About the Role
We are looking for a part-time engineer to maintain and improve our public LLM benchmarks at https://www.vals.ai. We expect you to have strong technical abilities, as well as a curiosity and interest in large language models
Key responsibilities include:
Creating new, private datasets in conjunction with our data annotators and our partner groups. You will have significant resources at your disposal to create these datasets.
As new models come out, you will be responsible for running our existing benchmarks against them and compiling the results.
Writing the free-text analyses of the raw quantitative results. Key questions that we currently seek to answer include: Which models make the most sense at a given price point? How has performance changed between different model generations? What kinds of the errors are the models liable to make?
Creating Twitter and LinkedIn posts that describe the results of our findings.
Writing and maintaining the scripts that we use to run benchmarks against our datasets. This work is critical to produce new results efficiently as models are released.
You will have significant ownership of our benchmarking site, which was featured in Bloomberg. You will also have the agency to propose new benchmarks, based on your own ideas and hypotheses.
Requirements
Deep experience with Python, which is the primary language you will work in.
Strong communication and writing skills. It's essential that we distill our technical findings into easily consumable reports for non-technical audiences.
Experience working in teams. This includes working in development sprints, knowledge of best practices in working with Git, and reviewing pull requests. You can provide input to others and equally receive/integrate feedback.
~20 hours a week of availability. We expect work to be a bit spiky -- there will be more work to be done when new models come out.
Nice to haves
Familiarity with LLM methods and developments. Innate interest in the space will make it easier to build a valuable product.
Experience in ML research setting (or experience with data science). We maintain scientific rigor in our benchmarks to ensure our evaluations are fair and unbiased.
About Us
Measuring model ability is the most challenging part of creating applications that are capable of automating any given part of the economy. There are no good techniques or benchmarks for evaluating LLM performance on business-relevant tasks, so adoption for enterprise production settings has been limited (see Wittgenstein’s ruler).
This problem materializes in each place where LLMs have potential: in understanding whether the AI tool companies are building a product will satisfy a customer demand, determining how feasible models and vendors are for a given enterprise in making purchasing decisions, for researchers who need a north star to which to expand model ability.
Today, answering these questions amounts to hiring a human review team to manually evaluate model outputs. This is prohibitively expensive and slow.
Vals AI is building the enterprise benchmark of LLM and LLM apps on real-world business tasks. In doing so we are creating the infrastructure + certification to automatically audit LLM applications, verifying they are ready for consumption.
See our benchmarks and launch announcement in Bloomberg. We aim to build the barometer for whether AI is useful, and in doing so, accelerate the automation of all knowledge work.
What we are building:
Our core technology enables us to review + automatically audit LLM applications in high value industries (legal, insurance, finance, healthcare). With this and our own data, we maintain a public benchmark of the major LLMs on enterprise tasks. Our success will be based on three components:
Our evaluation performs at human-level accuracy on the relevant axes for each industry/application.
Our platform has an intuitive interface that acts as a shared platform between human reviewers and engineers.
We become the industry-standard benchmark, maintaining a loss-leading effort by publishing free reports and collaborating with credible data partners.
To achieve each of these, we are looking for machine learning engineers (Head of AI, and Members of the Technical Staff) to develop novel evaluation techniques, strong designers and front-end engineers (Founding Product Engineer) to contribute to the platform, and a tenacious operator to write reports and maintain our social media (this role).
What we offer:
Highly competitive salary. Excellence is well rewarded.
Optional ability to work in our SF office.
In office, lunch and dinner provided, free snacks/coffee/drinks.
Opportunity to grow into a full-time role.
About us:
Founding team: The core methodology behind this platform comes from NLP evaluation research we had done at Stanford. We raised a 5M seed from some of the top institutional and angel investors in the valley. Our team has prior work experience at NVIDIA, Meta, Microsoft, Palantir and HRT. Collectively, we have over 300 citations in our published work.
Tech stack: Our frontend is built in React with TSX. We use Django as our back-end framework. All of the infra is on AWS.
What we’re looking for:
Intelligence is more important than a good-looking resume. Industry experience and pedigree valuable only insofar as it is a proxy for talent itself.
Ownership to create products. We don’t have the scale or time to actively “manage” every project or task. Working in a small, talent-dense team, we expect everyone to show initiative to build where it’s needed, not where it’s asked. We strive for autonomy over consensus.
Intensity. The LLM landscape is constantly changing. Foundation model labs are continuously pushing the frontier, enterprises are seeing massive pressure to adopt technology, startups are hungry to chase the white space. The unicorn companies that will emerge from this technology shift are being built now. Those that win will have an incredibly high speed of execution.
See solutions not problems. We’re not looking for people that pass hard problems on to others or admit defeat, but instead only see the opportunity to craft solutions at each juncture.
Further Reading:
Referral Bonus
The referral bonus does not apply to this role as it is part-time.