This is the second in a series of BI-related posts and it deals with what platforms are being selected and what objectives are being served with SMB Business Intelligence customers. Despite a much shorter history than packaged BI, our survey found a higher level of Cloud-based than packaged BI applications within the SMB respondent base. You may want to open it up to full size as the charts are a little crowded.
Techaisle Blog
Predictive Analytics (PA) is emerging as an important tool in the area of business decision. Predictive Analytics primarily deals with making a forecast based on several inputs. In this and the blogs that follow I will share my experiences with Predictive Modelling (PM), with a view to contributing to the current knowledge base that exists in the Predictive Analytics World.
In the world of business most predictive analytical tools are quantitative where numeric data is used for building an input-output model. The output is the prediction for specific inputs. For example: A 10% increase in advertising in January will result in an increase of 1% sale in May is a typical output from predictive analytics.
Common Mistake of Predictive Modelers: Assumption of linearity
Predictive Models are largely based on statistical techniques. Multiple Linear Regression (MLR) model is what most users will confront when they look at predictive models. This model works in the background whether one is using a multiple time series or multi-level modelling.
Multiple Linear Regression Models are developed based on a crucial assumption: the output is linearly dependent on the inputs. But all experience shows that in most business situations the assumption of linearity is not valid. Hence the statistical models have a poor fit and low predictive capability. In addition, the business world also suffers from Black Swan problems that no modelling can manage with any level of confidence.
The net effect of a linearity assumption, which is ubiquitous in almost all statistical modelling, and the resultant poor fit and low predictive capability has led to frustrated user community. Hence, a business executive looks at models with suspicion and trusts ‘gut’ to make decisions.
Predicament
The predicament of Predictive Modellers’ is: How do we get away from the linearity assumption on which almost all statistical tools are based, but it is known that this assumption is a poor, in fact a very poor, approximation of the real world behaviour?
The story of our approach to modelling starts from this predicament that we have been in, along with all others, and the path that we cut out to get out of it.
Dr. Cooram Ramacharlu Sridhar (Doc)
Managing Director and Advisor, Segmentation & Predictive Modeling
- 6-72 TB of NAND Flash capacity
- Up to 650,000 IPOS
- Upto 7 GB/Sec bandwidth
- Asynchronous replication
- VMWare and Citrix ready
The products are completely scalable. A mid-market customer can begin with Accela and can add Invicta through InfiniBand as the needs grow. Even within the Invicta chassis, a toup to 6 storage nodes with 6 to 12TB and one router can be added as lego blocks as the data needs evolve.
Analyst Speak
Whiptail’s announcement comes at a time when the buzz about big data has reached a crescendo. And along with big data, vendors and analysts have started to talk about data obesity and therefore need for storage capacity. Granted that storage capacity needs are multiplying but big data poses a bigger challenge – extremely high throughput and read-to-write performance. Traditional storage vendors have tried to make higher-performing storage either by using as many spindles or constricting drives. None of them technically really address the velocity problem – real time streams of high volume information that is both structured and unstructured. Whiptail is taking the conversation away from storage-capacity play to velocity play thereby reducing the cost of transactions.
Even the channel partners wanting to develop or expand their datacenters and offer cloud-based services can use Invicta because of its multi-tennant, multiple addminstrators, and role-based security capabilities.
Invicta is an application acceleration platform that big data purveyors will love to the bane of other other storage vendors.
Anurag Agrawal
Techaisle
With its latest announcement, Intuit has demonstrated that it is bringing data-driven insights to small businesses, sole-proprietors; insights that were previously only available to large enterprises. This information should empower small businesses to compare themselves against benchmarks and thereby effect changes in their organizations.
It certainly places in the hands of Intuit’s small business customers, power of the data. Both the Employment and Revenue Indexes are updated monthly by Intuit which is far more often than government stats and take a snapshot that is more targeted and pertinent to small business owners. They could use it as a signal for whether it’s time to hire, cut back or increase employee salaries.
As Techaisle had mentioned in its own press release on big data on April 26, 2012, data analytics is equally relevant for small businesses. 12 percent of small businesses using business intelligence are interested in big data analytics. However, they are looking for an IT vendor or partner to collect, collate, and analyze big data and present to these small businesses as a resource, in other words, democratization of big data. The collected data is an aggregation of information being created by other small businesses within the same vertical segment or employee size category. Intuit to my mind, just did it.
Timing by Intuit could not be more perfect.
Anurag Agrawal
Techaisle