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Technical Operator- I at Digital Divide Data

Digital Divide Data
Full-time
On-site
Role Overview


The Operator Level 1 is responsible for executing 2D and 3D LiDAR annotation and segmentation tasks in accordance with defined SOPs, quality benchmarks, and productivity targets. This role requires technical precision, spatial awareness, and disciplined execution in high-volume production environments.


Responsibilities

Production & Quality Execution


Execute repetitive 2D/3D LiDAR annotation and segmentation tasks in strict adherence to SOPs
Maintain classification accuracy across object types and categories


Meet or exceed defined benchmarks for:


Productivity
Quality
Accuracy
Sustain consistency in output with minimal supervision
Issue Identification & Continuous Improvement
Identify recurring annotation errors or tool-related issues
Escalate quality risks or inconsistencies in labeling standards
Suggest improvements to tools, taxonomy, or workflow


Communication & Collaboration


Communicate effectively with peers, QA teams, and stakeholders in English
Document issues clearly and accurately


Success Profile


High attention to detail
Strong spatial and logical reasoning ability
Ability to sustain accuracy in repetitive workflows
Foundational understanding of quality control
Ability to identify misclassification and segmentation inconsistencies


Qualifications

Education Requirements

Diploma or higher qualification in a relevant field such as:


Computer Science
Information Technology
Engineering (Electrical, Computer, Geospatial, or related)
Data Science
Geospatial Studies
Or equivalent technical discipline


Technical Competencies

LiDAR & Segmentation Skills


Working knowledge of 2D LiDAR annotation
Working knowledge of 3D point cloud annotation


Systems & Communication


Proficient working knowledge of a computer/laptop
Strong English reading comprehension
Ability to write clear and accurate English
Ability to interpret and execute complex SOP documentation
Ability to perform basic object segmentation and classification
Understanding of bounding boxes, cuboids, and object tagging principles
Ability to follow annotation taxonomies and ontology guidelines accurately


Additional Information


Familiarity with annotation tools such as CVAT, SuperAnnotate, and Labelbox.
Understanding of ML metrics, data quality principles, and AV/ADAS ecosystems.