Changes
On April 30, 2025, 6:02:12 AM UTC,
-
Changed value of field
data_retreival_date
of resource RBI Daily Digital Payments to2025-04-14
(previously2025-02-14
) in Reserve Bank of India
f | 1 | { | f | 1 | { |
2 | "SDGs": [], | 2 | "SDGs": [], | ||
3 | "author": null, | 3 | "author": null, | ||
4 | "author_email": null, | 4 | "author_email": null, | ||
5 | "creator_user_id": "2d6f4b88-ac2a-4d68-8d0f-7c6235b7b442", | 5 | "creator_user_id": "2d6f4b88-ac2a-4d68-8d0f-7c6235b7b442", | ||
6 | "extras": [ | 6 | "extras": [ | ||
7 | { | 7 | { | ||
8 | "key": "fields", | 8 | "key": "fields", | ||
9 | "value": "id, date, rtgs_vol, rtgs_val, neft_vol, neft_val, | 9 | "value": "id, date, rtgs_vol, rtgs_val, neft_vol, neft_val, | ||
10 | aeps_vol, aeps_val, upi_vol, upi_val, imps_vol, imps_val, | 10 | aeps_vol, aeps_val, upi_vol, upi_val, imps_vol, imps_val, | ||
11 | nach_credit_vol, nach_credit_val, nach_debit_vol, nach_debit_val, | 11 | nach_credit_vol, nach_credit_val, nach_debit_vol, nach_debit_val, | ||
12 | netc_vol, netc_val, bbps_vol, bbps_val, cts_vol, cts_val, | 12 | netc_vol, netc_val, bbps_vol, bbps_val, cts_vol, cts_val, | ||
13 | credit_card_at_pos_and_e_commerce_vol, | 13 | credit_card_at_pos_and_e_commerce_vol, | ||
14 | credit_card_at_pos_and_e_commerce_val, | 14 | credit_card_at_pos_and_e_commerce_val, | ||
15 | debit_card_at_pos_and_e_commerce_vol, | 15 | debit_card_at_pos_and_e_commerce_vol, | ||
16 | debit_card_at_pos_and_e_commerce_val, | 16 | debit_card_at_pos_and_e_commerce_val, | ||
17 | ppis_card_at_pos_and_e_commerce_vol, | 17 | ppis_card_at_pos_and_e_commerce_vol, | ||
18 | ppis_card_at_pos_and_e_commerce_val, nfs_through_atms_vol, | 18 | ppis_card_at_pos_and_e_commerce_val, nfs_through_atms_vol, | ||
19 | nfs_through_atms_val, aeps_through_micro_atms_or_bcs_vol, | 19 | nfs_through_atms_val, aeps_through_micro_atms_or_bcs_vol, | ||
20 | aeps_through_micro_atms_or_bcs_val, credit_card_at_pos_vol, | 20 | aeps_through_micro_atms_or_bcs_val, credit_card_at_pos_vol, | ||
21 | credit_card_at_pos_val, credit_card_at_e_commerce_vol, | 21 | credit_card_at_pos_val, credit_card_at_e_commerce_vol, | ||
22 | credit_card_at_e_commerce_val, debit_card_at_pos_vol, | 22 | credit_card_at_e_commerce_val, debit_card_at_pos_vol, | ||
23 | debit_card_at_pos_val, debit_card_at_e_commerce_vol, | 23 | debit_card_at_pos_val, debit_card_at_e_commerce_vol, | ||
24 | debit_card_at_e_commerce_val, ppis_card_at_pos_vol, | 24 | debit_card_at_e_commerce_val, ppis_card_at_pos_vol, | ||
25 | ppis_card_at_pos_val, ppis_card_at_e_commerce_vol, | 25 | ppis_card_at_pos_val, ppis_card_at_e_commerce_vol, | ||
26 | ppis_card_at_e_commerce_val, government_securities_clearing_vol, | 26 | ppis_card_at_e_commerce_val, government_securities_clearing_vol, | ||
27 | government_securities_clearing_val, forex_clearing_vol, | 27 | government_securities_clearing_val, forex_clearing_vol, | ||
28 | forex_clearing_val, rupee_derivatives_vol, rupee_derivatives_val, id, | 28 | forex_clearing_val, rupee_derivatives_vol, rupee_derivatives_val, id, | ||
29 | date, m3, currency_with_public, demand_deposits_with_banks, | 29 | date, m3, currency_with_public, demand_deposits_with_banks, | ||
30 | time_deposits_with_banks, other_deposits_with_rbi, | 30 | time_deposits_with_banks, other_deposits_with_rbi, | ||
31 | reserve_bank_crd_to_gov_src, other_banks_crd_to_gov_src, | 31 | reserve_bank_crd_to_gov_src, other_banks_crd_to_gov_src, | ||
32 | reserve_bank_crd_to_comm_sctr_src, other_banks_crd_to_comm_sctr_src, | 32 | reserve_bank_crd_to_comm_sctr_src, other_banks_crd_to_comm_sctr_src, | ||
33 | net_foreign_exchange_assets_src, gov_currency_liab_to_public_src, | 33 | net_foreign_exchange_assets_src, gov_currency_liab_to_public_src, | ||
34 | net_non_monetary_liab_bnk_sctr_src, net_non_monetary_liab_rbi_src, id, | 34 | net_non_monetary_liab_bnk_sctr_src, net_non_monetary_liab_rbi_src, id, | ||
35 | year, state_name, state_code, district_name, district_code, region, | 35 | year, state_name, state_code, district_name, district_code, region, | ||
36 | population_group, no_of_offices, no_of_accounts, deposit_amount, id, | 36 | population_group, no_of_offices, no_of_accounts, deposit_amount, id, | ||
37 | year, state_name, state_code, district_name, district_code, | 37 | year, state_name, state_code, district_name, district_code, | ||
38 | bank_group, population_group, number_of_deposits, deposits, id, month, | 38 | bank_group, population_group, number_of_deposits, deposits, id, month, | ||
39 | bank_name, no_of_onsite_atms, no_of_offsite_atms, no_of_micro_atms, | 39 | bank_name, no_of_onsite_atms, no_of_offsite_atms, no_of_micro_atms, | ||
40 | no_of_pos_terminals, no_of_bharat_qr_codes, no_of_upi_qr_codes, | 40 | no_of_pos_terminals, no_of_bharat_qr_codes, no_of_upi_qr_codes, | ||
41 | no_of_credit_cards, no_of_debit_cards, | 41 | no_of_credit_cards, no_of_debit_cards, | ||
42 | credit_card_transactions_at_pos_volume, | 42 | credit_card_transactions_at_pos_volume, | ||
43 | credit_card_transactions_at_pos_value, | 43 | credit_card_transactions_at_pos_value, | ||
44 | credit_card_transactions_at_e_com_volume, | 44 | credit_card_transactions_at_e_com_volume, | ||
45 | credit_card_transactions_at_e_com_value, | 45 | credit_card_transactions_at_e_com_value, | ||
46 | credit_card_transactions_at_others_volume, | 46 | credit_card_transactions_at_others_volume, | ||
47 | credit_card_transactions_at_others_value, | 47 | credit_card_transactions_at_others_value, | ||
48 | debit_card_transactions_at_pos_volume, | 48 | debit_card_transactions_at_pos_volume, | ||
49 | debit_card_transactions_at_pos_value, | 49 | debit_card_transactions_at_pos_value, | ||
50 | debit_card_transactions_at_e_com_volume, | 50 | debit_card_transactions_at_e_com_volume, | ||
51 | debit_card_transactions_at_e_com_value, | 51 | debit_card_transactions_at_e_com_value, | ||
52 | debit_card_transactions_at_others_volume, | 52 | debit_card_transactions_at_others_volume, | ||
53 | debit_card_transactions_at_others_value, | 53 | debit_card_transactions_at_others_value, | ||
54 | cash_withdrawl_at_atm_using_credit_card_volume, | 54 | cash_withdrawl_at_atm_using_credit_card_volume, | ||
55 | cash_withdrawl_at_atm_using_credit_card_value, | 55 | cash_withdrawl_at_atm_using_credit_card_value, | ||
56 | cash_withdrawl_at_atm_using_debit_card_volume, | 56 | cash_withdrawl_at_atm_using_debit_card_volume, | ||
57 | cash_withdrawl_at_atm_using_debit_card_value, | 57 | cash_withdrawl_at_atm_using_debit_card_value, | ||
58 | cash_withdrawl_at_pos_using_debit_card_volume, | 58 | cash_withdrawl_at_pos_using_debit_card_volume, | ||
59 | cash_withdrawl_at_pos_using_debit_card_value, id, year, region, | 59 | cash_withdrawl_at_pos_using_debit_card_value, id, year, region, | ||
60 | state_name, state_code, district_name, district_code, | 60 | state_name, state_code, district_name, district_code, | ||
61 | population_group, bank_group, occupation_group, occupation_sub_group, | 61 | population_group, bank_group, occupation_group, occupation_sub_group, | ||
62 | no_of_accounts, credit_limit, amount_outstanding, id, month, | 62 | no_of_accounts, credit_limit, amount_outstanding, id, month, | ||
63 | center_name, bank_name, ecs_credit_users, ecs_credit_vol, | 63 | center_name, bank_name, ecs_credit_users, ecs_credit_vol, | ||
64 | ecs_credit_val, ecs_debit_users, ecs_debit_vol, ecs_debit_val, id, | 64 | ecs_credit_val, ecs_debit_users, ecs_debit_vol, ecs_debit_val, id, | ||
65 | month, bank_name, no_of_transactions, amt_of_transactions, | 65 | month, bank_name, no_of_transactions, amt_of_transactions, | ||
66 | active_users, id, month, bank_name, inward_interbank_volume, | 66 | active_users, id, month, bank_name, inward_interbank_volume, | ||
67 | inward_costumer_volume, inward_total_volume, inward_percentage_volume, | 67 | inward_costumer_volume, inward_total_volume, inward_percentage_volume, | ||
68 | inward_interbank_amt, inward_costumer_amt, inward_total_amt, | 68 | inward_interbank_amt, inward_costumer_amt, inward_total_amt, | ||
69 | inward_percentage_amt, outward_interbank_volume, | 69 | inward_percentage_amt, outward_interbank_volume, | ||
70 | outward_costumer_volume, outward_total_volume, | 70 | outward_costumer_volume, outward_total_volume, | ||
71 | outward_percentage_volume, outward_interbank_amt, | 71 | outward_percentage_volume, outward_interbank_amt, | ||
72 | outward_costumer_amt, outward_total_amt, outward_percentage_amt, id, | 72 | outward_costumer_amt, outward_total_amt, outward_percentage_amt, id, | ||
73 | month, bank_name, no_of_transactions, amt_of_transactions, | 73 | month, bank_name, no_of_transactions, amt_of_transactions, | ||
74 | no_of_active_costumers, id, month, bank_name, | 74 | no_of_active_costumers, id, month, bank_name, | ||
75 | no_of_debit_transactions, amt_of_debit_transactions, | 75 | no_of_debit_transactions, amt_of_debit_transactions, | ||
76 | no_of_credit_transactions, amt_of_credit_transactions" | 76 | no_of_credit_transactions, amt_of_credit_transactions" | ||
77 | } | 77 | } | ||
78 | ], | 78 | ], | ||
79 | "groups": [], | 79 | "groups": [], | ||
80 | "id": "eb565ca6-aa06-47fd-9c81-05c7ed6c538b", | 80 | "id": "eb565ca6-aa06-47fd-9c81-05c7ed6c538b", | ||
81 | "isopen": true, | 81 | "isopen": true, | ||
82 | "license_id": "odc-by", | 82 | "license_id": "odc-by", | ||
83 | "license_title": "Open Data Commons Attribution License", | 83 | "license_title": "Open Data Commons Attribution License", | ||
84 | "license_url": "http://www.opendefinition.org/licenses/odc-by", | 84 | "license_url": "http://www.opendefinition.org/licenses/odc-by", | ||
85 | "maintainer": null, | 85 | "maintainer": null, | ||
86 | "maintainer_email": null, | 86 | "maintainer_email": null, | ||
87 | "metadata_created": "2023-10-06T09:18:23.619790", | 87 | "metadata_created": "2023-10-06T09:18:23.619790", | ||
n | 88 | "metadata_modified": "2025-04-30T06:02:12.562666", | n | 88 | "metadata_modified": "2025-04-30T06:02:12.749221", |
89 | "name": "reserve-bank-of-india", | 89 | "name": "reserve-bank-of-india", | ||
90 | "notes": "The Reserve Bank of India (RBI) is the central banking | 90 | "notes": "The Reserve Bank of India (RBI) is the central banking | ||
91 | institution of India, responsible for the issuance and supply of the | 91 | institution of India, responsible for the issuance and supply of the | ||
92 | Indian Rupee and the regulation of the money market. In the context of | 92 | Indian Rupee and the regulation of the money market. In the context of | ||
93 | data and information, RBI plays a pivotal role by regularly publishing | 93 | data and information, RBI plays a pivotal role by regularly publishing | ||
94 | a plethora of economic indicators, reports, and research. This | 94 | a plethora of economic indicators, reports, and research. This | ||
95 | includes data on interest rates, inflation, foreign exchange reserves, | 95 | includes data on interest rates, inflation, foreign exchange reserves, | ||
96 | banking statistics, monetary and credit policies, and more. | 96 | banking statistics, monetary and credit policies, and more. | ||
97 | Researchers, policymakers, investors, and the general public rely on | 97 | Researchers, policymakers, investors, and the general public rely on | ||
98 | the RBI's data for insights into the health and direction of the | 98 | the RBI's data for insights into the health and direction of the | ||
99 | Indian economy. Additionally, its publications often serve as | 99 | Indian economy. Additionally, its publications often serve as | ||
100 | authoritative sources for financial analysis, economic forecasting, | 100 | authoritative sources for financial analysis, economic forecasting, | ||
101 | and policy formulation in India.", | 101 | and policy formulation in India.", | ||
102 | "num_resources": 12, | 102 | "num_resources": 12, | ||
103 | "num_tags": 1, | 103 | "num_tags": 1, | ||
104 | "organization": { | 104 | "organization": { | ||
105 | "approval_status": "approved", | 105 | "approval_status": "approved", | ||
106 | "created": "2022-12-05T03:44:54.080358", | 106 | "created": "2022-12-05T03:44:54.080358", | ||
107 | "description": "", | 107 | "description": "", | ||
108 | "id": "94317457-d297-4549-9640-7865034682c5", | 108 | "id": "94317457-d297-4549-9640-7865034682c5", | ||
109 | "image_url": "2023-12-08-070530.691105iSB-IDP-Logo.png", | 109 | "image_url": "2023-12-08-070530.691105iSB-IDP-Logo.png", | ||
110 | "is_organization": true, | 110 | "is_organization": true, | ||
111 | "name": "idp-organization", | 111 | "name": "idp-organization", | ||
112 | "state": "active", | 112 | "state": "active", | ||
113 | "title": "IDP organization", | 113 | "title": "IDP organization", | ||
114 | "type": "organization" | 114 | "type": "organization" | ||
115 | }, | 115 | }, | ||
116 | "owner_org": "94317457-d297-4549-9640-7865034682c5", | 116 | "owner_org": "94317457-d297-4549-9640-7865034682c5", | ||
117 | "private": false, | 117 | "private": false, | ||
118 | "relationships_as_object": [], | 118 | "relationships_as_object": [], | ||
119 | "relationships_as_subject": [], | 119 | "relationships_as_subject": [], | ||
120 | "resources": [ | 120 | "resources": [ | ||
121 | { | 121 | { | ||
122 | "additional_info": "The data published is only for RBI, NPCI | 122 | "additional_info": "The data published is only for RBI, NPCI | ||
123 | operated systems and Card Networks (domestic Off-Us transactions). | 123 | operated systems and Card Networks (domestic Off-Us transactions). | ||
124 | RTGS data includes only Customer and Interbank transactions.AePS data | 124 | RTGS data includes only Customer and Interbank transactions.AePS data | ||
125 | under Payment transactions include AePS Fund Transfers and BHIM | 125 | under Payment transactions include AePS Fund Transfers and BHIM | ||
126 | Aadhaar Pay transactions.UPI data includes BHIM-UPI and USSD | 126 | Aadhaar Pay transactions.UPI data includes BHIM-UPI and USSD | ||
127 | transactions.NACH Credit data includes Aadhaar Payment Bridge System | 127 | transactions.NACH Credit data includes Aadhaar Payment Bridge System | ||
128 | (APBS) transactions.NETC figures are for FASTags linked with all | 128 | (APBS) transactions.NETC figures are for FASTags linked with all | ||
129 | instruments and hence would be different from monthly bulletin which | 129 | instruments and hence would be different from monthly bulletin which | ||
130 | only includes NETC linked to bank accountsBBPS data is not included in | 130 | only includes NETC linked to bank accountsBBPS data is not included in | ||
131 | the monthly bulletin as the data is captured under other systems. For | 131 | the monthly bulletin as the data is captured under other systems. For | ||
132 | complete data on Payment System Indicators, please refer to RBI | 132 | complete data on Payment System Indicators, please refer to RBI | ||
133 | Bulletin \u2013 Table 43 published on a monthly basis.Data on Prepaid | 133 | Bulletin \u2013 Table 43 published on a monthly basis.Data on Prepaid | ||
134 | cards are only those that are processed by card networks.", | 134 | cards are only those that are processed by card networks.", | ||
135 | "cache_last_updated": null, | 135 | "cache_last_updated": null, | ||
136 | "cache_url": null, | 136 | "cache_url": null, | ||
137 | "created": "2023-10-06T11:21:01.687843", | 137 | "created": "2023-10-06T11:21:01.687843", | ||
138 | "data_extraction_page": | 138 | "data_extraction_page": | ||
139 | ttps://www.rbi.org.in/Scripts/BS_PressReleaseDisplay.aspx?prid=49901", | 139 | ttps://www.rbi.org.in/Scripts/BS_PressReleaseDisplay.aspx?prid=49901", | ||
140 | "data_insights": "What is the trend in the volume and value of | 140 | "data_insights": "What is the trend in the volume and value of | ||
141 | digital transactions across various payment systems in India, and how | 141 | digital transactions across various payment systems in India, and how | ||
142 | is this changing over time?Which payment systems are experiencing the | 142 | is this changing over time?Which payment systems are experiencing the | ||
143 | highest growth in transaction volume and value, and what factors are | 143 | highest growth in transaction volume and value, and what factors are | ||
144 | driving this growth?How are consumers using different payment systems, | 144 | driving this growth?How are consumers using different payment systems, | ||
145 | and what types of transactions are most commonly conducted through | 145 | and what types of transactions are most commonly conducted through | ||
146 | each system?What is the overall adoption rate of electronic payment | 146 | each system?What is the overall adoption rate of electronic payment | ||
147 | systems in India, and how does this compare to other countries in the | 147 | systems in India, and how does this compare to other countries in the | ||
148 | region?How are changes in government policies and regulations | 148 | region?How are changes in government policies and regulations | ||
149 | affecting the use of electronic payment systems in India, and what | 149 | affecting the use of electronic payment systems in India, and what | ||
150 | implications do these changes have for financial institutions and | 150 | implications do these changes have for financial institutions and | ||
151 | consumers?What are the key challenges facing the growth of electronic | 151 | consumers?What are the key challenges facing the growth of electronic | ||
152 | payment systems in India, and how can these be addressed to ensure | 152 | payment systems in India, and how can these be addressed to ensure | ||
153 | wider adoption and greater financial inclusion?", | 153 | wider adoption and greater financial inclusion?", | ||
154 | "data_last_updated": "2025-01-31", | 154 | "data_last_updated": "2025-01-31", | ||
n | 155 | "data_retreival_date": "2025-02-14", | n | 155 | "data_retreival_date": "2025-04-14", |
156 | "datastore_active": true, | 156 | "datastore_active": true, | ||
157 | "description": "The Reserve Bank of India (RBI) has made | 157 | "description": "The Reserve Bank of India (RBI) has made | ||
158 | available settlement data for select payment systems, capturing the | 158 | available settlement data for select payment systems, capturing the | ||
159 | volume and value of transactions made through payment systems operated | 159 | volume and value of transactions made through payment systems operated | ||
160 | by the RBI and National Payments Corporation of India (NPCI). his | 160 | by the RBI and National Payments Corporation of India (NPCI). his | ||
161 | dataset provides insights into the electronic payment systems which | 161 | dataset provides insights into the electronic payment systems which | ||
162 | facilitate various financial transactions across India.\r\nThe dataset | 162 | facilitate various financial transactions across India.\r\nThe dataset | ||
163 | covers transactions made through various payment systems including | 163 | covers transactions made through various payment systems including | ||
164 | National Electronic Funds Transfer (NEFT), Real-Time Gross Settlement | 164 | National Electronic Funds Transfer (NEFT), Real-Time Gross Settlement | ||
165 | (RTGS), Aadhaar enabled Payment System (AePS), Cheque Truncation | 165 | (RTGS), Aadhaar enabled Payment System (AePS), Cheque Truncation | ||
166 | System (CTS), Immediate Payment Service (IMPS), National Automated | 166 | System (CTS), Immediate Payment Service (IMPS), National Automated | ||
167 | Clearing House (NACH) and Unified Payments Interface (UPI). | 167 | Clearing House (NACH) and Unified Payments Interface (UPI). | ||
168 | Additionally, it includes the position of cash withdrawal transactions | 168 | Additionally, it includes the position of cash withdrawal transactions | ||
169 | using Automated Teller Machines (ATMs) and Banking Correspondents | 169 | using Automated Teller Machines (ATMs) and Banking Correspondents | ||
170 | (BCs).\r\nThe settlement data of select payment systems is a valuable | 170 | (BCs).\r\nThe settlement data of select payment systems is a valuable | ||
171 | resource for financial analysts, researchers, policymakers, and | 171 | resource for financial analysts, researchers, policymakers, and | ||
172 | financial institutions to analyze trends and patterns in payment | 172 | financial institutions to analyze trends and patterns in payment | ||
173 | transactions. It provides insights into the adoption of electronic | 173 | transactions. It provides insights into the adoption of electronic | ||
174 | payment systems, the growth of digital payments, and the changing | 174 | payment systems, the growth of digital payments, and the changing | ||
175 | nature of financial transactions in India.", | 175 | nature of financial transactions in India.", | ||
176 | "district_no": "", | 176 | "district_no": "", | ||
177 | "format": "CSV", | 177 | "format": "CSV", | ||
178 | "frequency": "Daily", | 178 | "frequency": "Daily", | ||
179 | "gp_no": "", | 179 | "gp_no": "", | ||
180 | "granularity": "India", | 180 | "granularity": "India", | ||
181 | "hash": "", | 181 | "hash": "", | ||
182 | "id": "1f9367ac-01b0-4c82-83a1-4069d4340667", | 182 | "id": "1f9367ac-01b0-4c82-83a1-4069d4340667", | ||
183 | "idp_ready": true, | 183 | "idp_ready": true, | ||
184 | "last_modified": "2025-04-30T06:01:54.231110", | 184 | "last_modified": "2025-04-30T06:01:54.231110", | ||
185 | "lgd_mapping": "na", | 185 | "lgd_mapping": "na", | ||
t | 186 | "metadata_modified": "2025-04-30T06:01:54.283005", | t | 186 | "metadata_modified": "2025-04-30T06:02:12.755102", |
187 | "methodology": "The specific data collection methodology for the | 187 | "methodology": "The specific data collection methodology for the | ||
188 | Reserve Bank published settlement data of select payment systems is | 188 | Reserve Bank published settlement data of select payment systems is | ||
189 | not provided by RBI. However, it is likely that the data is collected | 189 | not provided by RBI. However, it is likely that the data is collected | ||
190 | through a combination of automated processes and manual data entry.", | 190 | through a combination of automated processes and manual data entry.", | ||
191 | "mimetype": "text/csv", | 191 | "mimetype": "text/csv", | ||
192 | "mimetype_inner": null, | 192 | "mimetype_inner": null, | ||
193 | "name": "RBI Daily Digital Payments", | 193 | "name": "RBI Daily Digital Payments", | ||
194 | "no_indicators": "48", | 194 | "no_indicators": "48", | ||
195 | "package_id": "eb565ca6-aa06-47fd-9c81-05c7ed6c538b", | 195 | "package_id": "eb565ca6-aa06-47fd-9c81-05c7ed6c538b", | ||
196 | "position": 0, | 196 | "position": 0, | ||
197 | "resource_type": null, | 197 | "resource_type": null, | ||
198 | "similar_resources": "", | 198 | "similar_resources": "", | ||
199 | "size": 471541, | 199 | "size": 471541, | ||
200 | "sku": "rbi-payment_systems_settlements-in-dl-zau", | 200 | "sku": "rbi-payment_systems_settlements-in-dl-zau", | ||
201 | "state": "active", | 201 | "state": "active", | ||
202 | "states_uts_no": "", | 202 | "states_uts_no": "", | ||
203 | "tehsil_no": "", | 203 | "tehsil_no": "", | ||
204 | "url": | 204 | "url": | ||
205 | -01b0-4c82-83a1-4069d4340667/download/rbi_daily_digital_payments.csv", | 205 | -01b0-4c82-83a1-4069d4340667/download/rbi_daily_digital_payments.csv", | ||
206 | "url_type": "upload", | 206 | "url_type": "upload", | ||
207 | "years_covered": "2014-2024" | 207 | "years_covered": "2014-2024" | ||
208 | }, | 208 | }, | ||
209 | { | 209 | { | ||
210 | "additional_info": "nan", | 210 | "additional_info": "nan", | ||
211 | "cache_last_updated": null, | 211 | "cache_last_updated": null, | ||
212 | "cache_url": null, | 212 | "cache_url": null, | ||
213 | "created": "2023-10-06T12:25:30.912384", | 213 | "created": "2023-10-06T12:25:30.912384", | ||
214 | "data_extraction_page": | 214 | "data_extraction_page": | ||
215 | E/#/dbie/reports/Statistics/Financial%20Sector/Monetary%20Statistics", | 215 | E/#/dbie/reports/Statistics/Financial%20Sector/Monetary%20Statistics", | ||
216 | "data_insights": "How do trends in M3 compare with other key | 216 | "data_insights": "How do trends in M3 compare with other key | ||
217 | economic indicators such as inflation and GDP growth?\nHow has the | 217 | economic indicators such as inflation and GDP growth?\nHow has the | ||
218 | COVID-19 pandemic impacted the money supply in India, and have there | 218 | COVID-19 pandemic impacted the money supply in India, and have there | ||
219 | been any notable trends or fluctuations?\nHow does the money supply in | 219 | been any notable trends or fluctuations?\nHow does the money supply in | ||
220 | India compare to that of other countries in the region?\nWhat is the | 220 | India compare to that of other countries in the region?\nWhat is the | ||
221 | relationship between M3 and key policy decisions made by the Reserve | 221 | relationship between M3 and key policy decisions made by the Reserve | ||
222 | Bank of India, such as changes in interest rates or reserve | 222 | Bank of India, such as changes in interest rates or reserve | ||
223 | requirements?", | 223 | requirements?", | ||
224 | "data_last_updated": "updated fortnightly", | 224 | "data_last_updated": "updated fortnightly", | ||
225 | "data_retreival_date": "2024-03-15 00:00:00", | 225 | "data_retreival_date": "2024-03-15 00:00:00", | ||
226 | "datastore_active": true, | 226 | "datastore_active": true, | ||
227 | "description": "The Money Supply (M3) dataset is published by | 227 | "description": "The Money Supply (M3) dataset is published by | ||
228 | the Reserve Bank of India (RBI) on a fortnightly basis and provides | 228 | the Reserve Bank of India (RBI) on a fortnightly basis and provides | ||
229 | information on the amount of money circulating in the Indian economy. | 229 | information on the amount of money circulating in the Indian economy. | ||
230 | This dataset covers the period from 2001 onwards and contains data on | 230 | This dataset covers the period from 2001 onwards and contains data on | ||
231 | the total money supply and its components and sources such as currency | 231 | the total money supply and its components and sources such as currency | ||
232 | with the public, demand deposits, time deposits, other deposits | 232 | with the public, demand deposits, time deposits, other deposits | ||
233 | etc.\n\nThe M3 dataset is an essential tool for policymakers, | 233 | etc.\n\nThe M3 dataset is an essential tool for policymakers, | ||
234 | economists, and researchers to understand the state of the Indian | 234 | economists, and researchers to understand the state of the Indian | ||
235 | economy and make informed decisions. ", | 235 | economy and make informed decisions. ", | ||
236 | "district_no": "", | 236 | "district_no": "", | ||
237 | "format": "CSV", | 237 | "format": "CSV", | ||
238 | "frequency": "Fortnightly", | 238 | "frequency": "Fortnightly", | ||
239 | "gp_no": "", | 239 | "gp_no": "", | ||
240 | "granularity": "India", | 240 | "granularity": "India", | ||
241 | "hash": "", | 241 | "hash": "", | ||
242 | "id": "487f5d4e-4ac9-4015-9ed5-ee9066893982", | 242 | "id": "487f5d4e-4ac9-4015-9ed5-ee9066893982", | ||
243 | "idp_ready": true, | 243 | "idp_ready": true, | ||
244 | "last_modified": "2024-03-19T08:17:19.204175", | 244 | "last_modified": "2024-03-19T08:17:19.204175", | ||
245 | "lgd_mapping": "na", | 245 | "lgd_mapping": "na", | ||
246 | "metadata_modified": "2024-08-22T10:10:44.362499", | 246 | "metadata_modified": "2024-08-22T10:10:44.362499", | ||
247 | "methodology": "The Reserve Bank of India (RBI) collects the | 247 | "methodology": "The Reserve Bank of India (RBI) collects the | ||
248 | Money Supply (M3) data through surveys and reports from various | 248 | Money Supply (M3) data through surveys and reports from various | ||
249 | financial institutions, including commercial banks, cooperative banks, | 249 | financial institutions, including commercial banks, cooperative banks, | ||
250 | regional rural banks, and other financial institutions.", | 250 | regional rural banks, and other financial institutions.", | ||
251 | "mimetype": "text/csv", | 251 | "mimetype": "text/csv", | ||
252 | "mimetype_inner": null, | 252 | "mimetype_inner": null, | ||
253 | "name": "Money Stock M3", | 253 | "name": "Money Stock M3", | ||
254 | "no_indicators": "13", | 254 | "no_indicators": "13", | ||
255 | "package_id": "eb565ca6-aa06-47fd-9c81-05c7ed6c538b", | 255 | "package_id": "eb565ca6-aa06-47fd-9c81-05c7ed6c538b", | ||
256 | "position": 1, | 256 | "position": 1, | ||
257 | "resource_type": null, | 257 | "resource_type": null, | ||
258 | "similar_datasets": [], | 258 | "similar_datasets": [], | ||
259 | "size": 76919, | 259 | "size": 76919, | ||
260 | "sku": "rbi-money_stock-in-wk-sne", | 260 | "sku": "rbi-money_stock-in-wk-sne", | ||
261 | "state": "active", | 261 | "state": "active", | ||
262 | "states_uts_no": "", | 262 | "states_uts_no": "", | ||
263 | "tags": [ | 263 | "tags": [ | ||
264 | "Money Supply", | 264 | "Money Supply", | ||
265 | "Currency", | 265 | "Currency", | ||
266 | "Demand Deposits", | 266 | "Demand Deposits", | ||
267 | "Time Deposits", | 267 | "Time Deposits", | ||
268 | "Liabilities", | 268 | "Liabilities", | ||
269 | "Assets", | 269 | "Assets", | ||
270 | "Sources", | 270 | "Sources", | ||
271 | "Economic Indicators", | 271 | "Economic Indicators", | ||
272 | "Inflation" | 272 | "Inflation" | ||
273 | ], | 273 | ], | ||
274 | "tehsil_no": "", | 274 | "tehsil_no": "", | ||
275 | "url": | 275 | "url": | ||
276 | rce/487f5d4e-4ac9-4015-9ed5-ee9066893982/download/money-stock-m3.csv", | 276 | rce/487f5d4e-4ac9-4015-9ed5-ee9066893982/download/money-stock-m3.csv", | ||
277 | "url_type": "upload", | 277 | "url_type": "upload", | ||
278 | "village_no": "", | 278 | "village_no": "", | ||
279 | "years_covered": "2001-2024" | 279 | "years_covered": "2001-2024" | ||
280 | }, | 280 | }, | ||
281 | { | 281 | { | ||
282 | "additional_info": "", | 282 | "additional_info": "", | ||
283 | "cache_last_updated": null, | 283 | "cache_last_updated": null, | ||
284 | "cache_url": null, | 284 | "cache_url": null, | ||
285 | "created": "2023-10-07T05:56:50.564020", | 285 | "created": "2023-10-07T05:56:50.564020", | ||
286 | "data_extraction_page": | 286 | "data_extraction_page": | ||
287 | enDocument/opendoc/openDocument.faces?logonSuccessful=true&shareId=1", | 287 | enDocument/opendoc/openDocument.faces?logonSuccessful=true&shareId=1", | ||
288 | "data_insights": "Understanding the distribution of deposits | 288 | "data_insights": "Understanding the distribution of deposits | ||
289 | across different population groups and regions in India.Identifying | 289 | across different population groups and regions in India.Identifying | ||
290 | areas where additional investment may be needed to improve access to | 290 | areas where additional investment may be needed to improve access to | ||
291 | banking services.Analyzing the impact of government policies and | 291 | banking services.Analyzing the impact of government policies and | ||
292 | economic trends on the banking sector.Identifying opportunities for | 292 | economic trends on the banking sector.Identifying opportunities for | ||
293 | banks to expand their operations in underserved areas.", | 293 | banks to expand their operations in underserved areas.", | ||
294 | "data_last_updated": "2022", | 294 | "data_last_updated": "2022", | ||
295 | "data_retreival_date": "2022-09-04 00:00:00", | 295 | "data_retreival_date": "2022-09-04 00:00:00", | ||
296 | "datastore_active": true, | 296 | "datastore_active": true, | ||
297 | "description": "The Reserve Bank of India (RBI) provides data on | 297 | "description": "The Reserve Bank of India (RBI) provides data on | ||
298 | the deposits of scheduled commercial banks as part of its database of | 298 | the deposits of scheduled commercial banks as part of its database of | ||
299 | the Indian economy. Scheduled commercial banks include public sector | 299 | the Indian economy. Scheduled commercial banks include public sector | ||
300 | banks, private sector banks, foreign banks, regional rural banks, and | 300 | banks, private sector banks, foreign banks, regional rural banks, and | ||
301 | other types of banks.\r\n\r\nThe dataset includes information on | 301 | other types of banks.\r\n\r\nThe dataset includes information on | ||
302 | various types of deposits such as savings deposits, term deposits, and | 302 | various types of deposits such as savings deposits, term deposits, and | ||
303 | demand deposits. It provides detailed information on the amount of | 303 | demand deposits. It provides detailed information on the amount of | ||
304 | deposits held by the banks, and number of accounts.", | 304 | deposits held by the banks, and number of accounts.", | ||
305 | "district_no": "717", | 305 | "district_no": "717", | ||
306 | "format": "CSV", | 306 | "format": "CSV", | ||
307 | "frequency": "Yearly", | 307 | "frequency": "Yearly", | ||
308 | "gp_no": "", | 308 | "gp_no": "", | ||
309 | "granularity": "District", | 309 | "granularity": "District", | ||
310 | "hash": "", | 310 | "hash": "", | ||
311 | "id": "991a33ab-67c0-4748-9ded-012f449497be", | 311 | "id": "991a33ab-67c0-4748-9ded-012f449497be", | ||
312 | "idp_ready": true, | 312 | "idp_ready": true, | ||
313 | "last_modified": "2023-10-07T05:56:50.539958", | 313 | "last_modified": "2023-10-07T05:56:50.539958", | ||
314 | "lgd_mapping": "yes", | 314 | "lgd_mapping": "yes", | ||
315 | "metadata_modified": "2024-08-22T10:10:44.920464", | 315 | "metadata_modified": "2024-08-22T10:10:44.920464", | ||
316 | "methodology": "The District and Population Group-wise Deposits | 316 | "methodology": "The District and Population Group-wise Deposits | ||
317 | of Scheduled Commercial Banks dataset is sourced from the Reserve Bank | 317 | of Scheduled Commercial Banks dataset is sourced from the Reserve Bank | ||
318 | of India (RBI) and is updated annually. The data is collected through | 318 | of India (RBI) and is updated annually. The data is collected through | ||
319 | the submission of monthly and quarterly returns by scheduled | 319 | the submission of monthly and quarterly returns by scheduled | ||
320 | commercial banks to the RBI. The data is then aggregated at the | 320 | commercial banks to the RBI. The data is then aggregated at the | ||
321 | district and population group level to produce the final dataset.", | 321 | district and population group level to produce the final dataset.", | ||
322 | "mimetype": "", | 322 | "mimetype": "", | ||
323 | "mimetype_inner": null, | 323 | "mimetype_inner": null, | ||
324 | "name": "Population-group Wise Deposits", | 324 | "name": "Population-group Wise Deposits", | ||
325 | "no_indicators": "3", | 325 | "no_indicators": "3", | ||
326 | "package_id": "eb565ca6-aa06-47fd-9c81-05c7ed6c538b", | 326 | "package_id": "eb565ca6-aa06-47fd-9c81-05c7ed6c538b", | ||
327 | "position": 2, | 327 | "position": 2, | ||
328 | "resource_type": null, | 328 | "resource_type": null, | ||
329 | "similar_datasets": "", | 329 | "similar_datasets": "", | ||
330 | "size": 1114004, | 330 | "size": 1114004, | ||
331 | "sku": "rbi-groupwise_deposits_with_scbs-dt-yr-pop", | 331 | "sku": "rbi-groupwise_deposits_with_scbs-dt-yr-pop", | ||
332 | "state": "active", | 332 | "state": "active", | ||
333 | "states_uts_no": "36", | 333 | "states_uts_no": "36", | ||
334 | "tags": "", | 334 | "tags": "", | ||
335 | "tehsil_no": "", | 335 | "tehsil_no": "", | ||
336 | "url": | 336 | "url": | ||
337 | c0-4748-9ded-012f449497be/download/populationgroup-wise-deposits.csv", | 337 | c0-4748-9ded-012f449497be/download/populationgroup-wise-deposits.csv", | ||
338 | "url_type": "upload", | 338 | "url_type": "upload", | ||
339 | "village_no": "", | 339 | "village_no": "", | ||
340 | "years_covered": "2019-2022" | 340 | "years_covered": "2019-2022" | ||
341 | }, | 341 | }, | ||
342 | { | 342 | { | ||
343 | "additional_info": "", | 343 | "additional_info": "", | ||
344 | "cache_last_updated": null, | 344 | "cache_last_updated": null, | ||
345 | "cache_url": null, | 345 | "cache_url": null, | ||
346 | "created": "2023-10-07T05:57:30.367092", | 346 | "created": "2023-10-07T05:57:30.367092", | ||
347 | "data_extraction_page": "nan", | 347 | "data_extraction_page": "nan", | ||
348 | "data_insights": "The dataset provides information on the number | 348 | "data_insights": "The dataset provides information on the number | ||
349 | of deposits and deposit amounts for different population groups in | 349 | of deposits and deposit amounts for different population groups in | ||
350 | each district for various categories of SCBs. The data can be used to | 350 | each district for various categories of SCBs. The data can be used to | ||
351 | analyze the financial behavior of different demographic groups, as | 351 | analyze the financial behavior of different demographic groups, as | ||
352 | well as the performance of different banks in different districts. For | 352 | well as the performance of different banks in different districts. For | ||
353 | example, one could analyze which demographic groups are saving the | 353 | example, one could analyze which demographic groups are saving the | ||
354 | most and which banks are attracting the most deposits in different | 354 | most and which banks are attracting the most deposits in different | ||
355 | districts.", | 355 | districts.", | ||
356 | "data_last_updated": "2022", | 356 | "data_last_updated": "2022", | ||
357 | "data_retreival_date": "2022-09-04 00:00:00", | 357 | "data_retreival_date": "2022-09-04 00:00:00", | ||
358 | "datastore_active": true, | 358 | "datastore_active": true, | ||
359 | "description": "This dataset gives district-wise information on | 359 | "description": "This dataset gives district-wise information on | ||
360 | the number of deposits and deposit amounts for every population group | 360 | the number of deposits and deposit amounts for every population group | ||
361 | in each category of Scheduled Commercial Banks", | 361 | in each category of Scheduled Commercial Banks", | ||
362 | "district_no": "717", | 362 | "district_no": "717", | ||
363 | "format": "CSV", | 363 | "format": "CSV", | ||
364 | "frequency": "Yearly", | 364 | "frequency": "Yearly", | ||
365 | "gp_no": "", | 365 | "gp_no": "", | ||
366 | "granularity": "District", | 366 | "granularity": "District", | ||
367 | "hash": "", | 367 | "hash": "", | ||
368 | "id": "3d6dc991-9a60-47d6-b107-2e2536688e5e", | 368 | "id": "3d6dc991-9a60-47d6-b107-2e2536688e5e", | ||
369 | "idp_ready": true, | 369 | "idp_ready": true, | ||
370 | "last_modified": "2023-10-07T05:57:30.337929", | 370 | "last_modified": "2023-10-07T05:57:30.337929", | ||
371 | "lgd_mapping": "yes", | 371 | "lgd_mapping": "yes", | ||
372 | "metadata_modified": "2024-08-22T10:10:45.495583", | 372 | "metadata_modified": "2024-08-22T10:10:45.495583", | ||
373 | "methodology": "Reserve Bank of India collected the data from | 373 | "methodology": "Reserve Bank of India collected the data from | ||
374 | SCBs and compiled it into a dataset.", | 374 | SCBs and compiled it into a dataset.", | ||
375 | "mimetype": "", | 375 | "mimetype": "", | ||
376 | "mimetype_inner": null, | 376 | "mimetype_inner": null, | ||
377 | "name": "Bank-group Wise Deposits", | 377 | "name": "Bank-group Wise Deposits", | ||
378 | "no_indicators": "2", | 378 | "no_indicators": "2", | ||
379 | "package_id": "eb565ca6-aa06-47fd-9c81-05c7ed6c538b", | 379 | "package_id": "eb565ca6-aa06-47fd-9c81-05c7ed6c538b", | ||
380 | "position": 3, | 380 | "position": 3, | ||
381 | "resource_type": null, | 381 | "resource_type": null, | ||
382 | "similar_datasets": "", | 382 | "similar_datasets": "", | ||
383 | "size": 4699652, | 383 | "size": 4699652, | ||
384 | "sku": "rbi-bankgroup_wise_deposit_statistics-dt-yr-pth", | 384 | "sku": "rbi-bankgroup_wise_deposit_statistics-dt-yr-pth", | ||
385 | "state": "active", | 385 | "state": "active", | ||
386 | "states_uts_no": "36", | 386 | "states_uts_no": "36", | ||
387 | "tags": "", | 387 | "tags": "", | ||
388 | "tehsil_no": "", | 388 | "tehsil_no": "", | ||
389 | "url": | 389 | "url": | ||
390 | 991-9a60-47d6-b107-2e2536688e5e/download/bankgroup-wise-deposits.csv", | 390 | 991-9a60-47d6-b107-2e2536688e5e/download/bankgroup-wise-deposits.csv", | ||
391 | "url_type": "upload", | 391 | "url_type": "upload", | ||
392 | "village_no": "", | 392 | "village_no": "", | ||
393 | "years_covered": "2009-10 to 2017-18" | 393 | "years_covered": "2009-10 to 2017-18" | ||
394 | }, | 394 | }, | ||
395 | { | 395 | { | ||
396 | "additional_info": "Number of Banks : 85", | 396 | "additional_info": "Number of Banks : 85", | ||
397 | "cache_last_updated": null, | 397 | "cache_last_updated": null, | ||
398 | "cache_url": null, | 398 | "cache_url": null, | ||
399 | "created": "2023-10-07T06:53:04.021727", | 399 | "created": "2023-10-07T06:53:04.021727", | ||
400 | "data_extraction_page": | 400 | "data_extraction_page": | ||
401 | "https://rbi.org.in/Scripts/ATMView.aspx", | 401 | "https://rbi.org.in/Scripts/ATMView.aspx", | ||
402 | "data_insights": "Some Insights can be drawn from the dataset: | 402 | "data_insights": "Some Insights can be drawn from the dataset: | ||
403 | Which banks have the most significant number of ATMs and POS | 403 | Which banks have the most significant number of ATMs and POS | ||
404 | terminals, and how has this changed over time? What is the overall | 404 | terminals, and how has this changed over time? What is the overall | ||
405 | trend in the number of transactions using ATMs and POS terminals, and | 405 | trend in the number of transactions using ATMs and POS terminals, and | ||
406 | how has this varied across different banks? What is the total value of | 406 | how has this varied across different banks? What is the total value of | ||
407 | debit and credit card transactions, and how has this changed over | 407 | debit and credit card transactions, and how has this changed over | ||
408 | time? How has the number of debit and credit cards issued by each bank | 408 | time? How has the number of debit and credit cards issued by each bank | ||
409 | changed over time, and which banks have seen the most growth in their | 409 | changed over time, and which banks have seen the most growth in their | ||
410 | card issuance? What is the average transaction value for ATM and POS | 410 | card issuance? What is the average transaction value for ATM and POS | ||
411 | transactions, and how does this vary across different banks and | 411 | transactions, and how does this vary across different banks and | ||
412 | regions? Are there any seasonal trends in ATM and POS usage, such as | 412 | regions? Are there any seasonal trends in ATM and POS usage, such as | ||
413 | higher usage during certain months or holidays? How does the usage of | 413 | higher usage during certain months or holidays? How does the usage of | ||
414 | electronic payment methods compare to cash-based transactions, and how | 414 | electronic payment methods compare to cash-based transactions, and how | ||
415 | has this trend continued?", | 415 | has this trend continued?", | ||
416 | "data_last_updated": "2024-11-01", | 416 | "data_last_updated": "2024-11-01", | ||
417 | "data_retreival_date": "2025-04-15", | 417 | "data_retreival_date": "2025-04-15", | ||
418 | "datastore_active": true, | 418 | "datastore_active": true, | ||
419 | "description": "The Bankwise ATM/POS/Card Statistics dataset is | 419 | "description": "The Bankwise ATM/POS/Card Statistics dataset is | ||
420 | published monthly by the Reserve Bank of India (RBI). It provides | 420 | published monthly by the Reserve Bank of India (RBI). It provides | ||
421 | information on the usage of automated teller machines (ATMs), point of | 421 | information on the usage of automated teller machines (ATMs), point of | ||
422 | sale (POS) terminals, and payment cards across various banks in India. | 422 | sale (POS) terminals, and payment cards across various banks in India. | ||
423 | This dataset contains information on the number of ATMs and POS | 423 | This dataset contains information on the number of ATMs and POS | ||
424 | terminals installed by each bank, the number of transactions carried | 424 | terminals installed by each bank, the number of transactions carried | ||
425 | out using these machines, and the total value of transactions. | 425 | out using these machines, and the total value of transactions. | ||
426 | Additionally, it provides data on the number of debit and credit cards | 426 | Additionally, it provides data on the number of debit and credit cards | ||
427 | issued by each bank and the total value of transactions made using | 427 | issued by each bank and the total value of transactions made using | ||
428 | these cards. The Bankwise ATM/POS/Card Statistics dataset can be used | 428 | these cards. The Bankwise ATM/POS/Card Statistics dataset can be used | ||
429 | to analyze the growth of electronic payments in India, monitor the | 429 | to analyze the growth of electronic payments in India, monitor the | ||
430 | performance of individual banks, and identify trends in ATM and POS | 430 | performance of individual banks, and identify trends in ATM and POS | ||
431 | usage. Researchers, policy-makers, and financial institutions can | 431 | usage. Researchers, policy-makers, and financial institutions can | ||
432 | leverage this data to make informed decisions related to expanding | 432 | leverage this data to make informed decisions related to expanding | ||
433 | banking infrastructure, developing payment systems, and promoting | 433 | banking infrastructure, developing payment systems, and promoting | ||
434 | cashless transactions.", | 434 | cashless transactions.", | ||
435 | "district_no": "", | 435 | "district_no": "", | ||
436 | "format": "CSV", | 436 | "format": "CSV", | ||
437 | "frequency": "Monthly", | 437 | "frequency": "Monthly", | ||
438 | "gp_no": "", | 438 | "gp_no": "", | ||
439 | "granularity": "India", | 439 | "granularity": "India", | ||
440 | "hash": "", | 440 | "hash": "", | ||
441 | "id": "1bb59cb1-6965-4c02-88ab-82333f101f5b", | 441 | "id": "1bb59cb1-6965-4c02-88ab-82333f101f5b", | ||
442 | "idp_ready": true, | 442 | "idp_ready": true, | ||
443 | "last_modified": "2025-04-30T06:01:56.393627", | 443 | "last_modified": "2025-04-30T06:01:56.393627", | ||
444 | "lgd_mapping": "na", | 444 | "lgd_mapping": "na", | ||
445 | "metadata_modified": "2025-04-30T06:02:12.568387", | 445 | "metadata_modified": "2025-04-30T06:02:12.568387", | ||
446 | "methodology": "The exact data collection methodology used by | 446 | "methodology": "The exact data collection methodology used by | ||
447 | the RBI to gather information for the Bankwise ATM/POS/Card Statistics | 447 | the RBI to gather information for the Bankwise ATM/POS/Card Statistics | ||
448 | dataset is not publicly disclosed. However, it is likely that the data | 448 | dataset is not publicly disclosed. However, it is likely that the data | ||
449 | is collected through a combination of surveys, reports, and data | 449 | is collected through a combination of surveys, reports, and data | ||
450 | sharing agreements with the participating banks.\nThe RBI may require | 450 | sharing agreements with the participating banks.\nThe RBI may require | ||
451 | banks to report their ATM and POS transactions data on a regular | 451 | banks to report their ATM and POS transactions data on a regular | ||
452 | basis, either electronically or through manual reporting. This data | 452 | basis, either electronically or through manual reporting. This data | ||
453 | may be submitted directly to the RBI or through a third-party data | 453 | may be submitted directly to the RBI or through a third-party data | ||
454 | aggregator. The RBI may also use data from other sources, such as | 454 | aggregator. The RBI may also use data from other sources, such as | ||
455 | payment processors or card networks, to supplement the data provided | 455 | payment processors or card networks, to supplement the data provided | ||
456 | by the banks.", | 456 | by the banks.", | ||
457 | "mimetype": "text/csv", | 457 | "mimetype": "text/csv", | ||
458 | "mimetype_inner": null, | 458 | "mimetype_inner": null, | ||
459 | "name": "Bankwise ATM POS Card Statistics", | 459 | "name": "Bankwise ATM POS Card Statistics", | ||
460 | "no_indicators": "26", | 460 | "no_indicators": "26", | ||
461 | "package_id": "eb565ca6-aa06-47fd-9c81-05c7ed6c538b", | 461 | "package_id": "eb565ca6-aa06-47fd-9c81-05c7ed6c538b", | ||
462 | "position": 4, | 462 | "position": 4, | ||
463 | "resource_type": null, | 463 | "resource_type": null, | ||
464 | "similar_datasets": [], | 464 | "similar_datasets": [], | ||
465 | "size": 1416439, | 465 | "size": 1416439, | ||
466 | "sku": "rbi-bankwise_atm_pos-in-mn-bxi", | 466 | "sku": "rbi-bankwise_atm_pos-in-mn-bxi", | ||
467 | "state": "active", | 467 | "state": "active", | ||
468 | "states_uts_no": "", | 468 | "states_uts_no": "", | ||
469 | "tags": [ | 469 | "tags": [ | ||
470 | "Payment Systems", | 470 | "Payment Systems", | ||
471 | "Banking", | 471 | "Banking", | ||
472 | "Finance", | 472 | "Finance", | ||
473 | "Electronic Payments\n Financial Institutions" | 473 | "Electronic Payments\n Financial Institutions" | ||
474 | ], | 474 | ], | ||
475 | "tehsil_no": "", | 475 | "tehsil_no": "", | ||
476 | "url": | 476 | "url": | ||
477 | 4c02-88ab-82333f101f5b/download/bankwise_atm_pos_card_statistics.csv", | 477 | 4c02-88ab-82333f101f5b/download/bankwise_atm_pos_card_statistics.csv", | ||
478 | "url_type": "upload", | 478 | "url_type": "upload", | ||
479 | "village_no": "", | 479 | "village_no": "", | ||
480 | "years_covered": "2014-2024" | 480 | "years_covered": "2014-2024" | ||
481 | }, | 481 | }, | ||
482 | { | 482 | { | ||
483 | "additional_info": "To get to the exact table from the source | 483 | "additional_info": "To get to the exact table from the source | ||
484 | link, Under the Time Series Tab -> \"Time Series Detailed Data\" -> | 484 | link, Under the Time Series Tab -> \"Time Series Detailed Data\" -> | ||
485 | \"Bank Credit of SCBs - Bank Group, Population Group, Occupation | 485 | \"Bank Credit of SCBs - Bank Group, Population Group, Occupation | ||
486 | (Sector), District Wise - Annual\"", | 486 | (Sector), District Wise - Annual\"", | ||
487 | "cache_last_updated": null, | 487 | "cache_last_updated": null, | ||
488 | "cache_url": null, | 488 | "cache_url": null, | ||
489 | "created": "2023-10-08T02:40:47.113768", | 489 | "created": "2023-10-08T02:40:47.113768", | ||
490 | "data_extraction_page": | 490 | "data_extraction_page": | ||
491 | "https://dbie.rbi.org.in/DBIE/dbie.rbi?site=publications#!19", | 491 | "https://dbie.rbi.org.in/DBIE/dbie.rbi?site=publications#!19", | ||
492 | "data_insights": "The dataset provides information on the credit | 492 | "data_insights": "The dataset provides information on the credit | ||
493 | extended by different bank groups, with nationalized banks having the | 493 | extended by different bank groups, with nationalized banks having the | ||
494 | highest share of credit followed by SBI and its associates, private | 494 | highest share of credit followed by SBI and its associates, private | ||
495 | sector banks, and foreign banks.\n\nThe majority of the credit is | 495 | sector banks, and foreign banks.\n\nThe majority of the credit is | ||
496 | extended to the industry sector, followed by the services sector and | 496 | extended to the industry sector, followed by the services sector and | ||
497 | agriculture sector. Personal loans and other priority sectors account | 497 | agriculture sector. Personal loans and other priority sectors account | ||
498 | for a smaller share of credit.\n\nThe dataset shows that credit growth | 498 | for a smaller share of credit.\n\nThe dataset shows that credit growth | ||
499 | is higher in urban and metropolitan areas compared to rural and | 499 | is higher in urban and metropolitan areas compared to rural and | ||
500 | semi-urban areas.\n\nThe district-wise data shows that the credit | 500 | semi-urban areas.\n\nThe district-wise data shows that the credit | ||
501 | patterns vary across different regions, with some districts having | 501 | patterns vary across different regions, with some districts having | ||
502 | higher credit growth compared to others.", | 502 | higher credit growth compared to others.", | ||
503 | "data_last_updated": "2024-02-01 00:00:00", | 503 | "data_last_updated": "2024-02-01 00:00:00", | ||
504 | "data_retreival_date": "2023-09-15 00:00:00", | 504 | "data_retreival_date": "2023-09-15 00:00:00", | ||
505 | "datastore_active": true, | 505 | "datastore_active": true, | ||
506 | "description": "The \"Credit by Scheduled Commercial Banks\" | 506 | "description": "The \"Credit by Scheduled Commercial Banks\" | ||
507 | dataset provided by the Reserve Bank of India (RBI) captures | 507 | dataset provided by the Reserve Bank of India (RBI) captures | ||
508 | information on the credit extended by scheduled commercial banks in | 508 | information on the credit extended by scheduled commercial banks in | ||
509 | India to various population groups, bank groups, occupation groups, | 509 | India to various population groups, bank groups, occupation groups, | ||
510 | and occupation subgroups. The dataset covers various types of credit, | 510 | and occupation subgroups. The dataset covers various types of credit, | ||
511 | such as agricultural credit, personal loans, housing loans, and loans | 511 | such as agricultural credit, personal loans, housing loans, and loans | ||
512 | to the industrial sector, among others.\n\nThe dataset is organized | 512 | to the industrial sector, among others.\n\nThe dataset is organized | ||
513 | across four dimensions, including population group, bank group, | 513 | across four dimensions, including population group, bank group, | ||
514 | occupation group, and occupation subgroup. The population group | 514 | occupation group, and occupation subgroup. The population group | ||
515 | dimension includes categories such as rural, semi-urban, urban, and | 515 | dimension includes categories such as rural, semi-urban, urban, and | ||
516 | metropolitan, while the bank group dimension includes categories such | 516 | metropolitan, while the bank group dimension includes categories such | ||
517 | as nationalized banks, private sector banks, foreign banks, and | 517 | as nationalized banks, private sector banks, foreign banks, and | ||
518 | regional rural banks, among others. The occupation group dimension | 518 | regional rural banks, among others. The occupation group dimension | ||
519 | includes categories such as agriculture and allied activities, | 519 | includes categories such as agriculture and allied activities, | ||
520 | industry, and services, while the occupation subgroup dimension | 520 | industry, and services, while the occupation subgroup dimension | ||
521 | includes categories such as self-employed individuals, salaried | 521 | includes categories such as self-employed individuals, salaried | ||
522 | individuals, and others.\n\nThis dataset is useful for researchers, | 522 | individuals, and others.\n\nThis dataset is useful for researchers, | ||
523 | policymakers, and financial analysts who are interested in | 523 | policymakers, and financial analysts who are interested in | ||
524 | understanding the credit flow in the Indian economy, analyzing the | 524 | understanding the credit flow in the Indian economy, analyzing the | ||
525 | distribution of credit across different population groups and sectors, | 525 | distribution of credit across different population groups and sectors, | ||
526 | and identifying trends in credit disbursement by scheduled commercial | 526 | and identifying trends in credit disbursement by scheduled commercial | ||
527 | banks.", | 527 | banks.", | ||
528 | "district_no": "764", | 528 | "district_no": "764", | ||
529 | "format": "CSV", | 529 | "format": "CSV", | ||
530 | "frequency": "Yearly", | 530 | "frequency": "Yearly", | ||
531 | "gp_no": "", | 531 | "gp_no": "", | ||
532 | "granularity": "District", | 532 | "granularity": "District", | ||
533 | "hash": "", | 533 | "hash": "", | ||
534 | "id": "733d27c5-e6a7-4cbf-a03e-b7cda032b608", | 534 | "id": "733d27c5-e6a7-4cbf-a03e-b7cda032b608", | ||
535 | "idp_ready": true, | 535 | "idp_ready": true, | ||
536 | "last_modified": "2024-03-14T23:24:11.404596", | 536 | "last_modified": "2024-03-14T23:24:11.404596", | ||
537 | "lgd_mapping": "yes", | 537 | "lgd_mapping": "yes", | ||
538 | "metadata_modified": "2024-08-22T10:10:47.053273", | 538 | "metadata_modified": "2024-08-22T10:10:47.053273", | ||
539 | "methodology": "Reserve Bank of India releases information about | 539 | "methodology": "Reserve Bank of India releases information about | ||
540 | the number of accounts, credit limit and amount outstanding | 540 | the number of accounts, credit limit and amount outstanding | ||
541 | categorised as per population group, bank group and occupation under | 541 | categorised as per population group, bank group and occupation under | ||
542 | each district yearly.", | 542 | each district yearly.", | ||
543 | "mimetype": "text/csv", | 543 | "mimetype": "text/csv", | ||
544 | "mimetype_inner": null, | 544 | "mimetype_inner": null, | ||
545 | "name": "Credit by Scheduled Commercial Banks", | 545 | "name": "Credit by Scheduled Commercial Banks", | ||
546 | "no_indicators": "3", | 546 | "no_indicators": "3", | ||
547 | "package_id": "eb565ca6-aa06-47fd-9c81-05c7ed6c538b", | 547 | "package_id": "eb565ca6-aa06-47fd-9c81-05c7ed6c538b", | ||
548 | "position": 5, | 548 | "position": 5, | ||
549 | "resource_type": null, | 549 | "resource_type": null, | ||
550 | "similar_datasets": [], | 550 | "similar_datasets": [], | ||
551 | "size": 262735959, | 551 | "size": 262735959, | ||
552 | "sku": "rbi-groupwise_credit_by_scbs-dt-yr-vvi", | 552 | "sku": "rbi-groupwise_credit_by_scbs-dt-yr-vvi", | ||
553 | "state": "active", | 553 | "state": "active", | ||
554 | "states_uts_no": "36", | 554 | "states_uts_no": "36", | ||
555 | "tags": [ | 555 | "tags": [ | ||
556 | "Banking", | 556 | "Banking", | ||
557 | "Credit", | 557 | "Credit", | ||
558 | "Scheduled Commercial Banks", | 558 | "Scheduled Commercial Banks", | ||
559 | "Bank Group\n Population Group", | 559 | "Bank Group\n Population Group", | ||
560 | "Occupation", | 560 | "Occupation", | ||
561 | "Sector", | 561 | "Sector", | ||
562 | "District-Wise", | 562 | "District-Wise", | ||
563 | "India\n Finance." | 563 | "India\n Finance." | ||
564 | ], | 564 | ], | ||
565 | "tehsil_no": "", | 565 | "tehsil_no": "", | ||
566 | "url": | 566 | "url": | ||
567 | -a03e-b7cda032b608/download/credit-by-scheduled-commercial-banks.csv", | 567 | -a03e-b7cda032b608/download/credit-by-scheduled-commercial-banks.csv", | ||
568 | "url_type": "upload", | 568 | "url_type": "upload", | ||
569 | "village_no": "", | 569 | "village_no": "", | ||
570 | "years_covered": "2010-2023" | 570 | "years_covered": "2010-2023" | ||
571 | }, | 571 | }, | ||
572 | { | 572 | { | ||
573 | "additional_info": "", | 573 | "additional_info": "", | ||
574 | "cache_last_updated": null, | 574 | "cache_last_updated": null, | ||
575 | "cache_url": null, | 575 | "cache_url": null, | ||
576 | "created": "2023-10-09T09:38:06.588133", | 576 | "created": "2023-10-09T09:38:06.588133", | ||
577 | "data_extraction_page": | 577 | "data_extraction_page": | ||
578 | "https://rbi.org.in/Scripts/NEFTView.aspx", | 578 | "https://rbi.org.in/Scripts/NEFTView.aspx", | ||
579 | "data_insights": "Through this dataset, one can observe | 579 | "data_insights": "Through this dataset, one can observe | ||
580 | variations in ECS transaction volumes, values, and user counts across | 580 | variations in ECS transaction volumes, values, and user counts across | ||
581 | different months. When segmented by banks, the data allows for a | 581 | different months. When segmented by banks, the data allows for a | ||
582 | comparison of ECS transaction activity across various banking | 582 | comparison of ECS transaction activity across various banking | ||
583 | institutions. Additionally, the distinction between ECS credit and | 583 | institutions. Additionally, the distinction between ECS credit and | ||
584 | debit transactions provides information on user transactional choices. | 584 | debit transactions provides information on user transactional choices. | ||
585 | The inclusion of center names in the dataset also enables a regional | 585 | The inclusion of center names in the dataset also enables a regional | ||
586 | assessment, giving insights into the distribution and prevalence of | 586 | assessment, giving insights into the distribution and prevalence of | ||
587 | these transactions in different regions. ", | 587 | these transactions in different regions. ", | ||
588 | "data_last_updated": "discontinued", | 588 | "data_last_updated": "discontinued", | ||
589 | "data_retreival_date": "2023-08-03 00:00:00", | 589 | "data_retreival_date": "2023-08-03 00:00:00", | ||
590 | "datastore_active": true, | 590 | "datastore_active": true, | ||
591 | "description": "ECS Transactions (Volume, Value, Users) provides | 591 | "description": "ECS Transactions (Volume, Value, Users) provides | ||
592 | detailed monthly data on Electronic Clearing Service (ECS) | 592 | detailed monthly data on Electronic Clearing Service (ECS) | ||
593 | transactions. The dataset encompasses specific metrics like the volume | 593 | transactions. The dataset encompasses specific metrics like the volume | ||
594 | and value of transactions, and the number of users engaging in ECS | 594 | and value of transactions, and the number of users engaging in ECS | ||
595 | credit and debit transactions. The data is organized by month and is | 595 | credit and debit transactions. The data is organized by month and is | ||
596 | broken down by different centers and banks, offering granular insights | 596 | broken down by different centers and banks, offering granular insights | ||
597 | into the dynamics of electronic transactions across various regions | 597 | into the dynamics of electronic transactions across various regions | ||
598 | and banking institutions.", | 598 | and banking institutions.", | ||
599 | "district_no": "", | 599 | "district_no": "", | ||
600 | "format": "CSV", | 600 | "format": "CSV", | ||
601 | "frequency": "Monthly", | 601 | "frequency": "Monthly", | ||
602 | "gp_no": "", | 602 | "gp_no": "", | ||
603 | "granularity": "Bank", | 603 | "granularity": "Bank", | ||
604 | "hash": "", | 604 | "hash": "", | ||
605 | "id": "961f1a87-5701-41e6-b124-896b33867e30", | 605 | "id": "961f1a87-5701-41e6-b124-896b33867e30", | ||
606 | "idp_ready": true, | 606 | "idp_ready": true, | ||
607 | "last_modified": "2023-10-09T09:38:06.525046", | 607 | "last_modified": "2023-10-09T09:38:06.525046", | ||
608 | "lgd_mapping": "na", | 608 | "lgd_mapping": "na", | ||
609 | "metadata_modified": "2024-08-22T10:10:47.579882", | 609 | "metadata_modified": "2024-08-22T10:10:47.579882", | ||
610 | "methodology": "The dataset is compiled from data reported by | 610 | "methodology": "The dataset is compiled from data reported by | ||
611 | different banks to the Reserve Bank of India. It is updated monthly | 611 | different banks to the Reserve Bank of India. It is updated monthly | ||
612 | and is made available on the RBI\u2019s official website. ", | 612 | and is made available on the RBI\u2019s official website. ", | ||
613 | "mimetype": "", | 613 | "mimetype": "", | ||
614 | "mimetype_inner": null, | 614 | "mimetype_inner": null, | ||
615 | "name": "ECS Transaction Metrics", | 615 | "name": "ECS Transaction Metrics", | ||
616 | "no_indicators": "6", | 616 | "no_indicators": "6", | ||
617 | "package_id": "eb565ca6-aa06-47fd-9c81-05c7ed6c538b", | 617 | "package_id": "eb565ca6-aa06-47fd-9c81-05c7ed6c538b", | ||
618 | "position": 6, | 618 | "position": 6, | ||
619 | "resource_type": null, | 619 | "resource_type": null, | ||
620 | "similar_datasets": "", | 620 | "similar_datasets": "", | ||
621 | "size": 627222, | 621 | "size": 627222, | ||
622 | "sku": "rbi-bankwise_ecs_transactions-in-mn-aaa", | 622 | "sku": "rbi-bankwise_ecs_transactions-in-mn-aaa", | ||
623 | "state": "active", | 623 | "state": "active", | ||
624 | "states_uts_no": "", | 624 | "states_uts_no": "", | ||
625 | "tags": "", | 625 | "tags": "", | ||
626 | "tehsil_no": "", | 626 | "tehsil_no": "", | ||
627 | "url": | 627 | "url": | ||
628 | a87-5701-41e6-b124-896b33867e30/download/ecs-transaction-metrics.csv", | 628 | a87-5701-41e6-b124-896b33867e30/download/ecs-transaction-metrics.csv", | ||
629 | "url_type": "upload", | 629 | "url_type": "upload", | ||
630 | "village_no": "", | 630 | "village_no": "", | ||
631 | "years_covered": "2013 to 2020" | 631 | "years_covered": "2013 to 2020" | ||
632 | }, | 632 | }, | ||
633 | { | 633 | { | ||
634 | "additional_info": "nan", | 634 | "additional_info": "nan", | ||
635 | "cache_last_updated": null, | 635 | "cache_last_updated": null, | ||
636 | "cache_url": null, | 636 | "cache_url": null, | ||
637 | "created": "2023-10-09T10:59:49.951988", | 637 | "created": "2023-10-09T10:59:49.951988", | ||
638 | "data_extraction_page": | 638 | "data_extraction_page": | ||
639 | "https://rbi.org.in/Scripts/NEFTView.aspx", | 639 | "https://rbi.org.in/Scripts/NEFTView.aspx", | ||
640 | "data_insights": "The dataset allows stakeholders to comprehend | 640 | "data_insights": "The dataset allows stakeholders to comprehend | ||
641 | the adoption and utilization trends of internet banking across | 641 | the adoption and utilization trends of internet banking across | ||
642 | different banks in India. By analyzing the transaction volume and | 642 | different banks in India. By analyzing the transaction volume and | ||
643 | aggregate transaction value, one can discern patterns related to the | 643 | aggregate transaction value, one can discern patterns related to the | ||
644 | frequency and size of transactions carried out through internet | 644 | frequency and size of transactions carried out through internet | ||
645 | banking. It provides a perspective on how reliant and comfortable | 645 | banking. It provides a perspective on how reliant and comfortable | ||
646 | consumers are in transacting significant amounts online.\n\nBanks with | 646 | consumers are in transacting significant amounts online.\n\nBanks with | ||
647 | higher active users indicate a more substantial customer base that | 647 | higher active users indicate a more substantial customer base that | ||
648 | prefers internet banking, which can be indicative of user-friendly | 648 | prefers internet banking, which can be indicative of user-friendly | ||
649 | interfaces, better online banking features, or effective online | 649 | interfaces, better online banking features, or effective online | ||
650 | security measures of these banks. By monitoring these numbers over | 650 | security measures of these banks. By monitoring these numbers over | ||
651 | time, one can infer the growth rate or decline of internet banking | 651 | time, one can infer the growth rate or decline of internet banking | ||
652 | usage for individual banks.\n\nComparing the 'Active Users' metric | 652 | usage for individual banks.\n\nComparing the 'Active Users' metric | ||
653 | with 'Transaction Volume' can offer insights into user behavior. For | 653 | with 'Transaction Volume' can offer insights into user behavior. For | ||
654 | instance, a bank with a high number of active users but a relatively | 654 | instance, a bank with a high number of active users but a relatively | ||
655 | low transaction volume might indicate that while many users have | 655 | low transaction volume might indicate that while many users have | ||
656 | adopted online banking, they might be using it for limited purposes or | 656 | adopted online banking, they might be using it for limited purposes or | ||
657 | with less frequency.", | 657 | with less frequency.", | ||
658 | "data_last_updated": "2024-12-01", | 658 | "data_last_updated": "2024-12-01", | ||
659 | "data_retreival_date": "2025-02-15", | 659 | "data_retreival_date": "2025-02-15", | ||
660 | "datastore_active": true, | 660 | "datastore_active": true, | ||
661 | "description": "The Internet Banking Statistics dataset, sourced | 661 | "description": "The Internet Banking Statistics dataset, sourced | ||
662 | from the Reserve Bank of India, provides detailed information on | 662 | from the Reserve Bank of India, provides detailed information on | ||
663 | internet banking activities across various banks. This dataset | 663 | internet banking activities across various banks. This dataset | ||
664 | outlines the performance metrics and adoption rate of internet banking | 664 | outlines the performance metrics and adoption rate of internet banking | ||
665 | for specific banks, capturing data on monthly transaction volumes, | 665 | for specific banks, capturing data on monthly transaction volumes, | ||
666 | aggregate transaction values, and the number of active users.", | 666 | aggregate transaction values, and the number of active users.", | ||
667 | "district_no": "", | 667 | "district_no": "", | ||
668 | "format": "CSV", | 668 | "format": "CSV", | ||
669 | "frequency": "Monthly", | 669 | "frequency": "Monthly", | ||
670 | "gp_no": "", | 670 | "gp_no": "", | ||
671 | "granularity": "Bank", | 671 | "granularity": "Bank", | ||
672 | "hash": "", | 672 | "hash": "", | ||
673 | "id": "41184d46-105d-49dc-89d6-8b52185ee6ee", | 673 | "id": "41184d46-105d-49dc-89d6-8b52185ee6ee", | ||
674 | "idp_ready": true, | 674 | "idp_ready": true, | ||
675 | "last_modified": "2025-04-30T06:01:59.312741", | 675 | "last_modified": "2025-04-30T06:01:59.312741", | ||
676 | "lgd_mapping": "na", | 676 | "lgd_mapping": "na", | ||
677 | "metadata_modified": "2025-04-30T06:01:59.367428", | 677 | "metadata_modified": "2025-04-30T06:01:59.367428", | ||
678 | "methodology": "Data for the Internet Banking Statistics is | 678 | "methodology": "Data for the Internet Banking Statistics is | ||
679 | collated by the Reserve Bank of India from the reporting of individual | 679 | collated by the Reserve Bank of India from the reporting of individual | ||
680 | banks. ", | 680 | banks. ", | ||
681 | "mimetype": "text/csv", | 681 | "mimetype": "text/csv", | ||
682 | "mimetype_inner": null, | 682 | "mimetype_inner": null, | ||
683 | "name": "Internet Banking Statistics", | 683 | "name": "Internet Banking Statistics", | ||
684 | "no_indicators": "3", | 684 | "no_indicators": "3", | ||
685 | "package_id": "eb565ca6-aa06-47fd-9c81-05c7ed6c538b", | 685 | "package_id": "eb565ca6-aa06-47fd-9c81-05c7ed6c538b", | ||
686 | "position": 7, | 686 | "position": 7, | ||
687 | "resource_type": null, | 687 | "resource_type": null, | ||
688 | "similar_datasets": [], | 688 | "similar_datasets": [], | ||
689 | "size": 205358, | 689 | "size": 205358, | ||
690 | "sku": "rbi-bankwise_internet_banking_transactions-in-mn-aaa", | 690 | "sku": "rbi-bankwise_internet_banking_transactions-in-mn-aaa", | ||
691 | "state": "active", | 691 | "state": "active", | ||
692 | "states_uts_no": "", | 692 | "states_uts_no": "", | ||
693 | "tags": [ | 693 | "tags": [ | ||
694 | "Internet Banking", | 694 | "Internet Banking", | ||
695 | "Banking Trends", | 695 | "Banking Trends", | ||
696 | "Transactions" | 696 | "Transactions" | ||
697 | ], | 697 | ], | ||
698 | "tehsil_no": "", | 698 | "tehsil_no": "", | ||
699 | "url": | 699 | "url": | ||
700 | 105d-49dc-89d6-8b52185ee6ee/download/internet_banking_statistics.csv", | 700 | 105d-49dc-89d6-8b52185ee6ee/download/internet_banking_statistics.csv", | ||
701 | "url_type": "upload", | 701 | "url_type": "upload", | ||
702 | "village_no": "", | 702 | "village_no": "", | ||
703 | "years_covered": "2022-2024" | 703 | "years_covered": "2022-2024" | ||
704 | }, | 704 | }, | ||
705 | { | 705 | { | ||
706 | "additional_info": "nan", | 706 | "additional_info": "nan", | ||
707 | "cache_last_updated": null, | 707 | "cache_last_updated": null, | ||
708 | "cache_url": null, | 708 | "cache_url": null, | ||
709 | "created": "2023-10-09T11:39:20.083060", | 709 | "created": "2023-10-09T11:39:20.083060", | ||
710 | "data_extraction_page": | 710 | "data_extraction_page": | ||
711 | "https://rbi.org.in/Scripts/NEFTView.aspx", | 711 | "https://rbi.org.in/Scripts/NEFTView.aspx", | ||
712 | "data_insights": "From the dataset, several insightful | 712 | "data_insights": "From the dataset, several insightful | ||
713 | narratives can be pieced together about the RTGS transaction landscape | 713 | narratives can be pieced together about the RTGS transaction landscape | ||
714 | in India. One of the most pivotal points to consider is the | 714 | in India. One of the most pivotal points to consider is the | ||
715 | transactional trend portrayed by individual banks. Observing the | 715 | transactional trend portrayed by individual banks. Observing the | ||
716 | 'INWARD Total Volume' and 'OUTWARD Total Volume' provides a snapshot | 716 | 'INWARD Total Volume' and 'OUTWARD Total Volume' provides a snapshot | ||
717 | of which banks might be at the forefront of RTGS transactions. Those | 717 | of which banks might be at the forefront of RTGS transactions. Those | ||
718 | with consistently high volumes might be perceived as the more dominant | 718 | with consistently high volumes might be perceived as the more dominant | ||
719 | or trusted entities in this sphere.\n\nDiving deeper, the dataset does | 719 | or trusted entities in this sphere.\n\nDiving deeper, the dataset does | ||
720 | a commendable job differentiating between interbank and customer | 720 | a commendable job differentiating between interbank and customer | ||
721 | transactions. Banks showing a substantial 'INWARD Volume Interbank' | 721 | transactions. Banks showing a substantial 'INWARD Volume Interbank' | ||
722 | could be inferred as playing a more influential role in interbank | 722 | could be inferred as playing a more influential role in interbank | ||
723 | settlements. This demarcation between interbank and customer-driven | 723 | settlements. This demarcation between interbank and customer-driven | ||
724 | transactions offers a nuanced understanding of a bank's RTGS | 724 | transactions offers a nuanced understanding of a bank's RTGS | ||
725 | transactional ecosystem.\n\nHowever, the true depth of this dataset is | 725 | transactional ecosystem.\n\nHowever, the true depth of this dataset is | ||
726 | realized when delving into the monetary values associated with these | 726 | realized when delving into the monetary values associated with these | ||
727 | transactions. By juxtaposing 'INWARD Total Value' with 'INWARD Total | 727 | transactions. By juxtaposing 'INWARD Total Value' with 'INWARD Total | ||
728 | Volume', one can decipher the average transaction size for each bank. | 728 | Volume', one can decipher the average transaction size for each bank. | ||
729 | This might unravel whether certain banks are more favored for | 729 | This might unravel whether certain banks are more favored for | ||
730 | large-scale corporate transactions or for smaller, perhaps | 730 | large-scale corporate transactions or for smaller, perhaps | ||
731 | retail-based transfers.\n", | 731 | retail-based transfers.\n", | ||
732 | "data_last_updated": "2024-12-01", | 732 | "data_last_updated": "2024-12-01", | ||
733 | "data_retreival_date": "2025-02-14", | 733 | "data_retreival_date": "2025-02-14", | ||
734 | "datastore_active": true, | 734 | "datastore_active": true, | ||
735 | "description": "The dataset \"Bank Wise RTGS Inward and | 735 | "description": "The dataset \"Bank Wise RTGS Inward and | ||
736 | Outward\" sourced from the Reserve Bank of India provides a | 736 | Outward\" sourced from the Reserve Bank of India provides a | ||
737 | comprehensive breakdown of RTGS (Real-Time Gross Settlement) | 737 | comprehensive breakdown of RTGS (Real-Time Gross Settlement) | ||
738 | transactions conducted by different banks. The data spans both inward | 738 | transactions conducted by different banks. The data spans both inward | ||
739 | (incoming) and outward (outgoing) transactions and segregates them | 739 | (incoming) and outward (outgoing) transactions and segregates them | ||
740 | further based on interbank and customer-driven transactions.", | 740 | further based on interbank and customer-driven transactions.", | ||
741 | "district_no": "", | 741 | "district_no": "", | ||
742 | "format": "CSV", | 742 | "format": "CSV", | ||
743 | "frequency": "Monthly", | 743 | "frequency": "Monthly", | ||
744 | "gp_no": "", | 744 | "gp_no": "", | ||
745 | "granularity": "Bank", | 745 | "granularity": "Bank", | ||
746 | "hash": "", | 746 | "hash": "", | ||
747 | "id": "e9cef902-3a0f-4bc2-96e7-f9735e1ebffb", | 747 | "id": "e9cef902-3a0f-4bc2-96e7-f9735e1ebffb", | ||
748 | "idp_ready": true, | 748 | "idp_ready": true, | ||
749 | "last_modified": "2025-04-30T06:01:43.995917", | 749 | "last_modified": "2025-04-30T06:01:43.995917", | ||
750 | "lgd_mapping": "na", | 750 | "lgd_mapping": "na", | ||
751 | "metadata_modified": "2025-04-30T06:01:44.163653", | 751 | "metadata_modified": "2025-04-30T06:01:44.163653", | ||
752 | "methodology": "The data is compiled by the Reserve Bank of | 752 | "methodology": "The data is compiled by the Reserve Bank of | ||
753 | India from the transaction reports submitted by individual banks on a | 753 | India from the transaction reports submitted by individual banks on a | ||
754 | regular basis", | 754 | regular basis", | ||
755 | "mimetype": "text/csv", | 755 | "mimetype": "text/csv", | ||
756 | "mimetype_inner": null, | 756 | "mimetype_inner": null, | ||
757 | "name": "Bank Wise RTGS Inward and Outward", | 757 | "name": "Bank Wise RTGS Inward and Outward", | ||
758 | "no_indicators": "16", | 758 | "no_indicators": "16", | ||
759 | "package_id": "eb565ca6-aa06-47fd-9c81-05c7ed6c538b", | 759 | "package_id": "eb565ca6-aa06-47fd-9c81-05c7ed6c538b", | ||
760 | "position": 8, | 760 | "position": 8, | ||
761 | "resource_type": null, | 761 | "resource_type": null, | ||
762 | "similar_datasets": [], | 762 | "similar_datasets": [], | ||
763 | "size": 5298767, | 763 | "size": 5298767, | ||
764 | "sku": "rbi-bankwise_rtgs_transactions-in-mn-aaa", | 764 | "sku": "rbi-bankwise_rtgs_transactions-in-mn-aaa", | ||
765 | "state": "active", | 765 | "state": "active", | ||
766 | "states_uts_no": "", | 766 | "states_uts_no": "", | ||
767 | "tags": [ | 767 | "tags": [ | ||
768 | "RTGS", | 768 | "RTGS", | ||
769 | "Interbank Transactions", | 769 | "Interbank Transactions", | ||
770 | "Customer Transaction", | 770 | "Customer Transaction", | ||
771 | "Banking Data Analysis" | 771 | "Banking Data Analysis" | ||
772 | ], | 772 | ], | ||
773 | "tehsil_no": "", | 773 | "tehsil_no": "", | ||
774 | "url": | 774 | "url": | ||
775 | bc2-96e7-f9735e1ebffb/download/bank_wise_rtgs_inward_and_outward.csv", | 775 | bc2-96e7-f9735e1ebffb/download/bank_wise_rtgs_inward_and_outward.csv", | ||
776 | "url_type": "upload", | 776 | "url_type": "upload", | ||
777 | "village_no": "", | 777 | "village_no": "", | ||
778 | "years_covered": "2008-2024" | 778 | "years_covered": "2008-2024" | ||
779 | }, | 779 | }, | ||
780 | { | 780 | { | ||
781 | "additional_info": "nan", | 781 | "additional_info": "nan", | ||
782 | "cache_last_updated": null, | 782 | "cache_last_updated": null, | ||
783 | "cache_url": null, | 783 | "cache_url": null, | ||
784 | "created": "2023-10-09T11:53:08.037450", | 784 | "created": "2023-10-09T11:53:08.037450", | ||
785 | "data_extraction_page": | 785 | "data_extraction_page": | ||
786 | "https://rbi.org.in/Scripts/NEFTView.aspx", | 786 | "https://rbi.org.in/Scripts/NEFTView.aspx", | ||
787 | "data_insights": "The \"Mobile Banking Statistics\" dataset | 787 | "data_insights": "The \"Mobile Banking Statistics\" dataset | ||
788 | provides a rich tapestry of insights into the evolving landscape of | 788 | provides a rich tapestry of insights into the evolving landscape of | ||
789 | mobile banking in India. By undertaking a month-to-month trend | 789 | mobile banking in India. By undertaking a month-to-month trend | ||
790 | analysis, it becomes feasible to chart the trajectory of mobile | 790 | analysis, it becomes feasible to chart the trajectory of mobile | ||
791 | banking's growth or decline. This continuous tracking could be | 791 | banking's growth or decline. This continuous tracking could be | ||
792 | instrumental in correlating fluctuations with external events, | 792 | instrumental in correlating fluctuations with external events, | ||
793 | marketing campaigns, or regulatory changes that might have impacted | 793 | marketing campaigns, or regulatory changes that might have impacted | ||
794 | user behavior.\n\nBank-specific insights stand out prominently. By | 794 | user behavior.\n\nBank-specific insights stand out prominently. By | ||
795 | diving deep into the dataset, stakeholders can determine which banking | 795 | diving deep into the dataset, stakeholders can determine which banking | ||
796 | institutions are trailblazers in the mobile banking arena. Such | 796 | institutions are trailblazers in the mobile banking arena. Such | ||
797 | insights are gauged both in terms of transaction volume and the | 797 | insights are gauged both in terms of transaction volume and the | ||
798 | aggregate value of transactions. This distinction enables a nuanced | 798 | aggregate value of transactions. This distinction enables a nuanced | ||
799 | understanding, differentiating banks that handle a larger number of | 799 | understanding, differentiating banks that handle a larger number of | ||
800 | smaller transactions from those facilitating fewer, high-value | 800 | smaller transactions from those facilitating fewer, high-value | ||
801 | transactions.\n\nA critical component of the dataset is the data on | 801 | transactions.\n\nA critical component of the dataset is the data on | ||
802 | 'Active Users'. This metric serves as a barometer for user engagement | 802 | 'Active Users'. This metric serves as a barometer for user engagement | ||
803 | and the overall penetration of mobile banking solutions among specific | 803 | and the overall penetration of mobile banking solutions among specific | ||
804 | banks' clientele. A rise or fall in active users can signal shifts in | 804 | banks' clientele. A rise or fall in active users can signal shifts in | ||
805 | user preferences, the effectiveness of user engagement strategies, or | 805 | user preferences, the effectiveness of user engagement strategies, or | ||
806 | the emergence of newer, more competitive mobile banking platforms.", | 806 | the emergence of newer, more competitive mobile banking platforms.", | ||
807 | "data_last_updated": "2024-12-01", | 807 | "data_last_updated": "2024-12-01", | ||
808 | "data_retreival_date": "2025-02-15", | 808 | "data_retreival_date": "2025-02-15", | ||
809 | "datastore_active": true, | 809 | "datastore_active": true, | ||
810 | "description": "The \"Mobile Banking Statistics\" dataset is | 810 | "description": "The \"Mobile Banking Statistics\" dataset is | ||
811 | sourced from the Reserve Bank of India, the country's central banking | 811 | sourced from the Reserve Bank of India, the country's central banking | ||
812 | institution. This dataset offers monthly insights into the usage | 812 | institution. This dataset offers monthly insights into the usage | ||
813 | patterns, preferences, and transaction volumes for various banks in | 813 | patterns, preferences, and transaction volumes for various banks in | ||
814 | the mobile banking domain. It sheds light on the increasing trend of | 814 | the mobile banking domain. It sheds light on the increasing trend of | ||
815 | mobile banking in India and provides a granular view by showcasing | 815 | mobile banking in India and provides a granular view by showcasing | ||
816 | data from individual banking institutions.", | 816 | data from individual banking institutions.", | ||
817 | "district_no": "", | 817 | "district_no": "", | ||
818 | "format": "CSV", | 818 | "format": "CSV", | ||
819 | "frequency": "Monthly", | 819 | "frequency": "Monthly", | ||
820 | "gp_no": "", | 820 | "gp_no": "", | ||
821 | "granularity": "Bank", | 821 | "granularity": "Bank", | ||
822 | "hash": "", | 822 | "hash": "", | ||
823 | "id": "7db4c888-ac0c-4820-9982-c4ea04307f4b", | 823 | "id": "7db4c888-ac0c-4820-9982-c4ea04307f4b", | ||
824 | "idp_ready": true, | 824 | "idp_ready": true, | ||
825 | "last_modified": "2025-04-30T06:01:40.884594", | 825 | "last_modified": "2025-04-30T06:01:40.884594", | ||
826 | "lgd_mapping": "na", | 826 | "lgd_mapping": "na", | ||
827 | "metadata_modified": "2025-04-30T06:01:40.928384", | 827 | "metadata_modified": "2025-04-30T06:01:40.928384", | ||
828 | "methodology": "The data has been compiled by the Reserve Bank | 828 | "methodology": "The data has been compiled by the Reserve Bank | ||
829 | of India, which likely collates this information from periodic reports | 829 | of India, which likely collates this information from periodic reports | ||
830 | submitted by the banks operating within the country. ", | 830 | submitted by the banks operating within the country. ", | ||
831 | "mimetype": "text/csv", | 831 | "mimetype": "text/csv", | ||
832 | "mimetype_inner": null, | 832 | "mimetype_inner": null, | ||
833 | "name": "Mobile Banking Statistics", | 833 | "name": "Mobile Banking Statistics", | ||
834 | "no_indicators": "3", | 834 | "no_indicators": "3", | ||
835 | "package_id": "eb565ca6-aa06-47fd-9c81-05c7ed6c538b", | 835 | "package_id": "eb565ca6-aa06-47fd-9c81-05c7ed6c538b", | ||
836 | "position": 9, | 836 | "position": 9, | ||
837 | "resource_type": null, | 837 | "resource_type": null, | ||
838 | "similar_datasets": [], | 838 | "similar_datasets": [], | ||
839 | "size": 2740725, | 839 | "size": 2740725, | ||
840 | "sku": "rbi-bankwise_mobile_banking_transactions-in-mn-aaa", | 840 | "sku": "rbi-bankwise_mobile_banking_transactions-in-mn-aaa", | ||
841 | "state": "active", | 841 | "state": "active", | ||
842 | "states_uts_no": "", | 842 | "states_uts_no": "", | ||
843 | "tags": [ | 843 | "tags": [ | ||
844 | "Digital Transactions", | 844 | "Digital Transactions", | ||
845 | "Mobile Banking", | 845 | "Mobile Banking", | ||
846 | "Banking Trends" | 846 | "Banking Trends" | ||
847 | ], | 847 | ], | ||
848 | "tehsil_no": "", | 848 | "tehsil_no": "", | ||
849 | "url": | 849 | "url": | ||
850 | 8-ac0c-4820-9982-c4ea04307f4b/download/mobile_banking_statistics.csv", | 850 | 8-ac0c-4820-9982-c4ea04307f4b/download/mobile_banking_statistics.csv", | ||
851 | "url_type": "upload", | 851 | "url_type": "upload", | ||
852 | "village_no": "", | 852 | "village_no": "", | ||
853 | "years_covered": "2013-2024" | 853 | "years_covered": "2013-2024" | ||
854 | }, | 854 | }, | ||
855 | { | 855 | { | ||
856 | "additional_info": "nan", | 856 | "additional_info": "nan", | ||
857 | "cache_last_updated": null, | 857 | "cache_last_updated": null, | ||
858 | "cache_url": null, | 858 | "cache_url": null, | ||
859 | "created": "2024-04-17T12:51:16.505698", | 859 | "created": "2024-04-17T12:51:16.505698", | ||
860 | "data_extraction_page": | 860 | "data_extraction_page": | ||
861 | "https://rbi.org.in/Scripts/NEFTView.aspx", | 861 | "https://rbi.org.in/Scripts/NEFTView.aspx", | ||
862 | "data_insights": "The \"NEFT Transaction Metrics\" dataset, with | 862 | "data_insights": "The \"NEFT Transaction Metrics\" dataset, with | ||
863 | its granularity, offers invaluable insights into the digital | 863 | its granularity, offers invaluable insights into the digital | ||
864 | transactional behaviors and trends in India. Through a monthly trend | 864 | transactional behaviors and trends in India. Through a monthly trend | ||
865 | analysis, stakeholders can ascertain the rhythm and pace of NEFT | 865 | analysis, stakeholders can ascertain the rhythm and pace of NEFT | ||
866 | transactions, pinpointing any anomalies, surge periods, or slow | 866 | transactions, pinpointing any anomalies, surge periods, or slow | ||
867 | phases. These trends can be essential indicators of the broader | 867 | phases. These trends can be essential indicators of the broader | ||
868 | economic landscape, signaling growth phases or potential economic | 868 | economic landscape, signaling growth phases or potential economic | ||
869 | slowdowns.\n\nBy examining bank-specific data, a clear picture of each | 869 | slowdowns.\n\nBy examining bank-specific data, a clear picture of each | ||
870 | institution's stance in the NEFT landscape emerges. Which banks are | 870 | institution's stance in the NEFT landscape emerges. Which banks are | ||
871 | the most active in facilitating NEFT transfers? Do certain banks have | 871 | the most active in facilitating NEFT transfers? Do certain banks have | ||
872 | a higher debit transaction rate compared to credits or vice versa? | 872 | a higher debit transaction rate compared to credits or vice versa? | ||
873 | This type of insight can provide a lens into the financial health and | 873 | This type of insight can provide a lens into the financial health and | ||
874 | customer engagement strategies of individual banks.\n\nAn intriguing | 874 | customer engagement strategies of individual banks.\n\nAn intriguing | ||
875 | facet of the dataset is the distinct data on 'Debit Transactions' and | 875 | facet of the dataset is the distinct data on 'Debit Transactions' and | ||
876 | 'Credit Transactions'. By scrutinizing these columns, one can discern | 876 | 'Credit Transactions'. By scrutinizing these columns, one can discern | ||
877 | the balance of funds outflow and inflow for each bank. If a bank | 877 | the balance of funds outflow and inflow for each bank. If a bank | ||
878 | consistently has higher debit values compared to credit values, it | 878 | consistently has higher debit values compared to credit values, it | ||
879 | might indicate more outward transfers than incoming ones. On the other | 879 | might indicate more outward transfers than incoming ones. On the other | ||
880 | hand, banks with a dominant credit value might be the recipients of a | 880 | hand, banks with a dominant credit value might be the recipients of a | ||
881 | more significant number of inward funds, indicating trust or | 881 | more significant number of inward funds, indicating trust or | ||
882 | preference by customers or businesses.", | 882 | preference by customers or businesses.", | ||
883 | "data_last_updated": "2024-12-01", | 883 | "data_last_updated": "2024-12-01", | ||
884 | "data_retreival_date": "2025-02-15", | 884 | "data_retreival_date": "2025-02-15", | ||
885 | "datastore_active": true, | 885 | "datastore_active": true, | ||
886 | "description": "The \"NEFT Transaction Metrics\" dataset is | 886 | "description": "The \"NEFT Transaction Metrics\" dataset is | ||
887 | procured from the Reserve Bank of India, the apex monetary authority | 887 | procured from the Reserve Bank of India, the apex monetary authority | ||
888 | of the country. This dataset delineates the monthly details concerning | 888 | of the country. This dataset delineates the monthly details concerning | ||
889 | the National Electronic Funds Transfer (NEFT) system, which | 889 | the National Electronic Funds Transfer (NEFT) system, which | ||
890 | facilitates one-to-one funds transfer. By providing data on both debit | 890 | facilitates one-to-one funds transfer. By providing data on both debit | ||
891 | and credit transactions for various banks, this dataset offers an | 891 | and credit transactions for various banks, this dataset offers an | ||
892 | encompassing view of the NEFT transaction landscape across India.", | 892 | encompassing view of the NEFT transaction landscape across India.", | ||
893 | "district_no": "", | 893 | "district_no": "", | ||
894 | "format": "CSV", | 894 | "format": "CSV", | ||
895 | "frequency": "Monthly", | 895 | "frequency": "Monthly", | ||
896 | "gp_no": "", | 896 | "gp_no": "", | ||
897 | "granularity": "Bank", | 897 | "granularity": "Bank", | ||
898 | "hash": "", | 898 | "hash": "", | ||
899 | "id": "10a39a51-20d1-441a-9e92-64ca0c5c6f36", | 899 | "id": "10a39a51-20d1-441a-9e92-64ca0c5c6f36", | ||
900 | "idp_ready": true, | 900 | "idp_ready": true, | ||
901 | "last_modified": "2025-04-30T06:02:03.636383", | 901 | "last_modified": "2025-04-30T06:02:03.636383", | ||
902 | "lgd_mapping": "na", | 902 | "lgd_mapping": "na", | ||
903 | "metadata_modified": "2025-04-30T06:02:03.673661", | 903 | "metadata_modified": "2025-04-30T06:02:03.673661", | ||
904 | "methodology": "This data is collated by the Reserve Bank of | 904 | "methodology": "This data is collated by the Reserve Bank of | ||
905 | India, leveraging the periodic submissions and transactional reports | 905 | India, leveraging the periodic submissions and transactional reports | ||
906 | from the different banks functioning within India's borders.", | 906 | from the different banks functioning within India's borders.", | ||
907 | "mimetype": "text/csv", | 907 | "mimetype": "text/csv", | ||
908 | "mimetype_inner": null, | 908 | "mimetype_inner": null, | ||
909 | "name": "NEFT Transaction Metrics", | 909 | "name": "NEFT Transaction Metrics", | ||
910 | "no_indicators": "4", | 910 | "no_indicators": "4", | ||
911 | "package_id": "eb565ca6-aa06-47fd-9c81-05c7ed6c538b", | 911 | "package_id": "eb565ca6-aa06-47fd-9c81-05c7ed6c538b", | ||
912 | "position": 10, | 912 | "position": 10, | ||
913 | "resource_type": null, | 913 | "resource_type": null, | ||
914 | "similar_datasets": [], | 914 | "similar_datasets": [], | ||
915 | "similar_resources": "", | 915 | "similar_resources": "", | ||
916 | "size": 2374241, | 916 | "size": 2374241, | ||
917 | "sku": "rbi-bankwise_neft_transactions-in-mn-aaa", | 917 | "sku": "rbi-bankwise_neft_transactions-in-mn-aaa", | ||
918 | "state": "active", | 918 | "state": "active", | ||
919 | "states_uts_no": "", | 919 | "states_uts_no": "", | ||
920 | "tags": [ | 920 | "tags": [ | ||
921 | "NEFT Transations", | 921 | "NEFT Transations", | ||
922 | "Funds Transfer Analysis", | 922 | "Funds Transfer Analysis", | ||
923 | "Bankwise Data" | 923 | "Bankwise Data" | ||
924 | ], | 924 | ], | ||
925 | "tehsil_no": "", | 925 | "tehsil_no": "", | ||
926 | "url": | 926 | "url": | ||
927 | 51-20d1-441a-9e92-64ca0c5c6f36/download/neft_transaction_metrics.csv", | 927 | 51-20d1-441a-9e92-64ca0c5c6f36/download/neft_transaction_metrics.csv", | ||
928 | "url_type": "upload", | 928 | "url_type": "upload", | ||
929 | "years_covered": "2008-2024" | 929 | "years_covered": "2008-2024" | ||
930 | }, | 930 | }, | ||
931 | { | 931 | { | ||
932 | "additional_info": "nan", | 932 | "additional_info": "nan", | ||
933 | "cache_last_updated": null, | 933 | "cache_last_updated": null, | ||
934 | "cache_url": null, | 934 | "cache_url": null, | ||
935 | "created": "2024-10-23T06:59:17.635220", | 935 | "created": "2024-10-23T06:59:17.635220", | ||
936 | "data_extraction_page": | 936 | "data_extraction_page": | ||
937 | "https://data.rbi.org.in/DBIE/#/banking-outlet", | 937 | "https://data.rbi.org.in/DBIE/#/banking-outlet", | ||
938 | "data_insights": "Data Insights that can be drawn from dataset | 938 | "data_insights": "Data Insights that can be drawn from dataset | ||
939 | :Geographical Distribution: The dataset allows for analysis of the | 939 | :Geographical Distribution: The dataset allows for analysis of the | ||
940 | geographical distribution of bank outlets and ATMs, highlighting areas | 940 | geographical distribution of bank outlets and ATMs, highlighting areas | ||
941 | with high or low banking service penetration.Operational Status: By | 941 | with high or low banking service penetration.Operational Status: By | ||
942 | examining the status of branches and ATMs, one can identify trends in | 942 | examining the status of branches and ATMs, one can identify trends in | ||
943 | banking infrastructure development and closures.Bank Group Analysis: | 943 | banking infrastructure development and closures.Bank Group Analysis: | ||
944 | The data enables comparison between different bank groups (e.g., | 944 | The data enables comparison between different bank groups (e.g., | ||
945 | public sector vs. private sector) in terms of their reach and | 945 | public sector vs. private sector) in terms of their reach and | ||
946 | presence.Service Availability: Insights into the types of services | 946 | presence.Service Availability: Insights into the types of services | ||
947 | provided (e.g., full-service branches vs. ATMs) and their distribution | 947 | provided (e.g., full-service branches vs. ATMs) and their distribution | ||
948 | across different regions.Demographic Correlation: Analysis of the | 948 | across different regions.Demographic Correlation: Analysis of the | ||
949 | dataset in conjunction with population data can reveal how well | 949 | dataset in conjunction with population data can reveal how well | ||
950 | banking services are aligned with population density and | 950 | banking services are aligned with population density and | ||
951 | distribution.Infrastructure Growth: Tracking the license and open | 951 | distribution.Infrastructure Growth: Tracking the license and open | ||
952 | dates provides insights into the growth and expansion of banking | 952 | dates provides insights into the growth and expansion of banking | ||
953 | infrastructure over time.", | 953 | infrastructure over time.", | ||
954 | "data_last_updated": "12-10-2023", | 954 | "data_last_updated": "12-10-2023", | ||
955 | "data_retreival_date": "01-12-2023", | 955 | "data_retreival_date": "01-12-2023", | ||
956 | "datastore_active": true, | 956 | "datastore_active": true, | ||
957 | "description": "The dataset provides a snapshot of the banking | 957 | "description": "The dataset provides a snapshot of the banking | ||
958 | infrastructure in India, including both active and inactive branches | 958 | infrastructure in India, including both active and inactive branches | ||
959 | and ATMs. It provides comprehensive details about bank outlets and | 959 | and ATMs. It provides comprehensive details about bank outlets and | ||
960 | ATMs across different regions in India. It includes location | 960 | ATMs across different regions in India. It includes location | ||
961 | information, bank details, and operational status, helping to | 961 | information, bank details, and operational status, helping to | ||
962 | understand the spread and accessibility of banking services in the | 962 | understand the spread and accessibility of banking services in the | ||
963 | country. This dataset is essential for researchers, policymakers, and | 963 | country. This dataset is essential for researchers, policymakers, and | ||
964 | financial analysts interested in understanding the landscape of | 964 | financial analysts interested in understanding the landscape of | ||
965 | banking services in India. It provides valuable insights into the | 965 | banking services in India. It provides valuable insights into the | ||
966 | reach and operational status of banking facilities, contributing to | 966 | reach and operational status of banking facilities, contributing to | ||
967 | studies on financial inclusion and economic development.", | 967 | studies on financial inclusion and economic development.", | ||
968 | "district_no": "753", | 968 | "district_no": "753", | ||
969 | "format": "CSV", | 969 | "format": "CSV", | ||
970 | "frequency": "Other", | 970 | "frequency": "Other", | ||
971 | "gp_no": "0", | 971 | "gp_no": "0", | ||
972 | "granularity": "Point", | 972 | "granularity": "Point", | ||
973 | "hash": "", | 973 | "hash": "", | ||
974 | "id": "8a4bb25b-3281-4aa5-9d3c-e4a5a7dd8e71", | 974 | "id": "8a4bb25b-3281-4aa5-9d3c-e4a5a7dd8e71", | ||
975 | "idp_ready": true, | 975 | "idp_ready": true, | ||
976 | "indicators": [], | 976 | "indicators": [], | ||
977 | "last_modified": "2024-10-23T07:21:05.181050", | 977 | "last_modified": "2024-10-23T07:21:05.181050", | ||
978 | "lgd_mapping": "", | 978 | "lgd_mapping": "", | ||
979 | "metadata_modified": "2025-02-19T06:35:33.246352", | 979 | "metadata_modified": "2025-02-19T06:35:33.246352", | ||
980 | "methodology": "The dataset is compiled by the Reserve Bank of | 980 | "methodology": "The dataset is compiled by the Reserve Bank of | ||
981 | India (RBI) from its extensive network of regulated banks and | 981 | India (RBI) from its extensive network of regulated banks and | ||
982 | financial institutions. It includes data on the geographical location, | 982 | financial institutions. It includes data on the geographical location, | ||
983 | operational status, and other relevant details of bank outlets and | 983 | operational status, and other relevant details of bank outlets and | ||
984 | ATMs. The information is gathered through regulatory filings, surveys, | 984 | ATMs. The information is gathered through regulatory filings, surveys, | ||
985 | and administrative records maintained by the RBI. ", | 985 | and administrative records maintained by the RBI. ", | ||
986 | "mimetype": null, | 986 | "mimetype": null, | ||
987 | "mimetype_inner": null, | 987 | "mimetype_inner": null, | ||
988 | "name": "Bank Outlets and ATM's", | 988 | "name": "Bank Outlets and ATM's", | ||
989 | "no_indicators": "0", | 989 | "no_indicators": "0", | ||
990 | "package_id": "eb565ca6-aa06-47fd-9c81-05c7ed6c538b", | 990 | "package_id": "eb565ca6-aa06-47fd-9c81-05c7ed6c538b", | ||
991 | "position": 11, | 991 | "position": 11, | ||
992 | "resource_type": null, | 992 | "resource_type": null, | ||
993 | "similar_resources": "", | 993 | "similar_resources": "", | ||
994 | "size": 516258283, | 994 | "size": 516258283, | ||
995 | "sku": "rbi-bank_outlets_and_atms-pl-ot-aaa", | 995 | "sku": "rbi-bank_outlets_and_atms-pl-ot-aaa", | ||
996 | "state": "active", | 996 | "state": "active", | ||
997 | "states_uts_no": "34", | 997 | "states_uts_no": "34", | ||
998 | "tehsil_no": "5989", | 998 | "tehsil_no": "5989", | ||
999 | "url": | 999 | "url": | ||
1000 | bb25b-3281-4aa5-9d3c-e4a5a7dd8e71/download/bank-outlets-and-atms.csv", | 1000 | bb25b-3281-4aa5-9d3c-e4a5a7dd8e71/download/bank-outlets-and-atms.csv", | ||
1001 | "url_type": "upload", | 1001 | "url_type": "upload", | ||
1002 | "years_covered": "1900-2023" | 1002 | "years_covered": "1900-2023" | ||
1003 | } | 1003 | } | ||
1004 | ], | 1004 | ], | ||
1005 | "sector": [ | 1005 | "sector": [ | ||
1006 | "Economy" | 1006 | "Economy" | ||
1007 | ], | 1007 | ], | ||
1008 | "source_name": "Reserve Bank of India", | 1008 | "source_name": "Reserve Bank of India", | ||
1009 | "state": "active", | 1009 | "state": "active", | ||
1010 | "title": "Reserve Bank of India", | 1010 | "title": "Reserve Bank of India", | ||
1011 | "type": "dataset", | 1011 | "type": "dataset", | ||
1012 | "url": "https://rbi.org.in", | 1012 | "url": "https://rbi.org.in", | ||
1013 | "version": null | 1013 | "version": null | ||
1014 | } | 1014 | } |