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5.0 - 9.0 years

0 Lacs

pune, maharashtra

On-site

As a QA Automation Architect at Nitor Infotech, an Ascendion company, you will be responsible for designing and implementing comprehensive test automation frameworks using tools such as Playwright, pytest, and Cucumber. Your role will involve developing and executing performance tests utilizing Apache JMeter, as well as integrating automated tests with CI/CD pipelines through GitHub Actions. Utilizing Azure monitoring and services will be crucial to ensure the reliability and performance of applications. In addition to test automation, you will implement and manage Infrastructure as Code (IaC) testing using Terraform. Setting up and maintaining logging and monitoring systems using ELK, Prometheus, and Grafana will be part of your responsibilities. Collaboration with development, DevOps, and product teams is essential to guarantee high-quality releases. Regular code reviews and mentorship to QA engineers will also be expected from you. Ensuring comprehensive test coverage for various Azure services such as Azure Cloud CDN, Azure Service Bus, Azure Postgres, Cosmos DB, Blob Storage, and Azure Vnet will be a key aspect of your role. Identifying and addressing gaps in test coverage and testing processes, as well as developing and maintaining documentation for test plans, test cases, and test scripts, are critical tasks. Participation in Agile/Scrum processes, including sprint planning, daily stand-ups, and retrospectives, is part of the collaborative environment at Nitor Infotech. To be successful in this role, you should possess a Bachelor's degree in Computer Science, Engineering, or a related field, or equivalent work experience. Proven experience as a QA Automation Architect or in a similar role is required. Strong proficiency in Playwright, pytest, and Cucumber, as well as experience with Apache JMeter for performance testing, are essential skills. Proficiency in integrating automated tests with GitHub Actions, in-depth knowledge of Azure monitoring and services, experience with Infrastructure as Code (IaC) testing using Terraform, and familiarity with logging and monitoring tools like ELK, Prometheus, and Grafana are also necessary. Strong problem-solving skills, attention to detail, excellent communication, and leadership skills are attributes that will contribute to your success in this role.,

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10 - 20 years

30 - 40 Lacs

Chennai, Bengaluru

Hybrid

Title: Sr Data and MLOps Engineer Location: Hybrid (Bangalore/Chennai/Trichy) Description: • Experience within the Azure ecosystem, including Azure AI Search, Azure Storage Blob, Azure Postgres, with expertise in leveraging these tools for data processing, storage, and analytics tasks. • Proficiency in data preprocessing and cleaning large datasets efficiently using Azure Tools, Python, and other data manipulation tools. • Strong background in Data Science/MLOps, with hands-on experience in DevOps, CI/CD, Azure Cloud computing, and model monitoring. • Expertise in healthcare data standards, such as HIPAA and FHIR, with a deep understanding of sensitive data handling and data masking techniques to protect PII and PHI. • In-depth knowledge of search algorithms, indexing techniques, and retrieval models for effective information retrieval tasks. Experience with chunking techniques and working with vectors and vector databases like Pinecone. • Ability to design, develop, and maintain scalable data pipelines for processing and transforming large volumes of structured and unstructured data, ensuring performance and scalability. • Implement best practices for data storage, retrieval, and access control to maintain data integrity, security, and compliance with regulatory requirements. • Implement efficient data processing workflows to support the training and evaluation of solutions using large language models (LLMs), ensuring that models are reliable, scalable, and performant. • Proactively identify and resolve data quality issues, pipeline failures, or resource contention to minimize disruption to systems. • Experience with large language model frameworks, such as Langchain, and the ability to integrate them into data pipelines for natural language processing tasks. • Familiarity with Snowflake for data management and analytics, with the ability to work within the Snowflake ecosystem to support data processes. • Knowledge of cloud computing principles and hands-on experience with deploying, scaling, and monitoring AI solutions on platforms like Azure, AWS, and Snowflake. • Ability to communicate complex technical concepts effectively to both technical and non-technical stakeholders, and collaborate with cross-functional teams. • Analytical mindset with attention to detail, coupled with the ability to solve complex problems efficiently and effectively. • Knowledge of cloud cost management principles and best practices to optimize cloud resource usage and minimize costs. • Experience with ML model deployment, including testing, validation, and integration of machine learning models into production systems. • Knowledge of model versioning and management tools, such as MLflow, DVC, or Azure Machine Learning, for tracking experiments, versions, and deployments. • Model monitoring and performance optimization, including tracking model drift and addressing performance issues to ensure models remain accurate and reliable. • Automation of ML workflows through CI/CD pipelines, enabling smooth model training, testing, validation, and deployment. • Monitoring and logging of AI/ML systems post-deployment to ensure consistent reliability, scalability, and performance. • Collaboration with data scientists and engineering teams to facilitate model retraining, fine-tuning, and updating. • Familiarity with containerization technologies, like Docker and Kubernetes, for deploying and scaling machine learning models in production environments. • Ability to implement model governance practices to ensure compliance and auditability of AI/ML systems. • Understanding of model explainability and the use of tools and techniques to provide transparent insights into model behavior. Must Have: • Minimum of 10 years experience as a data engineer • Hands-on experience with Azure Cloud eco-system. • Hands-on experience using Python for data manipulation. • Deep understanding of vectors and vector databases. • Hands-on experience scaling POC to production. • Hands-on experience using tools such as Document Intelligence, Snowflake, function app. Azure AI Search • Experience working with PII/PHI • Hands-on experience working with unstructured data. Role & responsibilities

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