Estuary

Meltano VS Talend

Read this detailed 2024 comparison of Meltano vs Talend. Understand their key differences, core features, and pricing to choose the right platform for your data integration needs.

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Comparison between Meltano and Talend
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Introduction

Do you need to load a cloud data warehouse? Synchronize data in real-time across apps or databases? Support real-time analytics? Use generative AI?

This guide is designed to help you compare Meltano vs Talend across nearly 40 criteria for these use cases and more, and choose the best option for you based on your current and future needs.

Comparison Matrix: Meltano vs Talend vs Estuary Flow

Meltano logo
Meltano
Talend logo
Talend
Estuary Flow logo
Estuary Flow
Use cases
Database replication (CDC) - sourcesMeltanoMariaDB, MySQL, Oracle, Postgres, SQL Server (Airbyte) Batch only.TalendDB2 (i Series), MariaDB, MySQL, Oracle, Postgres, Progress, SQL Server, Sybase, (Custom)Estuary FlowMySQL, SQL Server, Postgres, AlloyDB, MariaDB, MongoDB, Firestore, Salesforce, ETL and ELT, realtime and batch
Replication to ODSMeltano

Batch pipelines only.

Talend
Estuary Flow

Requires re-extraction of sources for new destinations

Op. data integrationMeltano

Batch pipelines only.

Talend

(but limited real-time scale)

Estuary Flow

Real-time ETL data flows ready for operational use cases.

Data migrationMeltano

Has issues with large scale data and doesn't support continuous streaming replication

Talend
Estuary Flow

Great schema inference and evolution support.

Support for most relational databases.

Continuous replication reliability.

Stream processingMeltano
Talend
Estuary Flow

Real-time ETL in Typescript and SQL

Operational AnalyticsMeltano

Only Batch ELT

Talend
Estuary Flow

Integration with real-time analytics tools.

Real-time transformations in Typescript and SQL.

Kafka compatibility.

AI PipelinesMeltano

Not ideal.

Supports Pinecone destination (batch ELT only)

Talend

(OpenAI component)

Estuary Flow

Pinecone support for real-time data vectorization.

Transformations can call ChatGPT & other AI APIs.

Connectors
Number of connectorsMeltano200+ Singer tap connectorsTalend50+ managed connectors 1000 connections (API based)Estuary Flow150+ high performance connectors built by Estuary
Streaming connectorsMeltanoBatch CDC, Batch Kafka source, Batch Kinesis destinationTalendYes. CDC, Kafka, Kinesis, Azure Storage Queue, PubSub, RabbitMQ, AMQP, JMS, MQTTEstuary FlowCDC, Kafka, Kinesis, Pub/Sub
Support for 3rd party connectorsMeltano

Higher latency batch ELT only.

Talend
Estuary Flow

Support for 500+ Airbyte, Stitch, and Meltano connectors.

Custom SDKMeltano

Great SDK for connector development.

Talend

Talend Component Kit

Estuary Flow

SDK for source and destination connector development.

API (for admin)Meltano

None.

Talend
Estuary Flow

API and CLI support

Core features
Batch and streamingMeltanoBatch onlyTalendStreaming and batch supportEstuary FlowBatch and streaming
Delivery guaranteeMeltanoAt least once (Singer-based)TalendExactly once.Estuary FlowExactly once (streaming, batch, mixed)
Load write methodMeltanoMostly append-only with soft deletes, depends on connector.TalendSoft and hard deletes, append and update in place (with work)Estuary FlowAppend only or update in place (soft or hard deletes)
DataOps supportMeltano

CLI support

Talend

(CLI, API)

Estuary Flow

API and CLI support for operations.

Declarative definitions for version control and CI/CD pipelines.

ELT transformsMeltano

dbt support for destinations

Talend

Dbt only.

Estuary Flow

dbt integration

ETL transformsMeltano
Talend

tMaps transformations. SQL function. Works with dbt

Estuary Flow

Real-time, SQL and Typescript

Schema inference and driftMeltano

Sampling-based discovery step for databases which don't provide schemas

Talend

Not without coding, but can be done.

Estuary Flow

Real-time schema inference support for all connectors based on source data structures, not just sampling.

Store and replayMeltano
Talend
Estuary Flow

Can backfill multiple targets and times without requiring new extract.

User-supplied cheap, scalable object storage.

Time travelMeltano
Talend
Estuary Flow

Can restrict the data materialization process to a specific date range.

SnapshotsMeltano

N/A

Talend

N/A

Estuary Flow

Full or incremental

Ease of useMeltano

Takes time to learn, set up, implement, and maintain (OSS)

Python knowledge is required.

Talend
Estuary Flow

streaming transforms may take learning

Deployment options
Deployment optionsMeltanoOpen sourceTalendOn premises (self-hosted), private cloud, public cloudEstuary FlowOpen source, public cloud, private cloud
The abilities
Performance (minimum latency)MeltanoCan be reduced to seconds. But it is batch by design, scales better with longer intervals. Typically 10s of minutes to 1+ hour intervals.TalendSub-second loading at low volumes. Requires bulk mode to scale.Estuary Flow< 100 ms (in streaming mode) Supports any batch interval as well and can mix streaming and batch in 1 pipeline.
ReliabilityMeltanoMediumTalendHighEstuary FlowHigh
ScalabilityMeltanoLow-mediumTalendHigh but requires bulk-mode loadingEstuary FlowHigh 5-10x scalability of others in production
Security
Data Source AuthenticationMeltanoOAuth / API KeysTalendOAuth / HTTPS / SSH / SSL / API TokensEstuary FlowOAuth 2.0 / API Tokens SSH/SSL
EncryptionMeltanoNoneTalendEncryption at rest, in-motionEstuary FlowEncryption at rest, in-motion
Support
SupportMeltano

Open source support

Talend
Estuary Flow

Fast support, engagement, time to resolution, including fixes.

Slack community.

Cost
Vendor costsMeltano

Requires self-hosting open source

Talend
Estuary Flow

2-5x lower than the others, becomes even lower with higher data volumes. Also lowers cost of destinations by doing in place writes efficiently and supporting scheduling

Data engineering costsMeltano

Everything needs to be self-hosted.

Requires dbt for transformations.

No automated schema evolution.

Talend

Steep learning curve and requires work to implement features like upserts.

Estuary Flow

Focus on DevEx, up-to-date docs, and easy-to-use platform.

Admin costsMeltano

(self-managed open source)

Talend
Estuary Flow

“It just works”

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Estuary Flow

Estuary introductory image

Estuary was founded in 2019. But the core technology, the Gazette open source project, has been evolving for a decade within the Ad Tech space, which is where many other real-time data technologies have started.

Estuary Flow is the only real-time and ETL data pipeline vendor in this comparison. There are some other ETL and real-time vendors in the honorable mention section, but those are not as viable a replacement for Fivetran.

While Estuary Flow is also a great option for batch sources and targets, where it really shines is any combination change data capture (CDC), real-time and batch ETL or ELT, and loading multiple destinations with the same pipeline. Estuary Flow currently is the only vendor to offer a private cloud deployment, which is the combination of a dedicated data plane deployed in a private customer account that is managed as SaaS by a shared control plane. It combines the security and dedicated compute of on prem with the simplicity of SaaS.

CDC works by reading record changes written to the write-ahead log (WAL) that records each record change exactly once as part of each database transaction. It is the easiest, lowest latency, and lowest-load for extracting all changes, including deletes, which otherwise are not captured by default from sources. Unfortunately ELT vendors like Airbyte, Fivetran, Meltano, and Hevo all rely on batch mode for CDC. This puts a load on a CDC source by requiring the write-ahead log to hold onto older data. This is not the intended use of CDC and can put a source in distress, or lead to failures.

Estuary Flow has a unique architecture where it streams and stores streaming or batch data as collections of data, which are transactionally guaranteed to deliver exactly once from each source to the target. With CDC it means any (record) change is immediately captured once for multiple targets or later use. Estuary Flow uses collections for transactional guarantees and for later backfilling, restreaming, transforms, or other compute. The result is the lowest load and latency for any source, and the ability to reuse the same data for multiple real-time or batch targets across analytics, apps, and AI, or for other workloads such as stream processing, or monitoring and alerting.

Estuary Flow also has broad packaged and custom connectivity, making it one of the top ETL tools. It has 150+ native connectors that are built for low latency and/or scale. While may seem low, these are connectors built for low latency and scale. In addition, Estuary is the only vendor to support Airbyte, Meltano, and Stitch connectors as well, which easily adds 500+ more connectors. Getting official support for the connector is a quick “request-and-test” with Estuary to make sure it supports the use case in production. Most of these connectors are not as scalable as Estuary-native, Fivetran, or some ETL connectors, so it’s important to confirm they will work for you. Flow’s support for TypeScript and SQL also enables ETL.

Pros

  • Modern data pipeline: Estuary Flow has the best support for schema drift, evolution, and automation, as well as modern DataOps.
  • Modern transforms: Flow is also both low-code and code-friendly with support for SQL, TypeScript (and Python coming) for ETL, and dbt for ELT.
  • Lowest latency: Several ETL vendors support low latency. But of these Estuary can achieve the lowest, with sub-100ms latency. ELT vendors generally are batch only. 
  • High scale: Unlike most ELT vendors, leading ETL vendors do scale. Estuary is proven to scale with one production pipeline moving 7GB+/sec at sub-second latency.
  • Most efficient: Estuary alone has the fastest and most efficient CDC connectors. It is also the only vendor to enable exactly-and-only-once capture, which puts the least load on a system, especially when you’re supporting multiple destinations including a data warehouse, high performance analytics database, and AI engine or vector database.
  • Deployment options: Of the ETL and ELT vendors, Estuary is currently the only vendor to offer open source, private cloud, and public multi-tenant SaaS.
  • Reliability: Estuary’s exactly-once transactional delivery and durable stream storage makes it very reliable.
  • Ease of use: Estuary is one of the easiest to use tools. Most customers are able to get their first pipelines running in hours and generally improve productivity 4x over time. 
  • Lowest cost: for data at any volume, Estuary is the clear low-cost winner in this evaluation. Rivery is second.
  • Great support: Customers consistently cite great support as one of the reasons for adopting Estuary.

Cons

  • On premises connectors: Estuary has 150+ native connectors and supports 500+ Airbyte, Meltano, and Stitch open source connectors. But if you need on premises app or data warehouse connectivity make sure you have all the connectivity you need.
  • Graphical ETL: Estuary has been more focused on SQL and dbt than graphical transformations. While it does infer data types and convert between sources and targets, there is currently no graphical transformation UI.

Pricing

Of the various ELT and ETL vendors, Estuary is the lowest total cost option. Estuary only charges $0.50 per GB of data moved from each source or to each target, and $100 per connector per month. So you can expect to pay a minimum of a few thousand per year. But it quickly becomes the lowest cost pricing. Rivery, the next lowest cost option, is the only other vendor that publishes pricing of 1 RPU per 100MB, which is $7.50 to $12.50 per GB depending on the plan you choose. Estuary becomes the lowest cost option by the time you reach the 10s of GB/month. By the time you reach 1TB a month Estuary is 10x lower cost than the rest.

Meltano

Meltano introductory image

Meltano was founded in 2018 as an open source project within GitLab to support their data and analytics team. It’s a Python framework built on the Singler protocol. The Singer framework was originally created by the founders of Stitch, but their contribution slowly declined following the acquisition of Stitch by Talend (which in turn was later acquired by Qlik.).

Meltano is focused on configuration based ELT using YAML and the CLI.

Pros

  • Open source ELT: Meltano is the main successor to Stitch if you’re looking for a Singer-based framework.
  • Configure-driven: If you are looking for a configure-driven approach to ELT, Meltano may be a great option for you.
  • Connectivity: Meltano and Airbyte collectively have the most containers, which makes sense given their open source history with Singer. Meltano supports Singer and has an SDK wrapper for Airbyte, giving it 600+ open source connectors in total. Open source connectors have their limits, so it’s important to test out carefully based on your needs.

Cons

  • Configure not low-code: If you’re looking for a more graphical, low-code approach to integration, Meltano is not a good choice.
  • Latency: Meltano is batch-only. It does not support streaming. While you can reduce polling intervals down to seconds, there is no staging area. The extract and load intervals need to be the same. Meltano is best suited for supporting historical analytics for this reason.
  • Reliability: Some will say Meltano has less issues when compared to Airybte. But it is open source. If you have issues you can only rely on the open source community for support.
  • Scalability: There isn’t as much documentation to help with scaling Meltano, and it’s not generally known for scalability, especially if you need low latency. Various benchmarks show that larger batch sizes deliver much better throughput. But it’s still not the level of throughput of Estuary or Fivetran. It’s generally minutes even in batch mode for 100K rows.
  • ELT only: Meltano supports open source dbt and can import existing dbt projects. Its support for dbt is considered good. It also has the ability to extract data from dbt cloud. Meltano does not support ETL.
  • Deployment options: Meltano is deployed as self-hosted open source. There is no Meltano Cloud, though Arch is offering a broader service with consulting.
  • DataOps: Data engineers generally automate using the CLI or the Meltano API. While it is straightforward to automate pipelines, there isn’t much support for schema evolution and automating responses to schema changes.

Pricing

Meltano is open source. There is no pricing. But it’s not really free. You’ll need to spend more on data engineering resources to stand up, build, and maintain Meltano. If you need scalability, there isn’t a lot of documentation on how to scale. Make sure you evaluate carefully and find some Meltano expertise.

Talend

Talend introductory image

Talend, also now part of Qlik, has two main products—Talend Data Fabric and Stitch, which is ELT. Talend Data Fabric is a data integration platform that, like Informatica, is broader than ETL. It also includes data quality and data governance capabilities.

Talend also had an open-source solution, Talend Open Studio, that could help you kickstart your first data integration and ETL projects. It has been discontinued by Qlik in 2024.

You could use Talend Open Studio for data processes that require lightweight workflows. For the majority of enterprise data pipelines should consider Data Fabric.

Pros

  • ETL platform: Data Fabric has rich transformation, data mapping, and data quality features that help with building data pipelines.
  • Real-time and batch: Real-time support includes streaming CDC. While it’s mature technology, it is still real-time.
  • Strong monitoring and analytics: Like Informatica, Talend has built up good visibility for operations.

Cons

  • Learning curve: Talend has an older UI that takes time to learn, just like some other ETL tools. Building transforms can take time.
  • Limited Open Studio features: while Open Studio is free, it’s also limited. Other open source options are less limited in their capabilities.
  • Limited connectors: Talend claims 1000+ connectors. But it lists 50 or so databases, file systems, applications, messaging, and other systems it supports. The rest are Talend Cloud Connectors, which you create as reusable objects.
  • High costs: there is no pricing listed, but it costs more than most pay-as-you-go tools, as well as Stitch.

Pricing

Outside of open source Open Studio and Singer, pricing quotes are available upon request. This should give you a sense that it’s going to be higher cost than Estuary, Rivery, and several of the pay-as-you-go ELT vendors, maybe with the exception of Fivetran.

How to choose the best option

For the most part, if you are interested in a cloud option, and the connectivity options exist, you may choose to evaluate Estuary.

Modern data pipeline: Estuary has the broadest support for schema evolution and modern DataOps.

Lowest latency: If low latency matters, Estuary will be the best option, especially at scale.

Highest data engineering productivity: Estuary is among the easiest to use, on par with the best ELT vendors. But it also has delivered up to 5x greater productivity than the alternatives.

Connectivity: If you're more concerned about cloud services, Estuary or another modern ELT vendor may be your best option. If you need more on-premises connectivity, you might consider more traditional ETL vendors.

Lowest cost: Estuary is the clear low-cost winner for medium and larger deployments.

Streaming support: Estuary has a modern approach to CDC that is built for reliability and scale, and great Kafka support as well. It's real-time CDC is arguably the best of all the options here. Some ETL vendors like Informatica and Talend also have real-time CDC. ELT-only vendors only support batch CDC.

Ultimately the best approach for evaluating your options is to identify your future and current needs for connectivity, key data integration features, and performance, scalability, reliability, and security needs, and use this information to a good short-term and long-term solution for you.

GETTING STARTED WITH ESTUARY

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    Make sure you read through the documentation, especially the get started section.

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  • Estuary 101

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