← Back to all jobs
Staff Machine Learning Engineer, Risk
HashiCorp
🌎 Remote — US (PST)ContractData Science$209K – $239K /yr
Apply with RemoteHire24 →Posted 15 days ago
You apply directly through RemoteHire24. We review your application and contact shortlisted candidates by phone, WhatsApp, or Telegram.
Job description
HashiCorp is hiring a Staff Machine Learning Engineer, Risk to join our fully remote team in the United States. As a Staff Machine Learning Engineer, Risk, you'll turn data into insights and intelligent products. This is a contract, work-from-home role open to candidates across the US (Remote — US (PST)).
About the role
You'll turn data into insights and intelligent products, partnering with a friendly, distributed team across US time zones. We care about outcomes over hours and give you the autonomy, tools, and support to do your best work from home.
What you'll do:
• Build and validate models and dashboards
• Partner with stakeholders to define metrics
• Maintain data pipelines and data quality
• Analyze large datasets to surface actionable insights
• Communicate findings to technical and non-technical audiences
What we offer:
• Competitive salary and meaningful equity
• Comprehensive medical, dental, and vision coverage
• Home office and wellness stipends
• Generous paid time off and company holidays
• Annual learning and professional development budget
How we work
We're remote-first and async-friendly. Expect clear documentation, regular feedback, supportive teammates, and real opportunities to grow your career.
HashiCorp is proud to be an equal opportunity employer. We celebrate diversity and are committed to creating an inclusive environment for everyone.
Requirements
Minimum qualifications:
• 7+ years of experience, including leading teams or projects
• Strong SQL and Python (or R)
• Clear communication skills
• Familiarity with cloud data warehouses
• Experience with data visualization tools
Nice to have:
• Experience working in a fully remote or distributed team
• Comfort communicating clearly and proactively in writing