M

Applied AI Engineer

Mem0 Official Documentation
Full-time
On-site
San Francisco
$200,000 - $250,000 USD yearly
Role Summary: Own the

0→1 . You’ll turn vague customer use cases into working proofs-of-concept that showcase what Mem0 can do. This means rapid full-stack prototyping, stitching together AI tools, and aggressively experimenting with memory retrieval approaches until the use case works end-to-end. You’ll partner closely with Research and Backend, communicate trade-offs clearly, and hand off winning prototypes that can be hardened for production. What You'll Do: Build POCs for real use cases:

Stand up end-to-end demos (UI + APIs + data) that integrate Mem0 in the customer’s flow.

Experiment with memory retrieval:

Try different embeddings, indexing, hybrid search, re-ranking, chunking/windowing, prompts, and caching to hit task-level quality and latency targets.

Prototype with Research:

Implement paper ideas and new techniques from scratch, compare baselines, and keep what wins.

Create eval harnesses:

Define small gold sets and lightweight metrics to judge POC success; instrument demos with basic telemetry.

Integrate AI tooling:

Combine LLMs, vector DBs, Mem0 SDKs/APIs, and third-party services into coherent workflows.

Collaborate tightly:

Work with Backend on clean contracts and data models; with Research on hypotheses; share learnings and next steps.

Package & handoff:

Write concise docs, scripts, and templates so Engineering can productionize quickly.

Minimum Qualifications Full-stack fluency:

Next.js/React on the front end and Python backends (FastAPI/Django/Flask) or Node where needed.

Strong Python and TypeScript/JavaScript; comfortable building APIs, wiring data models, and deploying quick demos.

Hands-on with the LLM/RAG stack: embeddings, vector databases, retrieval strategies, prompt engineering.

Track record of rapid prototyping: moving from idea → demo in days, not months; clear documentation of results and trade-offs.

Ability to design small, meaningful evaluations for a use case (quality + latency) and iterate based on evidence.

Excellent communication with Research and Backend; crisp specs, readable code, and honest status updates.

Nice to Have: Model serving/fine-tuning experience (vLLM, LoRA/PEFT) and lightweight batch/async pipelines.

Deployments on

Vercel /serverless, Docker, basic k8s familiarity; CI for demo apps.

Data visualization and UX polish for compelling demos.

Prior Forward-Deployed/Solutions/Prototyping role turning customer needs into working software.

About Mem0 We're building the memory layer for AI agents. Think long-term memory that enables AI to remember conversations, learn from interactions, and build context over time. We're already powering millions of AI interactions. We are backed by top-tier investors and are well capitalized. Our Culture Office-first collaboration

- We're an in-person team in San Francisco. Hallway chats, impromptu whiteboard sessions, and shared meals spark ideas that remote calls can't.

Velocity with craftsmanship

- We build for the long term, not just shipping features. We move fast but never sacrifice reliability or thoughtful design - every system needs to be fast, reliable, and elegant.

Extreme ownership

- Everyone at Mem0 is a builder-owner. If you spot a problem or opportunity, you have the agency to fix it. Titles are light; impact is heavy.

High bar, high trust

- We hire for talent and potential, then give people room to run. Code is reviewed, ideas are challenged, and wins are celebrated—always with respect and curiosity.

Data-driven, not ego-driven

– The best solution wins, whether it comes from a founder or an engineer who joined yesterday. We let results and metrics guide our decisions.

#J-18808-Ljbffr