Machine Learning Engineer

Employees can work remotely, Romania

Accesa & RaRo

Experience the benefits of modern IT solutions first-hand, by venturing in your digital journey with a reliable and flexible partner by your side.

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Company Description

Accesa is a leading technology company headquartered in Cluj-Napoca, with offices in Oradea and 20 years of experience in turning business challenges into opportunities and growth. 

A value-driven organization, it has established itself as a partner of choice for major brands in Retail, Manufacturing, Finance, and Banking. It covers the complete digital evolution journey of its customers, from ideation and requirements setup to software development and managed services solutions. 

With more than 1,200 IT professionals, Accesa also has a fast-growing footprint, establishing itself as an employer of choice for IT professionals who are passionate about problem-solving through technology. Coming together in strong tech teams with a customer-centric approach, they enable businesses to grow, delivering value for our clients, partners, industry, and community. 

Job Description

You will be part of a strategic initiative focused on developing predictive maintenance algorithms for a client’s manufacturing operations. The solution aims to detect equipment issues before failures occur, improving uptime, reducing costs, and boosting efficiency.  

Built on advanced data science and MLOps practices, and using rich time-series data from industrial machinery, the platform will deliver actionable insights fully integrated into existing engineering workflows. 

Responsibilities

  • Lead technical delivery: Drive the development of pipelines for transforming raw sensor data using time-windowing, FFT, and domain-specific features. Ensure scalable, high-quality data processing aligned with best practices and reproducibility standards 
  • Shape architecture: Design and implement anomaly and failure detection models, both unsupervised (Isolation Forest, One-Class SVM) and supervised (XGBoost, Random Forest), ensuring robust and compliant architectures while staying current with relevant frameworks 
  • Collaborate across roles: Bridge data science, engineering, and domain teams to align on requirements and delivery plans. Support RUL forecasting with time-series models like LSTM, ensuring outputs are clear and actionable 
  • Ensure delivery excellence: Apply explainable AI tools (LIME, SHAP) and create diagnostic visualizations to build trust and transparency. Maintain strong experiment tracking, versioning, and deployment using MLflow for reliable production workflows 
  • Mentor and support: Guide the team through the ML lifecycle, secure deployments, and monitoring. Provide mentorship, support onboarding, and encourage technical growth and consistency 

Qualifications

  • 4+ years of experience with Python and its data science ecosystem (Pandas, NumPy, Scikit-learn), fundamental for data manipulation and modeling   
  • Proficiency in advanced feature engineering techniques, including the transformation of raw sensor data (such as vibration or temperature readings) into meaningful features for machine learning models, with skills in handling missing values, creating time-windowed statistics (e.g., rolling averages), and applying frequency-domain analysis (e.g., FFTs). 
  • Hands-on experience with unsupervised anomaly detection algorithms, such as Isolation Forest and One-Class SVM, essential for learning normal machine behavior and detecting deviations when labeled failure data is not available 
  • Solid expertise in supervised machine learning models, including Random Forest and XGBoost for fault classification, along with practical experience in time-series networks (e.g., LSTM) for Remaining Useful Life (RUL) prediction. 
  • Good understanding of explainable AI frameworks, such as LIME and SHAP, to ensure transparency and trust in model decisions for maintenance teams. 
  • Experience with MLOps practices and tools, including MLflow or similar frameworks, to manage experiment tracking, model versioning, and ensure a reproducible and maintainable machine learning lifecycle.  

Additional Information

At Accesa you can:

Enjoy our holistic benefits program that covers the four pillars that we believe come together to support our wellbeing, covering social, physical, emotional wellbeing, as well as work-life fusion. 

  • Physical Wellbeing: Our wellbeing program includes medical benefits, gym support, and personalized fitness options for an active lifestyle, complemented by team events and the Healthy Habits Club. 
  • Work-Life Fusion: In very dynamic industries such as IT, the line between our professional and personal lives can quickly become blurred. Having a one-size-fits-one approach gives us the flexibility to define the work-life dynamic that works for us. 
  • Emotional Wellbeing: We believe that to maintain our overall health, we need to invest in our mental wellbeing just as much as we do in our physical health, social connections or in achieving work-life balance
  • Social Wellbeing: As a growing community in a hybrid environment, we want to ensure we remain connected not just by the great work we do every day but through our passions and interests

 

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* Salary range is an estimate based on our AI, ML, Data Science Salary Index 💰

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Tags: Architecture Banking Classification Engineering Feature engineering Finance Industrial LSTM Machine Learning MLFlow ML models MLOps NumPy Pandas Pipelines Predictive Maintenance Python Scikit-learn Statistics XGBoost

Perks/benefits: Career development Health care Startup environment Team events

Regions: Remote/Anywhere Europe
Country: Romania

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