Mem0 Logo

Mem0

Applied AI Engineer

Posted 19 Days Ago
In-Office
7 Locations
Mid level
In-Office
7 Locations
Mid level
The Applied AI Engineer will create POCs from customer use cases, prototype AI solutions, and collaborate with teams to integrate AI tools effectively.
The summary above was generated by AI

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.

Top Skills

Django
Docker
Fastapi
Flask
JavaScript
Kubernetes
Next.Js
Node.js
Python
React
Typescript
Vercel
Vllm

Similar Jobs

Yesterday
In-Office
8 Locations
Senior level
Senior level
Blockchain • eCommerce • Fintech • Payments • Software • Financial Services • Cryptocurrency
The Senior Machine Learning Engineer will build AI-driven customer support products, collaborate cross-functionally, and maintain large-scale ML systems, leveraging modern techniques for real-world impact.
Top Skills: AICloud ComputingLarge Language ModelsMachine LearningMlops
11 Days Ago
In-Office
Montréal, QC, CAN
Mid level
Mid level
Artificial Intelligence • Information Technology • Software • Business Intelligence
As an Applied AI Engineer, you'll design, build, and scale enterprise-level AI systems, focusing on Deep Learning and Natural Language Processing, while optimizing workflows and driving innovation.
Top Skills: Deep LearningJavaScriptMachine LearningMlopsNlpPython
23 Days Ago
In-Office or Remote
5 Locations
Mid level
Mid level
Artificial Intelligence • Digital Media
The Applied ML Engineer at Ideogram will turn generative models into production features, collaborate with teams to define metrics, and ensure ML systems' reliability.
Top Skills: JaxPythonPyTorch

What you need to know about the Montreal Tech Scene

With roots dating back to 1642, Montreal is often recognized for its French-inspired architecture and cobblestone streets lined with traditional shops and cafés. But what truly sets the city apart is how it blends its rich tradition with a modern edge, reflected in its evolving skyline and fast-growing tech industry. According to economic promotion agency Montréal International, the city ranks among the top in North America to invest in artificial intelligence, making it le spot idéal for job seekers who want the best of both worlds.

Key Facts About Montreal Tech

  • Number of Tech Workers: 255,000+ (2024, Tourisme Montréal)
  • Major Tech Employers: SAP, Google, Microsoft, Cisco
  • Key Industries: Artificial intelligence, machine learning, cybersecurity, cloud computing, web development
  • Funding Landscape: $1.47 billion in venture capital funding in 2024 (BetaKit)
  • Notable Investors: CIBC Innovation Banking, BDC Capital, Investissement Québec, Fonds de solidarité FTQ
  • Research Centers and Universities: McGill University, Université de Montréal, Concordia University, Mila Quebec, ÉTS Montréal

Sign up now Access later

Create Free Account

Please log in or sign up to report this job.

Create Free Account