Access your audience through our unrivaled influencer community – Forbes 30 under 30
AI Data Engineer
Location
United Kingdom
Posted
8 days ago
Salary
0
Seniority
Senior
Job Description
AI Data Engineer
Influur
• Own the full lifecycle: from raw video ingestion to the decisions made by autonomous AI agents in production. • Define the future of agentic AI and own a real piece of it.
Job Requirements
- Expert-level Python engineering with clean, modular, reusable code.
- Experience building scalable data pipelines for unstructured data (video, audio, multimodal).
- Strong understanding of video/sound processing (codecs, frame extraction, batch & streaming workflows).
- Experience with embeddings, multimodal models, and LLM-powered workflows.
- Hands-on experience building AI agents: memory, planning, tool use, and execution loops.
- Ability to design systems that go from raw data → insight → autonomous action.
- Strong grasp of performance, scalability, and reliability in data-heavy systems.
- Comfortable owning architecture decisions end-to-end, from ingestion to production agents.
- Experience working with cloud infrastructure (GCP / AWS) and scalable compute setups.
- Bonus: Expertise in working with social media data
Benefits
- Competitive equity in a venture-backed company shaping the future of music influencer marketing.
- A seat at the table as we update and develop our AI Agent to power smarter matchmaking and campaign automation.
- Access to elite tools, AI copilots, and a team that builds daily at top speed.
- The opportunity to shape the foundation of Influur’s AI systems that empower creators and brands globally.
Related Guides
Related Categories
Related Job Pages
More Data Engineer Jobs
• Build and scale data pipelines and supporting infrastructure on AWS • Develop and implement data transformations, including: Design and configure AWS Glue jobs, Spark transformations, and Python-based ETL pipelines • Write and maintain integration tests to validate data movement across raw → staged zones • Implement data quality frameworks, including: Ensure data reliability, consistency, and performance across pipelines • Collaborate with cross-functional teams to improve data architecture and processes • Leverage AI-assisted development tools to generate boilerplate code (60–70%) and accelerate development cycles
• Lead the design and development of scalable data pipelines on AWS (Glue, S3, Athena, Step Functions) • Build and optimize batch and streaming ingestion pipelines, including CDC-based architectures • Design and implement robust data models aligned with business and analytics needs • Ensure data quality, reliability, and performance across pipelines and datasets • Collaborate with cross-functional teams to align technical solutions with business requirements • Provide technical leadership and mentorship to other engineers • Drive best practices in data engineering, including modular design, reusability, and governance • Leverage AI-assisted development tools to improve productivity and code quality • Proactively identify risks, bottlenecks, and optimization opportunities
• Design and build scalable data pipelines (batch & streaming) on GCP • Develop and manage API-driven integrations (REST, JSON, event-based) • Work with healthcare data standards such as FHIR, HL7, and EDI • Build and optimize solutions using: BigQuery, Dataflow, Pub/Sub, Cloud Storage • Design data models aligned with business and domain requirements • Ensure data quality, performance, and reliability • Collaborate with stakeholders and independently own deliverables from design to deployment
• Lead the design of scalable data solutions • Mentor talented engineers • Work on projects that truly make an impact • Build and optimize data pipelines that power forecasting and analytics platforms • Collaborate with product managers, front-end and back-end developers, and fellow data engineers • Ensure adherence to architectural standards • Coach junior team members • Maintain consistent coding standards across global engineering pods



