Data Scientist/ML Engineer - EU Remote - 6 Months
We are looking for a highly skilled Data Scientist/Machine Learning Engineer to join our growing data team, focusing on Real Time anomaly detection within a modern Azure + Databricks ecosystem. You will play a key role in designing, building, and deploying scalable ML solutions that process streaming data and deliver actionable insights.
This is an exciting opportunity to work on cutting-edge data platforms and contribute to the full machine learning life cycle-from experimentation to production.
Key Responsibilities- Develop and deploy Real Time anomaly detection models for streaming data environments
- Build and maintain end-to-end ML workflows using Databricks
- Manage the ML model life cycle using MLflow, including tracking, experimentation, and deployment
- Design and maintain model serving endpoints for scalable inference
- Implement model versioning, testing, and performance tuning processes
- Apply statistical techniques (eg, z-score normalization) for data preprocessing and feature engineering
- Use signal processing methods (eg, FFT transformations) to enhance feature extraction and anomaly detection
- Collaborate with data engineers and platform teams to optimize pipelines within Azure Databricks
Required Skills & Experience
- Proven experience in anomaly detection, particularly in Real Time or streaming scenarios
- Strong hands-on experience with Databricks-based ML workflows
- Expertise in MLflow for experiment tracking and life cycle management
- Experience building and managing model serving endpoints
- Solid understanding of:
- Model versioning and testing frameworks
- Model performance tuning techniques
- Strong foundation in statistics and data preprocessing, including normalization techniques like z-score
- Familiarity with signal processing concepts such as FFT (Fast Fourier Transform)
- Experience working within an Azure + Databricks platform
Nice to Have
- Experience with large-scale streaming tools (eg, Kafka, Spark Streaming)
- Knowledge of MLOps best practices and CI/CD for ML pipelines
- Exposure to production-grade monitoring and alerting systems for ML models
Interested? Please apply and let's connect.
Razvan Tarus
Let op: vacaturefraude
Helaas komt vacaturefraude steeds vaker voor. We waarschuwen je voor mogelijke misleiding:
* Wij zullen nooit via WhatsApp of in een videogesprek vragen om jouw persoonlijke gegevens (zoals een kopie van je ID, bankgegevens of BSN).
* Twijfel je over de echtheid van een vacature of contactpersoon? Neem dan altijd rechtstreeks contact met ons op via de officiële contactgegevens op onze website.
Important: job fraud
Unfortunately, job fraud is becoming more common. Beware of such scams:
* We will never ask for personal information (such as a copy of your ID, bank details, or social security number) via WhatsApp or during a video call.
* If you're unsure whether a vacancy or contact person is legitimate, please reach out to us directly using the official contact details on our website.
Reference: 3131393352
Data Scientist/ML Engineer - EU Remote - 6 Months
Posted on Jul 1, 2026 by Global Enterprise Partners
We are looking for a highly skilled Data Scientist/Machine Learning Engineer to join our growing data team, focusing on Real Time anomaly detection within a modern Azure + Databricks ecosystem. You will play a key role in designing, building, and deploying scalable ML solutions that process streaming data and deliver actionable insights.
This is an exciting opportunity to work on cutting-edge data platforms and contribute to the full machine learning life cycle-from experimentation to production.
Key Responsibilities- Develop and deploy Real Time anomaly detection models for streaming data environments
- Build and maintain end-to-end ML workflows using Databricks
- Manage the ML model life cycle using MLflow, including tracking, experimentation, and deployment
- Design and maintain model serving endpoints for scalable inference
- Implement model versioning, testing, and performance tuning processes
- Apply statistical techniques (eg, z-score normalization) for data preprocessing and feature engineering
- Use signal processing methods (eg, FFT transformations) to enhance feature extraction and anomaly detection
- Collaborate with data engineers and platform teams to optimize pipelines within Azure Databricks
Required Skills & Experience
- Proven experience in anomaly detection, particularly in Real Time or streaming scenarios
- Strong hands-on experience with Databricks-based ML workflows
- Expertise in MLflow for experiment tracking and life cycle management
- Experience building and managing model serving endpoints
- Solid understanding of:
- Model versioning and testing frameworks
- Model performance tuning techniques
- Strong foundation in statistics and data preprocessing, including normalization techniques like z-score
- Familiarity with signal processing concepts such as FFT (Fast Fourier Transform)
- Experience working within an Azure + Databricks platform
Nice to Have
- Experience with large-scale streaming tools (eg, Kafka, Spark Streaming)
- Knowledge of MLOps best practices and CI/CD for ML pipelines
- Exposure to production-grade monitoring and alerting systems for ML models
Interested? Please apply and let's connect.
Razvan Tarus
Let op: vacaturefraude
Helaas komt vacaturefraude steeds vaker voor. We waarschuwen je voor mogelijke misleiding:
* Wij zullen nooit via WhatsApp of in een videogesprek vragen om jouw persoonlijke gegevens (zoals een kopie van je ID, bankgegevens of BSN).
* Twijfel je over de echtheid van een vacature of contactpersoon? Neem dan altijd rechtstreeks contact met ons op via de officiële contactgegevens op onze website.
Important: job fraud
Unfortunately, job fraud is becoming more common. Beware of such scams:
* We will never ask for personal information (such as a copy of your ID, bank details, or social security number) via WhatsApp or during a video call.
* If you're unsure whether a vacancy or contact person is legitimate, please reach out to us directly using the official contact details on our website.
Reference: 3131393352
Alert me to jobs like this:
Amplify your job search:
Expert career advice
Increase interview chances with our downloads and specialist services.
Visit Blog