Alternatives to Panoply logo

Alternatives to Panoply

Stitch, Snowflake, Segment, MySQL, and PostgreSQL are the most popular alternatives and competitors to Panoply.
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What is Panoply and what are its top alternatives?

Panoply is a cloud data platform that automates data management processes such as data integration, ETL, and data warehousing. It offers features like data transformation, schema management, scalable storage, and automatic indexing. However, some limitations of Panoply include its pricing based on data usage, limited customization options, and potential performance issues with very large datasets.

  1. Snowflake: Snowflake is a cloud data platform that allows users to store and analyze data with ease. It offers features like data warehousing, data lakes, and data sharing. Pros: Elastic scalability, easy to use, supports SQL queries. Cons: Cost may be high for large datasets.
  2. BigQuery: BigQuery is a fully-managed data warehouse by Google Cloud. It offers features like automatic data replication, SQL support, and machine learning integration. Pros: Serverless, highly scalable, integrated with Google Cloud Services. Cons: Pricing based on usage may be expensive for large datasets.
  3. Redshift: Amazon Redshift is a fast, scalable data warehouse in the cloud. It offers features like columnar storage, parallel processing, and advanced security. Pros: High performance, cost-effective, easy to automate. Cons: Requires knowledge of SQL, scaling can be complex.
  4. Databricks: Databricks is a unified analytics platform that integrates data science, engineering, and business processes. It offers features like collaborative workspace, machine learning models, and data visualization. Pros: Scalable, supports multiple programming languages, integrates with popular tools. Cons: Cost may be high, complex for beginners.
  5. Azure Synapse Analytics: Azure Synapse Analytics is a cloud-based analytics service that offers data integration, big data, and warehousing capabilities. Pros: Real-time analytics, AI integration, cost-effective. Cons: May have a learning curve, limited to Azure ecosystem.
  6. Mode Analytics: Mode Analytics is a collaborative analytics platform that combines SQL, Python, and R in one solution. It offers features like data visualization, report sharing, and SQL editor. Pros: Easy to use, supports multiple languages, interactive dashboards. Cons: Limited data storage, may not scale well with large datasets.
  7. Looker: Looker is a data platform that offers business intelligence and analytics solutions. It features data exploration, reporting, and dashboard creation. Pros: Data governance, customizable reports, integrates with various data sources. Cons: Steep learning curve, may require additional plugins for advanced features.
  8. Sisense: Sisense is a business intelligence software that provides end-to-end analytics solutions. It offers features like data connectors, data preparation, and data visualization. Pros: Easy integration, AI-powered analytics, good for non-technical users. Cons: May be expensive, limited data modeling capabilities.
  9. Yellowbrick Data: Yellowbrick Data is a hybrid cloud data warehouse that offers high-performance analytics. It features scalable architecture, real-time insights, and SQL support. Pros: Fast query processing, easy deployment, supports multiple data sources. Cons: Limited ecosystem integrations, may require specialized knowledge.
  10. dbt: dbt (data build tool) is an open-source analytics engineering platform that enables SQL-based data transformation. It features modular workflows, testing capabilities, and version control. Pros: Free and open-source, customizable, works well with data warehouses. Cons: Requires SQL knowledge, limited support compared to premium solutions.

Top Alternatives to Panoply

  • Stitch
    Stitch

    Stitch is a simple, powerful ETL service built for software developers. Stitch evolved out of RJMetrics, a widely used business intelligence platform. When RJMetrics was acquired by Magento in 2016, Stitch was launched as its own company. ...

  • Snowflake
    Snowflake

    Snowflake eliminates the administration and management demands of traditional data warehouses and big data platforms. Snowflake is a true data warehouse as a service running on Amazon Web Services (AWS)—no infrastructure to manage and no knobs to turn. ...

  • Segment
    Segment

    Segment is a single hub for customer data. Collect your data in one place, then send it to more than 100 third-party tools, internal systems, or Amazon Redshift with the flip of a switch. ...

  • MySQL
    MySQL

    The MySQL software delivers a very fast, multi-threaded, multi-user, and robust SQL (Structured Query Language) database server. MySQL Server is intended for mission-critical, heavy-load production systems as well as for embedding into mass-deployed software. ...

  • PostgreSQL
    PostgreSQL

    PostgreSQL is an advanced object-relational database management system that supports an extended subset of the SQL standard, including transactions, foreign keys, subqueries, triggers, user-defined types and functions. ...

  • MongoDB
    MongoDB

    MongoDB stores data in JSON-like documents that can vary in structure, offering a dynamic, flexible schema. MongoDB was also designed for high availability and scalability, with built-in replication and auto-sharding. ...

  • Redis
    Redis

    Redis is an open source (BSD licensed), in-memory data structure store, used as a database, cache, and message broker. Redis provides data structures such as strings, hashes, lists, sets, sorted sets with range queries, bitmaps, hyperloglogs, geospatial indexes, and streams. ...

  • Amazon S3
    Amazon S3

    Amazon Simple Storage Service provides a fully redundant data storage infrastructure for storing and retrieving any amount of data, at any time, from anywhere on the web ...

Panoply alternatives & related posts

Stitch logo

Stitch

149
150
12
All your data. In your data warehouse. In minutes.
149
150
+ 1
12
PROS OF STITCH
  • 8
    3 minutes to set up
  • 4
    Super simple, great support
CONS OF STITCH
    Be the first to leave a con

    related Stitch posts

    Ankit Sobti

    Looker , Stitch , Amazon Redshift , dbt

    We recently moved our Data Analytics and Business Intelligence tooling to Looker . It's already helping us create a solid process for reusable SQL-based data modeling, with consistent definitions across the entire organizations. Looker allows us to collaboratively build these version-controlled models and push the limits of what we've traditionally been able to accomplish with analytics with a lean team.

    For Data Engineering, we're in the process of moving from maintaining our own ETL pipelines on AWS to a managed ELT system on Stitch. We're also evaluating the command line tool, dbt to manage data transformations. Our hope is that Stitch + dbt will streamline the ELT bit, allowing us to focus our energies on analyzing data, rather than managing it.

    See more
    Cyril Duchon-Doris

    Hello, For security and strategic reasons, we are migrating our apps from AWS/Google to a cloud provider with more security certifications and fewer functionalities, named Outscale. So far we have been using Google BigQuery as our data warehouse with ELT workflows (using Stitch and dbt ) and we need to migrate our data ecosystem to this new cloud provider.

    We are setting up a Kubernetes cluster in our new cloud provider for our apps. Regarding the data warehouse, it's not clear if there are advantages/inconvenients about setting it up on kubernetes (apart from having to create node groups and tolerations with more ram/cpu). Also, we are not sure what's the best Open source or on-premise tool to use. The main requirement is that data must remain in the secure cluster, and no external entity (especially US) can have access to it. We have a dev cluster/environment and a production cluster/environment on this cloud.

    Regarding the actual DWH usage - Today we have ~1.5TB in BigQuery in production. We're going to run our initial rests with ~50-100GB of data for our test cluster - Most of our data comes from other databases, so in most cases, we already have replicated sources somewhere, and there are only a handful of collections whose source is directly in the DWH (such as snapshots, some external data we've fetched at some point, google analytics, etc) and needs appropriate level of replication - We are a team of 30-ish people, we do not have critical needs regarding analytics speed, and we do not need real time. We rebuild our DBT models 2-3 times a day and this usually proves enough

    Apart from postgreSQL, I haven't really found open-source or on-premise alternatives for setting up a data warehouse, and running transformations with DBT. There is also the question of data ingestion, I've selected Airbyte and @meltano and I have troubles understanding if one of the 2 is better but Airbytes seems to have a bigger community.

    What do you suggest regarding the data warehouse, and the ELT workflows ? - Kubernetes or not kubernetes ? - Postgresql or something else ? if postgre, what are the important configs you'd have in mind ? - Airbyte/DBT or something else.

    See more
    Snowflake logo

    Snowflake

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    The data warehouse built for the cloud
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    PROS OF SNOWFLAKE
    • 7
      Public and Private Data Sharing
    • 4
      Multicloud
    • 4
      Good Performance
    • 4
      User Friendly
    • 3
      Great Documentation
    • 2
      Serverless
    • 1
      Economical
    • 1
      Usage based billing
    • 1
      Innovative
    CONS OF SNOWFLAKE
      Be the first to leave a con

      related Snowflake posts

      I'm wondering if any Cloud Firestore users might be open to sharing some input and challenges encountered when trying to create a low-cost, low-latency data pipeline to their Analytics warehouse (e.g. Google BigQuery, Snowflake, etc...)

      I'm working with a platform by the name of Estuary.dev, an ETL/ELT and we are conducting some research on the pain points here to see if there are drawbacks of the Firestore->BQ extension and/or if users are seeking easy ways for getting nosql->fine-grained tabular data

      Please feel free to drop some knowledge/wish list stuff on me for a better pipeline here!

      See more
      Shared insights
      on
      Google BigQueryGoogle BigQuerySnowflakeSnowflake

      I use Google BigQuery because it makes is super easy to query and store data for analytics workloads. If you're using GCP, you're likely using BigQuery. However, running data viz tools directly connected to BigQuery will run pretty slow. They recently announced BI Engine which will hopefully compete well against big players like Snowflake when it comes to concurrency.

      What's nice too is that it has SQL-based ML tools, and it has great GIS support!

      See more
      Segment logo

      Segment

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      A single hub to collect, translate and send your data with the flip of a switch.
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      PROS OF SEGMENT
      • 86
        Easy to scale and maintain 3rd party services
      • 49
        One API
      • 39
        Simple
      • 25
        Multiple integrations
      • 19
        Cleanest API
      • 10
        Easy
      • 9
        Free
      • 8
        Mixpanel Integration
      • 7
        Segment SQL
      • 6
        Flexible
      • 4
        Google Analytics Integration
      • 2
        Salesforce Integration
      • 2
        SQL Access
      • 2
        Clean Integration with Application
      • 1
        Own all your tracking data
      • 1
        Quick setup
      • 1
        Clearbit integration
      • 1
        Beautiful UI
      • 1
        Integrates with Apptimize
      • 1
        Escort
      • 1
        Woopra Integration
      CONS OF SEGMENT
      • 2
        Not clear which events/options are integration-specific
      • 1
        Limitations with integration-specific configurations
      • 1
        Client-side events are separated from server-side

      related Segment posts

      Julien DeFrance
      Principal Software Engineer at Tophatter · | 16 upvotes · 3.2M views

      Back in 2014, I was given an opportunity to re-architect SmartZip Analytics platform, and flagship product: SmartTargeting. This is a SaaS software helping real estate professionals keeping up with their prospects and leads in a given neighborhood/territory, finding out (thanks to predictive analytics) who's the most likely to list/sell their home, and running cross-channel marketing automation against them: direct mail, online ads, email... The company also does provide Data APIs to Enterprise customers.

      I had inherited years and years of technical debt and I knew things had to change radically. The first enabler to this was to make use of the cloud and go with AWS, so we would stop re-inventing the wheel, and build around managed/scalable services.

      For the SaaS product, we kept on working with Rails as this was what my team had the most knowledge in. We've however broken up the monolith and decoupled the front-end application from the backend thanks to the use of Rails API so we'd get independently scalable micro-services from now on.

      Our various applications could now be deployed using AWS Elastic Beanstalk so we wouldn't waste any more efforts writing time-consuming Capistrano deployment scripts for instance. Combined with Docker so our application would run within its own container, independently from the underlying host configuration.

      Storage-wise, we went with Amazon S3 and ditched any pre-existing local or network storage people used to deal with in our legacy systems. On the database side: Amazon RDS / MySQL initially. Ultimately migrated to Amazon RDS for Aurora / MySQL when it got released. Once again, here you need a managed service your cloud provider handles for you.

      Future improvements / technology decisions included:

      Caching: Amazon ElastiCache / Memcached CDN: Amazon CloudFront Systems Integration: Segment / Zapier Data-warehousing: Amazon Redshift BI: Amazon Quicksight / Superset Search: Elasticsearch / Amazon Elasticsearch Service / Algolia Monitoring: New Relic

      As our usage grows, patterns changed, and/or our business needs evolved, my role as Engineering Manager then Director of Engineering was also to ensure my team kept on learning and innovating, while delivering on business value.

      One of these innovations was to get ourselves into Serverless : Adopting AWS Lambda was a big step forward. At the time, only available for Node.js (Not Ruby ) but a great way to handle cost efficiency, unpredictable traffic, sudden bursts of traffic... Ultimately you want the whole chain of services involved in a call to be serverless, and that's when we've started leveraging Amazon DynamoDB on these projects so they'd be fully scalable.

      See more
      Robert Zuber

      Our primary source of monitoring and alerting is Datadog. We’ve got prebuilt dashboards for every scenario and integration with PagerDuty to manage routing any alerts. We’ve definitely scaled past the point where managing dashboards is easy, but we haven’t had time to invest in using features like Anomaly Detection. We’ve started using Honeycomb for some targeted debugging of complex production issues and we are liking what we’ve seen. We capture any unhandled exceptions with Rollbar and, if we realize one will keep happening, we quickly convert the metrics to point back to Datadog, to keep Rollbar as clean as possible.

      We use Segment to consolidate all of our trackers, the most important of which goes to Amplitude to analyze user patterns. However, if we need a more consolidated view, we push all of our data to our own data warehouse running PostgreSQL; this is available for analytics and dashboard creation through Looker.

      See more
      MySQL logo

      MySQL

      125.3K
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      The world's most popular open source database
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      PROS OF MYSQL
      • 800
        Sql
      • 679
        Free
      • 562
        Easy
      • 528
        Widely used
      • 490
        Open source
      • 180
        High availability
      • 160
        Cross-platform support
      • 104
        Great community
      • 79
        Secure
      • 75
        Full-text indexing and searching
      • 26
        Fast, open, available
      • 16
        Reliable
      • 16
        SSL support
      • 15
        Robust
      • 9
        Enterprise Version
      • 7
        Easy to set up on all platforms
      • 3
        NoSQL access to JSON data type
      • 1
        Relational database
      • 1
        Easy, light, scalable
      • 1
        Sequel Pro (best SQL GUI)
      • 1
        Replica Support
      CONS OF MYSQL
      • 16
        Owned by a company with their own agenda
      • 3
        Can't roll back schema changes

      related MySQL posts

      Nick Rockwell
      SVP, Engineering at Fastly · | 46 upvotes · 4.1M views

      When I joined NYT there was already broad dissatisfaction with the LAMP (Linux Apache HTTP Server MySQL PHP) Stack and the front end framework, in particular. So, I wasn't passing judgment on it. I mean, LAMP's fine, you can do good work in LAMP. It's a little dated at this point, but it's not ... I didn't want to rip it out for its own sake, but everyone else was like, "We don't like this, it's really inflexible." And I remember from being outside the company when that was called MIT FIVE when it had launched. And been observing it from the outside, and I was like, you guys took so long to do that and you did it so carefully, and yet you're not happy with your decisions. Why is that? That was more the impetus. If we're going to do this again, how are we going to do it in a way that we're gonna get a better result?

      So we're moving quickly away from LAMP, I would say. So, right now, the new front end is React based and using Apollo. And we've been in a long, protracted, gradual rollout of the core experiences.

      React is now talking to GraphQL as a primary API. There's a Node.js back end, to the front end, which is mainly for server-side rendering, as well.

      Behind there, the main repository for the GraphQL server is a big table repository, that we call Bodega because it's a convenience store. And that reads off of a Kafka pipeline.

      See more
      Tim Abbott

      We've been using PostgreSQL since the very early days of Zulip, but we actually didn't use it from the beginning. Zulip started out as a MySQL project back in 2012, because we'd heard it was a good choice for a startup with a wide community. However, we found that even though we were using the Django ORM for most of our database access, we spent a lot of time fighting with MySQL. Issues ranged from bad collation defaults, to bad query plans which required a lot of manual query tweaks.

      We ended up getting so frustrated that we tried out PostgresQL, and the results were fantastic. We didn't have to do any real customization (just some tuning settings for how big a server we had), and all of our most important queries were faster out of the box. As a result, we were able to delete a bunch of custom queries escaping the ORM that we'd written to make the MySQL query planner happy (because postgres just did the right thing automatically).

      And then after that, we've just gotten a ton of value out of postgres. We use its excellent built-in full-text search, which has helped us avoid needing to bring in a tool like Elasticsearch, and we've really enjoyed features like its partial indexes, which saved us a lot of work adding unnecessary extra tables to get good performance for things like our "unread messages" and "starred messages" indexes.

      I can't recommend it highly enough.

      See more
      PostgreSQL logo

      PostgreSQL

      98.2K
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      PROS OF POSTGRESQL
      • 763
        Relational database
      • 510
        High availability
      • 439
        Enterprise class database
      • 383
        Sql
      • 304
        Sql + nosql
      • 173
        Great community
      • 147
        Easy to setup
      • 131
        Heroku
      • 130
        Secure by default
      • 113
        Postgis
      • 50
        Supports Key-Value
      • 48
        Great JSON support
      • 34
        Cross platform
      • 33
        Extensible
      • 28
        Replication
      • 26
        Triggers
      • 23
        Multiversion concurrency control
      • 23
        Rollback
      • 21
        Open source
      • 18
        Heroku Add-on
      • 17
        Stable, Simple and Good Performance
      • 15
        Powerful
      • 13
        Lets be serious, what other SQL DB would you go for?
      • 11
        Good documentation
      • 9
        Scalable
      • 8
        Free
      • 8
        Reliable
      • 8
        Intelligent optimizer
      • 7
        Transactional DDL
      • 7
        Modern
      • 6
        One stop solution for all things sql no matter the os
      • 5
        Relational database with MVCC
      • 5
        Faster Development
      • 4
        Full-Text Search
      • 4
        Developer friendly
      • 3
        Excellent source code
      • 3
        Free version
      • 3
        Great DB for Transactional system or Application
      • 3
        Relational datanbase
      • 3
        search
      • 3
        Open-source
      • 2
        Text
      • 2
        Full-text
      • 1
        Can handle up to petabytes worth of size
      • 1
        Composability
      • 1
        Multiple procedural languages supported
      • 0
        Native
      CONS OF POSTGRESQL
      • 10
        Table/index bloatings

      related PostgreSQL posts

      Simon Reymann
      Senior Fullstack Developer at QUANTUSflow Software GmbH · | 30 upvotes · 11.2M views

      Our whole DevOps stack consists of the following tools:

      • GitHub (incl. GitHub Pages/Markdown for Documentation, GettingStarted and HowTo's) for collaborative review and code management tool
      • Respectively Git as revision control system
      • SourceTree as Git GUI
      • Visual Studio Code as IDE
      • CircleCI for continuous integration (automatize development process)
      • Prettier / TSLint / ESLint as code linter
      • SonarQube as quality gate
      • Docker as container management (incl. Docker Compose for multi-container application management)
      • VirtualBox for operating system simulation tests
      • Kubernetes as cluster management for docker containers
      • Heroku for deploying in test environments
      • nginx as web server (preferably used as facade server in production environment)
      • SSLMate (using OpenSSL) for certificate management
      • Amazon EC2 (incl. Amazon S3) for deploying in stage (production-like) and production environments
      • PostgreSQL as preferred database system
      • Redis as preferred in-memory database/store (great for caching)

      The main reason we have chosen Kubernetes over Docker Swarm is related to the following artifacts:

      • Key features: Easy and flexible installation, Clear dashboard, Great scaling operations, Monitoring is an integral part, Great load balancing concepts, Monitors the condition and ensures compensation in the event of failure.
      • Applications: An application can be deployed using a combination of pods, deployments, and services (or micro-services).
      • Functionality: Kubernetes as a complex installation and setup process, but it not as limited as Docker Swarm.
      • Monitoring: It supports multiple versions of logging and monitoring when the services are deployed within the cluster (Elasticsearch/Kibana (ELK), Heapster/Grafana, Sysdig cloud integration).
      • Scalability: All-in-one framework for distributed systems.
      • Other Benefits: Kubernetes is backed by the Cloud Native Computing Foundation (CNCF), huge community among container orchestration tools, it is an open source and modular tool that works with any OS.
      See more
      Jeyabalaji Subramanian

      Recently we were looking at a few robust and cost-effective ways of replicating the data that resides in our production MongoDB to a PostgreSQL database for data warehousing and business intelligence.

      We set ourselves the following criteria for the optimal tool that would do this job: - The data replication must be near real-time, yet it should NOT impact the production database - The data replication must be horizontally scalable (based on the load), asynchronous & crash-resilient

      Based on the above criteria, we selected the following tools to perform the end to end data replication:

      We chose MongoDB Stitch for picking up the changes in the source database. It is the serverless platform from MongoDB. One of the services offered by MongoDB Stitch is Stitch Triggers. Using stitch triggers, you can execute a serverless function (in Node.js) in real time in response to changes in the database. When there are a lot of database changes, Stitch automatically "feeds forward" these changes through an asynchronous queue.

      We chose Amazon SQS as the pipe / message backbone for communicating the changes from MongoDB to our own replication service. Interestingly enough, MongoDB stitch offers integration with AWS services.

      In the Node.js function, we wrote minimal functionality to communicate the database changes (insert / update / delete / replace) to Amazon SQS.

      Next we wrote a minimal micro-service in Python to listen to the message events on SQS, pickup the data payload & mirror the DB changes on to the target Data warehouse. We implemented source data to target data translation by modelling target table structures through SQLAlchemy . We deployed this micro-service as AWS Lambda with Zappa. With Zappa, deploying your services as event-driven & horizontally scalable Lambda service is dumb-easy.

      In the end, we got to implement a highly scalable near realtime Change Data Replication service that "works" and deployed to production in a matter of few days!

      See more
      MongoDB logo

      MongoDB

      93.5K
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      The database for giant ideas
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      PROS OF MONGODB
      • 828
        Document-oriented storage
      • 593
        No sql
      • 553
        Ease of use
      • 464
        Fast
      • 410
        High performance
      • 255
        Free
      • 218
        Open source
      • 180
        Flexible
      • 145
        Replication & high availability
      • 112
        Easy to maintain
      • 42
        Querying
      • 39
        Easy scalability
      • 38
        Auto-sharding
      • 37
        High availability
      • 31
        Map/reduce
      • 27
        Document database
      • 25
        Easy setup
      • 25
        Full index support
      • 16
        Reliable
      • 15
        Fast in-place updates
      • 14
        Agile programming, flexible, fast
      • 12
        No database migrations
      • 8
        Easy integration with Node.Js
      • 8
        Enterprise
      • 6
        Enterprise Support
      • 5
        Great NoSQL DB
      • 4
        Support for many languages through different drivers
      • 3
        Schemaless
      • 3
        Aggregation Framework
      • 3
        Drivers support is good
      • 2
        Fast
      • 2
        Managed service
      • 2
        Easy to Scale
      • 2
        Awesome
      • 2
        Consistent
      • 1
        Good GUI
      • 1
        Acid Compliant
      CONS OF MONGODB
      • 6
        Very slowly for connected models that require joins
      • 3
        Not acid compliant
      • 2
        Proprietary query language

      related MongoDB posts

      Jeyabalaji Subramanian

      Recently we were looking at a few robust and cost-effective ways of replicating the data that resides in our production MongoDB to a PostgreSQL database for data warehousing and business intelligence.

      We set ourselves the following criteria for the optimal tool that would do this job: - The data replication must be near real-time, yet it should NOT impact the production database - The data replication must be horizontally scalable (based on the load), asynchronous & crash-resilient

      Based on the above criteria, we selected the following tools to perform the end to end data replication:

      We chose MongoDB Stitch for picking up the changes in the source database. It is the serverless platform from MongoDB. One of the services offered by MongoDB Stitch is Stitch Triggers. Using stitch triggers, you can execute a serverless function (in Node.js) in real time in response to changes in the database. When there are a lot of database changes, Stitch automatically "feeds forward" these changes through an asynchronous queue.

      We chose Amazon SQS as the pipe / message backbone for communicating the changes from MongoDB to our own replication service. Interestingly enough, MongoDB stitch offers integration with AWS services.

      In the Node.js function, we wrote minimal functionality to communicate the database changes (insert / update / delete / replace) to Amazon SQS.

      Next we wrote a minimal micro-service in Python to listen to the message events on SQS, pickup the data payload & mirror the DB changes on to the target Data warehouse. We implemented source data to target data translation by modelling target table structures through SQLAlchemy . We deployed this micro-service as AWS Lambda with Zappa. With Zappa, deploying your services as event-driven & horizontally scalable Lambda service is dumb-easy.

      In the end, we got to implement a highly scalable near realtime Change Data Replication service that "works" and deployed to production in a matter of few days!

      See more
      Robert Zuber

      We use MongoDB as our primary #datastore. Mongo's approach to replica sets enables some fantastic patterns for operations like maintenance, backups, and #ETL.

      As we pull #microservices from our #monolith, we are taking the opportunity to build them with their own datastores using PostgreSQL. We also use Redis to cache data we’d never store permanently, and to rate-limit our requests to partners’ APIs (like GitHub).

      When we’re dealing with large blobs of immutable data (logs, artifacts, and test results), we store them in Amazon S3. We handle any side-effects of S3’s eventual consistency model within our own code. This ensures that we deal with user requests correctly while writes are in process.

      See more
      Redis logo

      Redis

      59.4K
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      Open source (BSD licensed), in-memory data structure store
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      PROS OF REDIS
      • 886
        Performance
      • 542
        Super fast
      • 513
        Ease of use
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        In-memory cache
      • 324
        Advanced key-value cache
      • 194
        Open source
      • 182
        Easy to deploy
      • 164
        Stable
      • 155
        Free
      • 121
        Fast
      • 42
        High-Performance
      • 40
        High Availability
      • 35
        Data Structures
      • 32
        Very Scalable
      • 24
        Replication
      • 22
        Great community
      • 22
        Pub/Sub
      • 19
        "NoSQL" key-value data store
      • 16
        Hashes
      • 13
        Sets
      • 11
        Sorted Sets
      • 10
        NoSQL
      • 10
        Lists
      • 9
        Async replication
      • 9
        BSD licensed
      • 8
        Bitmaps
      • 8
        Integrates super easy with Sidekiq for Rails background
      • 7
        Keys with a limited time-to-live
      • 7
        Open Source
      • 6
        Lua scripting
      • 6
        Strings
      • 5
        Awesomeness for Free
      • 5
        Hyperloglogs
      • 4
        Transactions
      • 4
        Outstanding performance
      • 4
        Runs server side LUA
      • 4
        LRU eviction of keys
      • 4
        Feature Rich
      • 4
        Written in ANSI C
      • 4
        Networked
      • 3
        Data structure server
      • 3
        Performance & ease of use
      • 2
        Dont save data if no subscribers are found
      • 2
        Automatic failover
      • 2
        Easy to use
      • 2
        Temporarily kept on disk
      • 2
        Scalable
      • 2
        Existing Laravel Integration
      • 2
        Channels concept
      • 2
        Object [key/value] size each 500 MB
      • 2
        Simple
      CONS OF REDIS
      • 15
        Cannot query objects directly
      • 3
        No secondary indexes for non-numeric data types
      • 1
        No WAL

      related Redis posts

      Russel Werner
      Lead Engineer at StackShare · | 32 upvotes · 2.8M views

      StackShare Feed is built entirely with React, Glamorous, and Apollo. One of our objectives with the public launch of the Feed was to enable a Server-side rendered (SSR) experience for our organic search traffic. When you visit the StackShare Feed, and you aren't logged in, you are delivered the Trending feed experience. We use an in-house Node.js rendering microservice to generate this HTML. This microservice needs to run and serve requests independent of our Rails web app. Up until recently, we had a mono-repo with our Rails and React code living happily together and all served from the same web process. In order to deploy our SSR app into a Heroku environment, we needed to split out our front-end application into a separate repo in GitHub. The driving factor in this decision was mostly due to limitations imposed by Heroku specifically with how processes can't communicate with each other. A new SSR app was created in Heroku and linked directly to the frontend repo so it stays in-sync with changes.

      Related to this, we need a way to "deploy" our frontend changes to various server environments without building & releasing the entire Ruby application. We built a hybrid Amazon S3 Amazon CloudFront solution to host our Webpack bundles. A new CircleCI script builds the bundles and uploads them to S3. The final step in our rollout is to update some keys in Redis so our Rails app knows which bundles to serve. The result of these efforts were significant. Our frontend team now moves independently of our backend team, our build & release process takes only a few minutes, we are now using an edge CDN to serve JS assets, and we have pre-rendered React pages!

      #StackDecisionsLaunch #SSR #Microservices #FrontEndRepoSplit

      See more
      Simon Reymann
      Senior Fullstack Developer at QUANTUSflow Software GmbH · | 30 upvotes · 11.2M views

      Our whole DevOps stack consists of the following tools:

      • GitHub (incl. GitHub Pages/Markdown for Documentation, GettingStarted and HowTo's) for collaborative review and code management tool
      • Respectively Git as revision control system
      • SourceTree as Git GUI
      • Visual Studio Code as IDE
      • CircleCI for continuous integration (automatize development process)
      • Prettier / TSLint / ESLint as code linter
      • SonarQube as quality gate
      • Docker as container management (incl. Docker Compose for multi-container application management)
      • VirtualBox for operating system simulation tests
      • Kubernetes as cluster management for docker containers
      • Heroku for deploying in test environments
      • nginx as web server (preferably used as facade server in production environment)
      • SSLMate (using OpenSSL) for certificate management
      • Amazon EC2 (incl. Amazon S3) for deploying in stage (production-like) and production environments
      • PostgreSQL as preferred database system
      • Redis as preferred in-memory database/store (great for caching)

      The main reason we have chosen Kubernetes over Docker Swarm is related to the following artifacts:

      • Key features: Easy and flexible installation, Clear dashboard, Great scaling operations, Monitoring is an integral part, Great load balancing concepts, Monitors the condition and ensures compensation in the event of failure.
      • Applications: An application can be deployed using a combination of pods, deployments, and services (or micro-services).
      • Functionality: Kubernetes as a complex installation and setup process, but it not as limited as Docker Swarm.
      • Monitoring: It supports multiple versions of logging and monitoring when the services are deployed within the cluster (Elasticsearch/Kibana (ELK), Heapster/Grafana, Sysdig cloud integration).
      • Scalability: All-in-one framework for distributed systems.
      • Other Benefits: Kubernetes is backed by the Cloud Native Computing Foundation (CNCF), huge community among container orchestration tools, it is an open source and modular tool that works with any OS.
      See more
      Amazon S3 logo

      Amazon S3

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      Store and retrieve any amount of data, at any time, from anywhere on the web
      53.2K
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      PROS OF AMAZON S3
      • 590
        Reliable
      • 492
        Scalable
      • 456
        Cheap
      • 329
        Simple & easy
      • 83
        Many sdks
      • 30
        Logical
      • 13
        Easy Setup
      • 11
        REST API
      • 11
        1000+ POPs
      • 6
        Secure
      • 4
        Easy
      • 4
        Plug and play
      • 3
        Web UI for uploading files
      • 2
        Faster on response
      • 2
        Flexible
      • 2
        GDPR ready
      • 1
        Easy to use
      • 1
        Plug-gable
      • 1
        Easy integration with CloudFront
      CONS OF AMAZON S3
      • 7
        Permissions take some time to get right
      • 6
        Requires a credit card
      • 6
        Takes time/work to organize buckets & folders properly
      • 3
        Complex to set up

      related Amazon S3 posts

      Ashish Singh
      Tech Lead, Big Data Platform at Pinterest · | 38 upvotes · 3.3M views

      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

      See more
      Russel Werner
      Lead Engineer at StackShare · | 32 upvotes · 2.8M views

      StackShare Feed is built entirely with React, Glamorous, and Apollo. One of our objectives with the public launch of the Feed was to enable a Server-side rendered (SSR) experience for our organic search traffic. When you visit the StackShare Feed, and you aren't logged in, you are delivered the Trending feed experience. We use an in-house Node.js rendering microservice to generate this HTML. This microservice needs to run and serve requests independent of our Rails web app. Up until recently, we had a mono-repo with our Rails and React code living happily together and all served from the same web process. In order to deploy our SSR app into a Heroku environment, we needed to split out our front-end application into a separate repo in GitHub. The driving factor in this decision was mostly due to limitations imposed by Heroku specifically with how processes can't communicate with each other. A new SSR app was created in Heroku and linked directly to the frontend repo so it stays in-sync with changes.

      Related to this, we need a way to "deploy" our frontend changes to various server environments without building & releasing the entire Ruby application. We built a hybrid Amazon S3 Amazon CloudFront solution to host our Webpack bundles. A new CircleCI script builds the bundles and uploads them to S3. The final step in our rollout is to update some keys in Redis so our Rails app knows which bundles to serve. The result of these efforts were significant. Our frontend team now moves independently of our backend team, our build & release process takes only a few minutes, we are now using an edge CDN to serve JS assets, and we have pre-rendered React pages!

      #StackDecisionsLaunch #SSR #Microservices #FrontEndRepoSplit

      See more