At a Glance
- Tasks: Drive innovation in AI by developing evaluation frameworks for model performance.
- Company: Join Tether, a leader in digital finance and blockchain technology.
- Benefits: Work remotely with a global team and enjoy a dynamic work culture.
- Why this job: Be part of a fintech revolution, collaborating with top minds to set industry standards.
- Qualifications: Degree in Computer Science or related field; PhD preferred with AI R&D experience.
- Other info: Opportunity to influence real-world applications and enhance AI model reliability.
The predicted salary is between 48000 - 84000 £ per year.
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AI Research Engineer (Model Evaluation), London
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Location:
London, European Union
Job Category:
Internet
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Job Reference:
Job Views:
1
Posted:
18.07.2025
Expiry Date:
01.09.2025
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Job Description:
Join Tether and Shape the Future of Digital Finance
At Tether, we’re not just building products, we’re pioneering a global financial revolution. Our cutting-edge solutions empower businesses—from exchanges and wallets to payment processors and ATMs—to seamlessly integrate reserve-backed tokens across blockchains. By harnessing the power of blockchain technology, Tether enables you to store, send, and receive digital tokens instantly, securely, and globally, all at a fraction of the cost. Transparency is the bedrock of everything we do, ensuring trust in every transaction.
Innovate with Tether
Tether Finance: Our innovative product suite features the world’s most trusted stablecoin, USDT , relied upon by hundreds of millions worldwide, alongside pioneering digital asset tokenization services.
But that’s just the beginning:
Tether Power: Driving sustainable growth, our energy solutions optimize excess power for Bitcoin mining using eco-friendly practices in state-of-the-art, geo-diverse facilities.
Tether Data: Fueling breakthroughs in AI and peer-to-peer technology, we reduce infrastructure costs and enhance global communications with cutting-edge solutions like KEET , our flagship app that redefines secure and private data sharing.
Tether Education : Democratizing access to top-tier digital learning, we empower individuals to thrive in the digital and gig economies, driving global growth and opportunity.
Tether Evolution : At the intersection of technology and human potential, we are pushing the boundaries of what is possible, crafting a future where innovation and human capabilities merge in powerful, unprecedented ways.
Why Join Us?
Our team is a global talent powerhouse, working remotely from every corner of the world. If you’re passionate about making a mark in the fintech space, this is your opportunity to collaborate with some of the brightest minds, pushing boundaries and setting new standards. We’ve grown fast, stayed lean, and secured our place as a leader in the industry.
If you have excellent English communication skills and are ready to contribute to the most innovative platform on the planet, Tether is the place for you.
Are you ready to be part of the future?
About the job:
As a member of our AI model team, you will drive innovation across the entire AI lifecycle by developing and implementing rigorous evaluation frameworks and benchmark methodologies for pre-training, post-training, and inference. Your work will focus on designing metrics and assessment strategies that ensure our models are highly responsive, efficient, and reliable across real-world applications. You will work on a wide spectrum of systems, from resource-efficient models designed for limited hardware environments to complex, multi-modal architectures that integrate text, images, and audio.
We expect you to have deep expertise in advanced model architectures, pre-training and post-training practices, and inference evaluation frameworks. Adopting a hands-on, research-driven approach, you will develop, test, and implement novel evaluation strategies that rigorously track key performance indicators such as accuracy, latency, throughput, and memory footprint. Your evaluations will not only benchmark model performance at each stage, from the foundational pre-training phase to targeted post-training refinements and final inference but will also provide actionable insights.
A key element of this role is collaborating with cross-functional teams including product management, engineering, and operations to share your evaluation findings and integrate stakeholder feedback. You will engineer robust evaluation pipelines and performance dashboards that serve as a common reference point for all stakeholders, ensuring that the insights drive continuous improvement in model deployment strategies. The ultimate goal is to set industry-leading standards for AI model quality and reliability, delivering scalable performance and tangible value in dynamic, real-world scenarios.
Responsibilities :
Develop, test, and deploy integrated frameworks that rigorously assess models during pre-training, post-training, and inference. Define and track key performance indicators such as accuracy, loss metrics, latency, throughput, and memory footprint across diverse deployment scenarios.
Curate high-quality evaluation datasets and design standardized benchmarks to reliably measure model quality and robustness. Ensure that these benchmarks accurately reflect improvements achieved through both pre-training and post-training processes, and drive consistency in evaluation practices.
Engage with product management, engineering, data science, and operations teams to align evaluation metrics with business objectives. Present evaluation findings, actionable insights, and recommendations through comprehensive dashboards and reports that support decision-making across functions.
Systematically analyze evaluation data to identify and resolve bottlenecks across the model lifecycle. Propose and implement optimizations that enhance model performance, scalability, and resource utilization on resource-constrained platforms, ensuring efficient pre-training, post-training, and inference.
Conduct iterative experiments and empirical research to refine evaluation methodologies, staying abreast of emerging techniques and trends. Leverage insights to continuously enhance benchmarking practices and improve overall model reliability, ensuring that all stages of the model lifecycle deliver measurable value in real-world applications.
A degree in Computer Science or related field. Ideally PhD in NLP, Machine Learning, or a related field, complemented by a solid track record in AI R&D (with good publications in A* conferences).
Demonstrated experience in designing and evaluating AI models at multiple stages from pre-training, post-training, and inference. You should be proficient in developing evaluation frameworks that rigorously assess accuracy, convergence, loss improvements, and overall model robustness, ensuring each stage of the AI lifecycle delivers measurable real-world value.
Strong programming skills and hands-on expertise in evaluation benchmarks and frameworks are essential. Familiarity with building, automating, and scaling complex evaluation and benchmarking pipelines, and experience with performance metrics: latency, throughput, and memory footprint.
Proven ability to conduct iterative experiments and empirical research that drive the continuous refinement of evaluation methodologies. You should be adept at staying abreast of emerging trends and techniques, leveraging insights to enhance benchmarking practices and model reliability.
Demonstrated experience collaborating with diverse teams such as product, engineering, and operations in order to align evaluation strategies with organizational goals. You must be skilled at translating technical findings into actionable insights for stakeholders and driving process improvements across the model development lifecycle.
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AI Research Engineer (Model Evaluation) employer: Bitfinex
Contact Detail:
Bitfinex Recruiting Team
StudySmarter Expert Advice 🤫
We think this is how you could land AI Research Engineer (Model Evaluation)
✨Tip Number 1
Familiarise yourself with the latest trends in AI model evaluation. Read up on recent publications and case studies that focus on pre-training, post-training, and inference methodologies. This will not only enhance your knowledge but also give you talking points during interviews.
✨Tip Number 2
Network with professionals in the fintech and AI sectors. Attend relevant conferences, webinars, or meetups to connect with like-minded individuals. Building relationships can lead to valuable insights and potential referrals for the AI Research Engineer position at Tether.
✨Tip Number 3
Prepare to discuss your hands-on experience with evaluation frameworks and performance metrics. Be ready to share specific examples of how you've implemented these in past projects, as this will demonstrate your practical skills and understanding of the role's requirements.
✨Tip Number 4
Showcase your collaborative skills by highlighting any previous experiences where you worked with cross-functional teams. Emphasising your ability to communicate technical findings to non-technical stakeholders will be crucial, as this is a key aspect of the role at Tether.
We think you need these skills to ace AI Research Engineer (Model Evaluation)
Some tips for your application 🫡
Tailor Your CV: Make sure your CV highlights relevant experience in AI model evaluation, including any specific projects or research that align with the responsibilities outlined in the job description. Use keywords from the job posting to demonstrate your fit for the role.
Craft a Compelling Cover Letter: In your cover letter, express your passion for AI and fintech. Discuss how your background in developing evaluation frameworks and your understanding of performance metrics can contribute to Tether's mission. Be sure to mention any collaborative experiences with cross-functional teams.
Showcase Your Technical Skills: Highlight your programming skills and hands-on experience with evaluation benchmarks in both your CV and cover letter. Mention specific tools or languages you are proficient in, as well as any relevant publications or research that demonstrate your expertise in AI R&D.
Prepare for Potential Questions: Anticipate questions related to your experience with model evaluation and performance metrics. Be ready to discuss specific examples of how you've developed and implemented evaluation strategies, and how these have led to improvements in model performance.
How to prepare for a job interview at Bitfinex
✨Understand the Role
Make sure you thoroughly understand the responsibilities of an AI Research Engineer, especially in model evaluation. Familiarise yourself with key concepts like pre-training, post-training, and inference, as well as performance metrics such as accuracy and latency.
✨Showcase Your Expertise
Prepare to discuss your previous experience in designing and evaluating AI models. Be ready to share specific examples of frameworks you've developed or methodologies you've implemented that align with the job requirements.
✨Collaborate Effectively
Since the role involves working with cross-functional teams, be prepared to demonstrate your collaboration skills. Think of examples where you've successfully worked with product management, engineering, or operations to achieve common goals.
✨Ask Insightful Questions
Prepare thoughtful questions about Tether's approach to AI model evaluation and their future projects. This shows your genuine interest in the company and helps you assess if it's the right fit for you.