2 Adidas Operations Jobs
Manager- ML Ops
Adidas
posted 2mon ago
Flexible timing
Key skills for the job
As a Manager Reporting & Automation in our recently set up team within the adidas Gurgaon Tech hub you will collaborate closely with the EU ecom Analytics team based in Amsterdam (the Netherlands) and other stakeholders located in other parts of the world (such as Herzogenaurach, Germany). You will be responsible for fully automating ML workflows and models and maintaining their stability. You will play a key role in enabling fact-based decisions through robust and trustworthy ML models. At the same time and on occasion, you will not shy away from performing basic data engineering tasks or mentoring data scientists into relevant ML Ops concepts.
Key Responsibilities
Partner with the data scientists and data engineers in our team to ensure the stability and trustworthiness of ML models, across the entire ML Ops cycle.
Apply your expertise to drive the ML Ops discipline of the team to the next level.
Empower the business to use data science models with confidence through relevant upskilling, documentation, and self-service capabilities.
Optimize data science models with engineering techniques such as data storage and OOP improvements.
Determine how often data science models would need to be trained, tested, and deployed.
Work on versioning (like Bitbucket/Git/GitHub) and monitoring of training/predictions.
Produce data visualization such as charts and dashboards to communicate model findings, accuracy, and error rates to internal stakeholders clearly and effectively.
Work as part of Agile product teams (e.g. Scrum / Kanban) to deliver business value through data science models.
If required Responsibilities
Perform data cleaning and transformation through repeatable workflows as needed for data science modelling.
Build data pipelines to be ingested into machine learning models pipelines, in collaboration with the data engineering & governance functions.
EU ecom Analytics
Global Digital Analytics
EU eCom business teams
Global Data & Analytics
Global Digital Tech
Knowledge, Skills, and Abilities
Soft-Skills
Experience communicating & collaborating with cross-functional business stakeholders and cross-functional data colleagues (data scientists, analysts, data engineers, data quality experts, data governance, etc)
Able to explain ML Ops principles in simplistic words to less knowledgeable stakeholders
Hard-Skills
Experience in deploying & maintaining ML models in production reliably and efficiently
Proficiency in Python (preferred) or R. Extensive knowledge of packages such as NumPy, Pandas, scikit-learn, etc. Knowledge of (py)Spark would be an added advantage.
Good data visualization skills and tool knowledge (i.e. Power BI, Tableau, MicroStrategy, matplotlib, plotly)
Familiarity with code version control & repository tools such as Git or Bitbucket
Comfortable working with enterprise-level platforms and technologies such as Databricks ML Flow (preferred) or AWS Sagemaker
Education & Professional Experience
A degree in software engineering, computer science, data science, mathematics, or a similar quantitative field
4+ years of experience in software engineering, ML Ops, data science, data engineering, or a similar function
Employment Type: Full Time, Permanent
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