Senior Product Engineer
Company: Recruiting From Scratch
Location: San Francisco
Posted on: November 13, 2024
Job Description:
Who is :
Recruiting from Scratch is a talent firm that focuses on placing
the best candidate for our clients. Our team is 100% remote and we
work with teams across North America, South America, and Europe to
help them hire.
https://www.recruitingfromscratch.com/
Our client is hiring a Senior Product Engineer to join their
team.
Company Size: 45
This role is hybrid in San Francisco.
The Role:
- Concurrency & distributed systems - Our smart dialer places
calls in parallel and runs a realtime AI model on each call. There
are some interesting concurrency problems syncing state between
Twilio, our backend, and the frontend, and knowing which calls to
connect, which to continue in the background, and when to start the
next call.
- Realtime audio AI & precision/recall/latency tradeoffs
(algorithms & models) - We use audio data, transcription, silence
detection, and several other signals to detect whether a live phone
call is a voicemail, a human, or a dial tree. Here, latency is a
third factor added to the standard precision/recall tradeoff
because it's important we can detect humans quickly. Our approach
involves LLM embeddings, few-shot learning, data labeling, and
continuous monitoring of model performance in prod.
- Latency (infrastructure) - If our model took 5 seconds to
detect a human on a phone call, the human would hang up. It's
imperative we can detect quickly and that our users can execute
calls quickly. There's latency across the detection pipeline
including transcription models, audio models, websockets, Twilio
API, database transactions, etc.
- Smart call funnels & playbooks (data wrangling, backend eng,
GPT-3, UX) - At what point in the conversation do my reps get
stuck? What are the toughest questions that we need to address? Can
I "program" a playbook so that the product will help my team
standardize toward best-practices? We're using GPT-3 and other
LLM's to turn companies' mostly unstructured call data into
actionable strategies & feedback loops.
- Conversation embeddings & markov models (ML modeling) - What
does the anatomy of a call look like? If I say XYZ, what are the
different ways the prospect might answer and the probabilities of
each? Conditioned on the first half of the call, what do I say next
to maximize the likelihood that I book a demo at the end of the
call? Can we use LLM's to generate embeddings of conversations that
we can use to cluster similar conversation patterns and predict
where the conversation is headed?
Tech stack
Frontend: React, Typescript, MobX, Backend: Node.js, Express,
Typescript, Technologies: Firebase, Firestore, Websockets, Twilio,
WebRTC, Postgres, Redis, ML: GPT, Transformers, PyTorch, signal
processing, few-shot classification.
Candidate Requirements:
- 3+ years experience building complex systems (ideally somewhat
related to ours)
- You're a confident, independent, and experienced engineer who
is used to extreme ownership and solving hard problems
- 5+ years of experience as a software engineer or in a related
technical role
Compensation:$160,000 - $240,000 base + equity
https://www.recruitingfromscratch.com/
#J-18808-Ljbffr
Keywords: Recruiting From Scratch, San Mateo , Senior Product Engineer, Engineering , San Francisco, California
Didn't find what you're looking for? Search again!
Loading more jobs...