Analytics Engineer für Berlin gesucht
Arbeits- und Stellenangebot im Regiobizz Arbeitsmarkt
Job Kategorie: IT/IT-Dienstleistung Informationstechnologie (IT)
Stellenangebot Basisdaten
- Arbeitsort:
-
DE 10115 Berlin
- Umkreis:
-
keine Angabe.
- Art der Arbeitsstelle:
-
- Letze Aktualisierung:
-
15.01.20252025-01-15
Stellenausschreibung: Analytics Engineer
- Arbeitgeber bzw.
Arbeitsvermittler
-
Gemma Analytics in Hamburg
- Branche
-
IT/IT-Dienstleistung
- Kategorie
-
Informationstechnologie (IT)
- Stellenbeschreibung
- Intro We are Gemma Analytics: a Berlin-based company specializing in
generating insights in high-performance data infrastructure. Gemma was
founded in early 2020 by two data enthusiasts. Ever since, we have
helped over 70 companies to become more data-driven and successful. We
have a fun, honest, and inclusive work environment. We are always
looking for data-minded people we can learn from. Tasks About the Job
Gemma Analytics helps clients to become more data-driven. As one of
our analytics engineers, you play a critical role in helping our
clients generate business value out of their existing data sets. There
are no two ways about it – you’re a Data Magician. While
manipulating data, you bring out detailed information and quirky
insights. You find what others can’t and glean business insights
from numbers. By collaborating with clients, you find practical
solutions to problems. You will get support and help from senior
mentors in the first months. You have the opportunity to work on
difficult problems while helping startups and SMEs to make
well-informed decisions based on data. Responsibilities: As we are
tooling-agnostic, you will touch multiple technologies and understand
the in’s & out’s what is currently possible in the data landscape
Collaborate and connect with domain experts to solve data obstacles in
various industries Develop advanced data reporting and visualizations
Apply data modeling methodologies and contribute to a robust data
platform for our clients Technologies you’ll use Working with
multiple clients, we are in touch with many technologies, which is
truly exciting. We use state-of-the-art technologies while being fully
pragmatic (we do not crack a walnut with a sledgehammer). We follow an
ELT philosophy and divide the tasks between Data Engineering and
Analytics Engineering accordingly. The following technologies
constitute our preferred data tech stack: Data Loading For our
clients, we either use a scheduler (e.g. Apache Airflow or Prefect)
and run Python DAGs with it - we also like to work with dlt as a
framework For standard connectors, we work with Fivetran or Airbyte
Cloud preferably Data Warehousing For smaller data loads, we mostly
use PostgreSQL databases For larger datasets, we mostly work with
Snowflake or BigQuery Data Transformation We love to use dbt (data
build tool) since 2018 - we can also work without it, yet we are fans
It is important to us that we work version-controlled, peer-reviewed,
with data testing, and other engineering best practices Data
Visualization For smaller businesses with For specified needs and a
centralized BI, we recommend PowerBI or Tableau For a decentralized,
self-service BI with more than 50 users, we recommend Looker,
Holistics, or ThoughtSpot We are always on the lookout for new tools,
at the moment we are excited about Lightdash, Omni, dlt, and other
tools Requirements We believe in a good mixture of experience and
upside in our team. We are looking for both types of people equally.
For this mid-level role, we are looking for people with initial
experience, and also with curiosity, openness to learning, and a
structured mindset who are enthusiastic to solve numerical riddles
while keeping in mind the business context. Besides that, we are
looking for the following: Experience with SQL and relational
databases Business Fluency (C2 or native) in German and English First
understanding of data modeling techniques (e.g. Data Vault or
Kimball’s Dimensional Modelling) and data warehousing in general
Optional: Experience with one or more programming languages (Python
preferred) Optional: Experience with one or more data visualization
tools Optional: Experience with managing stakeholders and/or clients
Benefits We are located in Berlin, close to Nordbahnhof. We are
currently 18 colleagues and will grow to 22 colleagues this year.
Other perks include: We are a hybrid company that meets in the office
twice a week - one common office day and one flexible day We allow for
intra-EU workcations for up to 3 months a year (extra-EU workcations
also if this is allowed) We have an honest, inclusive work environment
and want to nurture this environment We don’t compromise on
equipment - a powerful Laptop, extra screens, and all the tools you
need to be effective We will surround you with great people who love
to solve (mostly data) riddles We believe in efficient working hours
rather than long working hours - we focus on the output rather than
the input We learn and share during meetups, lunch & learn sessions
and are open to further initiatives We pay a market-friendly salary,
and we additionally distribute at least 20% of profits to our
employees We are fast-growing and have technology at our core, yet we
do not rely on a VC and operate profitably We have a great yearly
offsite event that brings us all together for a full week, enjoying
good food, and having a good time (2021: Austria, 2022: Czech
Republic, 2023: Germany, 2024: Germany) Closing How you’ll get here
CV Screening Phone/Coffee/Tea Initial Conversation Hiring Test
Interviews with 2-3 future colleagues Reference calls Offer + Hired
Looking forward to your application :)
- Qualifikation
- Arbeitskräfte
- Verdienst:
- n.a.
- Bewerbung an
- Gemma Analytics
Am Strandkai 1
De 20457 Hamburg
Stellenangebot powered by
Die Veröffentlichung dieses Stellenangebotes bei regiobizz.de erfolgt mit freundlicher Genehmigung von GermanPersonnel im Namen des Stellenanbieters. Eine gewerbliche Nutzung dieser Daten sowie deren Veröffentlichung in jeder Form ist ohne ausdrückliche Genehmigung von GermanPersonnel strengstens untersagt.