At a Glance
- Tasks: Lead a team to ensure high-quality data for AI systems and develop innovative QA processes.
- Company: Join TaskUs, a dynamic provider of digital services for top tech companies.
- Benefits: Enjoy competitive salaries, comprehensive benefits, and a supportive People First culture.
- Why this job: Make a real impact in AI by ensuring data integrity and driving innovation.
- Qualifications: Bachelor's degree in a technical field and 3+ years in data quality management.
- Other info: Be part of a diverse team with opportunities for growth and development.
The predicted salary is between 36000 - 60000 £ per year.
About TaskUs
TaskUs is a provider of outsourced digital services and next-generation customer experience to fast-growing technology companies, helping its clients represent, protect and grow their brands. Leveraging a cloud-based infrastructure, TaskUs serves clients in the fastest-growing sectors, including social media, e-commerce, gaming, streaming media, food delivery, ride-sharing, HiTech, FinTech, and HealthTech.
The People First culture at TaskUs has enabled the company to expand its workforce to approximately 45,000 employees globally. Presently, we have a presence in twenty-three locations across twelve countries, which include the Philippines, India, and the United States.
What We Offer
At TaskUs, we prioritise our employees' well-being by offering competitive industry salaries and comprehensive benefits packages. Our commitment to a People First culture is reflected in the various departments we have established, including Total Rewards, Wellness, HR, and Diversity. We take pride in our inclusive environment and positive impact on the community. Moreover, we actively encourage internal mobility and professional growth at all stages of an employee's career within TaskUs.
What can you expect in an AI Data Quality & Engineering Lead role with TaskUs
Why this role exists
As AI systems scale rapidly across industries, the integrity and accuracy of testing, training, and evaluation data have never been more critical. TaskUs needs a proactive leader who can architect and uphold high-quality annotation workflows so that AI models are built and evaluated on reliable data without compromising on speed or efficiency.
The impact you’ll make
- Build and guide a high-performing team: Lead and mentor a team of Data Quality Analysts, setting clear quality goals, delivering feedback, and fostering a culture of precision and accountability.
- Ensure quality at scale: Develop and continually refine robust QA processes, SOPs, and statistical quality metrics (e.g., F1 score, inter‑annotator agreement) to protect the integrity of annotation outputs.
- Drive transparency and insight: Create dashboards and reports that reveal quality trends, root causes of errors, and improvement opportunities - communicating these insights to leadership and clients.
- Champion tool innovation and efficiency: Manage annotation and QA platforms (like Labelbox, Dataloop, LabelStudio), and lead the evaluation or implementation of new automation tools to elevate efficiency and maintain quality.
Responsibilities
- Strategic Leadership: Drive the development, refinement, and documentation of quality assurance processes and standard operating procedures to ensure high-quality outputs. Establish comprehensive quality metrics (e.g. F1 score, inter-annotator agreement) that align with business objectives and industry standards. Continuously review and refine annotation workflows to proactively identify risks and areas to increase efficiency and reduce errors. Act as the subject matter expert on annotation quality, providing ongoing feedback, training, and support to annotators and project teams to uphold the highest quality standards.
- Analysis & Reporting: Lead in-depth data analysis to diagnose quality issues, assess the effectiveness of quality strategies, and uncover root causes of recurring errors. Develop and maintain dashboards that provide real-time insights into quality metrics and project performance. Prepare and deliver strategic quality reports to senior management and clients, articulating quality trends, risks, and improvement plans. Partner with cross-functional teams, including operational management, engineering, and client services, to align on project goals and quality assurance initiatives.
- Operational Leadership: Lead a team of Data Quality Analysts and provide mentorship, training, and expertise, fostering a culture of continuous improvement and accountability. Manage the configuration and integration of annotation and quality control tools (e.g. Labelbox, Dataloop, LabelStudio), ensuring optimal tool performance and alignment with project requirements. Identify, evaluate, and implement innovative quality control tools and automation technologies to streamline quality control workflows, enhance analytical capabilities, and improve operational efficiency.
Required Qualifications
- Bachelor’s degree in a technical field (e.g. Computer Science, Data Science) or equivalent professional experience.
- 3+ years of experience in data quality management, data operations, or related roles within AI/ML or data annotation environments.
- Proven track record in designing and executing quality assurance strategies for large-scale, multi-modal data annotation projects.
- Proven track record in a leadership role managing and developing high-performing, remote or distributed teams.
- Deep understanding of data annotation processes, quality assurance methodologies, and statistical quality metrics (e.g., F1 score, inter‑annotator agreement).
- Strong data‑analysis skills, with the ability to interrogate large datasets, perform statistical analyses, and translate findings into actionable recommendations.
- Excellent communication skills, with experience presenting complex data and quality insights to technical and non-technical stakeholders.
- Proficiency with annotation and QA tools (e.g., Labelbox, Dataloop, LabelStudio).
- High-level of proficiency in common data‑analysis tools, such as Excel and Google Sheets.
- Familiarity with programmatic data analysis techniques (e.g. Python, SQL).
- Familiarity with the core concepts of AI/ML pipelines, including data preparation, model training, and evaluation.
Preferred Qualifications
- Prior experience in an agile or fast-paced tech environment with exposure to AI/ML pipelines.
- Experience in a managed services or vendor-driven environment.
- Familiarity with prompt engineering and large-language-model assisted workflows to optimise annotation and validation processes.
- In-depth knowledge of ethical AI practices and compliance frameworks.
How We Partner To Protect You
TaskUs will neither solicit money from you during your application process nor require any form of payment in order to proceed with your application. Kindly ensure that you are always in communication with only authorized recruiters of TaskUs.
DEI
In TaskUs we believe that innovation and higher performance are brought by people from all walks of life. We welcome applicants of different backgrounds, demographics, and circumstances. Inclusive and equitable practices are our responsibility as a business. TaskUs is committed to providing equal access to opportunities. If you need reasonable accommodations in any part of the hiring process, please let us know.
We invite you to explore all TaskUs career opportunities and apply through the provided URL https://www.taskus.com/careers/.
AI Data Quality & Engineering Lead in Nottingham employer: TaskUs
Contact Detail:
TaskUs Recruiting Team
StudySmarter Expert Advice 🤫
We think this is how you could land AI Data Quality & Engineering Lead in Nottingham
✨Tip Number 1
Network like a pro! Reach out to folks in your industry on LinkedIn or at events. A friendly chat can lead to opportunities that aren’t even advertised yet.
✨Tip Number 2
Prepare for interviews by researching the company and its culture. Knowing about TaskUs and its People First approach will help you stand out and show you’re genuinely interested.
✨Tip Number 3
Practice common interview questions with a friend or in front of a mirror. The more comfortable you are, the better you’ll perform when it’s time to shine!
✨Tip Number 4
Don’t forget to apply through our website! It’s the best way to ensure your application gets seen by the right people at TaskUs. Plus, it shows you’re serious about joining our team!
We think you need these skills to ace AI Data Quality & Engineering Lead in Nottingham
Some tips for your application 🫡
Tailor Your CV: Make sure your CV is tailored to the AI Data Quality & Engineering Lead role. Highlight relevant experience and skills that match the job description, especially in data quality management and leadership.
Craft a Compelling Cover Letter: Your cover letter should tell us why you're the perfect fit for this role. Share specific examples of your past achievements in data quality and how they relate to what we do at TaskUs.
Showcase Your Technical Skills: Don’t forget to mention your proficiency with tools like Labelbox and Dataloop. We want to see your technical expertise shine through, so include any relevant projects or experiences.
Apply Through Our Website: We encourage you to apply directly through our website. It’s the best way to ensure your application gets into the right hands and shows your enthusiasm for joining our People First culture.
How to prepare for a job interview at TaskUs
✨Know Your Data Inside Out
Make sure you’re well-versed in data quality management and the specific metrics mentioned in the job description, like F1 score and inter-annotator agreement. Brush up on your knowledge of annotation processes and be ready to discuss how you've applied these concepts in previous roles.
✨Showcase Your Leadership Skills
Since this role involves leading a team, prepare examples that highlight your experience in managing and mentoring teams. Think about specific challenges you've faced and how you fostered a culture of accountability and continuous improvement among your team members.
✨Be Ready to Discuss Tools and Technologies
Familiarise yourself with the annotation and QA tools mentioned, like Labelbox and Dataloop. Be prepared to discuss your experience with these tools or similar ones, and how you’ve used them to enhance efficiency and maintain quality in past projects.
✨Prepare for Cross-Functional Collaboration
This role requires partnering with various teams, so think about times when you’ve successfully collaborated with different departments. Be ready to share how you communicated quality insights to both technical and non-technical stakeholders, as this will demonstrate your ability to bridge gaps between teams.