Global Advertising Platform
Data Scientist / Algorithm Engineer
Location
Ukraine
Posted
4 days ago
Salary
0
Seniority
Mid Level
Job Description
Data Scientist / Algorithm Engineer
MGID
Role Description Join MGID as a Data Scientist and become part of a team shaping the future of AdTech! We are a forward-thinking team striving to develop and implement cutting-edge algorithms for optimizing advertising campaigns in AdTech. Currently, our primary goal is to enable CPA (Cost Per Action) campaigns to achieve the following objectives: - Hit CPA targets by ensuring conversions occur at a specified cost. - Scale conversions volume while maintaining alignment with the CPA target. - Maximize conversions within the client’s budget. This role offers the unique opportunity to contribute directly to the development of these solutions, driving innovation in the AdTech space and shaping the future of campaign optimization. We are looking for a self-driven, proactive, and results-oriented professional who is not afraid to take ownership: analyze data, identify bottlenecks, and come up with practical solutions quickly. Qualifications - Proven experience in data science, with a strong understanding of optimization problems. - Proficient in Python and SQL, including data manipulation and feature engineering. - Expertise in machine learning techniques and tools (e.g., CatBoost, XGBoost, TensorFlow, PyTorch, scikit-learn). - Experience with big data technologies (Spark, Hadoop) and processing large datasets. - English: Intermediate/Upper-Intermediate. Requirements What You Will Do: - Data Analysis: Explore large-scale event data to identify trends, patterns, and anomalies, generate insights/ideas, evaluate campaigns’ performance, and support decision-making based on findings. - Algorithm Development: Design, implement, optimize and test algorithms for CPA optimization. - Modeling and Optimization: Build and refine predictive models to improve decisions for CPA campaigns, ensuring alignment with business objectives. - Stakeholder Collaboration: Work closely with product/business/tech teams to turn technical findings into actionable decisions. - Experimentation and Validation: Conduct and evaluate A/B tests to assess the impact of algorithm changes. - Visualization and Reporting: Create dashboards and visualizations to track key performance indicators (KPIs) and communicate findings to stakeholders. Benefits - Be part of a company where you feel supported, connected, and have the flexibility to excel personally and professionally. - Opportunity to work in an innovative, results-driven AdTech team. Company Description MGID is a global advertising platform helping brands reach unique local audiences at scale. In MGID we empower brands and publishers to work together transparently through our privacy-first targeting technology to enable advertisers to drive performance and awareness, and publishers to retain and monetize their audiences. Today, we’re creating unique technologies and with your help, we are looking to aim even higher.
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