-
Planung/Bauleitung und Projektsteuerung für Straßenverkehrsanlagen (m/w/d)
Bezirksamt Marzahn-Hellersdorf von Berlin Premium- 12681 Berlin
kein Anschreiben nötig Vollzeit/Teilzeit -
Teamleiter Team Vodafone (m/w/d)
regiocom Customer Care SE Premium- 14482 Potsdam
- 2800 bis 4000 €
kein Anschreiben nötig Homeoffice möglich -
Associate Project Manager – Product & Project Delivery (m/w/d)
Qvest Group GmbH Premium- Halle (Saale)
kein Anschreiben nötig Homeoffice möglich -
Sales Consultant (m/w/d)
Schuckart Consulting GmbH Premium- 10587 Berlin
- 42000 bis 75000 €
Neu kein Anschreiben nötig Schnellbewerbung -
Founders’ Associate (f/m/d)
ALPAS GmbH- Berlin
-
Platform Operations Associate (f/d/m)
CEEZER Software GmbH- Berlin
-
(Senior) Accounting & Finance Associate (f/m/d)
FRAMEN GmbH- Berlin
-
Housekeeping Associate (m/f/d)
Habyt- Berlin
-
Onboarding Associate - Vollzeit (m/f/d)
OrderYOYO- Berlin
-
(Senior) Data Engineer (m/f/d) - Azure - Datenbankentwicklung/BI, Ingenieur
Riverty Group GmbH- Berlin
Noch 1 Tag online -
Marketing & Growth Associate (m/f/d)
Bliq- Berlin
-
Data Engineer (f/m/d) - AI - Datenbankentwicklung/BI, Ingenieur
Smartclip- Berlin
Noch 1 Tag online Homeoffice möglich -
Founders Associate: New Business (f/m/d)
Miss Moneypenny Technologies GmbH- Berlin
-
Founder's Associate – Business Focus (m/f/d)
forward earth- Berlin
-
Founders Associate (m/f/d)
PsyCurio- Berlin
Associate Data Engineer (m/f/d)
- Neu
- Veröffentlicht am 02.02.2026
- Festanstellung
BIT Capital is looking for an Associate Data Engineer to join our Data & Engineering team. This role is central to ensuring the correctness, reliability, and transparency of the data platform that powers our proprietary equity research and AI-driven analytics.
The position is well suited for someone early in their career who demonstrates exceptional analytical ability, strong technical judgment, and a high level of rigor. You will work closely with senior engineers, researchers, and AI practitioners, gaining hands-on exposure to production data systems and modern AI-supported workflows operating under demanding correctness and reliability requirements.What You Will Do
Initial Focus
In the first phase of the role, the focus is on developing a deep understanding of existing data pipelines, identifying subtle failure modes, and ensuring their correctness in production.
You will:
Design and implement robust test strategies for Python-based ETL pipelines, including validation of edge cases and failure scenarios
Define and maintain precise and unambiguous technical documentation for ETL workflows, data flows, and platform components
Write SQL-based data quality checks and assertions to enforce correctness and consistency across datasets
Monitor ETL pipelines in production and investigate failures, delays, anomalies, and non-obvious data quality regressions
Perform first-level root cause analysis for ETL incidents and escalate issues with clear, well-reasoned technical context
Act as a quality and reliability gate for pipeline changes, backfills, and releases
Provide technical documentation and evidence to compliance and audit teams when required
Collaborate with external data vendors to validate data deliveries and resolve data issues
Support AI-related initiatives, including data preparation, retrieval workflows, evaluations, and reliability checks for AI- and LLM-enabled systems
Expanding Scope Over Time
As familiarity with the platform increases and technical judgment is demonstrated, the scope of the role will expand toward more direct engineering ownership.
Over time, you will:
Implement and improve Python-based ETL workflows in AWS and Databricks, with a focus on careful design, safe operation, and long-term maintainability
Improve monitoring, alerting, and validation mechanisms across the data platform
Take ownership of defined workflows, datasets, or pipeline components with clear accountability for their correctness in production
Participate in AI experimentation and productionization as systems mature
Contribute to technical design discussions with a systems-level and AI-aware perspective
0–2 years of professional experience in a data-focused, engineering, or analytical role, with evidence of exceptional performance
Bachelor’s or Master’s degree in Computer Science, Data Science, or a related field from a highly regarded university
Strong foundations in Python and SQL, demonstrated through high-quality academic, project, or professional work
Practical experience using AI tools or AI-assisted workflows for data tasks, automation, or analysis
Solid understanding of ETL workflows, data pipelines, and common operational failure modes
Very high standards for correctness, clarity, and reliability
Strong intellectual curiosity, particularly around AI and emerging technologies
Willingness to learn quickly and operate effectively in a technically demanding environment
Exposure to modern data platforms such as AWS, Databricks, or Spark
Familiarity with monitoring, alerting, or observability tools
Experience working with AI or LLM-based systems, datasets, or evaluation workflows
Interest in financial data, analytics, or equity research platforms
-
You are strongly motivated to understand complex systems in depth
- You are comfortable working on detailed, correctness-focused problems that require sustained concentration
- You approach repetitive or operational work analytically and look for principled improvements or automation
- You value precision, transparency, and reliability over convenience
- You are aligned with BIT Capital’s long-term, AI-driven roadmap
- Work with petabytes of data, leveraging the most cutting-edge tools
- Work with the brightest minds in the industry and become part of an unique success story in Europe
- An experienced, international team with professional colleagues and strong experts for an inspiring network
- Flat hierarchy and direct interaction with the management and senior staff of BIT Capital
- Assumption of responsibility from day one
- Challenging, varied tasks for a steep learning curve and professional growth opportunities
- A transparent, appreciative feedback culture for your personal development
- Team events with a successful team that brings digital and financial worlds together