1 / 10

Data Annotation in Machine Learning: An Important Prerequisite

Implementing AI/ML to data-based processes is a significant undertaking. Besides, fuelling them requires consistent streams of high-quality and precise training datasets, thus leading to the need for data annotation services.<br><br>Know More Details: https://www.damcogroup.com/data-support-for-ai-ml<br><br>#dataannotationservices<br>#dataannotationinmachinelearning

Download Presentation

Data Annotation in Machine Learning: An Important Prerequisite

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Data Annotation in Machine Learning: An Important Prerequisite

  2. Table of Content ● Introduction ● Outsourcing Data Support for AI/ ML ○ Domain-specific workflows ○ Professional excellence ○ Assured Accuracy ● Conclusion 1 2

  3. Introduction Associating with reputed vendors allows businesses to leverage the combined capabilities of human resources and AI/ML tools. This strategic collaboration enables businesses to achieve different levels of agility and drive greater operational excellence. Implementing AI/ML to data-based processes is a significant undertaking. Besides, fuelling them requires consistent streams of high-quality and precise training datasets, thus leading to the need for data annotation in Machine Learning services

  4. Outsourcing Data Support for AI/ ML 4 ● Domain-specific workflows ● Professional excellence ● Assured Accuracy

  5. Domain-Specific Workflows Domain-Specific Workflows The professional providers understand the client’s needs, their AI-based model’s use case, and thus prepare the training datasets leveraging the best-fit tools. They tailor their operational approach, adhere to stringent security protocols, and maintain high standards of data confidentiality. The professional providers understand the client’s needs, their AI-based model’s use case, and thus prepare the training datasets leveraging the best-fit tools. They tailor their operational approach, adhere to stringent security protocols, and maintain high standards of data confidentiality.

  6. Professional Excellence Creating a training environment similar to the model’s use case requires the experiential expertise. The external vendors have the potential to create pixel-perfect training datasets with major focus on the quality of the resultant AI algorithm’s predictions.

  7. Assured Accuracy Data collection and processing poses a challenge for several organizations because of a lack of model-behavior understanding, resulting in unsuccessful attempts of developing enhanced training data sets. The external providers prioritize accuracy while creating consistent, high-quality, and precise data streams to accelerate the client’s AI/ML models

  8. Conclusion The key is ‘right training data’ that adds value to the NLP and computer-vision based models at a large scale ‘consistently’. Reputed data annotation companies have the potential to deliver quality results, assisting organizations to explore new business opportunities.

  9.  2 Research Way, Princeton, New Jersey 08540, USA  +1 609 632 0350  info@damcogroup.com https://www.damcogroup.com/data-support-for-ai-ml

  10. 10

More Related