

The person we are looking for will become part of Data Science and AI Competency Center working in AI Engineering team.
Tasks:
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Working with Data Science teams to implement Machine Learning models into production
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Design, delivery GenAI solutions
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Practical and innovative implementations of LLM/ML/AI automation, for scale and efficiency
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Design, delivery and management of industrialized processing pipelines
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Defining and implementing best practices in ML models life cycle and ML operations/LLM operations
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Implementing AI /MLOps/LLMOps frameworks and supporting Data Science teams in best practices
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Gathering and applying knowledge on modern techniques, tools and frameworks in the area of ML Architecture and Operations
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Gathering technical requirements & estimating planned work
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Presenting solutions, concepts and results to internal and external clients
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Creating technical documentation
Requirements:
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At least 2+ years of Data engineering experience with last 1 years experience in building Data processing
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At least 2+ years of experience in production-ready Python code development (e.g., microservices, APIs, etc.)
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At least 1+ years of experience with GenAI (ChatGPT, Gemini, RAGs, prompt engineering)
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Practical experience in MLOps/LLMOps tools like AzureML/AzureAI
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Practical experience with Databricks
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Good understanding of ML/AI concepts: types of algorithms, machine learning frameworks, model efficiency metrics, model life-cycle, AI architectures
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Good understanding of Cloud concepts and architectures, as well as working knowledge with selected cloud services, preferably Azure or GCP
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Experience in at least one of following domains: Data Warehouse, Data Lake, Data Integration, Data Governance, Machine Learning, Deep Learning, MLOps
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Practical experience in Spark/PySpark and Hive within Big Data Platforms like Databricks, EMR or similar
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Experience in designing and implementing data pipelines
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Good communication skills
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Ability to work in a team and support others
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Taking responsibility for tasks and deliverables
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Great problem-solving skills and critical thinking
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Fluency in written and spoken English.
Nice to have:
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Experience in designing, programming ML algorithms, and data processing pipelines using Python
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Good understanding of CI/CD and DevOps concepts, and experience in working with selected tools (preferably GitHub Actions, GitLab, or Azure DevOps)
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Experience in productizing ML solutions using technologies like Spark/Databricks or Docker/Kubernetes.
We offer:
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Stable employment. On the market since 2008, 1500+ talents currently on board in 7 global sites.
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“Office as an option” model. You can choose to work remotely or in the office, depending on your location.
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Flexibility regarding working hours and your preferred form of contract.
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Comprehensive online onboarding program with a “Buddy” from day 1.
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Cooperation with top-tier engineers and experts.
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Unlimited access to the Udemy learning platform from day 1.
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Certificate training programs. Lingarians earn 500+ technology certificates yearly.
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Upskilling support. Capability development programs, Competency Centers, knowledge sharing sessions, community webinars, 110+ training opportunities yearly.
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Internal Gallup Certified Strengths Coach to support your growth.
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Grow as we grow as a company. 76% of our managers are internal promotions.
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A diverse, inclusive, and values-driven community.
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Autonomy to choose the way you work. We trust your ideas.
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Create our community together. Refer your friends to receive bonuses.
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Activities to support your well-being and health.
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Plenty of opportunities to donate to charities and support the environment.
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Modern office equipment. Purchased for you or available to borrow, depending on your location.