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Supercharge your voice with AI! ...and express yourself the way you want to be heard.
Analytics Engineer
Location
Spain
Posted
99 days ago
Salary
0
Seniority
Mid Level
Job Description
Analytics Engineer
Voicemod
• Collaborate with engineers, product teams and analysts to develop data products that are precise and insightful. • Own the data product lifecycle, including designing tracking plans, developing data models, ELT pipelines, and self-serve data products. • Design and maintain an AI-enabled semantic layer that allows business users to interact with data through natural language using agentic AI tools. • Find creative ways to integrate AI into the Data lifecycle. • Be the data steward, ensuring data quality and consistent metrics.
Job Requirements
- 2+ years of experience in Business Intelligence, Data Engineering, or Data Analytics with advanced SQL skills.
- Solid knowledge of data modelling.
- Experience with dbt and Python.
- Experience with event tracking tools like Amplitude, Segment, mParticle, or similar.
Benefits
- Flexible Working Hours ⏰ – Adapt your job to your lifestyle. You do you!
- Remote Working 🌍 – Choose to work from home, our Valencia HQ, or the coworking space in Barcelona.
- 23 vacation days 🌴 – Plus an extra week off in August and your birthday.
- Anniversary Celebration Program 🎉 – Unlock extra days off, volunteering days, or time to enjoy unique experiences as you reach work milestones.
- Generous Referral Program 💼 – Earn rewards for helping us find and hire amazing talent.
- Extra time off on demand ⏳ – For those tough moments when you need a break.
- Wellbeing 🏥 – Paid sick leave, maternity/paternity leave, and healthcare insurance.
- Flexible Benefits Plan 💳 – Available for employees based in Spain, allowing you to optimize part of your salary (e.g., meals, transport, childcare) and save a significant amount of money each year.
- Remote Stipend 💸 – To cover remote working costs.
- Free English or Spanish lessons 📚 – From beginner to advanced levels.
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