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Data Labeler

Atreides
West Midlands
6 months ago
Applications closed

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Position: Data Labeler

Location: West Midlands region U.K. (remote with 1 day per week onsite)

Clearance: Active SC clearance (UK MOD clearance


Company Overview:

Atreides is a cutting-edge startup transforming complex data into actionable geo-spatial insights for defense intelligence professionals. Backed by a top venture firm, we’re on a mission to make the world safer and more resilient. Join our high-performance team and be part of something innovative!

What We’re Looking For:

We are looking for a meticulous and motivated Data Labeler to join our Data Science team. In this role, you will be responsible for accurately labeling and annotating datasets to support various data science projects, including machine learning model development and data analysis. Your contributions will be critical in ensuring the quality and reliability of data used for training and validating models.

Key Responsibilities:

• Label and annotate diverse types of data, including text, images, audio, and video, in accordance with project specifications and guidelines.

• Ensure high levels of accuracy and consistency in labeling to maintain the integrity of datasets.

• Collaborate closely with data scientists and analysts to understand specific data requirements and objectives.

• Use data labeling tools and software efficiently to streamline the annotation process.

• Conduct quality checks on labeled data, identifying and correcting any discrepancies or errors.

• Maintain detailed records of labeling processes and adhere to project timelines.

• Participate in training and feedback sessions to enhance labeling guidelines and improve overall data quality.

Qualifications:

• Strong attention to detail and a commitment to producing high-quality work.

• Familiarity with data labeling tools is a plus, but not required.

• Basic understanding of data science principles and the importance of labeled data in model training.

• Ability to work both independently and collaboratively within a team environment.

Skills:

• Proficient in using common software applications and tools for data annotation.

• Strong communication skills to facilitate effective collaboration with team members.

• Problem-solving abilities to address challenges during the labeling process.

• Basic technical skills to understand data formats and structures.

Why Atreides?

• Competitive Salary + Stock Option and Comprehensive Health Benefits

• Flexible Hybrid Work Environment + Flexible Hours

• Work Travel Opportunities + Generous Vacation

Excited to drive the future of defense intelligence? If you’re passionate, innovative, and ready for a challenge, we’d love to hear from you!

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