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  1. Stackups
  2. AI
  3. Text & Language Models
  4. Machine Learning As A Service
  5. Modal vs Tecton

Modal vs Tecton

OverviewComparisonAlternatives

Overview

Tecton
Tecton
Stacks1
Followers1
Votes0
Modal
Modal
Stacks17
Followers15
Votes0

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Detailed Comparison

Tecton
Tecton
Modal
Modal

It is a fully-managed, cloud native feature platform that operates and manages the pipelines that transform raw data into features across the full lifecycle of an ML application.

It lets you run or deploy machine learning models, massively parallel compute jobs, task queues, web apps, and much more, without your own infrastructure.

Feature Pipelines - automatically compute and orchestrate the feature transformation process with unified batch and real-time abstractions. Tecton includes efficient pre-engineered pipelines that compute windowed aggregations on batch and real-time data with a single line of code; Feature Store - store features in an offline store to optimize for large-scale retrieval during training and an online store for low-latency retrieval during online serving. Easily generate accurate training data through a Python SDK and backfill feature data. Serve data at very high scale (over 100,000 QPS) and low latency (under 100ms) through a REST endpoint. Tecton eliminates train-serve skew by ensuring consistency across training and serving environments, and also eliminates data leakage through correct time-travel; Feature Repository - Manage features as files in a git repository using a declarative framework. Deploy features with confidence by integrating CI/CD processes and unit testing your features before deploying to production. Manage dependencies of features across models and version-control features; Monitoring - Monitor the health of feature pipelines and automatically resolve issues that could produce stale feature data. Control costs by tracking the computation and storage costs for each feature; Sharing - Discover features through an intuitive Web UI and produce new production-grade models with existing features with a single line of code. Break down silos, increase collaboration between data scientists, data engineers, and application engineers. Eliminate duplication across the ML data development cycle
Run any code remotely within seconds; Define container environments in code (or use one of our pre-built backends); Scale up horizontally to thousands of containers; Deploy and monitor persistent cron jobs
Statistics
Stacks
1
Stacks
17
Followers
1
Followers
15
Votes
0
Votes
0
Integrations
Databricks
Databricks
Amazon SageMaker
Amazon SageMaker
Kubeflow
Kubeflow
Docker
Docker
Debian
Debian
Pandas
Pandas
scikit-learn
scikit-learn
Blender
Blender
Datasette
Datasette
Python
Python
DuckDB
DuckDB

What are some alternatives to Tecton, Modal?

Heroku

Heroku

Heroku is a cloud application platform – a new way of building and deploying web apps. Heroku lets app developers spend 100% of their time on their application code, not managing servers, deployment, ongoing operations, or scaling.

Clever Cloud

Clever Cloud

Clever Cloud is a polyglot cloud application platform. The service helps developers to build applications with many languages and services, with auto-scaling features and a true pay-as-you-go pricing model.

Google App Engine

Google App Engine

Google has a reputation for highly reliable, high performance infrastructure. With App Engine you can take advantage of the 10 years of knowledge Google has in running massively scalable, performance driven systems. App Engine applications are easy to build, easy to maintain, and easy to scale as your traffic and data storage needs grow.

Red Hat OpenShift

Red Hat OpenShift

OpenShift is Red Hat's Cloud Computing Platform as a Service (PaaS) offering. OpenShift is an application platform in the cloud where application developers and teams can build, test, deploy, and run their applications.

AWS Elastic Beanstalk

AWS Elastic Beanstalk

Once you upload your application, Elastic Beanstalk automatically handles the deployment details of capacity provisioning, load balancing, auto-scaling, and application health monitoring.

Render

Render

Render is a unified platform to build and run all your apps and websites with free SSL, a global CDN, private networks and auto deploys from Git.

Hasura

Hasura

An open source GraphQL engine that deploys instant, realtime GraphQL APIs on any Postgres database.

Cloud 66

Cloud 66

Cloud 66 gives you everything you need to build, deploy and maintain your applications on any cloud, without the headache of dealing with "server stuff". Frameworks: Ruby on Rails, Node.js, Jamstack, Laravel, GoLang, and more.

Jelastic

Jelastic

Jelastic is a Multi-Cloud DevOps PaaS for ISVs, telcos, service providers and enterprises needing to speed up development, reduce cost of IT infrastructure, improve uptime and security.

Dokku

Dokku

It is an extensible, open source Platform as a Service that runs on a single server of your choice. It helps you build and manage the lifecycle of applications from building to scaling.

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