Apply

Senior Data Scientist

Posted 2024-10-31

View full description

💎 Seniority level: Senior

📍 Location: Spain, Poland, Germany, France, Netherlands

🔍 Industry: Marketing technology

🏢 Company: Birch

🪄 Skills: PythonSQLData AnalysisData MiningMachine LearningNumpyTableauData analysisData miningData sciencePandasCommunication SkillsAnalytical SkillsCollaboration

Requirements:
  • Work closely with the ML Squad, Product Managers, and Customer Success team.
  • Utilize machine learning, analytics, and statistics in tasks.
  • Possess ability to independently drive projects and take initiative.
Responsibilities:
  • Explore customer data, seasonal trends, and patterns to develop recommendation models, suggest target audiences, and deliver valuable insights.
  • Conduct creative analysis using data for performance forecasting including ML decomposition and computer vision.
  • Set up A/B tests, conduct experiments, analyze results, and evaluate new feature launches.
  • Perform ad hoc analyses to investigate issues such as declining conversions.
  • Craft clear, actionable dashboards with tools like Tableau and Mixpanel to guide team decisions.
Apply

Related Jobs

Apply

📍 LATAM

🔍 Data Science Consultancy

  • MS degree in Statistics, Math, Data Analytics, or a related quantitative field.
  • 3+ years of professional experience in Advanced Data Science, including predictive modeling, statistical analysis, machine learning, text mining, geospatial analytics, and time series forecasting.
  • Experience with Advanced Data Science software languages, such as Python, R, or SAS.
  • Proven ability to deploy machine learning models.
  • Experience with SQL, relational databases, and query authoring and tuning.
  • Familiarity with Hadoop/Hive, Spark, and data-frames in PySpark or Scala.
  • Strong problem-solving skills and comfortable with cloud-based platforms (AWS, Azure, Google).
  • Experience with Google Analytics, Adobe Analytics, and/or Optimizely are a plus.

  • Working with practice leaders and clients to understand business problems, industry context, data sources, risks, and constraints.
  • Solving challenges through diverse Data Science solutions and aligning stakeholders on strategies, deliverables, and roadmaps.
  • Developing project plans with milestones, dates, owners, and risk contingency.
  • Creating and maintaining efficient data pipelines within clients' architecture using SQL, Spark, and Cloud technologies.
  • Assembling large, complex datasets that meet business requirements and constructing analytics tools to provide actionable insights.
  • Performing data cleaning, QC, and integration, conducting statistical analysis for decision-making, and documenting results for client deliverables.

PythonSQLHadoopMachine LearningData scienceSpark

Posted 2024-11-21
Apply
Apply

📍 Deutschland, Polen, Österreich, Belgien, Luxemburg, Spanien, Italien, Tschechien, den Niederlanden, Schweiz

🧭 Full-Time

🔍 Fashion und Lifestyle

  • Abgeschlossenes Studium im Bereich Statistik, (Wirtschafts-) Mathematik, Informatik, Physik, Wirtschaftswissenschaften, Psychologie, Sozialwissenschaften oder einem vergleichbaren Studiengang.
  • Mindestens 3-5 Jahre Berufserfahrung im Bereich Datenwissenschaft oder Datenanalyse.
  • Analytische Denkweise und Problemlösungsorientierung.
  • Fundierte Kenntnisse in Python, SQL und Datenverarbeitungstools.
  • Erfahrung mit Cloud-Plattformen (z. B. AWS, GCP, Azure) und deren Datenservices.
  • Erfahrungen mit Marketing Attributions- oder Media Mix Modellen sind von Vorteil.
  • Ausgeprägte Kommunikationsstärke und Teamfähigkeit.
  • Interesse an Marketing- und Geschäftsanalysen.

  • Extraktion, Bereinigung, Transformation und Integration von komplexen, umfangreichen Daten aus verschiedenen Quellen.
  • Sicherstellung einer hochqualitativen und skalierbaren Datenbasis für Analysen und Modellierungen.
  • Entwicklung, Optimierung und Implementierung von Machine-Learning-Modellen und -Algorithmen als Basis von Geschäftsentscheidungen.
  • Analyse großer Datenmengen zur Identifikation von Trends und Insights.
  • Planung, Entwicklung und Evaluation verschiedener datengetriebener Modelle in enger Zusammenarbeit mit den Stakeholdern des Customer Marketings sowie der Präsentation der Ergebnisse.
  • Sicherstellung der Datenqualität und Entwicklung von Strategien zur Verbesserung der Datenverfügbarkeit.
  • Mentoring und fachliche Unterstützung von Junior Data Scientists und anderen Teammitgliedern.

AWSPythonSQLGCPAzure

Posted 2024-11-16
Apply
Apply

📍 Spain

🧭 Full-Time

🔍 Technology, AI/ML

🏢 Company: Plain Concepts

  • More than 5 years of experience in AI / Machine Learning / Computer Science.
  • Ability to build an end-to-end software product that incorporates a machine learning component.
  • Knowledge in applied computer vision.
  • Strong skills in Python and reasonable understanding of SQL.
  • Experience in building ML/deep learning pipelines and models.
  • Experience implementing production-ready ML models with current ML/Deep learning techniques.
  • Mandatory MLOps experience.
  • Experience in projects involving NLP/Gen IA.
  • International and presales experience is valuable.
  • English is mandatory.

  • Participating in the design and development of AI solutions for challenging projects.
  • Building production level ML/AI solutions, with solid software engineering and ML/AI principles.
  • Automating deployment and monitoring of models and infrastructure using MLOps.
  • Conducting data analysis, including data cleaning and variable transformation.
  • Developing and training ML models.
  • Putting AI models into production, involving parallelizing, optimizing, tuning, and testing for deployment.

DockerPythonSQLAgileData AnalysisMachine LearningPyTorchAzureData analysisgRPCTensorflowDevOps

Posted 2024-11-16
Apply
Apply

📍 France

🔍 E-commerce/platform economy

🏢 Company: Mirakl - Labs

  • 4 years of experience as a Data Scientist, especially in ML for advertising optimization and personalized recommendations.
  • Experience in deploying ML algorithms in production.
  • Good knowledge of recommendation algorithms, customization, and bid price optimization.
  • Experience with semantic search models and State-Of-the-Art architectures (Transformers).
  • Proficiency in Python, Tensorflow or PyTorch, and Spark development.

  • Prototyping and productionizing algorithms in collaboration with Product teams and Data Engineers.
  • Focusing on optimizing retail media algorithms, including product recommendations and bid price.
  • Developing algorithms for search engines to enhance the relevancy of sponsored products based on user queries.

AWSPythonSQLAgileMachine LearningPyTorchAirflowData scienceSparkTensorflowCollaboration

Posted 2024-11-15
Apply
Apply

📍 Ottawa, Eldoret, Penang, Columbus, Amsterdam, Nairobi, Toronto

🔍 Supply chain sustainability

  • Degree in a relevant discipline such as statistics, economics, mathematics, or computer science.
  • 5+ years of experience in data analysis or business intelligence.
  • At least 1 year in a Senior capacity in a B2B SaaS environment.
  • Expertise in SQL or a similar querying language.
  • Experience with Snowflake, DBT, Python, and Tableau.
  • Strong analytical thinking with the ability to interpret data trends.
  • Ability to translate complex data into simple narratives.
  • Meticulous approach to data quality.

  • Spearhead the development of data models and reporting frameworks aligned with strategic priorities.
  • Utilize advanced SQL, Snowflake, Python and DBT for data management and analysis.
  • Build and refine interactive dashboards using Tableau.
  • Collaborate with cross-functional teams to embed data-driven approaches.
  • Provide mentorship to junior analysts to enhance their skills.
  • Ensure data systems accuracy and integrity.
  • Stay updated on best practices in data analytics.

LeadershipPythonSQLBusiness IntelligenceData AnalysisSnowflakeTableauStrategyData analysisData engineeringAnalytical SkillsCollaboration

Posted 2024-11-08
Apply
Apply

📍 Poland

🧭 Full-Time

🔍 Diverse industries including fintech, healthcare, insurance, education

🏢 Company: Netguru

  • At least 5 years of experience in data analytics, consulting, or a related quantitative role.
  • Ability to solve ambiguous problems in a structured, hypothesis-driven, data-supported way.
  • Experience in leading strategic projects within a cross-functional team.
  • Proficiency with experimentation techniques including A/B testing and causal inference.
  • Expertise in SQL, Basic ETL, Predictive modeling, and analytics tools like Looker or Tableau.
  • Strong communication skills with a focus on cross-functional collaboration.
  • Very good command of written and spoken English (C1) is required.

  • Produce recommendations and use statistical techniques and hypothesis testing to validate findings.
  • Provide insights to help business and product leaders understand marketplace dynamics, user behaviours, and long-term trends.
  • Use quantitative analysis and data presentation to comprehend business drivers.
  • Build full-cycle analytics experiments, reports, and dashboards using SQL, R, Python, or other scripting and statistical tools.
  • Identify and measure levers to influence essential metrics and offer recommendations.
  • Help cross-functional teams utilize data points to size initiatives and opportunities.
  • Work backwards from problem understanding to solution ideation.
  • Report against goals by identifying essential metrics and constructing dashboards to track progress.
  • Act as a mentor and guide the team towards actionable outcomes.

PythonSQLAgileETLTableauStrategyCollaboration

Posted 2024-10-15
Apply
Apply

📍 Spain

🏢 Company: Plain Concepts

  • More than 5 years of experience in AI / Machine Learning / Computer Science.
  • Can build an 'end-to-end software product' which has machine learning component.
  • Knowledges in applied computer vision.
  • Strong skills in Python and reasonable SQL understanding.
  • Experience in building ML/deep learning pipelines and models.
  • Experience in implementing production ready ML models using current ML/Deep learning techniques.
  • MLOps experience is very valuable for the team.
  • Experience in projects with NLP is necessary.
  • ENGLISH IS MANDATORY.

  • Participating in the design and development of AI solutions for challenging projects.
  • Building production level ML/AI solutions, with solid software engineering and ML/AI principles.
  • MLOps Automated deployment and monitoring (models and infrastructure).
  • Data analysis (data cleaning, variable transformation, etc.).
  • Developing and training ML models.
  • Putting AI models into production.
  • This means parallelizing, optimizing, tuning, testing the models to deploy in a production environment.

PythonSQLAgileData AnalysisMachine LearningData analysis

Posted 2024-09-20
Apply
Apply

📍 France

🔍 Health & Wellness

🏢 Company: Fabulous

  • University Degree in Engineering, Computer Science or Applied Mathematics.
  • A minimum of 4 years of experience in applied Data Science with strong engineering component.
  • At least 2 years of previous hands-on experience with Digital Marketing/User Acquisition (aka UA) or Product/Growth.
  • Excellent SQL skills with previous experience building data models for analytics purposes using dbt or similar tools.
  • Excellent Engineering skills (testing, clean coding, peer-reviewing, CD/CI, git workflows, agile workflows, etc.).
  • Self-Starter with the ability to work autonomously and manage projects fully.
  • Excellent written and verbal communication skills (English).
  • Comfortable in a remote work environment.
  • Prior experience with some of the tools used in our Data-Stack (Amplitude, dbt, BigQuery, Metabase) or similar ones.
  • Prior experience in an agile start-up environment.

  • You will work on diverse high priority business projects to make Fabulous more data driven. Those projects will be in close collaboration with business teams and will aim for clear and tangible business impact like improving accuracy of metrics, analytically exploring new growth perspectives, building well-tested analytics reporting pipelines, investigating and correcting data discrepancies, applying statistics and ML effectively.
  • You will be responsible for contributing effectively to our code base: building, testing, reviewing and maintaining solid analytics pipelines using SQL and dbt. Help managing TechDebt and improving engineering practices and the project's architecture are also important responsibilities for this role.
  • You are expected to gradually own some aspects of the team's responsibilities (some parts of the code base, become the main point of contact with at least one business team, have a strong saying in how the analytics project's architecture should evolve, contribute to team's evolution and continuous growth).
  • You will be expected to speak up your mind and contribute proactively and effectively to improving the team's practices, cohesion, impact and mission.
  • You are expected to be highly autonomous and show a sense of ownership and ability to effectively manage your own projects and stakeholders. This should be fulfilled with minimum guidance from the Head of Data & Analytics.
  • You will help mentoring more junior members and sharing knowledge and practices within the team to level up everyone's skills.
  • You are expected to contribute effectively to our functional documentation in a way that is clear, concise and useful for future collaborators and readers.

Project ManagementSQLAgileGitBehavioral economicsBehavioral scienceData scienceCommunication SkillsCollaborationAgile methodologies

Posted 2024-09-20
Apply
Apply

📍 Americas or EMEA

🧭 Full-Time

💸 185000 - 185000 USD per year

🔍 Mobile subscriptions

🏢 Company: RevenueCat

  • Proficient in SQL and data modeling.
  • Experience building predictive models and production-ready data pipelines.
  • Driven by customer value rather than just scientific accuracy.
  • Comfortable in ambiguous environments and building from scratch.
  • Proven ability to facilitate data-informed discussions and storytelling.

  • Create data models, dashboards, and reports that deliver insights for customer decisions.
  • Ship data-enabled features such as Lifetime Value (LTV) prediction and experiment reliability appraisal.
  • Collaborate closely with product teams to shape future data features.

AWSPostgreSQLPythonSQLMachine LearningSnowflakeC (Programming language)Data science

Posted 2024-08-26
Apply