Transaction
ID: a49f4110b7...0f6c
Inputs (2)
Spent
Address:
Output transaction:
Settlement height:
Value:
0.004 ERG
Tokens:
Loading assets...
Spent
Address:
Output transaction:
Settlement height:
Value:
0.023 ERG
Tokens:
0
Outputs (3)
Spent
Address:
Spent in transaction:
Settlement height:
Value:
0.025 ERG
Tokens:
Loading assets...
Spent
Address:
Spent in transaction:
Settlement height:
Value:
0.001 ERG
Tokens:
Loading assets...
Spent
Address:
Spent in transaction:
Settlement height:
Value:
0.001 ERG
Transaction Details
Confirmations: 492,138
Total coins transferred: 0.027 ERG
Fees: 0.001 ERG
Fees per byte: 0.000000315 ERG
Raw Transaction Data
{
"id": "a49f4110b7b474466bf87b34c958661adbd4a6f6bd0e2cf0160bf9c252cb0f6c",
"blockId": "2037b6829034681e15c7b4666aafe280537398c0c01a3eb258cbbc4dd073a432",
"inclusionHeight": 1276138,
"timestamp": 1717130560602,
"index": 19,
"globalIndex": 7279095,
"numConfirmations": 492138,
"inputs": [
{
"boxId": "823a54b48039b4e762d34ec3cabd80911f4fb60cb3178e9364fe8aa0ae3110f6",
"value": 4000000,
"index": 0,
"spendingProof": null,
"outputBlockId": "9430c16339505b1799c8ddaddc6d041d2ac53f3bbadde54550b6921193a1edb9",
"outputTransactionId": "e2583cf7ad9559ac04f72ebee8c07e98613518a1bcf83349843792034782dee6",
"outputIndex": 0,
"outputGlobalIndex": 40461218,
"outputCreatedAt": 1276124,
"outputSettledAt": 1276126,
"ergoTree": 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23c7363ed938c723f01720a938c723f027240723995723b907e9c7364723a069c72457e724006927e723a069c72457e724006ed927ea30572418f72417e9aa37365058c72440295723b9399724772407248939a724772407248da722101860272427228da722201860272437235",
"ergoTreeConstants": "0: 0\n1: 1\n2: 1\n3: 2\n4: 2\n5: 3\n6: 3\n7: 0\n8: 0\n9: 1000000\n10: 4\n11: 650000\n12: CBigInt(1000000)\n13: CBigInt(2)\n14: CBigInt(6)\n15: 2\n16: 3\n17: CBigInt(3)\n18: CBigInt(4)\n19: CBigInt(5)\n20: 1\n21: CBigInt(8)\n22: 4\n23: CBigInt(24)\n24: 0\n25: CBigInt(1000000000)\n26: 2\n27: CBigInt(1000000000000000)\n28: CBigInt(-100)\n29: CBigInt(100)\n30: CBigInt(-12)\n31: CBigInt(12)\n32: Coll(-58,33,-2,-111,102,75,84,50,-120,-37,-61,113,-43,68,113,-49,49,-112,68,-125,-51,62,-11,63,55,-96,-26,81,-113,39,-98,92)\n33: 1\n34: 0\n35: 0\n36: 0\n37: 1\n38: 0\n39: 1\n40: 4\n41: 2\n42: 3\n43: CBigInt(0)\n44: 1\n45: 3\n46: 2\n47: CBigInt(-1)\n48: CBigInt(35)\n49: CBigInt(10)\n50: 1\n51: 1\n52: 1\n53: 1\n54: 1\n55: 0\n56: 1\n57: 1\n58: 1\n59: 1\n60: 1\n61: 0\n62: Coll(65,-38,-124,-75,-120,-6,10,-53,6,-9,115,-60,42,-43,-34,-120,29,44,-6,22,-16,-124,-63,-125,92,-100,123,119,16,-24,-48,36)\n63: 0\n64: 0\n65: 262800\n66: 3\n67: 4\n68: 2\n69: 10000000\n70: 9000000000001000\n71: 9000000000001000\n72: 1\n73: 8\n74: 0\n75: 1\n76: 1\n77: 0\n78: 10000000\n79: 0\n80: 262800\n81: 1\n82: 1\n83: 1\n84: 1000000\n85: 10000000\n86: 0\n87: -1\n88: 8\n89: 0\n90: 1\n91: 1\n92: 0\n93: 1\n94: 0\n95: 262800\n96: 1\n97: 1\n98: 1\n99: 2000000\n100: -1\n101: 8",
"ergoTreeScript": "{\n val coll1 = CONTEXT.dataInputs\n val box2 = OUTPUTS(placeholder[Int](0))\n val coll3 = box2.tokens\n val tuple4 = coll3(placeholder[Int](1))\n val coll5 = SELF.tokens\n val tuple6 = coll5(placeholder[Int](2))\n val l7 = box2.value\n val tuple8 = coll3(placeholder[Int](3))\n val tuple9 = coll5(placeholder[Int](4))\n val coll10 = tuple9._1\n val l11 = SELF.R4[Long].get\n val tuple12 = coll3(placeholder[Int](5))\n val tuple13 = coll5(placeholder[Int](6))\n val coll14 = tuple13._1\n val bool15 = (\n (\n (\n (((box2.propositionBytes == SELF.propositionBytes) && (coll3(placeholder[Int](7)) == coll5(placeholder[Int](8)))) && (tuple4._1 == tuple6._1)) && (\n l7 >= placeholder[Int](9).toLong\n )\n ) && (tuple8._1 == coll10)\n ) && (box2.R4[Long].get == l11)\n ) && (tuple12._1 == coll14)\n val l16 = SELF.value\n val l17 = tuple8._2\n val l18 = tuple9._2\n val tuple19 = coll5(placeholder[Int](10))\n val l20 = placeholder[Long](11)\n val bi21 = placeholder[BigInt](12)\n val bi22 = placeholder[BigInt](13)\n val bi23 = bi22 * bi21\n val bi24 = placeholder[BigInt](14) * bi21 * bi21\n val bi25 = bi21 * bi21\n val func26 = {(coll26: Coll[BigInt]) =>\n val bi28 = coll26(placeholder[Int](15))\n val bi29 = l20.toBigInt * bi28\n val bi30 = coll26(placeholder[Int](16))\n bi25 * {(bi31: BigInt) =>\n val bi33 = bi31 * bi31\n val bi34 = bi33 * bi31\n val bi35 = bi34 * bi31\n val bi36 = bi35 * bi31\n bi31 - bi33 / bi23 + bi34 / placeholder[BigInt](17) * bi21 * bi21 - bi35 / placeholder[BigInt](18) * bi21 * bi21 * bi21 + bi36 / placeholder[BigInt](\n 19\n ) * bi21 * bi21 * bi21 * bi21 - bi36 * bi31 / bi24 * bi21 * bi21 * bi21\n }(coll26(placeholder[Int](20)) - bi21) * placeholder[BigInt](21) / bi29 + bi21 * bi30 * coll26(\n placeholder[Int](22)\n ) / bi29 + l20.toBigInt * bi30 / bi22 * bi28\n }\n val func27 = {(bi27: BigInt) =>\n val bi29 = bi27 * bi27\n val bi30 = bi29 * bi27\n bi21 - bi27 + bi29 / bi23 - bi30 / bi24 + bi30 * bi27 / placeholder[BigInt](23) * bi21 * bi21 * bi21\n }\n val box28 = coll1(placeholder[Int](24))\n val bi29 = placeholder[BigInt](25) * box28.tokens(placeholder[Int](26))._2.toBigInt / box28.value.toBigInt\n val coll30 = SELF.R5[Coll[Long]].get\n val bi31 = placeholder[BigInt](27)\n val coll32 = box2.R5[Coll[Long]].get\n val func33 = {(tuple33: (BigInt, BigInt)) =>\n val bi35 = tuple33._2\n val bi36 = tuple33._1 - bi35 * bi35 / bi21\n (bi36 > placeholder[BigInt](28)) && (bi36 < placeholder[BigInt](29))\n }\n val func34 = {(tuple34: (BigInt, BigInt)) =>\n val bi36 = tuple34._1\n val bi37 = tuple34._2\n val bi38 = bi29 * bi21 / bi36 - bi37 * bi37 * bi37 * bi37 * bi37 * bi37 * bi37 * bi37 / bi25 * bi21 * bi21 * bi21 * bi21 * bi21\n val bi39 = if (bi29 > bi36) { bi29 / bi36 } else { bi36 / bi29 }\n (bi38 >= placeholder[BigInt](30) * bi39) && (bi38 <= placeholder[BigInt](31) * bi39)\n }\n val coll35 = placeholder[Coll[Byte]](32)\n sigmaProp(\n if (coll1.size <= placeholder[Int](33)) {\n (\n (\n (((bool15 && (tuple4 == tuple6)) && (l7 - l16 > placeholder[Long](34))) && (l17 - l18 >= placeholder[Long](35))) && (\n INPUTS(placeholder[Int](36)).id == SELF.id\n )\n ) && (INPUTS(placeholder[Int](37)).tokens(placeholder[Int](38))._1 == coll14)\n ) && (tuple12._2 == tuple13._2 + placeholder[Long](39))\n } else {(\n val bool36 = tuple12 == tuple13\n val bool37 = coll3(placeholder[Int](40)) == tuple19\n val coll38 = box2.R6[Coll[Long]].get\n val bi39 = coll38(placeholder[Int](41)).toBigInt\n val bi40 = coll38(placeholder[Int](42)).toBigInt\n val bi41 = l11.toBigInt\n val bi42 = l20.toBigInt * bi40 / bi21\n val bi43 = placeholder[BigInt](43)\n val box44 = coll1(placeholder[Int](44))\n val coll45 = box44.R5[Coll[Long]].get\n val coll46 = box2.R7[Coll[Int]].get\n val i47 = coll46(placeholder[Int](45))\n val i48 = coll46(placeholder[Int](46))\n val bi49 = placeholder[BigInt](47)\n val bi50 = placeholder[BigInt](48) * bi21 / placeholder[BigInt](49)\n val coll51 = box44.R4[Coll[Long]].get\n val func52 = {(tuple52: (BigInt, BigInt)) =>\n val bi54 = tuple52._2\n val bi55 = tuple52._1\n val bi56 = func26(Coll[BigInt](bi54, bi39, bi40, bi55, bi41))\n val bi57 = bi56 - bi42\n val bi58 = max(bi56, bi49 * bi56)\n val bi59 = max(bi57, bi49 * bi57)\n (\n if (bi57 >= bi43) { bi21 - coll45(i47).toBigInt } else { coll45(i47).toBigInt } * bi54 * func27(bi41 * bi55 / bi21) / bi21 - if (bi56 >= bi43) {\n bi21 - coll45(i48).toBigInt\n } else { coll45(i48).toBigInt } * bi29, (\n ((bi58 >= bi50) && (i48 == coll51.size - placeholder[Int](50))) || (\n (coll51(i48).toBigInt <= bi58) && (coll51(i48 + placeholder[Int](51)).toBigInt >= bi58)\n )\n ) && (\n ((bi59 >= bi50) && (i47 == coll51.size - placeholder[Int](52))) || (\n (coll51(i47).toBigInt <= bi59) && (coll51(i47 + placeholder[Int](53)).toBigInt >= bi59)\n )\n )\n )\n }\n val bi53 = coll38(placeholder[Int](54)).toBigInt\n val i54 = coll46(placeholder[Int](55))\n val i55 = coll46(placeholder[Int](56))\n val func56 = {(tuple56: (BigInt, BigInt)) =>\n val bi58 = tuple56._2\n val bi59 = tuple56._1\n val bi60 = func26(Coll[BigInt](bi58, bi53, bi40, bi59, bi41))\n val bi61 = bi60 - bi42\n val bi62 = max(bi60, bi49 * bi60)\n val bi63 = max(bi61, bi49 * bi61)\n (\n if (bi60 >= bi43) { coll45(i54).toBigInt } else { bi21 - coll45(i54).toBigInt } * bi29 - if (bi61 >= bi43) { coll45(i55).toBigInt } else {\n bi21 - coll45(i55).toBigInt\n } * bi58 * func27(bi41 * bi59 / bi21) / bi21, (\n ((bi62 >= bi50) && (i54 == coll51.size - placeholder[Int](57))) || (\n (coll51(i54).toBigInt <= bi62) && (coll51(i54 + placeholder[Int](58)).toBigInt >= bi62)\n )\n ) && (\n ((bi63 >= bi50) && (i55 == coll51.size - placeholder[Int](59))) || (\n (coll51(i55).toBigInt <= bi63) && (coll51(i55 + placeholder[Int](60)).toBigInt >= bi63)\n )\n )\n )\n }\n val bool57 = box44.tokens(placeholder[Int](61))._1 == placeholder[Coll[Byte]](62)\n if (bool36 && bool37) {(\n val l58 = coll38(placeholder[Int](63))\n val bi59 = coll30(placeholder[Int](64)).toBigInt - l58.toBigInt * bi21 / placeholder[Long](65).toBigInt\n val bi60 = coll30(placeholder[Int](66)).toBigInt\n val tuple61 = func52((bi59, bi60))\n val bi62 = coll30(placeholder[Int](67)).toBigInt\n val bi63 = tuple61._1 * bi62\n val l64 = coll30(placeholder[Int](68))\n val bi65 = l64 * placeholder[Long](69).toBigInt\n val bi66 = placeholder[Long](70) - tuple4._2.toBigInt\n val bi67 = placeholder[Long](71) - tuple6._2.toBigInt\n val bi68 = coll30(placeholder[Int](72)).toBigInt\n val tuple69 = func56((bi59, bi68))\n val bi70 = tuple69._1 * l64.toBigInt\n (\n (\n (\n (\n (\n (\n (\n ((bool15 && bool36) && (bi31 * l7.toBigInt - bi63 + bi65 / bi66 > bi31 * l16.toBigInt - bi63 + bi65 / bi67)) && (\n bi31 * l17.toBigInt - bi70 + bi62 / bi66 > bi31 * l18.toBigInt - bi70 + bi62 / bi67\n )\n ) && (coll32 == coll30)\n ) && (tuple69._2 && tuple61._2)\n ) && bool57\n ) && ((HEIGHT.toLong >= l58) && (l58 < HEIGHT + placeholder[Int](73).toLong))\n ) && func33((bi59, bi40))\n ) && func34((bi68, bi53))\n ) && func34((bi60, bi39))\n )} else { if (bool37) {(\n val l58 = l17 - l18\n val bool59 = l58 < placeholder[Long](74)\n val box60 = if (bool59) { INPUTS(placeholder[Int](75)) } else { OUTPUTS(placeholder[Int](76)) }\n val tuple61 = box60.tokens(placeholder[Int](77))\n val l62 = if (bool59) { l7 - l16 } else { l16 - l7 }\n val l63 = l62 / placeholder[Long](78)\n val l64 = coll38(placeholder[Int](79))\n val bi65 = box60.R5[Long].get - l64.toBigInt * bi21 / placeholder[Long](80).toBigInt\n val bi66 = box60.R4[Long].get.toBigInt\n val tuple67 = func56((bi65, bi66))\n val bi68 = tuple67._1\n val i69 = box60.R7[Coll[Int]].get(placeholder[Int](81)) + placeholder[Int](82)\n val l70 = coll30(i69)\n val l71 = coll32(i69)\n ((((((((((bool15 && ((tuple61._1 == coll14) && (tuple61._2 == placeholder[Long](83)))) && (blake2b256(box60.propositionBytes) == coll35)) && (box60.value >= l63 + placeholder[Long](84))) && (l62 % placeholder[Long](85) == placeholder[Long](86))) && bool57) && if (bool59) { placeholder[Long](87) * l58.toBigInt <= bi68 * l63.toBigInt } else { l58.toBigInt >= bi68 * l63.toBigInt }) && ((HEIGHT.toLong >= l64) && (l64 < HEIGHT + placeholder[Int](88).toLong))) && tuple67._2) && if (bool59) { l70 - l63 == l71 } else { l70 + l63 == l71 }) && func33((bi65, bi40))) && func34((bi66, bi53))\n )} else {(\n val l58 = l7 - l16\n val bool59 = l58 < placeholder[Long](89)\n val box60 = if (bool59) { INPUTS(placeholder[Int](90)) } else { OUTPUTS(placeholder[Int](91)) }\n val coll61 = box60.tokens\n val tuple62 = coll61(placeholder[Int](92))\n val tuple63 = coll61(placeholder[Int](93))\n val l64 = if (bool59) { l17 - l18 } else { l18 - l17 }\n val l65 = coll38(placeholder[Int](94))\n val bi66 = box60.R5[Long].get - l65.toBigInt * bi21 / placeholder[Long](95).toBigInt\n val bi67 = box60.R4[Long].get.toBigInt\n val tuple68 = func52((bi66, bi67))\n val bi69 = tuple68._1\n val i70 = box60.R7[Coll[Int]].get(placeholder[Int](96)) + placeholder[Int](97)\n val l71 = coll30(i70)\n val l72 = coll32(i70)\n ((((((((((bool15 && ((tuple62._1 == tuple19._1) && (tuple62._2 == placeholder[Long](98)))) && (blake2b256(box60.propositionBytes) == coll35)) && (box60.value >= placeholder[Long](99))) && ((tuple63._1 == coll10) && (tuple63._2 == l64))) && bool57) && if (bool59) { placeholder[Long](100) * l58.toBigInt <= bi69 * l64.toBigInt } else { l58.toBigInt >= bi69 * l64.toBigInt }) && ((HEIGHT.toLong >= l65) && (l65 < HEIGHT + placeholder[Int](101).toLong))) && tuple68._2) && if (bool59) { l71 - l64 == l72 } else { l71 + l64 == l72 }) && func33((bi66, bi40))) && func34((bi67, bi53))\n )} }\n )}\n )\n}",
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"sigmaType": "SLong",
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},
"R5": {
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"sigmaType": "Coll[SLong]",
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"R7": {
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{
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}
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"additionalRegisters": {
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"sigmaType": "SInt",
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}
}
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"ergoTree": "100201000100d1ededed850073007301",
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},
"R5": {
"serializedValue": "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",
"sigmaType": "Coll[SLong]",
"renderedValue": "[500000,507978,515953,523922,531881,539827,547758,555670,563559,571423,579259,587064,594834,602568,610261,617911,625515,633071,640576,648027,655421,662757,670031,677241,684386,691462,698468,705401,712260,719042,725746,732371,738913,745373,751747,758036,764237,770350,776372,782304,788144,793891,799545,805105,810570,815939,821213,826391,831472,836456,841344,846135,850830,855427,859928,864333,868643,872856,876975,880999,884930,888767,892512,896165,899727,903199,906582,909877,913085,916206,919243,922196,925066,927854,930563,933192,935744,938219,940620,942946,945200,947383,949497,951542,953521,955434,957283,959070,960796,962462,964069,965620,967115,968557,969945,971283,972571,973810,975002,976148,977249,978308,979324,980300,981237,982135,982996,983822,984613,985371,986096,986790,987454,988089,988696,989275,989829,990358,990862,991343,991802,992239,992656,993053,993430,993790,994132,994457,994766,995059,995338,995603,995854,996092,996318,996533,996735,996928,997109,997282,997444,997598,997744,997881,998011,998134,998249,998358,998461,998558,998650,998736,998817,998893,998964,999032]"
}
}
}
],
"outputs": [
{
"boxId": "80c0165b56a02b142014c807464127731fe6c9ec1ac3ba52dd9057536956a714",
"transactionId": "a49f4110b7b474466bf87b34c958661adbd4a6f6bd0e2cf0160bf9c252cb0f6c",
"blockId": "2037b6829034681e15c7b4666aafe280537398c0c01a3eb258cbbc4dd073a432",
"value": 25000000,
"index": 0,
"globalIndex": 40461522,
"creationHeight": 1276136,
"settlementHeight": 1276138,
"ergoTree": 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23c7363ed938c723f01720a938c723f027240723995723b907e9c7364723a069c72457e724006927e723a069c72457e724006ed927ea30572418f72417e9aa37365058c72440295723b9399724772407248939a724772407248da722101860272427228da722201860272437235",
"ergoTreeConstants": "0: 0\n1: 1\n2: 1\n3: 2\n4: 2\n5: 3\n6: 3\n7: 0\n8: 0\n9: 1000000\n10: 4\n11: 650000\n12: CBigInt(1000000)\n13: CBigInt(2)\n14: CBigInt(6)\n15: 2\n16: 3\n17: CBigInt(3)\n18: CBigInt(4)\n19: CBigInt(5)\n20: 1\n21: CBigInt(8)\n22: 4\n23: CBigInt(24)\n24: 0\n25: CBigInt(1000000000)\n26: 2\n27: CBigInt(1000000000000000)\n28: CBigInt(-100)\n29: CBigInt(100)\n30: CBigInt(-12)\n31: CBigInt(12)\n32: Coll(-58,33,-2,-111,102,75,84,50,-120,-37,-61,113,-43,68,113,-49,49,-112,68,-125,-51,62,-11,63,55,-96,-26,81,-113,39,-98,92)\n33: 1\n34: 0\n35: 0\n36: 0\n37: 1\n38: 0\n39: 1\n40: 4\n41: 2\n42: 3\n43: CBigInt(0)\n44: 1\n45: 3\n46: 2\n47: CBigInt(-1)\n48: CBigInt(35)\n49: CBigInt(10)\n50: 1\n51: 1\n52: 1\n53: 1\n54: 1\n55: 0\n56: 1\n57: 1\n58: 1\n59: 1\n60: 1\n61: 0\n62: Coll(65,-38,-124,-75,-120,-6,10,-53,6,-9,115,-60,42,-43,-34,-120,29,44,-6,22,-16,-124,-63,-125,92,-100,123,119,16,-24,-48,36)\n63: 0\n64: 0\n65: 262800\n66: 3\n67: 4\n68: 2\n69: 10000000\n70: 9000000000001000\n71: 9000000000001000\n72: 1\n73: 8\n74: 0\n75: 1\n76: 1\n77: 0\n78: 10000000\n79: 0\n80: 262800\n81: 1\n82: 1\n83: 1\n84: 1000000\n85: 10000000\n86: 0\n87: -1\n88: 8\n89: 0\n90: 1\n91: 1\n92: 0\n93: 1\n94: 0\n95: 262800\n96: 1\n97: 1\n98: 1\n99: 2000000\n100: -1\n101: 8",
"ergoTreeScript": "{\n val coll1 = CONTEXT.dataInputs\n val box2 = OUTPUTS(placeholder[Int](0))\n val coll3 = box2.tokens\n val tuple4 = coll3(placeholder[Int](1))\n val coll5 = SELF.tokens\n val tuple6 = coll5(placeholder[Int](2))\n val l7 = box2.value\n val tuple8 = coll3(placeholder[Int](3))\n val tuple9 = coll5(placeholder[Int](4))\n val coll10 = tuple9._1\n val l11 = SELF.R4[Long].get\n val tuple12 = coll3(placeholder[Int](5))\n val tuple13 = coll5(placeholder[Int](6))\n val coll14 = tuple13._1\n val bool15 = (\n (\n (\n (((box2.propositionBytes == SELF.propositionBytes) && (coll3(placeholder[Int](7)) == coll5(placeholder[Int](8)))) && (tuple4._1 == tuple6._1)) && (\n l7 >= placeholder[Int](9).toLong\n )\n ) && (tuple8._1 == coll10)\n ) && (box2.R4[Long].get == l11)\n ) && (tuple12._1 == coll14)\n val l16 = SELF.value\n val l17 = tuple8._2\n val l18 = tuple9._2\n val tuple19 = coll5(placeholder[Int](10))\n val l20 = placeholder[Long](11)\n val bi21 = placeholder[BigInt](12)\n val bi22 = placeholder[BigInt](13)\n val bi23 = bi22 * bi21\n val bi24 = placeholder[BigInt](14) * bi21 * bi21\n val bi25 = bi21 * bi21\n val func26 = {(coll26: Coll[BigInt]) =>\n val bi28 = coll26(placeholder[Int](15))\n val bi29 = l20.toBigInt * bi28\n val bi30 = coll26(placeholder[Int](16))\n bi25 * {(bi31: BigInt) =>\n val bi33 = bi31 * bi31\n val bi34 = bi33 * bi31\n val bi35 = bi34 * bi31\n val bi36 = bi35 * bi31\n bi31 - bi33 / bi23 + bi34 / placeholder[BigInt](17) * bi21 * bi21 - bi35 / placeholder[BigInt](18) * bi21 * bi21 * bi21 + bi36 / placeholder[BigInt](\n 19\n ) * bi21 * bi21 * bi21 * bi21 - bi36 * bi31 / bi24 * bi21 * bi21 * bi21\n }(coll26(placeholder[Int](20)) - bi21) * placeholder[BigInt](21) / bi29 + bi21 * bi30 * coll26(\n placeholder[Int](22)\n ) / bi29 + l20.toBigInt * bi30 / bi22 * bi28\n }\n val func27 = {(bi27: BigInt) =>\n val bi29 = bi27 * bi27\n val bi30 = bi29 * bi27\n bi21 - bi27 + bi29 / bi23 - bi30 / bi24 + bi30 * bi27 / placeholder[BigInt](23) * bi21 * bi21 * bi21\n }\n val box28 = coll1(placeholder[Int](24))\n val bi29 = placeholder[BigInt](25) * box28.tokens(placeholder[Int](26))._2.toBigInt / box28.value.toBigInt\n val coll30 = SELF.R5[Coll[Long]].get\n val bi31 = placeholder[BigInt](27)\n val coll32 = box2.R5[Coll[Long]].get\n val func33 = {(tuple33: (BigInt, BigInt)) =>\n val bi35 = tuple33._2\n val bi36 = tuple33._1 - bi35 * bi35 / bi21\n (bi36 > placeholder[BigInt](28)) && (bi36 < placeholder[BigInt](29))\n }\n val func34 = {(tuple34: (BigInt, BigInt)) =>\n val bi36 = tuple34._1\n val bi37 = tuple34._2\n val bi38 = bi29 * bi21 / bi36 - bi37 * bi37 * bi37 * bi37 * bi37 * bi37 * bi37 * bi37 / bi25 * bi21 * bi21 * bi21 * bi21 * bi21\n val bi39 = if (bi29 > bi36) { bi29 / bi36 } else { bi36 / bi29 }\n (bi38 >= placeholder[BigInt](30) * bi39) && (bi38 <= placeholder[BigInt](31) * bi39)\n }\n val coll35 = placeholder[Coll[Byte]](32)\n sigmaProp(\n if (coll1.size <= placeholder[Int](33)) {\n (\n (\n (((bool15 && (tuple4 == tuple6)) && (l7 - l16 > placeholder[Long](34))) && (l17 - l18 >= placeholder[Long](35))) && (\n INPUTS(placeholder[Int](36)).id == SELF.id\n )\n ) && (INPUTS(placeholder[Int](37)).tokens(placeholder[Int](38))._1 == coll14)\n ) && (tuple12._2 == tuple13._2 + placeholder[Long](39))\n } else {(\n val bool36 = tuple12 == tuple13\n val bool37 = coll3(placeholder[Int](40)) == tuple19\n val coll38 = box2.R6[Coll[Long]].get\n val bi39 = coll38(placeholder[Int](41)).toBigInt\n val bi40 = coll38(placeholder[Int](42)).toBigInt\n val bi41 = l11.toBigInt\n val bi42 = l20.toBigInt * bi40 / bi21\n val bi43 = placeholder[BigInt](43)\n val box44 = coll1(placeholder[Int](44))\n val coll45 = box44.R5[Coll[Long]].get\n val coll46 = box2.R7[Coll[Int]].get\n val i47 = coll46(placeholder[Int](45))\n val i48 = coll46(placeholder[Int](46))\n val bi49 = placeholder[BigInt](47)\n val bi50 = placeholder[BigInt](48) * bi21 / placeholder[BigInt](49)\n val coll51 = box44.R4[Coll[Long]].get\n val func52 = {(tuple52: (BigInt, BigInt)) =>\n val bi54 = tuple52._2\n val bi55 = tuple52._1\n val bi56 = func26(Coll[BigInt](bi54, bi39, bi40, bi55, bi41))\n val bi57 = bi56 - bi42\n val bi58 = max(bi56, bi49 * bi56)\n val bi59 = max(bi57, bi49 * bi57)\n (\n if (bi57 >= bi43) { bi21 - coll45(i47).toBigInt } else { coll45(i47).toBigInt } * bi54 * func27(bi41 * bi55 / bi21) / bi21 - if (bi56 >= bi43) {\n bi21 - coll45(i48).toBigInt\n } else { coll45(i48).toBigInt } * bi29, (\n ((bi58 >= bi50) && (i48 == coll51.size - placeholder[Int](50))) || (\n (coll51(i48).toBigInt <= bi58) && (coll51(i48 + placeholder[Int](51)).toBigInt >= bi58)\n )\n ) && (\n ((bi59 >= bi50) && (i47 == coll51.size - placeholder[Int](52))) || (\n (coll51(i47).toBigInt <= bi59) && (coll51(i47 + placeholder[Int](53)).toBigInt >= bi59)\n )\n )\n )\n }\n val bi53 = coll38(placeholder[Int](54)).toBigInt\n val i54 = coll46(placeholder[Int](55))\n val i55 = coll46(placeholder[Int](56))\n val func56 = {(tuple56: (BigInt, BigInt)) =>\n val bi58 = tuple56._2\n val bi59 = tuple56._1\n val bi60 = func26(Coll[BigInt](bi58, bi53, bi40, bi59, bi41))\n val bi61 = bi60 - bi42\n val bi62 = max(bi60, bi49 * bi60)\n val bi63 = max(bi61, bi49 * bi61)\n (\n if (bi60 >= bi43) { coll45(i54).toBigInt } else { bi21 - coll45(i54).toBigInt } * bi29 - if (bi61 >= bi43) { coll45(i55).toBigInt } else {\n bi21 - coll45(i55).toBigInt\n } * bi58 * func27(bi41 * bi59 / bi21) / bi21, (\n ((bi62 >= bi50) && (i54 == coll51.size - placeholder[Int](57))) || (\n (coll51(i54).toBigInt <= bi62) && (coll51(i54 + placeholder[Int](58)).toBigInt >= bi62)\n )\n ) && (\n ((bi63 >= bi50) && (i55 == coll51.size - placeholder[Int](59))) || (\n (coll51(i55).toBigInt <= bi63) && (coll51(i55 + placeholder[Int](60)).toBigInt >= bi63)\n )\n )\n )\n }\n val bool57 = box44.tokens(placeholder[Int](61))._1 == placeholder[Coll[Byte]](62)\n if (bool36 && bool37) {(\n val l58 = coll38(placeholder[Int](63))\n val bi59 = coll30(placeholder[Int](64)).toBigInt - l58.toBigInt * bi21 / placeholder[Long](65).toBigInt\n val bi60 = coll30(placeholder[Int](66)).toBigInt\n val tuple61 = func52((bi59, bi60))\n val bi62 = coll30(placeholder[Int](67)).toBigInt\n val bi63 = tuple61._1 * bi62\n val l64 = coll30(placeholder[Int](68))\n val bi65 = l64 * placeholder[Long](69).toBigInt\n val bi66 = placeholder[Long](70) - tuple4._2.toBigInt\n val bi67 = placeholder[Long](71) - tuple6._2.toBigInt\n val bi68 = coll30(placeholder[Int](72)).toBigInt\n val tuple69 = func56((bi59, bi68))\n val bi70 = tuple69._1 * l64.toBigInt\n (\n (\n (\n (\n (\n (\n (\n ((bool15 && bool36) && (bi31 * l7.toBigInt - bi63 + bi65 / bi66 > bi31 * l16.toBigInt - bi63 + bi65 / bi67)) && (\n bi31 * l17.toBigInt - bi70 + bi62 / bi66 > bi31 * l18.toBigInt - bi70 + bi62 / bi67\n )\n ) && (coll32 == coll30)\n ) && (tuple69._2 && tuple61._2)\n ) && bool57\n ) && ((HEIGHT.toLong >= l58) && (l58 < HEIGHT + placeholder[Int](73).toLong))\n ) && func33((bi59, bi40))\n ) && func34((bi68, bi53))\n ) && func34((bi60, bi39))\n )} else { if (bool37) {(\n val l58 = l17 - l18\n val bool59 = l58 < placeholder[Long](74)\n val box60 = if (bool59) { INPUTS(placeholder[Int](75)) } else { OUTPUTS(placeholder[Int](76)) }\n val tuple61 = box60.tokens(placeholder[Int](77))\n val l62 = if (bool59) { l7 - l16 } else { l16 - l7 }\n val l63 = l62 / placeholder[Long](78)\n val l64 = coll38(placeholder[Int](79))\n val bi65 = box60.R5[Long].get - l64.toBigInt * bi21 / placeholder[Long](80).toBigInt\n val bi66 = box60.R4[Long].get.toBigInt\n val tuple67 = func56((bi65, bi66))\n val bi68 = tuple67._1\n val i69 = box60.R7[Coll[Int]].get(placeholder[Int](81)) + placeholder[Int](82)\n val l70 = coll30(i69)\n val l71 = coll32(i69)\n ((((((((((bool15 && ((tuple61._1 == coll14) && (tuple61._2 == placeholder[Long](83)))) && (blake2b256(box60.propositionBytes) == coll35)) && (box60.value >= l63 + placeholder[Long](84))) && (l62 % placeholder[Long](85) == placeholder[Long](86))) && bool57) && if (bool59) { placeholder[Long](87) * l58.toBigInt <= bi68 * l63.toBigInt } else { l58.toBigInt >= bi68 * l63.toBigInt }) && ((HEIGHT.toLong >= l64) && (l64 < HEIGHT + placeholder[Int](88).toLong))) && tuple67._2) && if (bool59) { l70 - l63 == l71 } else { l70 + l63 == l71 }) && func33((bi65, bi40))) && func34((bi66, bi53))\n )} else {(\n val l58 = l7 - l16\n val bool59 = l58 < placeholder[Long](89)\n val box60 = if (bool59) { INPUTS(placeholder[Int](90)) } else { OUTPUTS(placeholder[Int](91)) }\n val coll61 = box60.tokens\n val tuple62 = coll61(placeholder[Int](92))\n val tuple63 = coll61(placeholder[Int](93))\n val l64 = if (bool59) { l17 - l18 } else { l18 - l17 }\n val l65 = coll38(placeholder[Int](94))\n val bi66 = box60.R5[Long].get - l65.toBigInt * bi21 / placeholder[Long](95).toBigInt\n val bi67 = box60.R4[Long].get.toBigInt\n val tuple68 = func52((bi66, bi67))\n val bi69 = tuple68._1\n val i70 = box60.R7[Coll[Int]].get(placeholder[Int](96)) + placeholder[Int](97)\n val l71 = coll30(i70)\n val l72 = coll32(i70)\n ((((((((((bool15 && ((tuple62._1 == tuple19._1) && (tuple62._2 == placeholder[Long](98)))) && (blake2b256(box60.propositionBytes) == coll35)) && (box60.value >= placeholder[Long](99))) && ((tuple63._1 == coll10) && (tuple63._2 == l64))) && bool57) && if (bool59) { placeholder[Long](100) * l58.toBigInt <= bi69 * l64.toBigInt } else { l58.toBigInt >= bi69 * l64.toBigInt }) && ((HEIGHT.toLong >= l65) && (l65 < HEIGHT + placeholder[Int](101).toLong))) && tuple68._2) && if (bool59) { l71 - l64 == l72 } else { l71 + l64 == l72 }) && func33((bi66, bi40))) && func34((bi67, bi53))\n )} }\n )}\n )\n}",
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{
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"index": 0,
"amount": 1,
"name": "Test 2",
"decimals": 3,
"type": "EIP-004"
},
{
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"index": 1,
"amount": 8999999999992107,
"name": "fruit",
"decimals": 0,
"type": "EIP-004"
},
{
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"index": 2,
"amount": 89,
"name": "fQuacks",
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"type": "EIP-004"
},
{
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{
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"name": "Test 9",
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}
],
"additionalRegisters": {
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"sigmaType": "SLong",
"renderedValue": "5000000"
},
"R5": {
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"sigmaType": "Coll[SLong]",
"renderedValue": "[1279804,130,0,118,0]"
},
"R6": {
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"sigmaType": "Coll[SLong]",
"renderedValue": "[1276136,987966,1000000,118139]"
},
"R7": {
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"sigmaType": "Coll[SInt]",
"renderedValue": "[15,19,47,43]"
}
},
"spentTransactionId": "8f33cceb3bc238cc9e6344cb5db7806769f32ebf1a446339ddbcab1540b2ef56",
"mainChain": true
},
{
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"index": 1,
"globalIndex": 40461523,
"creationHeight": 1276136,
"settlementHeight": 1276138,
"ergoTree": "0008cd036b1001ad3e368f9ca5272a21affee9e8d0f21df023ee9e8ba0ab0047dc6b9608",
"ergoTreeConstants": "",
"ergoTreeScript": "{SigmaProp(ProveDlog(ECPoint(6b1001,e0825c,...)))}",
"address": "9hGxTdZKhZ12eZNzg7mCGRpuHTvxayNm7gxPz6rmbMtVpjdjYQh",
"assets": [
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"name": "fruit",
"decimals": 0,
"type": "EIP-004"
}
],
"additionalRegisters": {
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"sigmaType": "SLong",
"renderedValue": "0"
},
"R5": {
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"sigmaType": "SInt",
"renderedValue": "0"
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"sigmaType": "SInt",
"renderedValue": "0"
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{
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"ergoTree": "1005040004000e36100204a00b08cd0279be667ef9dcbbac55a06295ce870b07029bfcdb2dce28d959f2815b16f81798ea02d192a39a8cc7a701730073011001020402d19683030193a38cc7b2a57300000193c2b2a57301007473027303830108cdeeac93b1a57304",
"ergoTreeConstants": "0: 0\n1: 0\n2: Coll(16,2,4,-96,11,8,-51,2,121,-66,102,126,-7,-36,-69,-84,85,-96,98,-107,-50,-121,11,7,2,-101,-4,-37,45,-50,40,-39,89,-14,-127,91,22,-8,23,-104,-22,2,-47,-110,-93,-102,-116,-57,-89,1,115,0,115,1)\n3: Coll(1)\n4: 1",
"ergoTreeScript": "{sigmaProp(\n allOf(\n Coll[Boolean](\n HEIGHT == OUTPUTS(placeholder[Int](0)).creationInfo._1, OUTPUTS(placeholder[Int](1)).propositionBytes == substConstants(\n placeholder[Coll[Byte]](2), placeholder[Coll[Int]](3), Coll[SigmaProp](proveDlog(decodePoint(minerPubKey)))\n ), OUTPUTS.size == placeholder[Int](4)\n )\n )\n)}",
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"additionalRegisters": {},
"spentTransactionId": "3cadd4a5baf625383c5d0a08fc3edbdfe715a7ef3f0273df6afaf4c110af9cd3",
"mainChain": true
}
],
"size": 3171,
"isUnconfirmed": false
}