Última atualização: 7 de Maio de 2025
Data Analytics Engineer
Via Fingerprint
Sobre
Are you passionate about data analytics and eager to work on large-scale projects? Fingerprint is looking for an Analytics Engineer to join our Identification Team. You will play a crucial role in providing high-quality tools for deep data analytics over our Identification API Product, which processes approximately 1 billion requests per month.
Responsibilities:
- Develop tools for deep data analytics on the Identification API Product.
- Provide insights about algorithm accuracy, design experiments, detect anomalies, and analyze trends in time-series data.
- Foster an engineering-focused, data-driven culture within the Fingerprint team by sharing tools and knowledge on effective data analytics approaches.
- Apply software engineering best practices to deliver clean, transformed data ready for analysis.
- Strengthen the team behind the industry-leading device identification API through applied data analytics skills.
- This role includes participation in a shared on-call rotation. The schedule will be communicated in advance, and we strive to balance coverage equitably while minimizing off-hours disruptions.
Qualifications:
- Proficiency in English for clear communication within an international remote team.
- BS/MS in Computer Science or a related field, or equivalent work experience.
- 2+ years of experience in Analytics Engineering, Data Engineering, Data Analytics, or Data Science.
- Excellent SQL skills.
- Practical experience with analytical storage solutions such as Clickhouse, Snowflake, BigQuery, Redshift, Databricks, etc.
- Familiarity with data transformation frameworks and approaches (e.g., dbt, materialized views, data pipeline workflow tools).
- General engineering skills: git, IDE, shell.
- Experience with data visualization tools like Apache Superset, Tableau, Metabase, Looker, etc.
- Strong foundation in statistics for designing metrics and experiments.
- Ability to conduct Exploratory Data Analysis (EDA) for investigating ad-hoc questions and identifying anomalies.
Nice to Haves:
- Proficiency with the Python data analytics stack (Numpy, pandas, Jupyter, etc.).
- Machine Learning skills, particularly for quality estimation of ML algorithms.
Technologies:
- Our stack: Clickhouse, dbt, Apache Superset (Preset), Prefect
- Relevant technologies: Google BigQuery, Amazon Redshift, Snowflake, Apache Druid, Vertica, DataBricks, Apache Airflow, Dataform, Talend, Fivetran, Stitch, Luigi, Dagster, Tableau, Power BI, Looker, Metabase, Redash
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