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About Handshake
Handshake is the career network for the AI economy. 20 million knowledge workers, 1,600 educational institutions, 1 million employers (including 100% of the Fortune 50), and every foundational AI lab trust Handshake to power career discovery, hiring, and upskilling, from freelance AI training gigs to first internships to full-time careers and beyond. This unique value is leading to unparalleled growth; in 2025, we tripled our ARR at scale.
Why join Handshake now:
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Shape how every career evolves in the AI economy, at global scale, with impact your friends, family and peers can see and feel
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Work hand-in-hand with world-class AI labs, Fortune 500 partners and the world’s top educational institutions
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Join a team with leadership from Scale AI, Meta, xAI, Notion, Coinbase, and Palantir, among others
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Build a massive, fast-growing business with billions in revenue
About the Role
Handshake is hiring a Machine Learning Engineer I for the Network & Core Relevance team. The recommender systems playbook that dominated the last decade is being rewritten, and we're hiring the engineers who will lead that rewrite.
We're rebuilding our core discovery engine around generative recommendation architectures: unified retrieval and ranking under shared transformer backbones, semantic item tokenization, graph-aware representation learning, and preference-aligned training objectives. This is the most significant architectural shift in recommender systems in a generation, and it's happening in production.
In this role, you'll take end-to-end ownership of ML models and features that determine how students and employers find each other. You'll work on hard problems — behavioral signal sparsity in a search domain, cold-start at institutional scale, multi-objective optimization across a three-sided marketplace — and you'll be expected to take big swings on them.
Your Role
- Owner:
Take end-to-end ownership of ML models and features — from problem framing and experimentation through deployment and production monitoring — with growing autonomy over time.
- Innovator:
Develop and iterate on machine learning models that improve core relevance and network-driven signals, including graph-based and embedding-based approaches.
- Collaborator:
Partner closely with senior engineers, data scientists, and product managers to design experiments, interpret results, and translate findings into product impact.
Desired Capabilities
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Bachelor's degree in Computer Science, Data Science, or a related technical field.
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1–3 years of industry or research experience in machine learning or a related area.
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Proficiency in Python and hands-on experience with ML frameworks such as Py Torch or Tensor Flow.
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Solid understanding of core ML concepts: ranking, classification, regression, model evaluation, and validation.
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Familiarity with software engineering best practices including version control, testing, and code reviews.
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Experience with SQL and data analysis techniques.
Preferred Qualifications
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MS or PhD degree in a relevant field.
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Experience in applied ML in domains such as recommendations, personalization, search, NLP, or graph-based learning.
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Familiarity with generative recommendation approaches — including semantic item tokenization (RQ-VAE, residual quantization), unified retrieval-ranking architectures, or sequential recommendation models — even if through research or coursework rather than production.
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Exposure to preference-aligned training objectives (RLHF, DPO, reward modeling) and interest in applying them to multi-objective recommendation settings.
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Hands-on experience with Graph Neural Networks or graph-based representation learning for user or item modeling.
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Familiarity with dense retrieval, two-tower architectures, or embedding-based candidate generation at scale.
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Experience with ML lifecycle management including experiment tracking, feature engineering pipelines, and production monitoring.
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Experience with cloud infrastructure such as GCP, AWS, or Azure in the context of ML workflows.
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Publications or contributions at venues such as SIGIR, KDD, WSDM, Rec Sys, NeurIPS, or ICML — particularly in retrieval, ranking, or generative modeling.
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Strong communication skills with the ability to present technical work clearly to both technical and non-technical audiences.
Perks
Handshake delivers benefits that help you feel supported—and thrive at work and in life.
The below benefits are for full-time US employees.
🎯 Ownership:
Equity in a fast-growing company
💰 Financial Wellness: 401(k) match, competitive compensation, financial coaching
🍼 Family Support:
Paid parental leave, fertility benefits, parental coaching
💝 Wellbeing:
Medical, dental, and vision, mental health support, $500 wellness stipend
📚 Growth:
$2,000 learning stipend, ongoing development
💻 Remote & Office:
Internet, commuting, and free lunch/gym in our SF office
🏝 Time Off:
Flexible PTO, 15 holidays + 2 flex days
🤝 Connection:
Team outings & referral bonuses
Explore our mission, values, and comprehensive US benefits at joinhandshake.com/careers.
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Handshakeについて

Handshake
Series EHandshake is a career services platform that connects college students and recent graduates with employers for job opportunities and recruiting.
501-1,000
従業員数
San Francisco
本社所在地
$3.5B
企業価値
レビュー
2.8
3件のレビュー
ワークライフバランス
3.0
報酬
2.5
企業文化
2.0
キャリア
2.5
経営陣
2.0
25%
友人に勧める
良い点
Persistence can lead to successful outcomes
Initial pay agreements show potential
Job search platform provides opportunities
改善点
Disrespectful resignation and exit processes
Verbal pay agreements not honored
Long job search with many rejections
給与レンジ
8件のデータ
Intern
Intern · IT internship
1件のレポート
-
年収総額
基本給
-
ストック
-
ボーナス
-
面接体験
5件の面接
難易度
3.2
/ 5
期間
14-28週間
内定率
60%
体験
ポジティブ 60%
普通 0%
ネガティブ 40%
面接プロセス
1
Application Review
2
Recruiter Screen
3
Technical Phone Screen
4
Onsite/Virtual Interviews
5
Final Interview
6
Offer
よくある質問
Technical Knowledge
Behavioral/STAR
Coding/Algorithm
Past Experience
Culture Fit
ニュース&話題
With a handshake, Spain and Mexico put diplomatic tussle over their colonial past behind them - The Batesville Daily Guard
The Batesville Daily Guard
News
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1d ago
With a handshake, Spain and Mexico put diplomatic tussle over their colonial past behind them - AP News
AP News
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1d ago
1220 AM & 104.3 FM | Salem Oregon News Talk Radio - KSLM Radio
KSLM Radio
News
·
1d ago
With a handshake, Spain and Mexico put diplomatic tussle over their colonial past behind them - Oskaloosa Herald
Oskaloosa Herald
News
·
2d ago