MLOps Engineer
TechWishTitle: MLOps Engineer
Engagement Type: FTE
Grade: 7
Location: REMOTE
Primary Responsibilities:
* Develop and implement end-to-end MLOps strategies to enhance solutions, including building, testing, and deploying machine learning and deep learning models.
* Design, build, and maintain robust machine learning pipelines for production environments, ensuring seamless integration with operational processes.
* Process and transform source data for machine learning pipelines, utilizing cloud computing platforms to enhance efficiency and scalability.
* Collaborate with cross-functional teams to assess and apply AI technologies to address complex business problems, focusing on practical implementations and operationalization.
* Communicate technical findings and insights to stakeholders and work closely to develop actionable solutions that meet customer needs.
* Develop and maintain comprehensive code and model documentation, and support model governance and compliance approvals.
* Adhere to best coding practices and standards in Python, including effective use of GitHub for version control and collaborative development.
* Prepare and deliver presentations, including written reports and visual presentations, to communicate analysis results and recommendations to leadership.
Required Qualifications:
* 5+ years of experience in machine learning and data science, with a focus on operationalizing models and managing MLOps workflows.
* 5+ years of hands-on experience with Python, classical machine learning methods, and deep learning frameworks such as Scikit-learn ,PyTorch, TensorFlow.
* 5+ years of experience leading MLOps projects, demonstrating strong technical communication skills and technical leadership.
Preferred Qualifications:
* Experience with NLP techniques, including text embedding, text classification, and the use and evaluation of LLMs/generative AI models.
* Experience with distributed computing frameworks such as Apache Spark.
* Experience with distributed machine learning model training using AzureML or databricks platforms.
* Expertise in building and tuning weighted model ensembles in online learning contexts.
* Experience in forking and modifying open-source projects to meet specific needs.
* Proven track record of working on collaborative software projects using GitHub.
* Extensive programming experience with Python and PySpark
* Experience with machine learning and deep learning frameworks: Scikit-learn, Pytorch, Tensorflow
* Experimentation skills (MLflow, Optuna, etc.)
* Proven production ML delivery (MLOps, CI/CD)
* Cloud‐native deployment experience (Azure/Databricks preferable)
* Ability to bridge data science and engineering teams