Machine learning and deep learning, while revolutionary, necessitate massive amounts of
data. Companies still need annotators to identify the data before they can utilize it to train
an AI or ML model, despite automated data collecting methods like web scraping.
Companies frequently resort to crowdsourced workforces for quick annotation when they’re
pressed on time to develop an algorithm. But is it always the wisest choice to do so? Your
data can essentially be annotated with crowdsourcing.
Crowdsourcing can be used for a variety of tasks, such as website development and
transcription. Companies that seek to create new products frequently ask the public for
feedback. Companies don’t have to rely on tiny focus groups when they can reach millions
of users through social media, ensuring that they get opinions from people from different
socioeconomic and cultural backgrounds. Consumer-focused businesses frequently gain by
better understanding their customer and fostering more engagement or loyalty.
Businesses must evaluate the quality of various data points when using crowdsourcing alone
to make decisions from a variety of network sources. They must also come up with
alternative solutions to address any regional variations that may exist, before connecting to
the organizational objectives. Big data analytics was then shown to be quite helpful in
ensuring the success of crowdsourcing. By applying known big data principles, businesses
can find the genuine nuggets in crowdsourced data that drive innovation, development
choices, and market practices. Crowdsourcing and big data analytics are strongly related to
trends.
1. Less Effort
The key advantage of using a crowdsourcing service is that the practicalities of the process
are taken care of for you. The service provider will already have a platform set up and
complete the task for you at a far lower cost than you could do it yourself by using the
crowdsourcing model.
2. A Bigger, Better Crowd
Additionally, a service provider will be able to supply a far larger population than you can
locate on your own. This is primarily because they have invested years building up their
following and making sure the appropriate people are hired.
3. Responsibility Shifting
The crowdsourcing of image annotation will involve certain ethical and legal ramifications
because images are regarded as biometrics data. By using a crowdsourcing platform, you
relieve yourself of these obligations and avoid moral and legal entanglements.
4. Higher Caliber
Because they have more experience than you do in this field, crowdsourcing service
providers also follow quality assurance procedures and standards. Your service provider will
make sure to uphold your image annotation quality criteria; all you need to do is make them
clear.
5. Added security
A better level of data security can also be provided by crowdsourcing service providers. To
protect the data, the service providers can make sure that the annotators sign non-
disclosure agreements and adhere to rigid security procedures.
Data Labeling is a task that data science teams prefer to outsource rather than do
themselves. These advantages are provided by doing so:
Investment in annotating technologies is necessary for internal data labeling.
Crowdsourcing eliminates this cost (subject to comparable costs)
Most platforms for crowdsourcing appoint independent contractors from around the world
to annotate data. Crowdsourcing platforms, at their most basic, divide the project into
smaller jobs, which are then assigned to several freelancers.
With its sophisticated algorithms and integrated Data Labeling platform provides
consistency, efficiency, accuracy, and speed. Label auditing ensures that your models are
trained and deployed more quickly thanks to its streamlined task interfaces.
For Machine Learning and Artificial Intelligence (AI) projects, Data Labeler specializes in providing
precise, practical, customized, accelerated, and quality-labeled datasets.
Contact us now!