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Backend Developer
FyreGig,
@Aayush1291
Aayush Balip
@Aayush1291
Enthusiastic and dedicated fresher in the field of Software Engineering. I actively seek opportunities to broaden my skill set and contribute meaningfully to projects.
Enthusiastic and dedicated fresher in the field of Software Engineering. I actively seek opportunities to broaden my skill set and contribute meaningfully to projects.
Backend Developer, FyreGig
Navi Mumbai, India
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Working with Django to create RESTful API for the website. Also learning and working on creating an AI agent using Python.
Creating a website for students to apply for internships using ReactJS. Main role is to create APIs and make use of AI agent in analysing different aspects of the users resume.
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FyreGig,
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Bynocs,
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DhanSaathi- Empowering Earners with Smarter Money 1. What We Plan to Build We are developing DhanSaathi, an AI-powered autonomous financial coaching app designed specifically for gig workers, informal sector employees, and individuals with irregular incomes. DhanSaathi integrates an advanced Agentic AI agent that continuously learns from users' spending behavior, income variability, and financial goals by securely aggregating data from banking, digital wallets, and gig platforms. The AI agent proactively delivers personalized budgeting advice, savings nudges, risk alerts, and financial goal tracking through conversational chat and app notifications, helping users optimize their finances in real time despite unstable cash flows. 2. What Specific Pain Points Does It Address Irregular Income Volatility: Gig and informal workers face unpredictable earnings, making budgeting and saving very challenging. Lack of Personalized Guidance: Existing financial tools offer static advice that doesn’t adapt to changing cash flows. Financial Uncertainty and Stress: Missed payments, overdraft fees, and insufficient emergency savings are common problems. Behavioral Barriers: Difficulty planning, inconsistent saving habits, and reactive spending habits increase financial vulnerability. Limited Financial Literacy: Many lack easy-to-understand, actionable financial coaching tailored to their unique situations. Who Is the Target Audience? Gig economy workers: delivery riders(Ola, Swiggy, etc.), rideshare drivers, freelancers. Informal sector employees: contract laborers, artisans, daily wage earners. Everyday earners managing multiple income streams or seasonal earnings with limited access to financial services. Especially focused on urban, semi-urban, and regional Indian populations. 4. GTM (Go-To-Market) & Revenue Streams Go-To-Market Strategy: Build partnerships with gig economy platforms and fintech startups to embed DhanSaathi AI within existing apps. Collaborate with government welfare schemes and NGOs to enhance financial inclusion in underserved communities. Launch direct-to-consumer apps with vernacular language support targeting Tier 2/3 cities. Use community referral programs and financial literacy campaigns for wider adoption. Revenue Streams: Freemium subscription model with basic coaching free and premium advanced features (goal automation, investment tips). B2B SaaS licensing to gig platforms, fintech, and financial institutions for scalable integration. Referral commissions from regulated financial products (loans, insurance) with user consent. Anonymized data analytics to financial ecosystem partners supporting product development and targeting. 5. Technologies Used and Leveraging Agentic AI Agentic AI Architecture: Implements observe–reason–plan–act loops enabling autonomous, adaptive financial coaching. The AI agent perceives changing user data, reasons about risks and opportunities, plans personalized actions, and executes nudges or recommendations automatically. Reinforcement Learning (RL): Continuously improves coaching strategies by learning from user interactions, financial outcomes, and feedback signals, enabling a dynamic, personalized experience that evolves over time. Explainable Machine Learning: Provides transparent and interpretable recommendations, increasing user trust and meeting regulatory compliance by explaining the rationale and confidence behind advice. Natural Language Processing (NLP): Powers conversational interfaces allowing users to interact naturally with the AI agent via chatbots and voice assistants for intuitive guidance. Secure API Integrations: Connects securely with banking APIs, digital wallets, and gig platforms for real-time ingestion of financial transaction data under strict user consent and encrypted channels. Cloud-Native Backend: Scalable, serverless cloud infrastructure hosted on AWS with microservices architecture supporting AI workloads and seamless updates. Mobile-First Frontend: React Native app delivering a responsive, user-friendly interface optimized for diverse device capabilities and regional languages. Robust Privacy & Compliance: End-to-end encryption, GDPR and local data protection compliance, role-based access controls, and audit logging uphold user privacy and security. image image