Call Us Now

+91 9606900005 / 04

For Enquiry

legacyiasacademy@gmail.com

Why Women Risk Being Left Behind by AI

Why is it in News?

  • Recent analysis based on Indias latest Time Use Survey (2024) highlights a structural time poverty faced by women, raising concerns that the AI-driven future of work may deepen gender inequality.
  • As India pushes AI-led growth through initiatives like the India AI Mission, evidence shows women lack time, access, and flexibility required to upskill for AI-era jobs.
  • Aligns with broader debates on:
    • Automation risks
    • Right to disconnect
    • Gender budgeting
    • India’s Viksit Bharat @2047 vision.

Relevance

  • GS I – Society
    • Gender roles and unpaid care work
    • Time poverty and gender inequality
  • GS II – Governance
    • Gender budgeting
    • Social infrastructure (childcare, transport, water, energy)

Women’s Workload & Time Poverty

  • Labour force participation (women): ~40% (2024).
  • Average daily work (paid + unpaid):
    • Women: ~9.6 hours/day
    • Peaks at 70–80 hours/week for ages 25–39.
  • Key driver:
    • ~40% of women outside the labour force cite household & caregiving responsibilities.
  • Nature of work increase:
    • Over 80% of recent rise in women’s workforce participation comes from:
      • Unpaid family work
      • Low-paid self-employment
      • Informal, low-productivity jobs.

Gender Gap in Paid vs Unpaid Work

Across the Life Cycle

  • Men:
    • Total work: 54–60 hours/week
    • Unpaid work: minimal and stable across ages.
  • Women:
    • Total work exceeds men at almost all ages.
    • 25–39 age group:
      • Women spend 2× more time on unpaid caregiving than men.
      • Childcare is the largest component.
  • Even in later life:
    • Men’s unpaid work rises marginally (elderly care),
    • Structural inequality at home persists across income, occupation, and age.

AI-Specific Risks for Women

1. Higher Automation Exposure

  • Women overrepresented in:
    • Routine, clerical, low-skill service jobs
    • Informal and home-based work
  • These roles are more automation-prone under AI adoption.

2. Algorithmic Bias

  • AI-driven productivity metrics:
    • Ignore caregiving interruptions
    • Penalise time constraints
    • Reward uninterrupted, long-hour availability
  • Care work remains invisible to algorithms.

3. Upskilling Time Deficit

  • Women spend ~10 hours less per week than men on:
    • Learning
    • Skill enhancement
    • Self-development
  • Gap widens to 11–12 hours/week in prime working years.
  • Result:
    • Limited transition from low-skill to high-value AI-linked jobs.

Health & Well-being Costs

  • Women sleep 2–2.5 hours less per week than men during peak working years.
  • Time adjustment happens at the cost of:
    • Rest
    • Mental health
    • Physical well-being
  • Long-term impact:
    • Lower productivity
    • Higher burnout
    • Reduced career longevity.

Policy & Governance Solutions Highlighted

1. Time-Centric Policy Design

  • Shift from job-counting to outcome-based employment metrics.
  • Explicit use of time-use data in:
    • Labour policy
    • Skill missions
    • AI governance.

2. Gender Budgeting as an Enabler

  • Integrate time-use indicators into gender budgeting.
  • Prioritise sustained spending on:
    • Affordable childcare
    • Elderly care services
    • Piped water
    • Clean cooking energy
    • Safe public transport.

3. AI-Era Upskilling for Women

  • Design lifelong, flexible, modular skilling:
    • Local delivery
    • Hybrid / online formats
    • Low time-intensity learning
  • Scale targeted programmes:
    • India AI Mission
    • AI Careers for Women
  • Focus on:
    • Digital literacy
    • Applied AI tools
    • Locally relevant vocational tech skills.

Conclusion

  • AI will not automatically empower women; without time-sensitive policy design, it may entrench inequality.
  • Until women’s time is valued, freed, and integrated into growth strategy, India’s AI ambitions and Viksit Bharat @2047 vision will remain constrained by:
    • Invisible labour
    • Time poverty
    • Underutilised human capital.

December 2025
M T W T F S S
1234567
891011121314
15161718192021
22232425262728
293031  
Categories