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Research Project on Launch of Café shop




                              Presented by:
                                 •Vaibhav S
Flow of the Presentation
           • Introduction
    • Growth of Industry in India
      • Major Players in India
            • Objective
          • Methodology
  • Sample design and sample size
            • Limitation
   • Research finding and analysis
        • Recommendation
Annexure
• Annexure 1- TOMA
   – Annexure 1.1-Consumption and ordering pattern
   – Annexure 1.2-Fequently visit of consumer in Coffee Shop
• Annexure 2- Opportunity Matrix
• Annexure 3- Demographics related analysis
   –   Annexure 3.1-TOMA with Gender
   –   Annexure 3.2-TOMA with Age Group
   –   Annexure 3.3-TOMA with Occupation
   –   Annexure 3.4-TOMA with Income
• Annexure 4- Spending behavior
   – Annexure 4.1-General Category
   – Annexure 4.2-Occupation Category
• Annexure 5- Preferences of coffee shop
• Annexure 6- Deciding factors for visit
Introduction
• Café industry is currently one of the biggest and fastest
  growing sector.
• Industry consist of:
   – Individual Café
   – Hotel Café
   – Retail Café
Growth of Café industry in India
• Coffee- first seat in South India.
• In order to spread, coffee house emerged at various place.
  Served in places for lawyers and the educated class to hold
  discussions.
• Raayars mess, Chennai established in 1940, oldest coffee
  houses in South India which servers first class filter coffee.
• Five star hotel started opening coffee shops which carted high
  end customers. The drink has now become more of a concept
  than merely a drink
Contd….
• Over a decade number of café owners tried to westernize the
  taste of coffee in contrast to the filter coffee.
• Large retail chain like Barista, Café coffee Day etc. opened,
  concept is not merely selling coffee but about developing the
  national brand.
• Coffee Market in India:
   – Branded coffee 53%
   – Unbranded 40%
   – Café 7%
Major Players of the Café Industry
              in India
• Café Coffee Day- CCD pioneered the café concept in India in
  1996. The largest cafe retail chain in India, with 1000 cafes in
  141 cities and many in its base, Bangalore
• Barista- Established in India in 1999. The chain has 200 stores
  in India
• Mocha- Opened in Mumbai in 2001. 20 units out of which 12
  are franchised.
• Costa Coffee- UK based café chain, entered in India in 2005.
  Around 36 stores in India.
Objective
• Main Objective
     Feasibility analysis for the launch of new coffee shop
• Sub-Objective
             Customer perception about the coffee.
         Relative market share of existing coffee shop.
  To understand customer consumption pattern of the coffee.
                 Ordering pattern at coffee shop.
                       Opportunity matrix.
 Customer feedback and recommendation for positioning of the
                             new brand.
Methodology
• The methods used for data collection were primary as well as
  secondary.
• Primary Data collection
   – Quantitative analysis- Stratified Random Sampling from different age
     groups and different occupation.
• Secondary Data collection- Websites and even articles from
  newspapers available on the internet.
• The research design that was followed was of Exploratory and
  Descriptive Research.
Sample Design and Sample Size
• Sample Size: Quantitative data collected through survey
  varied from
   – Different Income Group
   – Different Age Group
   – Different Occupation
• Sample Size: 150 was drawn on the basis of those who avail
  the services of coffee shops.
• All the respondents are from Mumbai.
Limitation
• The survey done on the consumers are only from Mumbai, so
  the report does not show the preferences of the consumers
  all through out India.
• Findings of the data is restricted mostly to Central and
  Harbor Mumbai.
Research Findings and Analysis
                                        1. TOMA (Annexure 1)
        Coffee Shop   Percent

CCD
                                 55.7


barista
                                 30.9


Costa Coffee
                                 10.1


others
                                  3.4


Total
                                100.0
• Annexure 1.1                                                       Consumption Pattern


                                                                          Consumption   Percent
                                                                       2-3 times
                                                                                                   50.0

                                                                       0-1 times
                                                                                                   49.3

                                                                       4-5 times
                                                                                                     .7
                Ordering Pattern                                       Total
                                                                                                  100.0

                                        Frequency       Percent
        coffee                                 136          90.7
        cold drink/ milk shakes/ iced
                                                    7        4.7
        tea
        snacks                                      4        2.7
        tea                                         1             .7
        others                                      1             .7
        Total                                  149          99.3
Missi System
                                                    1             .7
ng
Total                                          150         100.0
• Annexure 1.2


         Visit         Frequency        Percent
 once in a month
                                   40         26.7

 fortnightly
                                   39         26.0

 2-3 times in a week
                                   38         25.3

 once in a week
                                   29         19.3

 never
                                    4             2.7

 Total
                               150           100.0
2. OPPORTUNITY MATRIX (Annexure 2)
Opportunity Matrix

           Parameter     Importance          Satisfaction          I-S            Opportunity Lost matrix I+(I-S))

Offers                                 3.2            3.4467                 0                                        3.2
                                3.7667
Customer Service                                      3.3067               0.46                                4.2267
                                      3.68
Price                                                 3.0867             0.5933                                4.2733

Quality                         4.5267                      3.82         0.7067                                5.2334
                                      3.98
Fragrance                                             3.7733             0.2067                                4.1867
                                      3.68
Variety                                               3.6133             0.0667                                3.7467
                                      4.08
Ambience                                                    3.72           0.36                                      4.44
                                       3.7
Availability                                          3.5267             0.1733                                3.8733
                                3.6067
Overall Service                                       3.5933             0.0134                                3.6201
                                3.9333
Location                                              3.6467             0.2866                                4.2199
3. DEMOGRAPHICS RELATED ANALYSIS

• Gender (Annexure 3.1)
• Annexure 3.1

                                                                          Gender
                                                                   Male            Female        Total
  CCD            Count                                                    45                38           83
                 % within which brand name you recollect when
                 we say Coffee Shop                                  54.2%            45.8%        100.0%




  barista        Count                                                    11                35           46
                 % within which brand name you recollect when we
                 say Coffee Shop                                     23.9%            76.1%        100.0%




  Costa Coffee   Count                                                    15                 0           15
                 % within which brand name you recollect when we
                 say Coffee Shop                                    100.0%              .0%        100.0%




  others         Count                                                     2                 3            5
                 % within which brand name you recollect when we
                 say Coffee Shop                                     40.0%            60.0%        100.0%
• TOMA with age group (Annexure 3.2)
• Annexure 3.2


                                                            Age

                              less than 18   18-25       26-35       36-45         45 and above
  CCD            Count                   4       48          25                5              1



                 % of Total          2.7%     32.2%       16.8%          3.4%               .7%
  barista        Count                   3       25          18                0              0



                 % of Total          2.0%     16.8%       12.1%              .0%            .0%
  Costa Coffee   Count                   0       15              0             0              0



                 % of Total            .0%    10.1%         .0%              .0%            .0%
  others         Count                   0           0           3             1              1



                 % of Total            .0%      .0%        2.0%              .7%            .7%
• TOMA with Occupation (Annexure 3.3)
• Annexure 3.2

                                                            Profession

                                                      Professional                            Unemploye
                              Student       Housewife      s       Business     Service           d
  CCD            Count                  6            2          15         12         47              1




                 % of Total      4.0%            1.3%       10.1%        8.1%      31.5%            .7%
  barista        Count                  6            3           6          8         23              0




                 % of Total      4.0%            2.0%        4.0%        5.4%      15.4%            .0%
  Costa Coffee   Count                  0            0           0          5         10              0




                 % of Total       .0%              .0%        .0%        3.4%       6.7%            .0%
  others         Count                  0            1           2          0             2           0




                 % of Total       .0%              .7%       1.3%        .0%        1.3%            .0%
• TOMA with Income Group (Annexure 3.4)
• Annexure 3.4

                                                  Monthly income
                                                                           more then
                              10,000-25,000 25,000-45,000 45,000-60,000     60,000
  CCD            Count                   13            28             17               25



                 % of Total           8.7%         18.8%           11.4%        16.8%
  barista        Count                    8            11             14               13



                 % of Total           5.4%          7.4%           9.4%          8.7%
  Costa Coffee   Count                    4            11              0                0



                 % of Total           2.7%          7.4%            .0%           .0%
  others         Count                    3             0              1                1



                 % of Total           2.0%           .0%            .7%           .7%
4. SPENDING BEHAVIOUR

    • General category (Annexure 4.1)

                  Frequency   Percent

Valid   0-100
                         37       24.7


        100-200
                         56       37.3


        200-300
                         46       30.7


        300+
                         11        7.3


        Total
                        150      100.0
• Occupation category (Annexure 4.2)
                                          How much do you spend


                                                                                                Percentag
                             0-100         100-200       200-300       300+        Total        e (%)
Profession   Unemployed               0              1             0          0             1         0.67
Count        Service                 22           36           16             8            82        54.67

             Business                 0              3         20             2            25        16.67

             Professionals           15              3             5          1            24          16

             Housewife                0              5             1          0             6           4

             Student                  0              8             4          0            12           8

Total                                37           56           46             11       150
5. Preference of Coffee Shop (Annexure 5)
                         Frequency       Percent

Valid     CCD
                                 66          44.0

          Barista
                                 24          16.0

          Mocha
                                     4         2.7

          Costa Coffee
                                     9         6.0

          others
                                     2         1.3

          Total
                                105          70.0

Missing   System
                                 45          30.0

Total
                                150         100.0
6. Criteria that affects the choice (Annexure 6)

                        Frequency       Percent

Valid     Environment
                                65           43.3

          Price
                                40           26.7

          Quality
                                35           23.3

          Service
                                    8         5.3

          Total
                               148           98.7

Missing   System
                                    2         1.3

Total
                               150          100.0
Recommendation
• Ambience and Quality are the key parameter that affect the
  choice of Coffee Shop. Where Ambience accounts for 4.44
  and Quality accounts for 5.23 (Annexure 6).
• Most of the consumers only order coffee while they visit
  coffee shops, so awareness to be made about other
  beverages and snacks.(Annexure 1.1)
• Availability of snacks.
• Right mix of advertisement.
• Introduction of “Happy Hours” and privileged cards for
  regular customers.
• Tie-ups with companies for bulk offers on vouchers.
  (Annexure 4.2)
THANK YOU!!!!

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Research Report on Coffee Shops in Mumbai

  • 1. Research Project on Launch of Café shop Presented by: •Vaibhav S
  • 2. Flow of the Presentation • Introduction • Growth of Industry in India • Major Players in India • Objective • Methodology • Sample design and sample size • Limitation • Research finding and analysis • Recommendation
  • 3. Annexure • Annexure 1- TOMA – Annexure 1.1-Consumption and ordering pattern – Annexure 1.2-Fequently visit of consumer in Coffee Shop • Annexure 2- Opportunity Matrix • Annexure 3- Demographics related analysis – Annexure 3.1-TOMA with Gender – Annexure 3.2-TOMA with Age Group – Annexure 3.3-TOMA with Occupation – Annexure 3.4-TOMA with Income • Annexure 4- Spending behavior – Annexure 4.1-General Category – Annexure 4.2-Occupation Category • Annexure 5- Preferences of coffee shop • Annexure 6- Deciding factors for visit
  • 4. Introduction • Café industry is currently one of the biggest and fastest growing sector. • Industry consist of: – Individual Café – Hotel Café – Retail Café
  • 5. Growth of Café industry in India • Coffee- first seat in South India. • In order to spread, coffee house emerged at various place. Served in places for lawyers and the educated class to hold discussions. • Raayars mess, Chennai established in 1940, oldest coffee houses in South India which servers first class filter coffee. • Five star hotel started opening coffee shops which carted high end customers. The drink has now become more of a concept than merely a drink
  • 6. Contd…. • Over a decade number of café owners tried to westernize the taste of coffee in contrast to the filter coffee. • Large retail chain like Barista, Café coffee Day etc. opened, concept is not merely selling coffee but about developing the national brand. • Coffee Market in India: – Branded coffee 53% – Unbranded 40% – Café 7%
  • 7. Major Players of the Café Industry in India • Café Coffee Day- CCD pioneered the café concept in India in 1996. The largest cafe retail chain in India, with 1000 cafes in 141 cities and many in its base, Bangalore • Barista- Established in India in 1999. The chain has 200 stores in India • Mocha- Opened in Mumbai in 2001. 20 units out of which 12 are franchised. • Costa Coffee- UK based café chain, entered in India in 2005. Around 36 stores in India.
  • 8. Objective • Main Objective Feasibility analysis for the launch of new coffee shop • Sub-Objective Customer perception about the coffee. Relative market share of existing coffee shop. To understand customer consumption pattern of the coffee. Ordering pattern at coffee shop. Opportunity matrix. Customer feedback and recommendation for positioning of the new brand.
  • 9. Methodology • The methods used for data collection were primary as well as secondary. • Primary Data collection – Quantitative analysis- Stratified Random Sampling from different age groups and different occupation. • Secondary Data collection- Websites and even articles from newspapers available on the internet. • The research design that was followed was of Exploratory and Descriptive Research.
  • 10. Sample Design and Sample Size • Sample Size: Quantitative data collected through survey varied from – Different Income Group – Different Age Group – Different Occupation • Sample Size: 150 was drawn on the basis of those who avail the services of coffee shops. • All the respondents are from Mumbai.
  • 11. Limitation • The survey done on the consumers are only from Mumbai, so the report does not show the preferences of the consumers all through out India. • Findings of the data is restricted mostly to Central and Harbor Mumbai.
  • 12. Research Findings and Analysis 1. TOMA (Annexure 1) Coffee Shop Percent CCD 55.7 barista 30.9 Costa Coffee 10.1 others 3.4 Total 100.0
  • 13. • Annexure 1.1 Consumption Pattern Consumption Percent 2-3 times 50.0 0-1 times 49.3 4-5 times .7 Ordering Pattern Total 100.0 Frequency Percent coffee 136 90.7 cold drink/ milk shakes/ iced 7 4.7 tea snacks 4 2.7 tea 1 .7 others 1 .7 Total 149 99.3 Missi System 1 .7 ng Total 150 100.0
  • 14. • Annexure 1.2 Visit Frequency Percent once in a month 40 26.7 fortnightly 39 26.0 2-3 times in a week 38 25.3 once in a week 29 19.3 never 4 2.7 Total 150 100.0
  • 15. 2. OPPORTUNITY MATRIX (Annexure 2)
  • 16. Opportunity Matrix Parameter Importance Satisfaction I-S Opportunity Lost matrix I+(I-S)) Offers 3.2 3.4467 0 3.2 3.7667 Customer Service 3.3067 0.46 4.2267 3.68 Price 3.0867 0.5933 4.2733 Quality 4.5267 3.82 0.7067 5.2334 3.98 Fragrance 3.7733 0.2067 4.1867 3.68 Variety 3.6133 0.0667 3.7467 4.08 Ambience 3.72 0.36 4.44 3.7 Availability 3.5267 0.1733 3.8733 3.6067 Overall Service 3.5933 0.0134 3.6201 3.9333 Location 3.6467 0.2866 4.2199
  • 17. 3. DEMOGRAPHICS RELATED ANALYSIS • Gender (Annexure 3.1)
  • 18. • Annexure 3.1 Gender Male Female Total CCD Count 45 38 83 % within which brand name you recollect when we say Coffee Shop 54.2% 45.8% 100.0% barista Count 11 35 46 % within which brand name you recollect when we say Coffee Shop 23.9% 76.1% 100.0% Costa Coffee Count 15 0 15 % within which brand name you recollect when we say Coffee Shop 100.0% .0% 100.0% others Count 2 3 5 % within which brand name you recollect when we say Coffee Shop 40.0% 60.0% 100.0%
  • 19. • TOMA with age group (Annexure 3.2)
  • 20. • Annexure 3.2 Age less than 18 18-25 26-35 36-45 45 and above CCD Count 4 48 25 5 1 % of Total 2.7% 32.2% 16.8% 3.4% .7% barista Count 3 25 18 0 0 % of Total 2.0% 16.8% 12.1% .0% .0% Costa Coffee Count 0 15 0 0 0 % of Total .0% 10.1% .0% .0% .0% others Count 0 0 3 1 1 % of Total .0% .0% 2.0% .7% .7%
  • 21. • TOMA with Occupation (Annexure 3.3)
  • 22. • Annexure 3.2 Profession Professional Unemploye Student Housewife s Business Service d CCD Count 6 2 15 12 47 1 % of Total 4.0% 1.3% 10.1% 8.1% 31.5% .7% barista Count 6 3 6 8 23 0 % of Total 4.0% 2.0% 4.0% 5.4% 15.4% .0% Costa Coffee Count 0 0 0 5 10 0 % of Total .0% .0% .0% 3.4% 6.7% .0% others Count 0 1 2 0 2 0 % of Total .0% .7% 1.3% .0% 1.3% .0%
  • 23. • TOMA with Income Group (Annexure 3.4)
  • 24. • Annexure 3.4 Monthly income more then 10,000-25,000 25,000-45,000 45,000-60,000 60,000 CCD Count 13 28 17 25 % of Total 8.7% 18.8% 11.4% 16.8% barista Count 8 11 14 13 % of Total 5.4% 7.4% 9.4% 8.7% Costa Coffee Count 4 11 0 0 % of Total 2.7% 7.4% .0% .0% others Count 3 0 1 1 % of Total 2.0% .0% .7% .7%
  • 25. 4. SPENDING BEHAVIOUR • General category (Annexure 4.1) Frequency Percent Valid 0-100 37 24.7 100-200 56 37.3 200-300 46 30.7 300+ 11 7.3 Total 150 100.0
  • 26. • Occupation category (Annexure 4.2) How much do you spend Percentag 0-100 100-200 200-300 300+ Total e (%) Profession Unemployed 0 1 0 0 1 0.67 Count Service 22 36 16 8 82 54.67 Business 0 3 20 2 25 16.67 Professionals 15 3 5 1 24 16 Housewife 0 5 1 0 6 4 Student 0 8 4 0 12 8 Total 37 56 46 11 150
  • 27. 5. Preference of Coffee Shop (Annexure 5) Frequency Percent Valid CCD 66 44.0 Barista 24 16.0 Mocha 4 2.7 Costa Coffee 9 6.0 others 2 1.3 Total 105 70.0 Missing System 45 30.0 Total 150 100.0
  • 28. 6. Criteria that affects the choice (Annexure 6) Frequency Percent Valid Environment 65 43.3 Price 40 26.7 Quality 35 23.3 Service 8 5.3 Total 148 98.7 Missing System 2 1.3 Total 150 100.0
  • 29. Recommendation • Ambience and Quality are the key parameter that affect the choice of Coffee Shop. Where Ambience accounts for 4.44 and Quality accounts for 5.23 (Annexure 6). • Most of the consumers only order coffee while they visit coffee shops, so awareness to be made about other beverages and snacks.(Annexure 1.1) • Availability of snacks. • Right mix of advertisement. • Introduction of “Happy Hours” and privileged cards for regular customers. • Tie-ups with companies for bulk offers on vouchers. (Annexure 4.2)