Affine

Hi, We're Affine!

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New York City
Private
1-50
Software Development

Affine is building an incentivized RL environment that pays miners for making incremental improvements on tasks like program synthesis and coding. Operating on Bittensor's Subnet 64 (Chutes), we've created a sybil-proof, decoy-proof, copy-proof, and overfitting-proof mechanism that incentivizes genuine model improvements. Our vision is to commoditize reasoning—intelligence's highest form—by directing and aggregating the work-effort of a large, non-permissioned group on RL tasks to break the intelligence sound barrier.

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Showing all of 20

Exceptional Front End Developer

 • 
Affine
Remote
Private
1-50

Affine is building an incentivized RL environment that pays miners for making incremental improvements on tasks like program synthesis and coding. Operating on Bittensor's Subnet 64 (Chutes), we've created a sybil-proof, decoy-proof, copy-proof, and overfitting-proof mechanism that incentivizes genuine model improvements. Our vision is to commoditize reasoning—intelligence's highest form—by directing and aggregating the work-effort of a large, non-permissioned group on RL tasks to break the intelligence sound barrier.

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We are looking for a top-of-the-range front-end developer to craft the visual interface for a new company which is building the pinnacle element of AI and human intelligence.

We’re building the apex interface for decentralized AI that rivals OpenAI’s chat interface in beauty and belongs to everyone. Our brand draws from the alchemical philosopher’s stone: a

holy union of intelligence and humanity, turning AI into a digital commodity; gold. You’ll turn studio-grade design systems and motion specs into living, breathing product surfaces.

The web app chat interface should be 1:1 to Figma/designs with impeccable craft.

What you’ll build

  • Chat UI with real-time streaming, model switcher, searchable history, and a “temporary / incognito” mode
  • A cohesive design system with micro-interactions and page transitions that feel elegant
  • Motion that respects performance and accessibility
  • Interfaces that rival OpenAI’s polish while expressing our distinct aesthetic
  • Simplistically sacred, sharply futuristic

What proves you can do it

Send your portfolio of pixel-perfect builds for top brands/studios to hello@affine.io

  • Mastery of React/Next.js, TypeScript, Tailwind, Framer Motion; comfort with shadcn/ui
  • Real-time UI patterns (SSE/WebSocket), streaming states, optimistic UX Taste + rigor

    ## Nice to have

  • Spline/WebGL experience; strong interaction design instincts
  • Experience shipping AI chat or messaging products
  • Familiarity with decentralized tech/Bittensor or AI interface work
  • The stack you’ll likely touch Next.js • React • TypeScript • Tailwind • Native WS (streaming via
  • Chutes API)

Keywords: Front-End Development, Creative Technologist, Chat UI, Interaction Design, Framer Motion, Web Animation, Microinteractions, Design Systems, Minimalism, Futurism, Digital

Alchemy, Sacred Geometry, Philosopher’s Stone, Next.js, React, Tailwind, shadcn/ui, Aesthetic Interfaces, Decentralized AI, Bittensor, Open Source Design, Conversational UI, Visionary

Design, Code × Design

2025-08-27

Apply NowApply Now

https://www.hiretechladies.com/jobs/exceptional-front-end-developer-affine-ie?utm_source=hiretechladies.com&ref=hiretechladies.com&utm_source=hiretechladies.com&utm_medium=job_board

Senior ML Engineer, Distributed RL & Post-Training Infrastructure

 • 
Affine
Remote
Private
1-50

Affine is building an incentivized RL environment that pays miners for making incremental improvements on tasks like program synthesis and coding. Operating on Bittensor's Subnet 64 (Chutes), we've created a sybil-proof, decoy-proof, copy-proof, and overfitting-proof mechanism that incentivizes genuine model improvements. Our vision is to commoditize reasoning—intelligence's highest form—by directing and aggregating the work-effort of a large, non-permissioned group on RL tasks to break the intelligence sound barrier.

lMcU
29Ah
vr2v
9azy

About Affine 

Affine is building an incentivized RL environment that pays miners for making incremental improvements on tasks like program synthesis and coding. Operating on Bittensor's Subnet 64 (Chutes), we've created a sybil-proof, decoy-proof, copy-proof, and overfitting-proof mechanism that incentivizes genuine model improvements. Our vision is to commoditize reasoning—intelligence's highest form—by directing and aggregating the work-effort of a large, non-permissioned group on RL tasks to break the intelligence sound barrier.

Overview 

We're seeking an exceptional ML Engineer to build and optimize the infrastructure for our competitive RL environment. You'll architect systems where validators identify models that dominate the pareto frontier across multiple environments, creating a winners-take-all dynamic that forces continuous improvement. Your engineering expertise will be critical to scaling our incentivized RL approach and enabling fast advancement in model intelligence through directed competition.

Responsibilities

Distributed RL Competition Infrastructure

  • Design and implement scalable evaluation systems for models competing across multiple RL environments
  • Build pareto frontier tracking systems that identify dominating models across all evaluation tasks
  • Develop anti-gaming mechanisms: sybil-proofing, decoy detection, copy prevention, and overfitting mitigation
  • Create fault-tolerant systems handling continuous model evaluation and ranking updates

Post-Training & Improvement Pipeline

  • Architect systems enabling miners to download, improve, and resubmit pareto frontier models
  • Implement GRPO, PPO, and other RL algorithms optimized for program synthesis and coding tasks
  • Build infrastructure for incremental model improvements with efficient fine-tuning pipelines
  • Develop evaluation frameworks for diverse RL environments (program abduction, coding, reasoning)
  • Create automated systems for detecting genuine improvements vs. gaming attempts

Validator & Evaluation Systems

  • Build high-throughput model evaluation infrastructure across multiple RL environments
  • Implement efficient pareto frontier computation algorithms for multi-objective optimization
  • Develop real-time leaderboard systems tracking model dominance and miner contributions
  • Create robust validation mechanisms ensuring fair competition and accurate rankings
  • Build inference load balancing systems for publicly available model serving

Incentive & Anti-Gaming Mechanisms

  • Implement cryptographic proofs for model ownership and improvement verification
  • Build systems to detect and prevent sybil attacks across multiple miner identities
  • Develop decoy-proof evaluation ensuring models can't be optimized for specific test cases
  • Create copy-detection algorithms identifying unauthorized model cloning
  • Design overfitting prevention through dynamic evaluation set rotation

Performance & Scale Engineering

  • Optimize evaluation throughput for handling 1000+ model submissions daily
  • Implement efficient model diff systems to track incremental improvements
  • Build distributed inference infrastructure supporting concurrent model evaluations
  • Develop caching strategies for repeated model evaluations and comparisons
  • Create monitoring systems tracking network health and competitive dynamics

Required Qualifications

  • Bachelor's/Master's degree in Computer Science, Engineering, or related technical field
  • 5+ years of experience in distributed ML systems with focus on RL or competitive ML
  • Deep understanding of reinforcement learning algorithms (PPO, GRPO, DPO) and multi-objective optimization
  • Experience with blockchain/decentralized systems, preferably Bittensor or similar platforms
  • Strong systems programming skills in Python and experience with PyTorch
  • Experience building evaluation infrastructure for ML competitions or benchmarks
  • Track record of building anti-gaming mechanisms in competitive environments

Preferred Experience

  • Experience with program synthesis, code generation, or automated reasoning tasks
  • Knowledge of pareto optimization and multi-objective reinforcement learning
  • Contributions to ML competitions (Kaggle, etc.) or competitive RL environments
  • Experience with large-scale model evaluation and benchmarking systems

Technical Stack & Tools

Core Infrastructure

  • RL Frameworks: OpenRLHF, TRL, custom PPO/GRPO implementations
  • Evaluation: Custom RL environments, program synthesis benchmarks
  • Anti-Gaming: Cryptographic hashing, model fingerprinting, statistical detection

Distributed Systems

  • Load Balancing: Dynamic inference routing, model serving optimization
  • Storage: Distributed model versioning, incremental update tracking
  • Monitoring: Real-time leaderboard, network statistics, miner analytics
  • Communication: Bittensor protocol, P2P model exchange

Development Tools

  • Languages: Python
  • ML Frameworks: PyTorch, JAX for specific RL algorithms
  • Infrastructure: Kubernetes, Docker, distributed compute management
  • Databases: Time-series for performance tracking, graph DBs for model lineage

Key Engineering Challenges

  • Building fair evaluation systems resistant to sophisticated gaming attempts
  • Implementing efficient pareto frontier computation for 100+ models across multiple tasks
  • Creating incentive mechanisms that genuinely drive model improvement
  • Developing real-time evaluation infrastructure with minimal latency
  • Ensuring decentralized trust while preventing exploitation
  • Scaling to support exponential growth in miner participation

Immediate Engineering Objectives (0-6 Months)

  • Enhance current validator infrastructure for improved gaming resistance
  • Implement advanced pareto frontier tracking with multi-objective optimization
  • Build comprehensive evaluation suite for program synthesis and coding tasks
  • Develop real-time model lineage tracking to verify incremental improvements
  • Create automated detection systems for sybil, decoy, and copy attempts
  • Launch public dashboards showing network dynamics and model evolution

Long-Term Engineering Goals (6+ Months)

  • Expand RL environments to cover broader reasoning and intelligence tasks
  • Implement advanced game-theoretic mechanisms for optimal incentive design
  • Build cross-subnet integration enabling model improvements across Bittensor
  • Develop state-of-the-art program synthesis benchmarks as evaluation tasks
  • Create open-source tools enabling broader participation in incentivized RL

Impact You'll be at the forefront of commoditizing intelligence by building infrastructure that harnesses competitive dynamics for rapid AI advancement. Your work will enable the first successful directed incentive system for RL, aggregating global talent to break through intelligence barriers. This isn't just about building infrastructure—it's about creating the economic engine that will drive the next leap in AI capabilities through decentralized, competitive improvement.

How to Apply Send your application materials to: careers@affine.com

2025-08-27

Apply NowApply Now

https://www.hiretechladies.com/jobs/senior-ml-engineer-distributed-rl-post-training-infrastructure-affine-7p?utm_source=hiretechladies.com&ref=hiretechladies.com&utm_source=hiretechladies.com&utm_medium=job_board

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