Velocity is the rate at which data is processed,
and it covers inputs such as how social media is processed, as well as outputs
such as processing and to process and execute. The levels of data velocity are
as follows:
- Real Time:
Data is processed in the amount of time that is required, implying that you are
processing data that is sufficient to handle data or events as they occur. This
entire process is extremely straightforward and quick, for example, a person
makes an application for a debit card and receives a response almost instantly.
- Near Real Time: The data is processed as soon as the event is occurred but not
as fast to respond it quickly. For example, you applied for debit card, and
they evaluate, process and then the application go ahead and get an answer
within hour.
- Batch: The
data processing is done when computing resources and are available the process
goes behind and catches up. For example, a social media platform that runs
algorithms to look privacy violations.
- Custom Job: This processing involves data batch vies, which is unique and might
be executed once or comes with an irregular schedule.
- Analytical Processing: This process is tied to decision making and to oppose business
events. This can be done in both real time or near real time such as decision
making and can also explore data.
How can big data velocity work for Beverage Industry?
“No great marketing decisions
have ever been made
on velocity data.”
– John Sculley
Because big data is produced in such large
numbers, you'll need more than just space to adequately process it—you'll also
need speed. It's no longer about how much data you collect; it's about how
quickly you can use it to make business decisions.
An organization like beverage firms had to
wait for data to be evaluated and interpreted in the past. However, with the
constant inflow of data, it must now be analysed and digested swiftly. You'll
wind up with a tremendous backlog of information if you don't work quickly
enough; given how quickly the business world moves, that hard-earned
information may be obsolete by the time you acquire it.
Data is believed to age like wine, which
means the longer you keep it, the more insights you'll get out of it. While
this analogy may hold true for some types of data, it may not apply to other
cases. Many types of data have a finite shelf life, meaning their value can
deteriorate with time—and in some circumstances, fast. In retail, for example,
knowing which products are out-of-stock in seconds or minutes rather than days
or weeks is preferable. The faster can beverage a retailer can refill its
products, the faster it can get back to selling them.
Using real-time alert some beverage
companies was popular in most of its stores—except two locations where it
wasn’t selling at all. A quick investigation at those two locations revealed a
simple stocking oversight meant the drinks weren’t yet on the store shelves. If
that beverage store discovered this stocking problem after the fall, the value
of this insight would have already vanished. Data velocity doesn’t just apply
to the retail industry—it can apply to many diverse business models and
functions.
Following are the terms in which the
beverage business can use this data velocity process by using Data Processing Cycle.
What is Data Processing Cycle?
(What Is Data Processing: Types, Methods, Steps of Data Processing Cycle, 2021)
Step 1: Gathering:
The initial phase in the data processing cycle is the acquisition of raw data. The raw data obtained has a significant impact on the product produced. As a result, raw data should be acquired from defined and accurate sources in order for the resulting conclusions to be valid and useable. Raw data can contain monetary information, website cookies, a company's profit/loss accounts, user behavior, and so on.
Step 2: Get Ready
The act of sorting and filtering raw data to remove unneeded and erroneous data is known as data preparation or data cleaning. Raw data is reviewed for errors, duplication, miscalculations, and missing data before being translated into a format appropriate for further analysis and processing. This is done to ensure that only high-quality input enters the processing unit.
Step 3: Enter your data
The raw data is transformed into machine-readable form and sent into the processing unit in this step. This can take the form of data entry via a keyboard, scanner, or other input device.
4th Step: Data Processing
In this step, the raw data is exposed to a variety of data processing technologies, including machine learning and artificial intelligence algorithms, in order to produce a suitable output. This stage may differ differently from process to process based on the data source (data lakes, online databases, linked devices, etc.) and the intended use of the result.
Step 5: Results
Finally, the data is transferred and shown to the user in a readable format, such as graphs, tables, vector files, audio, video, documents, and so on. This output can be saved and processed further in the next data processing cycle.
Step 6:
Storage is the final phase in the data processing cycle, where data and metadata are saved for later use. This enables for easy access and retrieval of information when needed, as well as immediate use as input in the next data processing cycle.
Conclusion:
Data Velocity has been game
changer in beverage industry as the method of collecting data and processing
them is quite structure which makes it easier to understand and evaluate
further.
Author - Ritika Tiwari
[4th July, 2021]
Focus Keyword: #beverage #datavelocity #dataprocessing #datatypes #bevergeindustry #digitalmarketing
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References:
Spacey, J., 2021. 5 Types of Data Velocity. [online] Simplicable. Available at: <https://simplicable.com/new/data-velocity> [Accessed 4 July 2021].
Simplilearn.com. 2021. What Is Data Processing: Types, Methods, Steps of Data Processing Cycle. [online] Available at: <https://www.simplilearn.com/what-is-data-processing-article> [Accessed 4 July 2021].
Youtube.com. 2021. Before you continue to YouTube. [online] Available at: <https://www.youtube.com/watch?v=oxUbbWRAqxg> [Accessed 4 July 2021].
Very Well Explained...!!
ReplyDeleteAs you have mentioned that velocity as Sales per Point of Distribution (SPPD) is the simplest, most intuitive choice for analyzing sales within a single market or single retailer. Also sometimes called “Sales per Point,” this measure is an improvement over Sales per Store because it incorporates store size by using an ACV weighted distribution measure in the denominator. Like all velocity measures, SPPD can be expressed in dollars, units, or volume per point of distribution.
And surely beverage industry can take a lead in their profit after using the variant of data types and velocity.
Thanks Saurabh!!!
DeleteVerry good
ReplyDelete
ReplyDeleteVery well explained, Ritika! I agree that data is no longer about how much has been collected, but quickly companies can use it to drive decisions. The emergence of data has impacted our perception of data.
Velocity is an essential key to big data and how companies can get more advantages from it. Many restrictions can limit a company's speed and agility, despite how quickly it collects and processes data.
In the beverage industry, velocity is also significant because customer preferences can change quickly, so it's better to be aware of it. Or even use real-time alerts to identify a particular favourite product.
Very well articulated. Because of the numerous new GDPR rules and purposes related with data, data processing is becoming increasingly popular. Personal information, customer data, health information, contact information, location data, and other types of data are collected by large corporations and multinational corporations (MNCs) in a variety of ways. As a result of the collecting of this data, there is growing concern about how it is acquired and used. Collecting, keeping, and analyzing sensitive data such as income, medical records, and location data is becoming a global concern. New legislation is being drafted to regulate what data is gathered and how it is used while keeping user privacy in mind.
ReplyDeleteA game change, that's the right word I totally agree as the importance of data has transformed the way we view it as a result of its rise. We used to dismiss the value of data in the workplace, but as our methods of gathering it have evolved, we've come to rely on it on a daily basis. The term "velocity" refers to the rate at which data is received. Some data will arrive in real time, while others will arrive in fits and starts, and will be delivered to us in batches. And, because not all platforms will process data at the same rate, it's critical not to generalize, discount, or draw conclusions without all the information and figures.
ReplyDeleteNice one Ritika.
- Mohit Jain