
1001 - 5000 employees
Founded 2008
🤖 Artificial Intelligence
🤝 B2B
🏢 Enterprise
Artificial Intelligence • B2B • Enterprise
Lingaro is an end-to-end data services and analytics partner for global brands and enterprises, delivering data strategy, platform engineering, AI/ML (including generative AI), and data governance to unlock business value. It combines domain-focused analytics (supply chain, commercial/RGM, digital commerce, sustainability) with data platforms, visualization, MLOps, and secure cloud (Google Cloud) integrations, plus a creative arm (ALCHEMY) for data-driven brand and commerce experience design.
🔥 0 minutes ago
Improve your chances of getting an interview by checking your resume score before you apply.

1001 - 5000 employees
Founded 2008
🤖 Artificial Intelligence
🤝 B2B
🏢 Enterprise
Artificial Intelligence • B2B • Enterprise
Lingaro is an end-to-end data services and analytics partner for global brands and enterprises, delivering data strategy, platform engineering, AI/ML (including generative AI), and data governance to unlock business value. It combines domain-focused analytics (supply chain, commercial/RGM, digital commerce, sustainability) with data platforms, visualization, MLOps, and secure cloud (Google Cloud) integrations, plus a creative arm (ALCHEMY) for data-driven brand and commerce experience design.
• You will be a part of the team accountable for design, model and development of whole GCP data ecosystem for one of our Client’s (Cloud Storage, Cloud Functions, BigQuery) • Involvement throughout the whole process starting with the gathering, analyzing, modelling, and documenting business/technical requirements will be needed. The role will include direct contact with clients. • Modelling the data from various sources and technologies. Troubleshooting and supporting the most complex and high impact problems, to deliver new features and functionalities. • Designing and optimizing data storage architectures, including data lakes, data warehouses, or distributed file systems. Implementing techniques like partitioning, compression, or indexing to optimize data storage and retrieval. Identifying and resolving bottlenecks, tuning queries, and implementing caching strategies to enhance data retrieval speed and overall system efficiency. • Identifying and resolving issues related to data processing, storage, or infrastructure. Monitoring system performance, identifying anomalies, and conducting root cause analysis to ensure smooth and uninterrupted data operations. • Train and mentor less experienced data engineers, providing guidance and knowledge transfer
• At least 4 years of experience as a Data Engineer working with GCP cloud-based infrastructure & systems. • Deep knowledge of Google Cloud Platform and cloud computing services. • Extensive experience in design, build, and deploy data pipelines in the cloud, to ingest data from various sources like databases, APIs or streaming platforms. • Proficient in database management systems such as SQL (Big Query is a must), NoSQL. Candidate should be able to design, configure, and manage databases to ensure optimal performance and reliability. • Programming skills (SQL, Python, other scripting). • Proficient in data modeling techniques and database optimization. Knowledge of query optimization, indexing, and performance tuning is necessary for efficient data retrieval and processing. • Knowledge of at least one orchestration and scheduling tool (Airflow is a must). • Experience with data integration tools and techniques, such as ETL and ELT Candidate should be able to integrate data from multiple sources and transform it into a format that is suitable for analysis. • Knowledge of modern data transformation tools (such as DBT, Dataform). • Excellent communication skills to effectively collaborate with cross-functional teams, including data scientists, analysts, and business stakeholders. Ability to convey technical concepts to non-technical stakeholders in a clear and concise manner. • Ability to actively participate/lead discussions with clients to identify and assess concrete and ambitious avenues for improvement. • Tools knowledge: Git, Jira, Confluence, etc. • Open to learn new technologies and solutions. • Experience in multinational environment and distributed teams. • Good to have: • Certifications in big data technologies or/and cloud platforms. • Experience with BI solutions (e.g. Looker, Power BI, Tableau). • Experience with ETL tools: e.g. Talend, Alteryx • Experience with Apache Spark, especially in GCP environment. • Experience with Databricks. • Experience with Azure cloud-based infrastructure & systems.
Apply Now🕒 3 days ago
Data Engineer responsible for building and maintaining critical data pipelines for an AI-native aftermarket platform. Collaborating in a remote environment and mentoring peers.
Azure
PySpark
Python
Spark
SQL
Unity
Vault
🕒 5 days ago
Senior Data Engineer designing, building, and maintaining AWS data pipelines at Goods & Services. Collaborating with analytics engineers and data scientists for reliable data solutions.
Airflow
Amazon Redshift
Apache
AWS
Cloud
ETL
Jenkins
PySpark
Python
Spark
SQL
🕒 6 days ago
Data Engineer at FBS responsible for data acquisition, curation, and publishing in analytical contexts. Collaborating on data projects and optimizing workflows across multiple technologies.
Cloud
🕒 6 days ago
10,000+ employees
Senior Data Engineer at JLL leveraging advanced technical know-how to drive AI-powered data solutions. Leading initiatives that shape the future of real estate technology and foster career growth.
Apache
Azure
Cloud
Kafka
Microservices
PySpark
Python
Spark
🕒 May 29
AI Engineer and Data Engineer at a high-growth advertising technology company. Responsible for scaling reporting infrastructure and ensuring data quality in cloud environments.
Jenkins
SQL
Unity