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Istvan Szukacs
Cloud Architecture Consultant at Wizz Air
Budapest, Hungary

Hands on systems engineer with valuable industry experience in software development and systems design. A variety of increasingly responsible positions in engineering, including systems & software engineering roles. Results oriented with proven track record of working collaboratively with team members off-shore and on-shore.

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664
CodersRank Rank
Top 2%
Based on:
Stackoverflow 366 events
Top 5
Clojure
Clojure
Developer
Hungary
Top 5
Erlang
Erlang
Developer
Hungary
Top 50
Python
Python
Developer
Hungary
Highest experience points: 0 points,

0 activities in the last year

List your work history, including any contracts or internships
Wizz Air
Jan 2023 - Present (1 year 3 months)
Budapest, Hungary Current workspace
Currently Istvan Szukacs supports the Wizz Air

Istvan Szukacs's scores will be added to this company.

Cloud Architecture Consultant
Working as the product owner of cloud infrastructure for migrating the workloads of Wizzair. We heavily use serverless (AWS Lambda) and make sure that the new infra is secure and cost efficient that yields to cost saving and more reliability compared to the previous on-prem solution. #aws #security #serverless
Datadeft
Jun 2021 - Present (2 years 10 months)
Hungary Current workspace
Currently Istvan Szukacs supports the Datadeft

Istvan Szukacs's scores will be added to this company.

Managing Director
Get the most out of your data

We deliver software services using cloud computing and data engineering best practices. We have been implementing machine learning pipelines using AWS S3, Glue, Athena, Sagemaker
Frankfurt School of Finance & Management
Oct 2020 - Present (3 years 6 months)
Frankfurt am Main, Hesse Current workspace
Currently Istvan Szukacs supports the Frankfurt School of Finance & Management

Istvan Szukacs's scores will be added to this company.

Dozent
Master in Data Analytics & Management

The abundance of data in combination with technologies such as machine learning is a rapidly changing business. Initially companies tend to focus on the technical challenge but often it’s actually the strategical and organisational challenge that turns out to be bigger. The Master in Data Analytics & Management will give you the skills to understand the technical foundations of digital transformation, driving strategic and business model implications and managing the necessary organisational change aiming at a purpose-driven and sustainable business transformation.

https://www.frankfurt-school.de/en/home/programmes/master/data-analytics-management

Taught class: IoT

Bachelor in Computational Business Analytics

Business Analytics is concerned with the development and application of quantitative approaches to support managerial decision-making. Experts in this domain are familiar with different methods for data collection and acquisition. They can analyse data and build statistical models, and they can translate the outcomes of data analyses to actionable recommendations for managers. On top of this, they need to have a thorough understanding of the different areas of management, including accounting, finance, marketing and operations.

Taught class: Databases & Data Management

Add some compelling projects here to demonstrate your experience
RocksDB
Feb 2018 - Present
Working on the DevOps side of things for RocksDB on CentOS
This section lets you add any degrees or diplomas you have earned.
Budapest University of Technology and Economics
Bachelor's degree, Energy Engineering
Dec 1999 - Dec 2002
Stanford University
Machine Learning, Computer Software Engineering
Dec 2015 - Dec 2015
This course provides a broad introduction to machine learning, data mining, and statistical pattern recognition. Topics include: (i) Supervised learning (parametric/non-parametric algorithms, support vector machines, kernels, neural networks). (ii) Unsupervised learning (clustering, dimensionality reduction, recommender systems, deep learning). (iii) Best practices in machine learning (bias/variance theory; innovation process in machine learning and AI).
Stanford University
Algorithms: Design and Analysis, Part 1
Dec 2013 - Dec 2013
http://online.stanford.edu/
Cascading Developer (Java)
Jun 2015
Hortonworks Certified Apache Hadoop Administrator 2.x

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