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    FerroAir - Self-Managed Apache Airflow 3.x Orchestrator for Amazon EC2

     Info
    Deployed on AWS
    This product has charges associated with it for the FerroAir software, in addition to the underlying AWS infrastructure costs. FerroAir is a self-managed workflow orchestrator you run on your own Amazon EC2 instances: a single static Rust binary that implements an Apache Airflow 3.x scheduler, webserver, REST API v2, triggerer, and DAG processor. It is wire-compatible with the Apache Airflow 3.0/3.1/3.2 REST API v2 surface and the Apache Airflow AIP-72 task-execution interface. It serves a web UI on port 8080, a metrics and admin port 9080, and AIP-72 on port 8081. It syncs DAGs from Amazon S3, stores metadata in PostgreSQL or SQLite, runs an HA scheduler with leader election, and supports Kubernetes and Celery executors. See the product documentation for benchmark methodology and figures. Ships as an Amazon Linux 2023 AMI, billed per instance per hour with an annual option.

    Overview

    FerroAir is a self-managed workflow orchestrator that runs Apache Airflow 3.x workloads on your own Amazon EC2 instances. It is a single static Rust binary that implements an Apache Airflow 3.x scheduler, webserver, REST API v2, triggerer, and DAG processor. Task bodies keep executing on CPython through the upstream airflow.sdk over the Apache Airflow AIP-72 task-execution interface, while FerroAir owns the scheduler tick loop, DAG-folder watcher, REST API, metadata access, leader election, and executor dispatch in Rust. Apache Airflow is an open-source project (it is not an AWS service); FerroAir is wire-compatible with the Apache Airflow 3.0, 3.1, and 3.2 REST API v2 surface and the Apache Airflow AIP-72 task-execution interface.

    A real, served interface. FerroAir serves a genuine web UI (a Leptos single-page application, no Node runtime) on port 8080 with the DAG list, graph, grid, gantt, calendar, and task-log views. A dedicated metrics and admin port 9080 exposes Prometheus metrics and the health, live, and ready probes, kept separate from the user-facing UI port. The Apache Airflow AIP-72 task-execution interface is served on port 8081 for the Python worker. The Apache Airflow REST API v2 surface is implemented so existing Apache Airflow REST API v2 clients are supported; see the product documentation for the compatibility matrix.

    Operationally lean. The scheduler, webserver, triggerer, and DAG processor run unified in one static binary under a hardened systemd unit, instead of a multi-process Python deployment. For resource-footprint and latency figures (scheduler resident memory, scheduler tick, and DAG parse), see the product documentation for benchmark methodology and figures; those are local developer-workstation measurements, not a performance guarantee for any instance type, and Graviton (arm64) numbers are being re-measured.

    State and storage. DAG files sync from an Amazon S3 bucket (or local disk). Metadata is stored in PostgreSQL or SQLite using an Apache Airflow 3 Alembic-compatible schema, so the metadata mount mode stays viable for import. The HA scheduler uses scheduler failover via leader election (openraft); for higher availability run several instances and let leader election promote a standby (see the product documentation for benchmark methodology and figures). Executors include the in-process local executor, a Kubernetes executor (kube-rs), and a Celery executor (Redis or RabbitMQ broker).

    Bring your existing workflows across. FerroAir can import connections, variables, and pools from an existing managed Apache Airflow deployment and sync your DAG folder, so teams already running Apache Airflow elsewhere can move their orchestration layer. The post-purchase documentation on the AMI walks through the import tool, the runbook, the compatibility matrix, and validation.

    Secrets and integration. Secrets resolve from environment, AWS Secrets Manager, GCP Secret Manager, Azure Key Vault, or Vault. Connections and variables are encrypted (Fernet). Task logs can be written to local disk, Amazon S3, GCS, Azure, or Amazon CloudWatch Logs. Authentication supports FAB auth, OAuth, OIDC, SAML, and LDAP.

    No lock-in and no phone-home. FerroAir is a normal Amazon Linux 2023 AMI you run in your own VPC. There is no separate control plane, no telemetry home-call, and no license-key check - billing is AMI hourly plus an annual contract option through your AWS bill. Deploy with the included CloudFormation template and point your DAG bucket and metadata database at the instance.

    Highlights

    • Single static Rust binary that implements an Apache Airflow 3.x scheduler, webserver, REST API v2, triggerer, and DAG processor; wire-compatible with the Apache Airflow 3.0/3.1/3.2 REST API v2 surface and the Apache Airflow AIP-72 task-execution interface. A served web UI on port 8080, a dedicated metrics and admin port 9080 (Prometheus plus health, live, and ready probes), and AIP-72 on port 8081.
    • Operationally lean and self-managed in your own VPC: the scheduler, webserver, triggerer, and DAG processor run unified in one binary under a hardened systemd unit. For resource-footprint and latency figures, see the product documentation for benchmark methodology and figures (local developer-workstation measurements, not a performance guarantee for any instance type; Graviton numbers are being re-measured).
    • Production wiring built in: Amazon S3 DAG sync, PostgreSQL or SQLite metadata (Apache Airflow 3 Alembic-compatible schema), an HA scheduler with leader-election failover, and Kubernetes plus Celery executors. Import connections, variables, and pools from an existing managed Apache Airflow deployment. No separate control plane, no telemetry home-call, no license-key check - billed per instance per hour through your AWS bill with an annual option.

    Details

    Delivery method

    Delivery option
    64-bit (x86) Amazon Machine Image (AMI)

    Latest version

    Operating system
    AmazonLinux 2023

    Deployed on AWS
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    Pricing

    FerroAir - Self-Managed Apache Airflow 3.x Orchestrator for Amazon EC2

     Info
    Pricing is based on actual usage, with charges varying according to how much you consume. Subscriptions have no end date and may be canceled any time. Alternatively, you can pay upfront for a contract, which typically covers your anticipated usage for the contract duration. Any usage beyond contract will incur additional usage-based costs.
    Additional AWS infrastructure costs may apply. Use the AWS Pricing Calculator  to estimate your infrastructure costs.

    Usage costs (8)

     Info
    Dimension
    Description
    Cost/hour
    c7i.large
    Recommended
    FerroAir hourly software fee for instance type c7i.large
    $0.20
    c7i.4xlarge
    FerroAir hourly software fee for instance type c7i.4xlarge
    $0.20
    c7i.xlarge
    FerroAir hourly software fee for instance type c7i.xlarge
    $0.20
    m7i.2xlarge
    FerroAir hourly software fee for instance type m7i.2xlarge
    $0.20
    m7i.xlarge
    FerroAir hourly software fee for instance type m7i.xlarge
    $0.20
    c7i.2xlarge
    FerroAir hourly software fee for instance type c7i.2xlarge
    $0.20
    m7i.4xlarge
    FerroAir hourly software fee for instance type m7i.4xlarge
    $0.20
    m7i.large
    FerroAir hourly software fee for instance type m7i.large
    $0.20

    Vendor refund policy

    Refund requests are handled by email to aws-support@abyo.net . Refunds are reviewed case by case in line with the AWS Marketplace refund process.

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    Vendor terms and conditions

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    Usage information

     Info

    Delivery details

    64-bit (x86) Amazon Machine Image (AMI)

    Amazon Machine Image (AMI)

    An AMI is a virtual image that provides the information required to launch an instance. Amazon EC2 (Elastic Compute Cloud) instances are virtual servers on which you can run your applications and workloads, offering varying combinations of CPU, memory, storage, and networking resources. You can launch as many instances from as many different AMIs as you need.

    Version release notes

    Initial release: self-managed Apache Airflow 3.x compatible orchestrator. Single static Rust binary implementing an Apache Airflow 3.x scheduler, webserver, REST API v2, triggerer, and DAG processor; wire-compatible with the Apache Airflow 3.0/3.1/3.2 REST API v2 surface and the Apache Airflow AIP-72 task-execution interface. Served web UI on port 8080, metrics and admin on port 9080, AIP-72 on port 8081. Amazon S3 DAG sync, PostgreSQL or SQLite metadata, HA scheduler with leader election, Kubernetes and Celery executors.

    Additional details

    Usage instructions

    Deploy the Amazon Linux 2023 AMI on a c7i.large (recommended) or larger instance via the included one-click template. Point FerroAir at your DAG Amazon S3 bucket and your PostgreSQL (or SQLite) metadata database, open the web UI on port 8080, scrape Prometheus on port 9080, and run the reference Python worker against the AIP-72 interface on port 8081. To bring an existing managed Apache Airflow deployment across, run the included import tool to load connections, variables, and pools, then sync your DAG folder. See the runbook and docs/ on the AMI.

    Support

    Vendor support

    Email support at aws-support@abyo.net .

    AWS infrastructure support

    AWS Support is a one-on-one, fast-response support channel that is staffed 24x7x365 with experienced and technical support engineers. The service helps customers of all sizes and technical abilities to successfully utilize the products and features provided by Amazon Web Services.

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