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    <title>topic Exploring Serverless Features in Databricks for ML Use Cases in Machine Learning</title>
    <link>https://community.databricks.com/t5/machine-learning/exploring-serverless-features-in-databricks-for-ml-use-cases/m-p/115111#M4017</link>
    <description>&lt;P&gt;Hello,&amp;nbsp;&lt;/P&gt;&lt;P&gt;I need to develop some ML use case. I would like to understand if the serverless functionality unlocks any additional features or if it is mandatory for certain capabilities.&lt;/P&gt;&lt;P&gt;Thank you!&lt;/P&gt;</description>
    <pubDate>Thu, 10 Apr 2025 07:40:27 GMT</pubDate>
    <dc:creator>antonionuzzo</dc:creator>
    <dc:date>2025-04-10T07:40:27Z</dc:date>
    <item>
      <title>Exploring Serverless Features in Databricks for ML Use Cases</title>
      <link>https://community.databricks.com/t5/machine-learning/exploring-serverless-features-in-databricks-for-ml-use-cases/m-p/115111#M4017</link>
      <description>&lt;P&gt;Hello,&amp;nbsp;&lt;/P&gt;&lt;P&gt;I need to develop some ML use case. I would like to understand if the serverless functionality unlocks any additional features or if it is mandatory for certain capabilities.&lt;/P&gt;&lt;P&gt;Thank you!&lt;/P&gt;</description>
      <pubDate>Thu, 10 Apr 2025 07:40:27 GMT</pubDate>
      <guid>https://community.databricks.com/t5/machine-learning/exploring-serverless-features-in-databricks-for-ml-use-cases/m-p/115111#M4017</guid>
      <dc:creator>antonionuzzo</dc:creator>
      <dc:date>2025-04-10T07:40:27Z</dc:date>
    </item>
    <item>
      <title>Re: Exploring Serverless Features in Databricks for ML Use Cases</title>
      <link>https://community.databricks.com/t5/machine-learning/exploring-serverless-features-in-databricks-for-ml-use-cases/m-p/115170#M4018</link>
      <description>&lt;DIV class="paragraph"&gt;Serverless functionality in Databricks is not mandatory for utilizing machine learning (ML) capabilities. However, it does unlock specific benefits and features that can enhance certain workflows. Here’s how serverless compute can add value, based on the context:&lt;/DIV&gt;
&lt;OL start="1"&gt;
&lt;LI&gt;
&lt;DIV class="paragraph"&gt;&lt;STRONG&gt;Performance and Scalability&lt;/STRONG&gt;:
&lt;UL&gt;
&lt;LI&gt;Serverless compute allows for fast startup times and automatic scalability, which is particularly useful for ML workloads involving exploratory experiments or interactive use cases where efficiency is key.&lt;/LI&gt;
&lt;/UL&gt;
&lt;/DIV&gt;
&lt;/LI&gt;
&lt;LI&gt;
&lt;DIV class="paragraph"&gt;&lt;STRONG&gt;Cost Optimization&lt;/STRONG&gt;:
&lt;UL&gt;
&lt;LI&gt;Serverless compute operates in a cost-optimized mode for workflows, notebooks, and Delta Live Tables, reducing costs when resources are not actively in use. This can particularly benefit intermittent ML workloads.&lt;/LI&gt;
&lt;/UL&gt;
&lt;/DIV&gt;
&lt;/LI&gt;
&lt;LI&gt;
&lt;DIV class="paragraph"&gt;&lt;STRONG&gt;Enhanced Security and Governance&lt;/STRONG&gt;:
&lt;UL&gt;
&lt;LI&gt;Serverless environments include enhanced security features, such as shared security access modes and Unity Catalog integration, which support secure and compliant ML workflows.&lt;/LI&gt;
&lt;/UL&gt;
&lt;/DIV&gt;
&lt;/LI&gt;
&lt;LI&gt;
&lt;DIV class="paragraph"&gt;&lt;STRONG&gt;Separating Responsibility&lt;/STRONG&gt;:
&lt;UL&gt;
&lt;LI&gt;Serverless eliminates the need for manually provisioning and managing clusters, allowing data scientists and ML practitioners to focus entirely on their work without requiring support from infrastructure teams.&lt;/LI&gt;
&lt;/UL&gt;
&lt;/DIV&gt;
&lt;/LI&gt;
&lt;LI&gt;
&lt;DIV class="paragraph"&gt;&lt;STRONG&gt;Developing and Managing ML Models&lt;/STRONG&gt;:
&lt;UL&gt;
&lt;LI&gt;While serverless compute supports ML model development and deployment, limitations exist for workloads requiring GPUs, certain ML runtime features, or custom data sources. However, Databricks MLtools like MLflow can still be leveraged effectively within serverless environments for experiment tracking and deployment.&lt;/LI&gt;
&lt;/UL&gt;
&lt;/DIV&gt;
&lt;/LI&gt;
&lt;LI&gt;
&lt;DIV class="paragraph"&gt;&lt;STRONG&gt;Limitations&lt;/STRONG&gt;:
&lt;UL&gt;
&lt;LI&gt;Specific functionality like Spark UI debugging, certain Spark configurations, and support for GPUs or cluster-scoped libraries (e.g., &lt;CODE&gt;.jar&lt;/CODE&gt; files) is limited in serverless environments. Ensure these constraints align with your ML use case.&lt;/LI&gt;
&lt;/UL&gt;
&lt;/DIV&gt;
&lt;/LI&gt;
&lt;/OL&gt;
&lt;DIV class="paragraph"&gt;Serverless compute is beneficial but not mandatory for most Databricks ML workflows.&lt;/DIV&gt;</description>
      <pubDate>Thu, 10 Apr 2025 14:32:24 GMT</pubDate>
      <guid>https://community.databricks.com/t5/machine-learning/exploring-serverless-features-in-databricks-for-ml-use-cases/m-p/115170#M4018</guid>
      <dc:creator>Louis_Frolio</dc:creator>
      <dc:date>2025-04-10T14:32:24Z</dc:date>
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