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Uvation

AI/ML Engineer

Uvation, Romania, Pennsylvania, United States

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Job Title:

AI/ML Engineer;

Department:

IT Services;

Reports To:

IT Project Manager;

Location:

(Remote)

Job Overview The AI/ML Engineer plays a critical role in designing, developing, and deploying machine learning models and AI-driven solutions to support strategic business initiatives. The role involves collaborating with cross-functional teams, including software engineering, data analytics, product development, and business stakeholders, to drive intelligent automation, data-driven decision-making, and advanced analytics capabilities.

The ideal candidate will have 3 to 5 years of experience in AI/ML model development, with a strong foundation in machine learning algorithms, data preprocessing, and deployment pipelines. Experience with Python, TensorFlow/PyTorch, and cloud-based ML services is essential.

Responsibilities

Model Development and Optimization

Design, build, and deploy ML models for classification, regression, NLP, computer vision, or time-series forecasting.

Select appropriate algorithms and techniques based on business needs and data characteristics.

Continuously monitor and improve model performance using metrics and feedback loops.

Data Preparation and Feature Engineering

Clean, preprocess, and transform structured and unstructured datasets for training and inference.

Engineer and select relevant features to improve model accuracy and generalizability.

Collaborate with data engineers to ensure data quality and accessibility.

Model Deployment and MLOps

Package and deploy models using tools like Docker, Flask/FastAPI, and Kubernetes.

Implement CI/CD pipelines for ML using platforms like MLflow, Airflow, or Kubeflow.

Monitor deployed models for drift, latency, and performance in production environments.

AI Solutions and Use Case Implementation

Work with business stakeholders to translate real-world problems into AI/ML use cases.

Prototype and test AI-driven solutions (e.g., recommendation engines, chatbots, fraud detection).

Contribute to proof-of-concept projects and assist in scaling successful models to production.

Research and Innovation

Stay updated with the latest research, frameworks, and tools in machine learning and AI.

Experiment with cutting-edge models (e.g., LLMs, transformers, generative AI) and assess their viability.

Promote innovation by recommending and implementing modern AI strategies.

Cross-functional Collaboration

Collaborate with software developers, DevOps, data analysts, and domain experts for end-to-end solution delivery.

Translate technical insights into business value through clear documentation and presentations.

Documentation and Best Practices

Maintain comprehensive documentation for models, experiments, and pipelines.

Ensure reproducibility, scalability, and compliance with data governance policies.

Requirements Experience

3–5 years of hands-on experience in machine learning model development and deployment.

Proven track record of solving real-world problems using supervised, unsupervised, or deep learning methods.

Technical Skills Strong knowledge of:

Python and ML libraries (scikit-learn, pandas, NumPy, TensorFlow/PyTorch)

Model evaluation, hyperparameter tuning, and pipeline automation

REST APIs for model serving and integration

Familiarity with:

MLOps tools (MLflow, Airflow, DVC, Docker, Kubernetes)

Cloud ML services (AWS SageMaker, Azure ML, GCP AI Platform)

NLP or computer vision frameworks (e.g., Hugging Face, OpenCV)

Soft Skills

Strong analytical and problem-solving abilities.

Excellent communication skills, both verbal and written.

Ability to work independently and within cross-functional teams.

Curiosity, adaptability, and willingness to learn continuously.

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