Senior Data Scientist
Valtech · Remote
📍 Ukraine - Remotevia greenhousePosted 2026-06-09
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Why Valtech? We’re the experience innovation company - a trusted partner to the world’s most recognized brands. To our people we offer growth opportunities, a values -driven culture, international careers and the chance to shape the future of experience.
The opportunity
At Valtech, you’ll find an environment designed for continuous learning, meaningful impact, and professional growth. Whether you're pioneering new digital solutions, challenging conventional thinking or building the next generation of customer experiences, your work will help transform industries.
We are proud of:
The work we do and the innovation we drive
Our values of share, care a nd dare
A workplace culture that fosters creativity, diversity and autonomy
Our borderless, global framework, which enables seamless collaboration
The role
We are looking for an experienced Senior Data Scientist to drive advanced analytics, causal reasoning, and AI-powered decision intelligence across multiple use cases within our AI portfolio. This role goes beyond traditional modeling and focuses on building production-grade systems that combine predictive, causal, and generative AI capabilities to directly influence business outcomes.
You will work at the intersection of data science, machine learning, and GenAI, turning complex data into actionable insights, automated decisions, and intelligent workflows across domains such as marketing, operations, forecasting, and optimization.
This is not a purely retrospective analytics role. You will design and deploy systems that integrate experimentation, observational data, machine learning, and generative AI into real-time or near-real-time decision-making pipelines.
You will collaborate closely with data engineers, ML engineers, analysts, and platform teams, contributing to shared modeling standards and cross-functional AI architecture.
Role responsibilities
Advanced Analytics & Machine Learning
Develop and deploy machine learning models across use cases (forecasting, optimization, recommendation systems)
Apply statistical, predictive, and prescriptive modeling techniques to solve business problems
Build reusable modeling frameworks that can scale across multiple domains
Causal Inference & Decision Intelligence
Design and implement causal inference methods (e.g., uplift modeling, experiments, quasi-experimental methods)
Translate observational and experimental data into actionable business insights
Embed causal reasoning into decision systems that guide actions (e.g., optimization, prioritization, trade-offs)
Generative AI & Intelligent Systems
Integrate GenAI capabilities (e.g., LLMs, RAG pipelines, agent-based systems) into data science workflows
Contribute to the development of intelligent agents and AI-assisted decision-making systems
Combine structured data models with unstructured data and GenAI outputs
Forecasting & Optimization
Build forecasting models (time-series, probabilistic, causal) to support planning and operations
Develop optimization approaches for resource allocation, scheduling, or campaign performance
Ensure models are explainable and actionable in business contexts
Production & Platform Integration
Build and maintain production-grade data science solutions
Collaborate with engineering teams to integrate models into scalable APIs and platforms
Ensure robustness, monitoring, and lifecycle management of deployed models
Cross-Functional Collaboration
Partner with data engineering, analytics, and product teams to ensure data readiness and solution adoption
Review and validate modeling approaches across teams (forecasting, experimentation, ML)
Contribute to best practices in AI, ML, and data science within the organization
Must have qualifications
Data Science & Statistical Expertise
Strong experience in machine learning, statistics, and applied data science
Experience with causal inference, experimentation, or decision science methodologies
Solid understanding of forecasting, optimization, or analytical modeling techniques
Technical Skills
Strong programming skills in Python and SQL
Experience building and deploying production-ready data science or ML systems
Familiarity with model lifecycle management (training, deployment, monitoring)
Cloud & Platform Experience (Key Requirement)
Hands-on experience with at least one major cloud platform:
Azure (preferred), AWS, or GCP
Experience working with modern data and AI platforms (e.g., Azure ML / Azure AI, Databricks, or similar ecosystems)
Domain & Data Experience
Experience working with complex, multi-source datasets (e.g., transactional, behavioral, operational data)
Ability to translate business problems into analytical frameworks
Mindset
Strong problem-solving skills with focus on business impact
Ability to translate complex models into actionable decisions
Strong collaboration and communication skills across technical and business teams
Nice to have qualifications
Deep experience in marketing analytics, attribution, or campaign measurement
Hands-on experience with:
- Uplift modeling, geo experiments, synthetic control
- Marketing Mix Modeling (MMM)
Experience with GenAI frameworks (e.g., LangChain, LangGraph, RAG architectures, agent frameworks)
Familiarity with data engineering tools (e.g., Spark, Airflow, dbt)
Experience with platforms such as Snowflake, Fabric, or BigQuery
Exposure to advanced time-series methods and probabilistic forecasting
Experience working in Agile, product-led, or consulting environments
Commitment to reaching all kinds of people
We design experiences that work for all kinds of people - and that starts with our own teams. At Valtech, we’re intentional about building an inclusive culture where everyone feels supported to grow,
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