China -United States -The Third Opium War

U.S.troops in China during the Boxer Rebellion...
Image via Wikipedia

A brief glance through http://www.treasury.gov/resource-center/data-chart-center/tic/Documents/mfh.txt

shows that while US added 600 billion of debt during the past one year, the Chinese actually reduced their exposure by 50 billion Dollars.

so who has been financing the debt for the US for the past one year- It is Japan- eager to keep its currency down and United Kingdom which has pumped in an extra 300 billion of T Bills.

See the whole table at official link above or at goo.gl/qMugp

—————————————————————————————-

China still remembers the Opium Wars in which the then ruling Anglo Saxon superpower used naval superiority to enforce trade and eventual political dependency. Is China unsure of the United States brotherly nice  intentions? They certainly seem to be putting their money that way.

http://en.wikipedia.org/wiki/Opium_Wars

Britain forced the Chinese government into signing theTreaty of Nanking and the Treaty of Tianjin, also known as the Unequal Treaties, which included provisions for the opening of additional ports to unrestricted foreign trade, for fixed tariffs; for the recognition of both countries as equal in correspondence; and for the cession of Hong Kong to Britain. The British also gained extraterritorial rights. Several countries followed Britain and sought similar agreements with China. Many Chinese found these agreements humiliating and these sentiments contributed to the Taiping Rebellion (1850–1864), the Boxer Rebellion (1899–1901), and the downfall of the Qing Dynasty in 1912, putting an end to dynastic China.

———————————————————————————————-

The Koreans can always be depended on provide the first shot in any conflict- and though Anglo-US-Chinese conflict would be expensive- I guess as long as the cost of outstanding debt with China is less than cost of a brief -techno-war , we would see interesting games in this neighborhood. Note China restricts major trade with United States particularly in software, internet services (like Web Advertising, Facebook, Twitter ) and represents a lucrative market for big pharma (especially in psychiatric drugs) and big tech once it reforms its intellectual property rights. Software would be the opium of the 21st Century- if Chinese resist the Treasury Bills as their poppy flowers. The widespread Western media coverage of school kids murders by pyschopaths is also a trade tactic to encourage flow of more US made medicine in the Chinese market.

It would also help create an economic revival in the United States to exaggerate the Chinese threat (remember Sputnik) and build up its own cyber spending. Any military or cyber humiliation for the ruling party in China can help create a political vacuum for more malleable and agreeable alternatives to emerge.

(to be continued)

 

Amazon goes HPC and GPU: Dirk E to revise his R HPC book

Looking south above Interstate 80, the Eastsho...
Image via Wikipedia

Amazon just did a cluster Christmas present for us tech geek lizards- before Google could out doogle them with end of the Betas (cough- its on NDA)

Clusters used by Academic Departments now have a great chance to reduce cost without downsizing- but only if the CIO gets the email.

While Professor Goodnight of SAS / North Carolina University is still playing time sharing versus mind sharing games with analytical birdies – his 70 mill server farm set in Feb last is about to get ready

( I heard they got public subsidies for environment- but thats historic for SAS– taking public things private -right Prof as SAS itself began as a publicly funded project. and that was in the 1960s and they didnt even have no lobbyists as well. )

In realted R news, Dirk E has been thinking of a R HPC book without paying attention to Amazon but would now have to include Amazon

(he has been thinking of writing that book for 5 years, but hey he’s got a day job, consulting gigs with revo, photo ops at Google, a blog, packages to maintain without binaries, Dirk E we await thy book with bated holes.

Whos Dirk E – well http://dirk.eddelbuettel.com/ is like the Terminator of R project (in terms of unpronounceable surnames)

Back to the cause du jeure-

 

From http://aws.amazon.com/ec2/hpc-applications/ but minus corporate buzz words.

 

Unique to Cluster Compute and Cluster GPU instances is the ability to group them into clusters of instances for use with HPC

applications. This is particularly valuable for those applications that rely on protocols like Message Passing Interface (MPI) for tightly coupled inter-node communication.

Cluster Compute and Cluster GPU instances function just like other Amazon EC2 instances but also offer the following features for optimal performance with HPC applications:

  • When run as a cluster of instances, they provide low latency, full bisection 10 Gbps bandwidth between instances. Cluster sizes up through and above 128 instances are supported.
  • Cluster Compute and Cluster GPU instances include the specific processor architecture in their definition to allow developers to tune their applications by compiling applications for that specific processor architecture in order to achieve optimal performance.

The Cluster Compute instance family currently contains a single instance type, the Cluster Compute Quadruple Extra Large with the following specifications:

23 GB of memory
33.5 EC2 Compute Units (2 x Intel Xeon X5570, quad-core “Nehalem” architecture)
1690 GB of instance storage
64-bit platform
I/O Performance: Very High (10 Gigabit Ethernet)
API name: cc1.4xlarge

The Cluster GPU instance family currently contains a single instance type, the Cluster GPU Quadruple Extra Large with the following specifications:

22 GB of memory
33.5 EC2 Compute Units (2 x Intel Xeon X5570, quad-core “Nehalem” architecture)
2 x NVIDIA Tesla “Fermi” M2050 GPUs
1690 GB of instance storage
64-bit platform
I/O Performance: Very High (10 Gigabit Ethernet)
API name: cg1.4xlarge

.

Sign Up for Amazon EC2

Deduping Facebook

How many accounts in Facebook are one unique customer?

Does 500 million human beings as Facebook customers sound too many duplicates? (and how much more can you get if you get the Chinese market- FB is semi censored there)

Is Facebook response rate on ads statistically same as response rates on websites or response rates on emails or response rates on spam?

Why is my Facebook account (which apparently) I am free to download one big huge 130 mb file, not chunks of small files I can download.

Why cant Facebook use URL shorteners for the links of Photos (ever seen those tiny fonted big big urls below each photo)

How come Facebook use so much R (including making the jjplot package) but wont sponsor a summer of code contest (unlike Google)-100 million for schools and 2 blog posts for R? and how much money for putting e education content and games on Facebook.

Will Facebook ever create an-in  house game?  Did Google put money in Zynga (FB’s top game partner) because it likes

games 🙂 ? How dependent is FB on Zynga anyways?

So many questions———————————————————— so little time

 

Interview John F Moore CEO The Lab

Social Media Landscape

Here is an interview with John F Moore, social media adviser,technologist and founder and CEO of The Lab.

Ajay-  The internet seems to be crowded by social media experts with everyone who spends a lot of time on the internet claiming to be one? How  does a small business owner on a budget distinguish for the correct value proposition that social media can give them. 

John- You’re right.  It seems like everytime I turn around I bump into more social media “experts”.  The majority of these self-proclaimed experts are not adding a great deal of value.  When looking to spend money for help ask the person a few questions about their approach. Things you should be hearing include:

  • The expert should be seeking to fully understand your business, your goals, your available resources, etc..
  • The expert should be seeking to understand current management thinking about social media and related technologies.

If the expert is purely focused on tools they are the wrong person.  Your solution may require tools alone but they cannot know this without first understanding your business.

Ajay- Facebook has 600 million people, with people preferring to play games and connect to old acquaintances rather than use social media for tangible career or business benefit..

John- People are definitely spending time playing games, looking at photos, and catching up with old friends.  However, there are many businesses seeing real value from Facebook (primarily by tying it into their e-mail marketing and using coupons and other incentives).  For example, I recently shared a small case study (http://thejohnfmoore.com/2010/10/07/email-social-media-and-coupons-makes-the-cfo-smile/) where a small pet product company achieved a 22% bump in monthly revenue by combining Facebook and coupons together.  In fact,45% of this bump in revenue came from new clients.  Customer acquisition and increased revenue were accomplished by using Facebook for their business.
Ajay-  How does a new social media convert (individual) go on selecting communities to join (Facebook,Twitter,Linkedin,Ning, Ping,Orkut, Empire Avenue etc etc.
How does a small business owner take the same decision.

John- It always starts with taking the time to define your goals and then determine how much time and effort you are willing to invest.  For example:
  • LinkedIn. A must have for individuals as it is one of the key social networking communities for professional networking.  Individuals should join groups that are relevant to their career and invest an hour a week.  Businesses should ensure they have a business profile completed and up to date.
  • Facebook can be a challenge for anyone trying to walk the personal/professional line.  However, from a business standpoint you should be creating a Facebook page that you can use to compliment your other marketing channels.
  • Twitter.  It is a great network to learn of, to meet, and to interact with people from around the world.  I have met thousands of interesting people, many of which I have had the pleasure to meet with in real life.  Businesses need to invest in listening on twitter to determine if their customers (current or potential) or competitors are already there discussing them, their marketplace, or their offerings.
In all cases I would encourage businesses to setup social media accounts on LinkedIn, Facebook, Twitter, YouTube, and Flickr.  You want to ensure your brand is protected by owning these accounts and ensuring at least the base information is accurate.
Ajay- Name the top 5 points that you think make a social media community successful.  What are the top 5 points for a business to succeed in their social media strategy.

John-
  • Define your goals up front.  Understand why you are building a community and keep this goal in mind.
  • Provide education.  Ideally you want to become a thought leader in your space, the trusted resource that people can turn to even if they are not using your product or services today.
  • Be honest.  We all make mistakes.  When you do, be honest with your community and engage them in any fall-out that may be coming out of your mistake.
  • Listen to them.  Use platforms like BubbleIdeas to gather feedback on what your community is looking for from the relationship.
  • Measure.  Are you on track with your goals?  Do your goals need to change?
Ajay- What is the unique value proposition that “The Lab” offers

John- The Lab understands the strategic importance of leveraging social media, management and leadership best practices, and our understanding of local government and small and medium business to help people in these areas achieve their goals.  Too many consultants come to the table with a predefined solution that really misses the mark as it lacks understanding of the client’s goals.
Ajay-  What is “CityCamp in Boston” all about.

John- CityCamp is a FREE unconference focused on innovation for municipal governments and community organizations (http://www.citycampboston.org/what-is-citycamp-boston/).  It brings together politicians, local municipal employees, citizens, vendors, developers, and journalist to build a common understanding of local government challenges and then works to deliver measurable outcomes following the event.  The key is the focus on change management, driving change as opposed to just in the moment education.
Biography-

John F Moore is the Founder and CEO of The Lab (http://thelabinboston.com).  John has experience working with local governments and small and medium business owners to achieve their goals.  His experience with social media strategies, CRM, and a plethora of other solutions provides immense value to all of our clients.   He has built engineering organizations, learned sales and marketing, run customer service teams, and built and executed strategies for social media thought leadership and branding.  He is also a prolific blogger as you can see by checking out his blog at http://thejohnfmoore.com.

Microsoft Online Games

No, this is not about the X Box kind of games. It is about Microsoft ‘s tactical shift in the online space from going it alone, and building stuff itself, –to partnering, and sometimes investing and exiting business.

In Blogs- It recently announced a migration of MS Live Spaces to WordPress.com – It gives Automattic 30 million more users- no small change consider there were 26 million existing WP users.

Microsoft Messenger, which is the oldest online app in the suite, now provides instant messaging services to about 350 million users, and from now on Windows Live Writer works specifically with the WordPress.com blog service by default. Hopefully Skype, and Google Voice will show MS the way to monitize that business app yet.

Google buying blogger-blogspot seems to have done little, but given Biz Stone room to create another content disruption-Twitter.

With the round of lawsuits by proxy, in Android -Motorola, or for acquisitions – MS is just doing what Marc Anderseen (who’s apparently a better VC than Paul Allen was), Sun and co did to it in the nineties.

Google seems to be regretting putting a spade in the Yahoo acquisition- that would have tied up a big chunk of Idle MS cash- leaving it little room for niche investments (like the 250 mill that helped Facebook ramp up in time).

The real surprise here could be Apple- it has shown little interest in cloud computing- and it seems to be testing the waters with Ping. But Apple sure smells competition- and Android is doing to Iphone what Windows did to the Mac in the early 1990’s.

Google lacks presence in online gaming (despite it’s own Zynga investment)- and needs to start monetizing properties like Android OS (say 10$ for every phone license ??), Google Maps (as an app for GPS) and Google Voice. Indeed it may be time for the big G to start thinking of spinning off atleast some products- earning better returns, while retaining control (dual stock splits) and killing those anti trust lawyer fees forever.

As the Ancient Chinese said, May you live in interesting times. Fun to watch the online games people play.

 

 

Interview Michael J. A. Berry Data Miners, Inc

Here is an interview with noted Data Mining practitioner Michael Berry, author of seminal books in data mining, noted trainer and consultantmjab picture

Ajay- Your famous book “Data Mining Techniques: For Marketing, Sales, and Customer Relationship Management” came out in 2004, and an update is being planned for 2011. What are the various new data mining techniques and their application that you intend to talk about in that book.

Michael- Each time we do a revision, it feels like writing a whole new book. The first edition came out in 1997 and it is hard to believe how much the world has changed since then. I’m currently spending most of my time in the on-line retailing world. The things I worry about today–improving recommendations for cross-sell and up-sell,and search engine optimization–wouldn’t have even made sense to me back then. And the data sizes that are routine today were beyond the capacity of the most powerful super computers of the nineties. But, if possible, Gordon and I have changed even more than the data mining landscape. What has changed us is experience. We learned an awful lot between the first and second editions, and I think we’ve learned even more between the second and third.

One consequence is that we now have to discipline ourselves to avoid making the book too heavy to lift. For the first edition, we could write everything we knew (and arguably, a bit more!); now we have to remind ourselves that our intended audience is still the same–intelligent laymen with a practical interest in getting more information out of data. Not statisticians. Not computer scientists. Not academic researchers. Although we welcome all readers, we are primarily writing for someone who works in a marketing department and has a title with the word “analyst” or “analytics” in it. We have relaxed our “no equations” rule slightly for cases when the equations really do make things easier to explain, but the core explanations are still in words and pictures.

The third edition completes a transition that was already happening in the second edition. We have fully embraced standard statistical modeling techniques as full-fledged components of the data miner’s toolkit. In the first edition, it seemed important to make a distinction between old, dull, statistics, and new, cool, data mining. By the second edition, we realized that didn’t really make sense, but remnants of that attitude persisted. The third edition rectifies this. There is a chapter on statistical modeling techniques that explains linear and logistic regression, naive Bayes models, and more. There is also a brand new chapter on text mining, a curious omission from previous editions.

There is also a lot more material on data preparation. Three whole chapters are devoted to various aspects of data preparation. The first focuses on creating customer signatures. The second is focused on using derived variables to bring information to the surface, and the third deals with data reduction techniques such as principal components. Since this is where we spend the greatest part of our time in our work, it seemed important to spend more time on these subjects in the book as well.

Some of the chapters have been beefed up a bit. The neural network chapter now includes radial basis functions in addition to multi-layer perceptrons. The clustering chapter has been split into two chapters to accommodate new material on soft clustering, self-organizing maps, and more. The survival analysis chapter is much improved and includes material on some of our recent application of survival analysis methods to forecasting. The genetic algorithms chapter now includes a discussion of swarm intelligence.

Ajay- Describe your early career and how you came into Data Mining as a profession. What do you think of various universities now offering MS in Analytics. How do you balance your own teaching experience with your consulting projects at The Data Miners.

Michael- I fell into data mining quite by accident. I guess I always had a latent interest in the topic. As a high school and college student, I was a fan of Martin Gardner‘s mathematical games in in Scientific American. One of my favorite things he wrote about was a game called New Eleusis in which one players, God, makes up a rule to govern how cards can be played (“an even card must be followed by a red card”, say) and the other players have to figure out the rule by watching what plays are allowed by God and which ones are rejected. Just for my own amusement, I wrote a computer program to play the game and presented it at the IJCAI conference in, I think, 1981.

That paper became a chapter in a book on computer game playing–so my first book was about finding patterns in data. Aside from that, my interest in finding patterns in data lay dormant for years. At Thinking Machines, I was in the compiler group. In particular, I was responsible for the run-time system of the first Fortran Compiler for the CM-2 and I represented Thinking Machines at the Fortran 8X (later Fortran-90) standards meetings.

What changed my direction was that Thinking Machines got an export license to sell our first machine overseas. The machine went to a research lab just outside of Paris. The connection machine was so hard to program, that if you bought one, you got an applications engineer to go along with it. None of the applications engineers wanted to go live in Paris for a few months, but I did.

Paris was a lot of fun, and so, I discovered, was actually working on applications. When I came back to the states, I stuck with that applied focus and my next assignment was to spend a couple of years at Epsilon, (then a subsidiary of American Express) working on a database marketing system that stored all the “records of charge” for American Express card members. The purpose of the system was to pick ads to go in the billing envelope. I also worked on some more general purpose data mining software for the CM-5.

When Thinking Machines folded, I had the opportunity to open a Cambridge office for a Virginia-based consulting company called MRJ that had been a major channel for placing Connection Machines in various government agencies. The new group at MRJ was focused on data mining applications in the commercial market. At least, that was the idea. It turned out that they were more interested in data warehousing projects, so after a while we parted company.

That led to the formation of Data Miners. My two partners in Data Miners, Gordon Linoff and Brij Masand, share the Thinking Machines background.

To tell the truth, I really don’t know much about the university programs in data mining that have started to crop up. I’ve visited the one at NC State, but not any of the others.

I myself teach a class in “Marketing Analytics” at the Carroll School of Management at Boston College. It is an elective part of the MBA program there. I also teach short classes for corporations on their sites and at various conferences.

Ajay- At the previous Predictive Analytics World, you took a session on Forecasting and Predicting Subsciber levels (http://www.predictiveanalyticsworld.com/dc/2009/agenda.php#day2-6) .

It seems inability to forecast is a problem many many companies face today. What do you think are the top 5 principles of business forecasting which companies need to follow.

Michael- I don’t think I can come up with five. Our approach to forecasting is essentially simulation. We try to model the underlying processes and then turn the crank to see what happens. If there is a principal behind that, I guess it is to approach a forecast from the bottom up rather than treating aggregate numbers as a time series.

Ajay- You often partner your talks with SAS Institute, and your blog at http://blog.data-miners.com/ sometimes contain SAS code as well. What particular features of the SAS software do you like. Do you use just the Enterprise Miner or other modules as well for Survival Analysis or Forecasting.

Michael- Our first data mining class used SGI’s Mineset for the hands-on examples. Later we developed versions using Clementine, Quadstone, and SAS Enterprise Miner. Then, market forces took hold. We don’t market our classes ourselves, we depend on others to market them and then share in the revenue.

SAS turned out to be much better at marketing our classes than the other companies, so over time we stopped updating the other versions. An odd thing about our relationship with SAS is that it is only with the education group. They let us use Enterprise Miner to develop course materials, but we are explicitly forbidden to use it in our consulting work. As a consequence, we don’t use it much outside of the classroom.

Ajay- Also any other software you use (apart from SQL and J)

Michael- We try to fit in with whatever environment our client has set up. That almost always is SQL-based (Teradata, Oracle, SQL Server, . . .). Often SAS Stat is also available and sometimes Enterprise Miner.

We run into SPSS, Statistica, Angoss, and other tools as well. We tend to work in big data environments so we’ve also had occasion to use Ab Initio and, more recently, Hadoop. I expect to be seeing more of that.

Biography-

Together with his colleague, Gordon Linoff, Michael Berry is author of some of the most widely read and respected books on data mining. These best sellers in the field have been translated into many languages. Michael is an active practitioner of data mining. His books reflect many years of practical, hands-on experience down in the data mines.

Data Mining Techniques cover

Data Mining Techniques for Marketing, Sales and Customer Relationship Management

by Michael J. A. Berry and Gordon S. Linoff
copyright 2004 by John Wiley & Sons
ISB

Mining the Web cover

Mining the Web

by Michael J.A. Berry and Gordon S. Linoff
copyright 2002 by John Wiley & Sons
ISBN 0-471-41609-6

Non-English editions available in Traditional Chinese and Simplified Chinese

This book looks at the new opportunities and challenges for data mining that have been created by the web. The book demonstrates how to apply data mining to specific types of online businesses, such as auction sites, B2B trading exchanges, click-and-mortar retailers, subscription sites, and online retailers of digital content.

Mastering Data Mining

by Michael J.A. Berry and Gordon S. Linoff
copyright 2000 by John Wiley & Sons
ISBN 0-471-33123-6

Non-English editions available in JapaneseItalianTraditional Chinese , and Simplified Chinese

A case study-based guide to applying data mining techniques for solving practical business problems. These “warts and all” case studies are drawn directly from consulting engagements performed by the authors.

A data mining educator as well as a consultant, Michael is in demand as a keynote speaker and seminar leader in the area of data mining generally and the application of data mining to customer relationship management in particular.

Prior to founding Data Miners in December, 1997, Michael spent 8 years at Thinking Machines Corporation. There he specialized in the application of massively parallel supercomputing techniques to business and marketing applications, including one of the largest database marketing systems of the time.