaign goal (maximize response, minimize costs), considering all relevant campaign constraints (opt-in preferences, channels, contact strategies, guest eligibility, prevailing rate, blackout dates, budgets, etc.).

As the number of available offers increases, along with the size of the customer database and the number of channels, so does the size of the problem. Without big analytics, the answer comes back in hours. This could be fine, if you don’t have any options within the problem. Frequently, however, the parameters of the problem have ranges (guest can be contacted between two and four times a month, channels can be added or removed, eligibility can change). With big analytics, you can run multiple versions of the problem in the same amount of time, and determine whether relaxing or removing a constraint gives you an even better answer.

Revenue management is the hospitality industry’s classic big analytics problem. To come up with a pricing recommendation, detailed forecasts are calculated and fed into a complex optimization algorithm. The detail and complexity requires intensive processing power and many passes at the data to solve. In order for results to be relevant, at a minimum, these forecasts and optimizations need to be able to run overnight so that prices can be updated once a day. If it takes any longer, with new reservations coming in all the time, recommendations will be out of date before they are produced.

Without big analytics, even to only meet this overnight goal, revenue management systems would have to make sacrifices and take shortcuts — summarizing data, restricting forecasting methods, and replacing true optimization with heuristics. With big analytics, harder, more complex problems take minutes or even seconds to run. Revenue management algorithms can utilize more and more detailed data, forecasting options can be expanded, true optimization can be utilized, and the entire process can run more frequently, providing better pricing recommendations faster.

Even better for revenue managers, with big analytics, scenario testing and “what if” analysis is now possible. Revenue managers often see the need to override the system based on their unique market knowledge (or demands from the general manager). Without big analytics, revenue managers make the adjustments and have to wait until the next day to see the impact on price recommendations. With big analytics, revenue management systems can support “what if” analysis. With the push of a button, revenue managers can see the impact of parameter overrides on the highly interrelated pricing problem before they put the overrides into production. Not only can they better support their own decision making (and learn how the system reacts to certain types of changes), but they also have evidence to support their position when they disagree with the GM’s demands!

Clearly, big analytics presents big opportunity for hospitality. These are only a few examples. Can you think of any other areas where better answers, faster, would benefit you? We’d love to hear from you!

Have you seen the “Hospitality research you should be using now” webcast?

This originally appeared on the SAS blog, The Analytical Hospitality Executive.

Thanks to allanalytics.com


US IT Spending Forecast is 7.1% for 2013 (IDC)

December 6, 2012

Click to visit the original post

Rounding out the top 3 industries in growth are Healthcare, Utilities and Resource Industries (Source:  IDC Worldwide Vertical Markets, Q3 ’12 IDC Black Book).

In addition to the increased spend, CIOs have outlined 6 primary initiatives to help drive revenue, profit and business optimization. Atop of the trends are Cloud and Big Data initiatives, which both enable IT to be aligned with the business while driving more innovation – this is emphasized by a majority of organizations (60-85%) just starting off on these projects.

IDC Insights Predictions 2013: Cross-Industry Overview

Ironically C24 are providing solutions within all 6 areas. For more information please visit http://www.c24.co.uk

 


Bi24 covers all of Gartner’s predictions

July 13, 2012

Gartner’s 2012 predictions for business intelligence focus on the challenges around Cloud, alignment with business metrics and a balanced organisational model between centralised and scattered.  CIO Australia has highlight the top six BI trends for the year ahead are:

  1. BI in the Cloud
  2. Mobile BI
  3. Analytics
  4. In-memory analytics
  5. The Agile approach to BI
  6. Big Data

The above is really big news for Bi24, C24′s cutting edge business intelligence solutions, as we cover all these areas in one solution. Current uptake of the product has seen clients throughout the UK and Europe using the solution to drive business. For more information please visit www.c24.co.uk

 

See CIO.COM


85% of 569 business executives and IT leaders report obstacles in managing and analysing data

June 7, 2012

This is one of the results that Global Survey: The Business Impact of Big Data produced.

It’s not surprising. In the survey’s definition, “Big Data” comprises – in descending order of sources:

Key findings show us that the data deluge is real. In fact, the majority of respondents report being overwhelmed by the amount of data in the workplace. Many employees feel constantly distracted by multiple streams of information – this is especially true of C-level executives.

Despite feeling overwhelmed, executives have an insatiable desire for more data. Companies appear to be addicted. The majority of respondents believe information will fundamentally change their business. And yet today, only a minority views their company data as a strategic differentiator. Most, instead, see it as a consequence of doing business.

Check the link out to read the survey

 


Is Big Data IT’s Secret Weapon for Information Security?

May 23, 2012

by Rob Sobers

When I talk to IT security pros today about how they manage and protect data, most describe grueling manual processes and makeshift solutions comprised of countless off-the-shelf products and fragile homegrown scripts.

Fortunately, most of us understand the importance of using automation to help fight our battles, but the rapidly changing landscape of new technologies, security threats, and paradigm shifts makes it difficult to stay ahead of the curve. Choosing to specialize in the wrong technology can be career limiting, recommending the wrong technology to your boss can be career ending.

When a new buzzword like big data starts to take off, we have the right to be skeptical. Is there something really new and important, or is it just hype? Is this going to change the how we do things for years to come, or is it just a distraction? How do we really use it?

At Infosecurity Europe 2012, we conducted a survey to determine what IT security professionals were thinking about big data. Over 180 attendees responded, answering questions about whether they thought the definition of big data itself was clear, whether it is or will be a priority for their organizations, and how they might like to use it.

Big Data Security

Like this infographic? Get more big data tips from Varonis.


Managing the flood of big data: infographic | Econsultancy

May 11, 2012

Using big data to make better decisions

By having the right data at their fingertips, marketers can make better decisions to:
•Identify high potential audiences and accurately target them
•Enable the right message at the right time via the right content targeting
•Maximize ad inventory by identifying high-value audiences across publisher properties
•Optimize ad media purchase and understand the value of channels higher up in the funnel


Overcoming the Complexity of Big Data with Big Transaction Data

May 10, 2012

By Diego Lomanto

For most companies, the challenge with big data lies in making sense of the data acquired in order to apply it to real world problems when decisions matter most.  Big data is hot right now because we recognize that we are generating more data than ever before and that we might be able to do something with it.  However, much the execution of big data has been around storage of the data (think Hadoop) and search (think Splunk).  That’s a great start, but do they really solve any problems in a new way on their own?

Start a big data project and you will soon realize that the data itself is limited because it is partial (takes whatever is available), difficult to consume for analysis (because it’s unstructured) and often offers limited value use cases.  It’s complicated.

I think the evolution towards better value from the data is still in progress.  I think we’ll not only see continued progress in storage but I believe that technology will emerge to make working with big data feel a wee bit smaller.  What I mean by that is we’ll still collect the data at massive scales, but there will be technology that simplifies the big data into a model that is consumable by analytic applications.  In other words, it will transform the data to actually represent something that can be analyzed.

Big Transaction Data

Big Transaction Data (BTD) is a great example of this.   It is complete, comprehensive and correlated.  But it’s also usable.  Let’s have a quick primer on BTD.

What it is, effectively, is the data generated by transactional systems in raw form modeled to represent the unique end-to-end transaction that drove the data generation in the first place, and stored alongside millions, billions, trillions (insert your own “illion” here) of other transactions.  This is done by technology – typically business transaction management software that observes and reports on transaction performance at each tier.

This is REAL big data in action.  And that’s where business transaction data comes into play.  BTD takes the data and stores it in a consumable form for analytics.  The transaction becomes the anchor for the analytics process.

The Problem with Fragmented Data

For example, say you wanted to analyze the end to end process performance of a financial trade system.  The systems that execute financial trades are ridiculously complex.  Think of the most complex system you can think of  and then multiply it by 3.  Why?  Because they are using a mix of new and old technologies and it’s distributed across multiple tiers and managed by many different stakeholders.  So what you get his this hodgepodge of tiers to execute trades that is incredibly difficult to rationalize into a singular data set.  The unfortunate by-product of this is that your view of the trade transaction is really just fragmented data.  You can see pieces of the transaction performance but not really ALL of the transaction.

But, you still need to analyze trades across the tiers and processes as a single input into your trade effectiveness analysis.  So you do the best you can.  You go deep into the tier data and try to correlate it on your own within your own analytic model.  For example, you try to monitor cross-process fallout with a cool looking dashboard that gives you data on each process, but you don’t really do it well and miss a lot of cross-process issues.

Or you try to do a cost analysis.  Or a segmentation analysis.  Or a performance analysis.  But the work to create a singular data set is so complicated that you never really have full confidence in the results.

Big Transaction Data in Action

Here is a great opportunity to employ big transaction data.  Instead of working with billions of manually correlated data points, let’s simplify and work with millions of well-defined transactions instead.  End-to-end transactions that represent each trade across each process in full.  Now you have a data set that you can inject it into your BI platform or use simply use BI tools within the big transaction data solution itself for analysis.

So back to those 3 Cs.  The data is complete – that means all information is generated by BTM end to end one view.  It’s comprehensive – capturing ALL interactions. And, it’s correlated – it knows everything about vital meta-data such as user, tiers, etc. The result is easy to consume meaningful analytics leading to business outcomes.

So, big data is hot.  But it’s not quite there yet.  We’re waking up with more data but we’re still working to rationalize it.  Fortunately, the technology is on its way to simplify and gain more (true) value from big data.


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