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UTA Systems

AI/ML Engineer

UTA Systems, Mckinney, Texas, United States, 75070

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Machine Learning Model Development: Design, develop, and implement machine learning models and algorithms to solve complex problems and improve business processes. Data Preprocessing and Feature Engineering: Preprocess raw data and engineer relevant features to prepare datasets for machine learning model training. Model Training and Evaluation: Train, validate, and fine-tune machine learning models using appropriate algorithms and techniques, such as regression, classification, clustering, or deep learning. Model Deployment: Deploy machine learning models into production environments, ensuring scalability, reliability, and performance. Performance Monitoring: Monitor the performance of deployed machine learning models, track key metrics, and implement strategies for model optimization and improvement. Data Visualization and Interpretation: Visualize and interpret model predictions and insights, and communicate findings to stakeholders clearly and understandably. Collaboration: Collaborate with cross-functional teams, including data scientists, software engineers, and domain experts, to develop end-to-end AI/ML solutions. Research and Innovation: Stay updated on the latest research trends and advancements in artificial intelligence and machine learning, and explore innovative approaches to solving business challenges. Qualifications &Experience

Education: Bachelor's, Master's, or Ph.D. degree in Computer Science, or a related field. Experience: Minimum 2-3 years of industry experience in artificial intelligence, machine learning, or data science roles. Programming Skills: Proficiency in programming languages commonly used in machine learning, such as Python or R, and experience with libraries and frameworks such as TensorFlow, PyTorch, sci-kit-learn, or Keras. Data Manipulation: Strong skills in data manipulation and analysis, including working with large-scale datasets, data cleaning, and data preprocessing techniques. Machine Learning Algorithms: Deep understanding of machine learning algorithms and techniques, including supervised learning, unsupervised learning, reinforcement learning, and deep learning. Model Deployment: Experience with deploying machine learning models into production environments using containerization technologies (e.g., Docker) and deployment platforms (e.g., Kubernetes). Problem-Solving Skills: Strong analytical and problem-solving skills, with the ability to break down complex problems and develop innovative solutions. Communication Skills: Clear and effective communication skills, with the ability to communicate technical concepts to both technical and non-technical stakeholders. Teamwork: Ability to work effectively in a collaborative team environment and contribute to interdisciplinary projects. Continuous Learning: Willingness to learn and adapt to new technologies, tools, and methodologies in artificial intelligence and machine learning.

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