Condé Nast is a global media company producing the highest quality content with a footprint of more than 1 billion consumers in 32 territories through print digital video and social platforms. The companys portfolio includes many of the worlds most respected and influential media properties including Vogue Vanity Fair Glamour Self GQ The New Yorker Condé Nast Traveler/Traveller Allure AD Bon Appétit and Wired among others.
Job Description
Location:
Bengaluru KA
About The Role:
Condé Nast is seeking a motivated and skilled Machine Learning Engineer I to support the productionization of machine learning projects in Databricks or AWS environments for the Data Science team.
This role is ideal for an engineer with a strong foundation in software development data engineering and machine learning who enjoys transforming data science prototypes into scalable reliable production pipelines.
Note: This role focuses on deploying optimizing and operating ML models rather than building or researching new machine learning models.
Primary Responsibilities
Build optimize and maintain data and ML pipelines to deploy machine learning models into production environments.
Assist in transforming data science prototypes into reusable production-ready engineering frameworks.
Contribute to the design and implementation of scalable ML workflows processing large volumes of data.
Support near-real-time and batch processing systems for ML use cases.
Collaborate closely with Machine Learning Engineers and Data Scientists in designing and engineering ML solutions.
Participate in the full development lifecycle from design and implementation to testing and release.
Implement and maintain CI/CD pipelines for ML models and data workflows.
Proactively identify debug and resolve issues in ML pipelines and production jobs.
Follow agile development practices with a focus on code quality testing and incremental delivery.
Participate in quality assurance testing and defect resolution.
Desired Skills & Qualifications
2-4 years of software development experience involving machine learning or data-intensive systems.
Strong proficiency in Python with experience using libraries such as TensorFlow PyTorch scikit-learn Pandas NumPy and PySpark.
Good understanding of data structures data modeling and software engineering principles.
Experience working with big data technologies such as Spark Hadoop Kafka Hive or AWS EMR.
Exposure to Databricks or Amazon SageMaker for ML development or deployment.
Experience building data pipelines and ML workflows in production or pre-production environments.
Familiarity with API development and serving ML models as RESTful services.
Experience working with Docker and basic exposure to Kubernetes is a plus.
Experience with CI/CD pipelines for ML or data workflows.
Good communication skills and ability to work effectively within a team.
Strong analytical and problem-solving skills.
Undergraduate or Postgraduate degree in Computer Science or a related discipline.
Preferred Qualifications
Experience using Airflow Astronomer MLflow or Kubeflow.
Exposure to Spark or PySpark in data processing systems.
Familiarity with AWS services commonly used in ML pipelines (S3 EC2 IAM etc.).
Experience with near-real-time data processing use cases.
What happens next
If you are interested in this opportunity please apply below and we will review your application as soon as possible. You can update your resume or upload a cover letter at any time by accessing your candidate profile.
Condé Nast is an equal opportunity employer. We evaluate qualified applicants without regard to race color religion sex sexual orientation gender identity national origin disability veteran status age familial status and other legally protected characteristics.
Required Experience:
IC
Condé Nast is a global media company producing the highest quality content with a footprint of more than 1 billion consumers in 32 territories through print digital video and social platforms. The companys portfolio includes many of the worlds most respected and influential media properties includin...
Condé Nast is a global media company producing the highest quality content with a footprint of more than 1 billion consumers in 32 territories through print digital video and social platforms. The companys portfolio includes many of the worlds most respected and influential media properties including Vogue Vanity Fair Glamour Self GQ The New Yorker Condé Nast Traveler/Traveller Allure AD Bon Appétit and Wired among others.
Job Description
Location:
Bengaluru KA
About The Role:
Condé Nast is seeking a motivated and skilled Machine Learning Engineer I to support the productionization of machine learning projects in Databricks or AWS environments for the Data Science team.
This role is ideal for an engineer with a strong foundation in software development data engineering and machine learning who enjoys transforming data science prototypes into scalable reliable production pipelines.
Note: This role focuses on deploying optimizing and operating ML models rather than building or researching new machine learning models.
Primary Responsibilities
Build optimize and maintain data and ML pipelines to deploy machine learning models into production environments.
Assist in transforming data science prototypes into reusable production-ready engineering frameworks.
Contribute to the design and implementation of scalable ML workflows processing large volumes of data.
Support near-real-time and batch processing systems for ML use cases.
Collaborate closely with Machine Learning Engineers and Data Scientists in designing and engineering ML solutions.
Participate in the full development lifecycle from design and implementation to testing and release.
Implement and maintain CI/CD pipelines for ML models and data workflows.
Proactively identify debug and resolve issues in ML pipelines and production jobs.
Follow agile development practices with a focus on code quality testing and incremental delivery.
Participate in quality assurance testing and defect resolution.
Desired Skills & Qualifications
2-4 years of software development experience involving machine learning or data-intensive systems.
Strong proficiency in Python with experience using libraries such as TensorFlow PyTorch scikit-learn Pandas NumPy and PySpark.
Good understanding of data structures data modeling and software engineering principles.
Experience working with big data technologies such as Spark Hadoop Kafka Hive or AWS EMR.
Exposure to Databricks or Amazon SageMaker for ML development or deployment.
Experience building data pipelines and ML workflows in production or pre-production environments.
Familiarity with API development and serving ML models as RESTful services.
Experience working with Docker and basic exposure to Kubernetes is a plus.
Experience with CI/CD pipelines for ML or data workflows.
Good communication skills and ability to work effectively within a team.
Strong analytical and problem-solving skills.
Undergraduate or Postgraduate degree in Computer Science or a related discipline.
Preferred Qualifications
Experience using Airflow Astronomer MLflow or Kubeflow.
Exposure to Spark or PySpark in data processing systems.
Familiarity with AWS services commonly used in ML pipelines (S3 EC2 IAM etc.).
Experience with near-real-time data processing use cases.
What happens next
If you are interested in this opportunity please apply below and we will review your application as soon as possible. You can update your resume or upload a cover letter at any time by accessing your candidate profile.
Condé Nast is an equal opportunity employer. We evaluate qualified applicants without regard to race color religion sex sexual orientation gender identity national origin disability veteran status age familial status and other legally protected characteristics.
Required Experience:
IC
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