GoodData: Analytics built into your product, not added on top

GoodData supports companies that deliver analytics to customers, partners or internal platforms. Metrics are defined once, governed centrally and reused.

 

Data-centric AI development

Data teams often want to move beyond experimentation and bring AI into daily operations. With Databricks, you create structured data foundations that support model development, testing and deployment in one environment.

Making it easier to track experiments, maintain data quality and introduce AI that fit your business needs.

Unified governance

As data environments grow, governance becomes harder to manage. Databricks you to apply consistent rules across data, analytics and AI workloads.

You gain better insight into how data is used, while maintaining compliance and access control across your different teams/departments.

Secure data sharing

Quite often, you need to share data, dashboards or models across teams or with external partners.

Databricks supports secure data sharing without duplication or complex pipelines.

This allows collaboration to happen faster while keeping control over access and usage.

Reliable foundation for data and AI

Databricks brings data engineering, analytics and machine learning into one environment.

The challenge lies in turning that potential into a steady operational engine. i-spark works inside live client environments, building pipelines, guiding teams and supporting the daily work that keeps Databricks productive and reliable.

Is this for you?

Is GoodData the right fit for your team?


Databricks is an ideal solution when you want to:

- Bring fragmented data into a unified environment
- Modernise analytics workflows
- Improve the reliability of dashboards and reports
- Support AI initiatives with curated datasets
- Strengthen governance while keeping development efficient

How can i-spark support your work with Databricks?

Focus on results, clarity and long-term reliability.

Implementation and setup

A strong foundation avoids operational issues later. We design workspaces, configure governance and create structures that support efficient collaboration.

Data pipelines and Architecture

Our team builds transparent data flows, with attention to testing, documentation and stability.

Analytics and business insights

Clean datasets support reliable reporting. Power BI, Tableau and other BI tools receive structured data prepared for consistent insights.

Machine Learning and AI

Databricks offers a practical environment for training and deploying models. We support clients with curated datasets and clear workflows.

Team coaching

Daily discipline matters. We guide your team in building sustainable workflows, improving collaboration and maintaining cost-effective operations.

Ethical use of data

We aim to choose what is right, even when it’s uncomfortable or unnoticed. i-spark takes ownership when something doesn’t go to plan.

We help you determine how your data can drive your ambitions.


Our passion is our customers' data and the insights it holds. We partner with companies, helping them spark their data into a powerful tool for growth. Our role is to help you move with speed and intent, turning commercial, operational, and time-related goals into real results.

The results? Efficient operations, better decision-making, and often a visible impact on your bottom line.

We’re here to answer all your questions

Questions we often hear about working with GoodData.

Databricks is used to bring data engineering, analytics and machine learning together in one environment.

Businesses rely on it to process large data volumes, prepare datasets for reporting and support AI initiatives that need stable, well-governed data foundations.

Yes.

Databricks supports analytics workloads and AI development within the same platform. Teams often use it to prepare analytical datasets, connect BI tools and train or deploy machine learning models without switching environments.

Not necessarily.

With a structured setup and clear workflows, teams with mixed skill levels can work effectively in Databricks. If needed, i-spark is here for you with guidance on governance, access and daily usage helps reduce complexity and supports steady adoption.

Databricks offers centralised access control, data lineage and monitoring across data, analytics and AI workloads. This allows organisations to apply consistent governance rules while maintaining visibility into how data is used.

In some cases, yes.

Databricks can function as both a processing platform and an analytical environment. The decision depends on existing systems, reporting needs and architectural preferences.

Databricks integrates with cloud storage, orchestration tools, BI platforms and activation layers.

It often acts as the core processing and analytics layer within a wider data environment rather than replacing every component.

i-spark supports Databricks through hands-on project work.

This includes platform setup, pipeline development, analytics support, AI use cases and ongoing coaching to help teams work confidently with the platform.

Speak with an data analytics specialist

Explore how GoodData can support your operations with an i-spark expert.