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Manager Meta Data Science Jobs in Arizona (NOW HIRING)

Sr. Analyst, Data Science

Tempe, AZ · On-site

$85K - $143K/yr

Work closely with data engineers, product managers, and business stakeholders to access, understand, and leverage data assets across the enterprise. * Document analytical workflows, assumptions, code ...

... to manage multiple, diverse stakeholders across business areas and leadership levels * Experience with gathering and interpreting business requirements for designing and scalable data science ...

Our data science teams also embrace staying current with the evolving data science landscape ... Strong communication skills and the ability to manage multiple, diverse stakeholders across ...

Senior Meta Media Buyer

Gilbert, AZ · On-site

$55K - $90K/yr

Deep, hands-on understanding of Meta Ads Manager, audience strategy, and full-funnel campaign structuring * Strong analytical mindset able to interpret raw data, extract insights, and translate ...

Data Scientist II

Tempe, AZ · Hybrid

$131K - $172K/yr

Deliver high-quality analytical and modeling outputs with limited manager oversight * Collaborate closely with data science peers and cross-functional partners across business units * Help ensure ...

Data Scientist II

Tempe, AZ · On-site

$131K - $172K/yr

Deliver high-quality analytical and modeling outputs with limited manager oversight * Collaborate closely with data science peers and cross-functional partners across business units * Help ensure ...

Data Scientist II

Tempe, AZ · Hybrid

$131K - $172K/yr

Deliver high-quality analytical and modeling outputs with limited manager oversight * Collaborate closely with data science peers and cross-functional partners across business units * Help ensure ...

The Data Scientist III drives internal data analytics projects. Projects will vary from short ... Bachelor's Degree in an analytical field (Mathematics, Computer Science, Information Management ...

The Data Scientist III drives internal data analytics projects. Projects will vary from short ... Bachelor's Degree in an analytical field (Mathematics, Computer Science, Information Management ...

The Data Scientist III drives internal data analytics projects. Projects will vary from short ... Bachelor's Degree in an analytical field (Mathematics, Computer Science, Information Management ...

... management and automation of IT operational workflows. Qualifications : Required : • Bachelor's degree in Data Science, Computer Science, Statistics, Engineering, Mathematics, or a related field ...

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Manager Meta Data Science information

What is the 80 20 rule in data science?

The 80/20 rule in data science suggests that roughly 80% of results come from 20% of the efforts or data. For a Manager of Data Science, understanding this principle helps prioritize features, models, or data sources that have the most significant impact on outcomes, enabling more efficient resource allocation and decision-making.

How much do meta data scientist managers make?

Meta Data Science Manager salaries typically range from $150,000 to $220,000 annually, depending on experience, location, and company size. They often receive additional compensation such as bonuses and stock options, and require strong leadership, technical skills, and experience managing data science teams.

What does a Manager of Meta Data Science do?

A Manager of Meta Data Science leads a team of data scientists in developing and implementing advanced analytics, machine learning models, and data-driven strategies for Meta (formerly Facebook). They are responsible for overseeing projects, mentoring team members, collaborating with cross-functional partners, and ensuring that data science solutions align with business goals. This role often requires both technical expertise and strong leadership skills to drive impactful decisions using data. Additionally, they work to improve processes, set research direction, and communicate findings to stakeholders.

How does a Manager Meta Data Science typically collaborate with cross-functional teams, and what communication challenges might arise?

A Manager Meta Data Science frequently collaborates with product managers, engineers, data analysts, and business stakeholders to ensure data-driven decision-making aligns with organizational goals. One common challenge is translating complex data science concepts into actionable business insights that are easily understood by non-technical teams. Effective communication and regular alignment meetings are essential to bridge knowledge gaps and ensure everyone is on the same page. Building strong relationships across departments and fostering a culture of transparency can help mitigate misunderstandings and streamline project delivery.

Can data scientists make $300k?

Data scientists, including those in managerial roles like Manager of Data Science, can earn $300,000 or more annually, especially with extensive experience, advanced skills in machine learning and big data tools, and in high-paying industries such as finance or technology. Achieving this level often requires a combination of technical expertise, leadership abilities, and sometimes stock options or bonuses.

Is 40 too late for data science?

For a Manager in Data Science, age is not a barrier to entering or advancing in the field. Success depends on skills, experience, and continuous learning, such as mastering tools like Python or R and staying current with industry trends, regardless of age.

What are the key skills and qualifications needed to thrive as a Manager Meta Data Science, and why are they important?

To thrive as a Manager Meta Data Science, you need strong expertise in data science, machine learning, statistical analysis, and a relevant advanced degree, often in computer science, mathematics, or a related field. Familiarity with programming languages like Python or R, data visualization tools, and cloud-based platforms, as well as experience with big data frameworks, are typically required. Leadership, strategic thinking, and effective communication are crucial soft skills that enable success in managing teams and collaborating across departments. These skills are important because they ensure the ability to lead complex projects, drive data-driven decision-making, and align analytics goals with organizational objectives.
What are the most commonly searched types of Meta Data Science jobs in Arizona? The most popular types of Meta Data Science jobs in Arizona are:
What are popular job titles related to Manager Meta Data Science jobs in Arizona? For Manager Meta Data Science jobs in Arizona, the most frequently searched job titles are:
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Sr. Analyst, Data Science

Sr. Analyst, Data Science

LPL Financial

Tempe, AZ • On-site

$85K - $143K/yr

Full-time

Medical, Retirement, PTO

Posted 8 days ago


LPL Financial rating

7.5

Company rating: 7.5 out of 10

Based on 69 frontline employees who took The Breakroom Quiz

115th of 148 rated financial services


Job description

Where Ambition Meets Innovation

Build a career that matches all your initiative with an impressive dose of innovation. From cutting-edge resources and a collaborative environment to the freedom to make an impact and more, you'll find the ingredients you need at LPL Financial to shape your success while helping clients pursue their financial goals.

Job Overview

We are seeking a curious and analytically rigorous Senior Analyst, Data Science to uncover key insights that drive strategic decisions and product development for Growth Strategy & Enablement (GS&E). This role is ideal for a data scientist who is equally comfortable writing code, building models, and communicating findings to non-technical stakeholders. You'll be part of the growing GS&E Data Science team.

You'll closely collaborate with the team and other key business partners to frame analytical problems, design and execute analyses, and translate results into actionable recommendations. This is a high-impact, hands-on role for someone who wants to apply classical data science methods-machine learning, statistics, and causal inference-in a fast-moving, mission-driven environment.

Key Responsibilities

Insight Generation & Analysis

  • Design and execute end-to-end analyses that surface meaningful business insights, from data extraction and cleaning through modeling and interpretation.

  • Apply statistical methods-including hypothesis testing, regression, and causal inference-to answer business questions with rigor and clarity.

  • Translate complex analytical outputs into clear narratives and visualizations for business stakeholders and senior leadership.

Machine Learning & Modeling

  • Build, validate, and deploy supervised and unsupervised machine learning models to support segmentation, prediction, and optimization use cases.

  • Evaluate model performance using appropriate metrics and communicate trade-offs and assumptions to both technical and non-technical audiences.

  • Stay current on advances in applied ML and bring emerging methods to bear on relevant business problems.

Causal Inference & Experimentation

  • Design and analyze A/B tests and observational studies to identify causal relationships and measure the impact of business initiatives.

  • Apply quasi-experimental methods when randomized experiments are not feasible.

  • Partner with business teams to build a culture of evidence-based decision-making.

Data & Collaboration

  • Work closely with data engineers, product managers, and business stakeholders to access, understand, and leverage data assets across the enterprise.

  • Document analytical workflows, assumptions, code and findings to ensure reproducibility and knowledge sharing across the team.

  • Contribute to building a scalable data science practice by identifying opportunities to improve tools, processes, and methodologies.

What are we looking for?

We're looking for strong collaborators who deliver exceptional client experiences and thrive in fast-paced, team-oriented environments. Our ideal candidates pursue greatness, act with integrity, and are driven to help our clients succeed. We value those who embrace creativity, continuous improvement, and contribute to a culture where we win together and create and share joy in our work.

Requirements

  • 2-4 years of experience in a data science, quantitative analysis, or applied research role in a business setting.

  • Proficiency in Python for data manipulation, statistical analysis, and machine learning, that goes beyond Jupyter notebooks; strives for clean, Git version-controlled code.

  • Solid grounding in statistics, probability, and machine learning fundamentals.

  • Hands-on experience with causal inference methods and experimental design.

  • Experience working with large-scale data in SQL & Snowflake; comfortable building and maintaining clean, reproducible data pipelines as needed to support modeling and analysis work.

  • Data visualization skills and ability to communicate findings clearly to non-technical stakeholders; note this role will not be focused on developing dashboards.

  • Financial services experience is a plus but not required.

  • Bachelor's degree in Statistics, Mathematics, Computer Science, Economics, or a related quantitative field required; Master's degree preferred.

#LI-PA


Pay Range:

$85,902.00 - $143,170.00
Actual base salary varies based on factors, including but not limited to, relevant skill, prior experience, education, base salary of internal peers, demonstrated performance, and geographic location. Additionally, LPL Total Rewards package is highly competitive, designed to support your success at work, at home, and at play - such as 401K matching, health benefits, employee stock options, paid time off, volunteer time off, and more. Your recruiter will be happy to discuss all that LPL has to offer!

Company Overview:

LPL Financial Holdings Inc. (Nasdaq: LPLA) is among the fastest growing wealth management firms in the U.S. As a leader in the financial advisor-mediated marketplace(6) , LPL supports over 32,000 financial advisors and the wealth management practices of approximately 1,100 financial institutions, servicing and custodying approximately $2.3 trillion in brokerage and advisory assets on behalf of approximately 8 million Americans. The firm provides a wide range of advisor affiliation models, investment solutions, fintech tools and practice management services, ensuring that advisors and institutions have the flexibility to choose the business model, services, and technology resources they need to run thriving businesses. For further information about LPL, please visit www.lpl.com.


At LPL, independence means that advisors and institution leaders have the freedom they deserve to choose the business model, services, and technology resources that allow them to run a thriving business. They have the flexibility to do business their way. And they have the freedom to manage their client relationships, because they know their clients best. Simply put, we take care of our advisors and institutions, so they can take care of their clients.


For further information about LPL, please visit www.lpl.com.


Join the LPL team and help us make a difference by turning life's aspirations into financial realities. Please log in or create an account to apply to this position. Principals only. EOE.


Information on Interviews:

LPL will only communicate with a job applicant directly from an@lplfinancial.comemail address and will never conduct an interview online or in a chatroom forum. During an interview, LPL will not request any form of payment from the applicant, or information regarding an applicant's bank or credit card. Should you have any questions regarding the application process, please contact LPL's Human Resources Solutions Center at(855) 575-6947.


EAC 5.19.26


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