Agrico: Discover the power of analytics engineering

agrico presentation Big Data Expo

Thanks for being at our presentation at the Big Data Expo! We hope you were inspired and enjoyed it. Download our Key Takeaways or watch the presentation again to get the most out of it.

Why should you consider introducing analytics engineering practices in your data workflow?

It streamlines processes, improves data quality, and promotes collaborative efforts. These combined efforts result in more reliable, valuable insights, ultimaltely benefiting your organisation.

key takeways

Presentation slides

presentation

You can find all the slides of our presentation here

Reading tip: Unlocking the power of analytics engineering

As you already heard during our talk, Analytics Engineering has a few important benefits. Learn more about the origins and benefits of Analytics Engineering in our blog.

Connect with Iga

Iga Jarosz is an Analytics Engineer at Digital Power. She is dedicated to ensure data quality and embrace design thinking principles. She combines her background in cognitive psychology with more technical skills currently utilising Databricks, dbt, and Power BI in her daily work. Iga is passionate about topics such as cognitive ergonomics, human-centred design, and systems thinking.c

Iga Jarosz

Connect with Mark

Mark Kranenburg is an experienced CFO and adept business leader with 18 years in diverse sectors. He currently manages financial, IT, legal, communications, marketing, HR, CSR and facilities functions as CFO of Agrico. Mark is skilled in change management and innovation, and fosters collaboration through inclusive leadership

Mark Kranenburg

Receive data insights, use cases and behind-the-scenes peeks once a month?


Sign up for our email list and stay 'up to data':

You might find this interesting too

Insight into the complete sales funnel thanks to a data warehouse with dbt

Our consultants log the assignments they take on for our clients in our ERP system AFAS. In our CRM system HubSpot, we can see all the information relevant before signing a collaboration agreement. When we close a deal, all the information from HubSpot automatically transfers to AFAS. So, HubSpot is mainly used for the process before entering a collaboration, while AFAS is used for the subsequent phase. To tighten our people's planning and improve our financial forecasts, we decided to set up a data warehouse to integrate data from both data sources.

Read more

The all-round profile of the modern data engineer

Since the field of big data emerged, many elements of the modern data stack became the data engineers' responsibility. What are these elements, and how should you build your data team?

Read more

Unlocking the power of Analytics Engineering

The world of data is continuously shifting and so are its corresponding jobs and responsibilities within data teams. With this, an up-and-coming role appeared on the horizon: the Analytics Engineer.

Read more

A standardised way of processing data using dbt

One of the largest online shops in the Netherlands wanted to develop a standardised way of data processing within one of its data teams. All data was stored in the scalable cloud data warehouse Google BigQuery. Large amounts of data were available within this platform regarding orders, products, marketing, returns, customer cases and partners.

Read more

A scalable data platform in Azure

TM Forum, an alliance of over 850 global companies, engaged our company as a data partner to identify and solve data-related challenges.

Read more