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  3. Machine Learning Engineer

Machine Learning Engineer

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Ipsos North America logo

Machine Learning Engineer

Ipsos North America

Location

Romania

Experience

Mid

Posted

Jul 7, 2026

Apply by

July 31, 2026

Applicants

0

Early applicantFull-timeHybrid

Sign in to apply on web or download the app for more options.

Job Description

Ipsos is a global market research and insights company that helps clients make confident decisions in a rapidly changing world. More than a data provider, Ipsos acts as a strategic partner, delivering accurate and relevant insights that create a true understanding of society, markets, and people. By combining science, technology, and expertise, Ipsos enables clients to act faster, smarter, and with greater confidence. With a presence in 90 markets and over 20,000 employees worldwide, Ipsos serves more than 5,000 clients globally. The Synthetic Data Research team is building Ipsos’ next-generation platform for synthetic data and generative AI, turning cutting-edge methods into practical tools that can be used safely and confidently across the business. We focus on two core products: - **Data Augmentation Workbench:** a self-serve internal platform that enables teams to train models and generate synthetic data through secure APIs and streamlined workflows, with evaluation and governance built in from day one. - **Digital Twins:** agentic, respondent-grounded LLM “synthetic panellists” designed to simulate behaviours and survey responses, supported by rigorous validation, privacy safeguards, and strong auditability. Our work sits at the intersection of **software engineering, machine learning, privacy, and market research methodology**. We collaborate with leading academic institutions (including **Stanford University**) to ensure our approach is scientifically robust while remaining focused on real-world impact. Ultimately, our goal is to deliver **data collection efficiencies, new product innovation, and defensible scientific frameworks** that can scale to thousands of colleagues and clients. We’re a cross-disciplinary group, bringing together market researchers, mathematicians, computer scientists, data scientists, and data engineers, to build capabilities that shape how insights are created in the future. **How you’ll make an impact:** You’ll turn research-grade prototypes into a dependable, governed ML service on **GCP**. Your work will define how quickly we can iterate on synthetic generation approaches *without* sacrificing reproducibility, security, or methodological rigor. In practice, you will: - **Enable Reliable AI:** Your pipelines will provide the clean, structured data required to train our core generative models. By ensuring data availability and reliability, you directly support the accuracy and fairness of our machine learning outputs. - **Power LLM Applications:** By building robust vector indexing and retrieval (RAG) infrastructure, you will provide our LLM-based synthetic personas with the context and grounding they need to operate effectively and hallucinate less. - **Improve ML Iteration Speed:** By optimizing data I/O and standardizing how our models consume datasets, you will eliminate training bottlenecks. This allows our Applied Scientists to run experiments more efficiently and deploy models faster. - **Ensure Data Integrity:** In systems relying on statistical weighting and synthetic generation, data quality is critical. Your work implementing strict data contracts and automated validation will prevent bad data from silently corrupting downstream models and evaluation metrics. - **Connect Engineering and Research:** You will serve as a key link between traditional data engineering and applied machine learning, translating the complex data requirements of ML research into scalable, maintainable infrastructure. **Tech stack & ecosystem: (if applicable)** You will be the backbone of our ML platform, building everything from user-facing interfaces down to the data layers that feed our models: - **Platform & API:** Python, FastAPI, React, TypeScript. - **Data Warehousing & Storage:** Google Cloud Platform (GCP), BigQuery, Cloud Storage, Apache Parquet / Arrow. - **Data & ML Orchestration:** dbt, Apache Airflow, Kubeflow Pipelines (KFP), Asynchronous Job Queues (Celery/RabbitMQ). - **Unstructured Data & GenAI:** Vector Databases (e.g., Pinecone, Weaviate), modern RAG tooling (LangChain, LlamaIndex). - **Data Quality & Contracts:** Pydantic, Great Expectations, strict JSON Schema validation. **What You’ll Do** - **Own the API & Platform Layer:** Design, build, and maintain the robust backend APIs (FastAPI) that serve as the bridge between our React frontend and our asynchronous, heavy-compute machine learning pipelines. - **Build the User Interface:** Develop and maintain features in our React frontend, creating intuitive platform dashboards that allow users to design ML experiments, trigger data augmentation jobs, and visualize synthetic data metrics. - **Architect ML Data Pipelines:** Build and maintain high-throughput ETL/ELT pipelines capable of ingesting massive tabular datasets directly into our Kubeflow training and inference workflows. - **Build the RAG Foundation:** Develop the data pipelines that power our LLM digital twins. You will handle chunking, embedding generation, and vector indexing of unstructured text to enable highly accurate Retrieval-Augmented Generation (RAG). - **Optimize ML Data I/O:** Optimize how our PyTorch models read and write data, leveraging columnar formats (Parquet) and distributed processing to eliminate I/O bottlenecks during training and generation. - **Enforce Strict Data Contracts:** Ensure seamless communication between the frontend, backend, and ML workers by implementing strict data contracts (using Pydantic) and automated schema validation. **What you’ll need [role requirements]:** **Platform & Full-Stack Engineering** - **API Design & Backend:** Proven experience building robust, highly available RESTful APIs in Python (FastAPI preferred). Experience managing asynchronous workloads and task queues. - **Frontend Development:** Solid experience building and maintaining modern, responsive web applications using React and TypeScript. - **Infrastructure & CI/CD:** Comfortable working with Git, CI/CD pipelines, Docker, and Infrastructure as Code to deploy platform services reliably. **Data Engineering & MLOps** - **Cloud Data Warehouses:** Deep expertise in modern cloud data architectures, specifically Google Cloud Platform (BigQuery, GCS). - **Pipeline Orchestration:** Hands-on experience with modern data orchestration and transformation tools (e.g., Apache Airflow, dbt) and familiarity with ML orchestrators (Kubeflow, Vertex AI). - **Familiarity with ML Workflows:** You understand the data lifecycle of machine learning and know how to prepare data for training, inference, and evaluation. - **Vector Data:** Experience or strong familiarity with processing unstructured data and interacting with Vector Databases for semantic search/RAG architectures. **Benefits:** We offer a comprehensive benefits package designed to support you as an individual. Our standard benefits include 25 days annual leave, pension contribution, income protection and life assurance. In addition, there are a range health & wellbeing, financial benefits and professional development opportunities. We have a hybrid approach to work and ask people to be in the office or with clients for 3 days per week. We appreciate you may have commitments outside of work and will consider flexible working applications - please highlight what you are looking for when you make your application. We are committed to equality, treating people fairly, promoting a positive and inclusive working environment and ensuring we have diversity of people and views. We recognise that this is important for our business success - a more diverse workforce will enable us to better reflect and understand the world we research and ultimately deliver better research and insight to our clients. We are proud to be a member of the Disability Confident scheme, certified as a Level 2 Disability Confident Employer. We provide an inclusive and accessible recruitment process. Your application will be reviewed by someone from our Talent Team who will be in touch either way to let you know the outcome. **Ready to have an impact? Apply now!** ### About the Company Ipsos is one of the world’s largest research companies and currently the only one primarily managed by researchers, ranking as a #1 full-service research organization for four consecutive years. With over 75 different data-driven solutions, and presence in 90 markets, Ipsos brings together research, implementation, methodological, and subject-matter experts from around the world, combining thematic and technical experts to deliver top-quality research and insights. Simply speaking, we help the biggest companies solve some of their biggest problems, serving more than 5000 clients across the globe by providing research, data, and insights on their target markets. And we are proud of our continuous efforts in making Ipsos the best place to work!

Key Responsibilities

  • Design, build, and maintain robust backend APIs using FastAPI to serve ML pipelines.
  • Develop and maintain React frontend features for platform dashboards and experiment design.
  • Build high-throughput ETL/ELT pipelines for ingesting tabular datasets into Kubeflow workflows.
  • Develop RAG infrastructure including chunking, embedding generation, and vector indexing.
  • Optimize ML data I/O using columnar formats and distributed processing.
  • Implement strict data contracts and automated schema validation using Pydantic.

Skills Required

PythonFastAPIReactTypeScriptGoogle Cloud PlatformBigQueryCloud StorageApache ParquetApache AirflowdbtKubeflow PipelinesPyTorchGitDockerInfrastructure as CodeRESTful APIsVector DatabasesRAGPydanticProblem solvingAttention to detailCollaborationVertex AICeleryRabbitMQPineconeWeaviateLangChainLlamaIndexGreat ExpectationsJSON Schema validation

Benefits

  • 25 days annual leave
  • Pension contribution
  • Income protection
  • Life assurance
  • Health & wellbeing benefits
  • Financial benefits
  • Professional development opportunities
  • Flexible working applications considered

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Job Overview

Salary

—

Job Type

Full-time

Experience

Mid

Location

Romania

Application Deadline

July 31, 2026

Total Applicants

0

About Ipsos North America

Ipsos North America logo

Ipsos North America is a leading company in the Technology sector, known for innovation and employee-centric culture.

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