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Why do we need a framework for data analytics?
In analytics, the framework allows you to move through data analysis in an organized way. It provides you with a process to follow as you scrutinize the data with your teams to identify and solve problems.Imagine having a data-focused project with your team and start working on that project. If you’re not using a framework, there’s a good chance that different people will use different approaches to solve the same problem. Having different approaches will make it difficult to make a decision at different stages of your project and can be difficult to trace it back.
The framework will allow you to focus on the business outcomes first and the actions and decisions that enable the outcomes. It helps you to focus attention on what generates value first before examining all the data that are available or data that are not available that needs to be procured.As a or a data analyst, you might ask yourself “what analytic techniques can I use and what tools can help me to analyze my data”?. There are four types of data analytics, and the tools used to help build analysis: Descriptive analytics, Diagnostic analytics, Predictive Analytics, and Prescriptive analytics.
The choice of an analytical approach based on what do you want to get or know from the data. This ranges from whether you want to identify a problem, propose a solution to solve problems, provide recommendations or actions that should be taken in the future.This helps you understand the current state of affairs in an organization. It lets you look at what is happening today and what has happened in the past. This type of analytics typically provides summarized information to understand currently existing sales patterns or customer behavior, customer profitability, past competitor actions, etc.
Specific techniques might include simple box plots, histogram charts with means, minimums, and maximums. Plotting the in quartiles or deciles across a number of different variables. Or computing statistical measures like mean, mode, standard deviation, etc.Descriptive analytics is very powerful for understanding the current state of affairs and for developing the hypothesis to anticipate where business problems and opportunities may lie.This provides the reasons for what happened in the past. This type of analytics typically tries to go deeper into a specific reason or hypotheses based on descriptive analytics.
While descriptive analytics cast a wide net to understand the breadth of the data, diagnostic analytics goes deep into the costs of issues.Unlike descriptive or diagnostic analytics, predictive analytics is more forward-looking. Predictive analytics lets you envision what could happen in the future. This type of analytics can help the client answer questions like, what are my customers likely to do in the future? What are my competitors likely to do? What will the market look like? How will the future impact my product or service?.
Predictive analytics typically predicts what could happen based on the evidence we have seen.This goes beyond providing recommendations to actually executing the actions, or making the decisions that are right for a particular situation. It does this by looking at what happened in the past, the present state, and all the future possibilities.
Prescriptive analytics provides answers to the question, what steps or interventions need to be taken (what is the solution) to achieve the desired outcomes? Often the intervention might be an optimal solution given the circumstances. Or the best possible action, given the uncertainty in the environment and the limited information available.
Prescriptive analytics is powerful in understanding the right actions needed today to address future possibilities and put an organization in the best possible position to take advantage of future conditions.So how can a company/organization apply this technique to solve their business problems? Let us take a look at the following case study.For example, GE now says "well okay, we sold this equipment, we have sensors and devices on this equipment to figure out or to compute their operating parameters to get their operational details. From that, we can do analytics to then actually tell you (client) how best to operate all of the equipment to maximize the value".
So for instance, if the client has bought a whole series of windmills, GE will help them optimize their setup. They may ask, "When do you let the windmills run? How often is the wind too high that you just have to let the windmills spin freely? When do you schedule the maintenance across the different units so that overall the power output remains steady? Are you also maintaining and keeping up the lifetime of all of those windmills?" And so on.
So really partnering at an even deeper level with the client, to get the client to maximize their value.The Transactional Model for GE was focusing on how much GE was selling, in sales of operational equipment, and in sales of parts and services. And what does GE need to do to drive up those sales? So in terms of analytics, GE needed to perform descriptive and diagnostic analytics in order to increase its sales of equipment, parts, and services.
During the level of the contractual model, GE would guarantee the performance of its equipment sold to its clients. Now they need to go into the level of predictive analytics.
GE needs to predict when stuff will fail so that they can do preventive maintenance. They need to be able to predict how to operate this equipment so that it will actually stay up for 90% of the time. Finally, performance guarantees take GE to the level of predictive analytics.This has changed the business model because GE is actually selling not just the equipment, parts, and services, GE is selling the analysis that means GE is going to be charging money for this partnership where GE can tell its clients how best to operate the equipment. So this is actually generating more value for both GE and for the clients.
This article was also published at //becominghuman.ai/understand-data-analytics-framework-with-a-case-study-in-the-business-world-15bfb421028d