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Statistics for Data Science

You're reading from   Statistics for Data Science Leverage the power of statistics for Data Analysis, Classification, Regression, Machine Learning, and Neural Networks

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Product type Paperback
Published in Nov 2017
Publisher Packt
ISBN-13 9781788290678
Length 286 pages
Edition 1st Edition
Languages
Tools
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Author (1):
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James D. Miller James D. Miller
Author Profile Icon James D. Miller
James D. Miller
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Table of Contents (13) Chapters Close

Preface 1. Transitioning from Data Developer to Data Scientist 2. Declaring the Objectives FREE CHAPTER 3. A Developer's Approach to Data Cleaning 4. Data Mining and the Database Developer 5. Statistical Analysis for the Database Developer 6. Database Progression to Database Regression 7. Regularization for Database Improvement 8. Database Development and Assessment 9. Databases and Neural Networks 10. Boosting your Database 11. Database Classification using Support Vector Machines 12. Database Structures and Machine Learning

Objectives of a data developer

Every role, position, or job post will have its own list of objectives, responsibilities, or initiatives.

As such, in the role of a data developer, one may be charged with some of the following responsibilities:

  • Maintaining the integrity of a database and infrastructure
  • Monitoring and optimizing to maintain levels of responsiveness
  • Ensuring quality and integrity of data resources
  • Providing appropriate levels of support to communities of users
  • Enforcing security policies on data resources

As a data scientist, you will note somewhat different objectives. This role will typically include some of the objectives listed here:

  • Mining data from disparate sources
  • Identifying patterns or trending
  • Creating statistical models—modeling
  • Learning and assessing
  • Identifying insights and predicting

Do you perhaps notice a theme beginning here?

Note the keywords:

  • Maintaining
  • Monitoring
  • Ensuring
  • Providing
  • Enforcing

These terms imply different notions than those terms that may be more associated with the role of a data scientist, such as the following:

  • Mining
  • Trending
  • Modeling
  • Learning
  • Predicting

There are also, of course, some activities performed that may seem analogous to both a data developer and a data scientist and will be examined here.

Querying or mining

As a data developer, you will almost always be in the habit of querying data. Indeed, a data scientist will query data as well. So, what is data mining? Well, when one queries data, one expects to ask a specific question. For example, you might ask, What was the total number of daffodils sold in April? expecting to receive back a known, relevant answer such as in April, daffodil sales totaled 269 plants.

With data mining, one is usually more absorbed in the data relationships (or the potential relationships between points of data, sometimes referred to as variables) and cognitive analysis. A simple example might be: how does the average daily temperature during the month affect the total number of daffodils sold in April?

Another important distinction between data querying and data mining is that queries are typically historic in nature in that they are used to report past results (total sales in April), while data mining techniques can be forward thinking in that through the use of appropriate statistical methods, they can infer a future result or provide the probability that a result or event will occur. For example, using our earlier example, we might predict higher daffodil sales when the average temperature rises within the selling area.

Data quality or data cleansing

Do you think a data developer is interested in the quality of data in a database? Of course, a data developer needs to care about the level of quality of the data they support or provide access to. For a data developer, the process of data quality assurance (DQA) within an organization is more mechanical in nature, such as ensuring data is current and complete and stored in the correct format.

With data cleansing, you see the data scientist put more emphasis on the concept of statistical data quality. This includes using relationships found within the data to improve the levels of data quality. As an example, an individual whose age is nine, should not be labeled or shown as part of a group of legal drivers in the United States incorrectly labeled data.

You may be familiar with the term munging data. Munging may be sometimes defined as the act of tying together systems and interfaces that were not specifically designed to interoperate. Munging can also be defined as the processing or filtering of raw data into another form for a particular use or need.

Data modeling

Data developers create designs (or models) for data by working closely with key stakeholders based on given requirements such as the ability to rapidly enter sales transactions into an organization's online order entry system. During model design, there are three kinds of data models the data developer must be familiar with—conceptual, logical, and physical—each relatively independent of each other.

Data scientists create models with the intention of training with data samples or populations to identify previously unknown insights or validate current assumptions.

Modeling data can become complex, and therefore, it is common to see a distinction between the role of data development and data modeling. In these cases, a data developer concentrates on evaluating the data itself, creating meaningful reports, while data modelers evaluate how to collect, maintain, and use the data.

Issue or insights

A lot of a data developer's time may be spent monitoring data, users, and environments, looking for any indications of emerging issues such as unexpected levels of usage that may cause performance bottlenecks or outages. Other common duties include auditing, application integrations, disaster planning and recovery, capacity planning, change management, database software version updating, load balancing, and so on.

Data scientists spend their time evaluating and analyzing data, and information in an effort to discover valuable new insights. Hopefully, once established, insights can then be used to make better business decisions.

There is a related concept to grasp; through the use of analytics, one can identify patterns and trends within data, while an insight is a value obtained through the use of the analytical outputs.

Thought process

Someone's mental procedures or cognitive activity based on interpretations, past experiences, reasoning, problem-solving, imagining, and decision making make up their way of thinking or their thought process.

One can only guess how particular individuals will actually think, or their exact thoughts at a given point of time or during an activity, or what thought process they will use to accomplish their objectives, but in general terms, a data developer may spend more time thinking about data convenience (making the data available as per the requirements), while data scientists are all about data consumption (concluding new ways to leverage the data to find insights into existing issues or new opportunities).

To paint a clearer picture, you might use the analogy of the auto mechanic and the school counselor.

An auto mechanic will use his skills along with appropriate tools to keep an automobile available to its owner and running well, or if there has been an issue identified with a vehicle, the mechanic will perform diagnosis for the symptoms presented and rectify the problem. This is much like the activities of a data developer.

With a counselor, he or she might examine a vast amount of information regarding a student's past performance, personality traits, as well as economic statistics to determine what opportunities may exist in a particular student's future. In addition, multiple scenarios may be studied to predict what the best outcomes might be, based on this individual student's resources.

Clearly, both aforementioned individuals provide valuable services but use (maybe very) different approaches and individual thought processes to produce the desired results.

Although there is some overlapping, when you are a data developer, your thoughts are normally around maintaining convenient access to appropriate data resources but not particularly around the data's substance, that is, you may care about data types, data volumes, and accessibility paths but not about whether or what cognitive relationships exist or the powerful potential uses for the data.

In the next section, we will explore some simple circumstances in an effort to show various contrasts between the data developer and the data scientist.

Developer versus scientist

To better understand the differences between a data developer and data scientist, let's take a little time here and consider just a few hypotheticals (yet still realistic) situations that may occur during your day.

New data, new source

What happens when new data or a new data source becomes available or is presented?

Here, new data usually means that more current or more up-to-date data has become available. An example of this might be receiving a file each morning of the latest month-to-date sales transactions, usually referred to as an actual update.

In the business world, data can be either real (actual) as in the case of an authenticated sale, or sale transaction entered in an order processing system, or supposed as in the case of an organization forecasting a future (not yet actually occurred) sale or transaction.

You may receive files of data periodically from an online transactions processing system, which provide the daily sales or sales figures from the first of the month to the current date. You'd want your business reports to show the total sales numbers that include the most recent sales transactions.

The idea of a new data source is different. If we use the same sort of analogy as we used previously, an example of this might be a file of sales transactions from a company that a parent company newly acquired. Perhaps another example would be receiving data reporting the results of a recent online survey. This is the information that's collected with a specific purpose in mind and typically is not (but could be) a routine event.

Machine (and otherwise) data is accumulating even as you are reading this, providing new and interesting data sources creating a market for data to be consumed. One interesting example might be Amazon Web Services (https://aws.amazon.com/datasets/). Here, you can find massive resources of public data, including the 1000 Genomes Project (the attempt to build the most comprehensive database of human genetic information) as well as NASA's database of satellite imagery of the Earth.

In the previous scenarios, a data developer would most likely be (should be) expecting updated files and have implemented the Extract, Transform, and Load (ETL) processes to automatically process the data, handle any exceptions, and ensure that all the appropriate reports reflect the latest, correct information. Data developers would also deal with transitioning a sales file from a newly acquired company but probably would not be a primary resource for dealing with survey results (or the 1000 Genomes Project).

Data scientists are not involved in the daily processing of data (such as sales) but will be directly responsible for a survey results project. That is, the data scientist is almost always hands-on with initiatives such as researching and acquiring new sources of information for projects involving surveying. Data scientists most likely would have input even in the designing of surveys as they are the ones who will be using that data in their analysis.

Quality questions

Suppose there are concerns about the quality of the data to be, or being, consumed by the organization. As we eluded to earlier in this chapter, there are different types of data quality concerns such as what we called mechanical issues as well as statistical issues (and there are others).

Current trending examples of the most common statistical quality concerns include duplicate entries and misspellings, misclassification and aggregation, and changing meanings.

If management is questioning the validity of the total sales listed on a daily report or perhaps doesn't trust it because the majority of your customers are not legally able to drive in the United States, the number of the organizations repeat customers are declining, you have a quality issue:

Quality is a concern to both the data developer and the data scientist. A data developer focuses more on timing and formatting (the mechanics of the data), while the data scientist is more interested in the data's statistical quality (with priority given to issues with the data that may potentially impact the reliability of a particular study).

Querying and mining

Historically, the information technology group or department has been beseeched by a variety of business users to produce and provide reports showing information stored in databases and systems that are of interest.

These ad hoc reporting requests have evolved into requests for on-demand raw data extracts (rather than formatted or pretty printed reports) so that business users could then import the extracted data into a tool such as MS Excel (or others), where they could then perform their own formatting and reporting, or perform further analysis and modeling. In today's world, business users demand more self-service (even mobile) abilities to meet their organization's (or an individual's) analytical and reporting needs, expecting to have access to the updated raw data stores, directly or through smaller, focus-oriented data pools.

If business applications cannot supply the necessary reporting on their own, business users often will continue their self-service journey.
                                                                                                    -Christina Wong (www.datainformed.com)

Creating ad hoc reports and performing extracts based on specific on-demand needs or providing self-service access to data falls solely to the role of the organization's data developer. However, take note that a data scientist will want to periodically perform his or her own querying and extracting—usually as part of a project they are working on. They may use these query results to determine the viability and availability of the data they need or as part of the process to create a sampling or population for specific statistical projects. This form of querying may be considered to be a form of data mining and goes much deeper into the data than queries might. This work effort is typically performed by a data scientist rather than a data developer.

Performance

You can bet that pretty much everyone is, or will be, concerned with the topic of performance. Some forms (of performance) are perhaps a bit more quantifiable, such as what is an acceptable response time for an ad hoc query or extract to complete? Or perhaps what are the total number of mouse-clicks or keystrokes required to enter a sales order? Others may be a bit more difficult to answer or address, such as why does it appear that there is a downward trend in the number of repeat customers?

It is the responsibility of the data developer to create and support data designs (even be involved with infrastructure configuration options) that consistently produce swift response times and are easy to understand and use.

One area of performance responsibility that may be confusing is in the area of website performance. For example, if an organization's website is underperforming, is it because certain pages are slow to load or uninteresting and/or irrelevant to the targeted audience or customer? In this example, both a data developer and a data scientist may be directed to address the problem.

These individuals—data developers—would not play a part in survey projects. The data scientist, on the other hand, will not be included in day-to-day transactional (or similar) performance concerns but would be the key responsible person to work with the organization's stakeholders by defining and leading a statistical project in an effort to answer a question such as the one concerning repeat-customer counts.

Financial reporting

In every organization, there is a need to produce regular financial statements (such as an Income Statement, Balance Sheet, or Cash Flow statement). Financial reporting (or Fin reporting) is looking to answer key questions regarding the business, such as the following:

  • Are we making a profit or losing money?
  • How do assets compare to liabilities?
  • How much free cash do we have or need?

The process of creating, updating, and validating regular financial statements is a mandatory task for any business—profit or non-profit based—of just about any size, whether public or private. Organizations, still today, are not all using fully automated reporting solutions. This means that even the task of updating a single report with the latest data could be a daunting ordeal.

Financial reporting is one area that is (pretty) clearly defined within the industry as far as responsibilities go. A data developer would be the one to create and support the processing and systems that make the data available, ensure its correctness, and even (in some cases) create and distribute reports.

Over 83 percent of businesses in the world today utilize MS Excel for Month End close and reporting
                                                                                                           -https://venasolutions.com/

Typically, a data developer would work to provide and maintain the data to feed these efforts.

Data scientists typically do not support an organization's routine processing and (financial) reporting efforts. A data scientist would, however, perform analysis of the produced financial information (and supporting data) to produce reports and visualizations indicating insights around management performance in profitability, efficiency, and risk (to name a few).

One particularly interesting area of statistics and data science is when a data scientist performs a vertical analysis to identify relationships of variables to a base amount within an organization's financial statement.

Visualizing

It is a common practice today to produce visualizations in a dashboard format that can show updated individual key performance indicators (KPI). Moreover, communicating a particular point or simplifying the complexities of mountains of data does not require the use of data visualization techniques, but in some ways, today's world may demand it.

Most would likely agree that scanning numerous worksheets, spreadsheets, or reports is mundane and tedious at best while looking at charts and graphs (such as a visualization) is typically much easier on the eyes. To that point, both the data developer and the data scientist will equally be found designing, creating, and using data visualizations. The difference will be found in the types of visualizations being created. Data developers usually focus on the visualization of repetitive data points (forecast versus actuals, to name a common example), while data scientists use visualizations to make a point as part of a statistical project.

Again, a data developer most likely will leverage visualizations to illustrate or highlight, for example, sales volumes, month-to-month for the year, while a data scientist may use visualizations to predict potential sales volumes, month-to-month for next year, given seasonality (and other) statistics.

Tools of the trade

The tools and technologies used by individuals to access and consume data can vary significantly depending upon an assortment of factors such as the following:

  • The type of business
  • The type of business problem (or opportunity)
  • Security or legal requirements
  • Hardware and software compatibilities and/or perquisites
  • The type and use of data
  • The specifics around the user communities
  • Corporate policies
  • Price

In an ever-changing technology climate, the data developer and data scientist have ever more, and perhaps overwhelming, choices including very viable open source options.

Open source software is software developed by and for the user community. The good news is that open source software is used in the vast majority, or 78 percent, of worldwide businesses today—Vaughan-Nichols, http://www.zdnet.com/. Open source is playing a continually important role in data science.

When we talk about tools and technologies, both the data developer and the data scientist will be equally involved in choosing the correct tool or technology that best fits their individual likes and dislikes and meets the requirements of the project or objective.

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