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• It provides images with labels: You start by uploading a set of images to Lobe. Each image should be labelled
                 to indicate what it contains. For example:
                An image of a cat is labelled as "cat."
                An image of a dog is labelled as "dog."
                 • Automated model creation: Once you upload and label your images, Lobe automatically takes care of the
                 technical work:
                    ✶ It analyses the images.
                    ✶ It tries different AI models to find the best one.
                    ✶ It optimises the model for the highest accuracy in classifying your images.

                 • No coding required: You don’t need to write any code or understand Machine Learning Algorithms. Lobe’s
                 interface is simple and visual, guiding you through the process step by step.

                       Introduction to Teachable Machine


              Teachable  Machine  is  a  powerful  and  user-friendly  tool
              developed by Google in 2017. It is designed to make Artificial
              Intelligence (AI), Machine Learning (ML), and Deep Learning
              (DL)  accessible  to  everyone,  including  beginners  with  no
              technical background.
              It is built on top of TensorFlow.js, an open-source JavaScript
              library  also  developed  by  Google.  TensorFlow.js  allows
              Machine Learning models to run directly in a web browser,
              making it convenient and eliminating the need for specialised
              hardware or software installations.
              The users can train models using different types of input data:
                 • Images: Upload images from your computer or capture them live using a webcam. For example, you can train
                 a model to distinguish between various objects, such as fruits or animals.
                 • Audio: Train the model to recognise sounds by providing audio samples, such as claps, whistles, or spoken words.
                 • Poses: Use a webcam to capture human poses, gestures, or movements for applications like fitness tracking or
                 interactive games.
              Following are the steps to use teachable machine:
               Step 1     Input Data Collection: Users start by providing training data. For instance:


                             • Upload pictures or use the webcam to capture images.
                             • Record audio clips or use existing sound files.
                             • Use the webcam to capture poses or gestures.
               Step 2     Model Training: Once the input data is ready, Teachable Machine uses Machine Learning algorithms

                          to identify patterns in the data and create a model. This process is entirely automated, so no coding
                          or technical expertise is required.
               Step 3     Model Testing: After training, the model can be tested in real time to check its performance. For

                          example:

                             • Point the webcam at an object to see if the model identifies it correctly.
                             • Make a gesture or pose and observe how the model reacts.

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