Applied AI Engineer

Arva AI
1 week ago
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Arva AI is revolutionising compliance with our cutting-edge AI Agents for business verification. By automating human manual review compliance tasks, we help financial services onboard businesses faster and reduce operational costs by 80%.

As theApplied AI Engineer, you’ll play a pivotal role in integrating advanced AI technologies into our systems, fine-tuning models, and shaping the future of AI-powered compliance solutions at Arva.

About the Role

As an Applied AI Engineer, you will:

  • Integrate AI tools and technologies seamlessly into our codebase to enhance functionality and performance.
  • Design and implement prompt engineering techniques to optimise AI outputs for real-world applications.
  • Fine-tune pre-trained models and train custom models for specific business needs, including vision models.
  • Collaborate with cross-functional teams to ensure AI solutions align with product and business goals.
  • Drive innovation in AI applications, exploring cutting-edge techniques and tools to maintain a competitive edge.

What You’ll Do

  • AI Integration:Build and deploy AI solutions that integrate with our existing infrastructure, ensuring scalability and efficiency.
  • Prompt Engineering:Develop and test prompts to optimise model performance and deliver high-quality outputs.
  • Model Fine-Tuning:Adapt and fine-tune large language models and vision models for specific use cases.
  • Custom Model Training:Train and deploy bespoke AI models tailored to solve unique compliance challenges.
  • Innovation:Stay ahead of the curve by researching and implementing the latest advancements in AI technology.
  • Collaboration:Work closely with the engineering and product teams to translate customer needs into actionable AI solutions.
  • Iterate:Continuously iterate on our AI systems to improve performance, reduce errors, and deliver value to customers.

Our Culture

At Arva AI, we are driven by three core principles:

1. Deliver Value Fast

Speed + ownership is our superpower. We value action over perfection. We're not afraid to get our hands dirty, experiment, and iterate quickly to achieve our goals, and completely own the outcome.

2. Customer First, Team Second, Self Last

Our priority is creating value for our customers. We then focus on building a supportive, growth-oriented team environment, putting individual needs last to ensure collective success.

3. Transparency

We believe in open communication and full visibility across teams and roles. Decisions, successes, and failures are shared openly to foster trust and collaboration.

What We’re Looking For

  • Experience:3+ years in applied AI, ML engineering, or related roles, with a strong track record of delivering AI solutions.
  • Technical Expertise:Proficient in Python, TensorFlow/PyTorch, and deep learning frameworks. Experience with integrating AI models into production codebases.
  • AI Skills:Hands-on experience with prompt engineering, fine-tuning pre-trained models, and training custom models, including vision models.
  • Product Mindset:Strong understanding of how AI can solve real-world problems, with a focus on customer needs.
  • Research Orientation:Ability to stay updated with the latest advancements in AI and apply them effectively.
  • Collaboration:Excellent communication skills to work across teams and explain complex AI concepts to non-technical stakeholders.
  • Ownership:A proactive, problem-solving mindset with the ability to take full responsibility for projects and outcomes.
  • Growth-Oriented:Excited to learn new skills, tackle challenges, and adapt as the company scales.

Why Join Us?

  • Be part of an early-stage startup with significant ownership and influence over the AI strategy.
  • Work on cutting-edge AI technologies that transform how businesses operate.
  • Collaborate with a passionate, mission-driven team dedicated to innovation.
  • Work from anywhere in the world for 4 weeks a year, in addition to regular team offsites.
  • Competitive salary and equity package, with bi-annual salary review and yearly performance based equity refresh.

Ready to Build the Future of AI-Powered Compliance?

If you’re excited to shape the future of compliance with state-of-the-art AI solutions, we’d love to hear from you. Apply now to become an Arvanaut as our Applied AI Engineer.

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