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Labellerr by Tensor Matics ขับเคลื่อนโดย Advanced Partner Alliance

Enhance simulation, improve engineering, and optimize design with an additional 82+ products that’s already part of your offering. Discover third-party solutions from a single unified source that you know and trust through the Advanced Partner Alliance (APA).
APA solutions are delivered through the Altair Units licensing system, which allows customers to access multiple engineering tools using a shared pool of licenses. This lowers barriers to adoption and simplifies procurement for your customers.

ทำไม Automate AI/ML Data Labeling for Quality & Savings?

Labellerr exists to tackle the challenges of manual, costly data labeling for AI/ML teams. It solves problems like slow data prep, inconsistent quality, and inefficient project management. Through automated workflows, generative AI, and collaboration, it rapidly delivers high-quality training data, saving up to 10x in time and cost, with secure cloud integration.

Labellerr

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  • High-Quality Data:
    Labellerr has built-in features that monitor and improve data quality during and after annotations. That ensures verifiable, high-quality data.
  • Fast Data Annotation:
    Labellerr helps users set up an automated workflow, enable active learning, and various model-assisted techniques to create labels 99x faster than fully manual workflows.
  • Easy to Use:
    With Labellerr’s intuitive interface, users can onboard themselves and their team members in just a few minutes. Import data, create tasks, add users, and get started on projects right away.

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Scalable Object Detection Labeling

To train object detection models, a collaborative workflow management software integrates into data pipelines, automating manual processes and QA. This enables high-speed image processing with quality checks, reducing costs by up to 70% and accelerating the process 99x for any industry.

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