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Capcovia Greenhouse

Data & AI Warsaw Tech Summit 2026: Machine Learning Engineer – From Models to Production

PolandPosted 1mo ago
ML EngineerMid LevelFull-time

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About the Role

 

 

Capco at Data & AI Warsaw Tech Summit 2026

About Capco 

Capco drives digital transformation across the financial industry.

A global consulting firm focused on financial services, Capco partners with leading banks, fintechs, and financial institutions to design and deliver next-generation data platforms, AI solutions, and digital ecosystems.

From data strategy and modern platforms to AI-powered decision systems and GenAI innovation, teams unlock measurable value from data.

What defines Capco?

A fast, flexible, and entrepreneurial environment. Quick decision-making, creative thinking, and real ownership enable people to push the boundaries of what technology can achieve.

Capco stands for:

• Trusted partnerships with banks, payments providers, and financial institutions
• Delivery of modern data platforms and AI-powered systems
• Innovation across cloud, data engineering, machine learning, and GenAI
• A community of engineers, architects, and consultants solving complex challenges


Meet Capco at the Data & AI Warsaw Tech Summit  🚀

At this year’s Data & AI Warsaw Tech Summit, Capco will share how financial institutions can move from experimentation to production-grade AI and scalable data ecosystems.

Our experts will explore how organizations can:

• Build AI-native architectures on modern cloud platforms
• Scale machine learning and generative AI solutions across enterprise environments
• Transform fragmented data into high-value data products
• Embed AI into real business workflows and decision-making systems

Capco Speakers at Data & AI Warsaw Tech Summit 🚀

Andrzej Worona  & Laura Żusin-Kaczmarek

Topic: From Data to Meaning: Educating AI in Banking with Ontologies: Lessons from FIBO and Conversational Banking

Time: 11:50-12:10 CET

 

Intro:

Many AI solutions still fall short when it comes to understanding and reasoning about complex financial concepts. The real challenge is about how financial knowledge is represented and shared with machines. Why does AI still misunderstand basic banking terms despite having access to vast amounts of data?
How can AI truly understand financial concepts? Using the Financial Industry Business Ontology (FIBO) as an example of structured domain knowledge, we will discuss how formal, machine-readable definitions can provide the contextual foundation AI needs. By analysing selected conversational banking scenarios and example solutions, we will invite participants to reflect together on what the right semantic layer for AI in banking should look like.
Join us to discover why the next leap in AI for banking isn’t just about more data or better models, but about building a structured understanding of financial meaning.

Looking for ML Engineer

Role Overview

We are looking for a Machine Learning Engineer to design, build, and deploy scalable machine learning solutions. In this role, you will work closely with data scientists, data engineers, and product teams to bring ML models into production and ensure their performance, reliability, and scalability.

Key Responsibilities
  • Design, develop, and deploy machine learning models into production

  • Build and maintain scalable ML pipelines and workflows

  • Collaborate with data scientists to operationalize models (MLOps)

  • Optimize model performance, scalability, and latency

  • Monitor, evaluate, and retrain models in production

  • Work with large datasets and feature engineering processes

  • Implement best practices for versioning, testing, and deployment of ML models

  • Integrate ML solutions into existing systems and applications

  • Document models, pipelines, and processes

Requirements
  • Proven experience as a Machine Learning Engineer or similar role (X+ years)

  • Strong programming skills in Python (or similar language)

  • Experience with ML frameworks (e.g., TensorFlow, PyTorch, scikit-learn)

  • Solid understanding of machine learning algorithms and statistics

  • Experience with data processing tools (e.g., Pandas, Spark)

  • Familiarity with MLOps practices and tools (e.g., MLflow, Kubeflow, Airflow)

  • Experience with cloud platforms (AWS, Azure, or GCP)

  • Knowledge

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