Encora Logo

Encora

MLOps Engineer

Posted 6 Days Ago
Be an Early Applicant
India
Senior level
India
Senior level
The MLOps Engineer will manage the deployment and maintenance of machine learning models in production. Responsibilities include streamlining deployment processes, constructing data pipelines, ensuring compliance with data regulations, monitoring model performance, and promoting MLOps best practices. The role requires effective collaboration with data scientists and engineers to integrate ML systems with existing software infrastructure.
The summary above was generated by AI

Important Information
 
Location: PAN India
Experience: 5+ Years
Job Mode: Full-time 
Work Mode: Work from home
 
 
Job Summary
 

Facilitate the seamless transition of machine learning models from development to production, ensuring that these models are scalable, maintainable, and integrated efficiently within business applications.

 
Responsibilities and Duties
 

  • Model Deployment: Automate and streamline the process of deploying machine learning models into production environments, ensuring they run reliably at scale.
  • Pipeline Construction: Build and maintain robust data pipelines for continuous training and deployment of machine learning models, including Generative AI models such as LLMs (Large Language Models).
  • Monitoring and Maintenance: Implement monitoring solutions to track the performance and health of models in production, quickly identifying and addressing degradation or failures.
  • Versioning and Experiment Tracking: Manage version control of both data and models. Use tools like MLflow or DVC to track experiments, manage the lifecycle of machine learning models, and ensure reproducibility.
  • Collaboration: Work closely with data scientists, AI researchers, and software engineers to ensure that ML systems are well-integrated with the company’s software infrastructure.
  • Performance Optimization: Optimize machine learning infrastructure for performance and cost, utilizing cloud technologies and services efficiently.
  • Regulatory Compliance: Ensure that the machine learning deployments comply with relevant data privacy and protection regulations, particularly when handling sensitive or personal data.
  • Best Practices and Standards: Establish and promote MLOps best practices within the team, including guidelines for code quality, deployment procedures, and security measures

 
Qualifications and Skills
 

  • Bachelor’s Degree:
    • Primary Fields: Computer Science, Data Science, Engineering, or a related field. These disciplines provide foundational skills in software development, algorithms, and systems engineering.
    • Coursework: Should include advanced mathematics, statistics, computer programming, machine learning, and possibly courses specifically on MLOps or data engineering.
  • Advanced Degree (Optional but advantageous):
    • Master’s Degree: Fields like Machine Learning, Data Science, or Artificial Intelligence provide deeper expertise in advanced ML techniques and their applications.
    • PhD: A doctorate in a relevant field can be beneficial for roles focusing on cutting-edge research and complex Generative AI deployments.
  • Certifications:
    • Cloud Certifications: AWS Certified Machine Learning - Specialty, Google Professional Machine Learning Engineer, or Azure AI Engineer Associate reflect expertise in cloud platforms' ML services.
    • MLOps Certifications: Certifications focusing on specific tools and platforms like TensorFlow Developer Certificate, Kubeflow, or certifications on specific aspects of data engineering and machine learning operations.
  • Technical Skills:
    • Programming Skills: Proficiency in Python is typically essential, with knowledge of libraries and frameworks such as TensorFlow, PyTorch, Scikit-learn.
    • DevOps Tools: Experience with Docker, Kubernetes, and CI/CD tools (e.g., Jenkins, GitLab CI) for automation and orchestration.
    • Data Management: Knowledge of handling big data technologies and databases (e.g., Hadoop, Spark, MySQL, MongoDB).
    • Monitoring Tools: Familiarity with monitoring tools like Prometheus, Grafana, or ELK stack to track system performance and health. 

 
About Encora
 
Encora is the preferred digital engineering and modernization partner of some of the world’s leading enterprises and digital native companies. With over 9,000 experts in 47+ offices and innovation labs worldwide, Encora’s technology practices include Product Engineering & Development, Cloud Services, Quality Engineering, DevSecOps, Data & Analytics, Digital Experience, Cybersecurity, and AI & LLM Engineering.
 
At Encora, we hire professionals based solely on their skills and qualifications, and do not discriminate based on age, disability, religion, gender, sexual orientation, socioeconomic status, or nationality.

Top Skills

Python

Similar Jobs

Be an Early Applicant
2 Days Ago
Bangalore, Bengaluru, Karnataka, IND
7,509 Employees
Mid level
7,509 Employees
Mid level
Cloud • Information Technology • Software
The GCP MLOps Engineer will design and implement ML systems at scale using GCP and related tools. Responsibilities include building end-to-end data pipelines, deploying ML models, and applying best practices for CI/CD and IaC. Collaboration with cross-functional teams and monitoring of model performance is also essential.
2 Days Ago
8 Locations
Remote
880 Employees
Entry level
880 Employees
Entry level
Cloud • Software
As an MLOps Field Engineer at Canonical, you will help customers implement AI/ML solutions using open source technologies. This involves designing cloud infrastructure, collecting customer requirements, and delivering presentations on Ubuntu and AI/ML capabilities. You will work closely with sales and engineering teams to solve complex challenges in data architecture and deployment.
Be an Early Applicant
2 Days Ago
Bengaluru, Karnataka, IND
96 Employees
Mid level
96 Employees
Mid level
Security
As a Staff Engineer in MLOps, you will automate AI/ML workflows, tackle massive cybersecurity datasets, and collaborate across teams to implement scalable solutions for model training and performance observability, ensuring effective deployment and quality management of ML models.

What you need to know about the Pune Tech Scene

Once a far-out concept, AI is now a tangible force reshaping industries and economies worldwide. While its adoption will automate some roles, AI has created more jobs than it has displaced, with an expected 97 million new roles to be created in the coming years. This is especially true in cities like Pune, which is emerging as a hub for companies eager to leverage this technology to develop solutions that simplify and improve lives in sectors such as education, healthcare, finance, e-commerce and more.

Sign up now Access later

Create Free Account

Please log in or sign up to report this job.

Create Free Account