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Machine Learning Engineer – Content Safety Platform

Machine Learning EngineerMachine Learning EngineerFull TimeRemoteSeniorTeam 1,001-5,000Since 2013H1B SponsorCompany SiteLinkedIn

Location

Australia

Posted

104 days ago

Salary

0

Seniority

Senior

Bachelor DegreeEnglishJavaKotlinPython

Job Description

Machine Learning Engineer – Content Safety Platform

Canva

• Own end-to-end delivery of ML-based safety features, from technical design through production rollout and iteration • Build and maintain ML models that safeguard AI-generated content across multiple modalities (images, video, audio, text), detecting harmful content, IP violations, bias, and other safety concerns • Design and implement RAG (Retrieval-Augmented Generation) architectures and other advanced ML systems to enhance detection capabilities • Fine-tune and evaluate LLM-based models for content moderation and prompt filtering, making data-driven decisions about model selection and optimization • Collaborate with Legal, Product Policy, and AI product teams to define requirements, balance safety with user experience, and deliver compliant solutions • Create evaluation frameworks to measure model quality, safety coverage, false positive/negative rates, and policy alignment • Monitor production systems, respond to incidents, and maintain operational excellence through documentation and runbooks

Job Requirements

  • You're a machine learning engineer with a proven track record of delivering ML-powered features in production.
  • You bring technical expertise across the ML lifecycle—from data wrangling and model development to evaluation, deployment, and monitoring.
  • You're comfortable operating independently while collaborating with cross-functional teams, and you're motivated by user impact and product outcomes.
  • Strong bias for action and product-minded approach to engineering
  • Hands-on engineer who loves working alongside software engineers, writing Python production code (Java/Kotlin backend experience is a plus), and solving complex problems
  • Experience building and deploying ML systems using modern architectures, including LLMs and RAG
  • Comfortable influencing roadmap decisions and navigating ambiguous problem spaces
  • Passionate about the rapidly evolving AI landscape and proactive about experimenting with emerging techniques

Benefits

  • Equity packages - we want our success to be yours too
  • Inclusive parental leave policy that supports all parents & carers
  • An annual Vibe & Thrive allowance to support your wellbeing, social connection, office setup & more
  • Flexible leave options that empower you to be a force for good, take time to recharge and supports you personally

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