Tecton

Tecton

Software Development

San Francisco, California 24,555 followers

The feature platform for machine learning, from the creators of Uber Michelangelo.

About us

Founded by the team that created the Uber Michelangelo platform, Tecton provides an enterprise-ready AI data platform to help companies activate their data for AI applications. AI creates new opportunities to generate more value than ever before from data. Companies can now build AI-driven applications to automate decisions at machine speed, deliver magical customer experiences, and re-invent business processes. But AI models will only ever be as good as the data that is fed to them. Today, it’s incredibly hard to build and manage AI data. Most companies don’t have access to the advanced AI data infrastructure that is used by the Internet giants. So AI teams spend the majority of their time building bespoke data pipelines, and most models never make it to production. We believe that companies need a new kind of data platform built for the unique requirements of AI. Tecton enables AI teams to easily and reliably compute, manage, and retrieve data for both generative AI and predictive ML applications. Our platform delivers features, embeddings, and prompts as rich, unified context, abstracting away the complex engineering involved in data preparation for AI. With Tecton, companies can: 1. Productionize context faster, getting new models to production 80% faster 2. Build more accurate models through rapid data experimentation and 100% accurate context serving 3. Drive down production costs by turning expensive workloads into highly efficient data services We believe that by getting the data layer for AI right, companies can get better models to production faster, driving real business outcomes. Tecton enables organizations to harness the full potential of their data, creating AI applications that are contextually aware and truly intelligent.

Industry
Software Development
Company size
51-200 employees
Headquarters
San Francisco, California
Type
Privately Held
Founded
2019
Specialties
Machine Learning, Data Science, Feature Store, Data Engineering, Artificial Intelligence , Big Data, MLOps, DevOps, Data Platform, AI, Generative AI, and GenAI

Locations

Employees at Tecton

Updates

  • Tecton reposted this

    Tecton was founded in 2018 by the creators of Uber’s Michelangelo platform, who envisioned a more scalable and efficient approach to managing machine learning (ML) data. Their mission has been to enable companies to deploy real-time ML models effortlessly, revolutionizing how ML is integrated into everyday business operations. Tecton is a leading feature platform that empowers data teams to build, deploy, and monitor production-grade ML features at scale. With its innovative tools, Tecton streamlines the ML lifecycle, helping businesses achieve faster and more reliable model outcomes. Ravi Trivedi & Mary Solbrig joined Elliot Kipling on Enginears to help us uncover more about Tecton along with their next 12 months of growth. Full podcast in the comments below ⬇️

    • No alternative text description for this image
  • View organization page for Tecton, graphic

    24,555 followers

    🚀 Starting in less than an hour! Don’t miss our live webinar: "Closing the Gap from Data Science to Production AI": https://lnkd.in/g9ke5FgD We’ll explore how to break down silos between data science and engineering, streamline collaboration, and accelerate your path to production-ready AI. Can’t make it? No worries – sign up to get the recording and watch it on your own time. #AI #MachineLearning #DataScience #Webinar

    Closing the Gap from Data Science to Production AI

    Closing the Gap from Data Science to Production AI

    resources.tecton.ai

  • View organization page for Tecton, graphic

    24,555 followers

    ⚒️ Are data engineering challenges slowing your AI projects? Join us Dec 4, at 9AM PST to learn how AI teams are solving the 'last mile' problem in AI - getting data reliably from prototype to production without months of custom engineering. We'll cover: • How to automate production-ready data pipelines for both traditional ML and generative AI • Techniques for ensuring consistency between training and serving data • Serving AI data with sub-second latency at scale Register here: https://lnkd.in/g9ke5FgD

    Closing the Gap from Data Science to Production AI

    Closing the Gap from Data Science to Production AI

    resources.tecton.ai

  • View organization page for Tecton, graphic

    24,555 followers

    Love seeing how HomeToGo is using Tecton to power personalized travel experiences in real-time! 🚀 Thank you for sharing your story with us HomeToGo

    View organization page for HomeToGo, graphic

    30,275 followers

    HomeToGo is dedicated to creating a seamless, highly personalized experience for every traveler—and achieving that means real-time, high-quality data is key. 🔑 In our latest Data & Engineering blog post, Stephan, Director of Data Analytics at HomeToGo, shares how we leverage Tecton’s Feature Platform to supercharge our ranking algorithms. In an industry where relevance and speed make all the difference, Tecton’s platform enables us to turn data into high-impact, real-time insights, connecting travelers with their perfect vacation rentals faster and more accurately than ever. 🚀 Check out the full blog post 𝑯𝒐𝒘 𝑻𝒆𝒄𝒕𝒐𝒏’𝒔 𝑭𝒆𝒂𝒕𝒖𝒓𝒆 𝑷𝒍𝒂𝒕𝒇𝒐𝒓𝒎 𝑺𝒖𝒑𝒆𝒓𝒄𝒉𝒂𝒓𝒈𝒆𝒅 𝑯𝒐𝒎𝒆𝑻𝒐𝑮𝒐’𝒔 𝑹𝒂𝒏𝒌𝒊𝒏𝒈 via the link in our comments! #HomeToGo #TravelTech #innovation #data #growth

  • Tecton reposted this

    View profile for Ajeya Rengarajan, graphic

    Software Engineer at Tecton

    One of my favorite aspects of working at Tecton has been the freedom to explore opportunities to make an impact beyond my usual engineering projects. My first of such side-quests was spending a couple quarters collaborating directly with customers to implement their use cases in Tecton. Soon after embarking on this journey, I realized that no matter how flexible and powerful the product is, success depends on providing a simple, intuitive framework paired with clear documentation and guidance to help users establish the right mental models and feel confident in leveraging Tecton for their use cases. That leads to my latest side-quest of creating a series of video tutorials designed to offer a comprehensive guide to core feature engineering concepts and showcase how Tecton’s framework can be used to implement a wide range of data pipelines. The series covers foundational topics like batch, streaming, and real-time pipelines, as well as more nuanced subjects like stream compaction and materialization delays. The goal is to empower both new and experienced users to build a solid understanding of the fundamentals and confidently navigate the feature engineering landscape using Tecton. You can explore the video tutorials now at https://lnkd.in/eNm6H5HP. Happy learning!

  • View organization page for Tecton, graphic

    24,555 followers

    How smart is your AI if it doesn’t understand your business or customers? 🧠 In our latest blog post, we dive into why context—timely, relevant data from every corner of your organization—is key to building smarter AI applications. Without fresh, business- and user-specific data, even the best models can struggle in production. Highlights include: 🔎 Why critical context, like recent transactions for fraud detection or up-to-date customer info for support, keeps AI accurate and reliable. ⚙ Why dynamic data infrastructure—integrating structured features, embeddings, and LLM prompts—is crucial for real-time, scalable AI. 📈 How Tecton helps teams convert raw data into actionable AI context, boosting model accuracy, deployment speed, and cost-efficiency. Read the full post 👉 https://lnkd.in/euRGeQJ5

    Why AI Needs Better Context | Tecton

    Why AI Needs Better Context | Tecton

    tecton.ai

  • View organization page for Tecton, graphic

    24,555 followers

    Today marks Tecton's 6th anniversary! 🎉 What started as an idea born from our experience building Michelangelo at Uber has grown into something truly remarkable. In 2017, we saw firsthand how a feature platform could enable a Cambrian explosion of machine learning within an organization. That insight led us to found Tecton in 2018, with a mission to help every company successfully operationalize AI. We're incredibly proud of how far we've come: from pioneering the first enterprise feature platform in 2020, to powering mission-critical AI applications at some of the world's leading companies, to launching Tecton 1.0 this year with groundbreaking capabilities for both predictive ML and generative AI. But what truly energizes us is seeing how our platform helps teams every day to build exceptional AI products. Thank you to our amazing customers, partners, and the incredible Tecton team for being part of this journey. As AI becomes central to how businesses operate, our mission is clearer than ever: bridging the gap between data and AI systems to help organizations build reliable, production-ready AI. Here's to the next chapter! 💫 #AI #GenAI #MLOps #FeatureStore #FeaturePlatform

  • View organization page for Tecton, graphic

    24,555 followers

    😱 Is it giving you nightmares to build a production LLM-powered app? You're not alone! Engineers are running into these scary scenarios: 👻 Costly hallucinations in customer-facing apps 🧟♀️ Complex manual work scaling your RAG system 💀 Generic, impersonal responses that don’t know the user 🧛 Inefficient prompts, overstuffed with irrelevant info Don't let your GenAI use case turn into a technical horror story. Our new blog has the practical engineering strategies to keep the monsters at bay! #LLM #GenAI #MLOps

    GenAI Engineering Horror Stories (And How to Avoid Them) | Tecton

    GenAI Engineering Horror Stories (And How to Avoid Them) | Tecton

    tecton.ai

Similar pages

Browse jobs

Funding

Tecton 5 total rounds

Last Round

Series C

US$ 100.0M

See more info on crunchbase