採用
About Hebbia
The AI platform for investors and bankers that generates alpha and drives upside.
Founded in 2020 by George Sivulka and backed by Peter Thiel and Andreessen Horowitz, Hebbia powers investment decisions for Black Rock, KKR, Carlyle, Centerview, and 40% of the world’s largest asset managers. Our flagship product, Matrix, delivers industry-leading accuracy, speed, and transparency in AI-driven analysis. It is trusted to help manage over $30 trillion in assets globally.
We deliver the intelligence that gives finance professionals a definitive edge. Our AI uncovers signals no human could see, surfaces hidden opportunities, and accelerates decisions with unmatched speed and conviction. We do not just streamline workflows. We transform how capital is deployed, how risk is managed, and how value is created across markets.
Hebbia is not a tool. Hebbia is the competitive advantage that drives performance, alpha, and market leadership.
The Role
This is the founding hire for product analytics at Hebbia. Today, we do not have a canonical product metrics layer. We do not have clean fact tables around product usage. The person who steps into this role will define what our core product metrics are: what counts as an active user, what engagement actually means, what signals correlate with retention.
This is not a dashboarding role. The goal is to shape product decisions with data, not just report on them. You will identify which workflows drive repeat usage, where users drop off, what features move engagement, and what differentiates power users from casual users across our enterprise customer base. You will turn product intuition into data-backed insight.
The role sits at the intersection of analytics engineering, product analytics, and data science. You will build the infrastructure and do the analysis. Define the metrics, build the pipelines, create the dashboards, and use what you built to inform the roadmap.
Responsibilities
-
Define and implement Hebbia’s core product metrics from scratch: active users, engagement, retention, feature adoption, account health. Build the canonical definitions the entire company uses.
-
Design and build the product analytics infrastructure: fact tables, clean data models, and the analytics layer that sits on top of our product data.
-
Build and maintain executive and product dashboards that leadership and product teams use to make decisions.
-
Write DAGs, transforms, and data pipelines that support analytics. Work with engineering to instrument the product so usage data is captured correctly.
-
Analyze customer behavior across our B2B customer base: account-level usage patterns, workflow adoption, expansion signals, and churn risk indicators.
-
Inform the product roadmap using data. Identify friction in user flows, surface feature adoption patterns, and highlight opportunities for product improvement.
-
Partner with product managers and engineers to translate product questions into measurable data and structured experiments.
-
Establish data quality standards and documentation so the metrics layer you build is trusted and maintained.
Who You Are
-
3+ years of experience in product analytics, analytics engineering, or data science at a B2B SaaS company or high-growth startup
-
You have defined, implemented, and operationalized product metrics from scratch, ideally at a company where the analytics function did not exist yet
-
Strong in SQL and Python. You can write production-quality transforms, not just ad hoc queries.
-
Experience with modern data stack tools: dbt, Airflow, Snowflake, Big Query, or similar. You understand data modeling and warehouse architecture.
-
You have built dashboards and reporting that product teams and leadership actually use to make decisions
-
You understand B2B product analytics: account-level metrics, multi-user workflows, enterprise engagement patterns, and why B2B retention analysis is different from consumer
-
You translate ambiguous product questions into structured analyses. You do not wait for someone to hand you a spec.
-
Strong product intuition. You care about why users behave the way they do, not just what the numbers say.
-
Clear communicator. You can present findings to engineers, product managers, and executives with equal effectiveness.
-
Experience with enterprise customers in finance, legal, or consulting domains is a plus
-
Familiarity with usage-based or consumption-based pricing models and the analytics that support them is a plus
-
Experience using AI/LLM tools to accelerate analysis, build data products, or automate reporting workflows is a plus
Compensation
The salary range for this position is set between $180,000 to $260,000. This range may be inclusive of several career levels at Hebbia and will be narrowed during the interview process based on the candidate’s experience and qualifications. Adjustments outside of this range may be considered for candidates whose qualifications significantly differ from those outlined in the job description.
Life @ Hebbia
-
PTO: Unlimited
-
Insurance: Medical + Dental + Vision + 401K + Wellness Benefits
-
Eats: Catered lunch daily + Door Dash dinner credit if you ever need to stay late
-
Parental leave policy: 3 months non-birthing parent, 4 months for birthing parent
-
Fertility benefits: $15k lifetime benefit
-
New hire equity grant: Competitive equity package with unmatched upside potential
総閲覧数
0
応募クリック数
0
模擬応募者数
0
スクラップ
0
類似の求人
Hebbiaについて

Hebbia
Series BHebbia is an American technology company that develops artificial intelligence and automation tools for financial and legal research. The company was founded in 2020 by George Sivulka, a former Stanford University PhD student, with its headquarters in New York City.
51-200
従業員数
New York
本社所在地
$1.3B
企業価値
レビュー
4.0
10件のレビュー
ワークライフバランス
3.2
報酬
3.8
企業文化
4.1
キャリア
4.2
経営陣
3.5
75%
友人に勧める
良い点
Flexible work hours and remote options
Great team culture and supportive environment
Good benefits and perks
改善点
Heavy workload and overwhelming demands
Long hours during peak projects
Compensation could be better
給与レンジ
12件のデータ
Junior/L3
Junior/L3 · Analyst
1件のレポート
$156,000
年収総額
基本給
$120,000
ストック
-
ボーナス
-
$156,000
$156,000
面接体験
62件の面接
難易度
3.4
/ 5
期間
14-28週間
内定率
37%
体験
ポジティブ 66%
普通 20%
ネガティブ 14%
面接プロセス
1
Phone Screen
2
Technical Interview
3
System Design
4
Behavioral
5
Team Fit
よくある質問
Tell me about a challenging project
System design question
Coding problem
Why this company
ニュース&話題
Show HN: An unstructured data workspace for data transformations with LLM
hi HN!<p>a couple of months ago I had to analyze a few thousand audio recordings to help identify issues with customer support. i was able to get some raw high-level initial results with python scripts invoking LLM APIs, but they were too general and unhelpful. writing basic prompts is easy, but tuning them and making them specific enough to ensure no faint signal is missed is hard. you need to iterate through the data with an initial prompt, segment the data into different buckets, chain anothe
HN
·
3w ago
·
4
Official Reddit Home of Hebbia | A New Era of Institutional Intelligence
Founded in 2020 by George Sivulka, Hebbia was purpose-built to meet the demands of finance. Today, Hebbia is the leading AI platform for institutional finance—backed by Andreessen Horowitz, Peter Thiel, and Index Ventures. We are trusted by investment banks and over 40% of the largest asset managers by AUM trust Hebbia to work the way they do: fast, accurate, and collaborative across the full deal cycle. We have joined Reddit to connect with the financial professionals who use Hebbia to move f
·
3w ago
·
1
·
1
Seyfarth Leads Next Phase of Deal Execution and Diligence Through AI Partnership with Hebbia - Business Wire
Business Wire
News
·
5w ago
Neuromorphic sphere topology Hebbian learning as a path to grounded intelligence
I've been working on a hypothesis and want to get feedback from people who know more than I do. The hypothesis Intelligence might be a phase transition at scale, not an algorithmic problem. Fly: 100k neurons — no generalization Mouse: 70M — basic associative learning Human: 86B — abstract reasoning This doesn't look like a smooth curve. It looks like thresholds. If that's true, then no amount of architectural cleverness crosses it — only scale + grounding does. The grounding probl
HN
·
5w ago
·
1




