Vertex AI
Databricks
vs

Vertex AI vs. Databricks

Compare Vertex AI with Databricks by the following set of capabilities. We want you to choose the best ML platform for you.

Vertex AI vs. Databricks on Ease of Use

Feature
Zero-config model build & deploy
X
X
Data source integration
GCP
Multiple data sources
Multi-cloud support
GCP
AWS, GCP, Azure
Intuitive UI
X
X
Support
Standard GCP support
Standard

Vertex AI ease of use

While offering a robust set of features, Vertex AI has a steeper learning curve, especially for those not already familiar with Google Cloud Platform. The platform is feature-rich but may require navigating through various services and configurations.

Databricks ease of use

Databricks leverages open-source tools like Apache Spark, MLflow and Airflow, which offer a lot of configurability but can be complex for some users. While it provides a robust set of features for big data analytics, it may lack specific out-of-the-box ML features, requiring users to build custom solutions using Spark. This adds a layer of complexity and requires a deeper understanding of the underlying technologies.

Vertex AI vs. Databricks on Model Building and Model Deployment

Feature
Model build system
X
Engineers required
Model deployment & serving
V
V
Real-time model endpoints
V
V
Model auto scaling
V
Engineers required
Model A/B deployments
Engineers required
Engineers required
Inference analytics
Engineers required
Engineers required
Managed notebooks
V
V
Automatic model retraining
Engineers required
Engineers required

Vertex AI model building and model deployment

Using Vertex AI in production demands a broad skill set, including ML engineering, containerization, Kubernetes orchestration, Infrastructure as Code (with tools like Terraform or Google Cloud Deployment Manager), and networking (VPC, firewall rules). Additional GCP services like Google Cloud Storage, Google Kubernetes Engine (GKE), and Google Cloud Monitoring add complexity, requiring diverse engineering skills for effective management.

Databricks model building and model deployment

Databricks, a cloud-based platform integrating with various providers, heavily relies on Apache Spark for data processing. While it manages some infrastructure aspects, users need a good grasp of Spark configurations. In contrast. Databricks' deployment time varies; simple models can take minutes, but complex scenarios may extend to days, particularly without prior Spark experience. This variability, while enhancing flexibility, introduces complexity impacting deployment speed.

Vertex AI vs. Databricks on Feature Platform

Feature
Managed feature store
V
V
Vector database
V
V
Batch features
V
V
Realtime features
V
V
Streaming features
Engineers required
V
Streaming aggregation features
Engineers required
Engineers required
Online and offline store auto sync
X
Engineers required

Vertex AI feature platform

Vertex AI is partially managed, meaning some services are fully managed while others may require manual setup. For example, AutoML is fully managed, but custom training and data pipelines might require additional configurations or integration with other GCP services.

Databricks feature platform

Databricks offers a Feature Store that supports batch data sources and allows for feature transformations using Spark SQL or PySpark functions. Features can be stored in both an Offline and Online Store but require manual schema definition. While it supports a range of data sources, it is optimized for the Databricks ecosystem. Streaming data sources and streaming aggregations are not natively supported.

Vertex AI vs. Databricks on Pricing

Vertex AI pricing

Vertex AI offers various pricing options based on usage and project requirements.

Databricks feature platform

Databricks' pricing is based on usage, which means users pay for the resources they consume, while they can also opt for longer commitment plans with discounts.

Vertex AI vs. Databricks on Maintenance

Vertex AI maintenance

Managing GCP Vertex AI involves understanding Google Cloud's infrastructure, configuring multiple services, and utilizing its data and AI tools. Key tasks include optimizing costs, ensuring security and compliance, and maintaining efficient data pipelines and ML workflows. Regular updates and platform changes also demand continuous learning and adaptation.

Databricks maintenance

Maintaining Databricks effectively in MLOps requires focus on several key areas: efficient cluster management for performance and cost, stringent data management for quality and security, and thorough job scheduling and monitoring. It's important to have the right training and support, ensure reliable disaster recovery and backups, and continuously tune performance, all essential for Databricks to function optimally in the MLOps pipeline.

Vertex AI vs. Databricks on Scalability

Vertex AI scalabilty

Vertex AI is built on Google Cloud, which provides scalable cloud-based ML services. Google's infrastructure is known for its elasticity, making Vertex AI suitable for projects with fluctuating workloads.

Databricks scalability

Databricks provides scalability through its integrated Spark clusters. This makes it an excellent choice for big data and data engineering tasks, alongside ML workloads.

Vertex AI vs. Databricks on Support

Vertex AI support

Vertex AI benefits from Google Cloud's support resources, including a community, documentation, and various support plans. Users can access assistance and expertise as needed.

Databricks support

Databricks has an active community and offers different support options, including premium support plans. Users can access resources like documentation, forums, and customer support for assistance.

Compare Vertex AI with Others

Don’t just take our word for it

Qwak was brought onboard to enhance Lightricks' existing machine learning operations. Their MLOps was originally concentrated around image analysis with a focus on enabling fast delivery of complex tabular models.

Read Case Study

From the get go, it was clear that JFrog ML understood our needs and requirements. The simplicity of the implementation was impressive.

More on Vertex AI vs. Databricks