Why is it Better to Outsource Data Annotation?
Data is crucial for industries today. Data is power, and with the advent of artificial intelligence, it has become even more important. Artificial intelligence operates on algorithms that are prepared with the help of data inputs by humans. As more industries become reliant on AI to perform tasks efficiently with minimal human error, information gathered and processed through data becomes important. Depending on the requirement of the operational usage of this data, enterprises choose to perform the task in-house or hire a data annotation service provider, to suit the need.
What is Data Annotation?
To train a machine to perform like humans, we need to feed it with the information of respective data. The process to capture and encoding this data for understanding a machine is called data annotation. Through this process, any data which is captured is converted into machine language in the form of algorithms.
Depending on the type of data, annotations can be categorized into:
Image Annotation
Data of images is used to create a program to respond to its contents, to achieve required goals.
Video Annotation
Video footage is utilized in the form of annotated data to train a machine program and get needed responses.
Text Annotation
Machines can be trained to bring meaning, and define the context and intention, of textual data by annotating it in suitable language.
Data Annotation challenges
It requires efforts from highly skilled professionals to annotate data efficiently to make it usable in achieving desired machine outputs. Data should be properly structured and labeled before being input into the machine. Some of the common challenges faced by companies include
Skills and training
It is a tedious job to manage the human resources for data annotation as training professionals who will perform labeling and hiring skilled professionals who can supervise over requires time and money. There is a shortage of skilled employees in the field as it is relatively new. This leads many enterprises to hire data annotation companies.
Technology and infrastructure
Creating an infrastructure to support the labeling of data and to maintain the same needs budget. Any technical infrastructure involves – development, maintenance, and up-gradation cost. Companies that are not into core technical services often find this a financial liability resorting to outsourcing data annotation.
Supervision
Perfect data labeling is key to getting exact AI outputs. If data annotation misses the mark it will result in similar errors in AI as in humans. Therefore it is crucial to annotate data efficiently and to supervise these annotations companies require skilled administrative professionals. Hunting for that talent is a challenge, more so when it impacts productivity directly.
Finances
The data labeling department needs technology and infrastructure along with human resources. Setting up all this involves costs. Knowing the benefits of data annotation many industry leaders are reluctant to upgrade the systems to its usage because of these challenges. Engaging annotation companies is another option they can consider, though brainstorming on eligible data annotation service providers is necessary before jumping into action.
Time
It is another challenge, as once a process system is on the run, it gets difficult to introduce a new segment to it.
领英推荐
Usage of Data Annotation
With the increase in the utilization of AI to streamline operational flows, data annotation has grown in importance over time. As technology is being preferred over human intelligence in tasks that have a repetitive nature, AI can reduce the risk of human errors. Data annotation is significantly used in:
Pros & Cons of In-house Data Annotation
The success of data annotation is rooted in the fact that efficient use of this technology can significantly contribute to increasing the productivity of a trade. But, introducing AI & data labeling is initiating a whole department – involving infrastructure, human resources, and finance. Let’s look at the positive and negative sides of an in-house data annotation.
Pros
Cons
Ultimate tips to find the best data annotation services
By now you must have got clarity over the decision of creating an in-house team or whether to outsource data annotation. To help yourself in the selection of data annotation service provider, we have got some tips:
To Conclude
Data labeling is a crucial job. Different scenarios have different annotation requirements, eg- an automatic training vehicle will operate on a different algorithm than a drone. This industry is highly dependent on manpower, currently, annotation experts depend on tools to label datasets.
Whether to go in-house or outsource data annotation services depends on the task too. If you have a limited annotation requirement or you are very concerned about the privacy of your data, going in-house can be an option.
Large projects may require a lot of semantic segmentation, recruiting a team and managing it efficiently would be a daunting task. In such a case, it would be better to hire data annotation service providers that are experienced and skilled to achieve your goals.
SunTec India‘s Data Annotation
We have many years of experience in the field of data annotation, with clientele from different verticals of the industry. At SunTec India you can rest assured of the annotation quality as we use highly advanced technology and tools, along with a professionally skilled and experienced workforce. Some of the salient features of our data annotation services are:
Confused, whether to hire a data annotation company or not?
Try our services for free and see the difference, contact us at?[email protected] .