getting-started
meltano
getting-started | meltano | |
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16 | 9 | |
1,220 | 1,601 | |
0.0% | 2.7% | |
0.0 | 9.8 | |
about 1 year ago | 3 days ago | |
Makefile | Python | |
- | MIT License |
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getting-started
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Why do companies still build data ingestion tooling instead of using a third-party tool like Airbyte?
Coincidently, I saw a presentation today on a nice half-way-house solution: using embeddable Python libraries like Sling and dlt - both open-source. See https://www.youtube.com/watch?v=gAqOLgG2iYY There is also singer.io which is more of a protocol than a library, but can also be installed although it looks like it is a true community effort and not so well maintained.
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Data sources episode 2: AWS S3 to Postgres Data Sync using Singer
Singer is an open-source framework for data ingestion, which provides a standardized way to move data between various data sources and destinations (such as databases, APIs, and data warehouses). Singer offers a modular approach to data extraction and loading by leveraging two main components: Taps (data extractors) and Targets (data loaders). This design makes it an attractive option for data ingestion for several reasons:
- Design patter for Python ETL
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Launch HN: Patterns (YC S21) – A much faster way to build and deploy data apps
Thanks for chipping in.
I’ve been leaning towards this direction. I think I/O is the biggest part that in the case of plain code steps still needs fixing. Input being data/stream and parameterization/config and output being some sort of typed data/stream.
My “let’s not reinvent the wheel” alarm is going of when I write that though. Examples that come to mind are text based (Unix / https://scale.com/blog/text-universal-interface) but also the Singer tap protocol (https://github.com/singer-io/getting-started/blob/master/doc...). And config obviously having many standard forms like ini, yaml, json, environment key value pairs and more.
At the same time, text feels horribly inefficient as encoding for some of the data objects being passed around in these flows. More specialized and optimized binary formats come to mind (Arrow, HDF5, Protobuf).
Plenty of directions to explore, each with their own advantages and disadvantages. I wonder which direction is favored by users of tools like ours. Will be good to poll (do they even care?).
PS Windmill looks equally impressive! Nice job
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After Airflow. Where next for DE?
Mage uses the Singer Spec (https://github.com/singer-io/getting-started/blob/master/docs/SPEC.md), the data engineer community standard for building data integrations. This was created by Stitch and is widely adopted.
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Basic data engineering question.
I like the Singer Protocol, and the various tools that use it. These include meltano, airbyte, stitch, pipelinewise, and a few others
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I have hundreds of API data endpoints with different schemas. How do I organize?
Have you looked into using a dedicated data integration tool? Have you heard of Singer and the Singer Spec? https://github.com/singer-io/getting-started/blob/master/docs/SPEC.md
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CDC (Change Data Capture) with 3rd party APIs
Or you could build your own such system and run it on Airflow, Prefect, Dagster, etc. Check out the Singer project for a suite of Python packages designed for such a task. Quality varies greatly, though.
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Questions about Integration Singer Specification with AWS Glue
Our team is building out a data platform on AWS glue, and we pull from a variety of data sources including application databases and third party SaaS APIs. I have been looking into ways to standardize pulling data from different sources. The other day I came across the [Singer Specification](https://github.com/singer-io/getting-started) and was interested learning more about it. If anyone has experience working with Singer specifications, I would love to hear more about:
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Anybody have experience creating singer taps and targets?
I just read the readme of the Singer getting started repo and am excited to write my first tap! I’m thinking instead of writing a new Airflow DAG whenever I want to pipe API data into our data warehouse I could write a singer tap and use Stitch instead. Is that a stupid idea?
meltano
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meltano VS cloudquery - a user suggested alternative
2 projects | 2 Jun 2023
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Show HN: Meltano Cloud (Gitlab spinout) – Managed infra for open source ELT
- https://github.com/meltano/meltano
We'd love to hear what you think of Meltano (Cloud). If you join the Beta, you get 100 free credits (200 hourly or 100 daily runs) and a 20% discount on the pricing at GA (June 27). The first 100 to sign up get 1,000 credits -- that's 83 days of hourly runs or 3 years of dailies!
The team and I will be checking in here throughout the day, so don't hesitate to ask questions! If we don't get to you, feel free to join 3,500+ Meltano fans on https://meltano.com/slack and we'll chat there!
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Show HN: Sync’ing data to your customer’s Google Sheets
Meltano[0] might be of interest to you. Easy way to move data that should be very familiar for software engineers. If a connector doesn't exist our SDK makes it easy to build it.
[0] https://github.com/meltano/meltano
(disclaimer - I work at Meltano)
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Meltano can now run any Airbyte source connector thanks to a community contribution
We currently don't do any process optimization on a per-stream basis when doing an extract. We have seen folks in the community running each tap separately for each stream which can speed it up. We've got an issue around this (Melturbo).
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What is data integration?
Meltano
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PostgreSQL to DuckDB - There and Quack Again
I built my data pipeline to Extract some data from websites and CSV files, Load it into my database, and Transform it into a reporting-ready schema. I used Python and Pandas to extract and load some of the data and Meltano to load some additional supporting data. All of that data went into a PostgreSQL database hosted in the cloud on Azure where I then used dbt to create data models in the database optimized for reporting. Finally, I use Metabase to visualize the data. (whew! that's a lot of moving parts!)
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What should be the main point of a personal project?
I'm learning https://meltano.com/ right now, so am building custom Taps, mostly for fun. I'm enjoying it. I'm pulling in a variety of data from https://www.geonames.org/ and Canadian weather/climate data into BigQuery
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What ETL tool you use with Postgres ?
https://meltano.com/ is ELT but I like it
- Airbyte vs Meltano community support
What are some alternatives?
airbyte - The leading data integration platform for ETL / ELT data pipelines from APIs, databases & files to data warehouses, data lakes & data lakehouses. Both self-hosted and Cloud-hosted.
Prefect - The easiest way to build, run, and monitor data pipelines at scale.
AWS Data Wrangler - pandas on AWS - Easy integration with Athena, Glue, Redshift, Timestream, Neptune, OpenSearch, QuickSight, Chime, CloudWatchLogs, DynamoDB, EMR, SecretManager, PostgreSQL, MySQL, SQLServer and S3 (Parquet, CSV, JSON and EXCEL).
nifi - Apache NiFi
meltano
pipelinewise - Data Pipeline Framework using the singer.io spec
tap-hubspot
pipelinewise-tap-mssql - Pipelinewise tap for Microsoft SQL Server
Mage - 🧙 The modern replacement for Airflow. Mage is an open-source data pipeline tool for transforming and integrating data. https://github.com/mage-ai/mage-ai
tap-spreadsheets-anywhere
spark-rapids - Spark RAPIDS plugin - accelerate Apache Spark with GPUs