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Data Scientist

Date: Jan 12, 2022

Location: Budapest, Central Hungary (Közép-Magyarország), HU

Company: AGCO


AGCO is a global leader focused on the design, manufacture and distribution of agricultural machinery and infrastructure. As a Fortune 500 company and one of the global leaders in agricultural equipment manufacturing, we have an extensive network of over 9,200 dealers and serve more than 140 countries. While headquartered in Duluth, Georgia, AGCO has manufacturing facilities all over the world creating and distributing their full-line of products, including Challenger, Fendt, GSI, Massey Ferguson, and Valtra. Visit www.AGCOcorp.com for more information.


AGCO Hungary as a subsidiary of an international corporation is NOW looking for:


Data Scientist

Budapest, Hungary


In our AGCO journey towards customer centricity and digitalization, the necessity for maintaining high quality and actionable customer data is a key success factor. Furthermore, it is important to enable intelligent decision making by providing actionable insights to marketing, sales and partners.

As a data scientist you will work with busines and IT stakeholders to identify potential for intelligent solutions. You will create smart algorithms to identify and fix data quality issues, you will develop descriptive, diagnostic, predictive and prescriptive solutions in the customer data space to enable customer centric, smart decision making.

You will be part of the global customer data and analytics team delivering a best-in-class service to the organization including design and operation of the customer MDM solution, data quality and completeness reporting, definition of data quality standards, definition and implementation of data cleansing rules and algorithms and advanced customer analytics.


What You Will Do:


As a Data Scientist

  • You will work closely with business (e.g. sales and marketing) and IT stake holders to identify business requirements for customer data and analytics
  • You will provide actionable insights to business stakeholders derived from descriptive, diagnostic, predictive and prescriptive analytics
  • You will implement end to end customer analytics use cases from design, to development, to deployment
  • You will act as a change agent to enable data driven decision making in the organization
  • You will discuss data quality requirements with the data source owners
  • You will communicate your results to the business using rich visualization


What You Will Bring:


  • Bachelor’s degree in mathematics, physics, economics, computer science or similar
  • 2-3 years of experience as a data scientists or data engineer
  • Experience in analytical model development
  • Hands-on experience with coding in at least one of the following open source languages languages: Python (preferred), R, Scala
  • Hands-on experience with SQL
  • Excellent written and spoken communication in English



A Plus If You Have:


  • Experience in SAFe agile
  • Hands-on knowledge of Salesforce is an advantage
  • Hands-on knowledge of cloud providers (Azure, google, AWS) is an advantage
  • Hands-on knowledge of big data frameworks like SPARK is an advantage
  • Hand on expertise with data visualization and reporting tools (e.g. Tableau)
  • Some experience with Natural Language Processing (NLP)


If you are looking for an opportunity to work in an inspiring dynamic multinational environment for a leading global player of agricultural solutions, we look forward to receiving your application in English language (incl. your CV, motivation letter and earliest possible start date) via our career website: http://careers.agcocorp.com. For more information about AGCO, please visit www.AGCOcorp.com.


We offer you appropriate perspectives and personal as well as professional development possibilities


More people. More food. More farm productivity.
It's a simple but compelling growth opportunity for AGCO and for your career.    
Join AGCO to grow your career. We are Leading the Way. Together.

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