Data Annotation Specialist (English Australia) | onsite London

Welocalize
London
1 year ago
Applications closed

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OVERVIEW


We are seeking a QA Analyst - Data Annotation Specialist to contribute to a high-profile technology project. The ideal candidate will have a foundational understanding of quality assurance, data annotation, and data handling. Additionally, they must befully proficient in English (from Australia)and possess excellent communication skills. They will play a pivotal role in ensuring the quality and accuracy of the project data.
Project Details
Job Title: QA Analyst - Data Annotation SpecialistLocation: On-site at one of our offices in LondonHours:hours weeklyLanguage:English (Australia)Start date: February 3rdDuration:months

Responsibilities

Conduct data annotation and QA Collaborate with team members on-site Ensure secure handling of data and maintain confidentiality

Requirements

Proficiency in English (US) and English (AU) at a fully fluent level is required. At least 1-2 years of data annotation experience Visual annotation experience is a plus (Video & Image) Experience in quality assurance Excellent communication skills Augmented Reality experience is a plus No technical skills needed, but a linguistic background and/or formal QA experience is required Ability to work % on-site Strong attention to detail and problem-solving skills

As a trusted global transformation partner, Welocalize accelerates the global business journey by enabling brands and companies to reach, engage, and grow international audiences. Welocalize delivers multilingual content transformation services in translation, localization, and adaptation for over languages with a growing network of over , in-country linguistic resources. Driving innovation in language services, Welocalize delivers high-quality training data transformation solutions for NLP-enabled machine learning by blending technology and human intelligence to collect, annotate, and evaluate all content types. Our team works across locations in North America, Europe, and Asia serving our global clients in the markets that matter to them. To perform this job successfully, an individual must be able to perform each essential duty satisfactorily. The requirements listed below are representative of the knowledge, skill, and/or ability required. Reasonable accommodations may be made to enable individuals with disabilities to perform essential functions.

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