Jobs
My ads
My job alerts
Sign in
Find a job Career Tips Companies
Find

Talent scientist - graduate lead

Manchester
Permanent
Canonical
Scientist
Posted: 8 December
Offer description

Join to apply for the Talent Scientist - Graduate Lead role at Canonical.

As a pioneer remote-first tech company with a product that inspires people globally, Canonical attracts a high number of applicants. Our Talent Science team ensures that our processes are objective, scientifically rigorous, and efficient to select exceptional talent. This is an opportunity to join a team that is changing how an organization hires.

We advance graduate hiring to reach and assess world-class junior talent. The role focuses on building partnerships with top universities globally. The successful candidate will have experience leading graduate hiring at a regional or global scale within the technology industry, a strong academic track record, and the ability to analyse data, assess performance outcomes, and build dashboards to monitor outcomes. This is about the science of talent and performance, raising awareness and insights across the business so they can select the best talent from a global pool.

Location: This is a remote position based in the EMEA region.


What your day will look like

* Build effective partnerships with leading academic institutions to raise awareness of graduate opportunities.
* Create a compelling proposition to inspire top talent to apply to Canonical.
* Drive talent analytics to provide the business with real-time insights, partnering to move hiring processes efficiently.
* Conduct in-depth behavioural talent interviews providing insights into motivations and behaviours.
* Build relationships with global stakeholders to deliver against the hiring agenda, monitor activities, drive results, and ensure consistency in processes.
* Drive data-driven insights to inform robust decision making.
* Consider employer brand and how candidate interactions impact the candidate experience.
* Review and streamline hiring processes and tools to drive continuous improvement.
* Collaborate with external third parties and platforms to maximise ROI.
* Promote diversity and inclusion, removing unconscious bias and ensuring the sourcing strategy supports this.


What we are looking for in you

* An exceptional academic background from high school and university, with a Bachelors or Masters in Psychology or a people-based subject.
* Experience hiring talent in the technology industry, with a focus on graduate hiring.
* A highly data-driven mindset with the ability to create measurable outcomes, using SQL.
* Passionate about scientific approaches to talent selection and predicting/measuring hiring outcomes.
* Exposure or appreciation of psychometric assessments, including interpretation.
* Experience conducting behavioural, competency-based interviews with the ability to train stakeholders.
* Experience with tools such as Greenhouse, LinkedIn, Superset, Thomas International/DISC assessments is advantageous.
* High level of personal organisation and self-drive to work remotely.
* Willingness to travel to company events 2-4 times a year, for up to two weeks each.


What we offer you

We consider geographical location, experience, and performance in shaping compensation worldwide. We revisit compensation annually (and more often for graduates and associates) to recognise outstanding performance. In addition to base pay, we offer a performance-driven annual bonus. We provide all team members with benefits that reflect our values and ensure fairness globally.

* Distributed work environment with twice-yearly team sprints in person
* Personal learning and development budget of USD 2,000 per year
* Annual compensation review
* Recognition rewards
* Annual holiday leave
* Maternity and paternity leave
* Employee Assistance Programme
* Opportunity to travel to new locations to meet colleagues
* Priority Pass, including lounge access, for company travel


About Canonical

Canonical is a pioneering tech firm at the forefront of the global move to open source. As the company that publishes Ubuntu, a key open source project and platform for AI, IoT and the cloud, we recruit on a global basis and maintain high standards for new hires. Canonical has been remote-first since 2004. Working here challenges you to think differently, work smarter, learn new skills, and raise your game.

Canonical is an equal opportunity employer. We foster a workplace free from discrimination. Diversity of experience, perspectives, and background create a better work environment and better products. We will give your application fair consideration regardless of identity.

Seniority level: Mid-Senior level

Employment type: Full-time

Job function: Research, Analyst, and Information Technology | Industries: Software Development

Referrals increase your chances of interviewing at Canonical by 2x

Sign in to set job alerts for “Lead Scientist” roles. We’re unlocking community knowledge in a new way, with insights contributed to articles, including AI-assisted content.

#J-18808-Ljbffr

Apply
Create E-mail Alert
Job alert activated
Saved
Save
Similar job
Machine learning scientist - cars
Manchester
Permanent
Booking.Com Uk
Scientist
€70,000 a year
Similar job
Senior machine learning scientist
Manchester
Permanent
Markerstudy Group
Scientist
€70,000 a year
Similar job
Remote talent scientist: data-driven hiring & insights
Manchester
Permanent
Canonical
Scientist
See more jobs
Similar jobs
Science jobs in Manchester
jobs Manchester
jobs Greater Manchester
jobs England
Home > Jobs > Science jobs > Scientist jobs > Scientist jobs in Manchester > Talent Scientist - Graduate Lead

About Jobijoba

  • Career Advice
  • Company Reviews

Search for jobs

  • Jobs by Job Title
  • Jobs by Industry
  • Jobs by Company
  • Jobs by Location
  • Jobs by Keywords

Contact / Partnership

  • Contact
  • Publish your job offers on Jobijoba

Legal notice - Terms of Service - Privacy Policy - Manage my cookies - Accessibility: Not compliant

© 2026 Jobijoba - All Rights Reserved

Apply
Create E-mail Alert
Job alert activated
Saved
Save