About us:
We are a cross commerce digital platform that allows you to source your food products, providing a seamless purchase experience and year-round availability. We are on a mission to alleviate one of humanity’s most significant challenges: food security.
The role:
● Collect and use market data, enabling the company to stay competitive and informed on industry and market trends.
● Optimize operations and automate processes, improving efficiency and agility.
● Leverage data for competitive advantage through product innovation and new revenue streams.
● Align data initiatives with business goals, ensuring data efforts directly impact growth and strategy.
● Generate actionable insights to drive customer acquisition, product development, and market strategy.
● Establish a data-driven culture from the beginning, promoting informed decision-making.
● Enable rapid experimentation and prototyping, ensuring quick validation of business ideas.
● Centralize data efforts, avoiding silos and ensuring data is accessible to all teams.
● Ensure compliance with data privacy and security regulations to mitigate risks.
● Prepare for future scaling needs by building a robust data team and infrastructure.
● Build scalable data infrastructure to support future growth and prevent technical debt.
What would the goals and main functions of the Data Leader be?
Goals of a Data Leader:
● Maximize Data Value: Transform raw data into actionable insights that align with the company’s strategic goals and improve overall performance.
● Enable Data-Driven Decision Making: Foster a culture of data-driven decision-making at all levels of the organization.
● Ensure Data Quality and Integrity: Oversee date governance frameworks to ensure the accuracy, consistency, and security of the data.
● Drive Innovation: Utilize data to identify new opportunities, create data products, and leverage emerging technologies like Al and machine learning.
● Optimize Data Infrastructure: Ensure that the organization’s data architecture, tools, and technologies support efficient data processing, analysis, and storage.
● Mitigate Risks: Ensure compliance with data privacy regulations (like GDPR) and manage data security risks effectively.
Main functions of a Data Leader:
● Hands-On Coding (Context-Dependent): At the company, the Data Leader may need to code, especially for prototypes, exploratory analysis, or setting up initial infrastructure, including ETL/ELT or machine learning models.
● Automation and Scripting: Writing scripts to automate data tasks (e.g., extraction, monitoring, reporting), especially in resource-constrained environments.
● Data Management: Oversee the collection, storage, and processing of data across the organization, ensuring the use of appropriate tools and techniques for large-scale data handling.
● Data Analytics: Extracts insights from data, using statistical methods, machine learning, and business intelligence tools.
● Strategy and Vision: Define the company’s data strategy and align it with business objectives, ensuring that data initiatives support key business outcomes.
● Data Governance: Develop and implement data governance policies to ensure data security, privacy, and compliance with industry standards.
● Performance Monitoring: Track and report on key data metrics, making sure the organization is leveraging data effectively to achieve its goals.
Technical Skills required:
Main Technical skills of a Data Leader:
● Data Architecture and Engineering: Understanding of data pipelines, data storage (data lakes, data warehouses), and architecture frameworks. Familiarity with tools like Apache Hadoop, Spark, and cloud data services (AWS, Azure or Google Cloud)
● Data Analytics and BI Tools: Expertise in data visualization, reporting, and analytics tools such as Power BI, Quicksight, or Looker, as well as experience with programming languages like SQL and Python for advanced analytics.
● Machine Learning and AI: Strong grasp of machine learning algorithms, Al tools, and the practical application of these techniques in business contexts. Familiarity with frameworks like TensorFlow or PyTorch is beneficial.
● Cloud and Big Data Technologies: Experience with cloud platforms (AWS, GCP, Azure) and big data processing tools like Apache Kafka, Flink, or Databricks for handling massive datasets.
● ETL/ELT and Data Integration: Proficiency in ETL/ELT tools (e.g., AWS Glue or similar) to manage the flow of data from different sources into centralized systems.
● Database Management: Knowledge of both relational (SQL) and non-relational (NoSQL) databases, including PostgreSQL and Cassandra or similar.
● Data Quality Management: Skills in establishing data quality frameworks, ensuring data accuracy, consistency, and timeliness across the organization.
● Statistical Analysis and Experimentation: Strong foundation in statistical methods, A/B testing, and causal inference techniques for data-driven decision-making.
● APIs and Data Products: Experience in designing and using APIs to integrate data across systems, as well as understanding how to build scalable data products.
Perfecto, seguí hablando con él.
Aplica para esta posición
Si ya estás hablando con un reclutador de CONEXIONHR, NO COMPLETES EL FORMULARIO.