Marathon TS ยท 1 week ago
Machine Learning Engineer
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Responsibilities
Utilize Databricks for large-scale data processing and model training, ensuring efficient data manipulation and transformation.
Develop and deploy web applications and APIs using Streamlit, Flask, and FastAPI to enable interactive data visualization and real-time model interaction.
Collaborate with cross-functional teams to define problem statements, gather requirements, and deliver client-driven solutions that align with business goals.
Implement and maintain machine learning solutions within Azure cloud environments, ensuring scalability, performance, and security.
Optimize machine learning pipelines for performance and scalability using LangChain for natural language processing tasks.
Conduct A/B testing and other experimental designs to validate models against business objectives.
Document all processes and models in detail to ensure reproducibility and compliance with industry standards.
Qualification
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Required
Minimum 5-7 years related experience with a focus on Data Mining and Machine Learning.
Strong programming skills in Python.
Extensive experience with machine learning libraries and frameworks.
Proven experience with Azure and its AI capabilities, including the use of Azure OpenAI and LLMs.
Experience with Databricks for data engineering and exploratory data analysis.
Proficient in building and deploying web applications using Streamlit, Flask, and FastAPI.
Familiarity with the deployment of scalable machine learning models in a production environment.
Strong problem-solving skills and the ability to work collaboratively in a fast-paced, team environment.
Bachelor's degree in Computer Science, Engineering, or related field
Preferred
Experience with other cloud platforms such as Azure or AWS.
Familiarity with additional programming languages such as .Net, C#, Java.
Knowledge of containerization and orchestration technologies such as Docker, Kubernetes.
Experience applying machine learning techniques to real-world business problems.
Industry-recognized certification a plus