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- 21st Feb 2021
- 89Days
- 21st May 2021
Internship Details
About Internship:
We are looking for students passionate about Machine Learning. We are committed to making high quality data readily available for Machine Learning algorithms. A big part of making sure labelled data is of high quality and is delivered quickly, is using Machine Learning algorithms in novel ways.
Come help us shape the future of Data Annotation!
Roles and Responsibilities:
1. Explore novel ways in which ML can be leveraged for making Data Annotation a better process.
2. Train ML models for vision that generalize well over diverse datasets.
3. Setup production pipelines for delivering these solutions.
Perks:
1. Learn from an experienced ML practitioner.
2. Flexible work-timings.
3. Freedom to explore.
Application Deadline
Apply by: 15th Feb `21
About Company
MindKosh is building the next generation of AI powered Annotation tools and services.
Machine learning has brought disruptive changes to almost every field imaginable. But the huge amounts of labelled data that it needs for training its models continue to be generated at slow speeds in a black box.
MindKosh is committed to changing that by bringing more transparency in the process, reducing points of contact, and using AI to make high quality data labeling at scale possible and affordable.
Internship Details
About Internship:
We are looking for students passionate about Machine Learning. We are committed to making high quality data readily available for Machine Learning algorithms. A big part of making sure labelled data is of high quality and is delivered quickly, is using Machine Learning algorithms in novel ways.
Come help us shape the future of Data Annotation!
Roles and Responsibilities:
1. Explore novel ways in which ML can be leveraged for making Data Annotation a better process.
2. Train ML models for vision that generalize well over diverse datasets.
3. Setup production pipelines for delivering these solutions.
Perks:
1. Learn from an experienced ML practitioner.
2. Flexible work-timings.
3. Freedom to explore.
You have successfully applied !