Data Scientist

TechnipFMC
Dunfermline
2 weeks ago
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Data Scientist

Location:

Krakow, PL

Employment type: Employee Place of work: Hybrid Offshore/Onshore: Onshore

TechnipFMC is committed to driving real change in the energy industry. Our ambition is to build a sustainable future through relentless innovation and global collaboration – and we want you to be part of it. You’ll be joining a culture that values curiosity, expertise, and ideas as well as equal opportunities, inclusion, and authenticity. Bring your unique energy to our team of more than 21,000 people worldwide, and discover a rewarding, fulfilling, and varied career that you can take in anywhere you want to go.

Job Purpose


TechnipFMC leads the transformation of the energy industry by transforming our clients’ project economics through fully integrated projects, products, and services. Making robust decisions efficiently and consistently by using data about our products, processes, and operations is a key competency for our business to achieve our true north.


In this context, the business is developing its Advanced Analytics capability with the aim of better leveraging our data to deliver new insights, value and smarter ways of working across our value stream. Data Science is a key discipline in this context that uses statistical analysis, machine learning, and predictive modeling techniques to generate actionable insights from data, driving informed decision-making and innovation.


This role is for a Data Scientist who will be a member of the Advanced Analytics team (within Software Services) that is responsible for developing the company’s data analytics strategy and roadmap.

Job Description

Develop data analytics solutions using machine learning algorithms to generate actionable insights for solving complex problems in the oil and gas industry.


Leverage expertise in machine learning theory to implement tailored solutions for specific business challenges and datasets.
Utilize a diverse range of machine learning algorithms and data science technologies - including supervised and unsupervised learning, deep learning, natural language processing (NLP), and time series analysis - to address varied business challenges.
Ensure data quality through preprocessing and cleaning to prepare datasets for analysis.
Conduct exploratory data analysis (EDA) to identify patterns, anomalies, and insights that inform model development.
Apply domain knowledge to select appropriate methodologies.
Build robust solutions through rigorous testing, verification, and validation.
Develop and track performance metrics to evaluate the impact of data science solutions.
Manage the delivery of data science project milestones.
Maintain thorough documentation for a sustainable development.
Ensure all solutions comply with ethical standards, including data privacy and bias mitigation.
Support the deployment and monitoring of machine learning models in production environments.
Stay current with advancements in machine learning and apply them to enhance existing solutions.
Communicate results effectively to both technical and non-technical stakeholders.

People & Teams:

Collaborate with cross-functional project teams to manage smooth execution of data science projects.


Support project managers for integrating data science solutions with software products where applicable.
Support data science study projects through suitable University student programswhere applicable.
Participate as an effective team member in working collaboratively with your leader, peers and relevant others (including from other teams) to achieve business goals.
Build trust and credibility and manage relationships with stakeholders to achieve great outcomes.

You are meant for this job if:

Minimum of 5 years of experience in data science, developing advanced solutions using state-of-the-art machine learning techniques.


Applying machine learning to develop solutions for the oil and gas industry.
Collaborating with business and technical stakeholders to deliver tailored solutions.
Manage delivery of data science project milestones, ensuring on-time & on-quality delivery.
Ability to evaluate and direct technical work performed by junior data scientists. Advanced – Programming in Python (preferred), R, SQL, and Scala.

Advanced – Proficient use of core data science libraries such as scikit-learn, NumPy, and Pandas.

Advanced – Designing and applying machine learning models for diverse data types including tabular, unstructured (e.g., text, images), and time-series data.

Advanced – Strong foundation in statistical methods and their practical application in data science workflows.

Advanced – Data visualization using tools such as Matplotlib, Seaborn, Power BI, and Tableau.

Advanced – Using version control systems like Git for collaborative development and code management.

Proficient – Familiarity with generative AI, foundation models, and LLMs (Large Language Models) to stay aligned with emerging trends in data science.

Proficient – Managing the machine learning lifecycle using tools like MLflow, Docker, and Kubernetes.

Proficient – Applying advanced techniques in Natural Language Processing (NLP), Deep Learning, and leveraging AutoML for efficient model development and deployment.

Proficient – Working with SQL and NoSQL databases including MySQL, PostgreSQL, MongoDB, and Cassandra.

Proficient – Applying structured problem-solving and continuous improvement methodologies such as Plan-Do-Check-Act (PDCA).

Proficient – Practicing Agile development using tools like JIRA or Trello.

Competent – Managing production-grade ML solutions on cloud platforms using MLOps practices.

Competent – Implementing data security and compliance practices, especially relevant to regulated industries like oil and gas.

Competent – Ensuring code quality using tools like SonarQube and adhering to software engineering best practices.

Competent – Understanding the software development lifecycle (SDLC) and its integration with data science workflows.

Competent – Working with high-performance ML frameworks such as TensorFlow and PyTorch.



Skills


Customer FocusData ModellingMachine LearningPythonAnamoly detectionLarge Language ModelsSQLBash/Shell/PowershellAWS S3DBTDynamic ModellingData AnalysisDigital EthicsAWS lambdaRegressionStatistical and Mathematical AnalysisClusteringDomain KnowledgeDeep LearningStreamlitRobotic Process AutomationAgilityClassificationData ArchitectureGithubAWS SagemakerData EngineeringData PreparationDataRobotData Platform - SnowflakeML OpsData VisualizationContinuous LearningIndustry and Domain KnowledgeComputer Programming

Being a global leader in the energy industry requires an inclusive and diverse environment. TechnipFMC promotes equal opportunities and inclusion by ensuring equal opportunities to all ages, races, ethnicities, religions, gender expressions, disabilities, or all other pluralities. We celebrate who you are and what you bring. Every voice matter and we encourage you to add to our culture.

TechnipFMC respects the rights and dignity of those it works with and promotes adherence to internationally recognized human rights principles for those in its value chain.

Learn more about TechnipFMC and find other open positions by visiting our Career Page.

Follow us on LinkedIn for company updates

Date posted: Dec 21, 2025 Requisition number: 14740

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