Full-Time

Machine Learning Engineer

Confirmed live in the last 24 hours

Clarivate

Clarivate

10,001+ employees

Data and analytics for various sectors

No salary listed

Senior

Company Does Not Provide H1B Sponsorship

Noida, Uttar Pradesh, India

Category
Applied Machine Learning
Deep Learning
AI & Machine Learning
Required Skills
Kubernetes
Microsoft Azure
Python
Airflow
R
Git
Machine Learning
AWS
Development Operations (DevOps)
Google Cloud Platform
Requirements
  • Bachelor’s or master’s degree in computer science, Engineering, or a related field.
  • 5+ years of experience in machine learning, data engineering, or software development.
  • Good experience in building data pipelines, data cleaning, and feature engineering is essential for preparing data for model training.
  • Knowledge of programming languages (Python, R), and version control systems (Git) is necessary for building and maintaining MLOps pipelines.
  • Experience with MLOps-specific tools and platforms (e.g., Kubeflow, MLflow, Airflow) can streamline MLOps workflows.
  • DevOps principles, including CI/CD pipelines, infrastructure as code (IaaC), and monitoring is helpful for automating ML workflows.
  • Experience with at least one of the cloud platforms (AWS, GCP, Azure) and their associated services (e.g., compute, storage, ML platforms) is essential for deploying and scaling ML models.
  • Familiarity with container orchestration tools like Kubernetes can help manage and scale ML workloads efficiently.
Responsibilities
  • Oversee the deployment of machine learning models into production environments.
  • Ensure continuous monitoring and performance tuning of deployed models.
  • Implement robust CI/CD pipelines for model updates and rollbacks.
  • Collaborate with cross-functional teams to understand business requirements and translate them into technical solutions.
  • Communicate project status, risks, and opportunities to stakeholders.
  • Provide technical guidance and support to team members.
  • Design and manage scalable infrastructure for model training and deployment.
  • Automate repetitive tasks to improve efficiency and reduce errors.
  • Ensure the infrastructure meets security and compliance standards.
  • Stay updated with the latest trends and technologies in MLOps.
  • Identify opportunities for process improvements and implement them.
  • Drive innovation within the team to enhance the MLOps capabilities.
Desired Qualifications
  • Experience with big data technologies (Hadoop, Spark).
  • Knowledge of data governance and security practices.
  • Familiarity with DevOps practices and tools.

Clarivate provides data, insights, and analytics to help organizations make informed decisions. Their products include enriched data sets and workflow solutions tailored for sectors like academia, government, intellectual property, and life sciences. Clarivate's offerings help users analyze trends, manage intellectual property, and improve healthcare outcomes. What sets Clarivate apart from competitors is their comprehensive approach, combining data with expert services to support various industries. The company's goal is to empower clients with the intelligence they need to drive innovation and improve outcomes in their respective fields.

Company Size

10,001+

Company Stage

IPO

Headquarters

London, United Kingdom

Founded

2016

Simplify Jobs

Simplify's Take

What believers are saying

  • AI integration in academic platforms enhances user engagement and streamlines research processes.
  • Strategic partnerships leverage AI to enhance innovation, leading to efficient outcomes.
  • Convergent inventions approach fosters groundbreaking solutions across multiple scientific fields.

What critics are saying

  • Competition from AI platforms like Google's Bard and OpenAI's ChatGPT is increasing.
  • Potential backlash from academia over AI use in research workflows may arise.
  • Intellectual property disputes may occur due to AI-driven invention processes.

What makes Clarivate unique

  • Clarivate's AI platform offers no-code tools for academic research, enhancing accessibility.
  • Partnership with Iprova streamlines invention processes using AI, boosting innovation efficiency.
  • Focus on convergent inventions promotes interdisciplinary innovation, leading to integrated solutions.

Help us improve and share your feedback! Did you find this helpful?

Benefits

Hybrid Work Options

Flexible Work Hours

Remote Work Options

Company News

PR Newswire
Apr 25th, 2025
Itri Named A Top 100 Global Innovator For The Ninth Time

HSINCHU, April 25, 2025 /PRNewswire/ -- The Industrial Technology Research Institute (ITRI) was officially honored at the 2025 Top 100 Global Innovators Award Ceremony hosted by Clarivate in Taipei. Among more than 1.1 million global organizations, ITRI is one of only three research institutions worldwide to earn a spot on the list, reaffirming its leadership in Asia-Pacific and its commitment to technology innovation. This year, 13 organizations from Taiwan were named to the Top 100 Global Innovators list, including TSMC, MediaTek, Delta Electronics, and Foxconn—setting a new national record and placing Taiwan third in the number of awardees

Clarivate
Apr 15th, 2025
When weighing post-approval changes, many health authorities go it alone

Clarivate recently partnered with the IFPMA on a study looking at how different countries and regions regulate post approval changes (PACs) and how closely they align with the World Health Organization guidelines.

Aireporter America
Apr 9th, 2025
Clarivate Expands Academic AI Platform With Launch of AI Agents and No-Code Agent Builder

Clarivate expands Academic AI Platform with launch of AI Agents and no-code Agent Builder.

Data Centre Magazine
Apr 9th, 2025
Clarivate Expands its Academic AI Platform, Introducing Agentic AI for Research and Learning

Beginning in April 2025, Clarivate will introduce AI Agents to support key academic workflows.

Research Professional News
Apr 7th, 2025
Threats to research integrity 'a global, systemic problem'

Nandita Quaderi (pictured second from left), a senior vice-president at Clarivate* and editor-in-chief of its Web of Science data platform, said at the RPN Live event on 3 April that these problematic incentives include pressures on researchers to publish and the economic models of some scholarly publishers favouring quantity over quality.