Associate at digital divide data
Nairobi, Nairobi County, Kenya -
Full Time


Start Date

Immediate

Expiry Date

16 Aug, 26

Salary

0.0

Posted On

18 May, 26

Experience

2 year(s) or above

Remote Job

Yes

Telecommute

Yes

Sponsor Visa

No

Skills

AV Data Annotation, Vision-Language Action (VLA), Scene Understanding, Spatial Reasoning, Action Prediction, Intent Interpretation, Task-Sequence Analysis, Quality Assurance, Data Review, Vision-Language Alignment, Action Grounding, Temporal Understanding, Contextual Scene Interpretation, Analytical Thinking, Attention To Detail, Communication

Industry

Professional Services

Description
Company Description Digital Divide Data (DDD) is a BPO that delivers ML data solutions and content services to Fortune 500 companies and the world’s leading academic institutions. DDD is unique in its ability to deliver end-to-end data creation, curation, labeling, and annotation services, regardless of scale, with a guaranteed level of quality. Job Description We are seeking a highly analytical and detail-oriented Associate – VLA Reviewer to support advanced data review workflows for a leading autonomous vehicle project with Uber. This role is focused on reviewing complex Vision-Language Action annotation outputs, ensuring high-quality interpretation of dynamic scenes, agent behavior, object interactions, spatial relationships, and action sequences. The successful candidate will bring hands-on experience in AV data annotation, VLA-related projects, and production-level review workflows. This is an excellent opportunity for a candidate who thrives in quality-focused AI data environments and is comfortable working with complex visual and language-based annotation tasks. Key Responsibilities As an Associate – VLA Reviewer, you will be responsible for: Reviewing autonomous vehicle data annotation outputs to ensure quality, consistency, and alignment with project guidelines. Interpreting complex driving scenes involving multiple agents, objects, interactions, and environmental context. Assessing agent actions, intent, object relationships, spatial reasoning, and task sequences. Supporting Vision-Language Action workflows, including vision-language alignment, action grounding, temporal understanding, and contextual scene interpretation. Identifying and resolving ambiguous or edge-case annotation scenarios using sound judgment and guideline interpretation. Applying annotation standards consistently across production review tasks. Participating in calibration sessions, QA discussions, and feedback loops to support ongoing quality improvement. Providing clear, structured, and actionable feedback to annotators and project stakeholders. Escalating unclear guidelines, tooling issues, or recurring quality gaps to project leads as appropriate. 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 Required Experience The ideal candidate will have: Minimum 3 years of experience in autonomous vehicle data annotation. Minimum 1 year of experience working on Vision-Language Action projects. Experience working with complex scene understanding tasks, including: Object interactions Agent behavior Spatial reasoning Action prediction Intent interpretation Task-sequence analysis Experience in review workflows, annotation guideline interpretation, and edge-case handling within production environments. Required Skills We are looking for candidates who can demonstrate: Strong understanding of VLA concepts, including vision-language alignment, action grounding, temporal understanding, and contextual scene interpretation. Ability to analyze dynamic environments and accurately label or review agent actions, intent, object relationships, and task sequences. Excellent attention to detail and strong decision-making skills in ambiguous annotation scenarios. Ability to quickly learn project-specific guidelines, tools, workflows, and quality standards with minimal supervision. Strong communication and collaboration skills to contribute effectively to calibration sessions, QA discussions, and reviewer feedback loops. A disciplined and quality-driven approach to data review and annotation accuracy. Candidate Profile The successful candidate will be structured, observant, and comfortable working with complex visual data. They will be able to balance accuracy with productivity, apply detailed guidelines consistently, and contribute to high-quality AI training data for autonomous vehicle systems.
Responsibilities
The Associate will review autonomous vehicle data annotation outputs to ensure quality and alignment with project guidelines. This includes interpreting complex driving scenes, assessing agent behavior, and providing actionable feedback to annotators.
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