Back to all jobs

Quantitative Researcher

Work from home Full-time role Hiring

The Monad Foundation is a team of dedicated ecosystem and community builders who are on a mission to massively grow the impact of decentralized tech. We believe that the Monad blockchain--the performant and parallel EVM Layer 1--will help decentralized apps eat the world. The Role We are looking for an exceptional quant to work on data science and machine learning problems in the blockchain space. The work will be challenging, as it will involve predictive modeling for a variety of topics like transaction dependencies, user behavior, network behavior, etc. We’re looking for someone who has excelled in other environments where predictive analytics had a direct impact on the bottom line, such as high-frequency trading or traditional tech. Your work will directly impact the performance and economics of one of the biggest upcoming blockchain projects in the space.

What You Will Do

Work on greenfield predictive modeling problems related to blockchain performance and system/user behavior. Problems may be open-ended; you’ll have to devise and prototype a variety of approaches before finding the correct solution. Implement production-grade solutions and take end-to-end ownership of production prediction pipelines. Who You Are At least 3 years of experience building predictive models, preferably at a HFT firm You’re creative, self-motivated and independent You have excellent knowledge of predictive modeling techniques including linear regression, decision trees, and neural nets You know numpy and pandas like the back of your hand You’ve built something significant from scratch Bonus: You are crypto-native Why Work with Us Challenging problems. You’ll tackle deeply complex and technically demanding problems, with autonomy and impact. Endless Opportunity for Impact. The Ethereum Virtual Machine (EVM) standard is ubiquitous, but existing EVM-compatible chains are slow and bandwidth-constrained. Monad’s core innovations offer developers and founders the best of both worlds (portability and performance) and are a game-changer to power global on-chain finance. The right team. You’ll be part of a world class team, who are exceptional and highly-motivated. Culture. We’re a lean team working together to achieve very ambitious goals. We are united in our culture of collaboration, low ego, and high-quality output. Strong Ecosystem. The broader Monad ecosystem has attracted support from leading investors, builders and long-term contributors. Apply To This Job

Related remote jobs

Solutions Engineer, Healthcare

Work from home Full-time role

Technical Support Engineer, Graphite

Work from home Full-time role

Senior Communications Manager

Work from home Full-time role

Senior National Account Manager

Work from home Full-time role

Transaction Privilege Tax Auditor 3

Work from home Full-time role

Principal Energy & Analytics Consultant

Work from home Full-time role

SALESFORCE APPLICATIONS DEVELOPER

Work from home Full-time role

Director of Sales - Retail

Work from home Full-time role

Monitoring Specialist - Remote

Work from home Full-time role

Quality Analyst I (Remote)

Work from home Full-time role

Experienced Part-Time Data Entry Operator – Remote Opportunity with arenaflex

Work from home Full-time role

Sales Engineer - Delphix (US-Northwest Region)

Work from home Full-time role

Corporate Account Director - Central

Work from home Full-time role

Remote Quality Control Standards Data Analyst – Data Entry & Insight – Full‑Time – $26/hr – arenaflex

Work from home Full-time role

Online Teacher, Special Education - 2026/2027

Work from home Full-time role

[Remote] Prompt Optimization Croatian (Croatia)

Work from home Full-time role

Senior Cloud Engineer

Work from home Full-time role

​Clinical Section Administrator​ 2

Work from home Full-time role

National Sales Manager (Fire and Life Safety products, Egypt)

Work from home Full-time role

Experienced Data Entry Specialist – Online English Typing Work from Home Opportunity

Work from home Full-time role