TabbyML focuses on artificial intelligence in the technology sector. Its main service is providing a self-hosted AI coding assistant that offers multi-line, and full-function suggestions to help users code faster. The company primarily sells to the technology and software development industry. It was founded in 2023 and is based in San Francisco, California.
TabbyML's Product Videos
TabbyML's Products & Differentiators
Open source AI coding assistant
Latest TabbyML News
Oct 11, 2023
Read full article ·3 min read Image Credits: Kriangsak Koopattanakij / Getty Images The race to create AI assistants that help humans write computer code is heating up. TabbyML , built by two ex-Googlers, has secured $3.2 million in seed funding to work on its open source code generator. In contrast to GitHub's Copilot , a self-hosted coding assistant like TabbyML has the advantage of being highly customizable, suggested the startup's co-founder Meng Zhang . "We believe in a future where all companies will have some sort of customization demand in software development," he told TechCrunch in an interview. "There are probably more mature and complete products in the proprietary software space, but if we compare an open source solution with GitHub's OpenAI-powered tool, there are more limitations to the latter," he added. Open source software particularly meets the needs of bigger enterprises, suggested Lucy Gao, Zhang's co-founder. While independent developers might incorporate open source code in their projects, engineers within enterprises are often pulling code that is proprietary to the organizations and hence out of reach for Copilot. "For example, if my colleague just wrote a line of code, I can quote it immediately [by using TabbyML]," Gao explained. Code generators, like other genres of AI pilots, are not always dependable as they can be riddled with bugs. Gao reckoned the challenge is "relatively easy to address" in the case of a self-hosted solution. Every time users choose not to incorporate TabbyML's suggestions or make edits to its auto-filled code, the AI model finetunes based on that information. The intent of code generators is to assist human programmers rather than replace them, and there have been promising outcomes. In June, GitHub released a survey showing that Copilot users accepted 30% of the suggestions generated by the coding assistant. Zhang cited another figure that he found more revealing: at a recent developer event, Google announced that 24% of its software engineers experienced more than five "assistive moments" a day using its AI-augmented internal code editor Cider. Story continues Decision-makers might be tempted to cut engineers after implementing a code generator, but Zhang argued "it's not that simple. Coding isn't a production line." TabbyML, which launched in April, has been starred some 11,000 times on GitHub as of writing. The two investors that participated in its latest round are Yunqi Partners and ZooCap. When asked about its competition with Copilot the Goliath, Zhang argued that OpenAI's advantage will taper off as other AI models become more powerful and the costs of computing power decrease over time. The advantage of GitHub and OpenAI, said Zhang, stems from their capability to deploy AI models with tens of billions of parameters through the cloud. Though the serving cost of such large models is higher, Copilot has so far managed to mitigate expenses to some extent by request batching. However, the strategy has demonstrated its limitations: In the first few months of this year, Microsoft was losing on average more than $20 a month per GitHub Copilot user, according to a report by the Wall Street Journal. In contrast, Tabby aims to lower the deployment barrier by recommending models trained on 1-3 billion parameters, an approach that inevitably results in lower quality in the short term. "However, as the cost of computing power goes down over time and the quality of open source models continues to improve, the competitive edge of GitHub and OpenAI will eventually diminish," said Zhang.
TabbyML Frequently Asked Questions (FAQ)
When was TabbyML founded?
TabbyML was founded in 2023.
Where is TabbyML's headquarters?
TabbyML's headquarters is located at San Francisco.
What is TabbyML's latest funding round?
TabbyML's latest funding round is Seed VC.
How much did TabbyML raise?
TabbyML raised a total of $3.2M.
Who are the investors of TabbyML?
Investors of TabbyML include Yunqi Partners and Zoo Capital.
Who are TabbyML's competitors?
Competitors of TabbyML include GitHub.
What products does TabbyML offer?
TabbyML's products include Tabby.
Who are TabbyML's customers?
Customers of TabbyML include No Customer Deployments.
Compare TabbyML to Competitors
DiffBlue focuses on generative AI for code within the software development industry. The company's main service is an AI-powered platform that autonomously writes Java unit tests, which helps in catching regressions. Its service primarily caters to the software development and DevOps industries. It was founded in 2016 and is based in Oxford, United Kingdom.
Plus3D.app is a 3D virtual laboratory. It allows teams of life sciences students and scientists to work together from anywhere, sharing knowledge either on the smartphone or on the web. It was founded in 2019 and is based in Rio Grande do Norte, Brazil.
Second State is a company that focuses on providing a secure, lightweight, and fast WebAssembly runtime for cloud-native and edge-native applications. The company offers services such as cloud-native microservices, SaaS automation, data analytics, and serverless functions for various platforms including the cloud, SaaS, data, and web3. Second State primarily sells to sectors such as the cloud computing industry, SaaS platforms, data platforms, and the blockchain industry. It was founded in 2019 and is based in Austin, Texas.
Feats is a professional network for people to build products, brands, and businesses. The platform allows designers, developers, and other creatives to showcase their work and connect with potential collaborators, to help them find job opportunities. It was founded in 2018 and is based in Copenhagen, Denmark.
Earthly provides software development solutions. The company builds syntax combining the features of Dockerfile and Makefile. Its products enable developers to execute continuous integration (CI) pipelines on laptops without having to commit any code. It focuses on containers, open-source, microservices, and modern code structures. It was founded in 2020 and is based in San Francisco, California.
Reality Defender focuses on deepfake detection and offers a proactive detection platform that scans user-generated media for fabricated items, verifies voiceprints, detects doctored documents, and provides alerts for deepfake threats. The company primarily serves enterprises, platforms, and governments. It was founded in 2018 and is based in New York, New York.