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Machine Learning Engineer
This job is no longer active!View all job-urile Euro-Testing Software Solutions active.View all job-urile Machine Learning Engineer active on Hipo.roView all job-urile in IT Software active on Hipo.ro |
| Employer: | Euro-Testing Software Solutions |
| Domain: |
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| Job type:: | full-time |
| Job level: | 1 - 5 ani experienta |
| Location: |
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| Updated at: | 19-02-2025 |
| Remote work: | Hybrid |
Short company description
Euro-Testing Software Solutions is involved in software consulting, having experience of approx. 20 years on the market in Romania and abroad, through specific IT solutions and services offered in the following areas:
• Software Testing (manual testing, testing automation, performance testing, outsourcing, training and certification, etc.)
• Cyber Security
• DevOps/DevSecOps
• Implementation and Customization of Atlassian & OpenText products (MicroFocus) and other niche products/solutions
• AI based Decision Intelligence solutions.
Requirements
▪Build, train, and deploy machine learning models efficiently using the managed infrastructure and automation capabilities of AWS SageMaker;
▪Use Amazon Redshift and S3 for data storage, processing and analysis;
▪Use Apache Spark and Airflow for large-scale data processing and networking;
▪Manage and optimize machine learning workflows on Amazon EMR;
▪Know the Python programming language and data libraries (eg: NumPy, Pandas, Scikit-learn) for data processing, elaboration and analysis.
Techstack: Airflow, AWS, Kafka, EMR, Sagemaker, Spark, Python, Tensorflow, S3, SQL.
Responsibilities
▪Study and transform data science prototypes
▪Design machine learning systems
▪Research and implement appropriate ML algorithms and tools
▪Develop machine learning applications according to requirements
▪Select appropriate datasets and data representation methods
▪Run machine learning tests and experiments
▪Perform statistical analysis and fine-tuning using test results
▪Train and retrain systems when necessary
▪Extend existing ML libraries and frameworks
▪Keep abreast of developments in the field


