refresh

Trending companies

Trending companies

Genius Sports
Genius Sports

Senior Applied AI Engineer

RoleMachine Learning
LevelSenior
LocationLausanne, California, United States
WorkOn-site
TypeFull-time
Posted2 months ago
Apply now

Required skills

Python

Java

AWS

Rust

Git

Kafka

By bringing together next-gen technology and the finest live data available, Genius Sports is enabling a new era of sports for fans worldwide, delivering experiences that are more immersive, interactive and personalized than ever before. Learn more at geniussports.com.

About the Role

We are looking for a Senior Applied AI Engineer to build production-grade, multimodal (audio/video/text) systems that convert broadcast and radio feeds into structured, real-time signals and event candidates. You will implement and evolve “agentic” components (sensor agents, specialist agents, decision logic) that power products like Audio Intelligence, semi-automated broadcast-to-data tagging, and highlight/momentum signals.

We will lean on your technical expertise and your pragmatic approach to problem solving; working in a team that prioritizes the principles of Agile delivery and continuous improvement. You will have a Data-driven, evidence-based mentality, comfortable with the principles of continuous experimentation and validation.

Key Responsibilities

  • Build and maintain multimodal agents:

  • Audio sensor agents (acoustic events, sentiment, alignment)

  • Visual sensor agents (scorebug/overlay reading, basic visual cues when applicable)

  • Specialist and decision logic components (structured event outputs, confidence, traceability)

  • Implement streaming-friendly pipelines: chunking, normalization, time-sync, async execution, and robust retry/backoff for model/tool calls.

  • Develop prompt-as-code with strict JSON contracts, schema validation, and deterministic post-processing to reduce brittleness.

  • Improve system robustness under noisy inputs by:

  • Designing fallback behaviors (degraded modes)

  • Adding guardrails and confidence thresholds

  • Instrumenting traces/metrics for latency + cost + accuracy

  • Partner with product, platform, and domain leads to translate sport rules/edge cases into validation logic and to integrate outputs into downstream consumers (tagging, live feeds, analytics).

  • Contribute to the evaluation workflow by adding test cases, failure mode categories, and regression checks for prompts and model routing.

  • Stay up-to-date with emerging Gen AI technologies, tools, and best practices.

  • Mentor and support other team members in data engineering principles and practices.

**Qualifications **

  • 5–8+ years of professional software engineering experience (backend and/or ML systems).

  • Strong proficiency in one or more of: Python, Java, Rust.

  • Hands-on experience building production services involving LLM or multimodal model integration (including Gemini, ChatGPT or Claude).

  • Comfortable with ambiguity, iterative experimentation, and evidence-based decision-making in an Agile environment.

  • Experience with streaming data platforms like Kafka, Pulsar, Flink

  • Experience with AWS Bedrock or Google Vertex AI

  • Familiarity with version control systems (e.g., Git).

  • Excellent problem-solving skills and attention to detail.

  • Ability to work independently and as part of a team.

  • Strong communication skills.

**Preferred Qualifications **

  • Experience with audio ML / speech / acoustic event detection, or media pipelines (audio/video chunking, sync).

  • Experience with RAG or rules/config grounding for sport-specific logic (league configs, terminology, rulebooks).

  • Familiarity with evaluation practices (golden sets, precision/recall, drift monitoring) and production observability.

  • Experience operating systems where cost/latency tradeoffs matter (routing “flash vs heavy” models, caching, batching).

The salary for this role is based on an annualized range of $180,000 - $230,000 USD. This role will also be eligible to take part in Genius Sports Group's benefits plan.

We enjoy an ‘office-first’ culture and maximize opportunities to collaborate, connect and learn together. Our hybrid working models differ depending on your role and location. Occasional travel may be required.

As well as a competitive salary and range of benefits, we’re committed to supporting employee wellbeing and helping you grow your skills, experience and career. Learn more about how rewarding life at Genius can be at Reward | Genius Sports.** One team, being brave, driving change We strive to create an inclusive working environment, where everyone feels a sense of belonging and the ability to make a difference. Learn more about our values and culture at** Culture | Genius Sports.

**Let us know when you apply if you need any assistance during the recruiting process due to a disability.

Total Views

0

Total Apply Clicks

0

Total Mock Apply

0

Total Bookmarks

0

About Genius Sports

Genius Sports

Genius Sports provides data and technology services to sports leagues, teams, and media companies. The company offers live data feeds, betting solutions, and fan engagement platforms for the sports industry.

1,001-5,000

Employees

London

Headquarters

$2.5B

Valuation

Reviews

10 reviews

3.9

10 reviews

Work-life balance

3.8

Compensation

2.5

Culture

4.2

Career

2.8

Management

3.4

72%

Recommend to a friend

Pros

Flexible work arrangements and remote options

Supportive and collaborative team environment

Good management and understanding leadership

Cons

Below market compensation and pay

Heavy workload and overwhelming demands

Limited career advancement opportunities

Salary Ranges

7 data points

Senior/L5

Senior/L5 · Head of Client Strategy & Implementation, Americas

2 reports

$134,550

total per year

Base

$117,000

Stock

-

Bonus

-

$134,550

$134,550

Interview experience

2 interviews

Difficulty

3.0

/ 5

Interview process

1

Application Review

2

Recruiter Screen

3

Technical Phone Screen

4

Hiring Manager Interview

5

Onsite/Virtual Interviews

6

Offer

Common questions

Technical Knowledge

Coding/Algorithm

Behavioral/STAR

Past Experience

Sports Industry Knowledge