Machine Learning Specialist
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Yerləşdirilib 14 aprel 2026
Son Tarix: 8 may 2026
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About the Team
The Data Science team within the Data Office at CIC is at the heart of the digital transformation of the global SOCAR Group. We are a team of problem solvers with diverse backgrounds spanning fields such as chemical engineering, geosciences, finance, and software development. We operate at the intersection of machine learning, optimisation, and domain expertise, tackling complex industrial challenges that sit across these disciplines.
The solutions we develop become part of day-to-day operations, directly impacting operational efficiency, decision-making, and performance across upstream, downstream, and corporate functions. Our team collaborates closely with Data Engineering, Data Analytics, and Data Governance teams to ensure our solutions are production-ready and sustainably delivered.
Our mission is to build reliable, scalable, and interpretable AI products that make the energy industry more efficient, data-driven, and intelligent.
About the Role
We are hiring Machine Learning Specialists at junior, mid, and senior levels to join our growing team.
You will work within the Machine Learning section of the Data Science Department, developing and deploying production-grade machine learning and optimisation. Your work will span the full lifecycle from problem definition and data exploration to model development, deployment, continuous improvement, and product development, following established MLOps practices and leveraging internal ML platforms.
You will focus on a diverse set of use cases, including traditional machine learning (e.g., forecasting, classification) and optimisation (e.g., linear programming, heuristics). These solutions support critical operational and business decisions across multiple domains, including finance, procurement, petroleum engineering, geosciences, and industrial processes.
As a Machine Learning Specialist, you will play a hands-on role in building scalable AI products that deliver real operational impact.
Your responsibilities will include:
Developing machine learning and optimisation solutions that drive business value
Exploring data, engineering features, and extracting insights to support decision-making
Designing scalable data pipelines and production-ready model architectures
Deploying, monitoring, and maintaining models across their full lifecycle
Partnering with engineers, domain experts, and stakeholders to solve complex problems
Turning business requirements into practical and reliable AI systems
Clearly communicating results and recommendations to technical and business audiences
Supporting experimentation, research initiatives, and proof-of-concept development
Engaging in workshops to uncover new use cases and product opportunities
Contributing to the evolution of MLOps, governance, and ML best practices
You will take ownership of problems end-to-end, working in an environment that values experimentation, iteration, and practical impact. Depending on your experience level, you may also play a key role in shaping solutions, guiding stakeholders, changing culture, and contributing to how machine learning products are built and scaled across the organization.
What We’re Looking For
We’re looking for curious, motivated machine learning practitioners who want to grow, build real systems, and make an impact in a complex industrial environment.
Your Background
A Bachelor’s or Master’s degree in Computer Science, Engineering, Mathematics, Statistics, or another quantitative field (We also welcome candidates with backgrounds in Geosciences, Chemical/Industrial Engineering, Finance, or petroleum-related fields with strong analytical skills.)
Hands-on experience working on data science or machine learning projects — through work, internships, research, or personal projects
Exposure to the end-to-end ML lifecycle, from data exploration to model development and evaluation
Fluency in Azerbaijani and English (Russian and/or Turkish is a plus)
Technical Skills
Strong programming skills in Python, with experience using SQL and relational databases
Solid understanding of statistics and classical machine learning methods
Ability to write clean, maintainable, production-ready code
Experience working with Git or similar version control systems
Familiarity with modern ML tooling such as:
Experiment tracking (e.g., MLflow)
CI/CD concepts for data or ML workflows
Containerisation (Docker) and basic Linux environments
Experience with Kubernetes, GPUs, or cloud platforms is a plus but not required
ML & Analytics Exposure (Nice to Have)
Applied experience with:
Forecasting, classification, or regression problems
Deep learning or computer vision models (nice to have, not mandatory)
Optimisation or operational research methods (e.g., linear or nonlinear programming)
Comfortable working with real-world, imperfect data
Professional & Personal Skills
Strong analytical thinking and a problem-solving mindset
Ability to explain technical results in a clear and practical way
Confidence working with cross-functional teams and non-technical stakeholders
Good communication and presentation skills
Ability to manage multiple tasks while working independently
Domain Interest (Plus)
Experience or strong interest in applying data and machine learning to real business and industrial problems, especially in:
Upstream: geology, geophysics, drilling, reservoir or petroleum engineering
Downstream: chemical engineering, process engineering, refinery operations
Corporate: finance, procurement, legal, or HR analytics
We Offer
5/2, 09.00-18.00;
Meal allowance;
Annual performance bonuses;
Corporate health program: VIP voluntary insurance and special discounts for gyms;
Access to Digital Learning Platforms.
Interested candidates can apply via the link in the Apply for job button.
Note: Only candidates who meet the requirements of the vacancy will be contacted for the next stage.
Necə Müraciət Etmək Olar
Caspian Innovation Center
Vakansiya Təfərrüatları
Vakansiya ID
#13634
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