How Salary Recommender Tool Can Make Financial Decisions Easy

Empowering individuals to make good financial decisions

Introduction to Salary Recommender

In this case study, we will understand the pain problems of the working professionals in terms of budgeting the salary and also understand how we can solve these problems using salary recommender tool

What was done as part of this Salary Recommender case study

Step 1: Pain Problem

Compiled issues from use of financial apps/manual calculators such as manual entry, rigid templates, and lack of personalized recommendations.

Step 2: User Research

Formulated hypotheses, identified user cohorts, floated surveys, and analyzed the results to validate pain points and needs.

Step 3: Analysis

Synthesized survey data into actionable insights — preferences for personalized, simple, and goal-driven budgeting tools emerged.

Step 4: Product Strategy

Vision: Empower individuals to make financial decisions easily.
Target: 22–35 yr working professionals.
Goals: Personalized recommendations, mobile-first, social-friendly.

Step 5: Development

Built lightweight web app using HTML, JS.
Modular design for scalability.
Deployed on WordPress as embedded tool for finance blog.

Step 6: Go-to Market

Used blog, LinkedIn, Twitter & YouTube for traffic.
Ran SEO + blog analytics for acquisition.
Positioned tool through storytelling-based case study.

Pain Problems

No Recommendation
Rigid Templates
Complex and Manual Entry

User Research

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Hypothesis

Most of the users who does budgeting are doing it manually in excel

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Users Targeted

Users from IT and MBA background

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Methods

  • Surveys (28 responses)
  • 1:1 Interviews
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Key Insights

  • 42% of users are doing manual tracking of budgeting in excel
  • 71% of users needed clear breakdowns of salary budgeting

Product Strategy

️Vision

Empowering individuals to make financial decisions easily

Target Audience

Age group: 22 – 60, working professionals

Goals

  • Personalized Recommendation
  • Mobile Friendly
  • Knowledge Sharing
  • Monetization & Scalability

Key Metrics

  • Website traffic increment of 5% quarterly
  • Engagement of 40% users

Road Map

  • MVP – Plain salary budget recommendation
  • Release 2.0 (Month 2) – Customizable additions under each bucket of needs, wants and savings
  • Release 3.0 (Month 3) – Saving recommendation, basically where to park your savings

Solution

  • Use AI tools to develop the tool using PHP, HTML and JavaScript
  • Tweak it for the WordPress website

Go-To-Market Strategy

  • Leverage social media platforms like LinkedIn, Twitter, WhatsApp and YouTube to promote the tool
  • Use SEO optimization techniques
  • Use Analytics tools to gather user engagement, acquisition insights
  • Publish case study on the tool in the personal blog

Now that we have seen the case study, please check out the salary recommender tool here – Salary Recommender Tool

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