How to Label Data for Your AI Project?

by raman1801thakur in Teachers > University+

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How to Label Data for Your AI Project?

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Data labeling is the first step in the success of any AI or ML project after collecting the data. It involves annotating or tagging data (like images, text, or audio) so that ML models can learn and make predictions. Without accurately labeled data, the model won't perform well, making this process a key component in building high-performing systems.

Supplies

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To get started with data labeling, you'll need a few basic tools:

  1. Software: Data labeling tools like Labellerr, Labelbox, or SuperAnnotate.
  2. Datasets: Images, text files, audio, or video that you plan to use for training your AI model
  3. Hardware: A computer with enough processing power and storage to handle your dataset, and possibly a graphics card if you're working with large image or video files. For that you can either use Colab which offers free computational with some limit.

Set Up Your Environment

Before you can start labeling, you need to set up the right environment. Follow these steps:

  1. Use in Web and Download a Data Labeling Tool: Choose a tool based on your project needs. You can either use the tool in website or download it. For example:
  2. Labellerr for image, video, and text labeling
  3. CVAT (free, for images)
  4. Doccano (open-source, for text)
  5. Create an Account (if required): Most paid tools like Labellerr will require you to create an account. Free tools may not require an account but might have limited features.

Load Your Dataset

Once your tool is set up, it’s time to load your data:

  1. Import Files: Choose the dataset type you are working with—images, text, or audio—and load them into the tool.
  2. For example, if you're labeling images, drag and drop your image files into the tool.
  3. Organize Your Data: If your dataset is large, consider organizing it into categories or folders before importing to make the process more efficient.

Label Data Step-by-Step

Video Annotation Made Easy with Labellerr | Bounding Box Tutorial

Now it’s time to start labeling your data:

  1. Follow Labeling Guidelines: Before you begin, make sure you have a clear set of instructions for labeling. For example:
  2. For object detection: Draw bounding boxes around specific objects in images (e.g., cats, cars).
  3. For text classification: Assign sentiment tags to sentences (e.g., positive, negative, neutral).
  4. Highlight Examples: Depending on the tool you’re using, highlight or tag the necessary elements. For example, in image labeling, draw a box around the object you're tagging.
  5. Automation Features: Some tools, like Labellerr, offer automated suggestions for speeding up the process—use these to save time.

Export and Review

After you’ve labeled your data, it’s important to export and review it for accuracy:

  1. Export Your Data: Most tools allow you to export labeled data in formats like JSON, CSV, or XML. Choose the format that works best for your AI project.
  2. Review for Consistency: Go through your labeled data to ensure that all annotations follow the same guidelines and are consistent. If possible, have a second person review your work to catch any mistakes.