ML Engineer IC3
Company: Promote Project
Location: San Francisco
Posted on: November 13, 2024
Job Description:
57500 - 92500 a year (US Dollars)DescriptionLocationWhile we are
an all-remote company and hire almost anywhere in the world, we
have a preference for someone to reside in the following locations
for this role. However, if you feel qualified, we welcome you to
apply regardless of location. No matter what, working hours must
overlap with PST for at least 20 hours/week.Preferred
locations:
- Hybrid - San FranciscoWhy this job is excitingWe recently
created a machine learning team at Sourcegraph, aimed at creating
the most powerful coding assistant in the world. Many companies are
trying, but Sourcegraph is uniquely differentiated by our rich code
intelligence data and powerful code search platform. In the world
of prompting LLMs, context is everything, and Sourcegraph's context
is simply the best you can get: IDE-quality, global-scale, and
served lightning fast. Our code intelligence, married with modern
AI, is already providing a remarkable alpha experience, and you can
help us unlock its full potential.We are looking for an experienced
full-stack ML engineer with demonstrated industry experience in
productionizing large-scale ML models in industrial settings. And
if you happen to have an entrepreneurial streak, you're in luck: We
have an enterprise distribution pipeline, so whatever you build can
be deployed straight to enterprise customers with some of the
largest code bases in the world, without all the go-to-market
hassle you'd encounter in a startup.You will be an engineer at
Sourcegraph doing R&D, and pushing the boundaries of what AI
can do, as an IC on our ML team. You will have the full power of
Sourcegraph's Code Intelligence Platform at your disposal, and
you'll be working on a coding assistant to multiply dev
productivity to unprecedented levels.Within one month, you will---
- Start building a trusting relationship with your peers, and
learning the company structure.
- Be set up to do local development, and be actively
prototyping.
- Dive deep into how AI and ML is already used at Sourcegraph and
identify ways to improve moving forward.
- Develop simulated datasets using Gym style frameworks across a
number of Cody use cases.
- Experiment with changes to Cody prompts, context sources and
evaluate the changes with offline experimentation datasets.
- Ship a substantial new feature to end users.Within three
months, you will---
- Building out feature computation, storage, monitoring, analysis
and serving systems for features required across our Cody LLM
stack
- Be contributing actively to the world's best coding
assistant.
- Developing distributed training & experiment infrastructure
over Code AI datasets, and scaling distributed backend services to
reliably support high-QPS low latency use cases.
- Be following all the relevant research, and conducting research
of your own.Within six months, you will---
- Be fully ramped up and owning key pieces of the assistant.
- Be ramped up on other relevant parts of the Sourcegraph
product.
- Be helping design and build what might become the biggest dev
accelerator in 20 years.
- Owning a number of ML systems, and building core data and model
metadata systems powering the end-to-end ML lifecycle.
- Be developing a highly scalable, high-QPS inference service
providing low latency performance using a mix of CPU and GPU
hardware to most efficiently utilize resources.
- Be driving the technical vision and owning a couple of major ML
components, including their modeling and ML infra roadmap.About
youYou are an experienced full-stack ML engineer with demonstrated
industry experience in formulating ML solutions, developing
end-to-end data orchestration pipelines, deploying large-scale ML
models, and experimenting offline and online to drive business
impact for Cody users. You want to be part of a world-class team to
push the boundaries of AI, with a particular focus on leveraging
Sourcegraph's code intelligence to leapfrog competitors.
- You have 5-8 years of industry experience
- You are a backend focused ML engineer who has worked on the
entire ML lifecycle
- You have deployed ML models to production to users and have
developed feature pipelines
- You understand the nuances of ML for users to move metrics
forwardYour working hours overlap with 8am-4pm PT for at least 20
hours per week so we have time to collaborate synchronously when
necessary.CompensationWe pay you an above-average salary because we
want to hire the best people who are fully focused on helping
Sourcegraph succeed, not worried about paying bills. As an open and
transparent company that values competitive compensation, our
compensation ranges are visible to every single Sourcegraph
teammate.To determine your salary, we use a number of market and
data-driven salary sources, along with your location zone, and
target the high-end of the range to ensure we're always paying
above market regardless of where you live in the world. Both U.S.
and international locations are divided into one of four zones,
determined by the cost of labor index for each area. The starting
salary for a successful candidate will be based on level,
job-related skills, experience, qualifications, and location zone.
Please note that these salary ranges may be adjusted in the
future.The target compensation for this role is $185,000 USD
base.Please speak with a recruiter for additional information
regarding zone locations.In addition to our cash compensation, we
offer equity (because when we succeed as a company, we want you to
succeed, too) and generous perks & benefits.Interview processBelow
is the interview process you can expect for this role (you can read
more about the types of interviews in our Handbook). It may look
like a lot of steps, but rest assured that we move quickly and the
steps are designed to help you get the information needed to
determine if we're the right fit for you--- Interviewing is a
two-way street, after all!We expect the interview process to take
5.5 hours in total.Introduction Stage - we have initial
conversations to get to know you better---
- [30m] Recruiter Screen
- [45m] Technical Deep DiveTeam Interview Stage - we then delve
into your experience in more depth and introduce you to members of
the team, including cross-functional partners---
- [60m] ML Depth Interview
- [60m] ML Breadth & ML Systems
- [15m + async] Pairing ExerciseFinal Interview Stage - we move
you to our final round, where you gain a better understanding of
our business and values holistically---
- [30m] Values
- [30m] Leadership with co-founder
- We check references and conduct your background checkPlease
note - you are welcome to request additional conversations with
anyone you would like to meet, but didn't get to meet during the
interview process.To apply, please mention the word HUMBLE and tag
RMTUxLjgwLjE0My4yMDY= when applying to show you read the job post
completely.Job type:Remote jobTags
- design
- training
- full-stack
- technical
- recruiter
- support
- code
- assistant
- engineer
- backend
- digital nomad
#J-18808-Ljbffr
Keywords: Promote Project, Stockton , ML Engineer IC3, Engineering , San Francisco, California
Didn't find what you're looking for? Search again!
Loading more jobs...