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  1. Stackups
  2. Application & Data
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  4. Big Data Tools
  5. AtScale vs Presto

AtScale vs Presto

OverviewDecisionsComparisonAlternatives

Overview

Presto
Presto
Stacks394
Followers1.0K
Votes66
AtScale
AtScale
Stacks25
Followers83
Votes0

AtScale vs Presto: What are the differences?

<Write Introduction here> 

1. **SQL Engines**:
AtScale provides a virtual data layer that allows users to query data from multiple sources, including Hadoop, cloud storage, and data warehouses, using SQL engines like Presto, Spark SQL, and Hive. In contrast, Presto is a distributed SQL query engine that is specifically designed for low-latency interactive queries. 

2. **Multi-Dimensional Model**:
AtScale supports multi-dimensional models, such as cubes and hierarchies, which are optimized for analytical processing and data visualization. Presto, on the other hand, does not natively support multi-dimensional models and is more suitable for ad-hoc SQL queries on large data sets.

3. **Data Virtualization**:
AtScale offers data virtualization capabilities that allow users to access and query data without the need to move or duplicate it. Presto, on the other hand, requires data to be physically stored in a compatible format for processing, making it more suitable for real-time analytics on big data.

4. **Scale-Out Architecture**:
AtScale leverages a scale-out architecture to handle large volumes of data and concurrent user queries efficiently. Presto is also designed with a scale-out architecture but focuses more on performance optimization for interactive queries rather than scalability for big data processing.

5. **Query Optimization**:
AtScale includes query optimization features that can accelerate query performance by pushing down queries to the data source and aggregating results before presenting them to the user. Presto, although optimized for interactive queries, may require manual query tuning to achieve optimal performance in certain use cases.

6. **Security and Governance**:
AtScale provides advanced security and governance features, such as role-based access control and data lineage tracking, to ensure data protection and compliance. Presto supports basic security mechanisms but may require additional tools or configurations for achieving comprehensive governance and compliance requirements.

In Summary, AtScale and Presto differ in their support for multi-dimensional models, data virtualization, scale-out architecture, query optimization, and security/governance features.

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Advice on Presto, AtScale

Ashish
Ashish

Tech Lead, Big Data Platform at Pinterest

Nov 27, 2019

Needs adviceonApache HiveApache HivePrestoPrestoAmazon EC2Amazon EC2

To provide employees with the critical need of interactive querying, we’ve worked with Presto, an open-source distributed SQL query engine, over the years. Operating Presto at Pinterest’s scale has involved resolving quite a few challenges like, supporting deeply nested and huge thrift schemas, slow/ bad worker detection and remediation, auto-scaling cluster, graceful cluster shutdown and impersonation support for ldap authenticator.

Our infrastructure is built on top of Amazon EC2 and we leverage Amazon S3 for storing our data. This separates compute and storage layers, and allows multiple compute clusters to share the S3 data.

We have hundreds of petabytes of data and tens of thousands of Apache Hive tables. Our Presto clusters are comprised of a fleet of 450 r4.8xl EC2 instances. Presto clusters together have over 100 TBs of memory and 14K vcpu cores. Within Pinterest, we have close to more than 1,000 monthly active users (out of total 1,600+ Pinterest employees) using Presto, who run about 400K queries on these clusters per month.

Each query submitted to Presto cluster is logged to a Kafka topic via Singer. Singer is a logging agent built at Pinterest and we talked about it in a previous post. Each query is logged when it is submitted and when it finishes. When a Presto cluster crashes, we will have query submitted events without corresponding query finished events. These events enable us to capture the effect of cluster crashes over time.

Each Presto cluster at Pinterest has workers on a mix of dedicated AWS EC2 instances and Kubernetes pods. Kubernetes platform provides us with the capability to add and remove workers from a Presto cluster very quickly. The best-case latency on bringing up a new worker on Kubernetes is less than a minute. However, when the Kubernetes cluster itself is out of resources and needs to scale up, it can take up to ten minutes. Some other advantages of deploying on Kubernetes platform is that our Presto deployment becomes agnostic of cloud vendor, instance types, OS, etc.

#BigData #AWS #DataScience #DataEngineering

3.72M views3.72M
Comments
Karthik
Karthik

CPO at Cantiz

Nov 5, 2019

Decided

The platform deals with time series data from sensors aggregated against things( event data that originates at periodic intervals). We use Cassandra as our distributed database to store time series data. Aggregated data insights from Cassandra is delivered as web API for consumption from other applications. Presto as a distributed sql querying engine, can provide a faster execution time provided the queries are tuned for proper distribution across the cluster. Another objective that we had was to combine Cassandra table data with other business data from RDBMS or other big data systems where presto through its connector architecture would have opened up a whole lot of options for us.

225k views225k
Comments

Detailed Comparison

Presto
Presto
AtScale
AtScale

Distributed SQL Query Engine for Big Data

Its Virtual Data Warehouse delivers performance, security and agility to exceed the demands of modern-day operational analytics.

-
Multiple SQL-on-Hadoop Engine Support; Access Data Where it Lays; Built-in Support for Complex Data Types; Single Drop-in Gateway Node Deployment
Statistics
Stacks
394
Stacks
25
Followers
1.0K
Followers
83
Votes
66
Votes
0
Pros & Cons
Pros
  • 18
    Works directly on files in s3 (no ETL)
  • 13
    Open-source
  • 12
    Join multiple databases
  • 10
    Scalable
  • 7
    Gets ready in minutes
No community feedback yet
Integrations
PostgreSQL
PostgreSQL
Kafka
Kafka
Redis
Redis
MySQL
MySQL
Hadoop
Hadoop
Microsoft SQL Server
Microsoft SQL Server
Python
Python
Amazon S3
Amazon S3
Tableau
Tableau
Power BI
Power BI
Qlik Sense
Qlik Sense
Azure Database for PostgreSQL
Azure Database for PostgreSQL

What are some alternatives to Presto, AtScale?

Metabase

Metabase

It is an easy way to generate charts and dashboards, ask simple ad hoc queries without using SQL, and see detailed information about rows in your Database. You can set it up in under 5 minutes, and then give yourself and others a place to ask simple questions and understand the data your application is generating.

Apache Spark

Apache Spark

Spark is a fast and general processing engine compatible with Hadoop data. It can run in Hadoop clusters through YARN or Spark's standalone mode, and it can process data in HDFS, HBase, Cassandra, Hive, and any Hadoop InputFormat. It is designed to perform both batch processing (similar to MapReduce) and new workloads like streaming, interactive queries, and machine learning.

Amazon Athena

Amazon Athena

Amazon Athena is an interactive query service that makes it easy to analyze data in Amazon S3 using standard SQL. Athena is serverless, so there is no infrastructure to manage, and you pay only for the queries that you run.

Superset

Superset

Superset's main goal is to make it easy to slice, dice and visualize data. It empowers users to perform analytics at the speed of thought.

Apache Flink

Apache Flink

Apache Flink is an open source system for fast and versatile data analytics in clusters. Flink supports batch and streaming analytics, in one system. Analytical programs can be written in concise and elegant APIs in Java and Scala.

lakeFS

lakeFS

It is an open-source data version control system for data lakes. It provides a “Git for data” platform enabling you to implement best practices from software engineering on your data lake, including branching and merging, CI/CD, and production-like dev/test environments.

Druid

Druid

Druid is a distributed, column-oriented, real-time analytics data store that is commonly used to power exploratory dashboards in multi-tenant environments. Druid excels as a data warehousing solution for fast aggregate queries on petabyte sized data sets. Druid supports a variety of flexible filters, exact calculations, approximate algorithms, and other useful calculations.

Cube

Cube

Cube: the universal semantic layer that makes it easy to connect BI silos, embed analytics, and power your data apps and AI with context.

Power BI

Power BI

It aims to provide interactive visualizations and business intelligence capabilities with an interface simple enough for end users to create their own reports and dashboards.

Apache Kylin

Apache Kylin

Apache Kylin™ is an open source Distributed Analytics Engine designed to provide SQL interface and multi-dimensional analysis (OLAP) on Hadoop/Spark supporting extremely large datasets, originally contributed from eBay Inc.

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