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.Agentic AI Engineer(m/w/x)
Building AI-first data foundations for drug discovery, unifying diverse data sources for LLM access. Hands-on LLM and agent framework experience required. Early-stage virtual share options, wellbeing budget.
Requirements
- 2–4 years applied AI, data systems, or internal agentic tools experience
- Hands-on LLMs and retrieval-augmented systems experience
- Hands-on agent frameworks and orchestration experience
- Hands-on workflow automation across multiple systems experience
- Hands-on secure execution environments setup experience
- Solid data engineering capabilities
- Designing and maintaining data pipelines (batch/real-time)
- Building and managing structured data layers
- Integrating and normalizing data across heterogeneous sources
- Ensuring data quality, observability, and reliability
- Exceptional execution bias and entrepreneurial drive
- Experience building agentic workflows in real-world environments
- Experience integrating various data sources
- Familiarity with Claude Code, Pi (OpenClaw), or similar agent systems
- Experience integrating across communication tools, documentation systems, internal platforms
- Strong engineering and product judgment
- High bar for quality, speed, and ownership
- Flexibility to jump across topics and work with various internal teams
- Fluent English
- German optional
- Background in fast-moving startup environments
- Exposure to scientific, technical, or data-intensive domains
Tasks
- Build AI-first internal data foundation
- Create unified data layer across meeting transcripts, email, Slack, CRM, Confluence, product documentation, and external signals
- Design pragmatic data pipelines, schemas, and retrieval systems for LLM access
- Ensure information is structured, queryable, and reliable
- Build agentic workflows and internal AI systems
- Design and deploy agentic workflows and LLM interfaces for daily use
- Deliver pre-meeting briefings with account context and recommended actions
- Generate automated debriefs and follow-ups
- Extract customer feedback into structured product insights
- Provide cross-functional visibility into discussions and decisions
- Translate customer signals into product inputs
- Generate competitive intelligence and internal knowledge synthesis
- Create high-quality drafts for internal and external communication
- Produce marketing copy and decision dashboards for senior leadership
- Iterate based on real usage and feedback
- Drive adoption and workflow transformation
- Identify high-value workflows across commercial, product, and leadership teams
- Replace manual, fragmented processes with AI-native workflows
- Shape how teams use AI in day-to-day work
- Focus on systems that are actually used
- Turn prototypes into production-ready systems
- Move fast from prototype to reliable internal tooling
- Establish standards for data quality and consistency
- Set access control and permissions
- Implement monitoring and maintenance
- Balance speed with robustness for sustained usage
- Build secure, reliable, and non-destructive agent systems
- Enforce process isolation and strict permissioning
- Ensure predictable, auditable behavior
- Implement fail-safes, rollback mechanisms, and continuous testing
- Contribute to company-wide AI-first transformation
- Act as a key driver in making Apheris AI-native
- Bring in best practices from agentic AI, LLM tooling, and workflow automation
- Contribute to adjacent technical systems where relevant
Work Experience
- 2 - 4 years
Education
- Bachelor's degreeOR
- Master's degree
Languages
- English – Fluent
- German – Basic
Tools & Technologies
- LLMs
- retrieval-augmented systems
- Agent frameworks
- workflow automation
- Claude Code
- Pi (OpenClaw)
- CRM
- Slack
- docs
- product systems
- data pipelines
- data warehouses
- vector databases
Benefits
Competitive Pay
- Industry-competitive compensation
- Early-stage virtual share options
Additional Allowances
- Wellbeing budget
- Work-from-home budget
- Co-working stipend
Mental Health Support
- Mental health support
Learning & Development
- Learning budget
More Vacation Days
- Generous holiday allowance
Team Events
- Office days in Berlin HQ or European location (3x per year)
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.Agentic AI Engineer(m/w/x)
Building AI-first data foundations for drug discovery, unifying diverse data sources for LLM access. Hands-on LLM and agent framework experience required. Early-stage virtual share options, wellbeing budget.
Requirements
- 2–4 years applied AI, data systems, or internal agentic tools experience
- Hands-on LLMs and retrieval-augmented systems experience
- Hands-on agent frameworks and orchestration experience
- Hands-on workflow automation across multiple systems experience
- Hands-on secure execution environments setup experience
- Solid data engineering capabilities
- Designing and maintaining data pipelines (batch/real-time)
- Building and managing structured data layers
- Integrating and normalizing data across heterogeneous sources
- Ensuring data quality, observability, and reliability
- Exceptional execution bias and entrepreneurial drive
- Experience building agentic workflows in real-world environments
- Experience integrating various data sources
- Familiarity with Claude Code, Pi (OpenClaw), or similar agent systems
- Experience integrating across communication tools, documentation systems, internal platforms
- Strong engineering and product judgment
- High bar for quality, speed, and ownership
- Flexibility to jump across topics and work with various internal teams
- Fluent English
- German optional
- Background in fast-moving startup environments
- Exposure to scientific, technical, or data-intensive domains
Tasks
- Build AI-first internal data foundation
- Create unified data layer across meeting transcripts, email, Slack, CRM, Confluence, product documentation, and external signals
- Design pragmatic data pipelines, schemas, and retrieval systems for LLM access
- Ensure information is structured, queryable, and reliable
- Build agentic workflows and internal AI systems
- Design and deploy agentic workflows and LLM interfaces for daily use
- Deliver pre-meeting briefings with account context and recommended actions
- Generate automated debriefs and follow-ups
- Extract customer feedback into structured product insights
- Provide cross-functional visibility into discussions and decisions
- Translate customer signals into product inputs
- Generate competitive intelligence and internal knowledge synthesis
- Create high-quality drafts for internal and external communication
- Produce marketing copy and decision dashboards for senior leadership
- Iterate based on real usage and feedback
- Drive adoption and workflow transformation
- Identify high-value workflows across commercial, product, and leadership teams
- Replace manual, fragmented processes with AI-native workflows
- Shape how teams use AI in day-to-day work
- Focus on systems that are actually used
- Turn prototypes into production-ready systems
- Move fast from prototype to reliable internal tooling
- Establish standards for data quality and consistency
- Set access control and permissions
- Implement monitoring and maintenance
- Balance speed with robustness for sustained usage
- Build secure, reliable, and non-destructive agent systems
- Enforce process isolation and strict permissioning
- Ensure predictable, auditable behavior
- Implement fail-safes, rollback mechanisms, and continuous testing
- Contribute to company-wide AI-first transformation
- Act as a key driver in making Apheris AI-native
- Bring in best practices from agentic AI, LLM tooling, and workflow automation
- Contribute to adjacent technical systems where relevant
Work Experience
- 2 - 4 years
Education
- Bachelor's degreeOR
- Master's degree
Languages
- English – Fluent
- German – Basic
Tools & Technologies
- LLMs
- retrieval-augmented systems
- Agent frameworks
- workflow automation
- Claude Code
- Pi (OpenClaw)
- CRM
- Slack
- docs
- product systems
- data pipelines
- data warehouses
- vector databases
Benefits
Competitive Pay
- Industry-competitive compensation
- Early-stage virtual share options
Additional Allowances
- Wellbeing budget
- Work-from-home budget
- Co-working stipend
Mental Health Support
- Mental health support
Learning & Development
- Learning budget
More Vacation Days
- Generous holiday allowance
Team Events
- Office days in Berlin HQ or European location (3x per year)
About the Company
Apheris
Industry
Pharmaceuticals
Description
Apheris builds AI applications for pharmaceutical R&D, enabling secure collaboration on large AI models to accelerate drug discovery.
Not a perfect match?
- Nelly
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