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From a Fintech lens: MCP server live-coding & feature selection data hacks

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From a Fintech lens: MCP server live-coding & feature selection data hacks

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PyData Amsterdam is excited to announce our next meetup on Tuesday, August 26, at the Mollie Amsterdam office. Join us for an evening focused on practical machine learning engineering featuring three compelling talks that cut through AI buzzwords to showcase real-world implementations and open-source innovations. Stick around for good chats, new connections, and a relaxed evening with an enthusiastic data community.

SCHEDULE:

  • 17:30-18:10: Welcome with snacks and drinks
  • 18:10-18:15: Mollie introduction
  • 18:15-18:45: Talk 1 - "Don't over-egg the pudding: the MCP and its server", Wessel Huising
  • 18:45-19:15: Talk 2 - "Genetic Algorithms + Feature Importance For Feature Selection", Claudio Salvatore Arcidiacono
  • 19:15-19:45: Break + Food (🍕)
  • 19:45-20:15: Talk 3 - "Addressing the Spark and Pandas duality. Smart feature creation with Stile", Gilles Verbockhaven
  • 20:15-21:00: 🤝 Networking with drinks 🍻

TALKS:
[Talk 1] "Don't over-egg the pudding: the MCP and its server" by Wessel Huising
In an era where everything even slightly related to generative AI is considered the new meta, it is hard to keep track of the technical increments that are actually useful to our work and domains. The announcement of the Model Context Protocol from Anthropic has generated a lot of buzz and is a good attempt to become the leader among the various LLM providers. This talk will take a stab at creating an overview and an honest take on what the MCP server will bring us and what it feels like to develop one for Mollie, trying to combine all emotions and experiences together to answer the question of whether it really lives up to the promise. Defying established presentation best practices, I will try to live-code a new MCP server providing functionality for a to-be-chosen service.

Wessel Huising is a Senior Machine Learning Engineer at Mollie. He started scripting in PHP at the age of 14 and has never stopped since, except for the PHP part. He has dived into the rabbit hole of ML Platform engineering and MLOps for a few years now. Currently, he is trying to become full-stack in order to create end-to-end ML-focused products. He uses a lot of words to explain that he just likes to build stuff.

[Talk 2] "Genetic Algorithms + Feature Importance For Feature Selection" by Claudio Salvatore Arcidiacono
This presentation introduces the Genetic Algorithms + Feature Importance Feature Selection technique, implemented in the open source Python package felimination. Genetic algorithms are a powerful optimization technique that can be effectively utilized for feature selection in machine learning models. By combining genetic algorithms with feature importance, we aim to enhance the feature selection process, leading to more robust and interpretable models. We will start by reviewing genetic algorithms, detailing the steps of pool initialization, crossover, mutation, and selection. The presentation will continue by showcasing some code snippets using felimination, a Python package containing a suite of algorithms for feature selection, including the genetic algorithm with feature importance selector.

Claudio Salvatore Arcidiacono is a Senior Machine Learning Engineer at Mollie. He has been working in the fintech sector over the past 7 years with lots of experience in classical machine learning problems, mainly in binary classification problems. He loves to contribute to data science open source libraries like feature engine, scikit-learn, and narwhals. He maintains a couple of open source libraries himself (felimination and sklearo). In his free time, he is a coffee scientist, using a data-driven approach to dial in the perfect cup of espresso.

[Talk 3]: "Addressing the Spark and Pandas duality. Smart feature creation with Stile" by Gilles Verbockhaven
This talk will explore innovative approaches to bridging the gap between local development with Pandas and big data production environments with Spark, focusing on smart feature creation methodologies.

Gilles Verbockhaven is Lead Data Scientist at ING and brings extensive experience in applying scalable machine learning solutions to financial services challenges.

DIRECTIONS:
Mollie Amsterdam Office
Address: Keizersgracht 126, 1015 CW, Amsterdam

Mollie’s office is right in Amsterdam’s historic city center. It’s a nice ~20-minute walk (about 1.5 km) from Central Station. If you’d rather hop on public transport, trams 2, 12, or 17 will get you from Central Station to Keizersgracht in ~8 minutes.

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