Sr. AI/ML Ops Engineer
Listed on 2026-07-07
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IT/Tech
Machine Learning/ ML Engineer, AI Engineer (Applied/Software), Cloud Computing: Infrastructure & Operations
We are actively seeking a highly skilled and experienced Senior AI/ML Engineer with a focus on MLOps to join our innovative team. If you have 6 to 10 years of hands-on experience in the AI/ML space and a passion for driving technological advancements, this role is for you.
Specific Skills- Python Expertise:
Proficiency in Object-Oriented Python - Data Science (Jupyter Notebooks):
Demonstrated expertise in data science, including analysis and modeling using Jupyter Notebooks. - Deep Learning (PyTorch):
Proven experience in deep learning, particularly with PyTorch, and familiarity with other frameworks. - Good LLM Knowledge:
Good understanding of Natural Language Processing (NLP) and Language Models (LLM). - Any successful Implementation of GenAI (LLMs) on custom-data is preferred.
- Bachelors/Masters in Data Science is preferred.
- MLOps Implementation (Docker, Kubernetes, Azure Dev Ops, AWS Sage Maker):
Lead the implementation of MLOps practices, ensuring seamless integration of machine learning models into production systems. Leverage containerization with Docker and orchestration with Kubernetes. Implement MLOps technologies from both Azure and AWS, such as Azure Dev Ops and AWS Sage Maker. - Code Development (Python, Num Py, Pandas):
Develop and maintain scalable and efficient Python code for machine learning applications. Utilize Num Py and Pandas for effective data manipulation and analysis. - Collaboration (Git):
Collaborate with cross-functional teams to understand business requirements and seamlessly integrate machine learning solutions into software applications. Utilize Git for version control and collaborative coding. - Dev Ops Integration (Jenkins, Git Lab):
Work closely with Dev Ops teams to streamline deployment processes, ensuring reliability and scalability. Implement continuous integration and deployment (CI/CD) practices with tools like Jenkins or Git Lab. - Observability (Prometheus, Grafana, Azure Monitor, AWS Cloud Watch):
Focus on fine-tuning models and identifying data anomalies. Implement observability tools like Prometheus and Grafana for monitoring and troubleshooting. Leverage Azure Monitor and AWS Cloud Watch for cloud-specific observability. - Model Evaluation (Tensor Board):
Implement model evaluation tools such as Tensor Board to ensure models are working as expected and meet performance criteria. - Documentation (Confluence, Markdown):
Create comprehensive documentation for code, models, and deployment processes using tools like Confluence and Markdown. - Training and Knowledge Sharing:
Provide training and knowledge-sharing sessions to team members on best practices in MLOps and Python coding.
Full Time
Job LocationRemote, USA
Job LevelSr. Position
How to ApplyInterested candidates can send their resumes to mentioning "Job Title" in the subject line.
blaZop is an AI-powered hyper-automation & observability platform that enables autonomous IT and cloud operations. It empowers teams to achieve more with less effort, consolidate tools, reduce operational costs, establish and maintain more secure and standardized environments, minimize outages, and gain an insightful view of all IT and cloud services from a single interface. The unified platform includes a range of integrated products for managing the entire lifecycle (design, build, operate, and optimize) of multi-vendor & complex IT and cloud environments.
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